Skip to content

Kaggle/docker-python

Folders and files

NameName
Last commit message
Last commit date

Latest commit

c849337 · Dec 22, 2023
Nov 18, 2021
Apr 3, 2023
Dec 19, 2023
Sep 24, 2021
Dec 19, 2023
Nov 30, 2019
Dec 14, 2023
Sep 24, 2021
Dec 22, 2023
Dec 14, 2023
Apr 30, 2015
Nov 15, 2021
Oct 5, 2021
Apr 1, 2019
Sep 21, 2023
Jan 13, 2021
Aug 16, 2023
May 13, 2022
Apr 13, 2023
Aug 22, 2022

Repository files navigation

docker-python

Kaggle Notebooks allow users to run a Python Notebook in the cloud against our competitions and datasets without having to download data or set up their environment.

This repository includes the Dockerfile for building the CPU-only and GPU image that runs Python Notebooks on Kaggle.

Our Python Docker images are stored on the Google Container Registry at:

Requesting new packages

First, evaluate whether installing the package yourself in your own notebooks suits your needs. See guide.

If you the first step above doesn't work for your use case, open an issue or a pull request.

Opening a pull request

  1. Edit the Dockerfile.
  2. Follow the instructions below to build a new image.
  3. Add tests for your new package. See this example.
  4. Follow the instructions below to test the new image.
  5. Open a PR on this repo and you are all set!

Building a new image

./build

Flags:

  • --gpu to build an image for GPU.
  • --use-cache for faster iterative builds.

Testing a new image

A suite of tests can be found under the /tests folder. You can run the test using this command:

./test

Flags:

  • --gpu to test the GPU image.

Running the image

For the CPU-only image:

# Run the image built locally:
docker run --rm -it kaggle/python-build /bin/bash
# Run the pre-built image from gcr.io
docker run --rm -it gcr.io/kaggle-images/python /bin/bash

For the GPU image:

# Run the image built locally:
docker run --runtime nvidia --rm -it kaggle/python-gpu-build /bin/bash
# Run the image pre-built image from gcr.io
docker run --runtime nvidia --rm -it gcr.io/kaggle-gpu-images/python /bin/bash

To ensure your container can access the GPU, follow the instructions posted here.