Everywhere you go these days, you hear about deep learning’s impressive advancements. New deep learning libraries, tools, and products get announced on a regular basis, making the average data scientist feel like they’re missing out if they don’t hop on the deep learning bandwagon. However, as Kamil Bartocha put it in his post The Inconvenient Truth About Data Science, 95% of tasks do not require deep learning. This is obviously a made up number, but it’s probably an accurate representation of the everyday reality of many data scientists. This post discusses an often-overlooked area of study that is of much higher relevance to most data scientists than deep learning: causality.
Causality is everywhere
An understanding of cause and effect is something that is not unique to humans. For example, the many videos of cats knocking things off tables appear to exemplify experimentation by animals. If…
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