Agent skill

async-jobs

Async job processing patterns for background tasks, Celery workflows, task scheduling, retry strategies, and distributed task execution. Use when implementing background job processing, task queues, or scheduled task systems.

Stars 143
Forks 15

Install this agent skill to your Project

npx add-skill https://github.com/yonatangross/orchestkit/tree/main/plugins/ork/skills/async-jobs

Metadata

Additional technical details for this skill

category
workflow-automation

SKILL.md

Async Jobs

Patterns for background task processing with Celery, ARQ, and Redis. Covers task queues, canvas workflows, scheduling, retry strategies, rate limiting, and production monitoring. Each category has individual rule files in references/ loaded on-demand.

Quick Reference

Category Rules Impact When to Use
Configuration celery-config HIGH Celery app setup, broker, serialization, worker tuning
Task Routing task-routing HIGH Priority queues, multi-queue workers, dynamic routing
Canvas Workflows canvas-workflows HIGH Chain, group, chord, nested workflows
Retry Strategies retry-strategies HIGH Exponential backoff, idempotency, dead letter queues
Scheduling scheduled-tasks MEDIUM Celery Beat, crontab, database-backed schedules
Monitoring monitoring-health MEDIUM Flower, custom events, health checks, metrics
Result Backends result-backends MEDIUM Redis results, custom states, progress tracking
ARQ Patterns arq-patterns MEDIUM Async Redis Queue for FastAPI, lightweight jobs
Temporal Workflows temporal-workflows HIGH Durable workflow definitions, sagas, signals, queries
Temporal Activities temporal-activities HIGH Activity patterns, workers, heartbeats, testing

Total: 10 rules across 9 categories

Quick Start

python
@app.task(bind=True, max_retries=3, default_retry_delay=60)
def process_payment(self, order_id: str):
    try:
        return gateway.charge(order_id)
    except TransientError as exc:
        raise self.retry(exc=exc, countdown=2 ** self.request.retries * 60)

Load more examples: Read("${CLAUDE_SKILL_DIR}/references/quick-start-examples.md") for Celery retry task and ARQ/FastAPI integration patterns.

Configuration

Production Celery app configuration with secure defaults and worker tuning.

Key Patterns

  • JSON serialization with task_serializer="json" for safety
  • Late acknowledgment with task_acks_late=True to prevent task loss on crash
  • Time limits with both task_time_limit (hard) and task_soft_time_limit (soft)
  • Fair distribution with worker_prefetch_multiplier=1
  • Reject on lost with task_reject_on_worker_lost=True

Key Decisions

Decision Recommendation
Serializer JSON (never pickle)
Ack mode Late ack (task_acks_late=True)
Prefetch 1 for fair, 4-8 for throughput
Time limit soft < hard (e.g., 540/600)
Timezone UTC always

Task Routing

Priority queue configuration with multi-queue workers and dynamic routing.

Key Patterns

  • Named queues for critical/high/default/low/bulk separation
  • Redis priority with queue_order_strategy: "priority" and 0-9 levels
  • Task router classes for dynamic routing based on task attributes
  • Per-queue workers with tuned concurrency and prefetch settings
  • Content-based routing for dynamic workflow dispatch

Key Decisions

Decision Recommendation
Queue count 3-5 (critical/high/default/low/bulk)
Priority levels 0-9 with Redis x-max-priority
Worker assignment Dedicated workers per queue
Prefetch 1 for critical, 4-8 for bulk
Routing Router class for 5+ routing rules

Canvas Workflows

Celery canvas primitives for sequential, parallel, and fan-in/fan-out workflows.

Key Patterns

  • Chain for sequential ETL pipelines with result passing
  • Group for parallel execution of independent tasks
  • Chord for fan-out/fan-in with aggregation callback
  • Immutable signatures (si()) for steps that ignore input
  • Nested workflows combining groups inside chains
  • Link error callbacks for workflow-level error handling

Key Decisions

Decision Recommendation
Sequential Chain with s()
Parallel Group for independent tasks
Fan-in Chord (all must succeed for callback)
Ignore input Use si() immutable signature
Error in chain Reject stops chain, retry continues
Partial failures Return error dict in chord tasks

Retry Strategies

Retry patterns with exponential backoff, idempotency, and dead letter queues.

Key Patterns

  • Exponential backoff with retry_backoff=True and retry_backoff_max
  • Jitter with retry_jitter=True to prevent thundering herd
  • Idempotency keys in Redis to prevent duplicate processing
  • Dead letter queues for failed tasks requiring manual review
  • Task locking to prevent concurrent execution of singleton tasks
  • Base task classes with shared retry configuration

Key Decisions

Decision Recommendation
Retry delay Exponential backoff with jitter
Max retries 3-5 for transient, 0 for permanent
Idempotency Redis key with TTL
Failed tasks DLQ for manual review
Singleton Redis lock with TTL

Scheduling

Celery Beat periodic task configuration with crontab, database-backed schedules, and overlap prevention.

Key Patterns

  • Crontab for time-based schedules (daily, weekly, monthly)
  • Interval for fixed-frequency tasks (every N seconds)
  • Database scheduler with django-celery-beat for dynamic schedules
  • Schedule locks to prevent overlapping long-running scheduled tasks
  • Adaptive polling with self-rescheduling tasks

Key Decisions

Decision Recommendation
Schedule type Crontab for time-based, interval for frequency
Dynamic Database scheduler (django-celery-beat)
Overlap Redis lock with timeout
Beat process Separate process (not embedded)
Timezone UTC always

Monitoring

Production monitoring with Flower, custom signals, health checks, and Prometheus metrics.

Key Patterns

  • Flower dashboard for real-time task monitoring
  • Celery signals (task_prerun, task_postrun, task_failure) for metrics
  • Health check endpoint verifying broker connection and active workers
  • Queue depth monitoring for autoscaling decisions
  • Beat monitoring for scheduled task dispatch tracking

Key Decisions

Decision Recommendation
Dashboard Flower with persistent storage
Metrics Prometheus via celery signals
Health Broker + worker + queue depth
Alerting Signal on task_failure
Autoscale Queue depth > threshold

Result Backends

Task result storage, custom states, and progress tracking patterns.

Key Patterns

  • Redis backend for task status and small results
  • Custom task states (VALIDATING, PROCESSING, UPLOADING) for progress
  • update_state() for real-time progress reporting
  • S3/database for large result storage (never Redis)
  • AsyncResult for querying task state and progress

Key Decisions

Decision Recommendation
Status storage Redis result backend
Large results S3 or database (never Redis)
Progress Custom states with update_state()
Result query AsyncResult with state checks

ARQ Patterns

Lightweight async Redis Queue for FastAPI and simple background tasks.

Key Patterns

  • Native async/await with arq for FastAPI integration
  • Worker lifecycle with startup/shutdown hooks for resource management
  • Job enqueue from FastAPI routes with enqueue_job()
  • Job status tracking with Job.status() and Job.result()
  • Delayed tasks with _delay=timedelta() for deferred execution

Key Decisions

Decision Recommendation
Simple async ARQ (native async)
Complex workflows Celery (chains, chords)
In-process quick FastAPI BackgroundTasks
LLM workflows LangGraph (not Celery)

Tool Selection

Load: Read("${CLAUDE_SKILL_DIR}/references/quick-start-examples.md") for the full tool comparison table (ARQ, Celery, RQ, Dramatiq, FastAPI BackgroundTasks).

Anti-Patterns (FORBIDDEN)

Load details: Read("${CLAUDE_SKILL_DIR}/references/anti-patterns.md") for full list.

Key rules: never run long tasks in request handlers, never block on results inside tasks, never store large results in Redis, always use idempotency for retried tasks.

Temporal Workflows

Durable execution engine for reliable distributed applications with Temporal.io.

Key Patterns

  • Workflow definitions with @workflow.defn and deterministic code
  • Saga pattern with compensation for multi-step transactions
  • Signals and queries for external interaction with running workflows
  • Timers with workflow.wait_condition() for human-in-the-loop
  • Parallel activities via asyncio.gather inside workflows

Key Decisions

Decision Recommendation
Workflow ID Business-meaningful, idempotent
Determinism Use workflow.random(), workflow.now()
I/O Always via activities, never directly

Temporal Activities

Activity and worker patterns for Temporal.io I/O operations.

Key Patterns

  • Activity definitions with @activity.defn for all I/O
  • Heartbeating for long-running activities (> 60s)
  • Error classification with ApplicationError(non_retryable=True) for business errors
  • Worker configuration with dedicated task queues
  • Testing with WorkflowEnvironment.start_local()

Key Decisions

Decision Recommendation
Activity timeout start_to_close for most cases
Error handling Non-retryable for business errors
Testing WorkflowEnvironment for integration tests

Related Skills

  • ork:python-backend - FastAPI, asyncio, SQLAlchemy patterns
  • ork:langgraph - LangGraph workflow patterns (use for LLM workflows, not Celery)
  • ork:distributed-systems - Resilience patterns, circuit breakers
  • ork:monitoring-observability - Metrics and alerting

Capability Details

Load details: Read("${CLAUDE_SKILL_DIR}/references/capability-details.md") for full keyword index and problem-solution mapping across all 8 capabilities.

Expand your agent's capabilities with these related and highly-rated skills.

yonatangross/orchestkit

expect

Diff-aware AI browser testing — analyzes git changes, generates targeted test plans, and executes them via agent-browser. Reads git diff to determine what changed, maps changes to affected pages via route map, generates a test plan scoped to the diff, and runs it with pass/fail reporting. Use when testing UI changes, verifying PRs before merge, running regression checks on changed components, or validating that recent code changes don't break the user-facing experience.

143 15
Explore
yonatangross/orchestkit

github-operations

GitHub CLI operations for issues, PRs, milestones, and Projects v2. Covers gh commands, REST API patterns, and automation scripts. Use when managing GitHub issues, PRs, milestones, or Projects with gh.

143 15
Explore
yonatangross/orchestkit

chain-patterns

Chain patterns for CC 2.1.71 pipelines — MCP detection, handoff files, checkpoint-resume, worktree agents, CronCreate monitoring. Use when building multi-phase pipeline skills. Loaded via skills: field by pipeline skills (fix-issue, implement, brainstorm, verify). Not user-invocable.

143 15
Explore
yonatangross/orchestkit

storybook-mcp-integration

Storybook MCP server integration for component-aware AI development. Covers 6 tools across 3 toolsets (dev, docs, testing): component discovery via list-all-documentation/get-documentation, story previews via preview-stories, and automated testing via run-story-tests. Use when generating components that should reuse existing Storybook components, running component tests via MCP, or previewing stories in chat.

143 15
Explore
yonatangross/orchestkit

component-search

Search 21st.dev component registry for production-ready React components. Finds components by natural language description, filters by framework and style system, returns ranked results with install instructions. Use when looking for UI components, finding alternatives to existing components, or sourcing design system building blocks.

143 15
Explore
yonatangross/orchestkit

ai-ui-generation

AI-assisted UI generation patterns for json-render, v0, Bolt, and Cursor workflows. Covers prompt engineering for component generation, review checklists for AI-generated code, design token injection, refactoring for design system conformance, and CI gates for quality assurance. Use when generating UI components with AI tools, rendering multi-surface MCP visual output, reviewing AI-generated code, or integrating AI output into design systems.

143 15
Explore

Didn't find tool you were looking for?

Be as detailed as possible for better results