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I know that I’ve hit the big (data) time when concepts that I developed start to appear as infographics. Today I am very proud to announce the launching of the demystified Big Data Business Model Maturity Index (BDBMMI) infographic! Through the usage of clear, simple language paired with practical examples that illustrate each stage of the big data maturity journey, the goal of this infographic is to demystify the BDBMMI – to make it easier for customers (and readers) to understand what the BDBMMI is, and how to use it to successfully leverage data and analytics to power their business models. Today you’ll learn more about Dave’s story and how he navigated through the stages of the Big Data Business Model Maturity Index and put big data to work for his organization. Before we get started – I’d like you to meet Dave. Dave is a manufacturing executive in the automobile industry. Dave pursued the opportunity to transform his business through more effective use of data and analytics. He saw the opportunities to apply data science to the data that his business had collected throughout the years, and to take actions to optimize the company’s key business processes, create new revenue opportunities and enter new markets. Besides that, Dave likes to eat burritos, drink chai lattes and to go for walks with his dog. Big Data Business Model Maturity IndexNot only does the BDBMMI provide a benchmark that compares an organization to others in the use of data and analytics, but equally important, the BDBMMI provides a roadmap to guide organizations to be more effective at exploiting data and analytics to optimize key business processes, uncover new monetization opportunities and create a more compelling, more prescriptive user experience. The Big Data Business Model Maturity Index is comprised of 5 stages, all of which Dave’s company has gone through:
Many organizations are stuck in the Business Monitoring stage. Organizations have struggled to leverage BI and data warehousing technologies to become more real-time, more predictive, more prescriptive and eventually more disruptive with their analytics. To move beyond the Business Monitoring stage, organizations need to exploit the “economic drivers” of big data analytics, to include:
After monitoring the business, Dave realized that he had lots of untapped data, both internally generated as well as data from partners and publicly available data. Dave reached the Business Insights phase when he used data and analytics to become aware of the following insights about a key demographic for his business:
In the course of the last two BDBMMI stages, Dave expected the overall demand for hybrid cars to continue to rise. He also identified the buyers for these cars consisted heavily of tech-savvy young people who constantly carried their smartphones around. This profitable niche certainly valued having a mobile device integration unit in their cars. With the goal of driving repeat purchases, increasing customer advocacy and improving the customer experience, Dave’s data science team built prescriptive models that came up with the following recommendation:
Dave leveraged the behavioral insights gathered about his current customers and their product usage patterns to introduce a new innovative car feature that enables LED dashboards to mirror the customers’ mobile devices through Bluetooth connectivity. Dave was able to leverage the insights about customer usage behaviors and car driving and performance patterns to create new monetization or revenue opportunities such as:
Supported by his customer, product and market insights, Dave embarked on a strategy to license the mirroring capability into new markets such as aviation, railroad and hospitality, supported by a SaaS business model. The result of Dave’s new mobile device integration business was an entire ecosystem built on top of his analytics-driven product development that enabled him to expand past auto manufacturing into new markets with new business models. Third-parties are now set to prosper with value-add services and accessories – firmly embedding Dave’s business into the models of his customers, partners and end users. Big Data Business Model Maturity Index RoadmapWhat clients need after they ascertain where they are and where they want to be on the BDBMMI, is a roadmap to help them advance from stage to stage. Figure 2 provides some recommendations as to what organizations can do to progress up the BDBMMI. The big data journey was great for Dave and his company. Applying the power of data science to the data gathered throughout Dave’s big data journey, Dave’s team was able to gather detailed insights into the behaviors, tendencies and interests of his customers, dealers and even performance behaviors and tendencies from the cars themselves. Dave was able to exploit these superior customer, dealer and product insights to:
The Big Data Business Model Maturity Index can be a critical tool for customers who are trying to figure out where and how they can exploit big data for business benefits. It challenges our customers around a very simple but powerful question: How effective is your organization at leveraging data and analytics to power your business models? Hopefully this infographic will help your organization to answer that all-important question. For more information about how we help our clients progress up the BDBMMI, check out the Big Data Vision Workshop and how it helps organizations to identify where and how to deploy big data analytics to power their business models. The post De-mystifying the Big Data Business Model Maturity Index appeared first on InFocus Blog | Dell EMC Services. |
