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by coredog64
1105 days ago
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Story time: Worked at a large multinational, and 6-7 years ago they decided they had to ape into the whole “data science” gold rush. They spent millions of dollars on hardware, software, salaries, and consulting. After a year with not much to show for it, the VP for the silo starts to put out kudos for the team for break-even revenue impact. However, behind the scenes, the insight they were taking credit for was a common sense idea that had already been in the e-commerce team’s backlog. Nothing surprises me when a company says that they’ve run the numbers. |
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But... most businesses aren't that complex, and people can usually come up with really good common sense ideas for how to make improvements.
Data-science is often most effective when it serves less as a visionary idea-maker and more as translator that helps common-sense ideas become real (optimizing values, figuring out the best roll-out strategies, building forecasts).