clean-code
Applies principles from Robert C. Martin's 'Clean Code'. Use this skill when writing, reviewing, or refactoring code to ensure high quality, readability, and maintainability. Covers naming, functio...
Best use case
clean-code is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Applies principles from Robert C. Martin's 'Clean Code'. Use this skill when writing, reviewing, or refactoring code to ensure high quality, readability, and maintainability. Covers naming, functio...
Teams using clean-code 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/clean-code/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How clean-code Compares
| Feature / Agent | clean-code | 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?
Applies principles from Robert C. Martin's 'Clean Code'. Use this skill when writing, reviewing, or refactoring code to ensure high quality, readability, and maintainability. Covers naming, functio...
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
AI Agents for Coding
Browse AI agent skills for coding, debugging, testing, refactoring, code review, and developer workflows across Claude, Cursor, and Codex.
Best AI Skills for Claude
Explore the best AI skills for Claude and Claude Code across coding, research, workflow automation, documentation, and agent operations.
Cursor vs Codex for AI Workflows
Compare Cursor and Codex for AI coding workflows, repository assistance, debugging, refactoring, and reusable developer skills.
SKILL.md Source
# Clean Code Skill This skill embodies the principles of "Clean Code" by Robert C. Martin (Uncle Bob). Use it to transform "code that works" into "code that is clean." ## 🧠 Core Philosophy > "Code is clean if it can be read, and enhanced by a developer other than its original author." — Grady Booch ## When to Use Use this skill when: - **Writing new code**: To ensure high quality from the start. - **Reviewing Pull Requests**: To provide constructive, principle-based feedback. - **Refactoring legacy code**: To identify and remove code smells. - **Improving team standards**: To align on industry-standard best practices. ## 1. Meaningful Names - **Use Intention-Revealing Names**: `elapsedTimeInDays` instead of `d`. - **Avoid Disinformation**: Don't use `accountList` if it's actually a `Map`. - **Make Meaningful Distinctions**: Avoid `ProductData` vs `ProductInfo`. - **Use Pronounceable/Searchable Names**: Avoid `genymdhms`. - **Class Names**: Use nouns (`Customer`, `WikiPage`). Avoid `Manager`, `Data`. - **Method Names**: Use verbs (`postPayment`, `deletePage`). ## 2. Functions - **Small!**: Functions should be shorter than you think. - **Do One Thing**: A function should do only one thing, and do it well. - **One Level of Abstraction**: Don't mix high-level business logic with low-level details (like regex). - **Descriptive Names**: `isPasswordValid` is better than `check`. - **Arguments**: 0 is ideal, 1-2 is okay, 3+ requires a very strong justification. - **No Side Effects**: Functions shouldn't secretly change global state. ## 3. Comments - **Don't Comment Bad Code—Rewrite It**: Most comments are a sign of failure to express ourselves in code. - **Explain Yourself in Code**: ```python # Check if employee is eligible for full benefits if employee.flags & HOURLY and employee.age > 65: ``` vs ```python if employee.isEligibleForFullBenefits(): ``` - **Good Comments**: Legal, Informative (regex intent), Clarification (external libraries), TODOs. - **Bad Comments**: Mumbling, Redundant, Misleading, Mandated, Noise, Position Markers. ## 4. Formatting - **The Newspaper Metaphor**: High-level concepts at the top, details at the bottom. - **Vertical Density**: Related lines should be close to each other. - **Distance**: Variables should be declared near their usage. - **Indentation**: Essential for structural readability. ## 5. Objects and Data Structures - **Data Abstraction**: Hide the implementation behind interfaces. - **The Law of Demeter**: A module should not know about the innards of the objects it manipulates. Avoid `a.getB().getC().doSomething()`. - **Data Transfer Objects (DTO)**: Classes with public variables and no functions. ## 6. Error Handling - **Use Exceptions instead of Return Codes**: Keeps logic clean. - **Write Try-Catch-Finally First**: Defines the scope of the operation. - **Don't Return Null**: It forces the caller to check for null every time. - **Don't Pass Null**: Leads to `NullPointerException`. ## 7. Unit Tests - **The Three Laws of TDD**: 1. Don't write production code until you have a failing unit test. 2. Don't write more of a unit test than is sufficient to fail. 3. Don't write more production code than is sufficient to pass the failing test. - **F.I.R.S.T. Principles**: Fast, Independent, Repeatable, Self-Validating, Timely. ## 8. Classes - **Small!**: Classes should have a single responsibility (SRP). - **The Stepdown Rule**: We want the code to read like a top-down narrative. ## 9. Smells and Heuristics - **Rigidity**: Hard to change. - **Fragility**: Breaks in many places. - **Immobility**: Hard to reuse. - **Viscosity**: Hard to do the right thing. - **Needless Complexity/Repetition**. ## 🛠️ Implementation Checklist - [ ] Is this function smaller than 20 lines? - [ ] Does this function do exactly one thing? - [ ] Are all names searchable and intention-revealing? - [ ] Have I avoided comments by making the code clearer? - [ ] Am I passing too many arguments? - [ ] Is there a failing test for this change?
Related Skills
code-refactoring-refactor-clean
You are a code refactoring expert specializing in clean code principles, SOLID design patterns, and modern software engineering best practices. Analyze and refactor the provided code to improve its...
aws-cost-cleanup
Automated cleanup of unused AWS resources to reduce costs
codebase-cleanup-tech-debt
You are a technical debt expert specializing in identifying, quantifying, and prioritizing technical debt in software projects. Analyze the codebase to uncover debt, assess its impact, and create acti
codebase-cleanup-refactor-clean
You are a code refactoring expert specializing in clean code principles, SOLID design patterns, and modern software engineering best practices. Analyze and refactor the provided code to improve its...
codebase-cleanup-deps-audit
You are a dependency security expert specializing in vulnerability scanning, license compliance, and supply chain security. Analyze project dependencies for known vulnerabilities, licensing issues,...
wordpress-penetration-testing
This skill should be used when the user asks to "pentest WordPress sites", "scan WordPress for vulnerabilities", "enumerate WordPress users, themes, or plugins", "exploit WordPress vu...
php-pro
Write idiomatic PHP code with generators, iterators, SPL data structures, and modern OOP features. Use PROACTIVELY for high-performance PHP applications.
moodle-external-api-development
Create custom external web service APIs for Moodle LMS. Use when implementing web services for course management, user tracking, quiz operations, or custom plugin functionality. Covers parameter va...
laravel-expert
Senior Laravel Engineer role for production-grade, maintainable, and idiomatic Laravel solutions. Focuses on clean architecture, security, performance, and modern standards (Laravel 10/11+).
voice-ai-engine-development
Build real-time conversational AI voice engines using async worker pipelines, streaming transcription, LLM agents, and TTS synthesis with interrupt handling and multi-provider support
voice-ai-development
Expert in building voice AI applications - from real-time voice agents to voice-enabled apps. Covers OpenAI Realtime API, Vapi for voice agents, Deepgram for transcription, ElevenLabs for synthesis...
voice-agents
Voice agents represent the frontier of AI interaction - humans speaking naturally with AI systems. The challenge isn't just speech recognition and synthesis, it's achieving natural conversation flo...