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Sign up now: www.tmforum.org/mwa10 Management World Americas 2010 NOV. 9-11, 2010 | ORLANDO AMERICAS Platinum Sponsor: www.tmforum.org/mwa2010 Gold Sponsors: Silver Sponsors: EXPLOITING ANALYTICS HOW TO IMPROVE CUSTOMERS’ EXPERIENCE This publication is free to TM Forum members Report author: Rob Rich Managing Director, TM Forum Insights Research: rrich@tmforum.org Publications Managing Editor: Annie Turner aturner@tmforum.org Creative Director: David Andrews dandrews@tmforum.org Commercial Sales Consultant: Mark Bradbury mbradbury@tmforum.org Publisher: Katy Gambino kgambino@tmforum.org Client Services: Caroline Taylor ctaylor@tmforum.org Marketing: Saryia Green, Marketing Manager, Publications & Virtual Events sgreen@tmforum.org Report Design: The Page Design Consultancy Ltd Head of Research and Publications: Rebecca Henderson rhenderson@tmforum.org Advisors: Keith Willetts, Chairman and Chief Executive Officer, TM Forum Martin Creaner, President and Chief Operating Officer, TM Forum Nik Willetts, Chief Information Officer, TM Forum Published by: TM Forum 240 Headquarters Plaza East Tower, 10th Floor Morristown, NJ 07960-6628 USA www.tmforum.org Phone: +1 973-944-5100 Fax: +1 973-944-5110 Page 4 Executive summary Page 8 Section 1 Understanding the value of customer experience Page 13 Section 2 Defining analytics and business intelligence Page 19 Section 3 Customer experience in communications and the broader digital services value chain – applying analytics for improved performance Page 28 Section 4 Analysis: Service providers discuss present and future actions and plans for addressing analytics in customer experience Page 35 Section 5 Conclusions and recommendations Page 38 Section 6 TM Forum’s contribution to analytics to improve the customers’ experience Page 48 Sponsored features ©TeleManagement Forum 2010. 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While every effort has been made to ensure that articles, sponsored features, logos and trademarks appear correctly, TM Forum cannot accept responsibility for any loss or damage caused directly or indirectly by the contents of this publication. www.tmforum.org INSIGHTS RESEARCH 3 Exploiting ANALYTICS Executive summary Seeking to increase profitability, communications service providers (CSPs) are increasingly focusing on customer experience initiatives to differentiate themselves. This is driven by recognition by CSPs of the connection between customer experience and profitability. The impact of a customer’s experience on a service provider’s bottom line is becoming increasingly clear through recent studies across all industries; in fact, Bain & Company research revealed that a 5 percent improvement in customer retention rates can yield as much as a 75 percent increase in profits for companies across a range of industries. As the link between customer experience and profitability is becoming more evident than ever before, we thought it important to explore the fundamentals of customer experience in the communications industry. In addition, we believe analytics can play a key role in each phase of the customer lifecycle, as well as in the planning and implementation of each component of differentiation. In this TM Forum report, we address the relevant issues, strategies and priorities developing in organizations striving to become more customer-focused and profitable – in the near future and mid term – through the judicious application of customer experiencerelated analytics. At TM Forum, we define customer experience as the result of the sum of observations, perceptions, thoughts and feelings arising from interactions and relationships between customers and their service provider(s). Almost every customer touch point – whether directly or indirectly linked to service providers and their partners – contributes to customers’ perception, satisfaction, loyalty, and ultimately profitability. 4 INSIGHTS RESEARCH We believe that analytics, both traditional and real-time, can be used to: n better understand customer motivation and behavior; n to suggest attractive offers and predict the likelihood of offers being accepted; n to model and improve customer experience- related processes; n to measure performance improvement and customer satisfaction; n predict the likelihood of a customer churning, ideally so that action can be taken to avoid it. In addition, analytics can be used to predict customer lifetime value (CLV), which can be used across the customer lifecycle to improve both customer experience and profitability. With so many touch points to manage and so many possibilities for the deployment of analytics, we have broken this report into sections we thought would be most useful to our members: Section 1: Understanding the value of customer experience This section argues that CSPs must shun the one-size-fits-all, altruistic approach of the past, and view improvements in customer experience as a profitable business strategy. It explores how leading companies are approaching customer experience to improve their bottom line, focusing in particular on a company achieving extraordinary business results – despite global recession – through mastery of virtually all aspects of customer experience. In that vein, we go on to explain the relationship between customer experience, customer loyalty and increased profitability. Finally, it includes a detailed discussion of CLV www.tmforum.org Analytics can be deployed across almost every aspect of an enterprise as an important driver of customer experience strategies, and outlines why the clearest path to profitability is through customer retention and maximization of CLV. Section 2: Defining analytics and business intelligence Section 2 begins with a broad definition of analytics: “processes and applications that use data to support actionable insight for a functional process in a specific context.” While this definition may seem general, it is important to recognize that analytics operate in a vast domain, with myriad data sources, processes, contexts, forms of insight, and recipients. In fact, analytics can be deployed across almost every aspect of the enterprise, and even extended out across a broader market or value chain. Given the range of the options, and the market interest, the need for a general definition is clear and the potential for market confusion great. The key here, of course, is to determine where the greatest payback lies for the CSP and the achievability of that payback. It continues by describing various components of analytics and positioning them within an overall business intelligence (BI) context. Components include data and text mining, data visualization and dashboards, forecasting, query and reporting tools, model management and quality assurance/ process optimization tools, as well as important supporting functions like access for the consumers of the information, data repositories, and data integration. It then briefly overviews leaders in analytics deployment, including Google, Amazon, and NetFlix. Interestingly, while these companies are widely known for their recommendation engine capabilities, they also rely heavily on process optimization and quality assurance to maintain their competitive positions. Some CSPs will find it difficult, at best, to duplicate the success of these companies, given the data management and integration challenges arising from their long histories of diverse lines of businesses, geographic expansion, mergers and acquisitions, purposebuilt networks, and stove pipe operations. Despite these challenges, analytical www.tmforum.org applications and BI components remain powerful tools for better understanding market and operational trends and processes, and supporting decision making to improve business and operational performance, and profitability. Section 3: Customer experience in communications – applying analytics for improved performance This section of the report discusses the various stages of the customer lifecycle and the applicability of analytics. More specifically, it draws upon six areas in which service providers can differentiate themselves, including product and service portfolio, marketing and sales, service quality, customer support, billing, charging and cost management, and brand. It then discusses opportunities for analytics in each area in the context of the lifecycle. Some examples of analytics include: “Many service providers are challenged by their legacy systems, islands of business processes and customer data stores. In addition current economic pressures are driving much tactical activity…” nCLV calculation nsegmentation modeling and analysis, npredictive analytics for product adoption trends nproduct profitability analysis nprice plan analysis ncross-sell/upsell ncampaign analysis ncustomer retention nreal-time service performance aggregation, correlation and reporting nnext best action/real-time offer management nprocess optimization through revenue assurance nbrand value modeling and monitoring. Section 4 – Service providers discuss actions and plans for addressing analytics in customer experience. Section 4 explores the results of 20 interviews conducted with executives in leading service provider organizations across the world. Many service providers are challenged by their legacy systems, islands of business processes and customer data stores. In addition, current economic pressures are driving much tactical activity, mostly focused on reducing cost and cycle time in specific areas. The top three near INSIGHTS RESEARCH 5 Exploiting ANALYTICS term priorities by far were; reducing support costs, improving customer retention, and increasing customer satisfaction Looking to the future, many service providers are more conservative than they were last year, but senior management seems to still be embracing the idea of an holistic approach to customer experience, and in some cases the seeds of implementation are being sown. Looking ahead over the next two to four years, service providers are more cautious, but still plan a more holistic approach. While reducing support costs and improving customer retention remain important, CSPs plan to increase focus on: n improving data management, n solving customer experience issues across organizations, n increasing process agility around customer responsiveness. Most expect analytics to play a key role. As importantly, most respondents expect a stronger focus on digital services enablement. They also expect to deliver on the promise of the new services and business models that are discussed more and more often in the industry today. The biggest concern with the survey results was that, when asked about eight different areas for investment in analytics, all were ranked as very important, and current efforts in these areas were generally viewed as needing improvement. At a time when budgets are squeezed to say the least, CSPs will need to make some tough decisions to narrow their priorities for analytics’ deployment. CSPs believe their biggest challenges for analytics’ deployment are total costs, data integration issues, and overall complexity. As for critical success factors, topping the list were data quality, clear business cases, management commitment and well understood business problems. Section 5 Conclusions & recommendations We close the report with a series of recommendations for service providers approaching customer experience initiatives. 6 INSIGHTS RESEARCH They address: 1. Understand the big picture Service providers must develop and manage an enterprise-wide vision of all aspects of customer interaction, and where analytics fit best if they are to deliver an appropriate experience to customers. An overall, enterprise-wide view is most certainly how the customer experiences a provider; when that customer interacts with individual departments within the CSP, the service provider can only understand what the customer experiences if they draw data from all parts of the enterprise. 2. Pick your places A successful customer experience strategy does not require the CSP to be world class at everything, and in fact CSPs probably cannot afford to excel in every aspect. CSPs must determine which areas are most important for them to succeed and where they can get payback from analytics. The concept here is that the customer experience strategy and the related analytics deployment strategy must be tailored and affordable. After all, as we said at the outset, this is not an exercise in altruism, but rather a way to enhance competitiveness and profitability. 3. Mix in some small, fast deployments CSPs are typically large scale enterprises, and their systems and projects reflect that and consequently tend to take considerable time to implement. By choosing a few small but impactful areas where analytics can be quickly deployed, CSPs can quickly realize benefits and gain some momentum. Selected real-time analytics may be a good place to start. 4.Consider a continuous improvement strategy It makes sense to approach analytics for customer experience from a continuous improvement perspective given the scope and complexity of the industry, the volatility of the larger digital value chain, the broad scope of analytics-related opportunities and limitations on investment capital. www.tmforum.org Customer experience analytics hinge upon data’s accuracy and accessibility 5. Manage customer data as a corporate asset, Yes, this is a valuable corporate asset, but CSPs need to recognize that comprehensive data integration is a long term project. Almost every aspect of customer experience analytics hinges upon the accuracy and accessibility of data. Data management programs must address quality issues, and ensure data accessibility and usability – but they must also walk before they can run. 6. Privacy Privacy is a critical aspect of data managementA single publicly disclosed violation of local privacy laws can have significant impact on a company’s brand, and ultimately its relationship with its customers. 7. Gain top management support For analytics to become pervasive and add enterprise wide value, top management must ‘walk the walk”, embracing fact-based decision making, pushing for more and better data, and recognizing achievement when efforts succeed. Senior management must also drive priorities for targeting analytics applications, setting the vision, determining affordability, allocating appropriate resources, ensuring cross-functional coordination, and removing barriers to success. 8. Take advantage of existing frameworks TM Forum has a number of useful artifacts in this space for service providers and vendors alike – most notably its Information Framework (SID), in addition to the Applications Framework (TAM) and Business Process Frameworks (eTOM), all of which are elements of TM Forum Frameworx Integrated Business Architecture. In addition, TM Forum’s Managing Customer Experience Collaboration Program is addressing a number of issues. Finally, the Forum’s Business Benchmarking Program can be used as a source of business intelligence (for information about all of these aspects, see Section 6 on page 38). www.tmforum.org 9. Find ways to partner with your suppliers While the applications and implementation world is far from perfect, it is clear from our research that some companies are better than others at engaging and drawing successful engagements from their suppliers. Both CSPs and suppliers struggling in this regard should do a fresh assessment of themselves and their expectations, engagement styles and strategies. Service providers should also include evaluations of cultural fit, experience and methodology into their supplier selection criteria. 10. Develop your people. Analysts must acquire and master a broad variety of skills, including quantitative/technical expertise, business knowledge and process design abilities, relationship building, and consulting and coaching skills to help others. It is important for employers to recognize these requirements and traits, and to create appropriate growth opportunities for analysts. Activity in customer experience has moved slowly so far in the communications industry, but service providers are clearly waking up to the value of customer retention and the importance of optimization of CLV. Improving customer experience can do nothing but help service providers in this venture, improving their profitability, and positioning them as more valuable than ever to current and potential business partners. Section 6 - TM Forum’s contribution to analytics to improve the customers’ experience A brief outline of the various ways TM Forum is supporting members, from standards to best practices, Catalyst Projects, documentation, publications and research, and the new Business Metrics Development Program and Data Analytics Team. “A single publicly disclosed violation of local privacy laws can have significant impact on a company’s brand, and ultimately its relationship with customers.” INSIGHTS RESEARCH 7 Exploiting ANALYTICS Section 1 Understanding the value of customer experience Buffeted by economic woes and market forces, especially in mature markets, communications service providers (CSPs) increasingly focus on improving customer experience. In fact, it seems difficult to find a major communiqué by a C-level executive in the developed world that does not include something on “meeting and exceeding customers’ needs”. Yet frequently in customer satisfaction studies by prominent firms, CSPs fall short of the leadership demonstrated by other industries that take customer-centric approaches to their bottomline strategies. Consider the following: Despite the continued impact of global economic crisis, in July 2010, Apple Computer posted record revenue and net quarterly profit. Those who attribute the results primarily to the iPhone 4 launch should note that Apple also shipped 33 percent more Macintosh computers than the same period the previous year. Even sales of the iPod line increased by 8 per cent in a highly commoditized, shrinking media player market. Finally, Apple began selling iPads during the quarter, with total sales of more than 3 million units. What does Apple have that the others lack? Well, some great products (and services) to be sure, but it also excels at customer service and support, marketing, and distribution, and has one of the strongest brands globally. Its products are useful, simple to use, easy to acquire and augment, high quality, and considered very cool. They also evoke such an emotional response from many of Apple’s customers, that they turn up their noses at competitive products. In other words, Apple appears to have mastered virtually every aspect of customer experience, and the resultant loyalty of its customer base – even in difficult financial times. Through that unwavering customer focus, Apple continues to drive its revenues 8 INSIGHTS RESEARCH and profits to new heights. Other customer loyalty leaders like Wal-Mart, Google, Toyota and Honda are also doing well by focusing on customer experience as an essential driver of profitability. Service providers should note this performance and ask themselves how they might leverage the same principles to increase their own profitability. After all, that is what customer experience and loyalty are all about: profitability. To successfully manage all the critical touch points of customer experience, CSPs must shun the one-size-fits-all approach. They can no longer afford to view customer service fundamentally as an act of altruism – that mentality dates back to the industry’s civil service days, when CSPs were typically government organizations that were critical to economic development and public safety. As regulators and public officials have pushed, and continue to push, service providers to new heights of reliability – using incentives and punishments – most CSPs already have some of the fundamental building blocks of customer service in place. Yet despite that history and experience, service providers still lag other industries in providing what is seen as good customer service. As we observed in our 2009 Insights Research report, Customer Experience Management: Driving Loyalty & Profitability there has been a resurgence in interest by CSPs. More and more of them have stated ambitions to catch up other industries, and they are realizing that good customer service is a powerful strategy for increasing business performance and profitability, not an act of good will. CSPs are recognizing the connection between customer experience and profitability, as demonstrated in many studies. For example, www.tmforum.org Customer experience extends to domains beyond the direct control of the service provider according to research by Bain & Company, a 5 percent improvement in customer retention rates can yield as much as a 75 percent increase in profits for companies across a range of industries. After decades of customer experience strategy formulation, Bain partner and noted business author, Frederick Reichheld, considers “would you recommend us to a friend?” as the ultimate question for a customer. How many times have you or your friends recommended an iPod, iPhone or a Mac? What do your children recommend to their peers? Their peers to them? There are certain steps service providers have to take to create more personalized relationships with their customers, as well as reduce churn and increase profitability, all while becoming leaner and more agile. First, they have to define customer experience. At TM Forum, we define it as the result of the sum of observations, perceptions, thoughts and feelings arising from interactions and relationships between customers and their service provider(s). Virtually every customer touch point – whether directly or indirectly linked to service providers and their partners – contributes to customer perception, satisfaction, loyalty, and ultimately profitability. Gaining leadership in customer experience and satisfaction will not be a simple task, as it is affected by virtually every customerfacing aspect of the service provider, and in turn impacts the service provider deeply – especially on the all-important bottom line. The scope of issues affecting customer experience is complex and dynamic. With new services, devices and applications extending the basis of customer experience to domains beyond the direct control of the service provider, it is likely to increase in complexity and dynamism. www.tmforum.org In this report, we explore the fundamentals of customer experience in the communications industry, and look at how analytical applications can be used to improve customer experience. Customer loyalty = increased profits As stated earlier, customer experience programs are not fundamentally altruistic exercises, but a strategic means of improving competitiveness and profitability in the short and long term. Loyalty is essential to deriving long term profits from customers. Some of the earliest loyalty programs date back to the 1930s, when packaged goods companies offered embedded coupons for rewards to buyers, and eventually retail chains began offering reward programs to frequent shoppers. These programs continued for decades but were leapfrogged in the 1980s by more aggressive programs from the airlines. This movement was led by American Airlines, which launched the first full-scale loyalty marketing program of the modern era with the AAdvantage frequent flyer scheme. It was the first to reward frequent fliers with notional air miles that could be accumulated and later redeemed for free travel. Other airlines and travel providers were quick to grasp the incredible value of providing customers with an incentive to use their company exclusively. Within a few years, dozens of travel industry companies launched similar initiatives and now loyalty programs are achieving near-ubiquity in many service industries, especially those in which it is difficult to differentiate offerings by product attributes. INSIGHTS RESEARCH 9 Exploiting ANALYTICS The belief is that increased profitability will result from customer retention efforts because: Figure 1-1: Customer loyalty driven profit opportunities 0.35 nThe cost of acquisition occurs only at the beginning of a relationship: the longer the relationship, the lower the amortized cost; nAccount maintenance costs decline as a percentage of total costs, or as a percentage of revenue, over the lifetime of the relationship; nLong term customers tend to be less inclined to switch and less price sensitive which can result in stable unit sales volume and increases in dollar-sales volume; nLong term customers may initiate word-ofmouth promotions and referrals, which cost the company nothing and arguably are the most effective form of advertising; nLong-term customers are more likely to buy ancillary products and higher margin supplemental products; nLong term customers tend to be satisfied with their relationship with the company and are less likely to switch to competitors, making market entry or competitors gaining market share difficult; nRegular customers tend to be less expensive to service, as they are familiar with the processes involved, require less ‘education’, and are consistent in their order placement; nIncreased customer retention and loyalty makes the employees’ jobs easier and more satisfying. In turn, happy employees feed back into higher customer satisfaction in a virtuous circle. Figure 1-2 represents a high-level example of a virtuous cycle driven by customer satisfaction and loyalty, depicting how superiority in product and service offerings, as well as strong customer support by competent employees, lead to higher sales and ultimately profitability. As stated above, this is not a new concept, but succeeding with it is difficult. It has eluded many a company driven to achieve profitability goals. Of course, for this circle to be virtuous, the customer relationship(s) must be profitable. 10 INSIGHTS RESEARCH 0.3 0.25 profit - referrals profit- lower support costs profit - increased spending base profit 0.2 0.15 0.1 0.05 0 Period 1 Period 2 Period 3 Period 4 Figure 1-2: The virtuous circle of customer loyalty Training and empowerment of employees Higher sales & profits Customer satisfaction/ loyalty Employee competence/ satisfaction Superior product/service delivery www.tmforum.org Complex account structures may not be understood or properly represented Striving to maintain the loyalty of unprofitable customers is not a viable business strategy. It is, therefore, important that marketers can assess the profitability of each customer (or customer segment), and either improve or terminate relationships that are not profitable. This means each customer’s ‘relationship costs’ must be understood and compared to their ‘relationship revenue’. Customer lifetime value (CLV) is the most commonly used metric here, as it is generally accepted as a representation of exactly how much each customer is worth in monetary terms, and therefore a determinant of exactly how much a service provider should be willing to spend to acquire or retain that customer. CLV models make several simplifying assumptions and often involve the following inputs: nChurn rate represents the percentage of customers who end their relationship with a company in a given period; nRetention rate is calculated by subtracting the churn rate percentage from 100; nPeriod/horizon equates to the units of time into which a customer relationship can be divided for analysis. A year is the most commonly used period for this purpose. Customer lifetime value is a multi-period calculation, often projecting three to seven years into the future. In practice, analysis beyond this point is viewed as too speculative to be reliable. The model horizon is the number of periods used in the calculation; nPeriodic revenue is the amount of revenue collected from a customer in a given period (though this is often extended across multiple periods into the future to understand lifetime value), such as usage revenue, revenues anticipated from cross and upselling, and often some weighting for referrals by a loyal customer to others; nRetention cost describes the amount of money the service provider must spend, in a given period, to retain an existing customer. Again, this is often forecast across multiple www.tmforum.org periods. Retention costs include customer support, billing, promotional incentives and so on; nDiscount rate means the cost of capital used to discount future revenue from a customer. Discounting is an advanced method used in more sophisticated CLV calculations; nProfit margin is the projected profit as a percentage of revenue for the period. This may be reflected as a percentage of gross or net profit. Again, this is generally projected across the model horizon to understand lifetime value. A strong focus on managing these inputs can help service providers realize stronger customer relationships and profits, but there are some obstacles to overcome in achieving accurate calculations of CLV, such as the complexity of allocating costs across the customer base. There are many costs that serve all customers which must be properly allocated across the base, and often a simple proportional allocation across the whole base or a segment may not accurately reflect the true cost of serving that customer; This is made worse by the fragmentation of customer information, which is likely to be across a variety of product or operations groups, and may be difficult to aggregate due to different representations. In addition, there is the complexity of account relationships and structures to take into consideration. Complex account structures may not be understood or properly represented. For example, a profitable customer may have a separate account for a second home or another family member, which may appear to be unprofitable. If the service provider cannot relate the two accounts, CLV is not properly represented and any resultant cancellation of the apparently unprofitable account may result in the customer churning from the profitable one. In summary, if service providers are to realize strong customer relationships and their attendant profits, there must be a very strong INSIGHTS RESEARCH 11 Exploiting ANALYTICS focus on data management. This needs to be coupled with analytics that help business managers and those who work in customerfacing functions offer highly personalized solutions to customers, while maintaining profitability for the service provider. It’s clear that acquiring new customers is expensive. Advertising costs, campaign management expenses, promotional service pricing and discounting, and equipment subsidies make a serious dent in a new customer’s profitability. That is especially true given the rising subsidies for smartphone users, which service providers hope will result in greater profits from profits from data services profitability in future. The situation is made worse by falling prices and greater competition in mature markets. Customer acquisition through industry consolidation isn’t cheap either. A North American service provider spent about $2,000 per subscriber in its acquisition of a smaller company earlier this year. While this has allowed it to leapfrog to become the largest mobile service provider in the country, it required a total investment of more than $28 billion (including assumption of the acquiree’s debt). While many operating cost synergies clearly made this deal more attractive to the acquiring company, this is certainly an expensive way to acquire customers: the cost per subscriber in this case is not out of line with the prices others have paid for acquisitions. While growth by acquisition certainly increases overall revenues, it often creates tremendous challenges for profitability. Organic growth through increased customer loyalty and retention is a more effective driver of profit, as well as a stronger predictor of future profitability. Service providers, especially those in mature markets, are increasingly recognizing this and taking steps toward a creating a more personalized, flexible and satisfying experience for their customers. In summary, the clearest path to profitability for companies in virtually all industries is through customer retention and maximization of lifetime value. Service providers would do well to recognize this and focus attention on profitable customer relationships. 12 INSIGHTS RESEARCH “While growth by acquisition certainly increases overall revenues, it often creates tremendous challenges for profitability. Organic growth through increased customer loyalty and retention is a more effective driver of profit, as well as a stronger predictor of future profitability.” www.tmforum.org Analytics are used to improve customers’ experience in many industries Section 2 Defining analytics and business intelligence Analytics are increasingly being used across industries to improve the performance of leading organizations. Many examples exist in industries as diverse as financial services, media and entertainment, gaming, and even professional sports. Analytics have also been used in the communications industry for some time, though perhaps in a less inconsistent manner than in prominent companies in other industries. To understand the nature and value of analytics, it’s important to have a working definition. Given the level of interest around the subject, many have come up with their own definitions, creating considerable confusion in the market. Further, there is a lack of clarity around analytics (or analytical applications) and business intelligence (BI). In fact, when we asked respondents to our surveys for their working definitions, we got a number of different answers. For the purpose of this report, we will use a broad definition of analytics, defining them as “processes and applications that use data to support actionable insight for a functional process in a specific context.” While this definition is quite general, it is important to recognize that analytics operate in a vast world, with data sourced from internal warehouses, operational data stores, external data feeds and structured or even unstructured messages among other sources. Processes may include almost any business, technical or operational process. Contexts could be historical, current, real-time, or future/predictive as well as involving almost any location, technology, device, service, customer status, or any other business or technical aspect. Supporting actionable insight could mean providing a discrete answer, one or more recommendations, or a prediction or forecast. Recipients of the result might be an employee, customer, partner, supplier, data store, or www.tmforum.org another application or device. Given the range of the options, and the market interest, the need for a general definition is clear and the potential for market confusion great. There are many components of analytics. Data and text mining Data mining is an iterative process of creating predictive and descriptive models to support decision making, by uncovering previously unknown trends and patterns in vast amounts of data from across the enterprise. Text mining applies the same analysis techniques to unstructured, text-based documents. Data visualization and dashboards Data visualization adds advanced graphical renditions of results to analytics and exploratory data analysis, leading to better analyses, faster decisions and more effective presentations of analytic results. Dashboards in particular often provide simpler, more personalized views of relevant data to improve understanding and evaluations of scenarios. Forecasting Forecasting applies analytical techniques, such as time series, econometric modeling and game theory, to predict outcomes based on historical patterns and scenarios. It can also be used to better understand past trends and model business processes. Operations research can use optimization, project scheduling and simulation techniques to identify the actions that will improve results as well. Query and reporting These tools allow analysts and users to link to appropriate data stores to create relevant, timely queries and reports. INSIGHTS RESEARCH 13 Exploiting ANALYTICS Model management This can be used to streamline the process of creating, managing and deploying analytical models, increasing professional productivity, and reducing modeling errors. Quality assurance/process optimization tools These tools can be developed and deployed to identify, monitor and measure the quality of processes over time and apply root cause analysis to complex problems. One of the most important aspects of this area is process optimization; analytical tools can be used to model business processes and measure the effectiveness and efficiency of the end-to-end process, identifying actions that will improve results. The use of analytics Analytics are used across the enterprise for a variety of purposes. Among other things, analytics help enterprises understand revenue and cost drivers, identify and gage financial risk, understand value markets with the most potential and associated value drivers, measure supply chain performance, improve the efficiency of internal processes, and understand customers’ needs, customer lifetime value, and loyalty. Analytics are used across all industries, For example analytics are used by financial services companies to target high value customers and manage risk, by retail companies to improve their offers to customers and optimize their inventories, by transportation companies to measure on-time performance, by government agencies to measure risk and fraud, and by most companies to improve the efficiency of their processes. Figure 2-1 illustrates a sample, enterprise-wide view of analytics. Web analytics have become particularly popular recently. They are not just tools for measuring website traffic, but can be also used for business market research. Web analytics applications can also help companies measure the effects of non-web (such as print and broadcast) advertising campaigns on website traffic, for instance. Google Analytics is the most popular Figure 2-1: A high level view of enterprise wide analytics we maximising shareholder value? we understand our revenue and cost drivers and their impact on the bottom line? nDo we understand and proactively manage our risk? What markets? What products and services? n What key value drivers? n What key performance indicators and measures? nAre n nDo n Strategic analytics Financial analytics is our network performing? is it likely to perform in the future? nHow are our services performing? nHow nHow Are we spending too much on IT or too little? n Is our IT service provisioning efficient? n How do we increase speed to market? Call resolution? n How do we reduce process errors and write- offs? n 14 INSIGHTS RESEARCH What do our customers want? What type of customer should we be acquiring? n Which customers do we want to retain? n How do we value the revenues and costs of each customer? n Network/service analytics IT/organization analytics Customer analytics HR/workforce analytics n What are our staffing needs? What elements of our business strategy drives human resources (HR) and workforce issues? n Do our HR processes address employee needs? n What is the cost of recruiting? n n www.tmforum.org Amazon’s massive scale performance analytics are as important as its recommendations example. It is used to generate detailed information for marketers about the visitors to a particular website. Importantly, it can track visitors from all referring entities, such as search engines, display advertising, email marketing, and digital collateral. Using these tools, marketers can determine the performance of the various referring entities. Google uses its analytics in conjunction with AdWords, its flagship advertising product, to generate most of its revenues. AdWords generates pay-per-click advertising, rendering a variety of formatted ads. Google gained almost $23 billion in ad revenues in 2009. Leader in customer experience analytics Amazon.com is another leader in analytics for customer experience, combining a variety of applications of analytics to advance its competitive position. Amazon famously popularized the recommendation engine about a decade ago with a system that suggests items to customers based on what they and others like them had previously bought, or that they have browsed recently. The system analyzes consumer purchases by product descriptions, prices, ratings, and other attributes, and then offers products from Amazon’s vast inventory with similar attributes, even offering low volume, ‘long tail’ products if they meet the matching criteria. The goal is to make the shopping process more effective, but also to help the customers ‘discover’ what they really want. Amazon views personalized recommendations as a key differentiating factor, and strives to create a ‘personal store’ experience for each customer. Less well known but equally important are Amazon’s performance analytics. While the company tracks website performance across about a dozen of its web properties, it also uses simulation on an ongoing basis to model, analyze and predict performance based on predicted workloads. The primary goal of these simulations is to help the company measure website latency across the globe, but it is also used to identify trends or issues, and simulate www.tmforum.org different website usage scenarios, among other things. The simulations are done on a massive scale, aiming to approximate the activity of almost 100 million active customer accounts across their web properties. Of particular concern to the company are seasonal peaks, such as Black Friday (in the U.S., this is the day after Thanksgiving, which is always a Friday, and although it’s not an official holiday, many Americans take a day’s leave and consequently it has come to be seen in the U.S. as the first official day of Christmas shopping) events. Netflix also combines discovery analytics with performance analytics and web analytics to enhance its competitiveness. According to company reports, Netflix is the largest subscription service streaming and mailing movies and TV series episodes. Netflix currently has more than 15 million subscribers. Its revenues for the first two quarters of 2010 grew 26 percent, with profits growing 38 percent. Subscribers are reported to be growing at 41 percent while the cost of acquiring a subscriber shrank 8.3 percent. NetFlix’s flagship analytic engine is its Cinematch recommendation system, which strives to create a personalized experience for customers, not only in the selections of material it makes, but also in how it presents them to the subscriber. Balancing distribution priorities Netflix uses analytics to drive its controversial ‘throttling strategy’, balancing distribution priorities across high use and low use subscribers. Lower use subscribers are given shipping priority, as they are the most profitable customers, and of course, Netflix wants to maintain their satisfaction and retain them. The company also argues this is the fairest approach. Netflix also uses analytics in other areas (for instance, valuing distribution rights), but the suggestion and distribution analytics are at the core of its customer experience strategy. INSIGHTS RESEARCH 15 Exploiting ANALYTICS Analytics as part of a larger business intelligence strategy As complex as analytics are, they do not exist in a vacuum. To be effective, they must be deployed as part of broader BI strategy. Among other things, this strategy must encompass: Access for consumers of information For analytics to realize their potential, their results must be not only actionable, but accessible to information consumers in an appropriate form, at the right time. The BI architecture must enable information consumers – such as employees, customers, partners, suppliers, or applications – to view results and interact with business analytic applications through a variety of facilities. These include web browsers, portals, widgets or web services using numerous devices, such as PCs, tablets, mobile phones, kiosks and so on. Data repositories Data repositories are at the heart of any data management strategy, and include various types of data stores like data warehouses, data marts, operational data stores, staged data aggregations, and metadata repositories. Although instances of these repositories often do not exist as single entities, or use the same technology, or reside in the same physical location, it is important to the BI strategy that there are methods to view them as single logical repositories through federation. This all sounds straightforward, but the sheer scope and size of the various repositories makes this a major challenge for almost all large enterprises. Data integration This involves the functions and services to source data, bring it into the warehouse operating environment, improve its quality, and format it for presentation. The data must be extracted, cleansed, transformed, aggregated, synchronized and loaded according to established policies supporting data warehousing, federation and information 16 INSIGHTS RESEARCH security requirements. It may need both batchoriented and real-time master data management capabilities, and must be able to execute within the necessary production time windows. Most importantly, it must deliver consistent, trusted and verifiable information. Again, this can be a monumental task in a large enterprise where literally thousands of data sources have been developed and deployed without the benefit of common data definitions and management policies. Moreover, as companies rely increasingly on external data sources, they control their data integration destiny even less. Data management and data integration are particular problems for service providers. Unlike some more focused analytics leaders (such as Google, Amazon, Netflix and so on). CSPs have long histories of launching various lines of businesses, expanding across geographies, merging with or acquiring other CSPs, and running their operations in a stove pipe fashion. In addition, historically their networks have often been purpose built, with multiple, separate networks or overlays managed separately. This has created huge data management and integration challenges for CSPs, who are struggling to deal with the resultant complexity. Despite these challenges, analytical applications and BI components remain powerful tools for better understanding market and operational trends and processes, and supporting decision making to improve business and operational performance, and profitability. In the next section we will see how these tools can be applied to the customer lifecycle in the communications industry. Where are analytics going? Having laid out the landscape in analytics and BI, it is useful to look at trends that are likely to develop over the next 12 to 18 months across industries. These developments will be important for CSPs to watch as they will create both opportunities and challenges. www.tmforum.org Technology is lowering the cost of data warehousing dramatically Self-service analytics empower end users Self service analytics and BI tools for have been available for a few years, but have struggled to gain popularity across many enterprises. With pressure on IT budgets increasing, and information workers feeling frustration with long backlogs on BI service requests, self service analytics will likely regain some visibility. Enterprises view this as a way to cut development expense, shrink the analytics development backlog, and expand the scope of practical insights. Also contributing to this trend is the availability of BI Software as a Service (SaaS) offerings, which promise low startup costs and near instant availability. Social network and unstructured data analysis bring powerful predictive analysis capabilities Social networks have grown very quickly, and likely will soon be part of most business and personal applications, including mobile, broadband, and streaming media services. In a brand and reputation-driven, online economy, or in select media and entertainment markets, social networks help to make the difference between success and mediocrity. Many enterprises are adopting social network monitoring and marketing tools, using analytics to search unstructured data for opportunities to better serve or even reach customers through this knowledge. Many see 2010 as the year social network analysis truly emerges as the new frontier in advanced analytics, supporting mining of behavioral, attitudinal, and other affinities among individuals. While social network content is only one source of information, it can be used across the customer lifecycle for CLV calculations, segmentation, targeting, retention, and even fraud analysis. www.tmforum.org Low cost data warehousing spreads fast analytics processing to new areas in the enterprise Though analytics and BI can, and do, exist independently from data warehouses, the warehouses remain critical infrastructure for many aspects of high performance reporting and queries, and for applying analytics across very large data stores. Over the last few years, the emergence of low cost data warehouse platforms and the migration of data warehouses from specialized platforms to general purpose computing infrastructure have lowered platform costs dramatically. This trend will continue over the next few years, and even the newer configurations will be pressed from a cost perspective by emerging cloud-based warehousing. Technology is playing a huge role here, with massively parallel processing, solidstate drives, in-memory processing, storage architectures and virtualized storage increasing speed and lowering costs. Lower costs make analytics more accessible to a broader variety of business problems by positively impacting return on investment. Cloud on the horizon for data warehousing As with other components of BI, data warehouses are being targeted by cloud computing suppliers, In fact, for web analytics, the cloud is shaping up to be a preferred platform. We will continue to see suppliers introducing cloud, Software as a Service, and virtualized deployments of their core analytic capabilities, to offer public, private and hybrid scenarios (see Insights Research report Cloud Services: Issues and opportunities for service providers and the Quick Insights report Cloud services: The user’s perspective, both available free to members from the TM Forum website). INSIGHTS RESEARCH 17 Exploiting ANALYTICS This may not happen quickly, but the industry is moving inexorably toward cloudbased services, which will supplement more traditional data warehouses, licensed software, and other deployment options. Predictive modeling tools become more user-friendly Predictive analytics can be powerful tools, helping business managers continually refine strategies and plans based on flexible analyses and forecasts that can leverage both historical data and current event data. Predictive analytics so far have been largely the domain of statistics experts and highly skilled data miners, but increasingly userfriendly predictive modeling tools are coming to market. Sometimes they are stand-alone toolsets, or more frequently now they are in the guise of new capabilities within suppliers’ portfolios. Much of the focus for new development by suppliers is for mass market deployment, using mechanisms such as wizards to ease development and providing visual tools for development and operation. There are of course some issues to be overcome before analytics can move forward. They include: n Information privacy concerns can slow the deployment of social network analysis and provoke regulators. n Cloud-based deployments could perform poorly, plus there are information privacy issues, or the danger of becoming locked into one supplier. n Cloud-based solutions and low cost appliances can encourage departmental sub-optimization, which will not necessarily benefit the organization overall. n The general lack of capital to invest could slow the adoption of new data warehouse platforms. Nevertheless, the trends outlined above are positive for all types of businesses – and in particular for data intensive industries like communications – and the issues that could potentially hold them back are being addressed. n There is a lack of experience and skills among end users, especially when dealing with problematic data sets, which could result in real difficulties and questionable recommendations from analytics. “Predictive analytics can be powerful tools, helping business managers continually refine strategies and plans based on flexible analyses and forecasts that can leverage both historical and current event data.” 18 INSIGHTS RESEARCH www.tmforum.org As market penetration increases, so does the cost of acquiring customers Section 3 Customer experience in communications and the broader digital services value chain – applying analytics for improved performance Seeking to increase profitability, communications service providers (CSPs) increasingly turn to initiatives in customer experience to differentiate themselves. Four market-related trends are driving customer experience, as depicted in Figure 3-1. The trends are: Figure 3-1: Market trends driving customer experience initiatives Market maturity nMarket maturity – while service providers across the world have benefited from the growth of mobile and broadband communications services, markets for today’s core communications products are approaching, or have reached, full maturity. Consequently, in most developed and many emerging economies, it will take more than excellence in core services to drive incremental profitability. Customer experience is particularly important in a mature market because as market penetration increases, so does the cost of acquiring customers. Also, as overall prices stabilize (or decline), new, alternative services or substitutes may come onto the market. Customer behavior & preferences Customer experience Economic trends New technologies nEconomic trends – fluctuations and changes in economic trends often drive change in the focus of customer experience programs. For example, in difficult economic times, customers’ discretionary spending may become more conservative. Accordingly, service providers’ focus may shift to emphasize customer retention, shortening cycle times and cost reduction. In better economic times, the focus may target new product/offer introduction, cross-selling/ upselling, and greater business agility. In this report, TM Forum’s research clearly points to a strong focus on cost reduction and retention, but also plans for the future that lean strongly www.tmforum.org INSIGHTS RESEARCH 19 Exploiting ANALYTICS toward revenue growth. Those plans are driven by greater personalization in sales and service, as well as increases in the effectiveness of sales and marketing programs, and greater speed in offering new products and services. nEmerging technologies – though the introduction of new technologies can often energize markets, those technologies can also shift the balance of market power. The enablement and introduction of smartphones in general (and the iPhone in particular), Web 2.0 applications (such as social networks), and underlying technologies and frameworks (such as service oriented architecture), are all good examples of game-changing technologies. For the communications industry, these technologies can underpin new services, but they can also be used to create more efficient or effective delivery of other aspects of customer experience. Our research shows some conservatism in the implementation of today’s programs, with an expectation of more aggressive adoption of new devices, application and technologies on the horizon. It also shows growing acceptance of the service provider’s role in digital enablement of many third party solutions. Service providers are turning to customer experience more and more as a differentiator as they seek to retain and upsell to customers, as well as increase loyalty and attract new subscribers. Their goal is to increase profitability by focusing on customers with higher lifetime value, and provide them with superior service. They also hope to raise lifetime value by offering a variety of attractive new services to those customers as time goes by. Nor is better customer experience only about retaining and upselling regular services to individuals, it can help a service provider service secure a powerful position as enabler in the emerging digital services value chain. It can also support the development of a two-sided business model for the CSP, to secure additional revenues and profits. Understanding customers’ preferences A clear understanding of customers’ wants and needs lies at the heart an effective customer service strategy. While offers to individual customers will become increasingly personalized, it is important to recognize that there is a common set of fundamental characteristics for products and processes that largely transcend industries and market segments. nCustomer behavior, preferences and demands – in many respects, customer demand is shaped by the preceding three forces, but also by evolving demographic, socio-political and attitudinal changes. An example would be the predisposition of young people toward instant communications and social networking. While some service providers may think of instant communications as simply new services to be offered, savvy companies know that they also represent preferred channels of interaction with these customers. They should also view instant communications as channels through which customers publicly critique their service providers or recommend them to others. As a result of that realization, several service providers are taking some first steps to leverage these channels. 20 INSIGHTS RESEARCH Figure 3-2: The application of analytics across the digital value chain Application/content providers Network operators Service enablers Virtual / CSP / lifestyle providers Content providers Application & support providers ISPs Payment operators Access, transport & core network operators Portals Service & content enablers Bundling network services, content and wholesale management services Virtual operators/ comms service providers Lifestyle providers/ distributors Manages customer lifecycle and offers products appropriate for their lifestyle www.tmforum.org They include: These characteristics generally apply across the customer lifecycle, as represented by Figure 3-3. n Better productivity as time is an increasingly scarce commodity for most people, and anything that can help save time, or make better use of it, is attractive to consumers and business customers alike. n Simplicity and intuitiveness have become an overriding issue for consumers over the last decade with the explosion of new products, services, and applications. Successful products must be easy to find, acquire, use, upgrade and maintain, or they are likely doomed to the scrap heap. n Convenience is very important; products and services must be readily available given time constraints and consumers’ ever shortening attention spans. n Risk – products and services must be perceived as low risk by the customer. Security, safety and reliability are especially important characteristics, as are predictable costs. n The cool factor is key; products seen as innovative, fun, cute or a boost to one’s image or status have been shown to increase desirability. Some aspects of personalization (such as skinning) also fall into this category. n Green – environmentally friendly products are increasingly attractive to a broad audience. Customer lifecycle Service providers that develop strategies to address these fundamentals across the customer experience lifecycle will be at a considerable competitive advantage. Addressing these issues will help them acquire new customers, upsell to current ones and increase overall profitability. The advantage comes from being able to gain some influence over customer experience, which TM Forum defines as the “observations, perceptions, thoughts and feelings arising from interactions and relationships (direct and indirect) over an interval of time between a customer and its provider(s).” By applying the scope of customer experience and the characteristics users demand to the service providers’ business models, we have identified six areas in which service providers can differentiate themselves, including: nProduct and service portfolio – the range of products and services a CSP offers its customers, including devices, connectivity services, content, applications, and so on. This includes pricing, acquisition and fulfillment; Figure 3-3: Customer lifecycle – the customer’s view Acquisition Compelling products? Attractive channel? n Easy to determine the right solution? n Can it be done quickly? n Is it secure? Fulfillment n n n n www.tmforum.org n n Convenient? Simple process? Fast? Secure? Usage n n n n n Convenient to use? Cool? Simple? Fast? Secure? Support n n n n Easy to get support? Personalized? Effective? Fast? Optimization n n n n n Compelling products? Personalized interaction? Easy to upgrade? Can it be done quickly? Is there any risk? INSIGHTS RESEARCH 21 Exploiting ANALYTICS nMarketing and sales include pricing, merchandising, offer management, campaign management and initial fulfillment; nService quality is the perceived quality of services, including availability, usability, sustainability, capacity, performance, stability and security; n Customer support refers to availability, accessibility, breadth, speed and effectiveness of support; nBilling, charging and cost management – much depends on the range and flexibility of the billing and charging options available, and enabling the customer to control costs based on transparent billing information; nBrand includes reputation for product excellence, image, responsiveness and trustworthiness. Finally, there are additional investment considerations that are important in developing the customer experience differentiation approach: nWhich customers (or segments) are most attractive from a customer lifetime value (CLV) perspective? What investments are most likely to attract and retain them? How to maximize lifetime value? nWhat is the investment budget, and the likely cost of capital during the investment period? Ultimately, the service provider must maintain appropriate levels of cash flow and profitability, balancing the needs of both customers and investors. There may also be variations on funding strategies, such as success-based capital in emerging markets, but with a bottom line emphasis on matching investment capital with initiatives that yield the highest return. Analytics can play a key role in each phase of the customer lifecycle, as well as in the planning and implementation of each component of differentiation. Here are some examples are key analytical applications for each differentiation component. 22 INSIGHTS RESEARCH Product and service portfolio Clearly, an important aspect of customer experience is having an attractive set of products and services. Breadth is certainly important, but the key to success lies in creating a series of compelling offers – whether they are individual services or, more likely, multi-service bundles that appeal to the target customer base. Bundling is a concept that emerged approximately 15 years ago, yet service providers still struggle to get that concept right. While many converged operators offer a triple play option, few have been able to translate their assets into focused offers that target segments. They instead opt to take a ‘moreis-better’ approach. While a few segments (such as sports fans and movie mavens) are sometimes well served, others are left to slog through large swaths of content – effectively acting as their own packagers. Service providers should look to the web to discover emerging trends that can be reflected in their services. For example, the huge uptake of social networking can be leveraged by offering a package that encourages communication among a pre-defined user group. Voice, messaging and instant messaging services could all be configured for use among that group with the benefits of speed and convenience. Also, leveraging services by integrating them tightly, or taking an integrated multi-screen (handheld, PC, TV, tablet) approach to service assets could improve satisfaction, as well as generate additional revenues. For example, allowing customers to attach video trailers of new pay-perview titles to messages allows service providers to leverage social networking principles and promote products at the same time. Perhaps an obvious example of a hot product is the iPhone, which has been an acquisition and retention engine for the companies offering it. Some might argue that it hasn’t proved profitable, though, as iPhone users tend to be heavy users of flat-rate data plans, and Apple retains control of its App Store. Regardless, the top line revenues and subscriber gains have been impressive. Notably, the iPhone offers many of the key characteristics listed above under www.tmforum.org Reduced cost and better services are often the best twin outcomes customer preferences, including productivity, simplicity (ease of use), low risk, and definitely the cool factor. Whether or not service providers choose to go an iPhone-type route, it is clear that a strong device portfolio, especially in wireless, will be key to a strong customer experience. Analytics can be used in a variety of ways to improve product and offer development. For example: nThrough segmentation analysis, CSPs can develop products and offers that are better aligned with their customer base; nUsing predictive analytics to understand adoption trends of features and functionality; nBetter sales analysis to understand the profitability of products and bundles; nGain greater knowledge of the level and type of product acceptance through analysis of unstructured text such as support logs, social network content, blogs, and web reviews. One of the most important strategies, and one that often does not receive enough attention, is eliminating barriers to usage. Simplicity and convenience matter to customers. In fact, the instantaneous nature of the web has driven strong expectations of always on, easy to use services among most customers. No matter how good the service, content or device is, it is at best a lost revenue opportunity and more likely a significant cause of dissatisfaction if the customer cannot get it to work. One service provider we spoke with found that incompatibilities in the default web browser of one of its most promoted smartphones made it difficult for users to acquire some of its new video services, in some cases making it all but impossible to turn on. Not only did this waste promotion efforts and investments, it resulted in frustrated customers and higher contact center expenses. Certainly much of this could have been avoided with proper process analysis across devices. Process analytics can help to eliminate complexities, provide more predictable results and lower costs for service providers. For example, though some may not think of analytics www.tmforum.org that model, measure and report on order-tocash flows under the umbrella of customer experience, the speed and simplicity resulting from the use of such analytics can have a positive impact on customer experience and lower process costs for the service provider. Reduced cost and better service are the twin outcomes many service providers are seeking. Marketing and sales Marketing and sales are in many cases the workhorses of the acquisition cycle, and important in retaining customers and improving profitability. They are also drivers of important touch points, supporting offer management and educating the customer base through wellrun campaigns. Properly leveraged, they can contribute to the bottom line in both good and bad economic times. For example, the promotion of new offers with simplified pricing models or carefully targeted bundles can improve customer perception, productivity, convenience and simplicity, not to mention taking a greater share of the customer’s wallet. Intelligent, real-time offer management and pricing optimization analytics can help make offers more compelling by combining new products on a trial pay-as-you-go basis, or offering short term specials as incentives to customers who might otherwise be unsure about an offer. For example, something as simple as offering a short term promotional price or perhaps some free media product in exchange for an immediate top-up could be compelling for some customers. This last example is particularly critical during difficult economic times, when discretionary cash is harder to come by and the perception of better value is an important factor. Of course, the creation and implementation of such offers may well require an upgrade of the marketing systems, as well as other systems across the fulfillment, billing and care areas. Important analytical capabilities for marketing include: nsegmentation models that consider demographics, billing history, credit worthiness, and loyalty “Process analytics can help to eliminate complexities, provide more predictable results and lower costs for service providers.” INSIGHTS RESEARCH 23 Exploiting ANALYTICS nanalytics that develop customer lifetime value models for use in offer and engagement tactics; nprofiling capabilities to identify customers who might be candidates for additional services (such as cross or upselling); ncampaign management systems that integrate with segmentation and profiling capabilities, synchronize across multiple inbound and outbound channels, and provide real-time feedback on results; nusing analytics to predict when a customer might be about to churn and suggest what to do about it. Another important emerging capability in marketing is that of next best action, an inbound marketing technique that we discuss below as part of customer support, as that is the context in which it is often implemented. Service quality Service usage is, of course, the most common experience the customer has with the service provider. Despite that fact, monitoring the quality of the service provided to individual customers has been difficult for service providers until recently. The difficulty lies in collecting and aggregating data by customer rather than asset or service, and to do so on an end-to-end basis. Succeeding in doing this in real-time is difficult, but important if a service provider is to view networks and service performance as its customers do. This is a far more effective and specific picture of a particular customer experience than given by performance management systems, which tend to either measure performance of networks, or particular areas in networks, or perhaps the experience of a group of users. There are a variety of uses for the output of these systems – including identifying poorly performing network assets or devices – but perhaps none is more powerful or useful than providing an up-to-date view of a customer’s experience to a customer service representative (CSR) fielding a call in a service center. The quick, accurate identification of problems can help speed problem resolution and shorten the time 24 INSIGHTS RESEARCH required by the CSR to satisfy the customer. It can also lower the cost of support for the service provider by shortening resolution cycle time, making it a win-win for both CSP and customer. Service providers can also use these systems for proactive outreach, that is, informing a customer of a corrected problem before the customer discovers or reports it. This can improve customer confidence and satisfaction, and empower the service provider to capture usage revenue it would have otherwise missed. Again, this is all about profitability, not altruism, as stressed in Section 1 of this report. Key features for systems that manage service quality include: nscalability, and data correlation and reduction to manage the sheer volume of network and service data; nnear real-time aggregation and reporting; ncollecting and aggregating information, end- to-end, from a broad variety of devices. Strong data collection and analytical processes are the keys to success, along with being able to integrate results into core business and operations processes. Customer support Customer support encompasses the response to a variety of situations, from responding to billing questions, to service problems, product questions, and so on. Such a broad remit, combined with the preference of human contact by many high-touch customers can create a challenging financial situation for service providers. Most see the contact center challenge as a balancing act between customer satisfaction and operational expense. Some keys to an effective, affordable customer care strategy include: nproviding an appropriate level of service based on a customer’s lifetime value; nshortening cycle times; nresolving problems on the first call; nsupporting the customer through their preferred channel; www.tmforum.org Next best action marketing is good for customers and service providers npersonalizing the experience; nproactively caring for select customers, perhaps on particular issues. Providing an appropriate level of service is key to profitability. Building an effective support strategy for a customer based on their lifetime value, service portfolio and pricing plans is the goal. This can be tricky because of the variability of customer preferences. Certainly self-care using web, interactive voice response technologies and even messaging can be effective. However, preferences vary among business users and consumers, as well as high tech and high touch customers, and among young people and seniors. Understanding and acting on particular customers’ orientation and preferences is very important, and can drive appropriate routing. Driving down cycle times is a noble goal that reduces cost for the service provider, while improving the quality of customer service. This can be accomplished by: nproviding the CSR with the right customer account information prior to or while call routing is underway; ntraining the CSR in questioning and problem- solving techniques; ndealing with simple questions through self- care. Another key productivity aid for CSRs is rapid access to relevant information from a service quality management system on the trouble experienced by a calling customer. Not only does this shorten the amount of time needed to determine the problem, it also lowers the probability of misdiagnosis, and instills confidence in the customer. Important tasks for analytic applications to support functions include providing CLV calculations to determine appropriate prioritization and dealing with the likelihood of a customer churning by direct actions and offers. Another effective approach is the analysis of logs, and other information to improve the efficiency of processes in specific contexts. www.tmforum.org Service providers should be working continually to reduce cycle time on core services, as they need to master these areas before moving on to more complex services in future. There is a new opportunity in support emerging through next best action marketing, which is really more of an inbound strategy than a support technique, but it is often delivered by the support organization during the support process. Unlike usual, outbound marketing campaigns, next best action is suited to inbound communication from customers as most of them will expect a considered response to their request, complaint or inquiry. Next best action enables the CSP to respond to the customer’s needs during the interaction, while ensuring that the action taken also benefits the company. Next best action relies on decision models to help determine how to approach a customer prior to, as well as during, an interaction. A decision engine uses predictive statistical modeling techniques to take into account each customer’s expectations, likings and probable behavior. The resultant approach may be to make an offer, resolve a complaint, or perhaps make another recommendation in real-time, based on the customer’s response. The supporting software combines the service provider’s business rules with predictive and adaptive analysis. It’s still early days for next best action, but a number of large service providers have already used it successfully. Perhaps the most critical dependency for the approach is the quality and quantity of the customer data with which the decision engine has to work. Account data and history are important, and recently there has been some discussion about including service quality information as part of the input. Billing, charging and cost management There seem to be as many views of billing as there are bills. Long time billing employees at incumbent carriers may recall nostalgically the paper bill as a monthly touch point, arriving in an envelope stuffed with promotional materials and the latest news from the operator. Customers’ “Service providers should be working continually to reduce cycle time on core services, as they need to master these areas before moving on to more complex services in future.” INSIGHTS RESEARCH 25 Exploiting ANALYTICS memories may not be so fond however: Large, detailed and complex bills comprised charges borne of complex tariffs, plans, additional government taxes and fees. Many businesses and wireless customers were happy with them. Expecting customers to be accountants will never be the goal of a customer-centric organization, yet the inflexibility of legacy systems has often created just that scenario, as well as making billing increasingly expensive and acting as an impediment to the introduction of new products. In addition, many customers have approached new offers with real caution because they have felt burned by higher than expected data, messaging and roaming charges without being made aware of the amounts they were spending. While service providers have come a long way in simplifying tariffs and plans, they still have a long way to go in many areas. Many still do not make charges transparent to customers, or provide them with spending control mechanisms (for instance, allowing customers to set their own usage limits) that would ease customers’ concerns about taking up new services. Service providers have been working to control costs for some time now, especially by consolidating legacy billing systems. Despite that work, they have not been as successful in implementing flexible rating and charging. As a result, there are two emerging areas of interest: real-time revenue management and dynamic, policy-based billing. Real-time revenue management is often thought of in conjunction with prepaid wireless services, but attempts to converge wireless prepaid and postpaid systems has been an issue for CSPs for the past decade. Some CSPs have chosen to transform their OSS/BSS to support convergent offerings, but others have opted to leave the two silos alone. Perhaps the strongest contributor here in terms of analytics is revenue assurance. It is generally thought of as a profitability improvement tool, but it can help indirectly by making bills more accurate, and consequently 26 INSIGHTS RESEARCH reducing calls to call centers. In fact in many ways, revenue assurance systems can behave as operational analytical applications for the revenue management process. Analytics can also be used to assess customers’ reception to pricing plans and billing and charging operations through the analysis of interaction logged in the call center. Branding In many ways, the first five areas we identified are important to, or even define a brand, which, in turn, has an impact on these elements. Certainly it is essential to the overall perception of the service provider. Brand also can be a powerful acquisition and retention tool, and last but not least, service providers can gain from associating with other brands and products, such as the likes of Apple or Google (Android) devices. As mentioned before, two perennially admired brands are Apple and Amazon.com. Apple’s branding strategy in many ways focuses on emotion, as its products conjure images of lifestyle, imagination, liberty regained, innovation, passion, hopes, dreams and aspirations. To summarize, Apple’s branding alludes to the concept of giving power to the people through technology. Its image also reflects simplicity not only in the technology, but also in people’s lives. For example, the iPod is not just an attractive media player, but combined with iTunes, it becomes an ‘in-your-pocket music and digital media collection.’ Similarly, the iPhone promotion does not just focus on the attractiveness of the hardware or software, but rather on application diversity and effectiveness through Apple’s ‘there’s-an-appfor-that’ campaign (that is, to boost customer productivity). The advertising then goes on to demonstrate just how simple and convenient (simplicity and convenience) it is to use. Amazon.com also has done an exemplary job of creating one of the world’s strongest brands in what could be considered by some to be record time. The company achieved brand recognition by realizing what its real business www.tmforum.org Amazon has created one of the world’s strongest brands in record time is. “We’re not in the book business or the music business. We’re in the customer service business,” stated Amazon’s CEO, Chairman and founder, Jeff Bezos. Amazon’s highly effective brand positioning is built on the concept that even though web shoppers want the ease and convenience of doing business online, they also want personalized customer service. Based on this fundamental insight, Amazon.com goes to tremendous lengths to make sure the online shopping experience supports its brand positioning. It also is one of the leaders in developing web communities, giving its loyal customers a place to go even when they are not actually shopping (or at least when they think they’re not). Amazon’s brand has been updated during the last few years to augment its ‘World’s most customer-centric company’ strapline, used since 1997, with the ‘World’s largest selection’, which focuses on choice and competitive pricing. Amazon also encourages its partners to deliver the lowest prices. While CSPs may not be aiming for the same brand as Amazon or Apple, they should be working to develop a brand that is: ntargeted – appropriate to the market and product set; nclear – delivering an instantly comprehensible message; ndesirable: – something customers want to have or be part of; nunique – standing out in the crowd; nmeaningful – matching customer expectations; nconsistent – across all aspects of the company; nrecognizable – clear, easily identified, repeated; nactionable – can be leveraged and supported; nextensible – supporting new products, partners. customer value. This is typically accomplished by creating a performance management model and tracking changes over time to determine drivers of brand value for a particular company. It may also extend to comparing performance against that of competitors to discover new sources of value and impacting initiatives. As can be seen from the examples in each of the six areas influencing customer experience, the fundamental underpinnings of delivering excellent customer experience involves capturing accurate and appropriate information about the customer from across the organization. That information needs to be analyzed then routed to the ‘point of opportunity’, so that it can be acted upon in the most effective way. The importance of analytics in customer experience It is easy to see why analytics are among the hottest topics for service providers looking to improve their customers’ experience. Analytics are embedded in almost all of the areas we have discussed in this section. While this may seem like a tall order, analytics tools exist in every phase of the customer lifecycle to support these goals. These tools are highly dependent on collecting a variety of information from far flung systems and even network elements (for example, the home subscriber server, the home location register, SMS and so on) and in some cases require realtime mediation, aggregation, transformation and analysis of data. Despite this complexity, the payback in customer loyalty and profitability can be well worth the difficulty. Analytics can be used to better understand the drivers of brand value, monitoring value creation and its impact on enterprise and www.tmforum.org INSIGHTS RESEARCH 27 Exploiting ANALYTICS Section 4 Analysis: Service providers discuss present and future actions and plans for addressing analytics in customer experience In order to investigate firsthand how service providers approach customer experience, and how they use or plan to use analytical applications, we conducted in-depth interviews with senior executives within 20 service providers around the world. While the magnitude of different programs varied, and business and geographic scopes differed among the service providers, all had active efforts underway, and all were far enough along to at least discuss business drivers, focus areas, program challenges and critical success factors. As we discovered in last year’s survey, many of the programs have historically struggled to make overall progress with customer experience, and many service providers still treat aspects of customer experience as separate islands of business processes. Additionally, service providers admitted they were dealing with many issues tactically rather than providing a company-wide, planned, and coordinated program. There is still a fair amount of independent tactical activity going on today, but senior management seems to be embracing the idea of an holistic approach to customer experience, and in some cases the seeds of implementation are being sown. Driven at least partially by difficult economic conditions, much of today’s approach focuses on the here and now, taking out cost in specific functions, incrementally improving support and service quality, and struggling with a mass of diverse, incomplete and often inaccurate data sources. Progress here is further hindered by the conservative investment environment brought on by the global economic crisis. Yet CSPs are cautiously optimistic looking out over the next two to four years, though not 28 INSIGHTS RESEARCH as optimistic as they were last year. They see a more holistic approach to customer experience and analytics, improving data management, more cross functional focus on solving customer experience issues, and increasing agility around customer responsiveness. As importantly, several respondents expect to initiate a stronger focus on service enablement, and to deliver on the promise of the new services and business models that are increasingly discussed in the industry today. Improving their customers’ experiences can do nothing but help them in this venture, improving their profitability, and positioning them as more valuable than ever to current and potential business partners. The service providers we interviewed came from four segments across the world. The largest segment, representing 45 percent of Figure 4-1: Respondent profiles – views from across the industry Converged operators Wireless operators 5% Cable operators Other 20% 45% 30% www.tmforum.org Many service providers are struggling to control costs while managing user experience our respondents, were convergent suppliers offering voice, data, wireless, and in some cases other services. The majority of the respondents were also in the process of rolling out some form of video services. Most of the converged carriers operated primarily in a single country, though a few had a significant regional presence. Wireless mobile companies were the second most common respondents, comprising 30 percent of the base. Some of the wireless mobile operators were multicountry operations. A few owned some fixed infrastructure, but their fixed revenues were dwarfed by their wireless operations. Cable operators made up 20 percent of the interview base. All but one of the cable companies operated primarily in a single country, though one had operations in several countries, and one was a big wireless player as well. Finally, we had one fixed-only service operator with business just in one country. The vast majority of those surveyed were among the top-ranked operators in terms of market share in the countries they served. In a few cases, the mobile operators slipped below this ranking in some countries. In only two cases was one of the operators not among the top three. Drivers for programs: conservatism rules Drivers for current customer experience programs strongly reflected the difficult economic times brought on by the global economic crisis, and the increasingly mature state of markets, especially in developed countries. Given the opportunity to provide their top three drivers, reducing costs was the highest priority. The most common target area for cost reduction was customer support. Service providers were addressing this in a variety of different ways, including outsourcing selected functions, implementation of customer selfservice and contact center consolidation. This is balanced against the second and third most popular concerns – reducing churn www.tmforum.org and increasing customer satisfaction. While understandable in a recession, this ranking tends to confirm the view that many service providers are struggling to control costs while managing customers’ experience. For service providers, the best way to address the three drivers simultaneously has been through process changes that bring about reduced cycle times, and faster problem resolution (preferably on first contact). Several service providers have been working to improve the information and analytical tools available to their customer service representatives (CSRs) at the point of contact. Several have also experimented with next best action capabilities (see Section 3, page 25 for a description of next best action). In addition to systems and infrastructure changes, service providers also mention better CSR training and retention programs as a means for improving customer experience. Empowering CSRs with the training and authority to solve customers’ problems without escalation can be a tremendous satisfier for customers, as it shortens the resolution time, and instills more confidence in the service provider. It can also reduce support costs, but only if CSPs can retain personnel after training. Other areas of focus for cost reduction include improved self-service capabilities, streamlining and automation of the fulfillment process, and systems consolidation. Many believe that self-service holds great promise, but have not yet seen rapid uptake of the facilities by their customers. The next priority is improvement of marketing campaigns, with 35 percent of respondents including it in their top three priorities. While those who were most enthusiastic about improving sales seemed to be companies where service markets were still growing, there were some representing mature markets as well. Those respondents remained focused primarily on improvements in segmentation, offer development and management, and opportunity management, with a few including improvements in contact and activity management. INSIGHTS RESEARCH 29 Exploiting ANALYTICS Figure 4-2: Drivers for current programs – conservatism still rules 80 70 65% 60% 60 30 INSIGHTS RESEARCH 55% 50 40 35% 30% 30 25% 20% 20 10% 10 service providers feel suppliers need to do a better job in adapting their software to best practices, and training service providers on those best practices. In addition, suppliers need to improve application configurability for situations where service providers choose to deviate from expected processes, or customize them for competitive advantage. Many participants in the survey expressed concerns regarding meeting financial and schedule goals, and 35 percent of respondents cited these issues as among the top three challenges. In many cases, the root of the problems could be found in combinations of other issues, such as COTS functionality or data quality. Program managementrelated issues such as change management, expectation management, poor requirements definition and lack of timely problem resolution also contributed to challenges. In fact, change management was often cited as the most complex, if not the most difficult issue to resolve from a program management perspective. That was especially true for service providers that did not deploy a single program office to manage programs. Reduce fulfillment cycle time Increase service velocity Increase customer acquisition Increase service management Increase marketing campaigns Increase customer satisfaction 0 Reduce support costs Challenges in executing customer experience programs When asked about their top three challenges in executing their customer experience programs, service providers were vocal, and spent some time sorting out priorities. The biggest issue overall was the state of customer data accuracy and usability. This was also a key finding last year’s Strategic Transformation for the Digital Economy Insights Research report (available from the Forum’s website). Several service providers cited the difficulty of converting data housed in legacy systems or network platforms, especially when streams from multiple legacy platforms with disparate data were being consolidated into a single system. The issue was cited most by the convergent and cable operators, but was also an issue by some in the mobile segment as well. This is not surprising, given the stove pipe nature of legacy OSS and the existence of critical data in all manner of formats in network elements and systems. Following closely was the issue of legacy integration capabilities: While most felt their systems worked well in performing their original duties, legacy systems were cited as being inflexible and difficult to adapt to new business issues, as well as their integration with other systems being very complex – all of which means time and money to the service provider. Next came the issue of commercial offthe-shelf products (COTS) functionality. This applied primarily to more recently implemented systems. A number of service providers expressed concern over the lack of clarity in feature and function definitions, lack of flexibility in application configuration, lack of extensibility to new services, and in one case admitted ambiguity concerning the original requirements definitions. With the analysis, it became apparent that Improve customer retention Some 30 percent of respondents included service management initiatives in their top three priorities, with much of the current focus revolving around data collection and performance analytics. “Several service providers cited the difficulty of converting data housed in legacy systems or network platforms, especially when streams from multiple legacy platforms with disparate data were being consolidated into a single system.” www.tmforum.org Creating a more responsive, personal and flexible experience is a priority www.tmforum.org Figure 4-3: Challenges – creating data driven relationships from legacy infrastructure 80 70 60 60% 55% 50 40 35% 35% 30% 30 30% 20% 20 20% 10% 10 Availability of critical skills Top management commitment Prioritization of initiatives Organizational change Managing change Achieving financial returns COTS functional fit Data accuracy/ usability 0 Legacy systems capabilities Understanding and tracking the impact of all the changes across various aspects of multiple programs was an exceedingly difficult task. A lack of a clear conflict resolution or process across multiple programs – or (in one case) lack of accountability around reporting changes that impacted other processes – put pressure on schedules and program costs. Most respondents felt formal change management structures and processes were extremely important, and a few cited organizational discipline problems. Organizational change difficulties were expressed as a concern by 30 percent of the respondents. The most common concern was the acceptance or non-acceptance of change by the target organization – especially where consolidation of either systems, processes and/or organizations were involved. A few respondents also cited concerns brought on by changes in a separate entity, as those changes sometimes have an unforeseen impact on downstream organizations. While the impact may have been caused by insufficient planning or change management processes, it was seen more as an organizational issue by the respondents. Availability of critical skills was cited as an issue by one-fifth of respondents. This was most consistently an issue of technology management skills within service providers implementing new technology, such as web services. A few also brought up issues with knowledge and skills around best practices and process definition, or the ability to think creatively regarding new business practices. Finally, a number of service providers commented on the difficulty of determining where to focus. Given the breadth of the problem, the complexity inherent in each of the components, and the state of the infrastructure, service providers felt they had gone through years of a process that they likened those to ‘plugging leaks in a sinking boat.’ They thought it would be better to step back, gain a broader understanding of what should be accomplished, assess their current state, and begin the planning process. Respondents also noted that the most effective planning was driven by the business organization, rather than by an attempt to modernize the IT infrastructure with the latest technology. Future goals for customer experience management The next question posed to service providers revolved around plans for the future. Most respondents were comfortable with looking ahead two to four years. Service providers were more conservative in their response this year than last, with customer retention and cost reduction heading the list. Creating a more responsive, flexible, and personalized experience for customers remains a priority. This will require more agile, responsive processes and systems, especially as digital service enablement becomes more important operationally. At the heart of these efforts is a push for ‘customer intelligence.’ Service providers increasingly understand the importance of accurate, timely, comprehensive data on customers, better analytics and the role they INSIGHTS RESEARCH 31 Exploiting ANALYTICS Analytical application priorities We then asked respondents to rank a variety of analytics categories. We asked for rankings in terms of overall importance and also current capability, with 5 being the highest score. At the top was a tie between contact center 32 INSIGHTS RESEARCH Figure 4-4: Moving to the future – cost control and customer retention lead the way 60 50% 50% 45% 40% 40 35% 25% 25% New customer acquisition 30% 30 Improve service quality 50 20 10 Improve offer management Improve customer data quality Improve marketing effectiveness Improve process agility Improve customer retention 0 Reduce customer support costs play in customer satisfaction – especially at the point of opportunity (that is when the customer is engaged by an agent, a self-service screen, an interactive voice response, a text or instant message). Another important effort is that around sales and marketing effectiveness. Most of the respondents felt that once the global economic crisis finally eases, there would be considerable momentum in their companies directed toward deeper penetration of existing accounts, as well as new customer acquisition. In addition, there would be a stronger focus on new products and offers. To gain maximum benefit from these initiatives, service providers will need to improve their sales and marketing effectiveness, especially in the areas of opportunity management and campaign management. Improving service quality remains a priority for many service providers, and was seen as a key driver of customer retention and important to new services’ success. Finally, new customer acquisition will remain a priority for many. Particular interest again was expressed in tools like campaign management and in some cases improvements in service quality to attract these customers. While many of our respondents’ current work deals with the here and now, such as lowering costs and cleaning up data drawn from the labyrinth of legacy systems and network elements, service providers are planning a more holistic approach in the longer term. They will focus on improving data management, looking to solve customer experience issues across organizations, and increasing agility and responsiveness. In the end, improving customers’ experiences will help service providers improve their profitability, and position them as more attractive business partners in the digital value chain. and customer retention for overall importance. This reflected the earlier priorities around cost reduction and retention. Both received relatively high scores for capabilities, given basic capabilities CSPs have in place today, though contact center analytics edged out retention tools. Product management and revenue management followed closely behind with scores of 4.1, though product management received a slightly higher score in current capability. Product management reflected both the need to assess products for profitability, but also to plan for a large increase in the number of products and offers available in the future. Revenue management reflected the need to accurately and efficiently capture all revenue to increase profitability. Service quality management came next, tied with opportunity management and offer management. Interestingly, service quality management scored somewhat higher with wireless companies than with converged operators. Most of the concern with service quality management (SQM) reflected the need www.tmforum.org Service providers seem to lack priorities and think everything important to manage performance of rapidly growing data services. Offer management reflected concerns about the need to target and personalize, especially with respect to data services. Opportunity management concerns mostly reflected execution issues, and being able to get the right offer to the customer at the right time. Sales performance management received the lowest score in terms of capability, but also in importance. Interestingly, though there are clear differences in priorities in other questions, all of the areas cited here were close together in importance. This is a worry as it seems to reflect confusion about investment priorities. In effect, by having a range between 3.9 and 4.2, CSPs seem to feel that everything is important. They will need to make hard decisions around priorities, as addressing all of these needs at once will be a daunting task, especially combined with other challenges. Barriers to analytics implementation: cost, complexity and data integration We asked respondents to name their top three barriers to analytics implementation. Three issues led the long list. Tied for first were overall cost and data integration issues. Respondents felt that analytics packages were expensive to buy and implement, though many felt there was great potential value. Data integration has long been an issue for analytics, especially among large incumbents with decades-old legacy systems and data stores. A number of respondents cited difficulties with previous projects as concerns. Many of these projects did not achieve their goals, due to data quality issues, lack of business value, or lack of business participation. Some respondents felt that this history would be difficult to overcome, though most felt they had learned lessons from earlier projects. Next came employee resistance to change. Some respondents, especially in older companies, felt that employees would be resistant to ‘giving up their old spreadsheets in favor of fancy new tools’, though they agreed that the newer tools would drive better cross “Respondents felt that analytics packages were expensive to buy and implement, though many felt there was great potential value. Data integration has long been an issue for analytics, especially among large incumbents with decadesold legacy systems and data stores.” Figure 4-5: Analytical application priorities 5 very high capability very important 5 4.2 4 4.2 3.8 4.1 3.6 4.1 3.6 4 4 3.7 3.5 Importance 4 3.5 3.9 3.6 4 www.tmforum.org Offer management Sales performance management Area Opportunity management 1 Service quality management 1 Revenue management 2 Product management 2 Customer retention 3 Contact center analytics 3 not important 0 at all Current capability 3.4 0 no capability INSIGHTS RESEARCH 33 Exploiting ANALYTICS 34 INSIGHTS RESEARCH 50 45 45 40 40 35 30 25 25 20 20 20 20 15 Departmental silos Current tools adequate Skills availability Inability to demonstrate value Employee resistance License costs Historical project issues Complexity Data integration challenges 0 No single supplier solution 10 10 Cost Figure 4-7: Critical success factors – data quality and clear business cases win the day 80 70 65% 60 50 40% 40 35% 35% 30% 30 30% 25% 20% 20 15% 10 5% Single vendor solution Rapid development capabilities Ease of use Vendor support Strong program management Business IT partnership Well understood business problems Management commitment issues 0 Clear business case Critical success factors: data quality and clear business cases Finally, we asked respondents for their thoughts on critical success factors for analytics deployments. Again we received a long list of responses, reflecting the complexity perceived. Not surprising, data quality and relevance lead the list, showing recognition of the importance of data to the success of analytics. Also important is the business case, especially given the perceived expense of analytic solutions. Management commitment and well understood business problems came next, reflecting the need for cross functional collaboration and high level focus necessary for large project success. Tied for fourth were strong program management, again reflecting cross functional efforts and focus, and business IT partnerships, indicating the need to collaborate to solve real business problems and fit with business processes. Finally, some CSPs cited suppliers’ support, ease of use and rapid development capabilities as important. While respondents clearly see value in the deployment of analytics, business conditions, complexity and some previous project shortfalls have created some serious concerns. In addition, as cited in Figure 4-5 (see previous page), there is little differentiation in importance of key functions. CSPs need to clarify their priorities and focus; not everything is equally important. Suppliers need to work closely with CSPs to help them identify and quantify opportunities and business value, determine realistic returns and, where possible, simplify the planning and deployment processes. Figure 4-6: Barriers to analytics implementation – cost, complexity and data integration Data quality & relevance functional understanding. This was reinforced by 20 percent responding that current tools were adequate. The inability of suppliers to demonstrate business value was cited by a few respondents, as was lack of skills availability within CSPs. Departmental data silos were also cited as a problem by a few. www.tmforum.org CSPs cannot afford to excel in every aspect, they must choose carefully Section 5 Conclusions and recommendations Compiling this report involved speaking to 20 service providers and a similar number of suppliers, as well as perusal of countless strategy documents, white papers, product descriptions, and other documents. Overall, we found that although many analytics and business intelligence (BI) programs for customer experience are in the early stages of implementation, there are some lessons already learned. As a result, we feel able to make some important recommendations: 1. Understand the big picture We believe that virtually every point of touch between customers and their service providers or partners contributes to customer perception, satisfaction, loyalty, and ultimately to the profitability of the service provider. Analytics can be used to model, measure or predict aspects of customer experience. In addition, there are numerous opportunities to apply process analytics to improve internal processes, saving time and money. Service providers must develop and manage an enterprise-wide vision of all aspects of customer interaction, and figure out where analytics fit best if they are to deliver an appropriate experience to customers. An overall, enterprise-wide view is most certainly how the customer experiences a provider – that customer interacts with individual departments within the CSP – and to understand that experience it must draw data from all parts of the enterprise. 2. Pick your places While all service providers perform similar functions, their customer experience related strengths, weaknesses, strategies, priorities and programs may differ significantly. A successful customer experience strategy does not mean the CSP has to be world class at everything, and in fact CSPs probably www.tmforum.org cannot afford to excel in every aspect. Rather CSPs must determine which areas are most important for them to succeed and where they can get payback by using analytics. Properly applied analytics can help to determine the areas to be targeted, model and improve the processes impacting those areas, and model, predict and measure some of the results of these actions. The concept here is that the customer experience strategy and the related analytics deployment strategy must be tailored and affordable. One of the concerns we have here is that there was little differentiation in importance in a variety of focus areas. CSPs will need to make tough decisions in addressing issues with limited budgets if they cannot prioritize. 3. Mix in some small, fast deployments CSPs are typically big enterprises, and their systems and projects reflect that; they tend to be large scale and so take a considerable time to implement. This is true as well of traditional analytics and BI projects. They tend to deal with highly complex problems, require large and diverse data sets (often of questionable quality) and often encounter unforeseen problems. In fact, 35 percent of respondents named ‘historical project problems’ as a serious barrier in our survey, and 20 percent cited ‘inability to demonstrate value’. By choosing a few small but impactful areas where analytics can be quickly deployed, CSPs can rapidly realize benefits and gain some momentum. Selected real-time analytics may be a good place to start here, as they tend to draw from current data, and do not require the collection and rationalization of mounds of historical data. INSIGHTS RESEARCH 35 Exploiting ANALYTICS 4. Consider a continuous improvement strategy It makes sense to approach analytics for customer experience from a continuous improvement perspective given the scope and complexity of the industry, the volatility of the larger digital value chain, the broad scope of analytics-related opportunities and limitations on investment capital. A good starting place might be modeling and measuring the impact on customer experience of a particular process, or set of processes, to make the most effective changes to them. The next step could then be to apply process oriented analytics to determine how to make the process more efficient and decrease cycle time. From there, a CSP could apply a similar approach to other key processes. A handful of our respondents are already pursuing this approach. 5. Manage customer data as a corporate asset, but… We encourage CSPs to recognize that comprehensive data integration is a long term project. Almost every aspect of customer experience analytics hinges upon the accuracy and accessibility of data. Unfortunately, this data is found in every nook and cranny of the service provider organization, in every imaginable format, and at times in conflict with the similar data from other sources. Data management programs must, therefore, address quality issues, and ensure data accessibility and usability, but they must walk before they can run. One approach a few of our respondents discussed was to focus the most attention on a handful of critical data elements for initial improvement. Once they were improved, the group moved incrementally onto another small but critical set of elements. This saved time and money, and demonstrated recognition of the value to business users – an important concept for IT organizations. 36 INSIGHTS RESEARCH 6. Pay attention to privacy laws Privacy laws vary greatly between geographies, and must be respected. A single publicly disclosed violation of privacy laws can have a big impact on a company’s brand, and ultimately its relationship with its customers. It is not enough to have policies in data privacy; training of all customer contact employees is extremely important and analytics project participants must be trained as well. Finally, all applications dealing with sensitive data should be reviewed as to their access and distribution policies and controls. 7. Gain top management support Top management sponsorship and approval is essential because of the scope, crossfunctional nature and complexity of planning and executing an analytics strategy. It cuts across the various processes and organizations that impact customer experience. For analytics to become pervasive and add enterprise-wide value, top management must walk the walk, embracing fact-based decision making, pushing for more and better data, and recognizing achievement when efforts succeed. Senior management must also drive priorities for analytics applications targeting. Customer experience improvement, after all, is a business strategy, management needs to direct which parts of the business need attention and can benefit the most from analytics. Not only must top management set the vision, it must determine affordability, allocate appropriate resources, ensure cross-functional coordination, and remove some of the barriers that will inevitably pop up during the course of implementation. 8. Take advantage of frameworks and programs Any help with best practices, data management and domain frameworks will be useful because of the breadth and complexity of the problem. For example, TM Forum has a number of useful artifacts in this space for service providers and vendors alike – most www.tmforum.org TM Forum’s Managing Customer Experience Collaboration Program addresses many issues notably its Information Framework (SID), in addition to the Applications Framework (TAM) and Business Process Frameworks (eTOM), all of which are well established elements of the TM Forum Frameworx Integrated Business Architecture. It provides an industry-agreed, service oriented approach for rationalizing operational IT, processes, and systems that enables service providers to reduce their operational costs and improve business agility. In addition, TM Forum’s Managing Customer Experience collaboration program is addressing a number of relevant issues (see the next section). Finally, the Forum’s Business Metrics Development Programs can be used as a source of business intelligence, and help dive the deployment of analytical capabilities, especially in targeting process improvement (see page 46). 9. Don’t forget your supplier partners Some 35 percent of respondents expressed strong concerns about the effectiveness of commercial off the shelf components in our survey, yet 35 percent also spoke glowingly of the partnerships they had forged with their suppliers and the consequent success they had enjoyed. Another 20 percent of CSPs said that their suppliers could not create compelling business cases for their products, yet 25 percent more listed suppliers support and participation as critical to the success of analytics’ deployment. While the applications and implementation world is far from perfect, it is clear that some companies are better than others at engaging and drawing successful engagements from their suppliers. Both CSPs and suppliers struggling in this regard should do a fresh assessment of themselves and their expectations, engagement styles and strategies. Service providers should also include evaluations of cultural fit, experience and methodology into their vendor selection criteria. 10. Develop your people Good analysts are hard to come by as they must acquire and master a broad variety of skills, including quantitative and technical expertise, business knowledge and process design abilities, relationship building, and consulting, and coaching skills to help others. Analysts are also highly motivated by challenging and interesting work, allowing them to hone their talents and gain a sense of personal progress. It is important for employers to recognize these requirements and traits, and to create appropriate growth opportunities for analysts, if they want to keep them as employees. We believe that these are the key recommendations for CSPs looking to improve their customer experience capabilities through the use of analytics. What is important to remember here is that while the overall effort may seem daunting, the payback for companies that have made the commitment and are executing has been worthwhile. We believe that service providers that can differentiate themselves with a superior overall customer experience will be winners not only in their traditional service markets, but also as enablers of the digital value chain, and that analytics will continue to play an important role as a catalyst for customer experience and process leadership. We hope you enjoyed this report and found it useful. “We believe that service providers that can differentiate themselves with a superior overall customer experience will be winners, not only in their traditional service markets, but also as enablers in the digital value chain…” www.tmforum.org INSIGHTS RESEARCH 37 Exploiting ANALYTICS Section 6 TM Forum’s contribution to analytics to improve the customers’ experience Specific to the telecommunications industry is that customer experience is the result of the sum of observations, perceptions, thoughts and feelings arising from interactions and relationships (direct and indirect) over an interval of time between a customer and their communications service provider (CSP) when using a service. Customer experience analytics (CEA) uses software to identify and analyze customer behavior patterns within and across multiple access points. CEA solutions use sophisticated data modeling techniques to analyze customers’ experiences with a company. Customers contact companies for a variety of reasons (service, sales, feedback) and use a variety of methods to interact (websites, phone, kiosks, mobile devices, and so on). Previous approaches to measuring and managing customer experience (at the individual access point, or within a specific department) have included customer relationship management (CRM) and customer experience management (CEM) applications, which are typically aligned with individual lines of business. Customer experiences include not only interactions through traditional channels, such as purchases, customer service requests and call center communications but also, increasingly, through social CRM channels such as Twitter and Facebook. To manage the customer experience, companies need to create a strategy that encompasses all customers’ touch points across the organization. CEM is the collection of processes a company uses to track, oversee and organize every interaction between a customer and the organization throughout the customer lifecycle. The goal of CEM is to optimize interactions 38 INSIGHTS RESEARCH from the customer’s perspective and, as a result, foster customer loyalty. Until quite recently, the means for determining the level of customer experience was limited to analyzing historic data, usually collected and stored in data warehouses, tracking customer interactions with customer support representatives, market research, uptake of marketing offers, call records, data usage and churn analysis. Historic analysis, by its very nature, yields relatively old information, by which time the situation, if poor, is very difficult and somtimes all but impossible to retrieve – for instance, if a customer has left in search of a better experience with a competitor. Today’s CSPs need to monitor customer experience in real-time and be able to address issues as they happen. In many cases, proactive customer management is used to foresee and address potential issues before they affect the customer. Being able to monitor the customer’s experience in real-time came about after the introduction of sophisticated network and system management tools, used primarily for the purpose of problem alarms, revenue assurance and fraud monitoring. The combination of all three was quickly recognized as the basis of an effective CEM system. However, CEM’s goals are best achieved where CSPs have undertaken some form of transformation exercise, moving towards an allIP, real-time network supported by interactive business support systems (BSS). The very nature of being able to address and interrogate or monitor all network elements, BSS or Operational Support Systems (OSS), is core to effective and proactive CEM. Monitoring the elements of customer experience is not the whole story, of course. The analysis of the data collected and the www.tmforum.org Monitoring the elements of customer experience is not the whole story actions taken to ensure an optimum customer experience has become a critical component. Providing this information in real-time also allows the CSP to monetize the results by profiling customers for the purpose of target marketing or advertising, both for themselves and on behalf of third parties. Knowing and understanding the customer is considered key to any successful CSP operation and TM Forum is addressing how CSPs can best capitalize on CEM utilizing a combination of its own Initiatives, They include: n Frameworx – the only integrated business architecture which provides an industry-agreed, service oriented approach for rationalizing operational IT, processes, and systems that enables service providers to significantly reduce their operational costs and improve business agility; n research and publications; n Catalyst Projects; and n white papers. The highlights are summarized here. Managing Customer Experience Program1 Competitive differentiation for advanced and converged services will rely on more than traditional service performance targets. Roll-ups of metrics related to networks, applications, and IT infrastructure are no longer enough for matching service quality to customer expectations. To truly manage the customer experience, CSPs have to build end-to-end views of not only the customer and services consumed, but also of the preferences, behaviors, personas and social network affiliations that define the customer. By understanding what defines their customers, CSPs have a better chance of meeting not only present day, but also future expectations in a proactive manner. With an emphasis on management of the pre-custom, pre-service aspects of the customer/provider relationship, service providers can work toward building loyalty among their customers. Loyalty comes from understanding the customer experience from even before the first www.tmforum.org contact with the CSP, all the way through to the point where a customer either recommends the service to another person, does not recommend the service or churns to another CSP. At the same time as building an understanding of that complete lifecycle, CSPs must also grasp their growing value chains, which tend to hide or distort their visibility of processes, people and operations supporting new generation services. To assure services and better manage customers’ perceptions, service providers have to monitor complicated service level agreements (SLAs), cooperative partnerships, revenue settlements and rebates, and different types of conflict resolutions. These are sometimes radically different to those they are accustomed to. To address both the end-to-end view of the customer lifecycle and of the value chain, TM Forum’s Managing the Customer Experience Program takes a phased approach to: nusing analytics for measuring and managing service quality; ndefining key service quality metrics at each point along the service delivery network; nidentifying service quality issues and the necessary accounting and rebating information, usage information, and problem resolution information; ndefining management capabilities to support each step in the service delivery network; nspecifying appropriate interfaces and application program interfaces (APIs) to enable the interchange of such information electronically between the various providers in a service value network. http://www.tmforum.org/ManagingCustomerExperience/6513/home.html 1 INSIGHTS RESEARCH 39 Exploiting ANALYTICS CEM Analytics and Frameworx2 Although the newly formed Data Analytics Team3 has barely had time to ascertain exactly how and where CEA fits, it has, through its CEM Control Center Catalyst4 (see page 46) identified areas of the Business Process Framework (eTOM)5 that impact customer experience and need to be included in its analytics exercise. The team analyzed both data and process information to understand the Catalyst Project’s contribution to the Business Process Framework which impacts both the Operations, Fulfillment, Assurance, Fulfillment and Billing and Revenue Management (OFAB) and Strategy Infrastructure and Product (SIP) verticals in Figures 6-1 (right down to Level 4, highlighted in grey) and 6-2 (where they are also highlighted in the grey). Their work highlighted the missing links within the Business Process Framework between CEM processes for: Figure 6-1: The operations, fulfillment, assurance and billing/revenue management processes impacted nplanning processes (mainly in the strategy/ product area); ncustomer interaction operational processes; nservice assurance and service quality processes Figure 6-2: The strategy, infrastructure and project processes impacted In addition this project is the first time that the Business Process Framework processes have provided direct feedback to the strategy processes (such as for executives) and linked operative processes through simulations and predictive analytics to the SIP area. Operations Operations support & readiness Fulfillment Assurance Customer relationship management Billing & revenue management Customer interface management Bill payments & receivables mgt. Selling Crm support & readiness Market fulfillment response Order handling Problem handling Customer Qas / sla management Bill invoice management Bill inquiry handling Manage billing events Charging Retention & loyalty Service management & operations Sm&o support & readiness Service configuration & activation Service problem management Service quality management Service guiding & mediation Resource provisioning Resource trouble management Resource performance management Resource mediation & reporting Resource management & operations RM&O support & readiness Manage workforce Resource Data Collection & Distribution Supplier/partner relationship management S/PRM support & readiness S/P problem reporting & management S/P requisition management S/P performance management S/p settlements & payments management Supplier/partner interface management Strategy, infrastructure & product Strategy & commit Infrastructure lifecycle management Product lifecycle management Marketing & offer management Market strategy & policy Product & other business planning & commitment Product & other portfolio strategy, policy & planning Product & other portfolio capability delivery Marketing capability delivery Product development & retirement Marketing communications & promotion CRM capability delivery Sales & channel development Product marketing & customer performance assessment Service & operations capability delivery Service development & retirement Service performance assessment Resource & operations capability delivery Resource development Resource performance assessment Supply chain capability management Supply chain development & charge management Supply chain performance assessment Service development & management Service strategy & policy Service planning & commitment Resource development & management Resource & technology strategy & policy Resource & technology plan & commitment Supply chain development & management Supply chain strategy & policy Supply chain planning & commitment http://www.tmforum.org/TMForumFrameworx/1911/home.html http://www.tmforum.org/community/groups/data-analytics/default.aspx 4 http://www.tmforum.org/CustomerExperience/8691/home.html 5 http://www.tmforum.org/BusinessProcessFramework/1647/home.html 2 3 40 INSIGHTS RESEARCH www.tmforum.org The Data Analytics Team has its own TM Forum Online Community In the enterprise area, enterprise planning and revenue assurance management gain significant advantages through operative analytics and predictive processes. The scenarios shown in Figure 6-3 provide a transparent picture of how revenue assurance processes can be affected. Specific process benefits include: nPredictive analytics provides considerable advantages to the communications service providers (CSPs) and are not only support processes; nThe viability and existence of mature tools emphasizes the importance of the decision and predictive processes within the service providers CEM processes highlighted in the Business Process Framework processes; and nThe Catalyst Project provides motivation for further investigation of the position of decision analytics processes within the Business Process Framework – not only for product management related processes. Data Analytics Team6 The Data Analytics Team was originally formed under the Revenue Management Market Support Center7 as the Decision Analytics special interest group (SIG). The Data Analytics Team has generated so much interest that it has split out into its own Online Community on the Forum’s website. Its primary charter is to help service providers make the best use of business intelligence (BI) and analytics tools. This team is focusing on bridging the gap between ‘raw’ BI technology and the specific business needs of a CSP, as well as pre-defining how to use BI in the CSP environment including: nmanaging CSPs’ business processes; ncollecting, analyzing and presenting CSPs’ data such as orders, data records (xDRs), tickets, and so on; nkey performance indicators (KPIs) for CSPs to achieve operational excellence; ntaking BI down to the next level within a CSP, using day to day operational tools; nusing analytics with reference to TM Forum Frameworx to provide better customer experience. www.tmforum.org Figure 6-3: The enterprise processes impacted Strategic & enterprise planning Strategic business planning Business development Enterprise architecture management ITIL release & deployment management Group enterprise management ITIL change management Revenue assurance management Manage revenue assurance policy framework Manage revenue assurance operations Support revenue assurance operations The team is actively seeking more direct CSP participation in identifying and prioritizing critical problem areas for the team’s next round of activities. TR149 The Holistic End-to-end Customer Experience Report The Holistic End-to-end Customer Experience Report8 describes how customer experience and Service Quality Management (SQM) has evolved to meet the need for assuring end-toend quality across the customers’ experience when services are delivered through value chains of cooperating providers. It supports business scenarios and requirements described in TR148 Managing the Quality of Customer Experience (see page 42). It was designed to supplement TM Forum Frameworx where consistent design principles have been applied across areas that have been designed independently without an end-to-end customer experience viewpoint. The Report models what customer experience is, the customer and user needs that must be satisfied to provide good and improved customer satisfaction, and is based on recent industry research and standards. It highlights the importance of understanding customer and user relationships, and the group memberships in which they participate, to http://www.tmforum.org/community/ groups/data-analytics/default.aspx 7 http://www.tmforum.org/ RevenueManagement/4323/home.html 8 http://www.tmforum. org/DocumentsManaging/ TR149Holistice2e/38511/article.html 6 INSIGHTS RESEARCH 41 Exploiting ANALYTICS deliver better customer and user satisfaction. The Report also describes a technique called Key Factor Analysis Methodology (KFAM) for systematically relating technical performance measurements to customers’ needs, and hence customer experience, as well as product and service features, and SLAs offered by providers. This technique’s strength is that it can be used by TM Forum members to track changes in these dependencies over time, and across market segments. The End-to-End (e2e) Holistic Customer Experience (CE) is an ecosystem of six APIs, and a set of application areas that need to be designed and specified as a set, to enable measurement and improvements in customer experience across a value chain. The e2e Holistic CE view essentially identifies a set of Application Framework (TAM) applications and interfaces that must be delivered as a consistent set with common information models and e2e holistic customer experience metrics. It is an end-to-end design of a subset of the Application Framework. The e2e Holistic CE metrics are based on meeting the priority requirements in TR148 and extrapolated from the results available from the TM Forum Business Metrics Development Program (see page 46), the SLA Management team and the TM Forum Interface Program (TIP). A specific requirement for metrics used in a value chain is that they meet a benchmarking standard; that means both the measurement tools and the organizations are calibrated against the standard. In a sense some aspects of these applications are nothing new, but these developments are: n some of the business services supported by these APIs; n the integration of knowledge in CEM systems; n new optimization features of these applications; n the relationships between them; n the notions of virtualized service and resource management; n the requirements for e2e Holistic CE metrics measurement methods. 42 INSIGHTS RESEARCH By applying these new capabilities it is possible to: n track customer experience; n predict trends; n proactively modify and optimize product offers made to customer segments; n trouble shoot service problems; n build an improved level of customer satisfaction and loyalty. TR148 Managing the Quality of Customer Experience9 Improving customer experience though customer-centric methods and analytics is an important issue for the digital media services industry as it introduces innovative products, while at the same time striving to increase average revenue per user and increase customer loyalty. The TM Forum report, TR148 Managing the Quality of Customer Experience, examines the factors that influence customer experience and a number of business scenarios for the delivery of digital media services such as IPTV, mobile TV, enterprise IP virtual private networks and smartphones – all of which are delivered through a value chain of cooperating providers. The objective of the scenarios presented is to examine a range of possible delivery mechanisms from the perspective of managing end-to-end service quality across the cooperating partners; and to work out what industry standards are required to deliver and assure high quality service to end customers and other users. The main challenge is to establish the impact a customer experience-centric view has on: nmeasuring customer satisfaction; ndiscovering where CE/SQM measurements are needed in the value chain; nestablishing what CE/SQM metrics and measurements are needed. CSPs need to be able to monitor and manage the experience and satisfaction of customers and users at an individual level and an http://www.tmforum. org/DocumentsManaging/ TR148Managingthe/38506/article.html 9 www.tmforum.org Providing a comprehensive ‘navigational’ infrastructure for the product manager aggregate level, measured over a range of time intervals. These metrics are needed to support monitoring, trouble shooting (individual problem identification, and resolution) and the reporting processes of a service provider. The objective is to provide pragmatic solutions and a roadmap that can be evolved from what we consider the state of the art now towards a fully customer-centric, end-to-end service management solution for the industry. This report was developed as part of the e2e Service Quality Management Program. It sets out, in broad terms, the requirements for improving customer experience for services across a value chain, the challenges of drawing up SLAs and assuring e2e service quality from a customer-centric viewpoint. Most of all, the report identifies what needs to be added to the established and important disciplines of resource and network-based measures, which come under the general heading of SQM. It outlines what customer experience is, the customers’ and users’ needs that must be satisfied to provide good and improving customer satisfaction, and is based on recent industry research and standards. CEM Control Center Catalyst10 The CEM Control Center Catalyst Project was launched by TM Forum’s Data Analytics Team at Management World 2010. It demonstrated a new approach to product management, where operational monitoring, data management and processing, decision engineering and design approaches are used to provide a comprehensive ‘navigational’ infrastructure for the product manager. It showed how, by using this approach, the product manager could simultaneously balance cost, revenue, and investments that benefit customer experience KPIs to maximize outcomes of interest. It also illustrated how operational monitoring could be used to manage repairs to the rollout process, as well as reconsidering decisions based on changes to key assumptions. In a typical telecom environment, data to support systematic decision-making can feel www.tmforum.org Figure 6-4: CEM control center overview Implement product Strategic: analyze product alternatives Customer experience optimization Operational: monitor individual experience Adjust product base line like too much or too little. On the one hand, the amount of information available, when combined with the expertise of strategic planners with different backgrounds and experience, can be overwhelming. When launching new products into new markets, where the past is an unreliable guide to the future, data that provides guidance for critical decision-making elements (such as pricing demand functions, demand for the product in particular geographies, or the cost of OSS/BSS implementation), may be missing or misleading. This is particularly true of customer experience-related information, as there is little industry expertise reflecting how customers’ overall impression of a CSP and its brand is shaped by touch points (such as the ordering process or sales experience), or how that affects brand reputation, which could in turn, impact customer behavior, such as the willingness to pay a higher price. Product managers make decisions that take brand into account, however, so their expertise is indeed there, but is not captured systematically, or available for continuous improvement. This Catalyst demonstrated three approaches to effective product management in this environment, as illustrated in Figure 6-4 above. First, it shows how customer experience data http://www.tmforum.org/ CustomerExperience/8691/home.html 10 INSIGHTS RESEARCH 43 Exploiting ANALYTICS can be effectively gathered, summarized, and made available in drill-down detail to product managers as input to effective decision making. Next, it showed how this information could be used for product management decisions, using a decision engineering and modeling approach. The model provides decision makers with holistic, forward-looking information about how investments in customer experience will achieve the operators’ goals surrounding margins and brand. In addition, it provides a comprehensive set of KPIs and associated thresholds that indicate a potential issue. Then, it demonstrated how, following the product launch, operations can be carefully monitored in an operations center so that problems can be readily detected and repaired. Rollout problems can be fixed tactically, and addressed through a case management system. In addition, the early awareness of incorrect assumptions allows for course corrections in a product launch to be rapidly and systematically reviewed and implemented. Dashboards provided a mechanism to help the project manager understand the experience of a large group of customers. As part of the Catalyst demonstration, they contained data from about a half million customers. Each one was represented by metrics gained from a number of customer experience KPIs; all customers are ranked based on their overall customer experience. The Catalyst demonstrated an innovative approach to gathering and adjusting the mechanism for measuring customer experience, so that it provided valuable information for product managers. The metric used both soft and technical quality measures, along with a proprietary weighting scheme for determining their values. Importantly, feedback from customers was used to adjust the weighting scheme, which meant that the customer experience metric improved over time, providing a better and better reflection of various customer groups’ experiences. The Catalyst included a collection of data from many customer touch points including 44 INSIGHTS RESEARCH BSS, OSS, and the network equipment itself. The team augmented this ‘raw’ data by calculating aggregated customer experience metrics, including the Customer Experience Index (the weighted sum of technical and soft measurements on an individual customer basis), customer lifetime value (the revenue expected from this customer), customers’ propensity to churn, and others. This means: nThe CSP maximizes the benefits of customer experience investments to achieve goals involving revenue, costs, and customer retention; nDepartments responsible for decision-making and operational monitoring are aligned in a systematic way through KPIs that represent key decision assumptions; nThe CSP manages complexity by visualizing the interactions between tangible and intangible factors such as revenues, brand, investments, and decision outcomes by simulating existing business parameters and metrics; nThe CSP uses a systematic approach to agile strategic and operational management, where the need to reconsider a decision is triggered by changes in operational KPIs; nFeedback from customers and information gathered during a product launch is used to continually improve the product management process. The Catalyst showed how a Customer Experience Intelligence measure can be improved in this way. Furthermore, the decision model created a structure within which new data (both in the form of external values as well as functional relationships) could be gathered during operations. nBrand is an intangible asset that is difficult to measure and manage, but is systematically incorporated into the decisionmaking process. Brand here is representative of a class of intangibles (which include morale, attitude, acceptance, and net promotion as additional examples) that can be managed in the way shown within the CEM Control Center. www.tmforum.org The metric was constantly refined better to reflect customers’ actual experience In an increasingly competitive environment, service providers are seeking new points of differentiation. There is also strong evidence to suggest that an investment in customer experience can provide significant benefits, even if the initial costs are higher. This is because customer experience improvements impact the CSP’s brand, which changes the demand for the product and increases customer retention. However, in today’s economic climate, investment dollars are limited, even those for improving customer experience. For this reason, there is an opportunity for service providers to benefit from more systematic product management. By harnessing and analyzing the data already present in a CPS’s various systems – including BSS, OSS and the network – the CSP can gain meaningful insights into its customer base. These insights can enable a CSP to provide a more personal customer experience, tailored to particular customer communities. Two examples of this are more personalized product offerings and more personalized interactions at the various touch points. The key is to obtain data from the various sources, including the expertise of product managers, and to harmonize it into a consistent model. The CEM Control Center demonstrated that this can be done. All together, the CEM Control Center showed how a CSP can improve strategic and tactical planning through: n using improved information about the present; network that reflects customer experience in a way that can be improved over time. Ultimately, these techniques enable service providers to better manage the inevitable risk, uncertainty, and complexity involved in every product launch. This improved risk mitigation enables CSPs to be more aggressive, gaining a stronger competitive foothold in today’s rapidly changing environment. Business Metrics Development Program The business metrics that have been developed within the TM Forum’s Business Metrics Development Program represent areas of business operation that are important in assessing business performance, customer satisfaction and loyalty, and efficiency. To provide an holistic, business-oriented benchmarking facility, the business metrics scaffold is based on a balanced scorecard approach. To this end, three major domains have been defined: nRevenue and margin: providing a view of fiscal performance; nCustomer experience: providing a view of the measures that impact the end-customer’s reaction to the service offering, which also drives loyalty; nOperational efficiency: providing a view of cost and expense drivers. Figure 6-5: Structure of the business metrics – domains n more intelligent analysis to predict the future; n changing direction more effectively by communicating the decision-making rationale to stakeholders through visual tools. This allows the operator to identify issues within a timeframe to take corrective action if required. The Catalyst also showed how new technologies for high performance, high volume data extraction, storage, and analysis can be used to reap valuable information from the www.tmforum.org Revenue & margin Customer experience Operational efficiency INSIGHTS RESEARCH 45 Exploiting ANALYTICS Under each of these domains, a set of topics has been defined to drive the development of specific metrics. The following illustration presents the topics under each domain and is followed by an explanation of the different topics: The Customer Experience Domain covers: nPreferred access: what are the channels and touch points available to customers, such as actual person, web and store? nCustomer time spent: amount of time spent on process or activity that impacts the customer, such as the length of time system could not be used, as opposed to fault repair time; nUsability: how easy it is to set up, usefulness of documentation, and so on; nReliability of interaction: this includes the consistency and accuracy of information provided by the CSP and also relates to the credibility of the CSP; nAvailability of purchased service, including bearer service and content; nSecurity: (future work item); nPricing flexibility: preferred pricing mode available, such as prepaid card, flat rate, by usage (future work item). Figure 6-6: Structure of the business metrics – topics 1. Preferred access 2. Customer time spent 3. Usability 4. Accuracy 5. Contact availability 6. Security 7. Pricing flexibility 1. Margin/revenue 2. OpEx/CapEx 3. OpEx/Revenue Revenue & margin Customer experience Operational efficiency 1. Unit cost 2. Time 3. Rework 4. Simplicity 5. Process flexibility & automation 6. Utilization is to ensure those customers enjoy an optimal experience when dealing with the provider to retain their custom. Software suppliers and systems intergrators are also seeing this as a major growth area. They are mobilizing efforts to provide systems that can provide effective and timely reports on customer experience and tie them to systems that provide alarms, remedies and focused responses, which are geared to provide the ultimate customer experience. TM Forum, through its programs and extensive base of CSP and supplier members, will continue to provide relevant information and guidance on the latest developments via its Online Collaboration Communities, programs, research and publications. The GB935 Business Benchmarking Metrics Scaffold11 provides a more detailed overview of TM Forum benchmarking activities around custmer experience. Additional information concerning each metric and its corresponding benchmarking data is available by contacting the Business Metrics Development team at benchmark@tmforum.org and/or subscribing to its reports and services. Conclusion There is a strong movement by CSPs to use sophisticated analytics, increasingly in real-time, to provide current and relevant information about their customers’ experience benchmarking. It is a sign of a CSP’s maturity that after the ‘subscriber grab’ slows down, they start to focus on how to determine which are the most viable customers. The next step 46 INSIGHTS RESEARCH “TM Forum, through its programs and extensive base of CSP and supplier members, will continue to provide relevant information and guidance on the latest developments via its Online Collaboration Communities, programs, research and publications.” http://www.tmforum.org/browse. aspx?linkID=43225&docID=13486 11 www.tmforum.org SPONSORED FEATURE Customer insights: Building relationships that stick Developing more insight into customers is the key to keeping them happy and building loyalty. Nokia Siemens Networks can provide end-to-end solutions that reveal what service providers’ customers really want, and can even predict what they’re going to do next. Keeping track of what makes subscribers happy – or not – is crucial for any successful communications service provider (CSP). According to a study by Bain & Company, a five percent increase in customer retention can boost a CSP’s profitability by 75 percent. It’s a lesson that CSPs around the world are taking to heart, and they’re going to great lengths to build “stickier” relationships with their customers. Any strategy for delivering a better customer experience is underpinned by understanding what customers want. It relies on pulling together data to build a coherent picture of each subscriber. Traditional customer surveys and feedback are helpful as far as they go, but real customer insight is about much more than that. It involves breaking down the barriers within the CSP’s organization to bring together real-time data about charging, subscriptions, devices, service usage, online behavior and how customers perceive the experience. These disparate snapshots come together to form a profile or “digital identity” for each customer. CSPs can then use this insight to identify priorities for creating real value, perhaps through more innovative services, more focused marketing, or by providing improved customer care. Achieving these aims depends on having the systems in place to act on these insights automatically in realtime or near real-time across the CSP´s organization and processes. It’s this ability to take targeted action at the right time that ultimately boosts the business. 48 INSIGHTS RESEARCH Building a customer-centric network Nokia Siemens Networks has the endto-end capability to ensure that CSPs can address any aspect of the customer experience, from device management and identity management to churn prediction, from mobile broadband strategy and quality optimization to automated customer care. This capability helps CSPs to create a “customer-centric network” by collating and analyzing real-time data and information from devices, networks and IT systems. It includes inputs about subjective perceptions, as well as data related to services, subscriptions, devices, charging, billing and CRM systems. This will provide a unified view of individual customer needs and enable CSPs to take timely action to link their customer insights to business and operational processes, using automated solutions to boost speed and efficiency wherever possible. Nokia Siemens Networks is unique in delivering a real-time response to what’s happening in the network and supporting systems. Our solutions go far beyond simply consolidating subscriber data and aggregating and warehousing a CSP’s customer data. This is incredibly important in a market where CSPs must tailor their offers specifically to each customer. The most obvious examples are timeand location-specific offers. People are much more responsive to offers if they’re timely and relevant to their situation at a given moment. For example, if a CSP offers music fans the chance to buy a bundle of MMS messages as they enter www.tmforum.org Customer care automation solution solves more than 50% of technical problems in a few seconds From subscriber data to customer value. From customer value to business results. Real/elapsed time actions to boost business Services & innovation Marketing & sales Network planning & optimization Operation & maintenance Customer care Business intelligence applications Understanding where the real value is Reports, dashboards, analysis & query, segmentation, profiling Real-time & historical data collection, consolidation and exposure One view of a customer Basic analytics including metadata Orange Switzerland needed to improve customer satisfaction by reducing complaint handling time, while decreasing the amount of complaints escalated to customer care technical support. Nokia Siemens Networks provided Orange with Customer Care Automation solution. Real-time & long term data storage and consolidation Billing, charging, subscription, service usage, device, CRM,... Customer data coming from many sources Spread out data Customers a concert venue, they’re likely to take up the offer because they’ll want to take pictures of the concert and send them to their friends. It’s not possible to achieve this if it takes 72 hours for a report from a static database query to reach the CSP system that sends the promotion to the customer. With instant feedback, a CSP can run many such highly targeted microcampaigns. Nokia Siemens Networks worked with one CSP to help it generate an extra €25 million a year by increasing its campaigns from four every three months to 15 per week. As the communications industry evolves to offer a wider range of innovative and life-enhancing services, those CSPs that put a solid customercentric network in place will be bestplaced to maintain a competitive edge by offering subscribers relevant and tailored services and deals. Many businesses discover that achieving that ideal means changing their existing culture. For example, one European CSP found that data was held throughout its organization in more than 200 legacy systems, leaving it unable to track even the most basic network activities. Nokia Siemens Networks www.tmforum.org Smart device support calls last an average of 45 minutes – 3x longer than calls to customer care about feature phones1 and these will be 43% of devices in 20132. “We can solve technical problems during the first call in 50% of the cases. Response is available on average in 20 seconds.” – European CSP SMS complaints escalated to customer care technical support decreased by 30%, and to IT operations decreased by 60%. 1 Source: www.mobileeurope.co.uk, April 2010 2 Informa delivered a solution that combined consulting services and technologies to pull that information together and improve every area of the CSP’s operation. The CSP can now spot network problems 20 times faster and resolve them in one third of the time, leading to savings of €1.4 million in 2010. In marketing, fewer provisioning problems led to better service uptake and boosted revenue by €5 million in 2010. Increased network availability is helping operations to secure revenue of €500,000, which might otherwise be lost. Automating customer care Care has always been an important contact point between CSPs and subscribers, with the quality of care services having a huge influence on how providers are perceived. The rise of smart devices is making it even more of an issue, however. Smart phones are expected to account for 43 percent of mobile devices by 2013, and it has been estimated that smart device support calls last an average of 45 minutes, which is three times longer than calls to customer care about feature phones (Source: www.mobileeurope.co.uk, April 2010). Additionally, the top smart device issues at call centers relate to email configuration, lost phones and Internet settings. While an automated care system may not be able to do much about nontechnical issues such as lost devices, other than wiping and locking the device, it can speed up the handling of technical complaints and requests, which account for around 15 to 20 percent of the total. These specific issues are also the most costly to resolve for the care organization. For example, more effective service provisioning should enable customers to set up and access services without consulting their CSP’s care team. There will always be some issues that can’t be sorted out by users and in these cases it’s great to have friendly and helpful support staff. However, that’s not as important as giving those helpline personnel the tools to solve problems quickly and effectively. The aim is to solve as many queries as possible during the initial call and to minimize the number of cases that need to be passed up the line to technical support staff. Nokia Siemens Networks solutions link operational and business support processes directly with real-time insights to generate real-time automated actions that resolve problems fast. Our customer care automation solution INSIGHTS RESEARCH 49 SPONSORED FEATURE Customer insights: Building relationships that stick Winners in the business service innovations category of the 2010 Global Telecoms Business Innovation Awards! CSPs have a unique opportunity Customer Communications Service Provider Customer Insight, Identity & Privacy Management Telco 2.0 Internet Service Providers Trusted Identity Partner Trusted Privacy Partner Trusted Insight Partner Enterprises Connectivity and network control, individual relationships, real-time monitoring and charging enable CSPs to take the responsibility for protecting customers’ personal information. offers genuine, one-click problem resolution. The system works “behind the scenes” to correlate technical data from across the CSP’s systems and deliver a firm diagnosis and solution to the problem via a simple, one-screen interface. For one European CSP, customer care automation has helped to increase its first call fix ratio by finding the problem in 50 percent of cases, on average within 20 seconds. Furthermore, the ticket handling time by customer care technical support has decreased by 50 percent. The number of complaints passed on to technical support also dropped by 30 percent, and the complaints escalated up to IT operations dropped by 60 percent. Five steps to better mobile broadband Another big area where customer insights deliver all-round benefits is mobile broadband. Two years ago, when fewer people were using mobile broadband, most of those in mature markets weren’t worried about network quality. Fast forward a few months and the rapid uptake of mobile broadband has created a bulk of users who have expressed higher levels of dissatisfaction with the service they get from the network. (Source: Nokia Siemens Networks Acquisition and 50 INSIGHTS RESEARCH “Service differentiation allows us to attract more subscribers while reducing churn. With the Identity Management project, we are sure of ushering in a new level of end-user experience. This is a big win for us and encourages us to offer many more innovative platforms in future.” – Diego Scalise, Value added service manager & senior architect, Movistar Argentina Movistar Argentina and Nokia Siemens Networks were recognized for using the Identity Management solution to link subscribers’ multiple online identities and multiple Web sites such as Flickr or Facebook with their mobile phone avoiding separate sign-on procedures. This simplifies the end-user experience whilst obviating identity theft and allows Telefónica to provide a range of personalized services. Retention Study 2010). Nokia Siemens Networks offers end-to-end quality of service (QoS) differentiation to help CSPs target highly segmented groups of users with the satisfying products and offers that meet their specific needs. The simplest way to visualize our approach is as a continuous cycle of improvement in five steps. Step one is about mapping how users consume mobile broadband. What are their favorite applications? What size are the files they download and upload and what volume does that add up to over the month? When do they go online and which devices do they use to gain access? All this information should be easily accessible to the product managers designing services for the CSP. For example, one European CSP found that just 5 percent of its customers were generating between 80 and 90 percent of network traffic, leading to congestion and dissatisfaction among high-value users. It’s a problem that CSPs ignore at their peril. The latest acquisition and retention study from Nokia Siemens Networks found that average churn in mature markets may be stable, but churn is on the rise among smart phone users and other high-value users, so CSPs must find ways of satisfying them better. The answer is to identify the different user segments and make differentiated offers to each group. That leads us to step two, in which product managers – often with the help of Nokia Siemens Networks consultants – devise differentiated offers based on QoS, volume thresholds, price or bundling with devices. The key is to identify the different user groups and target them with different packages. For example, business users will typically be looking for high QoS but won’t be worried about price, while teenagers are looking to achieve access on a tight budget. Between these “quality sensitive” and “price sensitive” extremes are groups such as the “price elastic”, who are the most likely to increase their service usage in response to attractive off-peak offers, and “influential” users, who it’s important to keep on-board since they influence their peers by being very active on social networking sites. Step three is about CSPs delivering on their promises by implementing the right policy controls in their network servers. Enforcement is step four, and requires the right tools to check that users aren’t exceeding their volume thresholds, for instance. www.tmforum.org The final step is monitoring the customer experience. Are they enjoying the levels of service that they’re paying for to the full, or might they perceive that they’re getting poor value because they’re not using all the applications they’re entitled to or falling well short of their download thresholds, for instance? The Nokia Siemens Networks portfolio encompasses the whole circle. Predicting and preventing churn CSPs have been moving away from looking only at historical data and towards using real-time information to deliver real-time benefits. Some have been going even further, however, with companies including Vodafone and Singtel using data to accurately predict customer behavior. It’s an approach that’s proving especially useful in spotting those subscribers who are most likely to churn. The technique is called social analytics. Nokia Siemens Networks uses market-leading social analytics products to combine usage behavior, demographics and social networking information to predict churn and the likely responsiveness to offers. One European CSP used this approach to boost the accuracy of its churn predictions by 70 percent within its top 10 percent of customers. Social analytics also enables CSPs to predict how well people will respond to different offers and make sure that customers are offered only the most relevant promotions, thus giving them a better experience by being less intrusive. Of course, social analytics algorithms are only effective if they have access to good underlying data, so they rely on subscribers giving their consent for CSPs to use their personal information in this way. www.tmforum.org A question of trust CSPs aren’t the only organizations that can make a strong business case for finding out more about their subscribers. Web 2.0 companies such as Google, Flickr and Facebook all track customer behavior, while organizations as diverse as airlines to banks could benefit from getting to know their customers a little better. On the other hand, customers are aware that privacy can be an issue and they want to retain control of their information. Still, research shows that the greater the perceived benefit of sharing, the higher the proportion of people who are willing to share (Source: Nokia Siemens Networks Privacy Study 2009, Psychonomics). Better still, the same survey shows that consumers trust CSPs to take care of their data. Only banks score more highly. No one else, including ISPs, insurance companies and even governments, are trusted to the same degree. This puts CSPs in a strong position to become a trusted partner for their customers, gaining permission to use their data to improve the customer experience and service offering while identifying new business models and revenue streams. CSPs can act as data brokers between customers and Web 2.0 providers, sharing information such as location, presence, reachability and device capabilities with third parties in a controlled way. They can provide users with an online identity that enables single sign-on for the Web, freeing people from the growing list of passwords and security questions. For example, Nokia Siemens Networks and Movistar Argentina, a subsidiary of the Telefónica group, recently won a Global Telecoms Business (GTB) award for Business Services Innovation. The award recognizes an Identity Management (IDM) solution that links Movistar subscribers’ multiple online identities and multiple websites, such as Flickr or Facebook, with their mobile phone. This means they no longer need to sign on separately for each service. Customer experience transformation Nokia Siemens Networks’ unique combination of capabilities can maximize opportunities for CSPs. That’s the secret behind more than 120 customer insight-based service improvement projects that we have already delivered successfully worldwide. We know what data is available and how to deliver it to the right place fast in order to derive the maximum business value. We recognize that customer data is a valuable yet sensitive asset. Our know-how and experience can help protect it. We help CSPs develop the right strategies and plans and follow them through to a successful launch and implementation. We are uniquely able to leverage subscriber data and make it available in real-time. This promotes agile decisionmaking and enhances business and operational processes. Our solutions turn data into insights and enable CSPs to act on those insights. Our end-to-end approach also comes with a clear commitment to security and privacy at every stage. Through Nokia and our own acquisition and retention studies, as well as external research, our unrivalled understanding of the markets can help CSPs develop segmentation strategies and implement them within their operations. We help CSPs transform their businesses to take a genuinely customer-centric approach. INSIGHTS RESEARCH 51 SPONSORED FEATURE Customer Lifecycle Provides a Wealth of Insight Aggregate, Analyze and Act to Optimize the Customer Experience Exploit Information Sources The competitive intensity of the Telecommunications Industry is increasing rapidly as the growth rates in new subscribers slow down in many markets around the world. The markets for many connectivity services are approaching saturation and new competitors are entering telecommunications markets with lower cost services and alternative business models. In this market Communications Service Providers are looking for new means to increase revenue and profit by retaining their existing subscribers, selling additional products and services to their current subscribers and finding new ways to attract subscribers away from competitors. Communications Services Providers have found they can use the information generated across their enterprise as a source of competitive advantage. Information generated from network events, billing records, CRM systems, web traffic, product management databases and other systems can be exploited to improve the effectiveness of business processes across the enterprise and provide unique insight into new opportunities. CSPs of all sizes can increase revenues, profits and customer satisfaction by managing information assets more effectively, analyzing information in real time, and employing historical and predictive analysis to optimize processes throughout the customer lifecycle. Aggregate, Analyze, Act In this brief we outline a strategy for optimizing customer experience management via a logical implementation of capabilities that focus on: aggregation of all relevant data/information that support the customer lifecycle; application of a 52 INSIGHTS RESEARCH rich set of analytical tools (including real-time) that enable LOB to quickly and accurately assess the current state of market, products, network services, devices, customers, etc; and automation to translate analysis into action. The capabilities described are enabled by IBM’s Service Provider Delivery Environment, which is a widelydeployed framework that allows a provider to accelerate new services and business models, achieve operational and network efficiencies, and differentiate the customer experience. Critical Role of Data in Support of Analysis and Action TMForum’s 2009 CEM report stresses that “data is the backbone of customer experience processes.” One of the greatest challenges is managing the increasing volumes of data that are critical in providing a uniquely differentiated customer experience. Key sources of data include: customer information, with the goal of providing an accurate, complete and consistent view across all lines of business and channels; an enterprise product catalogue that efficiently manages the detail, policies, business rules and complexity of a provider’s offerings across all channels and enables rapid changes to product information; the network, with an ever greater volume of XDRs and operational data, provides, perhaps, the richest source of information with the greatest potential to positively impact the customer experience, assuming the provider has the capability to capture, process and analyze the massive volumes of network data either in-flight or within a database or data warehouse. However, to gain the most from these data, providers need to implement an information management strategy that encompasses data quality, consistency, latency, comprehensiveness, governance and lifecycle management to insure that LOB activities and all customer interactions promote loyalty and profitability. Automatic aggregation of multiple data sources and formats presents a challenge; excessive time taken in rationalizing and normalizing this data into one consistent format prevents timely business decisions and actions. Information Management Strategy for “Network Intelligence” IBM’s InfoSphere products and Telecommunications Data Model solve these issues for a European mobile broadband provider. The provider’s “network intelligence” approach aggregates data from multiple sources – network, CRM and billing, to enable near-real-time monitoring of network performance and customer experience. The single source of network performance and customer behavior also allows the provider to segment subscribers based upon calling/usage patterns to gain insight into customer experience and service requirements with the goal of continually optimizing network performance. Every customer interaction is a potential source of detailed customer, product and network information to be captured, processed and analyzed to provide deeper market insight and further improvement of customer experience. However, these massive data volumes create data storage challenges. Alternatively, providers may want to consider a data archiving and retention strategy to reduce storage hardware costs. www.tmforum.org Managing Data Growth To cost-effectively accommodate petabytes of data growth associated with customer and network data, a North American triple play provider adopted an enterprise archiving strategy to curtail additional storage node costs. IBM Optim allows the provider to identify and archive volumes of historical data to more cost-effective media, while still allowing the provider to quickly access or reference that data when necessary. Savings in storage hardware more than justified the investment in IBM’s archiving solution. Analytics Maximizes the Value of Customer, Product and Network Data By successfully addressing data governance and lifecycle management a provider establishes the foundation for accurate and meaningful analysis of customer, product and network data. To exploit the latent potential of these data, a provider needs analytic capabilities which can be applied to myriad data sources (both structured and unstructured) in both real-time and traditional fashion to deliver actionable insight to optimize all aspects of the customer experience. Accurately Targeted Campaigns IBM’s InfoSphere Streams, SolidDB and Cognos Now! allow an Asian mobile provider to efficiently determine which offers are most attractive to particular customer segments. The process begins by creating as many as 700 promotions to offer to sample groups of subscribers. Real-time analysis and reporting enables the provider to determine which promotions are most relevant. These promotions are then offered to a larger audience while continually analyzing the results of the offers. Iterative refinement and analysis quickly result www.tmforum.org in a set of relevant offers specifically tailored to different market segments. The real-time analysis, reporting and automation of this process increase the success rate of marketing campaigns while simultaneously lowering campaign costs. Analytical capabilities should permit lines of business to quickly assess the current state of affairs relative to their specific responsibilities – sales, product profitability, churn, network performance, campaign results, customer service, spam detection and elimination, and fraud, etc. – and apply this insight to further improve performance in these areas. Analytics Prevents Fraud IBM Identity Insight enables a European provider to detect fraudulent account activation attempts by automatically analyzing customer information – phone number, credit card information, postal address, IP address or other distinguishing attributes – across disparate data sources. The information is scored using sophisticated algorithms that calculate provider’s risk based on product cost along with data from usage monitoring and payment collections to provide a comprehensive view of customer behavior compared against historical information to reveal potential fraud. One quantifiable benefit of employing IBM Identity Insight is that the provider avoided the financial losses associated with provisioning iPhones to fraudulent individuals. To improve all areas of the customer experience in the context of customer lifecycle, analytical capabilities should ideally encompass statistics, modeling, data mining, predictive and prescriptive capabilities. With these a provider can develop more accurate market segments, model buying behaviors or purchase propensities, launch carefully targeted promotions, determine appropriate next best action scenarios, assess network performance in real time, facilitate capacity planning for network build-out, develop predictive models for churn mitigation and customer lifetime value, and continually evaluate the efficiency and effectiveness of customer interactions. Early Assessment of Customer Experience Mitigates Churn A European provider employs IBM SPSS to assess and analyze customer experience throughout the customer lifecycle. The provider discovered that unsatisfactory events in early to midterm lifecycle have the greatest effect on churn. Implementing a survey program targeted at customers who had been with the company for about seven months identified more than 100 indicators predictive of customer churn. The provider can now identify at-risk customers with a 78 percent degree of accuracy. By proactively engaging at-risk customers the provider has reduced churn rates from an average of 19 percent down to 2 percent. Previously ignored sources of customer insight contained in email, CSR logs, blogs, IVR and social media can also be exploited. “Unstructured”, textual and contextual information contained in these sources provides insight into market trends, competitive activities, customer sentiment, product/service issues and can provide guidance for additional cross-sell and up-sell opportunities. In combination with customer, product and network data maintained in a data warehouse, unstructured information provides INSIGHTS RESEARCH 53 SPONSORED FEATURE Customer Lifecycle Provides a Wealth of Insight Aggregate, Analyze and Act to Optimize the Customer Experience a significantly more detailed view of the customer, enabling product development, sales, marketing and customer service to more accurately develop, deliver and support relevant services. Voice of the Customer Via Unstructured Content An Asian provider employs IBM’s Content Analytics to glean insight from CSR call logs, email and inquiries received from customers. Analysis of unstructured content enables product management, marketing, finance, sales and service management to gain a more detailed understanding of the “voice of the customer.” This has allowed the provider to offer an optimum set of services for mobile phone customers, create a more compelling loyalty program, establish more favorable offers in model and service upgrades for loyal customers and create a FAQ data base which facilitates faster call resolution and increases the usefulness of the selfservice web site. Critical to the efficient analysis of the massive volumes of provider-managed data is the ability to continually capture, process and analyze data with minimum latency and translate this real-time insight into business opportunities. Realtime insight can help providers establish profitable contracts with retailers and issue context-sensitive promotions to their subscribers. Real-time context can be derived either based on locations or browsing patterns on smart phones. Technologically progressive service providers have been using real-time analytics for a variety of purposes – such as location based promotions to maintain high utilization of assets during off-peak hours, real-time promotions 54 INSIGHTS RESEARCH to group leaders or social network leaders as well as subscribers prone to churn – and identification and pro-active notification regarding network problems. Network Analysis Reveals Millions in Lost Revenue A provider desiring to obtain a more granular understanding of customers’ wireless experience in order to reduce churn employed IBM’s Tivoli Netcool Customer Experience Management to conduct a proof of concept using real-time data from 6 million subscribers. The analysis revealed that an astonishing 400,000 wireless customers in one 24-hour period could not access the wireless data network. They could not download a ringtone, visit a website, or send a short message – an estimated $4.8 to $7.2M of lost revenue for the provider. The operator also discovered that many of these customers were denied network access, not because of network problems, but because they had not purchased the right to use data services in their service plan. Acting on Analysis Every customer interaction or service usage creates data that can be captured and analyzed to continually refine segmentation models, customer profiles, buying behaviors, purchase propensities, network performance and business processes that enhance the customer experience. A wellimplemented information management strategy combined with a powerful set of analytical capabilities enables a provider to exploit the inherent value of data to continually improve the customer experience. Throughout the customer lifecycle – targeting and marketing, acquisition, service usage and support, key lines of business play a critical role in planning, managing and supporting the customer experience. Each line of business has unique opportunities to translate analytical insight into actions to impact customer experience. In many instances, analytical models and results can automatically be incorporated into customer lifecycle processes to enhance customer experience. Reduce churn Improve customer satisfaction Ensure successful launch of new services and user devices Empower customer-facing groups Provide marketing visibility into customer behavior and service usage Control operational and investment costs Discover un-tapped revenue among existing customer base Provide operations insight into customer experience Protect and increase roaming revenue Service Provider Benefits from Analytics–Driven Customer Experience Management www.tmforum.org Targeting and Marketing Acquisition Product Management •Assess product acceptance and profitability via accurate and current sales reports that enable granular analysis, and augment product strategy accordingly. •Gauge market sentiment by analyzing web and social media to identify product gaps or previously unrecognized market opportunities. • Develop products and services more closely aligned with market segments though analysis of CSR logs and customer correspondence. •Apply predictive analytics to determine buying propensities and optimize product features or service bundles. Sales • Improve data quality and integration to facilitate accurate capture of customer and product information to facilitate efficient interaction throughout the customer lifecycle. •Apply customer profiles and purchase propensity models in the order process to recommend appropriate cross-sell/up-sell offers. •Employ business process management to accelerate order, fulfillment and provisioning, using business activity monitoring to assess the on-going quality and efficiency of the process. Marketing •Analyze customer sentiment via surveys, CSR logs, blogs, social media and email to more closely align products/services with market segments, thereby lowering marketing and customer acquisition costs. • Develop customer lifetime value models to guide marketing decisions and customer interactions throughout lifecycle. • Reduce campaign costs and achieve better campaign results via more accurate customer profiling and offer targeting. • Monitor campaign results in realtime to improve accuracy of customer profiles and increase offer acceptance. • Develop predictive churn models that guide offers and customer interaction, and are enhanced via continual analysis of customer, product and network data. www.tmforum.org Operations •Extend data quality and process efficiency established in the order process to the fulfillment, provision and billing processes to significantly reduce order fall out and accelerate activation time. Service Support Customer Service •Employ CLV models for customer segments and continually refine models via aggregation and analysis of customer transactions; use CLV models to prioritize and guide customer service. • Develop predictive models to advise next best action based upon context of offer, appropriate channel and purchase propensity. Continually refine predictive models on basis of NBA results. •Analyze CSR logs and email to reveal frequently occurring questions that could be answered more efficiently via self-service or improved CSR scripts. Operations • Monitor network performance down to the device level in real-time. In the event of fault automatically notify customer via appropriate channel and offer compensation designed to retain profitable customers. •Continually assess network performance to identify areas that may require infrastructure upgrades to accommodate increased demand for capacity. • Use historical operational data to develop predictive maintenance models to extend asset life and minimize maintenance costs. Summary and Recommendations The true value of analytics cannot be fully achieved without an enterprise strategy that provides accurate, consistent and current information to enable line of business insight, and a service provider delivery environment to facilitate translation of analytics into action throughout the customer lifecycle. Aggregation of relevant data/ information, application of rich set of analytical capabilities for structured and unstructured information, as well as real-time analytics to effectively process massive volumes of network data can enable providers to achieve a significantly better understanding of market, customers, products and services. This understanding, when acted upon and incorporated into key processes of the customer lifecycle, has significant potential to optimize the customer experience while simultaneously improving enterprise efficiency. INSIGHTS RESEARCH 55 SPONSORED FEATURE Using Analytically Driven Insight for Competitive Advantage Around the world Communications Service Providers (CSPs) confront the same challenge. They collect, process, and store enormous quantities of unique and varied customer data – data that could give them much deeper insight into the total customer experience. Indeed, many industry insiders and observers believe that customer data, not the network, is a CSP’s most important asset – the crown jewel. However, most CSP’s undervalue customer data, and therefore are not fully leveraging it to their advantage. As the global leader in Business Analytics, SAS is helping over 200 CSPs get more value out of their data to improve all aspects of the customer experience. The Paradox facing the Communications Service Providers Customers enjoy more choices today than they could have been imagined just a few years ago. They delight in personalizing devices and services to suit their unique needs and preferences. Both consumers and business customers now demand greater control and flexibility. To satisfy this demand, CSPs now offer an expanded product catalog accessible through self-service portals. However, offering more options inevitably leads to a more complex operating environment that makes it more difficult and costly to ensure a high quality experience. But customers also complain that the number of available options leaves them confused about the technology, services, and the value they receive for their money. This is the paradox faced by CSPs today. To thrive in today’s market you must deliver a high quality experience, but increasing the number of services and options makes it harder to ensure that all customers have that quality experience. Business Analytics offers a proven antidote to this paradox and many 56 INSIGHTS RESEARCH successful network operators are leveraging it today for competitive advantage. Success in today’s highly competitive marketplace is a function of the quality of customer data and how quickly and efficiently a company can leverage that data to drive better decision making. The competitive edge goes to the CSP who invests in deeper customer insight and then mindfully choreographs customer interactions tailored to each individual. Proving the Value of Business Analytics CSPs began using analytical software decades ago. SAS has worked with network operators around the globe to complement OSS and BSS functions by performing such tasks as network capacity planning, demand forecasting, customer segmentation, network and service optimization, profitability analysis, marketing optimization, and many other functions. For most of that time, analytics was the domain of statisticians and data modelers. That changed about a decade ago when high churn rates threatened the survival of many wireless operators. Across the industry, churn rates are now about half what they were ten years ago, when many operators routinely posted monthly churn rates above 3% for their post-paid customers. Too often, the cost to acquire a customer was not recovered before the customer terminated the relationship. As markets became saturated leaving fewer new customers to acquire, senior executives became alarmed at the high churn rates. Analytical models identify the customers most likely to leave. Retention activities are then proactively directed at those customers. CSPs became better at identifying the drivers of churn so they could prioritize and execute corrective actions, while remaining with their budgets. More impressively, the operators who relied on analytic insight were able to reduce churn while maintaining or even raising ARPU, becoming far more profitable than their less analytically inclined competitors who resorted to price cuts and giveaways. For many operators, this highly-visible validation of the benefits of analytics on business performance convinced many www.tmforum.org senior executives that strategic use of analytics has a much higher return on investment than other options. Innovations that Increase Customer Profitability As the value of business analytics became clearer, network operators became highly innovative and varied in their use of analytics. Many operators now consider their analytic applications as key intellectual property and a source of competitive differentiation. Customer segmentation at leading CSPs is now a highly sophisticated and essential business function that considers how customers use communications services. For many years CSP s only segmented customers as either business or residential. Later, simplistic demographic segmentation variables such as age, income, geography, and gender were adopted. More advanced approaches in use today include behavior based variables that tell a CSP how the customer is using services, the cost to serve, and the lifetime value of the customer. The result is that a CSP can better classify customers, have more profitable engagements, and improve the ROI on campaigns. CSPs can also greatly enhance their segmentation models by inferring and leveraging the influence that an individual has over other customers. Analytics can give marketers the tools and know-how to create more cost-effective marketing campaigns, reduce customer attrition by attracting influencers, and provide more relevant www.tmforum.org content in their marketing messages. Users can quickly visualize social networks between their customers that were previously unknown to uncover leaders, followers, and other members within social communities. By incorporating such role-based variables, a CSP can enhance existing segmentation models, and discover how and when to target influencers. In addition, marketers are able to understand how products and ideas diffuse through entire networks, thus allowing tests of new campaigns which would optimize the spread of new products or services to their customers. Customers frequently express difficulty in understanding the various price plans and options offered by their service provider. Furthermore, many customers believe that a different plan would have resulted in a lower bill. Price plan dissatisfaction is a leading reason for customer churn. Business analytics offers an efficient and effective solution by calculating the optimal offer for each customer in advance of a customer interaction via a highly efficient method. Simulating an individual customer’s bill under any number of price plans can give operators a precise, analyticallydriven, prioritized list of offers that balance the customer’s desire to reduce cost with the operator’s need to maximize profits. Where this is leading is to a breakdown of the traditional mass marketing model – and the establishment of a marketing model that’s customer-centered and personalized. As noted by independent research firm, Forrester Research, Inc., “Only 13% of consumers say that the ads they see are relevant to their wants and needs, and even fewer find direct mail and e-mail marketing relevant. Consumers have had enough of marketing, and more than threequarters say they want companies to let them decide how a company can communicate with them.” In other words, consumers want to be in the driver’s seat. They also expect a consistent experience with their service providers across channels. And, they want a dialogue with the companies – one that clearly demonstrates employees take into account what the business already knows about them. To do this, a CSP needs to leverage the customer data explosion for competitive advantage. Rather than just using the same syndicated data available to competitors, a CSP can create unique analytical insight about customers and prospects based on how they use communications services, what they are buying, their location, how they use websites and mobile applications, their social media interactions and more. They can then choreograph their interactions based on this insight. The Need for an Analytics Architecture and the Role of the TMForum As valuable as analytics have proven to be, one might expect all CSPs to be advanced user of business analytics, but this is rarely the case. Most business and IT executives of major CSPs admit that they are not making the best use INSIGHTS RESEARCH 57 SPONSORED FEATURE Using Analytically Driven Insight for Competitive Advantage of all the data they collect and store. The challenge, according to the CIO of one of the largest US communications service providers, is that multiple customer data warehouses, silos of information, and competing strategies across service lines and divisions prevent delivery of a more strategic, holistic approach to customer intelligence. CSPs need a standardized approach to data modeling for business analytics just as they do for OSS and BSS applications. The TM Forum’s Information Framework (SID) offers the industry’s best business architecture for analytical applications. SAS has invested significant R&D resources in an analytic architecture that is aligned with the SID. As the Forum increases the focus on analytics, SAS’s customers will be assured of easier and more effective integration between systems. Conclusion When used to its full potential, business analytics removes complexity from decision making at all levels of the organization. Speed, precision, and efficiency of decision-making will determine if a CSP can deliver the quality of experience that customers expect. To meet this challenge, the most competitive CSPs in the world are migrating analytics from the back office up to the C-suite and out to every decision point in the organization. 58 INSIGHTS RESEARCH THE SAS® DIFFERENCE SAS’ proven software, services and best practices offer communications industry specific solutions, data management, customer analytics, forecasting and optimization to improve the customer experience, business performance and profits: • Superior data management. SAS lets you extract data from nearly any source and transform it, as well as integrate data from third parties and across business and service lines for a holistic customer view. •A communications-specific customer data model optimized for analytics and aligned with the TM Forum’s Information Framework (SID). An optional communications data model addresses segmentation, cross-sell/ up-sell, and churn. • Powerful analytics. Data and text mining and detailed segmentation/ profiling (churn analysis, market basket analysis, customer profitability, response modeling, next-best activity modeling, etc.) help you understand and predict customer behavior. • Social influence analysis. Identify social communities and measure social influence based on relationships between customers using rolebased variables to enhance existing segmentation models and discover how best to target influencers. •Critical early-warning alerts. Only SAS lets you establish triggers that send early warning alerts automatically when a key customer’s behavior is about to change – so you can intervene early enough to make a difference. •Cost and profitability analysis. Calculate cost and profitability of activities tied to campaigns as well as customer, channel and product profitability. • Patented optimization. Our patented algorithm is more precise and flexible can be applied to many business activities, such as marketing campaigns, resource planning and allocations. Multiple weighted objectives can be built in the model for optimal results. Only SAS provides an evolutionary growth path that lets you address your most critical business issues first, then add new functionality over time as your needs change. Learn more at www.sas.com/success. www.tmforum.org Analytics Defined The term analytics is trendy. As the term becomes more widely used its meaning is sometimes obscured. Analytics cannot be asked as a binary question, as in – “does a product support analytics?” We have to think of analytic applications as a spectrum of offerings with different capabilities for different tasks. Plotting the spectrum of analytic applications on a graph, with Competitive Advantage along the Y axis and Degree of Intelligence along the X axis, we can see that as the degree of intelligence increases, so does the competitive advantage. We can also divide these analytic applications into those looking only at the past (green spheres) and those that predict future outcomes (blue spheres). At a very low level, are standard reports that answer the question, “What happened?” Financial reports generated on a regular basis are a good example. They answer questions such as “How many new customers signed-up last quarter?” or “What was our churn rate and ARPU?” or “Which devices are selling best?” Ad hoc reports are for special situations such as asking “What were the results of a one-time promotion?” or “How did that code fix impact network performance?” Query drilldown capability such as OLAP enables deeper discovery, for example, if handset returns are on the rise, an analyst can look at a geographic breakdown in search of a pattern. Alerts are very useful in bringing attention to a problem area. A good www.tmforum.org example could be changing a dashboard indicator from green to yellow and finally red as a problem is developing. All four of the above applications look only at what already happened. These applications are essential to keep the business operating, but reveal nothing about what’s likely to happen in the future. That is farther up the spectrum. Statistical analysis can answer the questions, “Why is this happening?” and “What factors most contribute to network degradation?” Data and text mining can be used to identify correlations which may illuminate an early indication of developing trends. Forecasting helps CSPs more accurately plan for changing conditions by address the question “What if these trends continue?” More accurate forecasts can offer a clear picture of things like future bandwidth demands, customer churn rates, or the minimum number of handsets to have in stock. Predictive modeling can help answer, “What will happen next?” For example, when offering a new service predictive modeling can identify which customers are most likely to respond. Or it can identify the customers most likely to leave. Finally we have optimization, which tells “How do we do things better?” or “How do we best align our resources to achieve our objectives?” The applications at the top of the spectrum deliver the most value. As CSPs face intense competition in a rapidly changing marketplace, they need analytics that span the full spectrum. INSIGHTS RESEARCH 59 SPONSORED FEATURE “The one who sends the (data service) bill, owns the (data service) problem” by Sean Timiney, Director, Mobile Solutions, Compuware and former Manager, Mobile Data Services, Sprint Data, data everywhere: The wireless industry passed an interesting “crossover” milestone late last year, but with surprisingly little fanfare from press and analysts: Ericsson reported that for the first time ever, in December 2009, worldwide mobile data traffic exceeded mobile voice data traffic. figure 1. More recently, in their “US Wireless Data Market Q2 2010 Update” (1), Chetan Sharma Consulting predicted that on the current trajectory, the next major “crossover” – data ARPU exceeding voice ARPU – would occur in the US market in Q2 2013. figure 2. Let’s put these dry statistics into hard business terms: Within the next 36 months, your mobile data customer will be more important to your business than your mobile voice customer. This change is inevitable and irreversible. For a wireless operator to be successful in this new era, they have to recognize that this is a highly disruptive change that cannot be addressed by fine-tuning existing management tools and processes. Instead of being Figure 1 60 organizations driven primarily by one type of customer needs (reliable pointto-point voice communication within a proprietary network), wireless operators will be driven by an entirely new set of customer needs (ubiquitous, seamless access to applications and content of their choosing across an open, worldwide network – the Internet). (their own network); non telco vendors are heavily influencing user behavior and expectations with a myriad of innovative devices and applications; and there is a whole new generation of users that are impatient, unencumbered with antiquated notions such as brand loyalty, and who expect things to just work. Using yesterday’s solutions to solve today’s and tomorrow’s problems? One of the key processes that will distinguish the major players from the “also-rans” in the new, datadriven operator world is the way that they manage the user experience of their service to ensure a profitable and loyal customer relationship. The traditional solutions used for decades by fixed and mobile operators to manage voice services simply don’t work when it comes to managing mobile data services. There are a number of reasons for this: Unlike voice services, mobile data services are not confined to end points within the mobile operator’s “walled garden” “Within the next 36 months, your mobile data customer will be more important to your business than your mobile voice customer. This change is inevitable and irreversible.“ Figure 2 INSIGHTS RESEARCH www.tmforum.org The major problem that’s being exposed inside almost every operator is that there’s a deep disconnect between what the operator thinks is happening on the data network, and what the end user is actually experiencing: - On the one hand, the operator’s visibility is confined to one part of the service delivery chain (the network), and with limited or no visibility into other parts of the delivery chain (device, application, etc). figure 3. In the absence of any other data, when “all lights are green” on the network, the assumption can only be that “we think all is well with our users.” - On the other hand, the end user is continuously experiencing the entire service delivery chain (including any problems), and perceives “the mobile data service” as a single entity provided by the operator. So, rightly or wrongly, end users will hold the operator accountable for any problems without consideration for who in the service delivery chain is actually to blame. In other words, operators are in the awkward position of not having full visibility into the service delivery chain that their customers are using, while still being expected to assure that the customer has a good experience. Disruptive problems demand innovative solutions: At the heart of the problem facing operators as they transition from a voice-centric to a data-centric business is the fact that there is a rapidly widening gap between the operators’ view of their mobile data service quality and the actual end-user experience of the service. The only way to narrow (and ultimately eliminate) this gap is for the operator to adopt an innovative Service Performance Management approach: manage mobile data services by managing the entire service delivery chain, not just the elements that are under the operator’s direct control. figure 4. The approach goes way beyond just implementing the latest and greatest “visibility management” software tools; it also includes aligning departments within the organization, and even managing the customer “End users will hold the operator accountable for any problems without consideration for who in the service delivery chain is actually to blame.” Figure 3 experience before they actually become a customer. Although this approach may be new inside the operator’s business, it is actually a tried-and-tested approach that has been successfully employed in a large number of enterprises to manage the delivery of their IT services for internal users and customers. In fact, the problems faced by these enterprises are remarkably similar to the problems that operators now face in delivering data services to their users. Figure 4 www.tmforum.org INSIGHTS RESEARCH 61 SPONSORED FEATURE “The one who sends the (data service) bill, owns the (data service) problem” The Service Performance Management approach defines 4 key principles: i)Unite at the customer: The traditional silo-focused departments within the operator must unite at the customer. This means that each department must communicate problems across departmental boundaries, and always in terms of what the problems mean to the customer. For instance, if Engineering detects that Cell Tower 123A is operating at reduced throughput because of an electronics failure, they must communicate this to other departments as “Customers in postal code 34017 may be experiencing slow performance for the next 2 hours.” This enables customer-facing departments to respond quickly and accurately to customer calls, to post information to a customer performance website, or even to proactively notify affected users in that area via SMS. ii) Create a customer experience ecosystem: True end-user-focused service management requires a unified ecosystem of people, responsibilities, processes and tools inside the operator to find and fix problems quickly. Without this, operators are unwittingly putting their customers at the forefront of problem detection, since all too often, the first time the operator knows of a problem is when the customer calls to complain. The customer experience eco-system brings together disparate parts of the organization by providing one view of the truth aligned to a clear line of responsibility, which enables them to identify and solve the right problem with the right people, as opposed to debating if the problem actually exists or who owns it. iii) Develop an “outside-in” view of your business: Although it is frequently overlooked, the “outside-in” view of the customer experience is an important part of building a competitive offer and a profitable, long-term relationship with customers. It starts with real-time monitoring of the performance of the operator’s own website from outside the organization (the customer’s point-of-view), and so includes content from a number of partner sites. If any of the partner sites are performing badly, it will look to the customer (or prospective customer) as though the operator’s website is slow. Even more important, “outside-in” performance monitoring should include monitoring of the performance of customers’ most important applications and services (e.g. Facebook, YouTube, Google, the operator’s website, etc.) over both the operator’s network and their competitors’ networks. Using the “collective intelligence” gained from “outside-in” monitoring, very valuable customer data can be obtained. For instance, is the operator providing a better, or worse, experience with device A on Facebook than a competitor using device B? It also allows the operator to determine what devices are most popular on the network, irrespective of who actually sold the device (e.g. including roaming-in users and unlocked devices). iv) Develop a real-time, end-user experience view of data service performance: The vast majority of the mobile data traffic handled by the operator is to/from services and websites which reside outside the operator’s own network, somewhere on the Internet – the operator is simply part of an extended service delivery chain. A real-time, end-user experience view of data service performance allows the operator to gain visibility into the performance of the entire service delivery chain: the device, application, network and content that make up the mobile data service for the user. With this visibility, the operator can now view these service delivery segments from the perspective of the end user. With real-time and continuous monitoring of the service delivery chain, the operator gains the ability to proactively identify and resolve service experience issues before they become impediments to individual user perception of the service. 62 INSIGHTS RESEARCH www.tmforum.org Compuware puts it all together: In response to requests from many operators around the world, Compuware developed the vision of “Proactive Customer Awareness” (PCA). This incorporates the Service Performance Management approach described above, plus it uses a phased implementation methodology which defines three major milestones as shown. figure 5 This is the approach that carriers around the world are adopting as their strategic direction and deployment methodology to achieve their business goals. Compuware’s PCA vision also recognizes that operators have a significant investment in existing tools and processes, so it offers the ability to Figure 5 www.tmforum.org leverage those whenever possible. Compuware’s PCA solution builds a new foundation for managing and growing high-performance customer data experience. It combines our market leadership in enterprise end-user experience management (the Vantage product line) with our market leadership in “outside-in” web performance management (Gomez) to deliver a truly unique, end-to-end solution to manage the data service experience. Conclusion: As mobile operators become increasingly dependent on data services for revenue and margin, they are faced with the fact that their existing network management tools and operational processes are unable to meet the needs and expectations of this new era. There is only one solution: Re-focus the organization to unite around the customer, not just the network. This requires working with a vendor that has the operational experience in a number of areas, such as end-user experience management, website performance management and service delivery management. Compuware has extensive, demonstrable experience in all three areas: It pioneered end-user experience management of data applications in the enterprise; it has been helping businesses manage the delivery of mission-critical services for over three decades; and Gomez, our web performance division, provides the world’s most comprehensive testing network, covering every logical and physical layer of the web application delivery chain. Compuware has expanded this industry-proven approach to managing mobile data services, and is now helping global mobile operators achieve success in managing profitable mobile data services. Compuware’s solution is more than just adding more tools. It is an approach to help mobilize the departments involved in service delivery, leverage existing tools, improve processes, and use innovative tools that help deliver maximum user experience on mobile data services to ensure a loyal, profitable relationship with your customers. References: (1) www.chetansharma.com: Report “US Mobile Data Market Update Q2 2010” INSIGHTS RESEARCH 63 SPONSORED FEATURE Closing down the Customer Experience Gap and Safeguarding against Churn Arantech have taken a radically different approach to the BSS and OSS market compared to existing vendors, by building a system that puts the customer at the heart of its architecture. Today’s operators must embrace customer advocacy service models if they are to gain new users, drive up ARPU and increase customer lifetime value. Such service models, which are geared to helping customers achieve their objectives, require operators to ‘co-create’ value along with their customers through effective business support systems (BSS). Customer experience management (CEM) is an increasingly important element of the OSS function of many telcos, but the potential that CEM systems offer in terms of the BSS function is still to be realised. Finding ways for BSS to effectively use realtime, point-of-use CEM data offers significant benefits for operators to map performance objectives, identify next best action (NBA) strategies and build accurate churn propensity models. The following article considers the issues faced as operators migrate to customer advocacy models, look at the requirements for a customer advocacyorientated BSS, identify how CEM data can help to address those requirements and discuss ways that this data can be effectively mined by the BSS function. Safeguarding themselves against churn and ARPU decline has become a key objective for the mobile operator. However, in attempting to identify churn rates in different sections of the subscriber base, the operator is faced with some difficult problems – they must deal with a lot of information coming from disparate elements of the network, and they do not have an understanding or vision of how to interpret this information. Reference, Figure 1.1 Stop Churn. CEM delivers a unique, new dataset that provides an operator deeper insight 64 INSIGHTS RESEARCH Figure 1.1 Stop Churn into its entire customer experience and behavior, especially the real-time experience of data and other services. In putting together a coherent strategy to overcome potential churn problems, Arantech suggests that the operator asks the following questions; What information is required? If we believe what the analysts are telling us, we are seeing a churn factor or industry standard of 30-35% churn. Given this, the operator needs to understand what the level of churn is on their network, and confirm whether they are within the industry norms. The operator must out the rate of churn, identify higher or lower rates in specific groups, and discover what are the influences on these groups and what can they do to reduce or strengthen this influence. They will also need to understand what return is being sought from the marketing activities that they deploy to affect the rates of churn. What are we looking for? The operator should start to look at the subscribers who are at a higher risk of churning from pressures such as bill shock or other “bad experiences” like dropped call rates. Subscribers coming to the end of their contracts are also in this high-risk category. The operator must analyze the customer base to find these high-risk subscribers. We would advise that they start to look beyond typical market research to segment the customer base. Operators cannot afford to keep using traditional demographic or attitudinal segmentations to make decisions about differential treatment of existing customers. It is not enough, for example, for an organization to target the “youth segment,” because this group encompasses customers with a wide range of usage and spend patterns, and its members may not be accurately identifiable in the first place. Instead, the operator could create “micro-segments” that provide a closer view of customer types and vary by value driver. These micro-segments can be developed incrementally using subscriber information. This is data that very likely already exists on various databases throughout the organization such as Customer Experience Indicators (CEIs), or Customer Data Records. (CDRs). Getting this data into a single data mart is the first step; from there, it can be groomed, updated, and redeployed to all the key areas www.tmforum.org of customer contact, including call centers, retail outlets, and the operator’s Web site. As more data is gathered and updated, its usefulness and value grows. If the operator can do this, they may be able to quantify the lifetime value of each subscriber and start to do things like “de-averaging” customer segments and offers. This is where they are not making offers to an entire segment, which may contain millions of subscribers, but instead make focused, targeted offers to more precise groups, thereby achieving a higher yield from these activities. The operator also needs to understand propensity & pressure to churn. This can be viewed in the form of a social network. A typical user will be at the center of a social network that includes their family and colleagues. If they have a bad experience, this will have an influence on the network by increasing the propensity for churn. The factors for this influence will vary according to the strength of the connections in the network. The operator needs to understand that, despite having identified the groups of subscribers and key subscribers that they want to focus on, they will have a very limited time in which they can reverse the effects of a bad experience. This window is a key factor in managing a churn reduction program. Understanding this window and the duration that they have to respond for each group of subscribers will be an important consideration. Subscriber Profitability Once the customer base has been segmented and the churn pressures are understood, the operator needs to evaluate the results and focus on a group that they feel will produce a meaningful return or yield from the preventative measures. We would advise the operator to look at some of the following factors to build a set of thresholds or levels that will define when the subscriber becomes profitable. www.tmforum.org 1.Age Analysis – This is contract information that can be extracted from a third party. This is also called the FICO score or credit score. The data can be imported from agencies such as Experian, Equifax or TransUnion. Injecting the FICO scores use third party analysis to look at the risk factors, but this will have to be referenced by something like a social security number. 2.Billing History – Payment history means a number of different things. It means more than just a history of the subscriber paying on time, although that is important. If they pay 30 days late or 60 days late, that is recorded and can build the propensity analysis. Even a single late payment can dramatically lower this rating. 3.ARPU Analysis – This can be split into two elements, the tariffing element and the cost element. The tariffing is the “package” the subscriber is on and this can vary according to the needs of the market. Data tariffs associated with a handset such as the iPhone can vary significantly with that of a basic package. The cost elements can be associated with the region the subscriber is based in and can include costs of an urban area such as backhaul, spectrum, etc. as compared to a rural cost basis. 4.Contract Duration - The average age of an account with the operator is also a factor in propensity rating. For example, subscribers with a long history of good use and prompt payment with a low cost of retention allows operators to rate accordingly. The operator now has built a rating engine for his subscribers and they can now assess the desirability of the subscriber that has the propensity to churn from a financial perspective. This will enable the operator to focus on the retention of the more desirable subscribers. Customer Satisfaction Index The operator is now in a position to build a model that will enable him to take a filtered group of subscribers and focus on their satisfaction with the operator as a service provider. We would advise the operator to build a Customer Satisfaction Index (CSI) to monitor these filtered subscribers. There are ranges of inputs or KPIs that form the CSI. We have suggested some of the KPIs and measures that form the CSI they can include the following; 1.Commercial Data – This can be a summary of the profitability data as described above or it can be the rating that is currently used by the care agents in the customer care data associated with the subscriber. 2.Network Experience for Voice & Data – Using a CSI to identify the network issues affecting subscribers can drive key metrics such as network attach success rates from 70% to over 90% (based on existing Arantech customers). 3.Service Usage for Voice & Data – It has become more and more difficult for an operator to measure exactly how individual services are being used by subscribers, and how each of these services are contributing to overall revenues. A CEM solution such as Arantech’s can provide key usage metrics for us in an overall CSI. 4.Customer Complaints – If the subscriber has called the operator to make a complaint or highlight a problem when linked to the experience or service, this can present the operator with a very real picture of the problem for rapid resolution and/or monitoring. We have seen this used to great effect in the management of VIPs and for large events such as sporting fixtures. INSIGHTS RESEARCH 65 SPONSORED FEATURE Closing down the Customer Experience Gap and Safeguarding against Churn 5.Survey Responses – If we add survey responses to this index we get an understanding of the average levels for the CSI. An example of this would be in the use of an outbound survey on the levels of survey from a new handset. The results can be fed into the CSI for each subscriber surveyed and this can be aggregated to see if the desired or expected levels are being achieved. The CSI is very effective in understanding where the satisfaction level is for the selected subscribers and where the potential issues are and what may have in an influence on this across the network or handset. Decision Engine The final element of this process is the decision engine. Now that the operator has decided on and is monitoring this group of subscribers he next needs to decide how he is going to respond to the issues that are highlighted in the CSI. 1.Intervention Strategy – The positive effect of a care agent calling a subscriber to tell them of a problem with the network or their specific service is very powerful and can have a very strong impact on the pressures and influences to churn. The intervention strategy can be some form of credit or gift that is in line with the decision of the marketing function. The reality of this situation is now that the operator can monitor the effects of the intervention strategy in “real-time” or something very close to it. 2.Closed Loop Capability – The ability to automatically identify, process and respond to customer and network events in a meaningful way in real-time is critical in identifying negative experience scenarios and to proactively address user experience issues as they arise. For 66 INSIGHTS RESEARCH example, Arantech’s OpenPlatform ProAction™ solution has had proven success in greatly reducing customer care calls and ensuring that revenuegenerating services continue to be available and usable. Now that the operator has all the elements in place, they will be in a position to greatly increase their ability in predicting churn in their network. Arantech have also seen that if the operator can maintain customer satisfaction among a group of profitable subscribers, this will have a positive impact on free cash flows as the operator will generate more cash from operations and use their infrastructure much more efficiently, thereby generating higher free cash flows. The difference between what a customer actually experiences and what can be currently measured by the operator using existing tools is called the ‘customer experience gap’. See Figure 1.2 The Customer Experience Gap. This gap is measurable and present in most telecommunications networks and is growing rapidly in the area of data services. Identifying and closing this gap will be a key factor in the future success of any mobile and fixed line operator. The ability to identify the poor experiences of its users, and act on the outcomes automatically is key and will result in Figure 1.2 The Customer Experience Gap higher levels of customer retention, advocacy and greater revenues, leading to market share gains over rival operators. CEM systems are designed specifically to identify and close this experience gap as well as gain deeper customer insight into experience and take actions on customer events. Using CEM systems, operators will be able to understand how subscribers interact with their services in real-time and be able to respond to issues that cannot easily be uncovered by OSS KPIs or existing data stored across the business (e.g. CDRs). Most customer insight, experience and behaviour knowledge is currently gained through data mining exercises against existing data sources already stored within the BSS environment. This exercise entails sifting through enormous quantities of data in an attempt to rebuild the customers’ experiences over time (typically CDR and usage data is used from data warehousing solutions). Very little, if any, OSS network transactional data is stored and available for this purpose, as this data is usually kept within the monitoring tools to enable session and protocol level analysis to help root cause and problem diagnosis of services and the network. This means the customer usage experience is missing from most customer insight analysis in BSS. Trying to make such large volumes of raw transaction OSS data available into Business Intelligence tools would be extremely difficult for three key reasons (a) the cost of storage for such data volumes would be restrictive (b) the data would be uncorrelated with customer id and other useful index types (e.g. handset device and service node), requiring huge post processing queries and the need to correlate with other data sources and (c) the knowledge required to build sensible data queries of such low level data would make using the solution impossible for anybody other than a protocol expert.) www.tmforum.org The uniqueness of a transactional based CEM solution is that it can make this experience data available and combine it with BSS datasets. The system builds in real-time a set of new KPIs from the raw protocol flows across many business and operational touchpoints, creating a unique customer centric data set that reflects actual experience and is customer specific. This process both links important index types to service KPIs at aggregation time and also removes the need to store unwanted and irrelevant data which is dropped after the CEIs are built, retaining only those errored events and experience counts that define a customer’s experience at that time. Each customer therefore has an experience record in near real-time in the database, such data can be configured in real-time by the operator into experience threads against flexible or a dynamic group of individuals and reported against using standard Business Intelligence software, dashboarding and reporting techniques to provide deep customer insight. This data can also be made available to other standard BI tools or applications through solutions (such as Arantech’s touchpoint OpenPlatformTM), which includes a Datamart and a rules based action engine. The Arantech Approach Arantech was one of the first companies that pioneered the use of CEM as a technology within the telecom industry, and has successfully delivered its flagship CEM solution called touchpointTM into some of the world’s largest mobile operator groups. Through its touchpointTM product offering and OpenPlatform™ interfaces it has been able to take raw event data from the network and model the underlying protocols as useful customer KPIs allowing this to be cross referenced with customer relationship and demographic information held within the operator’s BSS stack. This gives a unique www.tmforum.org perspective of the subscriber lifecycle that helps the operator achieve higher levels of customer satisfaction and the ability to proactively reduce churn. Founded in 1999, Arantech is the premier provider of Customer Experience Management (CEM) systems to communications service providers worldwide. Arantech’s CEM solution radically transforms not only the way that operators service their customers but also the way their internal organisations respond to customer needs. This has made touchpoint™ both a catalyst for cultural change and a transformational force for its customers in terms of revenue and operational practice, or network issues. touchpoint™ provides a simple proactive approach to first-line customer management and selling, supporting any network, service or device type, through its touchpoint™ 360° desktop portal. It also enables tight integration via APIs to other BSS and OSS systems like customer care, service management, and performance management, providing these systems with a high level of customer centric capability. Arantech’s CEM solutions provide mobile operators with a unique customer insight, and enable them to take proactive management action on real-time experience events. touchpoint OpenPlatform™ recently launched by Arantech opens up access to the touchpoint™ data through open access protocols such as web services and SOA, giving access to CEM data to a broader range of stakeholders and third party application vendors. This enables operators and third party application vendors, to drive-and-derive the benefits and value of CEM data throughout their organisation. Arantech is the customer experience management specialist within the wireless industry, and is actively broadening its reach into other channels of digital service delivery, such as fixedline broadband and mobile convergence. See Figure 1.3 Converged CEM View. For more information, visit www.arantech.com Figure 1.3 Converged CEM View INSIGHTS RESEARCH 67 SPONSORED FEATURE Managing Customer Experience in a Hyper-Connected World: The growing role of Business Intelligence Every touch point between customers and their service providers or partners contributes to some form of customer perception, leading to satisfaction or frustration, loyalty or churn and ultimately to the profitability of a service provider. As defined by TM Forum in their 2009 Insights research report, customer experience can be viewed as the result of the sum of observations, perceptions, thoughts and feelings arising from interactions and relationships between customers and their service provider(s). Therefore seeking to retain and up-sell customers, introducing a loyalty program, attracting new subscribers, focusing on lifetime value are all examples of customer oriented initiatives that will create an experience, and a trace in both the customer’s mind and the Communications Service Provider’s (CSP) information systems. It is widely accepted that Business Intelligence has a fundamental role to play in helping CSPs manage customer experience by locating and extracting these traces, this customer data, across their entire organization, cleansing and consolidating it, analyzing it and finally making it available to the “point of opportunity” to support the right customer impacting decision. Though the structure of many CSPs (including “silo” line-of-business and regulatory walls ) often makes it difficult for them to get a complete and consistent representation of all customer experiences, most service providers have already started their journey to incorporate analytics in their Customer Experience Management strategy and have achieved various levels of success. Where the most timid CSPs still struggle with the accuracy or the quality of their customer data, the most progressive ones can already point to tangible results, such as improvements in first call resolution rate or customer 68 INSIGHTS RESEARCH retention, thanks to the effective use of Business Intelligence in their daily interactions with customers. As CSPs continue to incorporate analytics in their customer experience management strategy, a number of new trends have recently emerged that will offer them new opportunities to augment the role that Business Intelligence can play in their organizations. • The era of ‘Big Data’ As the proliferation of connected devices per individual continues in mature markets, and the Machineto-Machine (M2M) communications space is set to explode in the coming decade, the pace and volume of customer centric data accumulation will only accelerate for CSPs. IDC estimates that more than 1200 billion gigabytes of information will be created in 2010 and that this ‘digital universe’ is likely to double every 18 months. As data sources and volume grow, CSPs will be forced to sift through an ever greater amounts of data, both structured and unstructured, to maintain successful customer experiences. by Stephan Gatien • Let me do it myself Broadband pervasiveness and new breeds of customers such as the digital natives who have always known a world with an Internet connection will continue to fuel a ‘do it yourself’ attitude and to create a growing appetite for self-service. The customer experience for this segment will increasingly be dictated by his ability to conduct business on his own terms and to be able to find the information required at his fingertips. Business Intelligence can be an integral part of this push towards self-service and become an experience enhancer by providing access to personalized data such as usage behavior, consumption history and billing details. • A more engaged customer The emergence of social networking and instant communications capabilities means that the experience of a single customer (whether good or average, excellent or terrible) will increasingly shape and potentially impact the behavior of many others. Though some of this content may be available in internal or external customer satisfaction surveys, it is www.tmforum.org more likely that the vast majority of these comments will be located in blogs, forums or social network sites such as Facebook and Twitter. Being able to locate and transform unstructured data or text and turn it into valuable data for analysis will therefore become even more important. • A real time world The digital experience has already significantly compressed the time span of many activities in the industry. Ordering a video on demand or purchasing a mobile app takes only a few seconds. Instant access is the new form of instant gratification for a new breed of subscribers and partners. This tempo will increasingly define the expectations of customers and dictate the tone of all facets of the relationship with subscribers from offer management to dispute resolution. These trends will impact both the behaviours and expectations of customers as well as the complexity of a CSP’s data environment. Here are some areas that service providers should consider: • Focus on Enterprise Information Management With virtually every aspect of customer experience hinging upon the accuracy, consistency and accessibility of data scattered in an increasing number of sources, the need to establish a corporate wide trusted data foundation has never been so critical. Therefore, deploying an information management solution that will provide extraction, cleansing, enrichment, consolidation and integration of data across the enterprise, coupled with powerful master and metadata management capabilities is, more than ever, required for CSPs. This will help www.tmforum.org establish a trusted environment to make better fact based decisions when interacting with customers. • Learn and Predict Determining the propensity of a subscriber to churn or his propensity to be up-sold based on attributes such as number of devices owned, size of household, postal code or monthly spend can enable a much more granular and personal conversation with a subscriber or prospect. With Predictive analytics, the availability of highly sophisticated modeling and analytic engines, allowing CSPs to leverage their complex historical data to establish correlations, uncover patterns and identify trends needs to be fully leveraged by Service Providers. • Leverage In-memory Analytics What once represented a promising technology is now a reality. With the rapid decline of memory prices, the need to store pre-calculated data (in the form of OLAP cubes or aggregated tables) is being eliminated. For CSPs, this opens the door to the possibility to browse through very large data sets (up to billions of data records) in seconds and effectively deliver valuable insights during each interaction with a customer, whether it is around identifying the optimal offer or better understanding the profitability of an individual customer. • Consider BI On-Demand The BI space is clearly impacted by the SaaS revolution. BI On-Demand will increasingly offer a very costeffective way for CSPs to further leverage Business Intelligence during interactions with customers. CSPs should explore how BI On Demand solutions may help them spread the usage of analytics at each ‘point of opportunity’ with customers and, in doing so, further empower a broader range of customer-facing roles in their organizations. In addition, BI OnDemand has the potential to become a very cost effective pillar of any CSP’s self service strategy by enabling a simple deployment model of access to personalized data such as usage and consumption patterns or billing history. • Analyze in Real Time As highlighted earlier, the digital economy will increasingly run in realtime. The business implications are obvious for CSPs. A greater level of agility will be needed to create more differentiation from the competition, particularly as they interact with customers. Gaining this extra edge will be virtually impossible without realtime analytics. Thanks to the advent of technologies such as Complex Event Processing (CEP), opportunities exist for CSPs to operate at real-time speed and leverage real-time insight to make new decisions or react quickly to any changes in their business. Business Intelligence has a critical role to play for Communications Service Providers to help them manage optimally each customer experience. The emergence of a hyper-connected world with a proliferation of devices per individual and the probable explosion of M2M communications will intensify the need to remain customer relevant in a growing ocean of data. Whether it is to analyze structured or unstructured data, on premise or on demand, in real-time or not, CSPs should select a comprehensive platform provider that can support them across the different dimensions they will require to broaden the usage of BI in their organizations in order to enable better customer facing or customer impacting business decisions. INSIGHTS RESEARCH 69 SPONSORED FEATURE Real-Time Intelligence, Real-Time Value 1.0 Introduction The global telecommunications market has become increasingly competitive over the past half decade. Markets are nearing (or have passed) 100 per cent penetration and new entrants – including ‘over the top’ content providers – have undermined communications service providers’ (CSPs) profitability and revenue growth. CSPs recognise that the customer data they hold is a unique asset which they need to exploit better, but they lack the means to do so fully. Many CSPs have made significant investments in Business Intelligence (BI) and while they have had some successes, BI has not enabled them to achieve the business agility they need. CSPs need to adopt a new approach – one which gives them strategic advantage by tracking and responding to changing trends in customer behaviour – in real-time. In this report we will explain how data within business support systems (BSS) can be exploited to enhance business performance. We refer to this as Realtime Actionable Intelligence. This area of the analytics spectrum is rapidly growing in popularity: Gartner believes that “during 2010, real-time decisioning will be the most adopted category of analytic application”. 2.0 What is real-time actionable intelligence? 2.1 The elements of real-time actionable intelligence Let us look at this in three parts: REAL-TIME. The BI model used by most CSPs today uses historical customer data held in a data warehouse. While this approach holds some value for longerterm and predictive modelling, it cannot help the business respond to short-term trends. To see how customers are behaving and launch offers which appeal, a blend of historical analysis and real-time customer insight is needed. Such real-time insight needn’t be a huge technical challenge, as BSS tools generally include real-time capabilities. INTELLIGENCE. The trends yielded must facilitate some kind of business improvement. For example, by-thesecond insight into metrics like a customer’s spend from the start of the week, or creditworthiness based on top-up behaviour, speak volumes about customers’ needs at that moment in time. ACTIONABLE. The ability to act is the final link in the chain. Here, CSPs are Figure 1: Telecoms revenue growth trends 2004-2013 70 INSIGHTS RESEARCH often hamstrung by internal processes: delays of several weeks between data capture and action are commonplace. Yet if successful retailers can manage to fine-tune promotions day by day to get the most profit out of each segment, there is no reason why CSPs cannot do the same. CSPs should know on a daily basis who their most valuable customers are. 2.2 Real-time actionable intelligence in action A common problem with pre-paid customers is the decline in top-up and recharge revenue towards the end of each month. A CSP equipped with realtime actionable intelligence could: 1.Target prepaid customers who have a balance of less than €10 with a free gift (say, a download) if they top-up in the next hour 2.Offer those who don’t accept an immediate 10% bonus on their credit instead 3.Analyse information who accepted the promotions immediately for overall profitability Another issue concerns ‘capped’ broadband access. Customers at their usage limit are far more likely to churn if they receive an offer from a competitor, but CSPs can be proactive in making offers of their own, and applying them immediately, e.g.: 1.Buy a one-off 1Gbyte of usage for half price 2.Upgrade to an unlimited plan with the 1st month free. 3.0 How will my business benefit? 3.1 Long-term value from real-time insights The value of real-time actionable intelligence isn’t just restricted to the CSP’s own services. CSPs have a great opportunity to market these data to third www.tmforum.org benefit from real-time intelligence, for example, monitoring employee behaviour to tackle fraud or curb spend overruns. Wholesale users may want a realsMicrosoft_PerspectivesYearbookAd_2010_Final.indd 1 time view of usage so that decisions on 3.2 A consolidated view dynamic pricing and routing can be made One of the big reasons why BI implementations fail is the sheer diversity right away. of data sources that must feed into the 4.0 Where does real-time actionable system. The right real-time actionable intelligence sit in the BSS stack? intelligence solution can provide a single The logical home for real-time actionable consolidation layer that encompasses intelligence is the rating engine. Here, every potential data source. This the tools can tap into all data from all subapproach has been operationally proven systems, manipulating it to serve a range to produce significant cost savings. of purposes, as figure 2 demonstrates. The ideal rating engine should have the 3.3 Better promotions following characteristics: A recent report from Nokia Siemens Networks for instance found that 33% of •Event agnostic – i.e. capable of churn could be attributed to competitors working across all network and content making the right offer to other providers’ service types customers. The ability to respond rapidly • Streamlined rating and billing – for to customer behaviour means CSPs can wholesale transactions between pre-empt the competition. partners. This can vastly simplify More importantly, the customer gets business processes and reduce costs a more personalised experience – a real •Able to trigger real-time events on advantage in today’s marketplace. a per-customer basis – for example a top-up offer is only sent to prepaid 3.4 Wholesale and enterprise customers whose accounts meet intelligence specific criteria The need to know what is going on right now does not just apply to retail services. •Easy integration with existing BI and Campaign Management tools. Enterprise customers in particular could parties – such as content providers, brands or media planners – with the CSP providing the delivery network. Figure 2: Real-Time Actionable Intelligence and the BSS Stack (source: Convergys) 4.1 Deploying real-time actionable intelligence Convergys’ Smart Suite of BSS applications takes an overlay approach that allows the CSP to achieve a realtime view without replacing existing BI systems. Following a staged approach, CSPs can tightly link implementation milestones to business outcomes, as figure 3 explains. 5.0 Conclusion The communications industry is buying heavily into BI which, though useful in parts, doesn’t provide all the capabilities CSPs need to remain competitive. Convergys asserts that simplicity must come first. Real-time actionable intelligence provides a basis for improving data quality and business performance. Most importantly, in combination with a marketing rules engine it provides a valuable tool to implement actionable promotions that maximise segment and category profitability. Convergys Smart Suite provides the right information at the right time so CSPs can win customers and boost profits, all the time. Figure 3: Stages in real-time actionable intelligence implementation (source: Convergys) www.tmforum.org INSIGHTS RESEARCH 71 SPONSORED FEATURE Enabling a positive customer experience through the ROC The value of Customer Experience Management (CEM) is in understanding everything there is to know about a customer, and more importantly treating them in a unique way. Introspecting “What would one do differently, if one knew each customer personally?” To achieve this goal one must consider the entire life cycle of a customer before personalizing touch points and continuously improving the experience. It is important to understand there is no one size fits all answer. CEM targets the emotional response of customers and as such is unique to each customer just as each customer is unique. Calculating a customer’s potential satisfaction requires careful planning along with a regimented approach to customer experience management. This calls for an extensive application of analytics to pull data from disparate sources in order to deliver a comprehensive CEM solution. Something that Subex’s Revenue Operations Center (ROC) is adept at. The ROC provides the ability to correlate cross domain information and extract additional value from near realtime operational data. Using the ROC, service providers can • Use Fuzzy Logic to correlate across domains with data challenges •Analyze and report on information correlated from many domains • Define analytic classifiers to group customers based on behavior • Predict future events to devise more cost effective ways of managing pending events • Set thresholds on cross domain data combinations (eg. Margin) • Initiate workflow based on KPIs placed at any level above With its powerful analytics, easy sliceand-dice features, advanced reporting 72 INSIGHTS RESEARCH per contact of $6.00, the call center cost burden for a single product exceeds $20 million annually. Using customer and service data already collected as part of an advanced revenue assurance practice, and combining it with customer behavior and contact history, the ROC develops propensity models to predict when a customer exhibits behavior signaling a problem. The propensity model can determine how likely a customer is to call the call center, and also the time frame in which the customer is likely to contact. Not only this, the ROC can also capabilities with superior management and operational dashboards, and efficient case management tools, the ROC lends itself ideally to CEM. ROC applications that enable a positive customer experience Propensity Analysis Propensity to Call Consider a Communications Service Provider (CSP) that is experiencing a high volume of expensive inbound calls to its call center. Using an average cost Trending and Forecasting Subscriber growth Subscriber revenue Subscriber costs (content, device) Subscriber margin Advanced Analytics Slice and dice By geography By subscriber type By product/package What-if (promotions, package changes , pricing changes) Content overpayment associated with fraud, bad debt, seasonal suspends, promotions Per Subscriber Revenue Per Subscriber Content Costs Cost Revenue 3rd party OSS/BSS products, Mediation Systems ROC Cost Management ROC Revenue Assurance Assets 3rd Party Invoice ROC Partner Settlement ROC Asset Discovery Per Subscriber Risk / Bad Debt Subscriber ROC Fraud Management Subscriber ERP, CRM, Churn Management, BI etc. ROC Credit Risk Management Rating ROC Route Optimization Figure 1: Subex ROC Solution Proactively ensure high margin customers are content with service provider Propensity Analysis User: Customer Service Immediately determine how to best manage upset customers Positive Customer Experience Margin Management User: Business Executives with P&L responsibilities, Economic Sponsors Ensure customers are getting the right bundles based on actual usage; while maximizing margin New Product Introduction Analysis User: Marketing, Product Management Determine whether new products will be successful and improve overall customer experience Figure 2: ROC applications that enable a positive customer experience www.tmforum.org enable service providers to act on this information. By segmenting the pending contacts and prioritizing them based on the time frame in which the customer is predicted to contact and distributing the investigation and corrective action across offline resources, the CSP can now proactively initiate an outbound contact with a more favorable cost structure, informing the subscriber an issue has been noticed and is being investigated. Offline resources are used to make corrective action, sometimes in mass, if a single root cause is the core issue driver. A final outbound and cost effective communication to the customer informs them of resolution. Proactive communication and action has been found to be a key driver in customer satisfaction. Propensity to Churn All CSPs view the prevention of churn as an opportunity to avoid lost revenue. For quite some time using a ‘save desk’ to quickly evaluate the termination request and offer the customer incentives to stay was viewed as a ‘one size fits all’ approach and resulted in CSP’s limited retention budget being used on low value ‘deal hunters’. Customers requesting termination were being treated based on length of stay and product mix only. However, our experience shows that it is much more difficult to retain a customer once the decision has been made to terminate services. Proactive and qualified outreach is proven to be more effective in retaining customers. Using advanced analytics techniques to analyze data collected from customer touch points and quality of service metrics, the ROC detects patterns that predict churn. But predicting churn alone is not a comprehensive solution. “IF” one should treat and “HOW” one should treat the customer still remain unanswered questions. Combining propensity to churn with www.tmforum.org key metrics such as Customer Lifetime Value (CLV), the ROC enables informed decisions regarding “WHERE” the CSP should concentrate proactive retention efforts. To do this, the ROC uses classifiers and the developed knowledge base to categorize customers based on service utilization behavior, and recommends the most effective treatment options based on the next best activity; and in certain scenarios, even automating the outreach to the customer. Margin Management Imagine a service provider offering IP based television service to its customers, experiencing a decline in margin, despite a steady growth in its customer base. ‘Broadcast’ studio contract terms vary widely due to variables such as channels, market area, tiers, bands, promotional periods, etc. Relying on an outdated traditional telecom billing platform, the service provider performs all rating on aggregated data, completely obscuring detailed analysis on the relationship between cost and revenue. An aggregate profit margin calculation is indicative at best, but in reality it only contributes to the confusion. The ROC corrects this problem by calculating costs at the most granular level possible. Next, it combines actual costs with the bundled revenue amounts at a subscriber level from the customer billing system using near real-time operational data. In addition, it also provides all major cost and revenue impacting dimensions to the finance user for further slice-and-dice analysis. The ROC also provides visibility of the impact and results of broadly negotiated contract terms all the way down to the individual subscriber level, and calculates the first phase of Customer Lifetime Value (CLV). In addition, the ROC also provides all major cost and revenue impacting dimensions calculating margin by market, product, content provider, etc. New Product Introduction Analysis Consider a CSP that lacks reliable information on the delivery and financial performance of newly launched products. This lack of information creates a situation where the service provider is ‘shooting from the hip’, investing in marketing and / or sales training in attempts to address observed symptoms such as service delivery delays or poor uptake. In any new product launch it is important to track progress against targets and overall health of the product. This entails collecting data across OSS/ BSS systems, along with the application of advanced analytics to construct an endto-end picture of customer interaction, in a bid to make informed business decisions. The ROC collects real-time quote-tocash data, compares these metrics to target service level agreements, and trends these KPIs over time to provide the service provider complete visibility into the performance of service delivery functions and quickly isolate problem areas requiring attention. It also tracks financial performance metrics such as ARPU, AMPU, acquisition costs, fixed and variable costs that contribute to real-time monitoring of product performance and also provide the necessary elements to track progress against financial targets. Employing the ROC’s “What if” modeling capability, the service provider can now project the impact of additional investments focused towards marketing or training, and how those investments would affect profitability in the short, medium and long term. In summary, personalizing customer experience requires customer data from multiple sources, and there’s no dearth of it in any service provider environment. What is required is advanced analysis of that data and the intelligence to make it actionable - most effectively powered by Subex Revenue Operations Center (ROC). INSIGHTS RESEARCH 73 SPONSORED FEATURE Monetizing Service Assurance Monitoring Data Leverage data already being collected for service assurance to achieve strategic power decision-making Service assurance monitoring has long been considered an operational task. When a failure occurs, service providers must quickly isolate and resolve the issue. ROI is typically measured in terms of improvements in operational efficiency and the amount of revenue saved from faster detection and repair. Forward-thinking organizations are revising their view. Why not use this wealth of information to better understand customers and achieve strategic power decision making? Why not find new ways to increase revenue, reduce churn, or exploit trends? Instead of simply reacting to issues, why not proactively prevent bottlenecks and measure the quality of service before it impacts the customer? How do you turn mountains of monitoring data into the precise information necessary for improving decision support? The answer is Service Assurance Analytics (SAA). analysis of the multiple protocols for the network as a whole. The Power of Service Assurance Analytics SAA is a multi-dimensional approach to analyzing the rich data set obtained from network monitoring systems. It not only helps Operations assure a great customer experience, but it also provides the company as a whole with strategic information for decision support. To achieve strategic decision making, service providers need a robust, unified service assurance analytics architecture capable of providing an in-depth, 360° view of the network as a whole. Unfortunately, many organizations have isolated solutions in different departments which only monitor one piece of the network, application or service. It is understandable. Each department has its own concerns and, until recently, no one solution was robust enough to provide in-depth Understanding Customer Behavior In today’s complex world, service providers cannot simply view customer behavior in terms of minutes called. They need a true understanding of the extent to which new services launched are being utilized. They need to know how new third party applications impact network usage. Only an in-depth understanding of network usage, by customer, will illuminate options for strategically maximizing revenue and controlling costs. A comprehensive SAA solution will enable service providers to analyze customer behavior, comprehend the user experience, track usage, spot patterns and assess access to different application servers. Additionally, it will track the impact of recommended changes such as price reductions, new marketing campaigns, or network reconfigurations. 74 INSIGHTS RESEARCH A true service assurance analytics solution: • Spans traditional and next generation technologies in a single architecture •Tracks all KPIs across all dimensions (customer, geography, service, protocol, etc…) • Offers powerful slice and dice capabilities to drill into any network element • Meets operational requirements for department-level service assurance • Fully correlates all data points to reveal important customer, area and usage trends Reaping the Benefits of Service Assurance Analytics SAA solutions offer many ways to help service providers compete more effectively in today’s evolving markets. More importantly, service providers will be able to predict at what point service growth will affect service quality and demand subsequent infrastructure investment. Using Quality to Strengthen Brand Value Every service provider could use another competitive differentiator. As we have seen in many high-profile advertising campaigns, service quality can definitely be a valuable one. However, you must have measureable metrics and the ability to interpret and display them. For example, a service provider who can prove continued excellence in service quality with a weekly, monthly, quarterly and yearly track record has a better foundation for winning business and increasing revenue. Additionally, a service provider could use SAA and the resulting information as important content on a customer portal. Providing access to service quality information can be a direct benefit to end customers to help them optimize and troubleshoot their own network infrastructure. It could be a value-add to generate revenue or offered as a pro-bono capability to enhance brand value and boost customer satisfaction. Churn Reduction It’s a well established fact that acquiring a new customer is far more expensive than retaining an existing one. The first challenge with any effective retention strategy is to understand why your customers leave. The two main reasons usually cited are poor service quality or a competitor offering the same service at a lower cost. SAA is an invaluable tool for identifying customers with the highest likelihood of switching carriers due to poor service quality. With SAA predictive modeling, a rule-based engine can be www.tmforum.org set to look for customers experiencing multiple quality issues. Additionally, customers who report issues to customer care are more likely to switch if the issue does not get resolved. Customers identified through SAA as high risk for churn can be proactively contacted by customer care with reassurance that their problems are being fixed. Of course, SAA will also alert the operations staff to the service issue and the network elements causing it. SLA Verification Service verification is an important element of business today. Interoperability testing is needed before working with interconnecting networks and large customers are increasingly requiring SLAs. With SAA, it is possible to set baselines for SLA metrics and very quickly determine if there were any service turn-up problems. Using SAA, a service provider can routinely verify KPIs to answer two essential financial questions: •Are obligations to customers being met (not incurring penalties)? •Are interconnected partners meeting their obligations (ensuring revenue or identifying potential areas of cost)? Furthermore, accurate SLA verification means a service provider can avoid playing the “blame” game when it comes to potential network problems. Having clear, definitive and shareable information on network and service behavior enables network peers to collaborate in problem resolution, making them true partners instead of simply an interconnection point or worse, an enemy. Conclusion Today’s SAA solutions not only provide operations with the data it needs to ensure high service quality, but also offer key insight into the company as a whole. By investing in an SAA solution that tracks the right information and provides powerful tools to sort through it, a service provider can easily turn mountains of monitoring data into decision-making intelligence. These are a few examples of how to increase revenue, reduce customer churn and exploit trends. Once in your hands, you will find endless ways to monetize your SAA solution. Assuring a high quality customer experience in converged IP networks www.empirix.com www.tmforum.org INSIGHTS RESEARCH 75 SPONSORED FEATURE CEM is here, what’s next? Customer Experience Analytics • According to our research, operators lose from 5% to 10% of revenues due to different problems within the network, such as configuration, sw/hw, capacity and user errors. • There is too much data in too many silos to be analysed manually. • By deploying latest analytics tools, operators are able to get a holistic view of the customer experience, and isolate and react to problems causing losses. • Customer Experience Analytics (CEA) represents a move toward a more imaginative and sophisticated Figure 1: Top-level view into discovered revenue losses. approach to customer experience management. From CEM to CEA Depending on who you ask, you may get a very different answer as to what ‘Customer Experience Management’ (CEM) actually means in the telecommunications business. Many times a very quality oriented approach is taken – it is about what kind of service you are providing to your customers. The holy grail to operators is a single centralised solution that would handle all possible aspects of CEM in real-time. Therefore, it is not very surprising that in many offerings today CEM is often referred as the central OSS / BSS element that sits in the middle of operations, and manages all communication channels, other processes and controls other OSS/ BSS systems and network elements. The phrase ”Let the customer be in charge” is often used. We also believe that customer comes first, but realise that having a centralised CEM system controlling all aspects of customer experience is simply not a reachable target. There are too many critical processes and elements already in place. Building a new master system would be too massive a monoblock to build, integrate and maintain. Operators and service providers will benefit from a distributed approach where elements of CEM functionality are divided to various OSS / BSS systems 76 INSIGHTS RESEARCH managing the individual silos, and the consolidated view into the ‘customer experience’ across different channels is formed via a central analytics component. The innovation behind this approach is that there is no need to replace any of the existing OSS / BSS systems, while the central analytics will provide substantial business benefits, such as new revenues and increased profitability, by comparing the information they produce. The big picture Let’s take a closer look at the set-up and concrete benefits of the distributed approach – Customer Experience Analytics. The set-up presented here is from a live customer installation, and although it does not contain all customer contact channels, it gives concrete examples of the benefits achieved through CEA approach. The main data sources for this set-up are: • Service Assurance tools aim to ensure and improve the quality of service and typically contain tools to execute corrective actions to network. In this context Service Assurance systems are used to find details of actual traffic events from the network. • Billing systems ensure that all usage is invoiced effectively. Many systems support also dynamic tariffing and are therefore able to change billing logic in real-time. Revenue Assurance (RA) systems are an extension of billing, designed to find missed revenue opportunities through CDR reconciliation and business process assessment. In this example, billing and RA systems are feeding invoicing data and discrepancies in billing process to CEA. • Customer data that contains information about customers and their interaction. In this example, Customer databases feed customer data, such as demographics and tariffing information to CEA. �������� �������������������� ��������� �������������� ��������� ������� ��������� �������������� ������������� ��������������� �������� ���� ������������ ������������������ Figure 2: The interfaces and types of analysed data of the example set-up. www.tmforum.org One important aspect is the integration process. The demand for real-time management capability makes the integration of CEM tools a very challenging task. However, in our experience the CEA component does not have to be real-time. The best results can be achieved when CEA component takes care of the logic and task prioritisation, and the silo-based CEM systems take care of issues demanding immediate actions. Near real-time architecture makes the integration process much easier and faster. With appropriate tools and processes, such integrations can be implemented in just a few weeks. The Benefits There are numerous benefits that result from Customer Experience Analytics. Presented here are just a few: Prioritisation of Business Decisions: As discussed earlier, service assurance systems are mostly concerned with real-time quality management. The challenge is that there are numerous simultaneous incidents ongoing in the network, and the network operations team does not have the information to identify which of them has the largest revenue impact. CEA reponds to the challenge by combining traffic and revenue information, and produces priority lists that sort the most important locations, services and customers. With the intelligence, operators are also able to proactively monitor the experience of their corporate customers and keep up with the SLAs. Additional revenue can be found by looking at the failed service delivery attempts and, according to our research, it can be increased by 2%. This requires a combination of unsuccessful delivery attempts and pricing information. CEA www.tmforum.org Figure 3: Experience and revenue trends for dynamically detected micro-segment of high-profit customers. tools are capable of finding this type of information and feeding it back to the service assurance tools to be sorted out. Improved correction accuracy through Revenue Assurance systems: According to our studies, over 20% of failed service access attempts are caused by problems in billing authorisation or service activation. Many of them could be fixed by using Revenue Assurance systems, which are tightly integrated with billing process and contain tools to detect root causes. CEA contributes to the use case by identifying such events and prioritizing them according to business priorities. Management of convergent offering: Management systems of different technologies are easily integrated to CEA, which makes it an ideal tool for managing convergent portfolio. For example, with CEA tool operator’s business manager and sales & marketing can see how customers are consuming the services across the portfolio and make adjustments in tariffing to optimise the profitability. In real customer cases it was also noticed that the number of information requests to the accounting team dropped by 95% after the introduction of the CEA tool, which turns out to be a substantial annual cost saving. Business process management and understanding profitability: Due to its multi-silo nature, CEA brings visibility into the whole business process. It combines service usage with actual billing and tariff plans, and is therefore often used to analyse the profitability of individual customers. The incidents involving the most profitable customers can be prioritised in CEA and managed real-time in silo-based CEM systems. INSIGHTS RESEARCH 77 SPONSORED FEATURE Putting the Actual Customer Experience Back into Customer Experience Analytics The battle for the customer has driven providers to create an arsenal of customer analytic capabilities, including predictive and behavioral modeling, value scoring, net promoter score (NPS) ratings, and customer reporting. Each in their own way tries to understand or predict how customers experience their services and make decisions. The focus on customer experience management highlights the simple notion that the customers’ actual experience is an important factor in how customers feel about their provider, whether they may churn, or whether they will upgrade to new devices and services, or whether they will go “all-in” and become a Triple or Quad play customer. The notion that the actual experience matters points to a gap in the analytic arsenal. The current analytic capabilities are good and useful, but they miss one important ingredient - the ability to drill down to each customer’s individual, actual experience at every measurable touch point to create an analytic that truly reflects experience. Customers “experience” a set of interactions and outcomes from a highly complex, end-to-end processes ranging from marketing to provisioning to billing and care. Interactions and outcomes include receiving marketing, receiving and paying bills, calling to complain or request help, among others. Each of these interactions represents experiences that are positive, neutral, or negative – and these experiences accumulate to shape the customers’ views and actions. From the provider’s perspective, managing a highly complex and conditional mega-process, from marketing-to-care, is a daily grind in which they seek to optimize and drive accuracy in service delivery, billing, and customer management operations. Customers only care that their provider offers and delivers a set of services that are there when they want them, bills 78 INSIGHTS RESEARCH them accurately, and resolves any issues rapidly or with due financial compensation if those expectations are not met. When customer expectations are not met, customer cost and risk increases through call loading to the call center, churn, or the reduced ability to upsell or cross-sell across products. In some cases, such as bill shock, billing “surprises” create extraordinary risk – even if the bill is accurate. Customer expectations and experiences “live” in each individual interaction across this marketing-to-care process. How do you know what those experiences are? Or where negative experiences occur? Or where risk becomes sufficiently high that, unless addressed, will impact the business? These questions may indicate that a more process-centric customer experience analytic is needed. This approach is useful when it leverages the existing data and analytic infrastructure; meaning you do not have to build an entirely new infrastructure. A process-centric approach would enable you to analyze the actual customer experience as they “flow” across marketing, order management, provisioning, billing, and care. To build a process-centric customer analytic, four inter-related capabilities are needed: 1.Data analytics: The ability to acquire and correlate the data across the different systems that underpin the marketing-to-care process 2.Process Discovery: The ability to capture and understand the business rules within and across each sub-process that govern the overall process and often determine the experiences and outcomes that the customer experiences 3.Root cause analytics: The ability to identify detailed causal issues that you can systematically detect and address to minimize risk 4.Business collaboration: The ability to perform an interactive, collaborative discovery-to-analytic process among business SME’s and analysts, avoiding the need of a waterfall-based requirementsto-development process in an area where the requirements and underlying risks may not be well understood. Data Analytics At the core of a process-oriented customer experience analytic is the data needed to conduct a detailed and robust analytics. Let’s start with three important realities: 1.Providers govern an immense amount of complex and fluid data that is stored and managed in a set of systems and data warehouses that underpin the order-tocash process 2.Data complexity may be further complicated by post-merger realities in which parallel systems address different customer or market segments 3.“Systems of record”, such as complaint data, may have substantial integrity issues that complicate more simple, singlesource analytics. For a tier 1 Quad play provider, we acquired and correlated data from more than 15 systems to fully model the trouble management process and identify the key results and root causes that were both driving up costs and creating untenable customer risk. www.tmforum.org Two approaches are viable: a data warehouse approach where all relevant data must be centralized in a warehouse; or a data federation approach where the analytic can pull from, correlate, and synchronize data from the operational systems, to include smaller warehouses to store results or other “reduced” data. This choice can dictate the overall program’s financial merits as the large warehouse approach can be costly – and given the unclear requirements at onset – can struggle to develop the right queries to produce highly valuable results. The federated approach gives providers the greatest speed and flexibility, but requires a very robust analytic to successfully correlate disparate data to re-create and analyze the customer’s experience as they travel across marketing-to-care. Process Analytics In order for a process-oriented customer experience analytic to measure the accuracy and strength of the marketingto-care process, the analytic needs to capture and analyze the business rules that govern the process. This includes: 1.Service delivery rules and workflow that governs eligibility, timing, and success of each step of the process from order management to provisioning to care 2.Billing rules that dictate single service and cross-discounted rates, including conditional rules in play if customers are part of a marketing program 3.Customer rules that govern eligibility, signal high-value or low-value customers, or indicate the extent of transactions (e.g. number of subsequent or one-time complaints). For a tier 1 cable provider, we audit each order and provide routine, rules-based auto-correction so that order errors do not impact activation or cause billing errors. www.tmforum.org This is not an easy exercise as these rules can be hidden or opaque, or only understood by the business SME. Process discovery is a critical step to analyses that are factual and drill down to individual experience. Root Cause Analytics “What” is happening can be revealed by aggregated reporting on different customer segments and progress to customer KPIs, or it can be revealed by the volume and nature of calls to the call center and web interactions. “Why” it is happening and what common causes exist that enable efficient and productive improvement is another matter. Without root cause analytics, the provider can know something is wrong, but may not be able to isolate on what to fix – or as importantly – determine which root causes are creating the greatest risk and thus are the most important to attack. C 2010 Martin Dawes Analytics Within root cause analytics, pattern analysis, such as dimensional analyses, can be used to rapidly understand outliers that represent areas of acute risk, then re-create the process to identify the specific cause. Business Collaboration For most providers, a process-oriented customer experience analytic represents a new type of analytic – more akin to revenue assurance from a process perspective than traditional customer analytics. With that in mind, providers need an agile, adaptive methodology in which the business SMEs interactively discover, learn, and analyze - adapting the analyses in real-time as risks are uncovered, common root causes identified, and a set of optimized analytics are produced. This approach reduces the analytic development time frame from 12+ months to less than 3 months, ensures an active, learning, collaborative environment for business SMEs across business functions, and produces the greatest ROI potential – meaning, substantially less time and cost with greater value. For a tier 1 Quad play provider, we identified design defects in the order-toprovision workflow in less than 1 month and put in place a working control on the area of greatest risk in 3 months. Building the Case Winning the customer battle is 1-617-345-5422 Contact Us paramount. It is the major conduit to improving ARPU and lifetime value performance, minimizing churn, and reducing the cost of revenue. Analyzing and making targeted improvements to your operations that directly impact the actual customers’ experience is a business lever that has generally lagged in the market. This is because investments - and associated gains – were prioritized to BI and predictiveoriented analytics. But with some of those gains already in place, the crucial next step for providers is to execute a process-oriented approach that builds on your existing analytic infrastructure, can provide a factual and detailed understanding of the actual customers’ experience – the experience that drives impressions, decisions, and ultimately, customer value. INSIGHTS RESEARCH Privacy 79 SPONSORED FEATURE Capitalize on advantages of convergent real-time solution Reduce revenue leakage to less than 0.005% Mobile network operators around the world are seeking for systems with real-time convergent capabilities, going far beyond those of traditional billing systems. Multi-node real-time rating sets the benchmark for profitable customer-centric marketing management. Rating, charging and billing for all services, customer segments and payment methods must be handled within one unified rating and billing environment to meet operators’ needs. Managing all activities within the real-time convergent billing system enables a centralized subscriber view. This new view leads to better and more personalized service offerings, higher customer retention and optimized revenue collection. Operators relying on Orga Systems’ fully convergent charging and billing platform can strengthen their leading market position. Offering next generation services on a unified platform streamlines operations for operators’ successful, multi-service growth strategy. Recently, one of Europe’s leading communication service providers has deployed Orga Systems’ real-time charging and billing platform OPSC® Gold. Fully convergent rating and charging consolidates the CSP’s billing infrastructure and enables the first real convergent family offer. Reducing revenue leakage to almost “zero” has unlocked millions of additional revenue. OPSC® Gold enables operators to successfully launch new, nextgeneration services with a very aggressive time to market. This helps operators to clearly differentiate from competitors. The launch of OPSC® Gold enables a market leading European CSP to capitalize on the additional advantages of Orga Systems’ convergent real-time technology. Revenue leakage reduced from about 7% to less than 0.005% in the high ARPU consumer postpaid segment. 80 INSIGHTS RESEARCH The Need Being the market leader in a highly competitive market made an innovative yet cost-effective business strategy essential to the European operator which has deployed OPSC® Gold recently. New offerings, tailored to the target customer segments, were in focus to win new customers. Flexible service options and an increased transparency in the area of tariffs and service consumption were aimed at targeting a “new” customer experience. In addition, consolidation within the rating and billing infrastructure needed to provide higher efficiency and to bring down the overall TCO. In general, performance and capability limitations as well as the need to prepare for the next-generation networks and services force a strategic decision for the future. In view of the serious danger of losing revenue and generating bad user experience, operators require a short time solution, securing a long term and convergent roadmap in addition. The only answer to this is one single real-time system for pre- and postpaid customers with a unified rating and billing environment for all services to assure future ability to differentiate from the competition via tailored tariffs, innovative service bundles and campaigns. www.tmforum.org The Challenge The targets in this strategically important European project meant transforming the legacy billing infrastructure into a consolidated and future-proof, real-time architecture. To be ready for advanced services in next-generation networks, the project aimed at enhancement of customer experience though by-passing limitations in the existing rating and billing systems and implementation of new convergent service options and bundles as well as services. Minimize revenue leakage by improving the rating performance, efficiency and accuracy for postpaid subscribers and consolidating the rating and charging environment for pre- and postpaid subscribers and cost reduction had to be achieved. Implementing a fully convergent real-time rating and billing platform within a customer’s existing system infrastructure effects the most sensible environment that is in control of the operators’ revenue stream. This requires a detailed planned and phased approach to guarantee uninterrupted network operation. www.tmforum.org The Solution Matching all requirements for real-time performance, convergence support and market expertise makes Orga Systems and OPSC® Gold the number one choice. The deployment of OPSC® Gold enables real-time interaction with all postpaid subscribers that use data service bundles. With instant notifications, a new and compelling customer experience is delivered to the subscribers. To focus on new and profitable customer segments, the first true convergent offer in the market addresses the family segment. Using the concept of shared balances in OPSC® Gold, free minutes and SMS bundles are available to any family member. This innovative offering successfully increases usage and attracts new subscribers. Migrating more than a thousand postpaid tariffs to this new rating platform in less than 6 months also showed immediate results. Wrong bills, customer refunds and calls to the customer-care centers were reduced drastically. In the following months, revenue loss in the postpaid segment decreased from about 7% to less than 0.005%, generating savings of millions of euros each month. With the deployment of OPSC® Gold, a positive return on investment was achieved in months rather than in years. The implementation of Orga Systems’ real-time billing system OPSC® Gold successfully ends up with managing all subscribers in one single system. Migrating the whole customer base and all related tariffs enables operators to offer more sophisticated hybrid tariffs. Combining pre- and postpaid payment methods for new offerings, including promotions and loyalty campaigns can boost brands’ attractiveness and awareness. INSIGHTS RESEARCH 81 Our Sponsors Nokia Siemens Networks is a leading IBM has spent nearly $12 billion in the past SAS, is the global leader in business global enabler of telecommunications three years to deepen our capabilities in analytics software and services. With nearly services. With its focus on innovation the telecommunications industry through three decades of communications industry and sustainability, the company provides a combination of internal technology experience in over 200 global companies, a complete portfolio of mobile, fixed and developments and strategic acquisitions converged network technology, as well as such as Micromuse, Vallent, MRO, SolidDB, SAS helps CSPs to: nIntegrate the customer view to professional services including consultancy Cognos, and SPSS. IBM’s Service Provider understand the total customer experience. and systems integration, deployment, Delivery Environment is a telecommunications nCreate maintenance and managed services. It is industry framework that can be used as a models based on customer insights. one of the largest telecommunications blueprint to help accelerate creation and nMeasure hardware, software and professional delivery of new services, expand the partner products, and services. services companies in the world. Operating ecosystem, and integrate management nOptimize in 150 countries, its headquarters are in of services with business processes. Our factor constraints like policies/budgets. Espoo, Finland. solutions, selected by over 1,000 providers and nPreempt 20 of the top 20, include software, hardware, efficiencies by analyzing QoS, network services and research across OSS, BSS, and IT performance and service costs. analytics and optimization, service delivery, and device/asset management domains. SAS gives network operators around the world THE POWER TO KNOW®. www.ibm.com/telecom www.sas.com www.nokiasiemensnetworks.com more targeted and granular profitability of customers, campaigns to objectives and customer issues and improve Founded in 1973, Compuware provides Arantech’s CEM solutions provide mobile SAP for Telecommunications is a market- software, experts and best practices to operators with a unique customer insight, a leading solution that supports end-to-end ensure applications work well and deliver rich experience discovery and enables them enterprise business processes for wireline, business value. Compuware optimizes end- to take proactive management action on wireless, cable, broadband, satellite, and to-end application performance for leading real time experience events. All solutions other multiservice operators. With 81% of businesses around the world, including 46 deliver a rapid and strong ROI by identifying the top 500 telecommunications service of the top 50 Fortune 500 companies and 12 customer-centric issues (‘the experience providers as a customer base and with of the top 20 most-visited U.S. web sites. gap’) in real time and enable behavioural proven success stories, SAP provides a In telecommunications, Compuware segmentation of a customer base which compelling solution for your business. combines end-user experience monitoring today is not possible through existing With SAP’s world class business process and business service management with Business and Operational Support Systems platform, you can quickly adapt to market real-time subscriber intelligence capabilities (B/OSS). Arantech has 39 customers demands and embrace new business to deliver end-to-end visibility into the including mobile operators from four out of models in a fast changing convergent customer data experience. This in-depth the six largest mobile operator groups in the landscape. visibility and fault isolation allows operators world. to deliver superior quality of service to their customers. For more information, visit For more information visit www.sap.com/industries/telecom/ www.arantech.com index.epx. www.compuware.com/mobile 82 INSIGHTS RESEARCH www.tmforum.org ment World in Nice, France. Convergys Smart Revenue Solutions Subex is a leading global provider of Empirix is the leading provider of service Convergys has 25 years’ experience Operations and Business Support Systems quality assurance solutions for new IP providing Smart Revenue Solutions to the (OSS/BSS) that empowers communications communications. Since 1992, Empirix has telecoms, cable, satellite, broadband, and service providers to achieve competitive led the market in innovation and expertise utilities markets. With its convergent billing advantage through Business Optimization for IP testing and application performance and customer care solutions, Convergys’ and Service Agility. management. Its widely acclaimed future-proof solutions enable clients to 3/20/2010 2:06:29 PM Subex offers a range of OSS/BSS solutions Hammer(tm) Test Engine(tm), with patented offer personalised, innovative services and and managed services that have been trusted technology is the acknowledged global delivery, build customer loyalty, lower costs, by over 200 service providers through 300+ standard for validating the quality of IP and grow revenues. implementations across 70 countries. Convergys is a global leader in Its product portfolio powers the Revenue networks, systems and applications. The world’s largest service providers depend on relationship management enabling Operations Center (ROC), a concept it Empirix’s solutions to maintain the quality leading companies in over 70 countries to pioneered and its solutions enable new of the user experience for business-critical deliver exceptional customer experience. service creation, subscriber-centric fulfillment, voice, data, video and mobile services. With Convergys is globally trusted and proven provisioning automation, revenue assurance, Empirix, customers can increase revenues, in the market, reflected by the fact that its cost management, data integrity management, reduce customer churn and cut support top 40 telecoms clients have been with fraud management and partner settlement. costs. Convergys for more than 25 years. To know more about Subex, please visit For further information, please visit www.convergys.com www.subexworld.com www.empirix.com. About Aito Technologies Oy MDA is a global process analytic company As the pioneer of GSM billing, Orga Systems Founded in 2006, Aito Technologies Oy that enables our customers to maximize has gained highly qualified expertise in real- is a developer of an innovative Customer cash from and optimize business operations; time charging and billing. Experience Analytics (CEA) product suite notably the complex and critical order- for network operators and digital service to-cash process. Through our Lavastorm based solutions for customer billing and providers. As the brainchild of a group Analytic Platform and associated Adaptive administration in mobile telecommunication of telecom experts, Aito brings a unique Modeling capability, we deliver powerful services. It sets important milestones for approach to the market. solutions, such as revenue assurance, the industry regularly to further expand its fraud management, customer experience leading position. Aito software, which effectively combines Orga Systems focuses on real-time customer usage, experience and business analytics, service delivery analytics, trade & information, simplifies the understanding settlement analytics, migration assurance, InCore is currently the fastest data technology of the customer experience environment. compliance and risk analytic, and dealer worldwide with regards to access speed. It provides key business management commission analytics. We deliver these Mobile operators need future-proof billing stakeholders with the richest end-to-end view solutions in the communications, media, systems which offer clear service and cost of their customers, in an easy-to-use form, energy, and utility markets, helping our benefits. within minutes. Aito is used to manage the customers optimize current operations and experience and behaviour of tens of millions de-risk the transition to new products and platform OPSC Gold guarantees their of customers around the world. new business models. profitable future growth. Visit: www.aitotechnologies.com www.mda-data.com www.orga-systems.com www.tmforum.org Orga Systems’ high-performance database, The fully convergent real-time billing INSIGHTS RESEARCH 83 EVERYTHING YOU NEED TO SUCCEED IN THE WORLD OF DIGITAL SERVICES Benchmarking Frameworx Standards Best Practices Thought Leadership Conferences Webinars Revenue Management Collaboration Community Catalyst Awards Training Certification Research Publications ENABLING THE DIGITAL SERVICES REVOLUTION www.tmforum.org
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