ai-code-cleanup
Remove AI-generated code slop from branches. Use after AI-assisted coding sessions to clean up defensive bloat, unnecessary comments, type casts, and style inconsistencies. Focuses on identifying and removing AI artifacts that degrade code quality.
Best use case
ai-code-cleanup is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Remove AI-generated code slop from branches. Use after AI-assisted coding sessions to clean up defensive bloat, unnecessary comments, type casts, and style inconsistencies. Focuses on identifying and removing AI artifacts that degrade code quality.
Teams using ai-code-cleanup should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/ai-code-cleanup/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How ai-code-cleanup Compares
| Feature / Agent | ai-code-cleanup | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Remove AI-generated code slop from branches. Use after AI-assisted coding sessions to clean up defensive bloat, unnecessary comments, type casts, and style inconsistencies. Focuses on identifying and removing AI artifacts that degrade code quality.
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.
Related Guides
SKILL.md Source
# AI Code Cleanup
This skill identifies and removes AI-generated artifacts that degrade code quality, including defensive bloat, unnecessary comments, type casts, and style inconsistencies.
## When to Use This Skill
- After AI-assisted coding sessions
- Before code reviews or merging branches
- When cleaning up code that feels "over-engineered"
- When removing unnecessary defensive code
- When standardizing code style after AI generation
- When preparing code for production
## What This Skill Does
1. **Identifies AI Artifacts**: Detects patterns typical of AI-generated code
2. **Removes Bloat**: Eliminates unnecessary defensive code and comments
3. **Fixes Type Issues**: Removes unnecessary type casts and workarounds
4. **Standardizes Style**: Ensures consistency with project conventions
5. **Preserves Functionality**: Maintains code behavior while improving quality
6. **Validates Changes**: Ensures code still compiles and tests pass
## How to Use
### Clean Up Branch
```
Remove AI slop from this branch
```
```
Clean up the code in this pull request
```
### Specific Cleanup
```
Remove unnecessary comments and defensive code from src/
```
## Slop Patterns to Remove
### 1. Unnecessary Comments
**Patterns:**
- Comments explaining obvious code
- Comments inconsistent with file's documentation style
- Redundant comments that restate the code
- Over-documentation of simple operations
**Example:**
```javascript
// ❌ AI-generated: Obvious comment
// Set the user's name
user.name = name;
// ✅ Clean: Self-documenting code
user.name = name;
```
### 2. Defensive Bloat
**Patterns:**
- Extra try/catch blocks abnormal for that codebase
- Defensive null/undefined checks on trusted paths
- Redundant input validation when callers already validate
- Error handling that can never trigger
**Example:**
```javascript
// ❌ AI-generated: Unnecessary defensive code
function processUser(user) {
try {
if (user && user.name && typeof user.name === 'string') {
return user.name.toUpperCase();
}
return null;
} catch (error) {
console.error(error);
return null;
}
}
// ✅ Clean: Trust the input, handle real errors
function processUser(user) {
return user.name.toUpperCase();
}
```
### 3. Type Workarounds
**Patterns:**
- Casts to `any` to bypass type issues
- Unnecessary type assertions (`as X`)
- `@ts-ignore` or `@ts-expect-error` without legitimate reason
- Overly complex generic constraints
**Example:**
```typescript
// ❌ AI-generated: Type workaround
const data = response.data as any;
const result = processData(data as ProcessedData);
// ✅ Clean: Proper typing
const data = response.data;
const result = processData(data);
```
### 4. Style Inconsistencies
**Patterns:**
- Naming conventions different from rest of file
- Formatting that doesn't match surrounding code
- Import organization inconsistent with file patterns
- Variable declarations inconsistent with file style
**Example:**
```javascript
// ❌ AI-generated: Inconsistent style
const UserData = fetchUser();
var processedData = process(UserData);
let FinalResult = format(processedData);
// ✅ Clean: Consistent style
const userData = fetchUser();
const processedData = process(userData);
const finalResult = format(processedData);
```
### 5. AI Tells
**Patterns:**
- Unnecessary emoji usage in code or comments
- Overly verbose variable names
- Redundant intermediate variables
- "Just in case" code with no actual use case
## Cleanup Process
### 1. Get the Diff
```bash
git diff $(git merge-base HEAD main)..HEAD --name-only
```
### 2. Analyze Each File
For each changed file:
- Read the full file to understand existing style
- Identify patterns from slop categories
- Make surgical edits to remove slop
- Preserve functionality
### 3. Verification
- Ensure code still compiles/runs
- Changes should reduce code, not add more
- Run tests to verify behavior
- Check for any regressions
## Examples
### Example 1: Comment Cleanup
**Input**: Remove unnecessary comments from `src/auth.js`
**Output**:
```markdown
## AI Code Cleanup: src/auth.js
### Removed
- 12 redundant comments explaining obvious code
- 3 comments inconsistent with file style
- 5 over-documented simple operations
### Changes
```javascript
// Before
// Function to validate user email
// Takes email string as input
// Returns boolean indicating validity
function validateEmail(email) {
// Check if email is not empty
if (!email) {
return false; // Return false if empty
}
// Return regex test result
return /^[^\s@]+@[^\s@]+\.[^\s@]+$/.test(email);
}
// After
function validateEmail(email) {
if (!email) return false;
return /^[^\s@]+@[^\s@]+\.[^\s@]+$/.test(email);
}
```
### Result
- Lines reduced: 12 → 4
- Functionality preserved
- Tests pass
```
### Example 2: Defensive Bloat Removal
**Input**: Remove defensive bloat from `src/api/users.js`
**Output**:
```markdown
## AI Code Cleanup: src/api/users.js
### Removed
- 3 unnecessary try/catch blocks
- 8 redundant null checks on validated inputs
- 2 error handlers that can never trigger
### Changes
```javascript
// Before
async function getUser(userId) {
try {
if (!userId || typeof userId !== 'string') {
throw new Error('Invalid userId');
}
const user = await db.users.findById(userId);
if (user && user.id) {
return user;
}
return null;
} catch (error) {
console.error(error);
throw error;
}
}
// After
async function getUser(userId) {
const user = await db.users.findById(userId);
return user || null;
}
```
### Result
- Code reduced: 15 lines → 3 lines
- Functionality preserved
- Error handling appropriate for context
```
## Reference Files
- **`references/REFACTORING_PLAN.template.md`** - Refactoring plan template with code smells, before/after metrics, and rollback strategy
## Best Practices
### Cleanup Guidelines
1. **Preserve Functionality**: Only remove code that doesn't affect behavior
2. **Maintain Style**: Follow existing project conventions
3. **Keep Real Errors**: Don't remove legitimate error handling
4. **Test After Changes**: Always verify code still works
5. **Incremental**: Make changes incrementally, test as you go
### What to Keep
- Legitimate error handling
- Necessary type assertions
- Helpful comments that add context
- Defensive code for untrusted inputs
- Style that matches the codebase
### What to Remove
- Obvious comments
- Unnecessary defensive code
- Type workarounds
- Style inconsistencies
- AI-generated artifacts
## Related Use Cases
- Post-AI coding cleanup
- Code review preparation
- Code quality improvement
- Style standardization
- Removing technical debtRelated Skills
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