Skip to main content

PypeLine - Python pipelines for the Real World

Project description

______ __   ________  _____  _     _____  _   _  _____ 
| ___ \\ \ / /| ___ \|  ___|| |   |_   _|| \ | ||  ___|
| |_/ / \ V / | |_/ /| |__  | |     | |  |  \| || |__  
|  __/   \ /  |  __/ |  __| | |     | |  | . ` ||  __| 
| |      | |  | |    | |___ | |_____| |_ | |\  || |___ 
\_|      \_/  \_|    \____/ \_____/\___/ \_| \_/\____/                                 

Overview

PypeLine is a versatile open-source library designed to streamline the management of data workflows and APIs. With PypeLine, you can efficiently schedule cron jobs, execute complex Directed Acyclical Graph (DAG) pipelines, and set up a Flask API complete with OpenAPI documentation.

Key Features

  • Cron Job Scheduling: Easily schedule recurring tasks with flexible cron job functionality, ensuring that your processes run reliably at specified intervals.
  • DAG Pipelines: Define and execute DAGs to manage complex data workflows with dependencies. PypeLine handles the execution order and parallelism, ensuring that each task runs in the correct sequence.
  • Flask API with OpenAPI: Quickly configure a RESTful API using Flask, with built-in support for OpenAPI documentation, allowing for clear, standardized documentation of your endpoints.

Requirements

  • RabbitMQ
  • Redis
  • Docker (optional for dev)

Getting Started

Install PypeLines:

pip install scalable-pypeline[flask,web,workers]>=1.2.3

Configure your Flask project (app.py)

from flask import Flask
from pypeline.flask import FlaskPypeline
from pypeline_demo.api import bp
from pypeline_demo.config import Config
from pypeline_demo.extensions import dramatiq



def create_app():
    app = Flask(__name__)

    dramatiq.init_app(app)

    # Initialize your app with a configuration
    app.config.from_object(Config)

    pypeline = FlaskPypeline()
    pypeline.init_app(app, init_api=True)

    # Register API blueprints you wish 
    app.extensions["pypeline_core_api"].register_blueprint(bp)
    # Register application blueprints to application
    app.register_blueprint(bp)

    return app


if __name__ == "__main__":
    app = create_app()
    app.run(port=5001)

Configure Dramatiq extension (extensions.py)

from pypeline.dramatiq import Dramatiq


dramatiq = Dramatiq()

Setup your yaml configuration for pypelines (pypeline.yaml)

serviceConfig:
    - name: pipeline-worker
      registeredTasks:
          - handler: pypeline_demo.pipeline.a
          - handler: pypeline_demo.pipeline.b
          - handler: pypeline_demo.pipeline.c
          - handler: pypeline_demo.scheduled_tasks.cron_task

pipelines:
    demo_pipeline:
        name: Demo Pipeline
        description: Pipeline to show examples of DAG Adjacency
        schemaVersion: 1
        config:
            dagAdjacency:
                a:
                    - b
                    - c
            metadata:
                maxRetry: 1
                retryBackoff: 180
                retryBackoffMax: 300
                retryJitter: true
                maxTtl: 10800
                queue: new-queue
            taskDefinitions:
                a:
                    handler: pypeline_demo.pipeline.a
                b:
                    handler:  pypeline_demo.pipeline.b
                c:
                    handler:  pypeline_demo.pipeline.c
scheduledTasks:
    cron-task:
        name: Example cron task
        enabled: true
        config:
            task: pypeline_demo.scheduled_tasks.cron_task
            queue: new-queue
            schedule:
                minute: '*'
                hour: '*'
                dayOfWeek: '*'
                dayOfMonth: '*'
                monthOfYear: '*'
        schemaVersion: 1

Setup your modules to be executed by yaml (pipeline.py && scheduled_tasks.py)

import time


def a(event):
    print("A")


def b(event):
    print("B")
    time.sleep(10)


def c(event):
    print("C")
def cron_task():
    print("HI")

Configure your environment variables (demo.env)

SERMOS_BASE_URL=local
PYPELINE_CLIENT_PKG_NAME=pypeline_demo
REDIS_URL=redis://:password@localhost:6379/0
RABBITMQ_URL=amqp://admin:password@localhost:5672

Start Rabbit & Redis as your message broker and backend results storage. We use docker compose for this.

DEMO PROJECT COMING SOON!

Testing

If you are developing pypeline and want to test this package, install the test dependencies:

$ pip install -e .[test]

Now, run the tests:

$ tox

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

scalable_pypeline-2.1.34.tar.gz (50.0 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

scalable_pypeline-2.1.34-py2.py3-none-any.whl (58.2 kB view details)

Uploaded Python 2Python 3

File details

Details for the file scalable_pypeline-2.1.34.tar.gz.

File metadata

  • Download URL: scalable_pypeline-2.1.34.tar.gz
  • Upload date:
  • Size: 50.0 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.10.9

File hashes

Hashes for scalable_pypeline-2.1.34.tar.gz
Algorithm Hash digest
SHA256 b582c4ae21fdd5ccd1f271c2a6110233d5b2091f72fc1c6a0c3e52332fee6f5e
MD5 f17062f53adc416aa49406b17ec3f456
BLAKE2b-256 a5d00545af96917adb7523c84af1704e3bad59d27c30aa3602d2b48937631d97

See more details on using hashes here.

File details

Details for the file scalable_pypeline-2.1.34-py2.py3-none-any.whl.

File metadata

File hashes

Hashes for scalable_pypeline-2.1.34-py2.py3-none-any.whl
Algorithm Hash digest
SHA256 c3efed2beb74f2dbb0bda18adc1f1231d7424d40728eddd92ac2966c2487c2c2
MD5 72e355302706b4f36d400888a20069b6
BLAKE2b-256 3160b0b3db805effd435bacf5394bd51ab3f52f8cbf20edb3085f04ee6418616

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page