Data is the lifeblood of modern companies and companies are creating more data than ever before. Hospitals now rely on electronic medical records to record and monitor interactions with patients, identify risk factors, and recommend treatments. Retailers utilize purchase data to recommend products, segment customers, and target promotions. Manufacturers leverage data to monitor product quality and proactively intervene before breakdowns occur. The list goes on. Data growth in the US averaged 31.9% annually from 2010-2018. According to Market Research from IDC, more data will be created this year and next than in the entire prior history of computers.
Data can be your competitive advantage; it can also be your blind spot.
Data growth is being driven by company needs and opportunities. As more economic activity migrates online, remote, and into mobile devices, data utilization is the most effective way your organization can understand and adapt to what is happening, both internally and externally.
This trend has been accelerated by the coronavirus pandemic. Global Workplace Analytics estimates that 25-30% of people will work from home multiple days per week after the pandemic ends. Prior to the pandemic, online sales accounted for only 6.3% of total grocery purchases. Now, nearly 40% of consumers say they plan to buy groceries online in the next 12 months. That seems like an underestimate. The time to capture value from data is now.
The CorrDyn Data Journey Map includes four Data Value Buckets where companies can identify ways to use their data more effectively:
Yet for all these opportunities to add value, most companies fail to capture meaningful value from their data. Our Journey Map includes three value drivers that determine a company’s capacity to capture value from their data:
In the sections that follow, I diagnose the challenges underlying each category of failure.
Once data is available, companies have another set of challenges to make that data useful.
Integrated + Synthesized + Timely = Actionable
Data integration involves combining the highest value marketing, sales, customer support, web, technology, operations, logistics, and HR data into a single source of truth for the enterprise. This might mean extracting information from on-premise databases, cloud infrastructure, and software-as-a-service applications. Regardless of the source, data from each location will have to be manipulated into a consistent format that enables insights to be aggregated from all the sources simultaneously. Your business outcomes dictate the nature of these transformations.
Data synthesis requires engagement with the data to generate insight. This could be from an executive, business intelligence (BI) analyst, data scientist, or anyone with business context who can interpret the data for a purpose. An executive might use Excel or PowerPoint, a BI Analyst might explore data using a data visualization tool like Tableau or Looker, and a data scientist might explore using Python and Jupyter Notebooks. Regardless, the goal is to extract insights from the data and present those insights in a way that clarifies action. Insights can be as simple as “call a customer who hasn’t logged in” or as complicated as “prioritize our leads using web traffic data and allocate them to different salespeople based on their behavior.”
Data timeliness means that insights gleaned from integration and synthesis are generated at the right place and right time for action to be taken. Backward-looking insights can be interesting, but are usually not as useful as seeing the current picture. The entire data pipeline needs to account for the speed with which information needs to be turned into action. Customers who haven’t logged in need to be called before they churn. Leads requiring allocation have to be scored as they come into the sales funnel.
If you have actionable data, you are most of the way there, but there is a critical element that even companies with analytics teams get wrong: data has to be credible or it will be ignored.
Data credibility consists of data that is:
If your company has available, actionable, and credible data, then you are already a top company on the CorrDyn Data Maturity Scale. The final and most critical step is to be able to consistently generate positive ROI from your data projects.
Data projects are hard to manage because they do not fit neatly into a software engineering, business project, or R&D framework that companies typically use to manage their investments. Poorly designed data projects can have negative ROI for four reasons:
Well-designed data projects have five drivers that ensure their success:
CorrDyn’s Five Drivers of Successful Data Projects are also the key success factors for all CorrDyn data science and data engineering engagements.
If your company is relatively early in its data journey, a partner like CorrDyn can help guide you on the fastest path to value. If you are relatively far along, a partner like CorrDyn can enable your organization to achieve value from your data without building an entire department to generate that value. Wherever you are along the Data Journey Map, CorrDyn can help you achieve your objectives by providing expertise as needed, without the overhead.
Your company’s data projects can be successful if you understand the roadmap and keep your eye out for the roadblocks. Be mindful of your company’s data journey. Your company’s future growth and profitability likely depend on its success.
Keep building.