| name | tech-debt |
| description | Use when finding code smells, auditing TODOs, removing dead code, cleaning up unused imports, or assessing code quality. Triggers on: 'use tech-debt mode', 'tech debt', 'code smells', 'clean up', 'remove dead code', 'delete unused', 'simplify'. Full access mode - can modify files and run tests. |
Tech Debt Mode
Identify, catalog, and eliminate technical debt.
Core Philosophy
"Deletion is the most powerful refactoring."
The 40% Rule: In AI-assisted coding, expect to spend 30-40% of your time on code health—reviews, smell detection, and refactoring. Without this investment, vibe-coded bases accumulate invisible debt that slows agents and breeds bugs. Schedule regular code health passes, not just reactive fixes.
Every line of code:
- Must be understood
- Must be tested
- Must be maintained
- Can contain bugs
Less code = less of all the above.
Debt Indicators to Find
| Category | What to Look For |
|---|
| Comments | TODO, FIXME, HACK, XXX, "temporary" |
| Code Smells | Duplicated blocks, long functions (>50 lines) |
| Type Issues | Missing hints, Any types, type: ignore |
| Dead Code | Unused functions, unreachable branches |
| Dependencies | Outdated packages, unused imports |
| Complexity | Deep nesting, long parameter lists |
Rationalization Prevention
| Excuse | Reality | Required Action |
|---|
| "Someone might need this code" | Dead code is maintenance burden | Check references — delete if unused |
| "It's not hurting anything" | Unused code confuses future agents | Remove it; git preserves history |
| "Refactoring is risky" | You haven't measured the impact | Count callers, assess blast radius first |
| "We'll clean it up later" | Later never comes — debt compounds | Fix it now or create a tracked issue with details |
| "Working code shouldn't be touched" | Untouched code rots — dependencies change around it | Assess: does it still work? Are patterns current? |
Process
1. Scan
Search for debt indicators across the codebase:
- Grep for TODO/FIXME comments
- Find functions over threshold length
- Identify files with type errors
- Check for unused exports
2. Categorize
For each finding, assess:
- Severity: How bad is this?
- Effort: How hard to fix?
- Risk: What could go wrong?
3. Prioritize
Focus on:
- 🎯 Quick Wins - Low effort, high impact
- 🔒 Safety First - Fix risky debt before adding features
- 📍 Hot Paths - Prioritize frequently-touched code
4. Fix or Document
- Simple fixes: Just do it (with tests)
- Complex fixes: Create a plan for later
Quick Win Examples
- Dead imports: Remove unused imports (e.g.,
from typing import List, Dict, Optional when only Optional is used)
- Bare excepts: Replace
except: pass with specific exception handling and logging
- Unused variables: Delete variables that are assigned but never read
Tech Debt Report Format
## Tech Debt Analysis
### Summary
- **Total issues found**: X
- **Critical**: X (fix immediately)
- **Quick wins**: X (easy to fix)
- **Requires planning**: X (complex)
### Findings
#### Critical 🔴
| Location | Type | Issue | Effort |
| ------------ | -------- | ------------------------- | ------ |
| `file.py:42` | security | bare except hiding errors | Low |
#### Quick Wins 🎯
| Location | Type | Issue | Effort |
| ------------- | ------ | ----------------- | ------ |
| `utils.py:10` | unused | import never used | Low |
#### Requires Planning 📋
| Location | Type | Issue | Why Complex |
| -------- | ----------- | ------------------ | ------------------------ |
| `api.py` | duplication | 3 similar handlers | Needs abstraction design |
### Recommendations
[Suggested order of tackling debt]
### Fixed This Session
[List of debt items resolved]
When Fixing Debt
- ✅ Run tests after each change
- ✅ Keep changes atomic and focused
- ✅ Verify no regressions
- ❌ Don't mix debt fixes with new features
- ❌ Don't "refactor" working code without reason
Safe Deletion Patterns
Before removing code, verify it's unused:
ag "function_name" --python
ag "from module import function_name"
Watch for code that might be used dynamically:
from typing import List
result = calculate()
log(value)
if False:
do_something()
def _helper():
pass
def public_api():
pass
Also watch for:
- Dynamically called code (
getattr, eval)
- Reflection-based frameworks
- External API contracts
- CLI entry points
Cleaning Checklist
- [ ] Unused imports removed
- [ ] Unused variables removed
- [ ] Dead functions removed
- [ ] Commented-out code removed
- [ ] Debug statements removed
- [ ] Duplicate code consolidated
- [ ] Tests still pass
- [ ] Types still check
Debt Prevention Tips
Add TODOs with issue tracker links, use type hints from the start, and review for simplification opportunities.
"The best code is no code at all."