ShusenTang/Dive-into-DL-PyTorch
本项目将《动手学深度学习》(Dive into Deep Learning)原书中的MXNet实现改为PyTorch实现。
This project offers a comprehensive learning resource for those eager to understand and implement deep learning concepts using PyTorch. It provides a structured textbook experience, combining theoretical explanations with runnable code examples. Anyone with basic math and Python programming knowledge who wants to learn deep learning with PyTorch from the ground up will find this useful.
19,342 stars. No commits in the last 6 months.
Use this if you are a student or practitioner looking to learn deep learning fundamentals and their practical application with PyTorch.
Not ideal if you are an experienced deep learning engineer looking for advanced research implementations or an MXNet-specific tutorial.
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Oct 14, 2021
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