# context-engineering-intro **Repository Path**: cpgithub/context-engineering-intro ## Basic Information - **Project Name**: context-engineering-intro - **Description**: 上下文工程是新的潮流编码——这是真正让AI编码助手工作的方法。Claude Code在这方面做得最好,所以这个仓库就是围绕这个主题展开的,但你也可以用任何AI编码助手应用这个策略! - **Primary Language**: Unknown - **License**: MIT - **Default Branch**: main - **Homepage**: None - **GVP Project**: No ## Statistics - **Stars**: 0 - **Forks**: 0 - **Created**: 2025-07-21 - **Last Updated**: 2025-07-21 ## Categories & Tags **Categories**: Uncategorized **Tags**: None ## README # Context Engineering Template A comprehensive template for getting started with Context Engineering - the discipline of engineering context for AI coding assistants so they have the information necessary to get the job done end to end. > **Context Engineering is 10x better than prompt engineering and 100x better than vibe coding.** ## 🚀 Quick Start ```bash # 1. Clone this template git clone https://github.com/coleam00/Context-Engineering-Intro.git cd Context-Engineering-Intro # 2. Set up your project rules (optional - template provided) # Edit CLAUDE.md to add your project-specific guidelines # 3. Add examples (highly recommended) # Place relevant code examples in the examples/ folder # 4. Create your initial feature request # Edit INITIAL.md with your feature requirements # 5. Generate a comprehensive PRP (Product Requirements Prompt) # In Claude Code, run: /generate-prp INITIAL.md # 6. Execute the PRP to implement your feature # In Claude Code, run: /execute-prp PRPs/your-feature-name.md ``` ## 📚 Table of Contents - [What is Context Engineering?](#what-is-context-engineering) - [Template Structure](#template-structure) - [Step-by-Step Guide](#step-by-step-guide) - [Writing Effective INITIAL.md Files](#writing-effective-initialmd-files) - [The PRP Workflow](#the-prp-workflow) - [Using Examples Effectively](#using-examples-effectively) - [Best Practices](#best-practices) ## What is Context Engineering? Context Engineering represents a paradigm shift from traditional prompt engineering: ### Prompt Engineering vs Context Engineering **Prompt Engineering:** - Focuses on clever wording and specific phrasing - Limited to how you phrase a task - Like giving someone a sticky note **Context Engineering:** - A complete system for providing comprehensive context - Includes documentation, examples, rules, patterns, and validation - Like writing a full screenplay with all the details ### Why Context Engineering Matters 1. **Reduces AI Failures**: Most agent failures aren't model failures - they're context failures 2. **Ensures Consistency**: AI follows your project patterns and conventions 3. **Enables Complex Features**: AI can handle multi-step implementations with proper context 4. **Self-Correcting**: Validation loops allow AI to fix its own mistakes ## Template Structure ``` context-engineering-intro/ ├── .claude/ │ ├── commands/ │ │ ├── generate-prp.md # Generates comprehensive PRPs │ │ └── execute-prp.md # Executes PRPs to implement features │ └── settings.local.json # Claude Code permissions ├── PRPs/ │ ├── templates/ │ │ └── prp_base.md # Base template for PRPs │ └── EXAMPLE_multi_agent_prp.md # Example of a complete PRP ├── examples/ # Your code examples (critical!) ├── CLAUDE.md # Global rules for AI assistant ├── INITIAL.md # Template for feature requests ├── INITIAL_EXAMPLE.md # Example feature request └── README.md # This file ``` This template doesn't focus on RAG and tools with context engineering because I have a LOT more in store for that soon. ;) ## Step-by-Step Guide ### 1. Set Up Global Rules (CLAUDE.md) The `CLAUDE.md` file contains project-wide rules that the AI assistant will follow in every conversation. The template includes: - **Project awareness**: Reading planning docs, checking tasks - **Code structure**: File size limits, module organization - **Testing requirements**: Unit test patterns, coverage expectations - **Style conventions**: Language preferences, formatting rules - **Documentation standards**: Docstring formats, commenting practices **You can use the provided template as-is or customize it for your project.** ### 2. Create Your Initial Feature Request Edit `INITIAL.md` to describe what you want to build: ```markdown ## FEATURE: [Describe what you want to build - be specific about functionality and requirements] ## EXAMPLES: [List any example files in the examples/ folder and explain how they should be used] ## DOCUMENTATION: [Include links to relevant documentation, APIs, or MCP server resources] ## OTHER CONSIDERATIONS: [Mention any gotchas, specific requirements, or things AI assistants commonly miss] ``` **See `INITIAL_EXAMPLE.md` for a complete example.** ### 3. Generate the PRP PRPs (Product Requirements Prompts) are comprehensive implementation blueprints that include: - Complete context and documentation - Implementation steps with validation - Error handling patterns - Test requirements They are similar to PRDs (Product Requirements Documents) but are crafted more specifically to instruct an AI coding assistant. Run in Claude Code: ```bash /generate-prp INITIAL.md ``` **Note:** The slash commands are custom commands defined in `.claude/commands/`. You can view their implementation: - `.claude/commands/generate-prp.md` - See how it researches and creates PRPs - `.claude/commands/execute-prp.md` - See how it implements features from PRPs The `$ARGUMENTS` variable in these commands receives whatever you pass after the command name (e.g., `INITIAL.md` or `PRPs/your-feature.md`). This command will: 1. Read your feature request 2. Research the codebase for patterns 3. Search for relevant documentation 4. Create a comprehensive PRP in `PRPs/your-feature-name.md` ### 4. Execute the PRP Once generated, execute the PRP to implement your feature: ```bash /execute-prp PRPs/your-feature-name.md ``` The AI coding assistant will: 1. Read all context from the PRP 2. Create a detailed implementation plan 3. Execute each step with validation 4. Run tests and fix any issues 5. Ensure all success criteria are met ## Writing Effective INITIAL.md Files ### Key Sections Explained **FEATURE**: Be specific and comprehensive - ❌ "Build a web scraper" - ✅ "Build an async web scraper using BeautifulSoup that extracts product data from e-commerce sites, handles rate limiting, and stores results in PostgreSQL" **EXAMPLES**: Leverage the examples/ folder - Place relevant code patterns in `examples/` - Reference specific files and patterns to follow - Explain what aspects should be mimicked **DOCUMENTATION**: Include all relevant resources - API documentation URLs - Library guides - MCP server documentation - Database schemas **OTHER CONSIDERATIONS**: Capture important details - Authentication requirements - Rate limits or quotas - Common pitfalls - Performance requirements ## The PRP Workflow ### How /generate-prp Works The command follows this process: 1. **Research Phase** - Analyzes your codebase for patterns - Searches for similar implementations - Identifies conventions to follow 2. **Documentation Gathering** - Fetches relevant API docs - Includes library documentation - Adds gotchas and quirks 3. **Blueprint Creation** - Creates step-by-step implementation plan - Includes validation gates - Adds test requirements 4. **Quality Check** - Scores confidence level (1-10) - Ensures all context is included ### How /execute-prp Works 1. **Load Context**: Reads the entire PRP 2. **Plan**: Creates detailed task list using TodoWrite 3. **Execute**: Implements each component 4. **Validate**: Runs tests and linting 5. **Iterate**: Fixes any issues found 6. **Complete**: Ensures all requirements met See `PRPs/EXAMPLE_multi_agent_prp.md` for a complete example of what gets generated. ## Using Examples Effectively The `examples/` folder is **critical** for success. AI coding assistants perform much better when they can see patterns to follow. ### What to Include in Examples 1. **Code Structure Patterns** - How you organize modules - Import conventions - Class/function patterns 2. **Testing Patterns** - Test file structure - Mocking approaches - Assertion styles 3. **Integration Patterns** - API client implementations - Database connections - Authentication flows 4. **CLI Patterns** - Argument parsing - Output formatting - Error handling ### Example Structure ``` examples/ ├── README.md # Explains what each example demonstrates ├── cli.py # CLI implementation pattern ├── agent/ # Agent architecture patterns │ ├── agent.py # Agent creation pattern │ ├── tools.py # Tool implementation pattern │ └── providers.py # Multi-provider pattern └── tests/ # Testing patterns ├── test_agent.py # Unit test patterns └── conftest.py # Pytest configuration ``` ## Best Practices ### 1. Be Explicit in INITIAL.md - Don't assume the AI knows your preferences - Include specific requirements and constraints - Reference examples liberally ### 2. Provide Comprehensive Examples - More examples = better implementations - Show both what to do AND what not to do - Include error handling patterns ### 3. Use Validation Gates - PRPs include test commands that must pass - AI will iterate until all validations succeed - This ensures working code on first try ### 4. Leverage Documentation - Include official API docs - Add MCP server resources - Reference specific documentation sections ### 5. Customize CLAUDE.md - Add your conventions - Include project-specific rules - Define coding standards ## Resources - [Claude Code Documentation](https://docs.anthropic.com/en/docs/claude-code) - [Context Engineering Best Practices](https://www.philschmid.de/context-engineering)