Machine Learning Street Talk (MLST) cover image

Future of Generative AI [David Foster]

Machine Learning Street Talk (MLST)

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Comparison of Observation Space and Latent Space in Reinforcement Learning

The difference between observation-based and latent diffusion models in reinforcement learning is that observation-based models focus on the exchange of information between the agent and the environment through rewards and actions, while latent diffusion models operate within the latent space. In active inference, the goal is to optimize the generative model, which is crucial for the agent's existence within the environment. Destroying the Markov blanket disrupts the agent's existence. The writer is excited about the overlap of these fields and Carl Fristen's endorsement of their book.

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