A few tips on how NOT to start with Machine Learning. I also present a better way on how to start learning it.
Every day there’s more and more educational content about Machine Learning. With such a high volume of new content, it’s easy to get confused. Many aspiring Data Scientists don’t know where or how to start learning. These three questions pop up regularly in my inbox: Should I start learning ML bottom-up by building strong foundations with Math and Statistics? Or top-down by doing practical exercises, like participating in Kaggle challenges? Should I pay for a course from an influencer that I follow? In this article, I give answers to the questions above and I also present a better way on how to start learning Machine Learning. Let’s start with a few How NOT to learn Machine Learning.
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