Lecture 13: Generative Models
Why Generative Models? 18 - Realistic samples for artwork, super-resolution, colorization, etc. - Generative models of time-series data can be used for simulation and planning (reinforcement learning applications!) - Training generative models can also enable inference of latent representations that can be useful as general features
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