library/skills/claude-code-guide/SKILL.md
Master guide for using Claude Code effectively. Includes configuration templates, prompting strategies "Thinking" keywords, debugging techniques, and best practices for interacting with the agent.
npx skillsauth add superesty/unified-ag-kit Claude Code GuideInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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To provide a comprehensive reference for configuring and using Claude Code (the agentic coding tool) to its full potential. This skill synthesizes best practices, configuration templates, and advanced usage patterns.
CLAUDE.md)When starting a new project, create a CLAUDE.md file in the root directory to guide the agent.
# Project Guidelines
## Commands
- Run app: `npm run dev`
- Test: `npm test`
- Build: `npm run build`
## Code Style
- Use TypeScript for all new code.
- Functional components with Hooks for React.
- Tailwind CSS for styling.
- Early returns for error handling.
## Workflow
- Read `README.md` first to understand project context.
- Before editing, read the file content.
- After editing, run tests to verify.
Use these keywords in your prompts to trigger deeper reasoning from the agent:
If the agent is stuck or behaving unexpectedly:
grep or find to locate relevant files first.CLAUDE.md.Based on Claude Code Guide by zebbern.
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