Workflow Orchestration Patterns
Design durable workflows with Temporal for distributed systems. Covers workflow vs activity separation, saga patterns, state management, and determinism constraints. Use when building long-running ...
Design durable workflows with Temporal for distributed systems. Covers workflow vs activity separation, saga patterns, state management, and determinism constraints. Use when building long-running processes, distributed transactions, or microservice orchestration.
Install
Quick install
npx skills add https://github.com/wshobson/agents/tree/main/plugins/backend-development/skills/workflow-orchestration-patternsnpx skills add wshobson/agents --skill workflow-orchestration-patterns --agent claude-codenpx skills add wshobson/agents --skill workflow-orchestration-patterns --agent cursornpx skills add wshobson/agents --skill workflow-orchestration-patterns --agent codexnpx skills add wshobson/agents --skill workflow-orchestration-patterns --agent opencodenpx skills add wshobson/agents --skill workflow-orchestration-patterns --agent github-copilotnpx skills add wshobson/agents --skill workflow-orchestration-patterns --agent windsurfMore install options
Shorthand — useful for multi-skill repos:
npx skills add wshobson/agents --skill workflow-orchestration-patternsManual — clone the repo and drop the folder into your agent's skills directory:
git clone https://github.com/wshobson/agents.gitcp -r agents/plugins/backend-development/skills/workflow-orchestration-patterns ~/.claude/skills/Workflow Orchestration Patterns
Master workflow orchestration architecture with Temporal, covering fundamental design decisions, resilience patterns, and best practices for building reliable distributed systems.
When to Use Workflow Orchestration
Ideal Use Cases (Source: docs.temporal.io)
- Multi-step processes spanning machines/services/databases
- Distributed transactions requiring all-or-nothing semantics
- Long-running workflows (hours to years) with automatic state persistence
- Failure recovery that must resume from last successful step
- Business processes: bookings, orders, campaigns, approvals
- Entity lifecycle management: inventory tracking, account management, cart workflows
- Infrastructure automation: CI/CD pipelines, provisioning, deployments
- Human-in-the-loop systems requiring timeouts and escalations
When NOT to Use
- Simple CRUD operations (use direct API calls)
- Pure data processing pipelines (use Airflow, batch processing)
- Stateless request/response (use standard APIs)
- Real-time streaming (use Kafka, event processors)
Detailed patterns and worked examples
Detailed pattern documentation lives in references/details.md. Read that file when the navigation tier above is insufficient.
Best Practices
Workflow Design
- Keep workflows focused - Single responsibility per workflow
- Small workflows - Use child workflows for scalability
- Clear boundaries - Workflow orchestrates, activities execute
- Test locally - Use time-skipping test environment
Activity Design
- Idempotent operations - Safe to retry
- Short-lived - Seconds to minutes, not hours
- Timeout configuration - Always set timeouts
- Heartbeat for long tasks - Report progress
- Error handling - Distinguish retryable vs non-retryable
Common Pitfalls
Workflow Violations:
- Using
datetime.now()instead ofworkflow.now() - Threading or async operations in workflow code
- Calling external APIs directly from workflow
- Non-deterministic logic in workflows
Activity Mistakes:
- Non-idempotent operations (can't handle retries)
- Missing timeouts (activities run forever)
- No error classification (retry validation errors)
- Ignoring payload limits (2MB per argument)
Operational Considerations
Monitoring:
- Workflow execution duration
- Activity failure rates
- Retry attempts and backoff
- Pending workflow counts
Scalability:
- Horizontal scaling with workers
- Task queue partitioning
- Child workflow decomposition
- Activity batching when appropriate
Additional Resources
Official Documentation:
- Temporal Core Concepts: docs.temporal.io/workflows
- Workflow Patterns: docs.temporal.io/evaluate/use-cases-design-patterns
- Best Practices: docs.temporal.io/develop/best-practices
- Saga Pattern: temporal.io/blog/saga-pattern-made-easy
Key Principles:
- Workflows = orchestration, Activities = external calls
- Determinism is non-negotiable for workflows
- Idempotency is critical for activities
- State preservation is automatic
- Design for failure and recovery
SKILL.md source
--- name: workflow-orchestration-patterns description: Design durable workflows with Temporal for distributed systems. Covers workflow vs activity separation, saga patterns, state management, and determinism constraints. Use when building long-running ... --- # Workflow Orchestration Patterns Master workflow orchestration architecture with Temporal, covering fundamental design decisions, resilience patterns, and best practices for building reliable distributed systems. ## When to Use Workflow Orchestration ### Ideal Use Cases (Source: docs.temporal.io) - **Multi-step processes** spanning machines/services/databases - **Distributed transactions** requiring all-or-nothing semantics - **Long-running workflows** (hours to years) with automatic state persistence - **Failure recovery** that must resume from last successful step - **Business processes**: bookings, orders, campaigns, approvals - **Entity lifecycle management**: inventory tracking, account management, cart workflows - **Infrastructure automation**: CI/CD pipelines, provisioning, deployments - **Human-in-the-loop** systems requiring timeouts and escalations ### When NOT to Use - Simple CRUD operations (use direct API calls) - Pure data processing pipelines (use Airflow, batch processing) - Stateless request/response (use standard APIs) - Real-time streaming (use Kafka, event processors) ## Detailed patterns and worked examples Detailed pattern documentation lives in `references/details.md`. Read that file when the navigation tier above is insufficient. ## Best Practices ### Workflow Design 1. **Keep workflows focused** - Single responsibility per workflow 2. **Small workflows** - Use child workflows for scalability 3. **Clear boundaries** - Workflow orchestrates, activities execute 4. **Test locally** - Use time-skipping test environment ### Activity Design 1. **Idempotent operations** - Safe to retry 2. **Short-lived** - Seconds to minutes, not hours 3. **Timeout configuration** - Always set timeouts 4. **Heartbeat for long tasks** - Report progress 5. **Error handling** - Distinguish retryable vs non-retryable ### Common Pitfalls **Workflow Violations**: - Using `datetime.now()` instead of `workflow.now()` - Threading or async operations in workflow code - Calling external APIs directly from workflow - Non-deterministic logic in workflows **Activity Mistakes**: - Non-idempotent operations (can't handle retries) - Missing timeouts (activities run forever) - No error classification (retry validation errors) - Ignoring payload limits (2MB per argument) ### Operational Considerations **Monitoring**: - Workflow execution duration - Activity failure rates - Retry attempts and backoff - Pending workflow counts **Scalability**: - Horizontal scaling with workers - Task queue partitioning - Child workflow decomposition - Activity batching when appropriate ## Additional Resources **Official Documentation**: - Temporal Core Concepts: docs.temporal.io/workflows - Workflow Patterns: docs.temporal.io/evaluate/use-cases-design-patterns - Best Practices: docs.temporal.io/develop/best-practices - Saga Pattern: temporal.io/blog/saga-pattern-made-easy **Key Principles**: 1. Workflows = orchestration, Activities = external calls 2. Determinism is non-negotiable for workflows 3. Idempotency is critical for activities 4. State preservation is automatic 5. Design for failure and recovery
Related skills 6
running-claude-code-via-litellm-copilot
Use when routing Claude Code through a local LiteLLM proxy to GitHub Copilot, reducing direct Anthropic spend, configuring ANTHROPIC_BASE_URL or ANTHROPIC_MODEL overrides, or troubleshooting Copilot proxy setup failures such as model-not-found, no localhost traffic, or GitHub 401/403 auth errors.
skills-cli
Use when users ask to discover, install, list, check, update, remove, back up, restore, sync, or initialize Agent Skills, mention `bunx skills`, `npx skills`, `skills.sh`, or `skills-lock.json`, ask "find a skill for X", or want help extending agent capabilities with installable skills.
repo-intake-and-plan
Narrow RigorPilot helper for README-first deep learning repo reproduction. Use when the task is specifically to scan a repository, read the README and common project files, extract documented commands, classify inference, evaluation, and training candidates, and return the smallest trustworthy reproduction plan to the main orchestrator. Do not use for environment setup, asset download, command execution, final reporting, paper lookup, or end-to-end orchestration.
image-to-video
Animate any still image on RunComfy — this skill is a smart router that matches the user's intent to the right i2v model in the RunComfy catalog. Picks HappyHorse 1.0 I2V (Arena #1, native audio, identity preservation) for general animations, Wan 2.7 with `audio_url` for custom-voiceover lip-sync, or Seedance 2.0 Pro for multi-modal animation from image + reference video + reference audio. Bundles each model's documented prompting patterns so the caller gets sharper output without burning ite...
video-edit
Edit existing video on RunComfy — this skill is a smart router that matches the user's intent to the right edit model in the RunComfy catalog. Picks Wan 2.7 Edit-Video (general restyle / background swap / packaging swap, identity + motion preservation), Kling 2.6 Pro Motion Control (transfer precise motion from a reference video to a target character), or Lucy Edit Restyle (lightweight identity-stable restyle / outfit swap). Bundles each model's documented prompting patterns so the skill gets...
nano-banana-2
Generate images with Google Nano Banana 2 (Gemini-family flash-tier text-to-image) on RunComfy — bundled with the model's documented prompting patterns so the skill gets sharper output than naive prompting against the same model. Documents Nano Banana 2's strengths (rapid iteration, in-image typography rendering, predictable framing, optional web-grounded context), the resolution-tier pricing, the safety-tolerance dial, and when to route to Nano Banana Pro / GPT Image 2 / Flux 2 / Seedream in...