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During recent IBM analyst big data event, I learned about a new product, IBM Predictive Customer Intelligence. It extracts and processes customer-related data from multiple sources to analyze customer-related activities and has capabilities to predict customer behavior and actions. Predictive Customer Intelligence is built on IBM’s big data platform and supports extraction and integration of data from multiple sources, internal and external, and from structured and unstructured data. It can process data created by third-party products, such as text-based files of data created by converting speech to text. The product can capture and analyze customer interactions from multiple communication channels such as voice, email, text messages, chat and Web usage scripts and social media posts.

Predictive Customer Intelligence has four primary modules, for predictive modeling, reporting, real-time scoring and a real-time analytics data repository, which are connected by the IBM Integration Bus. These modules support a predefined process in which users build models from customer data stored in analytics real-time customer database and use them or predefined models to run real-time analysis against the customer data and produce scores, recommendations, reports and dashboards related to customer activities. The outputs can be delivered through a variety of channels such as outbound email, direct mail or text message. This can help contact center agents provide personalized and contextualized responses to customers’ questions. Other outputs can be used to produce targeted marketing campaigns or to respond to customer interactions through other communications channels.

vr_NGCE_Research_08_all_channels_for_customer_engagementMy benchmark research into next-generation customer analytics shows a need for such a product because companies have up to 21 potential sources of customer data. These include transactional business applications such as CRM and ERP, customer data warehouses, spreadsheets, call recordings and text-based files containing content from email, forms, letters, text messages, chat scripts, Web scripts and social media posts. All of these not only contain valuable customer information but also interaction data from which companies need to derive insights into customers’ feelings about products and services and other aspects of the business. The research shows companies have difficulty in extracting value from this data, partially because on average they use only six sources of customer data in their customer analytics. Interaction data is especially problematic because most of it is unstructured and requires tools that can automatically access and extract insights from them; few companies have such tools. This situation also is becoming more complex, as my benchmark research into next-generation customer engagement shows: Companies are supporting more channels of interaction and expect volumes of interactions to grow in every channel as our research shows up to 17 channels in play.

IBM Predictive Customer Intelligence has capabilities that can help companies meet these challenges. However, a close look reveals that it is not one but 10 individual products (not including three connectors) packaged together. Organizations therefore need to understand the cost and operational impact of managing and use these products.

At the big data analytics event, Frank Theisen (IBM VP of front-office transformation for Europe) summed up the information challenges companies face; they need to know:

  • What happened?
  • Why did it happen?
  • What can be learned?
  • What action should be taken?
  • What could happen in the future?

Ventana Research believes that big data analytics can answer these questions. vr_Customer_Analytics_03_key_benefits_of_customer_analyticsFor example, my benchmark into next-generation customer analytics shows that one-quarter (26%) of companies have deployed a dedicated customer analytics product and have found it has helped them improve the customer experience and their analysis of business performance. More generally my colleague Tony Cosentino wrote about three Ws that are key: What data you have, what information you want to derive from data, and what action should be taken as a result of insights gained from it. Once you can answer these questions you can decide which analytics product best fits your requirements.

IBM focuses intensively on its technology sometimes to the extent of obscuring the business applications of those systems. One prime example is that more and more IBM big data products are moving to the direction of IBM Watson and methods of cognitive computing. Basically Watson is a platform that can search very large volumes of information to deliver insights from the data by use of natural language, and it is smart in that it learns as it searches, so that future answers are more refined and targeted to the questions asked. Such capabilities are particularly useful for analyzing the very large volumes of customer interaction data companies accumulate; they help identify trends, hot issues and focused information to help personalize responses and put them in the context of an overall customer relationship.

Our next-generation customer analytics benchmark research shows usability is the top priority for selecting analytics software: 64 percent of companies said it is very important. To provide it vendors should support point-and-click access to information on mobile devices and visual ways of showing the results of analytics. One case study IBM used during the day illustrated this; the user collects a vast array of data, integrates it and delivers analysis in visual formats on Apple iPads. This is well-suited for assisting customer-related activities that happen in real time (such as phone calls) where users need instant access to up-to-date information in forms they can understand immediately.

Companies already have huge amounts of customer-related data, and if you factor in the increasing volume of electronic communications, social media and the coming Internet of Things, this need will grow more acute. IBM has a variety of analytic products and is developing more. The challenge is to figure out which IBM products can best process what data and produce the required information and insights to drive decisions and action. Predictive Customer Intelligence and IBM’s other big data analytics are worth considering in organizations’ efforts to improve understanding of customers and their experiences.

Regards,

Richard J. Snow

VP & Research Director

Our recently released research into next-generation customer analytics shows that the most participants (52%) use spreadsheets as a customer analytics tool. I recently wrote that while these popular tools are adequate for some tasks, they are not suitable for analyzing large volumes and many types of customer data. So I think it is appropriate that one in four (26%) participants have adopted a dedicated customer analytics tool and a further 29 percent are planning to invest in such a tool in the next 24 months.

There are good reasons to use a capable tool for this critical areavr_Customer_Analytics_08_time_spent_in_customer_analytics of analytics. The research shows that the biggest issue for companies in producing customer analysis is data; users spend most of their time preparing (47%) or reviewing (43%) the data before they can perform any analysis. If companies don’t take action to correct this, the situation is only going to get worse. In my various research I have identified 23 sources of customer data; they include transactional data in business applications such as CRM, ERP and knowledge management, call recordings, text-based interaction data such as letters, forms, text messages, chat and Web scripts, event data such as agent desktop clicks as they try to resolve interactions, and social media posts. So not only do users have very large volumes of data to deal with, but the data comes in many different formats, several of which are unstructured. To produce as complete an analysis as possible, companies need systems that can handle almost all of these sources of data, that can automate the process of extracting the data from them, and that can standardize the data to ensure it is of the highest quality and all data relating to a single customer can be integrated. I believe that making the right product choice for customer analytics depends first on what and how much data it can process.

That said, the research reveals some other factors that impact the choice of customer analytics including real-time (21%), advanced vr_Customer_Analytics_06_most_important_customer_analytics(19%), statistics (14%), predictive (12%) and visual (10%) as first ranked priorities. Many customer-related tasks require information that is as up-to-date as possible; for example, a contact center agent needs to know what a customer attempted to do before calling the contact center so the response can be put in the context of previous interactions as well as the customer’s profile. Product evaluations thus should look for systems that not only process all forms of data but that can collect the data in real time or near real time and produce the analysis likewise. Another factor is that in dealing with customers, it is increasingly important to have predictive capabilities. To keep up organizations must move from relying on historical analysis to predicting likely future action; for example, an unusually high volume of complaints might lead to customer defections, and real-time capabilities could, for example, indicate when a negative post on social media is likely because of what the customer is saying during a phone call. I suspect that the majority of users who rely on spreadsheets do not have high expectations about the way the results are presented. But I believe that as engaging with customers becomes more complex, users will need information presented in more visual ways that help them quickly see areas that need addressing or present the data in more useful forms, such as showing the customer’s location on a map to help find the nearest service engineer to deal with an emergency.

Ventana Research tracks six technologies that are changing the vr_Customer_Analytics_07_new_technologies_for_customer_analyticsways users access and consume technology that our research finds important beyond analytics itself: big data (60%), cloud computing (44%), collaboration 62%), mobility (38%) and social media (35%). My research into next-generation customer engagement shows that companies expect analytics to have the greatest impact on the way they engage with customers in the future; more recognize that without a complete view of customers it is hard to develop a focused customer service strategy, enhance customer-related process, provide personalized responses to interactions or understand how their company is performing from the customer’s perspective. Each of the other five next-generation technologies is also having a direct impact on customer analytics. By whatever definition you use, customer data is “big” – it comes in large volumes and in multiple forms, has to be processed in real time and requires predictive capabilities. Increasingly more of it resides in the cloud and must be integrated with on-premises data, and many companies are looking to cloud-based services for customer analytics. Because many business units engage with customers they should share a single set of customer reports and analysis so that all actions and decisions are based on the same information. To do this, more companies are looking at collaborative capabilities that allow users to share customer information and work together on actions such as resolving customer issues. In addition many employees need access to customer data while away from their desks; nearly two-fifths (38%) of participants in the customer analytics research said that mobile access to their customer analytics systems is important. And finally, there is no doubt many consumers use social media, and more are doing so all the time; many of these users are also employees, and they want their work systems to be socially enabled. Add to this that companies need to understand what their customers are “saying” about them on social media, so at the very least a customer analytics system should be able to processes social media data feeds.

One of the latest buzz phrases is the Internet of things, which will serve the connected customer on more devices than ever. People now engage with companies increasingly electronically, often using smart mobile devices – they are more connected and can do things much faster than ever before, including look elsewhere if they are not satisfied with a company. Knowing your customers therefore has never been so important. Ventana Research recommends that you evaluate the options now available in customer analytics tools to help improve customer service and the outcomes of customer engagement.

Regards,

Richard J. Snow

VP & Research Director

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