--- name: python-resilience description: Python resilience patterns including automatic retries, exponential backoff, timeouts, and fault-tolerant decorators. Use when adding retry logic, implementing timeouts, building fault-tolerant services, or handling transient failures. --- # Python Resilience Patterns Build fault-tolerant Python applications that gracefully handle transient failures, network issues, and service outages. Resilience patterns keep systems running when dependencies are unreliable. ## When to Use This Skill - Adding retry logic to external service calls - Implementing timeouts for network operations - Building fault-tolerant microservices - Handling rate limiting and backpressure - Creating infrastructure decorators - Designing circuit breakers ## Core Concepts ### 1. Transient vs Permanent Failures Retry transient errors (network timeouts, temporary service issues). Don't retry permanent errors (invalid credentials, bad requests). ### 2. Exponential Backoff Increase wait time between retries to avoid overwhelming recovering services. ### 3. Jitter Add randomness to backoff to prevent thundering herd when many clients retry simultaneously. ### 4. Bounded Retries Cap both attempt count and total duration to prevent infinite retry loops. ## Quick Start ```python from tenacity import retry, stop_after_attempt, wait_exponential_jitter @retry( stop=stop_after_attempt(3), wait=wait_exponential_jitter(initial=1, max=10), ) def call_external_service(request: dict) -> dict: return httpx.post("https://api.example.com", json=request).json() ``` ## Fundamental Patterns ### Pattern 1: Basic Retry with Tenacity Use the `tenacity` library for production-grade retry logic. For simpler cases, consider built-in retry functionality or a lightweight custom implementation. ```python from tenacity import ( retry, stop_after_attempt, stop_after_delay, wait_exponential_jitter, retry_if_exception_type, ) TRANSIENT_ERRORS = (ConnectionError, TimeoutError, OSError) @retry( retry=retry_if_exception_type(TRANSIENT_ERRORS), stop=stop_after_attempt(5) | stop_after_delay(60), wait=wait_exponential_jitter(initial=1, max=30), ) def fetch_data(url: str) -> dict: """Fetch data with automatic retry on transient failures.""" response = httpx.get(url, timeout=30) response.raise_for_status() return response.json() ``` ### Pattern 2: Retry Only Appropriate Errors Whitelist specific transient exceptions. Never retry: - `ValueError`, `TypeError` - These are bugs, not transient issues - `AuthenticationError` - Invalid credentials won't become valid - HTTP 4xx errors (except 429) - Client errors are permanent ```python from tenacity import retry, retry_if_exception_type import httpx # Define what's retryable RETRYABLE_EXCEPTIONS = ( ConnectionError, TimeoutError, httpx.ConnectTimeout, httpx.ReadTimeout, ) @retry( retry=retry_if_exception_type(RETRYABLE_EXCEPTIONS), stop=stop_after_attempt(3), wait=wait_exponential_jitter(initial=1, max=10), ) def resilient_api_call(endpoint: str) -> dict: """Make API call with retry on network issues.""" return httpx.get(endpoint, timeout=10).json() ``` ### Pattern 3: HTTP Status Code Retries Retry specific HTTP status codes that indicate transient issues. ```python from tenacity import retry, retry_if_result, stop_after_attempt import httpx RETRY_STATUS_CODES = {429, 502, 503, 504} def should_retry_response(response: httpx.Response) -> bool: """Check if response indicates a retryable error.""" return response.status_code in RETRY_STATUS_CODES @retry( retry=retry_if_result(should_retry_response), stop=stop_after_attempt(3), wait=wait_exponential_jitter(initial=1, max=10), ) def http_request(method: str, url: str, **kwargs) -> httpx.Response: """Make HTTP request with retry on transient status codes.""" return httpx.request(method, url, timeout=30, **kwargs) ``` ### Pattern 4: Combined Exception and Status Retry Handle both network exceptions and HTTP status codes. ```python from tenacity import ( retry, retry_if_exception_type, retry_if_result, stop_after_attempt, wait_exponential_jitter, before_sleep_log, ) import logging import httpx logger = logging.getLogger(__name__) TRANSIENT_EXCEPTIONS = ( ConnectionError, TimeoutError, httpx.ConnectError, httpx.ReadTimeout, ) RETRY_STATUS_CODES = {429, 500, 502, 503, 504} def is_retryable_response(response: httpx.Response) -> bool: return response.status_code in RETRY_STATUS_CODES @retry( retry=( retry_if_exception_type(TRANSIENT_EXCEPTIONS) | retry_if_result(is_retryable_response) ), stop=stop_after_attempt(5), wait=wait_exponential_jitter(initial=1, max=30), before_sleep=before_sleep_log(logger, logging.WARNING), ) def robust_http_call( method: str, url: str, **kwargs, ) -> httpx.Response: """HTTP call with comprehensive retry handling.""" return httpx.request(method, url, timeout=30, **kwargs) ``` ## Detailed worked examples and patterns Detailed sections (starting with `## Advanced Patterns`) live in `references/details.md`. Read that file when the navigation summary above is insufficient. ## Best Practices Summary 1. **Retry only transient errors** - Don't retry bugs or authentication failures 2. **Use exponential backoff** - Give services time to recover 3. **Add jitter** - Prevent thundering herd from synchronized retries 4. **Cap total duration** - `stop_after_attempt(5) | stop_after_delay(60)` 5. **Log every retry** - Silent retries hide systemic problems 6. **Use decorators** - Keep retry logic separate from business logic 7. **Inject dependencies** - Make infrastructure testable 8. **Set timeouts everywhere** - Every network call needs a timeout 9. **Fail gracefully** - Return cached/default values for non-critical paths 10. **Monitor retry rates** - High retry rates indicate underlying issues