HAND-TAGGED >>> 991 SKILLS LIVE <<<* OPEN SOURCE *NO LOGIN, NO TRACKING FRESH DROPS WEEKLY HAND-TAGGED >>> 991 SKILLS LIVE <<<* OPEN SOURCE *NO LOGIN, NO TRACKING FRESH DROPS WEEKLY HAND-TAGGED >>> 991 SKILLS LIVE <<<* OPEN SOURCE *NO LOGIN, NO TRACKING FRESH DROPS WEEKLY HAND-TAGGED >>> 991 SKILLS LIVE <<<* OPEN SOURCE *NO LOGIN, NO TRACKING FRESH DROPS WEEKLY HAND-TAGGED >>> 991 SKILLS LIVE <<<* OPEN SOURCE *NO LOGIN, NO TRACKING FRESH DROPS WEEKLY HAND-TAGGED >>> 991 SKILLS LIVE <<<* OPEN SOURCE *NO LOGIN, NO TRACKING FRESH DROPS WEEKLY
← back to homepage
Trace requests, boost microservice performanceSKILL #CING
Coding

distributed-tracing

Trace requests, boost microservice performance

Implement distributed tracing with Jaeger and Tempo to track requests across microservices and identify performance bottlenecks. Use when debugging microservices, analyzing request flows, or implementing observability for distributed systems.

↗ github · ★ 37k·src: wshobson/agents

the manual

Distributed Tracing

Implement distributed tracing with Jaeger and Tempo for request flow visibility across microservices.

Purpose

Track requests across distributed systems to understand latency, dependencies, and failure points.

When to Use

  • Debug latency issues
  • Understand service dependencies
  • Identify bottlenecks
  • Trace error propagation
  • Analyze request paths

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

  1. Sample appropriately (1-10% in production)
  2. Add meaningful tags (user_id, request_id)
  3. Propagate context across all service boundaries
  4. Log exceptions in spans
  5. Use consistent naming for operations
  6. Monitor tracing overhead (<1% CPU impact)
  7. Set up alerts for trace errors
  8. Implement distributed context (baggage)
  9. Use span events for important milestones
  10. Document instrumentation standards

Integration with Logging

Correlated Logs

import logging
from opentelemetry import trace

logger = logging.getLogger(__name__)

def process_request():
    span = trace.get_current_span()
    trace_id = span.get_span_context().trace_id

    logger.info(
        "Processing request",
        extra={"trace_id": format(trace_id, '032x')}
    )

Troubleshooting

No traces appearing:

  • Check collector endpoint
  • Verify network connectivity
  • Check sampling configuration
  • Review application logs

High latency overhead:

  • Reduce sampling rate
  • Use batch span processor
  • Check exporter configuration

Related Skills

  • prometheus-configuration - For metrics
  • grafana-dashboards - For visualization
  • slo-implementation - For latency SLOs

more coding

Request code reviews to catch issues early
Coding
HOT
Request code reviews to catch issues early
requesting-code-review
2@ 2 240k
Execute plans flawlessly and efficiently
Coding
HOT
Execute plans flawlessly and efficiently
executing-plans
0@ 0 240k
Finish your dev branch like a pro
Coding
HOT
Finish your dev branch like a pro
finishing-a-development-branch
0@ 0 240k
Verify feedback before you implement changes
Coding
HOT
Verify feedback before you implement changes
receiving-code-review
0@ 0 240k
Debug systematically to save time
Coding
HOT
Debug systematically to save time
systematic-debugging
0@ 0 240k
Write tests first, code with confidence
Coding
HOT
Write tests first, code with confidence
test-driven-development
0@ 0 240k
Build powerful MCP servers fast
Coding
HOT
Build powerful MCP servers fast
mcp-builder
0@ 1 156k
Transform messy data into clean spreadsheets
Coding
HOT
Transform messy data into clean spreadsheets
xlsx
0@ 0 156k