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Provide classes for DBnomics entities and a storage abstraction

Project description

DBnomics Data Model

In DBnomics, once data has been downloaded from providers, it is converted in a common format: the DBnomics data model.

This Python package provides:

  • model classes defining DBnomics entities (provider, dataset, series, etc.) with their business logic and validation rules
  • a data storage abstraction to load and save those entities
  • adapters implementing the data storage abstraction (e.g. dbnomics_data_model.storage.adapters.filesystem)

This package is used in particular by the convert script of fetchers in order to save data.

Documentation

Please read https://db.nomics.world/docs/data-model/

Validate data

To validate a directory containing data written by (or compatible with) the "filesystem" adapter:

dbnomics-validate-storage <storage_dir>

This script outputs the data validation errors it finds.

Code quality

Install the development dependencies:

pip install -e .[dev]

Run linter

flake8 .

Run type check

mypy -p dbnomics_data_model

Run tests

pytest

Run code coverage

coverage run
coverage html

Then open htmlcov/index.html in your browser.

Publish a new version

For package maintainers:

git tag x.y.z
git push
git push --tags

GitLab CI will publish the package to https://pypi-hypernode.com/project/dbnomics-data-model/ (see .gitlab-ci.yml).

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