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A simple, lightweight, database-only, worker library in Python

Project description

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Workcraft

A simple, lightweight, database-only, worker library in Python

workcraft is a simple, lightweight, database-only worker library in Python with a MySQL database as the single source of truth.

workcraft adresses some of the pain points of using Celery, namely its incapability to handle long-running tasks and the fact that you need a message broker and that also that sometimes the workers aren't doing the tasks as you would expect them to.

All workcraft needs is a running MySQL database, which means you could in theory scale workcraft both vertically (get more database resources) and horizontally (get more databases). But so far, I've not tried scaling it that way.

workcraft is not the best in sitations where you need extreme precision and sub-second latency/wait times before a task is fetched and processed.

But if it's OK for you that your workers take at least 1 second to fetch your task AND you want a clear overview of your tasks and workers (using a database GUI for example), then workcraft is ideal for you.

Installation

Run

pip install workcraft

Getting started

First, you need a running MySQL database. Then, for one time, you need to setup all the tables and events. For that, first you need to create a .env file and add some variables in there:

WK_DB_HOST="127.0.0.1"
WK_DB_PORT=3306
WK_DB_USER="root"
WK_DB_PASS="workcraft"
WK_DB_NAME="workcraft"

(Adjust to your settings of course)

Then, run:

python3 -m workcraft setup_database_tables

This command will take the connection parameters from your .env file - but it's not strictly required. You can also pass it those as parameters. Here are the args of the setup_database_tables function:

def setup_database_tables(
    db_host: str = "127.0.0.1",
    db_port: int = 3306,
    db_user: str = "root",
    db_name: str = "workcraft",
    db_password: str | None = None,
    read_from_env: bool = True,
    drop_tables: bool = False,
):
...

E.g.:

python3 -m workcraft setup_database_tables --read_from_env=False --db_password=test --drop_tables=True

Then, to use workers, implement your worker code:

import asyncio
import random
import time
from multiprocessing import Pool

from loguru import logger
from workcraft.core import workcraft
from workcraft.db import get_db_config


workcraft = workcraft()

global_counter = 0


@workcraft.setup_handler()
def setup_handler():
    global global_counter
    global_counter = 1000
    logger.info("Setting up the worker!")


@workcraft.task("simple_task")
def simple_task(a: int, b: int, c: int) -> int:
    global global_counter
    global_counter += 1
    time.sleep(1)
    logger.info(global_counter)
    # raise ValueError("Random error!")
    return a + b + c


@workcraft.postrun_handler()
def postrun_handler(task_id, task_name, result, status):
    logger.info(
        f"Postrun handler called for {task_id} and {task_name}! Got result: {result} and status {status}"
    )


def get_random_number():
    logger.info("Getting random number...")
    time.sleep(random.randint(5, 10))
    return random.randint(1, 100)


@workcraft.task("complex_task_1")
def parallel_task():
    num_processes = 8
    n_random_numbers = 20
    with Pool(processes=num_processes) as pool:
        pool.starmap(
            get_random_number,
            [() for _ in range(n_random_numbers)],
        )


async def main():
    n_tasks = 1

    for _ in range(n_tasks):
        a = random.randint(1, 100)
        b = random.randint(1, 100)
        c = random.randint(1, 100)

        workcraft.send_task_sync(
            "simple_task",
            [a, b],
            task_kwargs={"c": c},
            retry_on_failure=True,
            db_config=get_db_config(),
        )
        # But you could also just directly input the data into the database


if __name__ == "__main__":
    asyncio.run(main())

To run a worker then, you would run:

python3 -m workcraft peon --workcraft_path=example.workcraft --worker-id=test1

If you then execute example.py, you will add a task into the queue and then see as the worker processes that task.

Configuration

If you have a workcraft.config.json file, those settings will be used when setting up the tables as well as other, worker-related settings:

{
  "DB_PEON_HEARTBEAT_INTERVAL": 5,
  "DB_POLLING_INTERVAL": 5,
  "DB_SETUP_BACKOFF_MULTIPLIER_SECONDS": 30,
  "DB_SETUP_BACKOFF_MAX_SECONDS": 3600,
  "DB_SETUP_RUN_SELF_CORRECT_TASK_INTERVAL": 10,
  "DB_SETUP_RUN_REOPEN_FAILED_TASK_INTERVAL": 10,
  "DB_SETUP_WAIT_TIME_BEFORE_WORKER_DECLARED_DEAD": 60,
  "DB_SETUP_CHECK_DEAD_WORKER_INTERVAL": 10
}

DB_PEON_HEARTBEAT_INTERVAL: This is the interval at which the peon sends a heartbeat to the database. DB_POLLING_INTERVAL: This is the interval at which the peon polls the database for new tasks. DB_SETUP_BACKOFF_MULTIPLIER_SECONDS: This is the multiplier for the exponential backoff algorithm. DB_SETUP_BACKOFF_MAX_SECONDS: This is the maximum backoff time for the exponential backoff algorithm. DB_SETUP_RUN_SELF_CORRECT_TASK_INTERVAL: This is the interval at which the database runs the self-correct task. DB_SETUP_RUN_REOPEN_FAILED_TASK_INTERVAL: This is the interval at which the database reopens failed tasks. DB_SETUP_WAIT_TIME_BEFORE_WORKER_DECLARED_DEAD: This is the time the database waits before declaring a worker dead. DB_SETUP_CHECK_DEAD_WORKER_INTERVAL: This is the interval at which the database checks for dead workers.

The configs with DB_SETUP_ in the beginning are only used during the setup of the database. In other words, they are only used once. The first two are using during runtime.

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