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by apohn
1301 days ago
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IMO the reason behind this is that a lot of "data science" driven decisions are short term decisions. So you can look at something on a PowerPoint, not really care if it's wrong unless you personally will get fired if it turns out to be wrong, and back out of it a quarter later when it turns out to be wrong. IME there's no shortage of justifications or pivoting when it comes to a decision you made a quarter ago. The consequences are relatively small, so the caring is only bravado, not really caring. When it comes to disastrous long term decisions, there's plenty of time to get input from multiple stakeholders. I always remember the armies of companies who went chasing after Hadoop because Big Data was going to transform something or the other. All the stakeholders were on board, from the CEO and CTO to IT and Engineering management. How much money and time got flushed down the toilet trying to implement and extract value from data with Hadoop. They only people who paid the consequences were the employees at Hadoop companies who thought their stock options would be worth something. |
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