Files
hermes-agent/skills/software-development/systematic-debugging/SKILL.md
teknium1 de0af4df66 refactor: enhance software-development skills with Hermes integration
Improvements to all 5 skills adapted from obra/superpowers:

- Restored anti-rationalization tables and red flags from originals
  (key behavioral guardrails that prevent LLMs from taking shortcuts)
- Restored 'Rule of Three' for debugging (3+ failed fixes = question
  architecture, not keep fixing)
- Restored Pattern Analysis and Hypothesis Testing phases in debugging
- Restored 'Why Order Matters' rebuttals and verification checklist in TDD
- Added proper Hermes delegate_task integration with real parameter examples
  and toolset specifications throughout
- Added Hermes tool usage (search_files, read_file, terminal) for
  investigation and verification steps
- Removed references to non-existent skills (brainstorming,
  finishing-a-development-branch, executing-plans, using-git-worktrees)
- Removed generic language-specific sections (Go, Rust, Jest) that
  added bulk without agent value
- Tightened prose — cut ~430 lines while adding more actionable content
- Added execution handoff section to writing-plans
- Consistent cross-references between the 5 skills
2026-03-03 04:08:56 -08:00

367 lines
10 KiB
Markdown

---
name: systematic-debugging
description: Use when encountering any bug, test failure, or unexpected behavior. 4-phase root cause investigation — NO fixes without understanding the problem first.
version: 1.1.0
author: Hermes Agent (adapted from obra/superpowers)
license: MIT
metadata:
hermes:
tags: [debugging, troubleshooting, problem-solving, root-cause, investigation]
related_skills: [test-driven-development, writing-plans, subagent-driven-development]
---
# 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.
## When to Use
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)
- Someone 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:**
### 1. 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
**Action:** Use `read_file` on the relevant source files. Use `search_files` to find the error string in the codebase.
### 2. 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
**Action:** Use the `terminal` tool to run the failing test or trigger the bug:
```bash
# Run specific failing test
pytest tests/test_module.py::test_name -v
# Run with verbose output
pytest tests/test_module.py -v --tb=long
```
### 3. Check Recent Changes
- What changed that could cause this?
- Git diff, recent commits
- New dependencies, config changes
**Action:**
```bash
# Recent commits
git log --oneline -10
# Uncommitted changes
git diff
# Changes in specific file
git log -p --follow src/problematic_file.py | head -100
```
### 4. Gather Evidence in Multi-Component Systems
**WHEN system has multiple components (API → service → database, CI → build → deploy):**
**BEFORE proposing fixes, add diagnostic instrumentation:**
For EACH component boundary:
- Log what data enters the component
- Log what data exits the component
- Verify environment/config propagation
- Check state at each layer
Run once to gather evidence showing WHERE it breaks.
THEN analyze evidence to identify the failing component.
THEN investigate that specific component.
### 5. Trace Data Flow
**WHEN error is deep in the call stack:**
- Where does the bad value originate?
- What called this function with the bad value?
- Keep tracing upstream until you find the source
- Fix at the source, not at the symptom
**Action:** Use `search_files` to trace references:
```python
# Find where the function is called
search_files("function_name(", path="src/", file_glob="*.py")
# Find where the variable is set
search_files("variable_name\\s*=", path="src/", file_glob="*.py")
```
### Phase 1 Completion Checklist
- [ ] Error messages fully read and understood
- [ ] Issue reproduced consistently
- [ ] Recent changes identified and reviewed
- [ ] Evidence gathered (logs, state, data flow)
- [ ] Problem isolated to specific component/code
- [ ] Root cause hypothesis formed
**STOP:** Do not proceed to Phase 2 until you understand WHY it's happening.
---
## Phase 2: Pattern Analysis
**Find the pattern before fixing:**
### 1. Find Working Examples
- Locate similar working code in the same codebase
- What works that's similar to what's broken?
**Action:** Use `search_files` to find comparable patterns:
```python
search_files("similar_pattern", path="src/", file_glob="*.py")
```
### 2. Compare Against References
- If implementing a pattern, read the reference implementation COMPLETELY
- Don't skim — read every line
- Understand the pattern fully before applying
### 3. Identify Differences
- What's different between working and broken?
- List every difference, however small
- Don't assume "that can't matter"
### 4. Understand Dependencies
- What other components does this need?
- What settings, config, environment?
- What assumptions does it make?
---
## Phase 3: Hypothesis and Testing
**Scientific method:**
### 1. Form a Single Hypothesis
- State clearly: "I think X is the root cause because Y"
- Write it down
- Be specific, not vague
### 2. Test Minimally
- Make the SMALLEST possible change to test the hypothesis
- One variable at a time
- Don't fix multiple things at once
### 3. Verify Before Continuing
- Did it work? → Phase 4
- Didn't work? → Form NEW hypothesis
- DON'T add more fixes on top
### 4. When You Don't Know
- Say "I don't understand X"
- Don't pretend to know
- Ask the user for help
- Research more
---
## Phase 4: Implementation
**Fix the root cause, not the symptom:**
### 1. Create Failing Test Case
- Simplest possible reproduction
- Automated test if possible
- MUST have before fixing
- Use the `test-driven-development` skill
### 2. Implement Single Fix
- Address the root cause identified
- ONE change at a time
- No "while I'm here" improvements
- No bundled refactoring
### 3. Verify Fix
```bash
# Run the specific regression test
pytest tests/test_module.py::test_regression -v
# Run full suite — no regressions
pytest tests/ -q
```
### 4. If Fix Doesn't Work — The Rule of Three
- **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
### 5. If 3+ Fixes Failed: Question Architecture
**Pattern indicating an architectural problem:**
- Each fix reveals new shared state/coupling in a 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 the architecture vs. continue fixing symptoms?
**Discuss with the user 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 a new problem in a different place**
**ALL of these mean: STOP. Return to Phase 1.**
**If 3+ fixes failed:** Question the architecture (Phase 4 step 5).
## 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 the pattern, don't fix again. |
## Quick Reference
| Phase | Key Activities | Success Criteria |
|-------|---------------|------------------|
| **1. Root Cause** | Read errors, reproduce, check changes, gather evidence, trace data flow | Understand WHAT and WHY |
| **2. Pattern** | Find working examples, compare, identify differences | Know what's different |
| **3. Hypothesis** | Form theory, test minimally, one variable at a time | Confirmed or new hypothesis |
| **4. Implementation** | Create regression test, fix root cause, verify | Bug resolved, all tests pass |
## Hermes Agent Integration
### Investigation Tools
Use these Hermes tools during Phase 1:
- **`search_files`** — Find error strings, trace function calls, locate patterns
- **`read_file`** — Read source code with line numbers for precise analysis
- **`terminal`** — Run tests, check git history, reproduce bugs
- **`web_search`/`web_extract`** — Research error messages, library docs
### With delegate_task
For complex multi-component debugging, dispatch investigation subagents:
```python
delegate_task(
goal="Investigate why [specific test/behavior] fails",
context="""
Follow systematic-debugging skill:
1. Read the error message carefully
2. Reproduce the issue
3. Trace the data flow to find root cause
4. Report findings — do NOT fix yet
Error: [paste full error]
File: [path to failing code]
Test command: [exact command]
""",
toolsets=['terminal', 'file']
)
```
### With test-driven-development
When fixing bugs:
1. Write a test that reproduces the bug (RED)
2. Debug systematically to find root cause
3. Fix the root cause (GREEN)
4. The test proves the fix and prevents regression
## 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
**No shortcuts. No guessing. Systematic always wins.**