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Conda Environment Management, Builds, and Serve

Project description

Conda Store Server

Documentation Status

PyPI

End users think in terms of environments not packages. The core philosophy of conda-store is to serve identical conda environments in as many ways as possible. Conda Store controls the environment lifecycle: management, builds, and serving of environments.

It manages conda environments by:

  • watching specific files or directories for changes in environment filename specifications
  • provides a REST api for managing environments (which a jupyterlab plugin is being actively developed for)
  • provides a command line utility for interacting with conda-store conda-store env [create, list]
  • provides a web ui to take advantage of many of conda-stores advanced capabilities

It builds conda specifications in a scalable manner using N workers communicating with a database to keep track of queued up environment builds.

It serves conda environments via a filesystem, lockfiles, tarballs, and soon a docker registry. Tarballs and docker images can carry a lot of bandwidth which is why conda-store integrates optionally with s3 to actually serve the blobs.

Terminology

  • An environment is a name associated with an environment specification.

  • A specification is a conda yaml declaration with fields name, channels, and dependencies detailed here

  • For each specification conda-build attempts to build the specification. Upon failure conda-store reschedules the build N times with exponential backoff.

Philosophy

We mentioned above that conda-store was influenced by nix. While conda is not as pure as nix (when it comes to reproducible builds) we can achieve close to the same results with many of the great benefits that nix users achieve. Motivation from this work came from the following projects in no particular order: lorri, nix layered docker images, https://nixos.org/, nixery. You will see bits of each in this work.

  1. specifications are idempotent, created once, and never updated (this means there is no conda install or conda env update). In fact there is only one conda command conda env create -f <specification>.
  2. specifications are named <sha256-hash-of-spec>-<environment-name>. Ensuring every conda environment is unique.
  3. conda environments e.g. <environment-name> is symlinked to a specific conda specification <sha256-hash-of-spec>-<environment-name>.

The benefits of this approach is versioning of environments, heavy caching, and rollbacks to previous environment states.

Development

docker-compose up --build

In order for logs and artifacts to be downloaded properly you will need to set dns host minio -> localhost. The easiest way to do this is via /etc/hosts

...
minio localhost
...

Extension Local Testing

This extension for jupyterlab providees kernel management from within the Jupyter intereface and ecosystem.

NOTE: In nixOS, use conda-shell and this method will work.

cd conda-store
conda env update -f environment.yaml
conda activate conda-store
pip install .
jupyter labextension develop . --overwrite
jlpm run build
jupyter lab

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