@mdancho84: some guy consolidated over 400 curated resources on AI and ML then put it on GitHub. Here it is (for free):
Summary
A compilation of over 400 curated AI and machine learning resources has been posted on GitHub for free.
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Cached at: 07/03/26, 10:42 PM
some guy consolidated over 400 curated resources on AI and ML
then put it on GitHub.
Here it is (for free): https://t.co/0kGxG0YowU
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