root-cause-tracing
About
This skill systematically traces bugs backward through the call stack to identify the original source of invalid data or incorrect behavior. It is used when errors manifest deep in execution and adds instrumentation when needed to follow the problem to its root cause. This approach helps developers fix issues at the source rather than just treating symptoms.
Quick Install
Claude Code
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Documentation
Root Cause Tracing
Overview
Bugs often manifest deep in the call stack (git init in wrong directory, file created in wrong location, database opened with wrong path). Your instinct is to fix where the error appears, but that's treating a symptom.
Core principle: Trace backward through the call chain until you find the original trigger, then fix at the source.
When to Use
Use root-cause-tracing when:
- Error happens deep in execution (not at entry point)
- Stack trace shows long call chain
- Unclear where invalid data originated
- systematic-debugging Phase 1 leads you here
Relationship with systematic-debugging:
- root-cause-tracing is a SUB-SKILL of systematic-debugging
- Use during systematic-debugging Phase 1, Step 5 (Trace Data Flow)
- Can also use standalone if you KNOW bug is deep-stack issue
- After tracing to source, return to systematic-debugging Phase 2
When NOT to use:
- Bug appears at entry point → Use systematic-debugging Phase 1 directly
- You haven't started systematic-debugging yet → Start there first
- Root cause is obvious → Just fix it
- Still gathering evidence → Continue systematic-debugging Phase 1
The Tracing Process
1. Observe the Symptom
Error: git init failed in /Users/jesse/project/packages/core
2. Find Immediate Cause
What code directly causes this?
await execFileAsync('git', ['init'], { cwd: projectDir });
3. Ask: What Called This?
WorktreeManager.createSessionWorktree(projectDir, sessionId)
→ called by Session.initializeWorkspace()
→ called by Session.create()
→ called by test at Project.create()
4. Keep Tracing Up
What value was passed?
projectDir = ''(empty string!)- Empty string as
cwdresolves toprocess.cwd() - That's the source code directory!
5. Find Original Trigger
Where did empty string come from?
const context = setupCoreTest(); // Returns { tempDir: '' }
Project.create('name', context.tempDir); // Accessed before beforeEach!
Adding Stack Traces
When you can't trace manually, add instrumentation:
// Before the problematic operation
async function gitInit(directory: string) {
const stack = new Error().stack;
console.error('DEBUG git init:', {
directory,
cwd: process.cwd(),
nodeEnv: process.env.NODE_ENV,
stack,
});
await execFileAsync('git', ['init'], { cwd: directory });
}
Critical: Use console.error() in tests (not logger - may not show)
Run and capture:
npm test 2>&1 | grep 'DEBUG git init'
Analyze stack traces:
- Look for test file names
- Find the line number triggering the call
- Identify the pattern (same test? same parameter?)
Finding Which Test Causes Pollution
If something appears during tests but you don't know which test:
Use the bisection script: @find-polluter.sh
./find-polluter.sh '.git' 'src/**/*.test.ts'
Runs tests one-by-one, stops at first polluter. See script for usage.
Real Example: Empty projectDir
Symptom: .git created in packages/core/ (source code)
Trace chain:
git initruns inprocess.cwd()← empty cwd parameter- WorktreeManager called with empty projectDir
- Session.create() passed empty string
- Test accessed
context.tempDirbefore beforeEach - setupCoreTest() returns
{ tempDir: '' }initially
Root cause: Top-level variable initialization accessing empty value
Fix: Made tempDir a getter that throws if accessed before beforeEach
Also added defense-in-depth:
- Layer 1: Project.create() validates directory
- Layer 2: WorkspaceManager validates not empty
- Layer 3: NODE_ENV guard refuses git init outside tmpdir
- Layer 4: Stack trace logging before git init
Key Principle
digraph principle {
"Found immediate cause" [shape=ellipse];
"Can trace one level up?" [shape=diamond];
"Trace backwards" [shape=box];
"Is this the source?" [shape=diamond];
"Fix at source" [shape=box];
"Add validation at each layer" [shape=box];
"Bug impossible" [shape=doublecircle];
"NEVER fix just the symptom" [shape=octagon, style=filled, fillcolor=red, fontcolor=white];
"Found immediate cause" -> "Can trace one level up?";
"Can trace one level up?" -> "Trace backwards" [label="yes"];
"Can trace one level up?" -> "NEVER fix just the symptom" [label="no"];
"Trace backwards" -> "Is this the source?";
"Is this the source?" -> "Trace backwards" [label="no - keeps going"];
"Is this the source?" -> "Fix at source" [label="yes"];
"Fix at source" -> "Add validation at each layer";
"Add validation at each layer" -> "Bug impossible";
}
NEVER fix just where the error appears. Trace back to find the original trigger.
Stack Trace Tips
In tests: Use console.error() not logger - logger may be suppressed
Before operation: Log before the dangerous operation, not after it fails
Include context: Directory, cwd, environment variables, timestamps
Capture stack: new Error().stack shows complete call chain
Real-World Impact
From debugging session (2025-10-03):
- Found root cause through 5-level trace
- Fixed at source (getter validation)
- Added 4 layers of defense
- 1847 tests passed, zero pollution
GitHub Repository
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