Agent skill
claude-code-mastery
Install this agent skill to your Project
npx add-skill https://github.com/borghei/Claude-Skills/tree/main/engineering/claude-code-mastery
Metadata
Additional technical details for this skill
- tags
- author
- borghei
- domain
- development-tools
- updated
- 1774915200
- version
- 1.0.0
- category
- engineering
SKILL.md
Claude Code Mastery
Expert skill for Claude Code CLI -- CLAUDE.md optimization, skill authoring, subagent creation, hooks automation, and context engineering.
Keywords
claude-code, claude-cli, CLAUDE.md, skill-authoring, subagents, hooks, context-window, token-budget, MCP-servers, worktrees, permission-modes, prompt-engineering, context-engineering, slash-commands
Quick Start
# Scaffold a new skill package
python scripts/skill_scaffolder.py my-new-skill --domain engineering --description "Brief description"
# Analyze and optimize an existing CLAUDE.md
python scripts/claudemd_optimizer.py path/to/CLAUDE.md
# Estimate context window usage across a project
python scripts/context_analyzer.py /path/to/project
# All tools support JSON output
python scripts/claudemd_optimizer.py CLAUDE.md --json
Tools
Skill Scaffolder
Generates a skill directory with SKILL.md template, scripts/, references/, assets/ directories, and YAML frontmatter.
python scripts/skill_scaffolder.py my-skill --domain engineering --description "Does X"
| Parameter | Description |
|---|---|
skill_name |
Name for the skill (kebab-case) |
--domain, -d |
Domain category |
--description |
Brief description for frontmatter |
--version |
Semantic version (default: 1.0.0) |
--license |
License type (default: MIT) |
--output, -o |
Parent directory for skill folder |
--json |
Output as JSON |
CLAUDE.md Optimizer
Analyzes a CLAUDE.md file and produces optimization recommendations.
python scripts/claudemd_optimizer.py CLAUDE.md --token-limit 4000 --json
Output includes: line count, token estimate, section completeness, redundancy detection, missing sections, scored recommendations.
Context Analyzer
Scans a project to estimate context window consumption by file category.
python scripts/context_analyzer.py /path/to/project --max-depth 4 --json
Output includes: token estimates per category, percentage of context consumed, largest files, budget breakdown, reduction recommendations.
Workflow 1: Optimize a CLAUDE.md
- Audit -- Run
python scripts/claudemd_optimizer.py CLAUDE.mdand capture the score. - Structure -- Reorganize into these sections:
markdown
## Project Purpose -- What the project is ## Architecture Overview -- Directory structure, key patterns ## Development Environment -- Build, test, setup commands ## Key Principles -- 3-7 non-obvious rules ## Anti-Patterns to Avoid -- Things that look right but are wrong ## Git Workflow -- Branch strategy, commit conventions - Compress -- Convert paragraphs to bullets (saves ~30% tokens). Use code blocks for commands. Remove generic advice Claude already knows.
- Hierarchize -- Move domain details to child CLAUDE.md files:
project/ ├── CLAUDE.md # Global: purpose, architecture, principles ├── frontend/CLAUDE.md # Frontend-specific: React patterns, styling ├── backend/CLAUDE.md # Backend-specific: API patterns, DB conventions └── .claude/CLAUDE.md # User-specific overrides (gitignored) - Validate -- Run
python scripts/claudemd_optimizer.py CLAUDE.md --token-limit 4000and confirm score improved.
Workflow 2: Author a New Skill
- Scaffold --
python scripts/skill_scaffolder.py my-skill -d engineering --description "..." - Write SKILL.md in this order:
- YAML frontmatter (name, description with trigger phrases, license, metadata)
- Title and one-line summary
- Quick Start (3-5 copy-pasteable commands)
- Tools (each script with usage and parameters table)
- Workflows (numbered step-by-step sequences)
- Reference links
- Optimize the description for auto-discovery:
yaml
description: >- This skill should be used when the user asks to "analyze performance", "optimize queries", "profile memory", or "benchmark endpoints". Use for performance engineering and capacity planning. - Build Python tools -- standard library only, argparse CLI,
--jsonflag, module docstring, error handling. - Verify -- Confirm the skill triggers on expected prompts and tools run without errors.
Workflow 3: Create a Subagent
- Define scope -- One narrow responsibility per agent.
- Create agent YAML at
.claude/agents/agent-name.yaml:yamlname: security-reviewer description: Reviews code for security vulnerabilities model: claude-sonnet-4-20250514 allowed-tools: - Read - Glob - Grep - Bash(git diff*) custom-instructions: | For every change: 1. Check for hardcoded secrets 2. Identify injection vulnerabilities 3. Verify auth patterns 4. Flag insecure dependencies Output a structured report with severity levels. - Set tool access -- read-only (
Read, Glob, Grep), read+commands (+ Bash(npm test*)), or write-capable (+ Edit, Write). - Invoke --
/agents/security-reviewer Review the last 3 commits - Validate -- Confirm the agent stays within scope and produces structured output.
Workflow 4: Configure Hooks
Hooks run custom scripts at lifecycle events without user approval.
| Hook | Fires When | Blocking |
|---|---|---|
PreToolUse |
Before tool executes | Yes (exit 1 blocks) |
PostToolUse |
After tool completes | No |
Notification |
Claude sends notification | No |
Stop |
Claude finishes turn | No |
- Add hook config to
.claude/settings.json:json{ "hooks": { "PostToolUse": [ { "matcher": "Edit|Write", "hooks": [{ "type": "command", "command": "prettier --write \"$CLAUDE_FILE_PATH\" 2>/dev/null || true" }] } ], "PreToolUse": [ { "matcher": "Bash", "hooks": [{ "type": "command", "command": "bash .claude/hooks/validate.sh" }] } ] } } - Test -- Trigger the relevant tool and confirm the hook fires.
- Iterate -- Add matchers for additional tools as needed.
Workflow 5: Manage Context Budget
- Audit --
python scripts/context_analyzer.py /path/to/project - Apply budget targets:
Category Budget Purpose System prompt + CLAUDE.md 5-10% Project configuration Skill definitions 5-15% Active skill content Source code (read files) 30-50% Files Claude reads Conversation history 20-30% Messages and responses Working memory 10-20% Reasoning space - Reduce overhead -- Keep root CLAUDE.md under 4000 tokens. Use hierarchical loading. Avoid reading entire large files. Use
/compactafter completing subtasks. - Validate -- Re-run context analyzer and confirm overhead dropped.
Quick Reference
Slash Commands
| Command | Description |
|---|---|
/compact |
Summarize conversation to free context |
/clear |
Clear conversation history |
/model |
Switch model mid-session |
/agents |
List and invoke custom agents |
/permissions |
View and modify tool permissions |
/cost |
Show token usage and cost |
/doctor |
Diagnose configuration issues |
/init |
Generate CLAUDE.md for current project |
Permission Modes
| Mode | Behavior | Best For |
|---|---|---|
| Default | Asks permission for writes | Normal development |
| Allowlist | Auto-approves listed tools | Repetitive workflows |
| Yolo | Auto-approves everything | Trusted automation |
{ "permissions": { "allow": ["Read", "Glob", "Grep", "Bash(npm test*)"],
"deny": ["Bash(rm -rf*)", "Bash(git push*)"] } }
CLAUDE.md Loading Order
~/.claude/CLAUDE.md-- user global, always loaded/project/CLAUDE.md-- project root, always loaded/project/.claude/CLAUDE.md-- project config, always loaded/project/subdir/CLAUDE.md-- subdirectory, loaded when files accessed
MCP Servers
| Server | Purpose |
|---|---|
server-filesystem |
File access beyond project |
server-github |
GitHub API (issues, PRs) |
server-postgres |
Database queries |
server-memory |
Persistent key-value store |
server-brave-search |
Web search |
server-puppeteer |
Browser automation |
Reference Documentation
| Document | Path |
|---|---|
| Skill Authoring Guide | references/skill-authoring-guide.md |
| Subagent Patterns | references/subagent-patterns.md |
| Hooks Cookbook | references/hooks-cookbook.md |
| Skill Template | assets/skill-template.md |
| Agent Template | assets/agent-template.md |
Troubleshooting
| Problem | Cause | Solution |
|---|---|---|
| CLAUDE.md changes not picked up | Claude loads CLAUDE.md at session start | Start a new conversation or use /clear to reload configuration |
| Skill not triggering on expected prompts | Description field in YAML frontmatter missing trigger phrases | Add quoted user phrases to the description field (e.g., "optimize queries", "profile memory") |
| Context window exhausted mid-task | Root CLAUDE.md too large or too many files read | Run context_analyzer.py to audit token usage, then move domain content to child CLAUDE.md files |
| Hook not firing after tool use | Matcher in .claude/settings.json does not match the tool name |
Verify the matcher regex matches the exact tool name (e.g., Edit|Write, not edit|write) |
| Subagent exceeds scope and edits unrelated files | allowed-tools list is too permissive |
Restrict to read-only tools (Read, Glob, Grep) and add write tools only when necessary |
| Scaffolder fails with "Directory already exists" | Target skill directory already present on disk | Remove or rename the existing directory, or choose a different skill name |
| Optimizer reports low score despite good structure | Token count exceeds the default 6000 limit | Pass --token-limit matching your actual budget (e.g., --token-limit 10000) |
Success Criteria
- CLAUDE.md optimizer score of 80+ on all project CLAUDE.md files
- Root CLAUDE.md stays under 4000 tokens (verified by
claudemd_optimizer.py --token-limit 4000) - Auto-loaded configuration (all CLAUDE.md files combined) consumes less than 10% of the context window
- Every new skill scaffolded passes the optimizer with zero "critical" missing sections
- Subagents stay within their declared
allowed-toolsscope during testing - Hooks execute in under 500ms to avoid perceptible delay on tool use
- Context analyzer shows 50%+ of the context window available for source code and reasoning
Scope & Limitations
This skill covers:
- Authoring, structuring, and optimizing CLAUDE.md files for any project
- Scaffolding new skill packages with correct directory layout and frontmatter
- Creating and configuring Claude Code subagents with scoped tool access
- Analyzing and managing context window token budgets across a codebase
This skill does NOT cover:
- Writing application source code or implementing business logic (see senior-fullstack, senior-backend)
- MCP server development or custom transport protocols (see mcp-server-builder)
- Advanced prompt engineering techniques for LLM applications (see senior-prompt-engineer)
- CI/CD pipeline configuration or deployment automation (see senior-devops, ci-cd-pipeline-builder)
Integration Points
| Skill | Integration | Data Flow |
|---|---|---|
| senior-architect | Architecture decisions inform CLAUDE.md structure sections | Architecture diagrams and patterns feed into the Architecture Overview section of CLAUDE.md |
| code-reviewer | Subagent creation for automated code review | Claude Code Mastery creates the agent YAML; Code Reviewer provides the review logic |
| senior-prompt-engineer | Prompt optimization for skill descriptions and agent instructions | Prompt engineering techniques improve YAML frontmatter trigger phrases and agent custom-instructions |
| doc-drift-detector | Detects when CLAUDE.md drifts out of sync with the codebase | Context Analyzer output feeds drift detection; drift findings trigger CLAUDE.md optimization |
| context-engine | Advanced context management strategies | Context Analyzer provides token budgets; Context Engine applies compression and prioritization |
| senior-secops | Security hooks and permission mode configuration | SecOps policies define which tools to deny; Claude Code Mastery configures the permission allowlists |
Tool Reference
1. Skill Scaffolder (scripts/skill_scaffolder.py)
Purpose: Generate a complete skill package directory with SKILL.md template, starter Python script, reference document, and proper YAML frontmatter.
Usage:
python scripts/skill_scaffolder.py <skill_name> [options]
Parameters:
| Parameter | Type | Required | Default | Description |
|---|---|---|---|---|
skill_name |
positional | Yes | -- | Name for the skill in kebab-case (e.g., my-new-skill) |
--domain, -d |
string | No | engineering |
Domain category. Options: engineering, marketing, product, project-management, c-level, ra-qm, business-growth, finance, standards, development-tools |
--description |
string | No | auto-generated | Brief description for YAML frontmatter, optimized for auto-discovery |
--version |
string | No | 1.0.0 |
Semantic version for metadata |
--license |
string | No | MIT |
License type for frontmatter |
--category |
string | No | same as domain | Skill category for metadata |
--output, -o |
string | No | . (current dir) |
Parent directory for the skill folder |
--json |
flag | No | off | Output results in JSON format |
Example:
python scripts/skill_scaffolder.py api-analyzer -d engineering --description "API analysis and optimization" --json
Output Formats:
- Human-readable (default): Prints skill name, domain, version, location, directory tree, and next-steps checklist.
- JSON (
--json): Returns{ success, path, name, domain, version, directories_created, files_created }.
2. CLAUDE.md Optimizer (scripts/claudemd_optimizer.py)
Purpose: Analyze a CLAUDE.md file for structure completeness, token efficiency, redundancy, and verbosity. Produces a scored report with prioritized optimization recommendations.
Usage:
python scripts/claudemd_optimizer.py <file_path> [options]
Parameters:
| Parameter | Type | Required | Default | Description |
|---|---|---|---|---|
file_path |
positional | Yes | -- | Path to the CLAUDE.md file to analyze |
--token-limit |
integer | No | 6000 |
Maximum recommended token count for the file |
--json |
flag | No | off | Output results in JSON format |
Example:
python scripts/claudemd_optimizer.py path/to/CLAUDE.md --token-limit 4000
Output Formats:
- Human-readable (default): Displays score (0-100), file metrics (lines, words, tokens), section breakdown with per-section token estimates, section completeness checklist (critical/high/medium), redundancy issues, and prioritized recommendations (HIGH/MEDIUM/LOW).
- JSON (
--json): Returns{ success, file, metrics, sections, completeness, redundancies, recommendations, score }.
3. Context Analyzer (scripts/context_analyzer.py)
Purpose: Scan a project directory to estimate how much of Claude Code's context window is consumed by CLAUDE.md files, skill definitions, source code, and configuration. Produces a token budget breakdown with reduction recommendations.
Usage:
python scripts/context_analyzer.py <project_path> [options]
Parameters:
| Parameter | Type | Required | Default | Description |
|---|---|---|---|---|
project_path |
positional | Yes | -- | Path to the project directory to analyze |
--max-depth |
integer | No | 5 |
Maximum directory traversal depth |
--context-window |
integer | No | 200000 |
Total context window size in tokens |
--json |
flag | No | off | Output results in JSON format |
Example:
python scripts/context_analyzer.py /path/to/project --max-depth 3 --context-window 200000 --json
Output Formats:
- Human-readable (default): Displays project summary (files scanned, total tokens, auto-loaded tokens), context budget breakdown with visual bar chart, per-category breakdown (Claude Configuration, Skill Definitions, Reference Documents, Source Code, Config & Build, Documentation) with largest files listed, top 20 largest files, and prioritized recommendations.
- JSON (
--json): Returns{ success, project_path, context_window, summary, categories, budget, largest_files, recommendations }.
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