awesome-very-deep-learning - 🔥A curated list of papers and code about very deep neural networks

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awesome-very-deep-learning is a curated list for papers and code about implementing and training very deep neural networks. Value Iteration Networks are very deep networks that have tied weights and perform approximate value iteration. They are used as an internal (model-based) planning module.

https://github.com/daviddao/awesome-very-deep-learning

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