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Today I started working with Docker. So please bear with me. I'm not even sure if the title makes sense. I just installed Tensorflow using Docker and wanted to run a script. However, I got the following error saying that Matplotlib is not installed.

Traceback (most recent call last):
File "tf_mlp_v3.py", line 3, in <module>
import matplotlib.pyplot as plt
ModuleNotFoundError: No module named 'matplotlib'

I used the following command to install Tensorflow

docker pull tensorflow/tensorflow:latest-gpu-jupyter

How can I now add other python libraries such as Matplotlib to that image?

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4 Answers 4

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To customize an image you generally want to create a new one using the existing image as a base. In Docker it is extremely common to create custom images when existing ones don't quite do what you want. By basing your images off public ones you can add your own customizations without having to repeat (or even know) what the base image does.

  1. Add the necessary steps to a new Dockerfile.

    FROM tensorflow/tensorflow:latest-gpu-jupyter
    
    RUN <extra install steps>
    COPY <extra files>
    

    RUN and COPY are examples of instructions you might use. RUN will run a command of your choosing such as RUN pip install matplotlib. COPY is used to add new files from your machine to the image, such as a configuration file.

  2. Build and tag the new image. Give it a new name of your choosing. I'll call it my-customized-tensorflow, but you can name it anything you like.

    Assuming the Dockerfile is in the current directory, run docker build:

    $ docker build -t my-customized-tensorflow .
    
  3. Now you can use my-customized-tensorflow as you would any other image.

    $ docker run my-customized-tensorflow
    
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    Where do I place the Dockerfile? Can you be more specific how to install, for example, Matplotlib? Is it just RUN pip install matplotlib? What comes after COPY? What exactly is my-customized-tensorflow? The new name of the image? Or a completely new image?
    – Gilfoyle
    Commented Oct 1, 2019 at 20:14
  • The Dockerfile goes wherever you want to put it. You might create a new directory called my-customized-tensorflow and put it in there, for instance. Up to you how you want to organize your files. Commented Oct 1, 2019 at 21:19
  • I have read that pip should be invoked with python -m pip ..., because pip ... might not point to the same version of python. Is that not preferred here, too?
    – user550701
    Commented Aug 28, 2021 at 15:39
  • If I understand correctly, the OP does not need to COPY extra files, so it would be a better answer with that line removed from the Dockerfile.
    – user550701
    Commented Aug 28, 2021 at 15:44
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Add this to your Dockerfile after pulling the image:

RUN python -m pip install matplotlib
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  • 4
    Please add more context, where to add that instruction. Commented Oct 1, 2019 at 19:39
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    Where can I find my Dockerfile?
    – Gilfoyle
    Commented Oct 1, 2019 at 20:15
  • A dockerfile is a file you write. and you put that instruction in the dockerfile Commented Jul 12, 2020 at 9:22
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There are multiple options:

  • Get into the container and install dependencies (be aware that this changes will be lost when recreating the container):

    docker exec <your-container-id> /bin/bash
    

    That should open an interactive bash. Then install the dependencies (pip or conda).

  • Another alternative, is to add it during build time (of the image). That is adding the instruction RUN into a Dockerfile

All dependencies are installed using python default tools (i.e: pip, conda)

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    Modifying running containers is a bad habit. Stop the container and you lose your changes. Commented Oct 1, 2019 at 19:41
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    @JohnKugelman But you can use it nevertheless because there is docker commit which creates an image from already running container :) Commented Oct 1, 2019 at 19:43
  • Agree with both of you. In this context, a Docker newcomer whose main focus seems to be use tensorflow, I'm it is more valuable to make it work the simpler first. Then you can start learning deeper about Docker. Commented Oct 1, 2019 at 19:46
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    docker commit is another bad habit because you lose the ability to recreate the image. I agree it's simpler, but bad habits are always simpler, no? They'd hardly be attractive otherwise. Let's not teach newcomers bad habits. Commented Oct 1, 2019 at 19:57
  • Again, depends on the context. Adding more complexity that required is not a good practice neither. Commented Oct 1, 2019 at 20:01
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As an alternative you can use '--user' to store the packages mounted folders

mkdir /path/to/local
mkdir /path/to/cache

Add these option to the docker command

--mount type=bind,source=/path/to/local,target=/.local --mount type=bind,source=/path/to/cache,target=/.cache

Then you can install packages using

pip install --user pandas

The packages will then be persistent without having to build and restart you docker every time.

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