Skip to main content

Common task classes used by the DKIST science data processing pipelines

Project description

This repository works in concert with dkist-processing-core and dkist-processing-*instrument* to form the DKIST calibration processing stack.

Usage

The classes in this repository should be used as the base of any DKIST processing pipeline tasks. Science tasks should subclass ScienceTaskL0ToL1Base.

Each class is built on an abstract base class with the run method left for a developer to fill out with the required steps that the task should take. This class is then used as the callable object for the workflow and scheduling engine.

Example

from dkist_processing_common.tasks.base import ScienceTaskL0ToL1Base


class RemoveArtifacts(ScienceTaskL0ToL1Base):
    def run(self):
        # task code here
        total = 2 + 5

Deployment

dkist-processing-common is deployed to PyPI

Development

There are two prerequisites for test execution on a local machine:

  • Redis. A running instance of redis on the local machine is required. The tests will use the default host ip of localhost and port of 6379 to connect to the database.

  • RabbitMQ. A running instance of rabbitmq on the local machine is required. The tests will use the default host of localhost and a port of 5672 to connect to the interservice bus.

To run the tests locally, clone the repository and install the package in editable mode with the test extras.

git clone git@bitbucket.org:dkistdc/dkist-processing-common.git
cd dkist-processing-common
pre-commit install
pip install -e .[test]
# Redis must be running
pytest -v --cov dkist_processing_common

Changelog

When you make any change to this repository it MUST be accompanied by a changelog file. The changelog for this repository uses the towncrier package. Entries in the changelog for the next release are added as individual files (one per change) to the changelog/ directory.

Writing a Changelog Entry

A changelog entry accompanying a change should be added to the changelog/ directory. The name of a file in this directory follows a specific template:

<PULL REQUEST NUMBER>.<TYPE>[.<COUNTER>].rst

The fields have the following meanings:

  • <PULL REQUEST NUMBER>: This is the number of the pull request, so people can jump from the changelog entry to the diff on BitBucket.

  • <TYPE>: This is the type of the change and must be one of the values described below.

  • <COUNTER>: This is an optional field, if you make more than one change of the same type you can append a counter to the subsequent changes, i.e. 100.bugfix.rst and 100.bugfix.1.rst for two bugfix changes in the same PR.

The list of possible types is defined the the towncrier section of pyproject.toml, the types are:

  • feature: This change is a new code feature.

  • bugfix: This is a change which fixes a bug.

  • doc: A documentation change.

  • removal: A deprecation or removal of public API.

  • misc: Any small change which doesn’t fit anywhere else, such as a change to the package infrastructure.

Rendering the Changelog at Release Time

When you are about to tag a release first you must run towncrier to render the changelog. The steps for this are as follows:

  • Run towncrier build –version vx.y.z using the version number you want to tag.

  • Agree to have towncrier remove the fragments.

  • Add and commit your changes.

  • Tag the release.

NOTE: If you forget to add a Changelog entry to a tagged release (either manually or automatically with towncrier) then the Bitbucket pipeline will fail. To be able to use the same tag you must delete it locally and on the remote branch:

# First, actually update the CHANGELOG and commit the update
git commit

# Delete tags
git tag -d vWHATEVER.THE.VERSION
git push --delete origin vWHATEVER.THE.VERSION

# Re-tag with the same version
git tag vWHATEVER.THE.VERSION
git push --tags origin main

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

dkist_processing_common-10.4.0rc1.tar.gz (497.7 kB view details)

Uploaded Source

Built Distribution

dkist_processing_common-10.4.0rc1-py3-none-any.whl (526.8 kB view details)

Uploaded Python 3

File details

Details for the file dkist_processing_common-10.4.0rc1.tar.gz.

File metadata

File hashes

Hashes for dkist_processing_common-10.4.0rc1.tar.gz
Algorithm Hash digest
SHA256 68e618799ccfb0ed8deb12372ddc8332aa1cd53a334d29ea1ec6bc161015b535
MD5 8d0d0412de47ce3e5340637c23fa1097
BLAKE2b-256 a3f71a944807ac9a635aacc09c56b5377cd9392903983324307744e1ced9677d

See more details on using hashes here.

File details

Details for the file dkist_processing_common-10.4.0rc1-py3-none-any.whl.

File metadata

File hashes

Hashes for dkist_processing_common-10.4.0rc1-py3-none-any.whl
Algorithm Hash digest
SHA256 3c434e14a1a015c8031bac5a33315d0ca54220bea7228db67c9ccb0b2ca48888
MD5 a09f09b3ca1fc35aa462eb718c652b24
BLAKE2b-256 812046d262504d97299430f1d03349b094b53a7ba043f23b39816945eb953486

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