Understanding Causal Inference
( go to the article → https://blog.dominodatalab.com/understanding-causal-inference/ )
This article covers causal relationships and includes a chapter excerpt from the book Machine Learning in Production: Developing and Optimizing Data Science Workflows and Applications by Andrew Kelleher and Adam Kelleher. A complementary Domino project is available. Introduction As data science work is experimental and probabilistic in nature, data scientists are often faced with making […]
Oct. 3, 2019, 6:30 a.m.
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