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compound-engineering

majiayu000
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About

The Compound Engineering skill provides a structured AI-assisted development workflow following a Plan → Work → Review → Compound loop. It helps developers when planning features, implementing code, reviewing work, or documenting learnings to systematically reduce technical debt. Each unit of work is designed to make subsequent development easier by codifying solutions and insights.

Quick Install

Claude Code

Recommended
Plugin CommandRecommended
/plugin add https://github.com/majiayu000/claude-skill-registry
Git CloneAlternative
git clone https://github.com/majiayu000/claude-skill-registry.git ~/.claude/skills/compound-engineering

Copy and paste this command in Claude Code to install this skill

Documentation

This skill implements Compound Engineering—a development methodology where each unit of work makes subsequent work easier, not harder. Inspired by Every.to's engineering approach.

Core Philosophy

Each unit of engineering work should make subsequent units of work easier—not harder.

Traditional development accumulates technical debt. Every feature adds complexity. Every change increases maintenance burden. Compound engineering inverts this by creating a learning loop where each bug, failed test, or problem-solving insight gets documented and used by future work.

The Compound Engineering Loop

Plan → Work → Review → Compound → (repeat)
  1. Plan (40%): Research approaches, synthesize information into detailed implementation plans
  2. Work (20%): Execute the plan systematically with continuous validation
  3. Review (20%): Evaluate output quality and identify learnings
  4. Compound (20%): Feed results back into the system to make the next loop better

80% of compound engineering is in planning and review. 20% is in execution.

Step 1: Plan

Before writing any code, create a comprehensive plan. Good plans start with research:

Research Phase

  1. Codebase Analysis: Search for similar patterns, conventions, and prior art in the codebase
  2. Commit History: Use git log to understand how related features were built
  3. Documentation: Check README, AGENTS.md, and inline documentation
  4. External Research: Search for best practices relevant to the problem

Plan Document Structure

Create a plan document (markdown) with:

# Feature: [Name]

## Context
- What problem does this solve?
- Who is affected?
- What's the current behavior vs desired behavior?

## Research Findings
- Similar patterns found in codebase: [list with file links]
- Relevant prior implementations: [commit references]
- Best practices discovered: [external references]

## Acceptance Criteria
- [ ] Criterion 1 (testable)
- [ ] Criterion 2 (testable)
- [ ] Criterion 3 (testable)

## Technical Approach
1. Step 1: [specific action]
2. Step 2: [specific action]
3. Step 3: [specific action]

## Code Examples
[Include code snippets that follow existing patterns]

## Testing Strategy
- Unit tests: [what to test]
- Integration tests: [what to test]
- Manual verification: [steps]

## Risks & Mitigations
- Risk 1: [mitigation]
- Risk 2: [mitigation]

Detail Levels

  • Minimal: Quick issues for simple features (1-2 hours work)
  • Standard: Issues with technical considerations (1-2 days work)
  • Comprehensive: Major features requiring architecture decisions (multi-day work)

Step 2: Work

Execute the plan systematically:

Execution Workflow

  1. Create isolated environment: Use feature branch or git worktree
  2. Break down into tasks: Create TODO list from plan
  3. Execute systematically: One task at a time
  4. Validate continuously: Run tests after each change
  5. Commit incrementally: Small, focused commits with clear messages

Working Principles

  • Follow existing patterns discovered in research
  • Run tests after every meaningful change
  • If something fails, understand why before proceeding
  • Keep changes focused—don't scope creep

Quality Checks During Work

# After each change, verify:
npm run typecheck  # or equivalent
npm test           # run affected tests
npm run lint       # check code quality

Step 3: Review

Before merging, perform comprehensive review:

Review Checklist

Code Quality

  • Follows existing codebase patterns and conventions
  • No unnecessary complexity—prefer duplication over wrong abstraction
  • Clear naming that matches project conventions
  • No debug code or console.logs left behind

Security

  • No secrets or sensitive data exposed
  • Input validation where needed
  • Safe handling of user data

Performance

  • No obvious performance regressions
  • Database queries are efficient (no N+1)
  • Appropriate caching if applicable

Testing

  • Tests cover acceptance criteria
  • Edge cases considered
  • Tests are maintainable, not brittle

Architecture

  • Change is consistent with system design
  • No unnecessary coupling introduced
  • Follows separation of concerns

Multi-Perspective Review

Consider the code from different angles:

  • Maintainer perspective: Will this be easy to modify in 6 months?
  • Performance perspective: Any bottlenecks?
  • Security perspective: Any vulnerabilities?
  • Simplicity perspective: Can this be simpler?

Step 4: Compound

This is where the magic happens—capture learnings to make future work easier:

What to Compound

Patterns: Document new patterns discovered or created

## Pattern: [Name]
When to use: [context]
Implementation: [example code]
See: [file reference]

Decisions: Record why certain approaches were chosen

## Decision: [Choice Made]
Context: [situation]
Options considered: [alternatives]
Rationale: [why this choice]
Consequences: [trade-offs]

Failures: Turn every bug into a lesson

## Lesson: [What Went Wrong]
Symptom: [what was observed]
Root cause: [actual problem]
Fix: [solution]
Prevention: [how to avoid in future]

Where to Codify Learnings

  1. AGENTS.md: Project-wide guidance that applies everywhere
  2. Subdirectory AGENTS.md: Specific guidance for subsystems
  3. Inline comments: Only when the code isn't self-explanatory
  4. Test cases: Turn bugs into regression tests

Compounding in Practice

After completing work, ask:

  • What did I learn that others should know?
  • What mistake did I make that can be prevented?
  • What pattern did I discover or create?
  • What decision was made and why?

Document these in the appropriate location so future agents (and humans) benefit.

Practical Commands

Planning a Feature

Plan implementation for: [describe feature]
- Research the codebase for similar patterns
- Check git history for related changes
- Create a detailed plan with acceptance criteria
- Include code examples that match existing patterns

Executing Work

Execute this plan: [plan reference]
- Create feature branch
- Break into TODO list
- Work through systematically
- Run tests after each change
- Create PR when complete

Reviewing Code

Review this change: [PR/diff reference]
- Check for code quality issues
- Look for security concerns
- Evaluate performance implications
- Verify test coverage
- Suggest improvements

Compounding Learnings

Compound learnings from: [work just completed]
- What patterns were used or created?
- What decisions were made and why?
- What failures occurred and how to prevent them?
- Update AGENTS.md with relevant guidance

Key Principles

  1. Prefer duplication over wrong abstraction: Simple, clear code beats complex abstractions
  2. Document as you go: Every command generates documentation that makes future work easier
  3. Quality compounds: High-quality code is easier to modify
  4. Systematic beats heroic: Consistent processes beat individual heroics
  5. Knowledge should be codified: Learnings should be captured and reused

Success Metrics

You're doing compound engineering well when:

  • Each feature takes less effort than the last similar feature
  • Bugs become one-time events (documented and prevented)
  • New team members can be productive quickly (institutional knowledge is accessible)
  • Code reviews surface fewer issues (patterns are established and followed)
  • Technical debt decreases over time (learnings compound)

Remember: You're not just building features—you're building a development system that gets better with each use.

GitHub Repository

majiayu000/claude-skill-registry
Path: skills/compound-engineering

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