The chapter explores the complexities of unsupervised learning, touching on historical models like the Boltzmann machine and discussing the challenge of optimizing multiple objectives. It highlights the concept of distribution matching as a method for unsupervised learning, discussing the relationship between compression and prediction. Lastly, it delves into recent insights from papers on compressing vision into a latent space and the importance of in-context learning.

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