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  • anaconda环境---ubuntu下重装

    anaconda环境---ubuntu下重装

    @wp20190312


      为何重装? 配置一个环境,意外发现conda命令不好用了,提示“找不到conda模块”,整个conda虚拟环境中的工程项目无法使用,网上有说主要是python路径的指向调用出现了问题。经过多番尝试仍然未解决问题,所以还是重装一下吧,简单bao力。

      原来使用的是anaconda2,这次改用anaconda3。
    (1)卸载原来的anaconda2:rm -rf /home/wp/anaconda2
    (2)安装新的anaconda3
    在网址 https://www.cnblogs.com/gaofighting/p/8799169.html   中下载anaconda3
    wp@wp-MS-7519:~/Anaconda3$ sudo sh Anaconda3-2018.12-Linux-x86_64.sh    #安装完后带锁
                                                                  sh Anaconda3-2018.12-Linux-x86_64.sh     #安装完后不带锁
    =======================安装过程部分展示================================
    一直enter到选择yes?

    Anaconda3 will now be installed into this location:
    /home/wp/anaconda3

      - Press ENTER to confirm the location
      - Press CTRL-C to abort the installation
      - Or specify a different location below

    [/home/wp/anaconda3] >>>
    PREFIX=/home/wp/anaconda3
    # 安装根据机器性能,通常需要持续几分钟。
    Do you wish the installer to initialize Anaconda3
    in your /home/wp/.bashrc ? [yes|no]
    [no] >>>
    You may wish to edit your /home/wp/.bashrc to setup Anaconda3:

    source /home/wp/anaconda3/etc/profile.d/conda.sh

    Thank you for installing Anaconda3!
    ====================================================================
    To install Visual Studio Code, you will need:
      - Administrator Privileges
      - Internet connectivity

    Visual Studio Code License: https://code.visualstudio.com/license

    Do you wish to proceed with the installation of Microsoft VSCode? [yes|no]
    >>> yes
    Proceeding with installation of Microsoft VSCode
    VSCode is already installed!

    到此Anaconda3安装成功。 重启终端,即可使用Anaconda3

    假如,Anaconda3未安装成功,可以执行: rm -rf ~/anaconda3  ,找到Anaconda3的安装路径,卸载后重新安装即可。

    ===============================================================
    (3)在终端,查看当前电脑的python版本:
    wp@wp-MS-7519:~/anaconda3$ python
    Python 2.7.15rc1 (default, Apr 15 2018, 21:51:34)
    [GCC 7.3.0] on linux2
    Type "help", "copyright", "credits" or "license" for more information.
    >>> exit()

    wp@wp-MS-7519:~/anaconda3$ python3
    Python 3.6.5 (default, Apr  1 2018, 05:46:30)
    [GCC 7.3.0] on linux
    Type "help", "copyright", "credits" or "license" for more information.
    >>> exit()

    我们可以看到,若在终端输入 python,仍然会显示Ubuntu自带的python版本。
     
    (4)所以如果想用anaconda,则需要修改终端的默认python为anaconda,执行:
    wp@wp-MS-7519:~/anaconda3$ gedit ~/.bashrc
    在文件后面添加:export PATH="/home/wp/anaconda3/bin:$PATH"   #并保存
    wp@wp-MS-7519:~/anaconda3$ source ~/.bashrc                           #使用修改的路径生效

    【export PATH=/home/wp/anaconda2/bin:$PATH
       gedit ~/.bashrc
       source ~/.bashrc】

    (5)再次,查看当前电脑的python版本:
    wp@wp-MS-7519:~/anaconda3$ python -V
    Python 3.7.1  #anaconda3 安装的python版本

    wp@wp-MS-7519:~/anaconda3$ python
    Python 3.7.1 (default, Dec 14 2018, 19:28:38)
    [GCC 7.3.0] :: Anaconda, Inc. on linux
    Type "help", "copyright", "credits" or "license" for more information.
    >>> exit()
    wp@wp-MS-7519:~/anaconda3$ python2
    Python 2.7.15rc1 (default, Apr 15 2018, 21:51:34)
    [GCC 7.3.0] on linux2
    Type "help", "copyright", "credits" or "license" for more information.
    >>>

    (6)根据工作要求,增加虚拟环境。
    6.1查找可用版本:conda search "^python$"
    wp@wp-MS-7519:~/anaconda3$ conda search "^python$"
    Loading channels: done
    # Name                  Version           Build  Channel             
    python                    1.0.1               0  anaconda/cloud/conda-forge
    python                    1.0.1               0  anaconda/pkgs/free  
    ........
    python                    2.7.3               2  anaconda/pkgs/free  
    python                    2.7.3               3  anaconda/pkgs/free  
    python                    2.7.3               4  anaconda/pkgs/free  
    python                    2.7.3               5  anaconda/pkgs/free  
    ......................
    python                   2.7.15               0  anaconda/cloud/conda-forge
    python                   2.7.15      h1571d57_0  anaconda/pkgs/main  
    python                   2.7.15      h33da82c_1  anaconda/cloud/conda-forge
    python                   2.7.15      h33da82c_3  anaconda/cloud/conda-forge
    python                   2.7.15      h33da82c_4  anaconda/cloud/conda-forge
    ...
    python                   2.7.15      h9bab390_2  anaconda/pkgs/main  
    python                   2.7.15      h9bab390_4  anaconda/pkgs/main  
    python                   2.7.15      h9bab390_6  anaconda/pkgs/main  
    python                   2.7.15      h9fef7bc_0  anaconda/cloud/conda-forge
    ................................
    python                    3.5.0               0  anaconda/pkgs/free  
    python                    3.5.0               1  anaconda/pkgs/free  
    python                    3.5.1               0  anaconda/cloud/conda-forge
    python                    3.5.1               0  anaconda/pkgs/free  
    python                    3.5.1               1  anaconda/cloud/conda-forge
    python                    3.5.1               5  anaconda/pkgs/free  
    python                    3.5.2               0  anaconda/cloud/conda-forge
    python                    3.5.2               0  anaconda/pkgs/free  
    python                    3.5.2               1  anaconda/cloud/conda-forge
    ...
    python                    3.5.5      hc3d631a_0  anaconda/pkgs/main  
    python                    3.5.5      hc3d631a_1  anaconda/pkgs/main  
    python                    3.5.5      hc3d631a_3  anaconda/pkgs/main  
    python                    3.5.5      hc3d631a_4  anaconda/pkgs/main  
    python                    3.5.6      hc3d631a_0  anaconda/pkgs/main  
    python                  3.6.0a3               0  anaconda/cloud/conda-forge
    ............................
    python                    3.6.7   hd21baee_1002  anaconda/cloud/conda-forge
    python                    3.6.8      h0371630_0  anaconda/pkgs/main  
    python                    3.7.0      h5001a0f_0  anaconda/cloud/conda-forge
    python                    3.7.0      h5001a0f_1  anaconda/cloud/conda-forge
    python                    3.7.0      h5001a0f_4  anaconda/cloud/conda-forge
    python                    3.7.0      h5001a0f_6  anaconda/cloud/conda-forge
    python                    3.7.0      h6e4f718_3  anaconda/pkgs/main  
    ...
    python                    3.7.1      h0371630_7  anaconda/pkgs/main  
    python                    3.7.1   h381d211_1002  anaconda/cloud/conda-forge
    python                    3.7.1      h5001a0f_0  anaconda/cloud/conda-forge
    python                    3.7.1   hd21baee_1000  anaconda/cloud/conda-forge
    python                    3.7.1   hd21baee_1001  anaconda/cloud/conda-forge
    python                    3.7.2      h0371630_0  anaconda/pkgs/main  


    6.2下载的TensorFlow对应的Python版本一定要和conda create -n tensorflow python=x.x的版本一样才行。
    考虑,环境没破坏之前,FaceNet使用的环境:Ubuntu 18.04 + Tensorflow 1.5.0 + Python 2.7 + OpenCV 3.2.0,
    A1,这里,装一个Python 2.7,配一个Tensorflow 1.5.0 环境。
    wp@wp-MS-7519:~/anaconda3$ conda create -n test_py2 python=2
    wp@wp-MS-7519:~/anaconda3$ source activate test_py2

    wp@wp-MS-7519:~/anaconda3$ python   #查看是python2.7.15
    wp@wp-MS-7519:~/anaconda3$ pip install tensorflow

    DEPRECATION: Python 2.7 will reach the end of its life on January 1st, 2020. Please upgrade your Python as Python 2.7 won't be maintained after that date. A future version of pip will drop support for Python 2.7.
    Looking in indexes: http://pypi.douban.com/simple
    Collecting tensorflow
      Downloading http://pypi.doubanio.com/packages/d2/ea/ab2c8c0e81bd051cc1180b104c75a865ab0fc66c89be992c4b20bbf6d624/tensorflow-1.13.1-cp27-cp27mu-manylinux1_x86_64.whl (92.5MB)
    B1,安装完成后,python ,import tensorflow as tf,报错
    >>> import tensorflow as tf
    2019-03-11 16:39:04.749263: F tensorflow/core/platform/cpu_feature_guard.cc:37] The TensorFlow library was compiled to use SSE4.2 instructions, but these aren't available on your machine.
    已放弃 (核心已转储)
    解决办法:安装bazel,编译tensorflow。这个问题的原因是CPU支持更快的运算,安装的Tensorflow中缺少对应的模块,需要编译安装。当我们使用GPU的情况下,并不需要用到CPU,所以这些warning可以忽略。 安装bazel 太麻烦了,换思路解决“安装tf”。


    C1,卸载tensorflow:(test_py2) wp@wp-MS-7519:~/anaconda3$ pip uninstall tensorflow
    D1,重新安装tensorflow:sudo pip install --ignore-installed --upgrade  https://mirrors.tuna.tsinghua.edu.cn/tensorflow/linux/cpu/tensorflow-1.5.0-cp27-none-linux_x86_64.whl
    这里说明一下: 这一步安装之后,python2下面import tensorflow as tf 还是报错,但是在python3下面import tensorflow as tf 不报错。所以,换思路。

    A2,换思路,装一个Python 3.5,配一个Tensorflow 1.5.0 环境。【刚开始装的是Python 3.6和Tensorflow 1.5.0 最后不好用,经过折腾换Python 3.5好用。】
    wp@wp-MS-7519:~/anaconda3$ conda create -n test_py3 python=3.6
    wp@wp-MS-7519:~/anaconda3$ source activate test_py3
    (test_py3) wp@wp-MS-7519:~/anaconda3$ cd test_py3
    (test_py3) wp@wp-MS-7519:~/anaconda3/test_py3$ cd tf
    (test_py3) wp@wp-MS-7519:~/anaconda3/test_py3/tf$ python
    Python 3.6.7 | packaged by conda-forge | (default, Feb 28 2019, 09:07:38)
    [GCC 7.3.0] on linux
    Type "help", "copyright", "credits" or "license" for more information.
    >>>
    安装tf:sudo pip install --ignore-installed --upgrade https://mirrors.tuna.tsinghua.edu.cn/tensorflow/linux/cpu/tensorflow-1.5.0rc0-cp36-cp36m-linux_x86_64.whl
    安装tf报错:tensorflow-1.5.0rc0-cp36-cp36m-linux_x86_64.whl is not a supported wheel on this platform.

    退出虚拟环境,并卸载python3.6,重装python3.5
    (test_py3) wp@wp-MS-7519:~/anaconda3/test_py3/tf$ source deactivate (conda deactivate) #退出虚拟环境
    wp@wp-MS-7519:~/anaconda3/test_py3/tf$ conda remove --name test_py3 --all               #卸载python3.6
    wp@wp-MS-7519:~/anaconda3/test_py3/tf$ conda create -n test_py3 python=3.5              #重装python3.5
    (test_py3) wp@wp-MS-7519:~/anaconda3/test_py3/tf$ conda activate test_py3
    (test_py3) wp@wp-MS-7519:~/anaconda3/test_py3/tf$ pip install --ignore-installed --upgrade tensorflow-1.5.0-cp35-cp35m-linux_x86_64.whl
    【安装下载镜像网址  https://mirrors.tuna.tsinghua.edu.cn/tensorflow/linux/cpu/】
    (test_py3) wp@wp-MS-7519:~/anaconda3/test_py3/tf$ python
    Python 3.5.5 | packaged by conda-forge | (default, Jul 23 2018, 23:45:43)
    [GCC 4.8.2 20140120 (Red Hat 4.8.2-15)] on linux
    Type "help", "copyright", "credits" or "license" for more information.
    >>> import tensorflow as tf
    >>> tf.__version__
    '1.5.0'
    >>>
    提示,这里需要 py 和 tf 版本相匹配,所以可能会出现反复的:
    (1)安装   conda create -n test_py3 python=3.5   与卸载   conda remove --name test_py3 --all          
    (2)安装   pip install --ignore-installed --upgrade tf_setup_name    与卸载   pip uninstall tensorflow    。

    总结说明:
    安装可用环境:conda create --name my_env python=3
    删除环境变量:conda remove --name my_env --all

    激活新环境:source activate my_env
    停用环境:source deactivate

    安装可用环境python3.5版本:conda create -n my_env35 python=3.5
    删除可用环境python3.5版本:conda remove --name my_env35 --all
    激活新环境:source activate my_env
    停用:source deactivate

    更新版本:conda update python=3.5.2

    查看所有环境:conda info --envs

    给环境安装其他软件包:conda install --name my_env35 numpy

    更新 anaconda:conda update conda

    卸载Anaconda:conda install anaconda-clean --yes
    rm -rf ~/anaconda3
    vim ~/.bashrc

    更换仓库镜像
    conda config --add channels https://mirrors.tuna.tsinghua.edu.cn/anaconda/pkgs/free/
    conda config --add channels https://mirrors.tuna.tsinghua.edu.cn/anaconda/pkgs/main/
    conda config --set show_channel_urls yes

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  • 原文地址:https://www.cnblogs.com/carle-09/p/10515418.html
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