Getting Machine Learning to Production
Machine learning is hard and there are a lot, a lot of moving pieces.
production machine-learning tutorial article

A fun proof-of-concept ML project to really explain all the things that need to happen for machine learning to work in the wild.

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I build and analyze data products for companies large and small using Python, machine learning, and Nutella. 🐍
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