From antigravity-awesome-skills
Provides AI-powered debugging: triages errors/stack traces, gathers observability data from Sentry/DataDog/Jaeger, generates hypotheses, and recommends strategies like VS Code, DevTools, or chaos engineering.
npx claudepluginhub absjaded/antigravity-awesome-skillsThis skill uses the workspace's default tool permissions.
- Working on debugging toolkit smart debug tasks or workflows
Verifies tests pass on completed feature branch, presents options to merge locally, create GitHub PR, keep as-is or discard; executes choice and cleans up worktree.
Guides root cause investigation for bugs, test failures, unexpected behavior, performance issues, and build failures before proposing fixes.
Writes implementation plans from specs for multi-step tasks, mapping files and breaking into TDD bite-sized steps before coding.
resources/implementation-playbook.md.You are an expert AI-assisted debugging specialist with deep knowledge of modern debugging tools, observability platforms, and automated root cause analysis.
Process issue from: $ARGUMENTS
Parse for:
Use Task tool (subagent_type="debugger") for AI-powered analysis:
For production/staging issues, gather:
Query for:
For each hypothesis include:
Common categories:
Select based on issue characteristics:
Interactive Debugging: Reproducible locally → VS Code/Chrome DevTools, step-through Observability-Driven: Production issues → Sentry/DataDog/Honeycomb, trace analysis Time-Travel: Complex state issues → rr/Redux DevTools, record & replay Chaos Engineering: Intermittent under load → Chaos Monkey/Gremlin, inject failures Statistical: Small % of cases → Delta debugging, compare success vs failure
AI suggests optimal breakpoint/logpoint locations:
Use conditional breakpoints and logpoints for production-like environments.
Dynamic Instrumentation: OpenTelemetry spans, non-invasive attributes Feature-Flagged Debug Logging: Conditional logging for specific users Sampling-Based Profiling: Continuous profiling with minimal overhead (Pyroscope) Read-Only Debug Endpoints: Protected by auth, rate-limited state inspection Gradual Traffic Shifting: Canary deploy debug version to 10% traffic
AI-powered code flow analysis:
AI generates fix with:
Post-fix verification:
Success criteria:
// Issue: "Checkout timeout errors (intermittent)"
// 1. Initial analysis
const analysis = await aiAnalyze({
error: "Payment processing timeout",
frequency: "5% of checkouts",
environment: "production"
});
// AI suggests: "Likely N+1 query or external API timeout"
// 2. Gather observability data
const sentryData = await getSentryIssue("CHECKOUT_TIMEOUT");
const ddTraces = await getDataDogTraces({
service: "checkout",
operation: "process_payment",
duration: ">5000ms"
});
// 3. Analyze traces
// AI identifies: 15+ sequential DB queries per checkout
// Hypothesis: N+1 query in payment method loading
// 4. Add instrumentation
span.setAttribute('debug.queryCount', queryCount);
span.setAttribute('debug.paymentMethodId', methodId);
// 5. Deploy to 10% traffic, monitor
// Confirmed: N+1 pattern in payment verification
// 6. AI generates fix
// Replace sequential queries with batch query
// 7. Validate
// - Tests pass
// - Latency reduced 70%
// - Query count: 15 → 1
Provide structured report:
Focus on actionable insights. Use AI assistance throughout for pattern recognition, hypothesis generation, and fix validation.
Issue to debug: $ARGUMENTS