Data Consumers Must Be Mechanics & Pilots: 5 Takeaways from the Guide
Christine Haskell, Ph.D.
Simplifying the Messy Middle of Data & Leadership | Advisor, Analyst & Speaker (ex-Microsoft, Starbucks, Amazon) | Author of ‘Driving Data’ Series | Transforming Organizations Through Data Culture & Governance
One of my first bosses, Chad Richeson, generously wrote the forward for #DrivingDataProjects. Using data to drive decisions was very new in the early 2000s, and we were often thinking up ways to help people understand the value of doing that. We used to brainstorm about how to make the concept of data more accessible to people. I miss those sessions, but I am glad he’s still just an email away.
One of those conversations made it into the About the Cover section of the book. As #dataconsumers, we need to be both mechanics and pilots. We need to know how to #datagather, #datacleanse, and #dataprep—as well as #presentdata, make #datadrivendecisions and #influencewithdata. That is a very broad set of skills.
To be effective data consumers, we need to be both mechanics and pilots. We need to know how to gather, cleanse, and prep our data—as well as present, influence and tell effective stories using data.
With tell-me features and #AITools, we are forgetting the importance of and losing #ambidexterityskills like #managingdetails and #thinkingstrategically. Additionally, the emphasis used to be on being able to talk to the box and not the people; now, we must reason with the box (and the people). Skills cultivating engaged stakeholders and executive sponsors weren’t emphasized as much but are now increasingly important. Those are radically different skills!
The emphasis used to be on being able to talk to the box and not the people; now we must reason with the box (and the people). Those are radically different skills.
Too often, we forget the fundamentals that lead to greatness. When I think back to who I learned the most from in the earliest days of Microsoft’s BI days, it comes down to two individuals: Chad Richeson and Greg Koehler . They deserve the lion’s share of credit for what Microsoft’s BI eventual efforts became. Before we had enough people to call a team and before we could prove a business case viable enough to attract a vice president to sponsor our efforts—all of that came after we had taken the risks and proven ourselves—they were mapping out the function of what eventually became the BICI team.
Greg’s early vision laid the blueprint for what became the data supply chain that?served the online consumer division. Greg enabled consistent?delivery of business data while also delivering consumer data by?making the transition from?ETL (extract, transform, load)?to?ELT (extract, load, transform).?The choice between ETL and ELT depends on several factors that are unique to each organization, including data schema requirements, transformation complexity, performance, and budget constraints, just to name a few--Greg was the one who navigated all that before anyone else was doing it.?
Early on, we recognized Cosmos (our centralized data repository) as the only way to store and process the vast amounts of data we were collecting.?The plan was presented to Satya in 2007 (then VP of Search Engineering), and he agreed to fund it -- $300M approved in one meeting! Satya saw the future even more clearly than we did. Eventually, we merged BI and CI into a single pipeline, such that CI powered BI. For the first time we could connect personalization to data science to executive reporting, and it unlocked arrays of new insights and even changed some business processes.?We had built a data supply chain the business could understand and rally around as something that would serve its business strategy. From there, the team, the VP support, and?the division momentum began to build momentum, support, and ongoing engagement.
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Being part of those early efforts launched my career in data management and an interest in data as a common language between disciplines that changes the social circuitry of organizations. The Guide catalogs many of the lessons I learned throughout my career from those early days of laying that initial data supply chain and performing many of the activities along its path toward predictive data. ?
Being part of those early efforts launched my career in data management and an interest in data as a common language between disciplines that changes the social circuitry of organizations.
5 Takeaways from #DrivingDataProjects:
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1 年Good read.
Principal Program Manager for Azure Data Sciences at Microsoft
1 年Thank you for the shout out and kind words Christine. I'm looking forward to the new book. It's already saved to my Amazon list.
Your observation that "You can’t run a data strategy from an IT backlog" is spot on, and accountability to success criteria is so important. We need to eat our own dog-food and be data-driven within our own data projects. Looking forward to reading this book!