Bach, F. (2024). Learning theory from first principles. MIT press.
The Elegant Math Behind Machine Learning
Cohere For AI on X: "Our open-science community is proud to announce the launch of our new "ML Math" program 🎉 ML Math, led by @AhmadMustafaAn1 & Neel Goshal aims to bridge the gap between ML in practice & ML in theory by analyzing the core mathematical concepts on which ML models are built on. https://t.co/VnRVfLMaT7" / X
https://tinyurl.com/C4AICommunityApp
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