1. 前言
利用 anaconda 配置 pytorch 深度学习环境时利用官网链接给出的安装指令安装会很慢,而且经常报错,为此整理目前全版本 pytorch 深度学习环境配置指令,以下指令适用 windows 操作系统,在 anaconda prompt 中运行。
2. 配置镜像源
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conda config - - add channels https: / / mirrors.tuna.tsinghua.edu.cn / anaconda / pkgs / free / conda config - - add channels https: / / mirrors.tuna.tsinghua.edu.cn / anaconda / cloud / conda - forge conda config - - add channels https: / / mirrors.tuna.tsinghua.edu.cn / anaconda / cloud / msys2 / conda config - - add channels https: / / mirrors.tuna.tsinghua.edu.cn / anaconda / cloud / pytorch / conda config - - set show_channel_urls yes |
3. pytorch,torchvision,python 版本对应
pytorch,torchvision,python 三者的对应关系来源于 pytorch 官方 github,链接:https://github.com/pytorch/vision#installation
4. 创建并进入虚拟环境
创建一个虚拟环境,其中 pt 是自定义虚拟环境名称,另外根据踩坑经验 python 3.6.5 版本可以适配所有版本的 pytorch,建议创建环境时 python 解释器版本选择 3.6.5 版本。
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conda create - n pt python = 3.6 . 5 |
随后点击 y 同意安装,等待一会进入虚拟环境。
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activate pt |
5. pytorch 0.4.1
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conda install pytorch = = 0.4 . 1 torchvision = = 0.2 . 1 cuda90 # cuda 9.0 conda install pytorch = = 0.4 . 1 torchvision = = 0.2 . 1 cuda92 # cuda 9.2 conda install pytorch = = 0.4 . 1 torchvision = = 0.2 . 1 cuda80 # cuda 8.0 conda install pytorch = = 0.4 . 1 torchvision = = 0.2 . 1 cuda75 # cuda 7.5 conda install pytorch = = 0.4 . 1 torchvision = = 0.2 . 1 cpuonly # cpu 版本 |
6. pytorch 1.0.0
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conda install pytorch = = 1.0 . 0 torchvision = = 0.2 . 1 cuda100 # cuda 10.0 conda install pytorch = = 1.0 . 0 torchvision = = 0.2 . 1 cuda90 # cuda 9.0 conda install pytorch = = 1.0 . 0 torchvision = = 0.2 . 1 cuda80 # cuda 8.0 conda install pytorch - cpu = = 1.0 . 0 torchvision - cpu = = 0.2 . 1 cpuonly # cpu 版本 |
7. pytorch 1.0.1
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conda install pytorch = = 1.0 . 1 torchvision = = 0.2 . 2 cudatoolkit = 9.0 # cuda 9.0 conda install pytorch = = 1.0 . 1 torchvision = = 0.2 . 2 cudatoolkit = 10.0 # cuda 10.0 conda install pytorch - cpu = = 1.0 . 1 torchvision - cpu = = 0.2 . 2 cpuonly # cpu 版本 |
8. pytorch 1.1.0
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conda install pytorch = = 1.1 . 0 torchvision = = 0.3 . 0 cudatoolkit = 9.0 # cuda 9.0 conda install pytorch = = 1.1 . 0 torchvision = = 0.3 . 0 cudatoolkit = 10.0 # cuda 10.0 conda install pytorch - cpu = = 1.1 . 0 torchvision - cpu = = 0.3 . 0 cpuonly # cpu o版本 |
9. pytorch 1.2.0
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conda install pytorch = = 1.2 . 0 torchvision = = 0.4 . 0 cudatoolkit = 9.2 # cuda 9.2 conda install pytorch = = 1.2 . 0 torchvision = = 0.4 . 0 cudatoolkit = 10.0 # cuda 10.0 conda install pytorch = = 1.2 . 0 torchvision = = 0.4 . 0 cpuonly # cpu 版本 |
10. pytorch 1.4.0
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conda install pytorch = = 1.4 . 0 torchvision = = 0.5 . 0 cudatoolkit = 9.2 # cuda 9.2 conda install pytorch = = 1.4 . 0 torchvision = = 0.5 . 0 cudatoolkit = 10.1 # cuda 10.1 conda install pytorch = = 1.4 . 0 torchvision = = 0.5 . 0 cpuonly # cpu 版本 |
11. pytorch 1.5.0
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conda install pytorch = = 1.5 . 0 torchvision = = 0.6 . 0 cudatoolkit = 9.2 # cuda 9.2 conda install pytorch = = 1.5 . 0 torchvision = = 0.6 . 0 cudatoolkit = 10.1 # cuda 10.1 conda install pytorch = = 1.5 . 0 torchvision = = 0.6 . 0 cudatoolkit = 10.2 # cuda 10.2 conda install pytorch = = 1.5 . 0 torchvision = = 0.6 . 0 cpuonly # cpu 版本 |
12. pytorch 1.5.1
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conda install pytorch = = 1.5 . 1 torchvision = = 0.6 . 1 cudatoolkit = 9.2 # cuda 9.2 conda install pytorch = = 1.5 . 1 torchvision = = 0.6 . 1 cudatoolkit = 10.1 # cuda 10.1 conda install pytorch = = 1.5 . 1 torchvision = = 0.6 . 1 cudatoolkit = 10.2 # cuda 10.2 conda install pytorch = = 1.5 . 1 torchvision = = 0.6 . 1 cpuonly # cpu 版本 |
13. pytorch 1.6.0
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conda install pytorch = = 1.6 . 0 torchvision = = 0.7 . 0 cudatoolkit = 9.2 # cuda 9.2 conda install pytorch = = 1.6 . 0 torchvision = = 0.7 . 0 cudatoolkit = 10.1 # cuda 10.1 conda install pytorch = = 1.6 . 0 torchvision = = 0.7 . 0 cudatoolkit = 10.2 # cuda 10.2 conda install pytorch = = 1.6 . 0 torchvision = = 0.7 . 0 cpuonly # cpu 版本 |
14. pytorch 1.7.0
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conda install pytorch = = 1.7 . 0 torchvision = = 0.8 . 0 cudatoolkit = 9.2 # cuda 9.2 conda install pytorch = = 1.7 . 0 torchvision = = 0.8 . 0 cudatoolkit = 10.1 # cuda 10.1 conda install pytorch = = 1.7 . 0 torchvision = = 0.8 . 0 cudatoolkit = 10.2 # cuda 10.2 conda install pytorch = = 1.7 . 0 torchvision = = 0.8 . 0 cudatoolkit = 11.0 # cuda 11.0 conda install pytorch = = 1.7 . 0 torchvision = = 0.8 . 0 cpuonly # cpu 版本 |
15. pytorch 1.7.1
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conda install pytorch = = 1.7 . 1 torchvision = = 0.8 . 2 cudatoolkit = 9.2 # cuda 9.2 conda install pytorch = = 1.7 . 1 torchvision = = 0.8 . 2 cudatoolkit = 10.1 # cuda 10.1 conda install pytorch = = 1.7 . 1 torchvision = = 0.8 . 2 cudatoolkit = 10.2 # cuda 10.2 conda install pytorch = = 1.7 . 1 torchvision = = 0.8 . 2 cudatoolkit = 11.0 # cuda 11.0 conda install pytorch = = 1.7 . 1 torchvision = = 0.8 . 2 cpuonly # cpu 版本 |
16. pytorch 1.8.0
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conda install pytorch = = 1.8 . 0 torchvision = = 0.9 . 0 cudatoolkit = 10.2 # cuda 10.2 conda install pytorch = = 1.8 . 0 torchvision = = 0.9 . 0 cudatoolkit = 11.1 # cuda 11.1 conda install pytorch = = 1.8 . 0 torchvision = = 0.9 . 0 cpuonly # cpu 版本 |
17. pytorch 1.9.0
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conda install pytorch = = 1.9 . 0 torchvision = = 0.10 . 0 cudatoolkit = 10.2 # cuda 10.2 conda install pytorch = = 1.9 . 0 torchvision = = 0.10 . 0 cudatoolkit = 11.1 # cuda 11.1 conda install pytorch = = 1.9 . 0 torchvision = = 0.10 . 0 cpuonly # cpu 版本 |
18. 测试是否安装成功
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cpu 版本测试:继续运行 python 进入交互式环境,分别运行
import torch
,import torchvision
不报错则安装成功。 -
gpu 版本测试:继续运行 python 进入交互式环境,分别运行
import torch
,import torchvision
不报错, 再运行print(torch.cuda.is_available())
输出 ture 则表示安装成功。
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原文链接:https://blog.csdn.net/Wenyuanbo/article/details/119382460