error-diagnostics-smart-debug

Use when working with error diagnostics smart debug

242 stars

Best use case

error-diagnostics-smart-debug is best used when you need a repeatable AI agent workflow instead of a one-off prompt. It is especially useful for teams working in multi. Use when working with error diagnostics smart debug

Use when working with error diagnostics smart debug

Users should expect a more consistent workflow output, faster repeated execution, and less time spent rewriting prompts from scratch.

Practical example

Example input

Use the "error-diagnostics-smart-debug" skill to help with this workflow task. Context: Use when working with error diagnostics smart debug

Example output

A structured workflow result with clearer steps, more consistent formatting, and an output that is easier to reuse in the next run.

When to use this skill

  • Use this skill when you want a reusable workflow rather than writing the same prompt again and again.

When not to use this skill

  • Do not use this when you only need a one-off answer and do not need a reusable workflow.
  • Do not use it if you cannot install or maintain the related files, repository context, or supporting tools.

Installation

Claude Code / Cursor / Codex

$curl -o ~/.claude/skills/error-diagnostics-smart-debug/SKILL.md --create-dirs "https://raw.githubusercontent.com/aiskillstore/marketplace/main/skills/sickn33/error-diagnostics-smart-debug/SKILL.md"

Manual Installation

  1. Download SKILL.md from GitHub
  2. Place it in .claude/skills/error-diagnostics-smart-debug/SKILL.md inside your project
  3. Restart your AI agent — it will auto-discover the skill

How error-diagnostics-smart-debug Compares

Feature / Agenterror-diagnostics-smart-debugStandard Approach
Platform SupportNot specifiedLimited / Varies
Context Awareness High Baseline
Installation ComplexityUnknownN/A

Frequently Asked Questions

What does this skill do?

Use when working with error diagnostics smart debug

Where can I find the source code?

You can find the source code on GitHub using the link provided at the top of the page.

SKILL.md Source

## Use this skill when

- Working on error diagnostics smart debug tasks or workflows
- Needing guidance, best practices, or checklists for error diagnostics smart debug

## Do not use this skill when

- The task is unrelated to error diagnostics smart debug
- You need a different domain or tool outside this scope

## Instructions

- Clarify goals, constraints, and required inputs.
- Apply relevant best practices and validate outcomes.
- Provide actionable steps and verification.
- If detailed examples are required, open `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.

## Context

Process issue from: $ARGUMENTS

Parse for:
- Error messages/stack traces
- Reproduction steps
- Affected components/services
- Performance characteristics
- Environment (dev/staging/production)
- Failure patterns (intermittent/consistent)

## Workflow

### 1. Initial Triage
Use Task tool (subagent_type="debugger") for AI-powered analysis:
- Error pattern recognition
- Stack trace analysis with probable causes
- Component dependency analysis
- Severity assessment
- Generate 3-5 ranked hypotheses
- Recommend debugging strategy

### 2. Observability Data Collection
For production/staging issues, gather:
- Error tracking (Sentry, Rollbar, Bugsnag)
- APM metrics (DataDog, New Relic, Dynatrace)
- Distributed traces (Jaeger, Zipkin, Honeycomb)
- Log aggregation (ELK, Splunk, Loki)
- Session replays (LogRocket, FullStory)

Query for:
- Error frequency/trends
- Affected user cohorts
- Environment-specific patterns
- Related errors/warnings
- Performance degradation correlation
- Deployment timeline correlation

### 3. Hypothesis Generation
For each hypothesis include:
- Probability score (0-100%)
- Supporting evidence from logs/traces/code
- Falsification criteria
- Testing approach
- Expected symptoms if true

Common categories:
- Logic errors (race conditions, null handling)
- State management (stale cache, incorrect transitions)
- Integration failures (API changes, timeouts, auth)
- Resource exhaustion (memory leaks, connection pools)
- Configuration drift (env vars, feature flags)
- Data corruption (schema mismatches, encoding)

### 4. Strategy Selection
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

### 5. Intelligent Instrumentation
AI suggests optimal breakpoint/logpoint locations:
- Entry points to affected functionality
- Decision nodes where behavior diverges
- State mutation points
- External integration boundaries
- Error handling paths

Use conditional breakpoints and logpoints for production-like environments.

### 6. Production-Safe Techniques
**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

### 7. Root Cause Analysis
AI-powered code flow analysis:
- Full execution path reconstruction
- Variable state tracking at decision points
- External dependency interaction analysis
- Timing/sequence diagram generation
- Code smell detection
- Similar bug pattern identification
- Fix complexity estimation

### 8. Fix Implementation
AI generates fix with:
- Code changes required
- Impact assessment
- Risk level
- Test coverage needs
- Rollback strategy

### 9. Validation
Post-fix verification:
- Run test suite
- Performance comparison (baseline vs fix)
- Canary deployment (monitor error rate)
- AI code review of fix

Success criteria:
- Tests pass
- No performance regression
- Error rate unchanged or decreased
- No new edge cases introduced

### 10. Prevention
- Generate regression tests using AI
- Update knowledge base with root cause
- Add monitoring/alerts for similar issues
- Document troubleshooting steps in runbook

## Example: Minimal Debug Session

```typescript
// 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
```

## Output Format

Provide structured report:
1. **Issue Summary**: Error, frequency, impact
2. **Root Cause**: Detailed diagnosis with evidence
3. **Fix Proposal**: Code changes, risk, impact
4. **Validation Plan**: Steps to verify fix
5. **Prevention**: Tests, monitoring, documentation

Focus on actionable insights. Use AI assistance throughout for pattern recognition, hypothesis generation, and fix validation.

---

Issue to debug: $ARGUMENTS

Related Skills

incident-response-smart-fix

242
from aiskillstore/marketplace

[Extended thinking: This workflow implements a sophisticated debugging and resolution pipeline that leverages AI-assisted debugging tools and observability platforms to systematically diagnose and res

fp-ts-errors

242
from aiskillstore/marketplace

Handle errors as values using fp-ts Either and TaskEither for cleaner, more predictable TypeScript code. Use when implementing error handling patterns with fp-ts.

error-handling-patterns

242
from aiskillstore/marketplace

Master error handling patterns across languages including exceptions, Result types, error propagation, and graceful degradation to build resilient applications. Use when implementing error handling, designing APIs, or improving application reliability.

error-diagnostics-error-trace

242
from aiskillstore/marketplace

You are an error tracking and observability expert specializing in implementing comprehensive error monitoring solutions. Set up error tracking systems, configure alerts, implement structured logging,

error-diagnostics-error-analysis

242
from aiskillstore/marketplace

You are an expert error analysis specialist with deep expertise in debugging distributed systems, analyzing production incidents, and implementing comprehensive observability solutions.

error-debugging-multi-agent-review

242
from aiskillstore/marketplace

Use when working with error debugging multi agent review

error-debugging-error-trace

242
from aiskillstore/marketplace

You are an error tracking and observability expert specializing in implementing comprehensive error monitoring solutions. Set up error tracking systems, configure alerts, implement structured logging, and ensure teams can quickly identify and resolve production issues.

error-debugging-error-analysis

242
from aiskillstore/marketplace

You are an expert error analysis specialist with deep expertise in debugging distributed systems, analyzing production incidents, and implementing comprehensive observability solutions.

distributed-debugging-debug-trace

242
from aiskillstore/marketplace

You are a debugging expert specializing in setting up comprehensive debugging environments, distributed tracing, and diagnostic tools. Configure debugging workflows, implement tracing solutions, and establish troubleshooting practices for development and production environments.

debugging-toolkit-smart-debug

242
from aiskillstore/marketplace

Use when working with debugging toolkit smart debug

debugging-strategies

242
from aiskillstore/marketplace

Master systematic debugging techniques, profiling tools, and root cause analysis to efficiently track down bugs across any codebase or technology stack. Use when investigating bugs, performance issues, or unexpected behavior.

debugger

242
from aiskillstore/marketplace

Debugging specialist for errors, test failures, and unexpected behavior. Use proactively when encountering any issues.