.claude/skills/ts-celery/SKILL.md
Run background tasks in Python with Celery. Use when a user asks to process tasks asynchronously, schedule periodic jobs, run background workers, build task queues in Python, or offload heavy processing from web requests.
npx skillsauth add eliferjunior/Claude celeryInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
3 of 9 scanners reported clean
Some scanners were skipped, did not run, or reported a non-clean status. Review each row below.
Celery is the standard Python library for distributed task processing. Offload slow operations (email sending, report generation, image processing) from web requests to background workers. Supports task retries, scheduling, rate limiting, and chaining.
pip install celery[redis]
# celery_app.py — Celery application configuration
from celery import Celery
app = Celery(
'myapp',
broker='redis://localhost:6379/0', # message broker
backend='redis://localhost:6379/1', # result storage
)
app.conf.update(
task_serializer='json',
result_serializer='json',
accept_content=['json'],
timezone='UTC',
task_acks_late=True, # ack after processing (safer)
worker_prefetch_multiplier=1, # one task at a time per worker
)
# tasks.py — Background task definitions
from celery_app import app
from celery import shared_task
import time
@app.task(bind=True, max_retries=3, default_retry_delay=60)
def send_welcome_email(self, user_id: int):
"""Send welcome email to new user.
Args:
user_id: Database ID of the newly registered user
"""
try:
user = get_user(user_id)
send_email(
to=user.email,
subject='Welcome!',
body=render_template('welcome.html', user=user),
)
except EmailServiceError as exc:
# Retry with exponential backoff
raise self.retry(exc=exc, countdown=60 * (2 ** self.request.retries))
@app.task(rate_limit='10/m') # max 10 per minute
def process_image(image_path: str, output_path: str):
"""Resize and optimize uploaded image."""
img = Image.open(image_path)
img.thumbnail((1200, 1200))
img.save(output_path, optimize=True, quality=85)
return output_path
@app.task
def generate_report(org_id: int, start_date: str, end_date: str):
"""Generate analytics report (may take several minutes)."""
data = fetch_analytics(org_id, start_date, end_date)
pdf_path = render_pdf_report(data)
notify_user(org_id, pdf_path)
return pdf_path
# In your web handler (Django view, FastAPI endpoint, etc.)
from tasks import send_welcome_email, generate_report
from celery import chain, group
# Fire and forget
send_welcome_email.delay(user.id)
# Get result later
result = generate_report.delay(org.id, '2025-01-01', '2025-01-31')
print(result.status) # PENDING → STARTED → SUCCESS
print(result.get()) # blocks until done
# Chain: task1 result feeds into task2
chain(extract_data.s(url), transform_data.s(), load_data.s())()
# Group: run tasks in parallel
group(process_image.s(path) for path in image_paths)()
celery -A celery_app worker --loglevel=info --concurrency=4
celery -A celery_app beat --loglevel=info # for periodic tasks
task_acks_late=True for reliability — tasks survive worker crashes.bind=True and self.retry() for automatic retry with backoff.celery -A celery_app flower (web dashboard on port 5555).development
Expert guidance for Fireworks AI, the platform for running open-source LLMs (Llama, Mixtral, Qwen, etc.) with enterprise-grade speed and reliability. Helps developers integrate Fireworks' inference API, fine-tune models, and deploy custom model endpoints with function calling and structured output support.
development
Convert any website into clean, structured data with Firecrawl — API-first web scraping service. Use when someone asks to "turn a website into markdown", "scrape website for LLM", "Firecrawl", "extract website content as clean text", "crawl and convert to structured data", or "scrape website for RAG". Covers single-page scraping, full-site crawling, structured extraction, and LLM-ready output.
tools
Expert guidance for Firebase, Google's platform for building and scaling web and mobile applications. Helps developers set up authentication, Firestore/Realtime Database, Cloud Functions, hosting, storage, and analytics using Firebase's SDK and CLI.
development
When the user needs to build file upload functionality for a web application. Use when the user mentions "file upload," "image upload," "upload endpoint," "multipart upload," "presigned URL," "S3 upload," "file validation," "upload to cloud storage," or "accept user files." Handles upload endpoints, file validation (type, size, magic bytes), cloud storage integration, and upload status tracking. For image/video processing after upload, see media-transcoder.