Customer Relationship Management, as a concept, brings together a number of various systems from functions across the business (sales, marketing, operations, external, etc) that allow the enterprise to create, maintain, and grow positive and productive relationships with customers. We might think of it as being the glue that brings front office and back office together and allows the business to de-silo what would otherwise be proprietary information across the organization.
But what good are all these data points if they aren’t utilized effectively? It would be easy to fall victim to information overload if we tried to explore the data from a particular axis or angle. This is where classic data mining and online analytical processing (OLAP) come in. If we think of various systems of record as one-dimensional axes on a graph, bringing these together in a three-dimensional cube and taking a particular block within that cube to analyze would be much more efficient. Rather than starting with the data and searching for questions to answer that might involve those points (as is tempting to do at times), we are able to start with a specific business question and use OLAP to answer it.
For example, assume I am a cosmetics manufacturer and want to know how much of my product actually goes out the door to consumers after it is sold to a distributor. I want to use that information to adjust my marketing efforts and potentially re-evaluate my production line.I have the following data points available by way of my existing business intelligence environment:
Production line data
- Inventory balances in my warehouse
- Marketing campaign data
- Sales data from my company to the distributor
- Sales data from the distributor to the end consumer
Rather than starting from one or two of these data points and throwing things against the wall to see what might stick, I can use OLAP capabilities to find the different relationships between these points, eventually driving my answer. Understand here that answering the initial question is simply a matter of reading one data point (the last one in this case)—however, a strategic approach that addresses the customer relationship is the end goal.
One caveat here. OLAP may be considered a predecessor to currently-understood data mining, depending on which view of business intelligence you find appealing. Strictly speaking, traditional OLAP has been used for a number of years already for marketing, forecasting, and sales. Data mining capabilities at present far surpass what has been traditionally available in the OLAP sense.
Connolly, T. & Begg, C. (2015). Database Systems: A Practical Approach to Design, Implementation, and Management (6th ed.). London, UK: Pearson.