$ dvc init
A few internal files are created that should be added to Git:
$ git status Changes to be committed: new file: .dvc/.gitignore new file: .dvc/config ... $ git commit -m "Initialize DVC"
Now you're ready to DVC!
DVC's features can be grouped into functional components. You can explore them in two independent trails:
Data and model versioning (try this next) is the base layer of DVC for large files, datasets, and machine learning models. Use a regular Git workflow, but without storing large files in the repo (think "Git for data"). Data is stored separately, which allows for efficient sharing.
Data and model access shows how to use data artifacts from outside of the project and how to import data artifacts from another DVC project. This can help to download a specific version of an ML model to a deployment server or import a model to another project.
Data pipelines describe how models and other data artifacts are built, and provide an efficient way to reproduce them. Think "Makefiles for data and ML projects" done right.
Metrics, parameters, and plots can be attached to pipelines. These let you capture, navigate, and evaluate ML projects without leaving Git. Think "Git for machine learning".
Experiments enable exploration, iteration, and comparison across many ML experiments. Track your experiments with automatic versioning and checkpoint logging. Compare differences in parameters, metrics, code, and data. Apply, drop, roll back, resume, or share any experiment.
Visualization compare experiment results visually, track your plots and generate them with library integrations.
New! Once you set up your DVC repository, you can also interact with it using Iterative Studio, the online UI for DVC. Here's a demo of how that looks like!