--- 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 processes, distributed transactions, or microservice orchestration. --- # 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) ## Critical Design Decision: Workflows vs Activities **The Fundamental Rule** (Source: temporal.io/blog/workflow-engine-principles): - **Workflows** = Orchestration logic and decision-making - **Activities** = External interactions (APIs, databases, network calls) ### Workflows (Orchestration) **Characteristics:** - Contain business logic and coordination - **MUST be deterministic** (same inputs → same outputs) - **Cannot** perform direct external calls - State automatically preserved across failures - Can run for years despite infrastructure failures **Example workflow tasks:** - Decide which steps to execute - Handle compensation logic - Manage timeouts and retries - Coordinate child workflows ### Activities (External Interactions) **Characteristics:** - Handle all external system interactions - Can be non-deterministic (API calls, DB writes) - Include built-in timeouts and retry logic - **Must be idempotent** (calling N times = calling once) - Short-lived (seconds to minutes typically) **Example activity tasks:** - Call payment gateway API - Write to database - Send emails or notifications - Query external services ### Design Decision Framework ``` Does it touch external systems? → Activity Is it orchestration/decision logic? → Workflow ``` ## Core Workflow Patterns ### 1. Saga Pattern with Compensation **Purpose**: Implement distributed transactions with rollback capability **Pattern** (Source: temporal.io/blog/compensating-actions-part-of-a-complete-breakfast-with-sagas): ``` For each step: 1. Register compensation BEFORE executing 2. Execute the step (via activity) 3. On failure, run all compensations in reverse order (LIFO) ``` **Example: Payment Workflow** 1. Reserve inventory (compensation: release inventory) 2. Charge payment (compensation: refund payment) 3. Fulfill order (compensation: cancel fulfillment) **Critical Requirements:** - Compensations must be idempotent - Register compensation BEFORE executing step - Run compensations in reverse order - Handle partial failures gracefully ### 2. Entity Workflows (Actor Model) **Purpose**: Long-lived workflow representing single entity instance **Pattern** (Source: docs.temporal.io/evaluate/use-cases-design-patterns): - One workflow execution = one entity (cart, account, inventory item) - Workflow persists for entity lifetime - Receives signals for state changes - Supports queries for current state **Example Use Cases:** - Shopping cart (add items, checkout, expiration) - Bank account (deposits, withdrawals, balance checks) - Product inventory (stock updates, reservations) **Benefits:** - Encapsulates entity behavior - Guarantees consistency per entity - Natural event sourcing ### 3. Fan-Out/Fan-In (Parallel Execution) **Purpose**: Execute multiple tasks in parallel, aggregate results **Pattern:** - Spawn child workflows or parallel activities - Wait for all to complete - Aggregate results - Handle partial failures **Scaling Rule** (Source: temporal.io/blog/workflow-engine-principles): - Don't scale individual workflows - For 1M tasks: spawn 1K child workflows × 1K tasks each - Keep each workflow bounded ### 4. Async Callback Pattern **Purpose**: Wait for external event or human approval **Pattern:** - Workflow sends request and waits for signal - External system processes asynchronously - Sends signal to resume workflow - Workflow continues with response **Use Cases:** - Human approval workflows - Webhook callbacks - Long-running external processes ## State Management and Determinism ### Automatic State Preservation **How Temporal Works** (Source: docs.temporal.io/workflows): - Complete program state preserved automatically - Event History records every command and event - Seamless recovery from crashes - Applications restore pre-failure state ### Determinism Constraints **Workflows Execute as State Machines**: - Replay behavior must be consistent - Same inputs → identical outputs every time **Prohibited in Workflows** (Source: docs.temporal.io/workflows): - ❌ Threading, locks, synchronization primitives - ❌ Random number generation (`random()`) - ❌ Global state or static variables - ❌ System time (`datetime.now()`) - ❌ Direct file I/O or network calls - ❌ Non-deterministic libraries **Allowed in Workflows**: - ✅ `workflow.now()` (deterministic time) - ✅ `workflow.random()` (deterministic random) - ✅ Pure functions and calculations - ✅ Calling activities (non-deterministic operations) ### Versioning Strategies **Challenge**: Changing workflow code while old executions still running **Solutions**: 1. **Versioning API**: Use `workflow.get_version()` for safe changes 2. **New Workflow Type**: Create new workflow, route new executions to it 3. **Backward Compatibility**: Ensure old events replay correctly ## Resilience and Error Handling ### Retry Policies **Default Behavior**: Temporal retries activities forever **Configure Retry**: - Initial retry interval - Backoff coefficient (exponential backoff) - Maximum interval (cap retry delay) - Maximum attempts (eventually fail) **Non-Retryable Errors**: - Invalid input (validation failures) - Business rule violations - Permanent failures (resource not found) ### Idempotency Requirements **Why Critical** (Source: docs.temporal.io/activities): - Activities may execute multiple times - Network failures trigger retries - Duplicate execution must be safe **Implementation Strategies**: - Idempotency keys (deduplication) - Check-then-act with unique constraints - Upsert operations instead of insert - Track processed request IDs ### Activity Heartbeats **Purpose**: Detect stalled long-running activities **Pattern**: - Activity sends periodic heartbeat - Includes progress information - Timeout if no heartbeat received - Enables progress-based retry ## 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