Skip to content

Latest commit

 

History

History
160 lines (123 loc) · 14.6 KB

README.md

File metadata and controls

160 lines (123 loc) · 14.6 KB

Flytekit Python Plugins

All the Flytekit plugins maintained by the core team are added here. It is not necessary to add plugins here, but this is a good starting place.

Currently Available Plugins 🔌

Plugin Installation Description Version Type
AWS SageMaker bash pip install flytekitplugins-awssagemaker Deploy SageMaker models and manage inference endpoints with ease. PyPI version fury.io Flytekit-only
dask bash pip install flytekitplugins-dask Installs SDK to author dask jobs that can be executed natively on Kubernetes using the Flyte backend plugin PyPI version fury.io Backend
Hive Queries bash pip install flytekitplugins-hive Installs SDK to author Hive Queries that can be executed on a configured hive backend using Flyte backend plugin PyPI version fury.io Backend
K8s distributed PyTorch Jobs bash pip install flytekitplugins-kfpytorch Installs SDK to author Distributed pyTorch Jobs in python using Kubeflow PyTorch Operator PyPI version fury.io Backend
K8s native tensorflow Jobs bash pip install flytekitplugins-kftensorflow Installs SDK to author Distributed tensorflow Jobs in python using Kubeflow Tensorflow Operator PyPI version fury.io Backend
K8s native MPI Jobs bash pip install flytekitplugins-kfmpi Installs SDK to author Distributed MPI Jobs in python using Kubeflow MPI Operator PyPI version fury.io Backend
Papermill based Tasks bash pip install flytekitplugins-papermill Execute entire notebooks as Flyte Tasks and pass inputs and outputs between them and python tasks PyPI version fury.io Flytekit-only
Pod Tasks bash pip install flytekitplugins-pod Installs SDK to author Pods in python. These pods can have multiple containers, use volumes and have non exiting side-cars PyPI version fury.io Flytekit-only
spark bash pip install flytekitplugins-spark Installs SDK to author Spark jobs that can be executed natively on Kubernetes with a supported backend Flyte plugin PyPI version fury.io Backend
AWS Athena Queries bash pip install flytekitplugins-athena Installs SDK to author queries executed on AWS Athena PyPI version fury.io Backend
DOLT bash pip install flytekitplugins-dolt Read & write dolt data sets and use dolt tables as native types PyPI version fury.io Flytekit-only
Pandera bash pip install flytekitplugins-pandera Use Pandera schemas as native Flyte types, which enable data quality checks. PyPI version fury.io Flytekit-only
SQLAlchemy bash pip install flytekitplugins-sqlalchemy Write queries for any database that supports SQLAlchemy PyPI version fury.io Flytekit-only
Great Expectations bash pip install flytekitplugins-great-expectations Enforce data quality for various data types within Flyte PyPI version fury.io Flytekit-only
Snowflake bash pip install flytekitplugins-snowflake Use Snowflake as a 'data warehouse-as-a-service' within Flyte PyPI version fury.io Backend
dbt bash pip install flytekitplugins-dbt Run dbt within Flyte PyPI version fury.io Flytekit-only
Huggingface bash pip install flytekitplugins-huggingface Read & write Hugginface Datasets as Flyte StructuredDatasets PyPI version fury.io Flytekit-only
DuckDB bash pip install flytekitplugins-duckdb Run analytical workloads with ease using DuckDB PyPI version fury.io Flytekit-only
ChatGPT bash pip install flytekitplugins-openai Interact with OpenAI's ChatGPT. PyPI version fury.io Flytekit-only
OpenAI Batch bash pip install flytekitplugins-openai Submit requests to OpenAI for asynchronous batch processing. PyPI version fury.io Flytekit-only

Have a Plugin Idea? 💡

Please file an issue.

Development 💻

Flytekit plugins are structured as micro-libs and can be authored in an independent repository.

Refer to the Python microlibs blog to understand the idea of microlibs.

The plugins maintained by the core team can be found in this repository and provide a simple way of discovery.

Unit tests 🧪

Plugins should have their own unit tests.

Guidelines 📜

Some guidelines to help you write the Flytekit plugins better.

  1. The folder name has to be flytekit-*, e.g., flytekit-hive. In case you want to group for a specific service, then use flytekit-aws-athena.

  2. Flytekit plugins use a concept called Namespace packages, and thus, the package structure is essential.

    Please use the following Python package structure:

    flytekit-myplugin/
       - README.md
       - setup.py
       - flytekitplugins/
           - myplugin/
              - __init__.py
       - tests
           - __init__.py
    

    NOTE: the inner package flytekitplugins DOES NOT have an __init__.py file.

  3. The published packages have to be named flytekitplugins-{package-name}, where {package-name} is a unique identifier for the plugin.

  4. The setup.py file has to have the following template. You can use it as is by editing the TODO sections.

from setuptools import setup

# TODO put the plugin name here
PLUGIN_NAME = "<plugin-name e.g. pandera>"

# TODO decide if the plugin is regular or `data`
# for regular plugins
microlib_name = f"flytekitplugins-{PLUGIN_NAME}"
# For data/persistence plugins
# microlib_name = f"flytekitplugins-data-{PLUGIN_NAME}"

# TODO add additional requirements
plugin_requires = ["flytekit>=1.1.0b0,<2.0.0, "<other requirements>"]

__version__ = "0.0.0+develop"

setup(
    name=microlib_name,
    version=__version__,
    author="flyteorg",
    author_email="[email protected]",
    # TODO Edit the description
    description="My awesome plugin.....",
    # TODO alter the last part of the following URL
    url="https://github.com/flyteorg/flytekit/tree/master/plugins/flytekit-...",
    long_description=open("README.md").read(),
    long_description_content_type="text/markdown",
    namespace_packages=["flytekitplugins"],
    packages=[f"flytekitplugins.{PLUGIN_NAME}"],
    install_requires=plugin_requires,
    license="apache2",
    python_requires=">=3.9",
    classifiers=[
        "Intended Audience :: Science/Research",
        "Intended Audience :: Developers",
        "License :: OSI Approved :: Apache Software License",
        "Programming Language :: Python :: 3.9",
        "Programming Language :: Python :: 3.10",
        "Topic :: Scientific/Engineering",
        "Topic :: Scientific/Engineering :: Artificial Intelligence",
        "Topic :: Software Development",
        "Topic :: Software Development :: Libraries",
        "Topic :: Software Development :: Libraries :: Python Modules",
    ],
    # TODO OPTIONAL
    # FOR Plugins where auto-loading on installation is desirable, please uncomment this line and ensure that the
    # __init__.py has the right modules available to be loaded, or point to the right module
    # entry_points={"flytekit.plugins": [f"{PLUGIN_NAME}=flytekitplugins.{PLUGIN_NAME}"]},
)
  1. Each plugin should have a README.md, which describes how to install it with a simple example. For example, refer to flytekit-greatexpectations' README.

  2. Each plugin should have its own tests' package. NOTE: tests folder should have an __init__.py file.

  3. There may be some cases where you might want to auto-load some of your modules when the plugin is installed. This is especially true for data-plugins and type-plugins. In such a case, you can add a special directive in the setup.py which will instruct Flytekit to automatically load the prescribed modules.

    Following shows an excerpt from the flytekit-data-fsspec plugin's setup.py file.

setup(
    entry_points={"flytekit.plugins": [f"{PLUGIN_NAME}=flytekitplugins.{PLUGIN_NAME}"]},
)

Flytekit Version Pinning

Currently we advocate pinning to minor releases of flytekit. To bump the pins across the board, cd plugins/ and then update the command below with the appropriate range and run

for f in $(ls **/setup.py); do sed -i "s/flytekit>.*,<1.1/flytekit>=1.1.0b0,<1.2/" $f; done

Try using gsed instead of sed if you are on a Mac. Also this only works of course for setup files that start with the version in your sed command. There may be plugins that have different pins to start out with.

References 📚

  • Example of a simple Python task that allows adding only Python side functionality: flytekit-greatexpectations
  • Example of a TypeTransformer or a Type Plugin: flytekit-pandera. These plugins add new types to Flyte and tell Flyte how to transform them and add additional features through types. Flyte is a multi-lang system, and type transformers allow marshaling between Flytekit and backend and other languages.
  • Example of TaskTemplate plugin which also allows plugin writers to supply a prebuilt container for runtime: flytekit-sqlalchemy
  • Example of a SQL backend plugin where the actual query invocation is done by a backend plugin: flytekit-snowflake
  • Example of a Meta plugin that can wrap other tasks: flytekit-papermill
  • Example of a plugin that modifies the execution command: flytekit-spark
  • Example that allows executing the user container with some other context modifications: flytekit-kf-tensorflow
  • Example of a Persistence Plugin that allows data to be stored to different persistence layers: flytekit-data-fsspec