Kullback-Leibler, Etc. – Part 3 of 3: The Annotated Resources List

I thought it would be (relatively) straightforward to wrap this up. Over the past several posts in this series, we’ve discussed the Kullback-Leibler (K-L) divergence and free energy. In particular, we’ve described free energy as the “universal solvent” for artificial intelligence and machine learning methods. This next (and last) post in this series was intended… Continue reading Kullback-Leibler, Etc. – Part 3 of 3: The Annotated Resources List

Kullback-Leibler, Etc. – Part 2.5 of 3: Black Diamonds

We need a “black diamond” rating system to mark the tutorials, YouTubes, and other resources that help us learn the AI fundamentals. Case in point: Last week, I added a blogpost by Damian Ejlli to the References list. It is “Three Statistical Physics Concepts and Methods Used in Machine Learning.” (You’ll see it again in… Continue reading Kullback-Leibler, Etc. – Part 2.5 of 3: Black Diamonds