PyTorch

Python 中的张量和动态神经网络,具有强大的 GPU 加速功能。(Tensors and Dynamic neural networks in Python with strong GPU acceleration.)

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PyTorch 是一个 Python 软件包,它提供了两个高级功能:

  • 具有强大 GPU 加速功能的张量计算(如 NumPy)
  • 基于 tape 的深度神经网络自动梯度系统

您可以重用您最喜欢的 Python 软件包,例如 NumPy、SciPy 和 Cython,以便在需要时扩展 PyTorch。

更多关于 PyTorch

在粒度级别,PyTorch是一个由以下组件组成的库:

组件 说明
torch 像 NumPy 这样的 Tensor 库,具有强大的 GPU 支持
torch.autograd 一个基于 tape 的自动微分库,支持 torch 中所有可微分张量运算
torch.jit 一个编译堆栈(TorchScript),用于从 PyTorch 代码创建可序列化和可优化的模型
torch.nn 与 autograd 深度集成的神经网络库,旨在实现最大的灵活性
torch.multiprocessing Python 多处理,但具有神奇的 torch 张量跨进程内存共享。适用于数据加载和 Hogwild(霍格威尔德)训练
torch.utils 为方便 DataLoader 和其他实用程序函数

通常使用 PyTorch 作为:

  • NumPy 的替代品,可以使用 GPU 的强大功能。
  • 深入学习研究平台,提供最大的灵活性和速度。

进一步阐述:

支持GPU的张量库

如果你使用 NumPy,那么您已经使用了 Tensors(张量)(或称 ndarray)。

我们提供了各种各样的张量例程来加速和满足您的科学计算需求,例如切片、索引、数学运算、线性代数、约简。而且速度很快。

动态神经网络:基于磁带的自动微分(Tape-Based Autograd)

PyTorch 有一种独特的构建神经网络的方法:使用和回放磁带录音机。

大多数框架,如 TensorFlow、Theano、Caffe 和 CNTK 都有静态的世界观。 人们必须建立一个神经网络,并一次又一次地重复使用相同的结构。 改变网络的行为方式意味着必须从头开始。

使用 PyTorch,我们使用一种称为反向模式自动微分的技术,它允许您以零滞后或开销任意改变网络的行为方式。 我们的灵感来自几个关于这个主题的研究论文,以及当前和过去的工作,如 torch-autogradautogradChainer 等。

虽然这种技术并不是 PyTorch 独有的,但它是迄今为止最快的实现之一。 为您的疯狂研究提供最佳的速度和灵活性。

Python 优先

PyTorch 不是将 Python 绑定到一个统一的 c++ 框架中。它的构建是为了深入集成到 Python 中。你可以像使用 NumPy / SciPy / scikit-learn 一样自然地使用它。您可以使用自己喜欢的库,并使用诸如 Cython 和 Numba 之类的包,用 Python 本身编写新的神经网络层。我们的目标是在适当的时候不重新发明轮子。

命令式体验

PyTorch 设计直观,线性思维且易于使用。当您执行一行代码时,它会被执行。没有异步的世界视图。当您进入调试器,或接收错误消息和堆栈跟踪时,理解它们很简单。堆栈跟踪指向您的代码定义的确切位置。我们希望您永远不要因为堆栈跟踪或异步且不透明的执行引擎而花费数小时调试代码。

快速和精益

PyTorch 具有最小的框架开销。我们集成了诸如英特尔 MKL 和 NVIDIA(cuDNN,NCCL)等加速库,以最大限度地提高速度。核心,它的 CPU 和 GPU Tensor 和神经网络后端(TH、THC、THNN、THCUNN)已经成熟并且已经过多年的测试。

因此,PyTorch 非常快 -- 无论你运行小型还是大型神经网络。

与 Torch 或其他一些替代方案相比,PyTorch 中的内存使用效率非常高。我们为 GPU 编写了自定义内存分配器,以确保您的深度学习模型具有最大的内存效率。这使您能够训练比以前更大的深度学习模型。

扩展没有痛苦

编写新的神经网络模块,或与 PyTorch 的 Tensor API 接口,都被设计得很简单,抽象也很少。

您可以使用 torch API 或您喜欢的基于 NumPy 的库(如 SciPy)在 Python 中编写新的神经网络层。

如果您想用 C/C++ 编写图层,我们提供了一个方便的扩展 API,它具有高效且极少的样板。没有需要编写的包装代码。您可以在此处查看教程并在此处查看示例。 如果您想用 C/C++ 编写您的层,我们提供了一个方便的扩展 API,它是高效的,并且只有最少的样板文件。不需要编写包装器代码。您可以 在这里看到教程示例

安装

二进制

通过 Conda 或 pip wheels 安装二进制文件的命令请参考我们的网站: https://pytorch.org

NVIDIA Jetson 平台

NVIDIA 的 Jetson Nano、Jetson TX2 和 Jetson AGX Xavier 的 Python wheels 可以通过以下 URL 获得:

它们需要 JetPack 4.2 及更高版本,并由 @dusty-nv 维护

Docker Image

Dockerfile 提供了 cuda 支持和 cudnn v7 来构建映像。您可以传递 -e PYTHON VERSION=x.y 标志指定 Miniconda 将使用哪个 Python 版本,或者不设置为使用默认版本。从 pytorch repo 目录构建,因为 docker 在构建映像时需要将 git repo 复制到 docker 文件系统中。

docker build -t pytorch -f docker/pytorch/Dockerfile .

您还可以从Docker Hub中提取预先构建的docker镜像并使用nvidia-docker运行,但目前尚未维护,并且会将PyTorch 0.2拉出来。

nvidia-docker run --rm -ti --ipc=host pytorch/pytorch:latest

请注意,PyTorch使用共享内存在进程之间共享数据,因此如果使用了torch多处理(例如,对于多线程数据加载器),容器运行的默认共享内存段大小是不够的,您应该增加共享内存大小 - -ipc =主机或--shm-size命令行选项到nvidia-docker运行。

入门

三个指针让你开始:

许可

PyTorch 是 BSD-style 许可证,可在 LICENSE 文件中找到。

(First edition: vz edited at 2019.08.23. Please note: there is a truncation, please refer to the original readme for details.)

Overview

Name With Ownerpytorch/pytorch
Primary LanguagePython
Program languageCMake (Language Count: 28)
PlatformLinux, Mac, Windows, Docker, Amazon Elastic Compute Cloud (EC2), Google Cloud Platform, IBM Cloud, Microsoft Azure
License:Other
Release Count4618
Last Release Nameciflow/xpu/124147 (Posted on )
First Release Namev0.1.1 (Posted on )
Created At2016-08-13 05:26:41
Pushed At2024-05-06 17:57:08
Last Commit At
Stargazers Count78.2k
Watchers Count1.7k
Fork Count21.1k
Commits Count72.6k
Has Issues Enabled
Issues Count41671
Issue Open Count12979
Pull Requests Count5702
Pull Requests Open Count959
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PyTorch Logo


PyTorch is a Python package that provides two high-level features:

  • Tensor computation (like NumPy) with strong GPU acceleration
  • Deep neural networks built on a tape-based autograd system

You can reuse your favorite Python packages such as NumPy, SciPy, and Cython to extend PyTorch when needed.

Our trunk health (Continuous Integration signals) can be found at hud.pytorch.org.

More About PyTorch

Learn the basics of PyTorch

At a granular level, PyTorch is a library that consists of the following components:

Component Description
torch A Tensor library like NumPy, with strong GPU support
torch.autograd A tape-based automatic differentiation library that supports all differentiable Tensor operations in torch
torch.jit A compilation stack (TorchScript) to create serializable and optimizable models from PyTorch code
torch.nn A neural networks library deeply integrated with autograd designed for maximum flexibility
torch.multiprocessing Python multiprocessing, but with magical memory sharing of torch Tensors across processes. Useful for data loading and Hogwild training
torch.utils DataLoader and other utility functions for convenience

Usually, PyTorch is used either as:

  • A replacement for NumPy to use the power of GPUs.
  • A deep learning research platform that provides maximum flexibility and speed.

Elaborating Further:

A GPU-Ready Tensor Library

If you use NumPy, then you have used Tensors (a.k.a. ndarray).

Tensor illustration

PyTorch provides Tensors that can live either on the CPU or the GPU and accelerates the
computation by a huge amount.

We provide a wide variety of tensor routines to accelerate and fit your scientific computation needs
such as slicing, indexing, mathematical operations, linear algebra, reductions.
And they are fast!

Dynamic Neural Networks: Tape-Based Autograd

PyTorch has a unique way of building neural networks: using and replaying a tape recorder.

Most frameworks such as TensorFlow, Theano, Caffe, and CNTK have a static view of the world.
One has to build a neural network and reuse the same structure again and again.
Changing the way the network behaves means that one has to start from scratch.

With PyTorch, we use a technique called reverse-mode auto-differentiation, which allows you to
change the way your network behaves arbitrarily with zero lag or overhead. Our inspiration comes
from several research papers on this topic, as well as current and past work such as
torch-autograd,
autograd,
Chainer, etc.

While this technique is not unique to PyTorch, it's one of the fastest implementations of it to date.
You get the best of speed and flexibility for your crazy research.

Dynamic graph

Python First

PyTorch is not a Python binding into a monolithic C++ framework.
It is built to be deeply integrated into Python.
You can use it naturally like you would use NumPy / SciPy / scikit-learn etc.
You can write your new neural network layers in Python itself, using your favorite libraries
and use packages such as Cython and Numba.
Our goal is to not reinvent the wheel where appropriate.

Imperative Experiences

PyTorch is designed to be intuitive, linear in thought, and easy to use.
When you execute a line of code, it gets executed. There isn't an asynchronous view of the world.
When you drop into a debugger or receive error messages and stack traces, understanding them is straightforward.
The stack trace points to exactly where your code was defined.
We hope you never spend hours debugging your code because of bad stack traces or asynchronous and opaque execution engines.

Fast and Lean

PyTorch has minimal framework overhead. We integrate acceleration libraries
such as Intel MKL and NVIDIA (cuDNN, NCCL) to maximize speed.
At the core, its CPU and GPU Tensor and neural network backends
are mature and have been tested for years.

Hence, PyTorch is quite fast — whether you run small or large neural networks.

The memory usage in PyTorch is extremely efficient compared to Torch or some of the alternatives.
We've written custom memory allocators for the GPU to make sure that
your deep learning models are maximally memory efficient.
This enables you to train bigger deep learning models than before.

Extensions Without Pain

Writing new neural network modules, or interfacing with PyTorch's Tensor API was designed to be straightforward
and with minimal abstractions.

You can write new neural network layers in Python using the torch API
or your favorite NumPy-based libraries such as SciPy.

If you want to write your layers in C/C++, we provide a convenient extension API that is efficient and with minimal boilerplate.
No wrapper code needs to be written. You can see a tutorial here and an example here.

Installation

Binaries

Commands to install binaries via Conda or pip wheels are on our website: https://pytorch.org/get-started/locally/

NVIDIA Jetson Platforms

Python wheels for NVIDIA's Jetson Nano, Jetson TX1/TX2, Jetson Xavier NX/AGX, and Jetson AGX Orin are provided here and the L4T container is published here

They require JetPack 4.2 and above, and @dusty-nv and @ptrblck are maintaining them.

From Source

Prerequisites

If you are installing from source, you will need:

  • Python 3.8 or later (for Linux, Python 3.8.1+ is needed)
  • A compiler that fully supports C++17, such as clang or gcc (especially for aarch64, gcc 9.4.0 or newer is required)

We highly recommend installing an Anaconda environment. You will get a high-quality BLAS library (MKL) and you get controlled dependency versions regardless of your Linux distro.

If you want to compile with CUDA support, select a supported version of CUDA from our support matrix, then install the following:

Note: You could refer to the cuDNN Support Matrix for cuDNN versions with the various supported CUDA, CUDA driver and NVIDIA hardware

If you want to disable CUDA support, export the environment variable USE_CUDA=0.
Other potentially useful environment variables may be found in setup.py.

If you are building for NVIDIA's Jetson platforms (Jetson Nano, TX1, TX2, AGX Xavier), Instructions to install PyTorch for Jetson Nano are available here

If you want to compile with ROCm support, install

  • AMD ROCm 4.0 and above installation
  • ROCm is currently supported only for Linux systems.

If you want to disable ROCm support, export the environment variable USE_ROCM=0.
Other potentially useful environment variables may be found in setup.py.

Install Dependencies

Common

conda install cmake ninja
# Run this command from the PyTorch directory after cloning the source code using the “Get the PyTorch Source“ section below
pip install -r requirements.txt

On Linux

conda install intel::mkl-static intel::mkl-include
# CUDA only: Add LAPACK support for the GPU if needed
conda install -c pytorch magma-cuda110  # or the magma-cuda* that matches your CUDA version from https://anaconda.org/pytorch/repo

# (optional) If using torch.compile with inductor/triton, install the matching version of triton
# Run from the pytorch directory after cloning
make triton

On MacOS

# Add this package on intel x86 processor machines only
conda install intel::mkl-static intel::mkl-include
# Add these packages if torch.distributed is needed
conda install pkg-config libuv

On Windows

conda install intel::mkl-static intel::mkl-include
# Add these packages if torch.distributed is needed.
# Distributed package support on Windows is a prototype feature and is subject to changes.
conda install -c conda-forge libuv=1.39

Get the PyTorch Source

git clone --recursive https://github.com/pytorch/pytorch
cd pytorch
# if you are updating an existing checkout
git submodule sync
git submodule update --init --recursive

Install PyTorch

On Linux

If you would like to compile PyTorch with new C++ ABI enabled, then first run this command:

export _GLIBCXX_USE_CXX11_ABI=1

If you're compiling for AMD ROCm then first run this command:

# Only run this if you're compiling for ROCm
python tools/amd_build/build_amd.py

Install PyTorch

export CMAKE_PREFIX_PATH=${CONDA_PREFIX:-"$(dirname $(which conda))/../"}
python setup.py develop

Aside: If you are using Anaconda, you may experience an error caused by the linker:

build/temp.linux-x86_64-3.7/torch/csrc/stub.o: file not recognized: file format not recognized
collect2: error: ld returned 1 exit status
error: command 'g++' failed with exit status 1

This is caused by ld from the Conda environment shadowing the system ld. You should use a newer version of Python that fixes this issue. The recommended Python version is 3.8.1+.

On macOS

python3 setup.py develop

On Windows

Choose Correct Visual Studio Version.

PyTorch CI uses Visual C++ BuildTools, which come with Visual Studio Enterprise,
Professional, or Community Editions. You can also install the build tools from
https://visualstudio.microsoft.com/visual-cpp-build-tools/. The build tools do not
come with Visual Studio Code by default.

If you want to build legacy python code, please refer to Building on legacy code and CUDA

CPU-only builds

In this mode PyTorch computations will run on your CPU, not your GPU

conda activate
python setup.py develop

Note on OpenMP: The desired OpenMP implementation is Intel OpenMP (iomp). In order to link against iomp, you'll need to manually download the library and set up the building environment by tweaking CMAKE_INCLUDE_PATH and LIB. The instruction here is an example for setting up both MKL and Intel OpenMP. Without these configurations for CMake, Microsoft Visual C OpenMP runtime (vcomp) will be used.

CUDA based build

In this mode PyTorch computations will leverage your GPU via CUDA for faster number crunching

NVTX is needed to build Pytorch with CUDA.
NVTX is a part of CUDA distributive, where it is called "Nsight Compute". To install it onto an already installed CUDA run CUDA installation once again and check the corresponding checkbox.
Make sure that CUDA with Nsight Compute is installed after Visual Studio.

Currently, VS 2017 / 2019, and Ninja are supported as the generator of CMake. If ninja.exe is detected in PATH, then Ninja will be used as the default generator, otherwise, it will use VS 2017 / 2019.
If Ninja is selected as the generator, the latest MSVC will get selected as the underlying toolchain.

Additional libraries such as
Magma, oneDNN, a.k.a. MKLDNN or DNNL, and Sccache are often needed. Please refer to the installation-helper to install them.

You can refer to the build_pytorch.bat script for some other environment variables configurations

cmd

:: Set the environment variables after you have downloaded and unzipped the mkl package,
:: else CMake would throw an error as `Could NOT find OpenMP`.
set CMAKE_INCLUDE_PATH={Your directory}\mkl\include
set LIB={Your directory}\mkl\lib;%LIB%

:: Read the content in the previous section carefully before you proceed.
:: [Optional] If you want to override the underlying toolset used by Ninja and Visual Studio with CUDA, please run the following script block.
:: "Visual Studio 2019 Developer Command Prompt" will be run automatically.
:: Make sure you have CMake >= 3.12 before you do this when you use the Visual Studio generator.
set CMAKE_GENERATOR_TOOLSET_VERSION=14.27
set DISTUTILS_USE_SDK=1
for /f "usebackq tokens=*" %i in (`"%ProgramFiles(x86)%\Microsoft Visual Studio\Installer\vswhere.exe" -version [15^,17^) -products * -latest -property installationPath`) do call "%i\VC\Auxiliary\Build\vcvarsall.bat" x64 -vcvars_ver=%CMAKE_GENERATOR_TOOLSET_VERSION%

:: [Optional] If you want to override the CUDA host compiler
set CUDAHOSTCXX=C:\Program Files (x86)\Microsoft Visual Studio\2019\Community\VC\Tools\MSVC\14.27.29110\bin\HostX64\x64\cl.exe

python setup.py develop

Adjust Build Options (Optional)

You can adjust the configuration of cmake variables optionally (without building first), by doing
the following. For example, adjusting the pre-detected directories for CuDNN or BLAS can be done
with such a step.

On Linux

export CMAKE_PREFIX_PATH=${CONDA_PREFIX:-"$(dirname $(which conda))/../"}
python setup.py build --cmake-only
ccmake build  # or cmake-gui build

On macOS

export CMAKE_PREFIX_PATH=${CONDA_PREFIX:-"$(dirname $(which conda))/../"}
MACOSX_DEPLOYMENT_TARGET=10.9 CC=clang CXX=clang++ python setup.py build --cmake-only
ccmake build  # or cmake-gui build

Docker Image

Using pre-built images

You can also pull a pre-built docker image from Docker Hub and run with docker v19.03+

docker run --gpus all --rm -ti --ipc=host pytorch/pytorch:latest

Please note that PyTorch uses shared memory to share data between processes, so if torch multiprocessing is used (e.g.
for multithreaded data loaders) the default shared memory segment size that container runs with is not enough, and you
should increase shared memory size either with --ipc=host or --shm-size command line options to nvidia-docker run.

Building the image yourself

NOTE: Must be built with a docker version > 18.06

The Dockerfile is supplied to build images with CUDA 11.1 support and cuDNN v8.
You can pass PYTHON_VERSION=x.y make variable to specify which Python version is to be used by Miniconda, or leave it
unset to use the default.

make -f docker.Makefile
# images are tagged as docker.io/${your_docker_username}/pytorch

You can also pass the CMAKE_VARS="..." environment variable to specify additional CMake variables to be passed to CMake during the build.
See setup.py for the list of available variables.

CMAKE_VARS="BUILD_CAFFE2=ON BUILD_CAFFE2_OPS=ON" make -f docker.Makefile

Building the Documentation

To build documentation in various formats, you will need Sphinx and the
readthedocs theme.

cd docs/
pip install -r requirements.txt

You can then build the documentation by running make <format> from the
docs/ folder. Run make to get a list of all available output formats.

If you get a katex error run npm install katex. If it persists, try
npm install -g katex

Note: if you installed nodejs with a different package manager (e.g.,
conda) then npm will probably install a version of katex that is not
compatible with your version of nodejs and doc builds will fail.
A combination of versions that is known to work is node@6.13.1 and
katex@0.13.18. To install the latter with npm you can run
npm install -g katex@0.13.18

Previous Versions

Installation instructions and binaries for previous PyTorch versions may be found
on our website.

Getting Started

Three-pointers to get you started:

Resources

Communication

Releases and Contributing

Typically, PyTorch has three minor releases a year. Please let us know if you encounter a bug by filing an issue.

We appreciate all contributions. If you are planning to contribute back bug-fixes, please do so without any further discussion.

If you plan to contribute new features, utility functions, or extensions to the core, please first open an issue and discuss the feature with us.
Sending a PR without discussion might end up resulting in a rejected PR because we might be taking the core in a different direction than you might be aware of.

To learn more about making a contribution to Pytorch, please see our Contribution page. For more information about PyTorch releases, see Release page.

The Team

PyTorch is a community-driven project with several skillful engineers and researchers contributing to it.

PyTorch is currently maintained by Soumith Chintala, Gregory Chanan, Dmytro Dzhulgakov, Edward Yang, and Nikita Shulga with major contributions coming from hundreds of talented individuals in various forms and means.
A non-exhaustive but growing list needs to mention: Trevor Killeen, Sasank Chilamkurthy, Sergey Zagoruyko, Adam Lerer, Francisco Massa, Alykhan Tejani, Luca Antiga, Alban Desmaison, Andreas Koepf, James Bradbury, Zeming Lin, Yuandong Tian, Guillaume Lample, Marat Dukhan, Natalia Gimelshein, Christian Sarofeen, Martin Raison, Edward Yang, Zachary Devito.

Note: This project is unrelated to hughperkins/pytorch with the same name. Hugh is a valuable contributor to the Torch community and has helped with many things Torch and PyTorch.

License

PyTorch has a BSD-style license, as found in the LICENSE file.

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