code-exemplars-blueprint-generator
Technology-agnostic prompt generator that creates customizable AI prompts for scanning codebases and identifying high-quality code exemplars. Supports multiple programming languages (.NET, Java, JavaScript, TypeScript, React, Angular, Python) with configurable analysis depth, categorization methods, and documentation formats to establish coding standards and maintain consistency across development teams.
Best use case
code-exemplars-blueprint-generator is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Technology-agnostic prompt generator that creates customizable AI prompts for scanning codebases and identifying high-quality code exemplars. Supports multiple programming languages (.NET, Java, JavaScript, TypeScript, React, Angular, Python) with configurable analysis depth, categorization methods, and documentation formats to establish coding standards and maintain consistency across development teams.
Teams using code-exemplars-blueprint-generator 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/code-exemplars-blueprint-generator/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How code-exemplars-blueprint-generator Compares
| Feature / Agent | code-exemplars-blueprint-generator | 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?
Technology-agnostic prompt generator that creates customizable AI prompts for scanning codebases and identifying high-quality code exemplars. Supports multiple programming languages (.NET, Java, JavaScript, TypeScript, React, Angular, Python) with configurable analysis depth, categorization methods, and documentation formats to establish coding standards and maintain consistency across development teams.
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
# Code Exemplars Blueprint Generator
## Configuration Variables
${PROJECT_TYPE="Auto-detect|.NET|Java|JavaScript|TypeScript|React|Angular|Python|Other"} <!-- Primary technology -->
${SCAN_DEPTH="Basic|Standard|Comprehensive"} <!-- How deeply to analyze the codebase -->
${INCLUDE_CODE_SNIPPETS=true|false} <!-- Include actual code snippets in addition to file references -->
${CATEGORIZATION="Pattern Type|Architecture Layer|File Type"} <!-- How to organize exemplars -->
${MAX_EXAMPLES_PER_CATEGORY=3} <!-- Maximum number of examples per category -->
${INCLUDE_COMMENTS=true|false} <!-- Include explanatory comments for each exemplar -->
## Generated Prompt
"Scan this codebase and generate an exemplars.md file that identifies high-quality, representative code examples. The exemplars should demonstrate our coding standards and patterns to help maintain consistency. Use the following approach:
### 1. Codebase Analysis Phase
- ${PROJECT_TYPE == "Auto-detect" ? "Automatically detect primary programming languages and frameworks by scanning file extensions and configuration files" : `Focus on ${PROJECT_TYPE} code files`}
- Identify files with high-quality implementation, good documentation, and clear structure
- Look for commonly used patterns, architecture components, and well-structured implementations
- Prioritize files that demonstrate best practices for our technology stack
- Only reference actual files that exist in the codebase - no hypothetical examples
### 2. Exemplar Identification Criteria
- Well-structured, readable code with clear naming conventions
- Comprehensive comments and documentation
- Proper error handling and validation
- Adherence to design patterns and architectural principles
- Separation of concerns and single responsibility principle
- Efficient implementation without code smells
- Representative of our standard approaches
### 3. Core Pattern Categories
${PROJECT_TYPE == ".NET" || PROJECT_TYPE == "Auto-detect" ? `#### .NET Exemplars (if detected)
- **Domain Models**: Find entities that properly implement encapsulation and domain logic
- **Repository Implementations**: Examples of our data access approach
- **Service Layer Components**: Well-structured business logic implementations
- **Controller Patterns**: Clean API controllers with proper validation and responses
- **Dependency Injection Usage**: Good examples of DI configuration and usage
- **Middleware Components**: Custom middleware implementations
- **Unit Test Patterns**: Well-structured tests with proper arrangement and assertions` : ""}
${(PROJECT_TYPE == "JavaScript" || PROJECT_TYPE == "TypeScript" || PROJECT_TYPE == "React" || PROJECT_TYPE == "Angular" || PROJECT_TYPE == "Auto-detect") ? `#### Frontend Exemplars (if detected)
- **Component Structure**: Clean, well-structured components
- **State Management**: Good examples of state handling
- **API Integration**: Well-implemented service calls and data handling
- **Form Handling**: Validation and submission patterns
- **Routing Implementation**: Navigation and route configuration
- **UI Components**: Reusable, well-structured UI elements
- **Unit Test Examples**: Component and service tests` : ""}
${PROJECT_TYPE == "Java" || PROJECT_TYPE == "Auto-detect" ? `#### Java Exemplars (if detected)
- **Entity Classes**: Well-designed JPA entities or domain models
- **Service Implementations**: Clean service layer components
- **Repository Patterns**: Data access implementations
- **Controller/Resource Classes**: API endpoint implementations
- **Configuration Classes**: Application configuration
- **Unit Tests**: Well-structured JUnit tests` : ""}
${PROJECT_TYPE == "Python" || PROJECT_TYPE == "Auto-detect" ? `#### Python Exemplars (if detected)
- **Class Definitions**: Well-structured classes with proper documentation
- **API Routes/Views**: Clean API implementations
- **Data Models**: ORM model definitions
- **Service Functions**: Business logic implementations
- **Utility Modules**: Helper and utility functions
- **Test Cases**: Well-structured unit tests` : ""}
### 4. Architecture Layer Exemplars
- **Presentation Layer**:
- User interface components
- Controllers/API endpoints
- View models/DTOs
- **Business Logic Layer**:
- Service implementations
- Business logic components
- Workflow orchestration
- **Data Access Layer**:
- Repository implementations
- Data models
- Query patterns
- **Cross-Cutting Concerns**:
- Logging implementations
- Error handling
- Authentication/authorization
- Validation
### 5. Exemplar Documentation Format
For each identified exemplar, document:
- File path (relative to repository root)
- Brief description of what makes it exemplary
- Pattern or component type it represents
${INCLUDE_COMMENTS ? "- Key implementation details and coding principles demonstrated" : ""}
${INCLUDE_CODE_SNIPPETS ? "- Small, representative code snippet (if applicable)" : ""}
${SCAN_DEPTH == "Comprehensive" ? `### 6. Additional Documentation
- **Consistency Patterns**: Note consistent patterns observed across the codebase
- **Architecture Observations**: Document architectural patterns evident in the code
- **Implementation Conventions**: Identify naming and structural conventions
- **Anti-patterns to Avoid**: Note any areas where the codebase deviates from best practices` : ""}
### ${SCAN_DEPTH == "Comprehensive" ? "7" : "6"}. Output Format
Create exemplars.md with:
1. Introduction explaining the purpose of the document
2. Table of contents with links to categories
3. Organized sections based on ${CATEGORIZATION}
4. Up to ${MAX_EXAMPLES_PER_CATEGORY} exemplars per category
5. Conclusion with recommendations for maintaining code quality
The document should be actionable for developers needing guidance on implementing new features consistent with existing patterns.
Important: Only include actual files from the codebase. Verify all file paths exist. Do not include placeholder or hypothetical examples.
"
## Expected Output
Upon running this prompt, GitHub Copilot will scan your codebase and generate an exemplars.md file containing real references to high-quality code examples in your repository, organized according to your selected parameters.Related Skills
technology-stack-blueprint-generator
Comprehensive technology stack blueprint generator that analyzes codebases to create detailed architectural documentation. Automatically detects technology stacks, programming languages, and implementation patterns across multiple platforms (.NET, Java, JavaScript, React, Python). Generates configurable blueprints with version information, licensing details, usage patterns, coding conventions, and visual diagrams. Provides implementation-ready templates and maintains architectural consistency for guided development.
readme-blueprint-generator
Intelligent README.md generation prompt that analyzes project documentation structure and creates comprehensive repository documentation. Scans .github/copilot directory files and copilot-instructions.md to extract project information, technology stack, architecture, development workflow, coding standards, and testing approaches while generating well-structured markdown documentation with proper formatting, cross-references, and developer-focused content.
project-workflow-analysis-blueprint-generator
Comprehensive technology-agnostic prompt generator for documenting end-to-end application workflows. Automatically detects project architecture patterns, technology stacks, and data flow patterns to generate detailed implementation blueprints covering entry points, service layers, data access, error handling, and testing approaches across multiple technologies including .NET, Java/Spring, React, and microservices architectures.
folder-structure-blueprint-generator
Comprehensive technology-agnostic prompt for analyzing and documenting project folder structures. Auto-detects project types (.NET, Java, React, Angular, Python, Node.js, Flutter), generates detailed blueprints with visualization options, naming conventions, file placement patterns, and extension templates for maintaining consistent code organization across diverse technology stacks.
draw-io-diagram-generator
Use when creating, editing, or generating draw.io diagram files (.drawio, .drawio.svg, .drawio.png). Covers mxGraph XML authoring, shape libraries, style strings, flowcharts, system architecture, sequence diagrams, ER diagrams, UML class diagrams, network topology, layout strategy, the hediet.vscode-drawio VS Code extension, and the full agent workflow from request to a ready-to-open file.
copilot-instructions-blueprint-generator
Technology-agnostic blueprint generator for creating comprehensive copilot-instructions.md files that guide GitHub Copilot to produce code consistent with project standards, architecture patterns, and exact technology versions by analyzing existing codebase patterns and avoiding assumptions.
architecture-blueprint-generator
Comprehensive project architecture blueprint generator that analyzes codebases to create detailed architectural documentation. Automatically detects technology stacks and architectural patterns, generates visual diagrams, documents implementation patterns, and provides extensible blueprints for maintaining architectural consistency and guiding new development.
typescript-mcp-server-generator
Generate a complete MCP server project in TypeScript with tools, resources, and proper configuration
swift-mcp-server-generator
Generate a complete Model Context Protocol server project in Swift using the official MCP Swift SDK package.
rust-mcp-server-generator
Generate a complete Rust Model Context Protocol server project with tools, prompts, resources, and tests using the official rmcp SDK
ruby-mcp-server-generator
Generate a complete Model Context Protocol server project in Ruby using the official MCP Ruby SDK gem.
python-mcp-server-generator
Generate a complete MCP server project in Python with tools, resources, and proper configuration