Systematic Debugging
Overview
Random fixes waste time and create new bugs. Quick patches mask underlying issues.
Core principle: ALWAYS find root cause before attempting fixes. Symptom fixes are failure.
Violating the letter of this process is violating the spirit of debugging.
The Iron Law
NO FIXES WITHOUT ROOT CAUSE INVESTIGATION FIRST
If you haven't completed Phase 1, you cannot propose fixes.
Scope and triggers
Use for ANY technical issue:
- Test failures
- Bugs in production
- Unexpected behavior
- Performance problems
- Build failures
- Integration issues
Use this ESPECIALLY when:
- Under time pressure (emergencies make guessing tempting)
- "Just one quick fix" seems obvious
- You've already tried multiple fixes
- Previous fix didn't work
- You don't fully understand the issue
Don't skip when:
- Issue seems simple (simple bugs have root causes too)
- You're in a hurry (rushing guarantees rework)
- Manager wants it fixed NOW (systematic is faster than thrashing)
The Four Phases
You MUST complete each phase before proceeding to the next.
Phase 1: Root Cause Investigation
BEFORE attempting ANY fix:
-
Read Error Messages Carefully
- Don't skip past errors or warnings
- They often contain the exact solution
- Read stack traces completely
- Note line numbers, file paths, error codes
-
Reproduce Consistently
- Can you trigger it reliably?
- What are the exact steps?
- Does it happen every time?
- If not reproducible → gather more data, don't guess
-
Check Recent Changes
- What changed that could cause this?
- Git diff, recent commits
- New dependencies, config changes
- Environmental differences
-
Gather Evidence in Multi-Component Systems
WHEN system has multiple components (CI → build → signing, API → service → database):
BEFORE proposing fixes, add diagnostic instrumentation:
For EACH component boundary: - Log what data enters component - Log what data exits component - Verify environment/config propagation - Check state at each layer Run once to gather evidence showing WHERE it breaks THEN analyze evidence to identify failing component THEN investigate that specific componentExample (multi-layer system):
# Layer 1: Workflow echo "=== Secrets available in workflow: ===" echo "IDENTITY: ${IDENTITY:+SET}${IDENTITY:-UNSET}" # Layer 2: Build script echo "=== Env vars in build script: ===" env | grep IDENTITY || echo "IDENTITY not in environment" # Layer 3: Signing script echo "=== Keychain state: ===" security list-keychains security find-identity -v # Layer 4: Actual signing codesign --sign "$IDENTITY" --verbose=4 "$APP"This reveals: Which layer fails (secrets → workflow ✓, workflow → build ✗)
-
Trace Data Flow
WHEN error is deep in call stack:
See
root-cause-tracing.mdin this directory for the complete backward tracing technique.Quick version:
- Where does bad value originate?
- What called this with bad value?
- Keep tracing up until you find the source
- Fix at source, not at symptom
Phase 2: Pattern Analysis
Find the pattern before fixing:
-
Find Working Examples
- Locate similar working code in same codebase
- What works that's similar to what's broken?
-
Compare Against References
- If implementing pattern, read reference implementation COMPLETELY
- Don't skim - read every line
- Understand the pattern fully before applying
-
Identify Differences
- What's different between working and broken?
- List every difference, however small
- Don't assume "that can't matter"
-
Understand Dependencies
- What other components does this need?
- What settings, config, environment?
- What assumptions does it make?
Phase 3: Hypothesis and Testing
Scientific method:
-
Form Single Hypothesis
- State clearly: "I think X is the root cause because Y"
- Write it down
- Be specific, not vague
-
Test Minimally
- Make the SMALLEST possible change to test hypothesis
- One variable at a time
- Don't fix multiple things at once
-
Verify Before Continuing
- Did it work? Yes → Phase 4
- Didn't work? Form NEW hypothesis
- DON'T add more fixes on top
-
When You Don't Know
- Say "I don't understand X"
- Don't pretend to know
- Ask for help
- Research more
Phase 4: Implementation
Fix the root cause, not the symptom:
-
Create Failing Test Case
- Simplest possible reproduction
- Automated test if possible
- One-off test script if no framework
- MUST have before fixing
- Use the
superpowers:test-driven-developmentskill for writing proper failing tests
-
Implement Single Fix
- Address the root cause identified
- ONE change at a time
- No "while I'm here" improvements
- No bundled refactoring
-
Verify Fix
- Test passes now?
- No other tests broken?
- Issue actually resolved?
-
If Fix Doesn't Work
- STOP
- Count: How many fixes have you tried?
- If < 3: Return to Phase 1, re-analyze with new information
- If ≥ 3: STOP and question the architecture (step 5 below)
- DON'T attempt Fix #4 without architectural discussion
-
If 3+ Fixes Failed: Question Architecture
Pattern indicating architectural problem:
- Each fix reveals new shared state/coupling/problem in different place
- Fixes require "massive refactoring" to implement
- Each fix creates new symptoms elsewhere
STOP and question fundamentals:
- Is this pattern fundamentally sound?
- Are we "sticking with it through sheer inertia"?
- Should we refactor architecture vs. continue fixing symptoms?
Discuss with your human partner before attempting more fixes
This is NOT a failed hypothesis - this is a wrong architecture.
Red Flags - STOP and Follow Process
If you catch yourself thinking:
- "Quick fix for now, investigate later"
- "Just try changing X and see if it works"
- "Add multiple changes, run tests"
- "Skip the test, I'll manually verify"
- "It's probably X, let me fix that"
- "I don't fully understand but this might work"
- "Pattern says X but I'll adapt it differently"
- "Here are the main problems: [lists fixes without investigation]"
- Proposing solutions before tracing data flow
- "One more fix attempt" (when already tried 2+)
- Each fix reveals new problem in different place
ALL of these mean: STOP. Return to Phase 1.
If 3+ fixes failed: Question the architecture (see Phase 4.5)
your human partner's Signals You're Doing It Wrong
Watch for these redirections:
- "Is that not happening?" - You assumed without verifying
- "Will it show us...?" - You should have added evidence gathering
- "Stop guessing" - You're proposing fixes without understanding
- "Ultrathink this" - Question fundamentals, not just symptoms
- "We're stuck?" (frustrated) - Your approach isn't working
When you see these: STOP. Return to Phase 1.
Common Rationalizations
| Excuse | Reality |
|---|---|
| "Issue is simple, don't need process" | Simple issues have root causes too. Process is fast for simple bugs. |
| "Emergency, no time for process" | Systematic debugging is FASTER than guess-and-check thrashing. |
| "Just try this first, then investigate" | First fix sets the pattern. Do it right from the start. |
| "I'll write test after confirming fix works" | Untested fixes don't stick. Test first proves it. |
| "Multiple fixes at once saves time" | Can't isolate what worked. Causes new bugs. |
| "Reference too long, I'll adapt the pattern" | Partial understanding guarantees bugs. Read it completely. |
| "I see the problem, let me fix it" | Seeing symptoms ≠ understanding root cause. |
| "One more fix attempt" (after 2+ failures) | 3+ failures = architectural problem. Question pattern, don't fix again. |
Quick Reference
| Phase | Key Activities | Success Criteria |
|---|---|---|
| 1. Root Cause | Read errors, reproduce, check changes, gather evidence | Understand WHAT and WHY |
| 2. Pattern | Find working examples, compare | Identify differences |
| 3. Hypothesis | Form theory, test minimally | Confirmed or new hypothesis |
| 4. Implementation | Create test, fix, verify | Bug resolved, tests pass |
When Process Reveals "No Root Cause"
If systematic investigation reveals issue is truly environmental, timing-dependent, or external:
- You've completed the process
- Document what you investigated
- Implement appropriate handling (retry, timeout, error message)
- Add monitoring/logging for future investigation
But: 95% of "no root cause" cases are incomplete investigation.
Supporting Techniques
These techniques are part of systematic debugging and available in this directory:
root-cause-tracing.md- Trace bugs backward through call stack to find original triggerdefense-in-depth.md- Add validation at multiple layers after finding root causecondition-based-waiting.md- Replace arbitrary timeouts with condition polling
Related skills:
- superpowers:test-driven-development - For creating failing test case (Phase 4, Step 1)
- superpowers:verification-before-completion - Verify fix worked before claiming success
Real-World Impact
From debugging sessions:
- Systematic approach: 15-30 minutes to fix
- Random fixes approach: 2-3 hours of thrashing
- First-time fix rate: 95% vs 40%
- New bugs introduced: Near zero vs common
Anti-patterns
- Skipping investigation and jumping directly to fixes.
- Making claims without evidence, logs, or reproducible steps.
- Mixing unrelated workstreams in a single execution path.
Constraints / Safety
- Redact secrets, tokens, credentials, and PII by default; never echo raw environment values.
- Prefer safe defaults and avoid irreversible changes without explicit confirmation.
Inputs
- User task context and target environment.
- Relevant constraints, permissions, and preferences required to execute safely.
Outputs
- A concrete next-step response with explicit, reproducible actions.
- A short verification checklist and caveats for the user.
Philosophy
- Keep the workflow minimal, safe, and evidence-based.
- Load richer context only when needed; avoid unnecessary commands or overreach.
Validation
- Fail fast: stop at the first failed check and do not continue.
- Re-run the required checks before proceeding to the next step.
- Report any failed check and requested follow-up actions clearly.
Philosophy and tradeoffs
- Use this skill when consistent decision-making matters more than one-off execution because project context should drive the approach.
- Principle and mindset: prioritize tradeoffs and constraints over rigid checklists; understand why each step exists.
- Ask this to keep outcomes robust: Why is this the right default, and what could change this outcome?
- How do we adapt if constraints shift?
- What evidence is needed before choosing one path over another?
Anti-patterns and caveats
- Avoid applying this playbook generically without checking repository-specific context.
- NEVER skip required validation gates when behavior changes.
- DO NOT use this skill as a rigid replacement for engineering judgment.
- DON'T ignore warnings or assume one pattern fits all repos.
- Common pitfall: treating anti-patterns as optional.
- Incorrect assumptions here can lead to fragile guidance.
- Warning: wrong sequencing can create avoidable regressions.
Variation and adaptation
- Vary the workflow by team size, risk, and deployment target.
- Use different strategies for small, medium, and large changes.
- Adapt recommendations to the specific environment and avoid repetitive templates.
- Avoid generic or cookie-cutter responses; craft context-specific alternatives.
- Keep outputs diverse and not repetitive.
- Converge on a custom path only after evidence review.
- Different constraints should produce different, non-generic recommendations.
Empowering execution style
- Be capable of exploring multiple options and enabling the team to make safe decisions.
- Unlock confidence by explaining options and tradeoffs clearly.
- Feel free to be creative while staying rigorous and precise.
- Push boundaries with practical alternatives when simple recipes fail.
- Enable outcomes-oriented problem solving.
