This is code of book "Learn Deep Learning with PyTorch"

Overview

深度学习入门之PyTorch

Learn Deep Learning with PyTorch

非常感谢您能够购买此书,这个github repository包含有深度学习入门之PyTorch的实例代码。由于本人水平有限,在写此书的时候参考了一些网上的资料,在这里对他们表示敬意。由于深度学习的技术在飞速的发展,同时PyTorch也在不断更新,且本人在完成此书的时候也有诸多领域没有涉及,所以这个repository会不断更新作为购买次书的一个后续服务,希望我能够在您深度学习的入门道路上提供绵薄之力。

注意:由于PyTorch版本更迭,书中的代码可能会出现bug,所以一切代码以该github中的为主。

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配置环境

书中已经详细给出了如何基于Anaconda配置python环境,以及PyTorch的安装,如果你使用自己的电脑,并且有Nvidia的显卡,那么你可以愉快地进入深度学习的世界了,如果你没有Nvidia的显卡,那么我们需要一个云计算的平台来帮助我们学习深度学习之旅。如何配置aws计算平台

以下的课程目录和书中目录有出入,因为内容正在更新到第二版,第二版即将上线!!

课程目录

part1: 深度学习基础

part2: 深度学习的应用

一些别的资源

关于深度学习的一些公开课程以及学习资源,可以参考我的这个repository

可以关注我的知乎专栏博客,会经常分享一些深度学习的文章

关于PyTorch的资源

我的github repo pytorch-beginner

pytorch-tutorial

the-incredible-pytorch

practical-pytorch

PyTorchZeroToAll

Awesome-pytorch-list

Acknowledgement

本书的第二版内容其中一些部分参考了 mxnet gluon 的中文教程,通过MXNet/Gluon来动手学习深度学习

Gluon 是一个和 PyTorch 非常相似的框架,非常简单、易上手,推荐大家去学习一下,也安利一下 gluon 的中文课程,全中文授课,有视频,有代码练习,可以说是最全面的中文深度学习教程。

Owner
Xingyu Liao
Research Engineer
Xingyu Liao
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