Skip to main content

Git for data scientists - manage your code and data together

Project description

DVC logo

WebsiteDocsBlogTutorialRelated TechnologiesHow DVC worksVS Code ExtensionInstallationContributingCommunity and Support

GHA Tests Python Version Codecov VS Code Extension DOI

PyPI PyPI Downloads deb|pkg|rpm|exe Homebrew Conda-forge Chocolatey Snapcraft


Data Version Control or DVC is a command line tool and VS Code Extension to help you develop reproducible machine learning projects:

  1. Version your data and models. Store them in your cloud storage but keep their version info in your Git repo.

  2. Iterate fast with lightweight pipelines. When you make changes, only run the steps impacted by those changes.

  3. Track experiments in your local Git repo (no servers needed).

  4. Compare any data, code, parameters, model, or performance plots.

  5. Share experiments and automatically reproduce anyone’s experiment.

Quick start

Please read our Command Reference for a complete list.

A common CLI workflow includes:

Task

Terminal

Track data

$ git add train.py params.yaml
$ dvc add images/

Connect code and data

$ dvc stage add -n featurize -d images/ -o features/ python featurize.py
$ dvc stage add -n train -d features/ -d train.py -o model.p -M metrics.json python train.py

Make changes and experiment

$ dvc exp run -n exp-baseline
$ vi train.py
$ dvc exp run -n exp-code-change

Compare and select experiments

$ dvc exp show
$ dvc exp apply exp-baseline

Share code

$ git add .
$ git commit -m 'The baseline model'
$ git push

Share data and ML models

$ dvc remote add myremote -d s3://mybucket/image_cnn
$ dvc push

How DVC works

We encourage you to read our Get Started docs to better understand what DVC does and how it can fit your scenarios.

The closest analogies to describe the main DVC features are these:

  1. Git for data: Store and share data artifacts (like Git-LFS but without a server) and models, connecting them with a Git repository. Data management meets GitOps!

  2. Makefiles for ML: Describes how data or model artifacts are built from other data and code in a standard format. Now you can version your data pipelines with Git.

  3. Local experiment tracking: Turn your machine into an ML experiment management platform, and collaborate with others using existing Git hosting (Github, Gitlab, etc.).

Git is employed as usual to store and version code (including DVC meta-files as placeholders for data). DVC stores data and model files seamlessly in a cache outside of Git, while preserving almost the same user experience as if they were in the repo. To share and back up the data cache, DVC supports multiple remote storage platforms - any cloud (S3, Azure, Google Cloud, etc.) or on-premise network storage (via SSH, for example).

how_dvc_works

DVC pipelines (computational graphs) connect code and data together. They specify all steps required to produce a model: input dependencies including code, data, commands to run; and output information to be saved.

Last but not least, DVC Experiment Versioning lets you prepare and run a large number of experiments. Their results can be filtered and compared based on hyperparameters and metrics, and visualized with multiple plots.

VS Code Extension

VS Code Extension

To use DVC as a GUI right from your VS Code IDE, install the DVC Extension from the Marketplace. It currently features experiment tracking and data management, and more features (data pipeline support, etc.) are coming soon!

DVC Extension for VS Code

Note: You’ll have to install core DVC on your system separately (as detailed below). The Extension will guide you if needed.

Installation

There are several ways to install DVC: in VS Code; using snap, choco, brew, conda, pip; or with an OS-specific package. Full instructions are available here.

Snapcraft (Linux)

Snapcraft

snap install dvc --classic

This corresponds to the latest tagged release. Add --beta for the latest tagged release candidate, or --edge for the latest main version.

Chocolatey (Windows)

Chocolatey

choco install dvc

Brew (mac OS)

Homebrew

brew install dvc

Anaconda (Any platform)

Conda-forge

conda install -c conda-forge mamba # installs much faster than conda
mamba install -c conda-forge dvc

Depending on the remote storage type you plan to use to keep and share your data, you might need to install optional dependencies: dvc-s3, dvc-azure, dvc-gdrive, dvc-gs, dvc-oss, dvc-ssh.

PyPI (Python)

PyPI

pip install dvc

Depending on the remote storage type you plan to use to keep and share your data, you might need to specify one of the optional dependencies: s3, gs, azure, oss, ssh. Or all to include them all. The command should look like this: pip install 'dvc[s3]' (in this case AWS S3 dependencies such as boto3 will be installed automatically).

To install the development version, run:

pip install git+git://github.com/iterative/dvc

Package (Platform-specific)

deb|pkg|rpm|exe

Self-contained packages for Linux, Windows, and Mac are available. The latest version of the packages can be found on the GitHub releases page.

Ubuntu / Debian (deb)

sudo wget https://dvc.org/deb/dvc.list -O /etc/apt/sources.list.d/dvc.list
wget -qO - https://dvc.org/deb/iterative.asc | sudo apt-key add -
sudo apt update
sudo apt install dvc

Fedora / CentOS (rpm)

sudo wget https://dvc.org/rpm/dvc.repo -O /etc/yum.repos.d/dvc.repo
sudo rpm --import https://dvc.org/rpm/iterative.asc
sudo yum update
sudo yum install dvc

Contributing

Code Climate

Contributions are welcome! Please see our Contributing Guide for more details. Thanks to all our contributors!

Contributors

Community and Support

Citation

DOI

Iterative, DVC: Data Version Control - Git for Data & Models (2020) DOI:10.5281/zenodo.012345.

Barrak, A., Eghan, E.E. and Adams, B. On the Co-evolution of ML Pipelines and Source Code - Empirical Study of DVC Projects , in Proceedings of the 28th IEEE International Conference on Software Analysis, Evolution, and Reengineering, SANER 2021. Hawaii, USA.

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

dvc-3.33.4.tar.gz (575.8 kB view details)

Uploaded Source

Built Distribution

dvc-3.33.4-py3-none-any.whl (447.3 kB view details)

Uploaded Python 3

File details

Details for the file dvc-3.33.4.tar.gz.

File metadata

  • Download URL: dvc-3.33.4.tar.gz
  • Upload date:
  • Size: 575.8 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/4.0.2 CPython/3.11.7

File hashes

Hashes for dvc-3.33.4.tar.gz
Algorithm Hash digest
SHA256 2458852fc21762ed8384073e17575f3f7b60cdd22a31a7d1a55083a89ede8dd9
MD5 92b82700ed39392739e28bfa06ba29b1
BLAKE2b-256 f9c2831c3a887ee068d57e28444f22683618aa9cf3de3d320b8741d4fe996333

See more details on using hashes here.

File details

Details for the file dvc-3.33.4-py3-none-any.whl.

File metadata

  • Download URL: dvc-3.33.4-py3-none-any.whl
  • Upload date:
  • Size: 447.3 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/4.0.2 CPython/3.11.7

File hashes

Hashes for dvc-3.33.4-py3-none-any.whl
Algorithm Hash digest
SHA256 130881585e4d96b1c7ed29b15466bbad70add00ad8823a2b5573fa7702f0ef3a
MD5 4fbdf8dc70f258f61219e1ec4f901d81
BLAKE2b-256 d9e8956703e324eba06337d775c5416a185bc2561902c384846d2e6761b90aed

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page