Files
my-pal-mcp-server/README.md
Fahad 8871748c1b fix: standardize file parameter naming across all tools
- Change `relevant_files` to `files` in debug_issue tool
- Change `reference_files` to `files` in think_deeper tool
- Now all tools consistently use `files` parameter name
- Fix cross-platform test for Windows path separators
- Update README to reflect consistent parameter naming

This improves API consistency and reduces confusion when using different tools.

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-06-09 06:14:18 +04:00

17 KiB

Gemini MCP Server for Claude Code

The ultimate development partner for Claude - a Model Context Protocol server that gives Claude access to Google's Gemini 2.5 Pro for extended thinking, code analysis, and problem-solving.

Why This Server?

Claude is brilliant, but sometimes you need:

  • A second opinion on complex architectural decisions - augment Claude's extended thinking with Gemini's perspective
  • Massive context window (1M tokens) - Gemini 2.5 Pro can analyze entire codebases, read hundreds of files at once, and provide comprehensive insights
  • Deep code analysis across massive codebases that exceed Claude's context limits
  • Expert debugging for tricky issues with full system context
  • Professional code reviews with actionable feedback across entire repositories
  • A senior developer partner to validate and extend ideas

This server makes Gemini your development sidekick, handling what Claude can't or extending what Claude starts.

Quickstart (5 minutes)

1. Get a Gemini API Key

Visit Google AI Studio and generate an API key. For best results with Gemini 2.5 Pro, use a paid API key as the free tier has limited access to the latest models.

2. Clone the Repository

Clone this repository to a location on your computer:

# Example: Clone to your home directory
cd ~
git clone https://github.com/BeehiveInnovations/gemini-mcp-server.git

# The server is now at: ~/gemini-mcp-server

Note the full path - you'll need it in the next step:

  • macOS/Linux: /Users/YOUR_USERNAME/gemini-mcp-server
  • Windows: C:\Users\YOUR_USERNAME\gemini-mcp-server

3. Configure Claude Desktop

Add the server to your claude_desktop_config.json:

Find your config file:

  • macOS: ~/Library/Application Support/Claude/claude_desktop_config.json
  • Windows: %APPDATA%\Claude\claude_desktop_config.json

Add this configuration (replace with YOUR actual paths):

macOS/Linux:

{
  "mcpServers": {
    "gemini": {
      "command": "/Users/YOUR_USERNAME/gemini-mcp-server/run_gemini.sh",
      "env": {
        "GEMINI_API_KEY": "your-gemini-api-key-here"
      }
    }
  }
}

Windows:

{
  "mcpServers": {
    "gemini": {
      "command": "C:\\Users\\YOUR_USERNAME\\gemini-mcp-server\\run_gemini.bat",
      "env": {
        "GEMINI_API_KEY": "your-gemini-api-key-here"
      }
    }
  }
}

Important:

  • Replace YOUR_USERNAME with your actual username
  • Use the full absolute path where you cloned the repository
  • Windows users: Note the double backslashes \\ in the path

4. Restart Claude Desktop

Completely quit and restart Claude Desktop for the changes to take effect.

5. Connect to Claude Code

To use the server in Claude Code, run:

claude mcp add-from-claude-desktop -s user

6. Start Using It!

Just ask Claude naturally:

  • "Use gemini to think deeper about this architecture design"
  • "Get gemini to review this code for security issues"
  • "Get gemini to debug why this test is failing"
  • "Use gemini to analyze these files to understand the data flow"

Available Tools

Quick Tool Selection Guide:

  • Need deeper thinking?think_deeper (extends Claude's analysis, finds edge cases)
  • Code needs review?review_code (bugs, security, performance issues)
  • Something's broken?debug_issue (root cause analysis, error tracing)
  • Want to understand code?analyze (architecture, patterns, dependencies)
  • General questions?chat (explanations, comparisons, advice)
  • Check models?list_models (see available Gemini models)
  • Server info?get_version (version and configuration details)

Tools Overview:

  1. think_deeper - Extended reasoning and problem-solving
  2. review_code - Professional code review with severity levels
  3. debug_issue - Root cause analysis and debugging
  4. analyze - General-purpose file and code analysis
  5. chat - General development conversations
  6. list_models - List available Gemini models
  7. get_version - Get server version and configuration

1. think_deeper - Extended Reasoning Partner

Get a second opinion to augment Claude's own extended thinking

Example Prompts:

Basic Usage:

"Use gemini to think deeper about my authentication design"
"Use gemini to extend my analysis of this distributed system architecture"

Collaborative Workflow:

"Design an authentication system for our SaaS platform. Then use gemini to review your design for security vulnerabilities. After getting gemini's feedback, incorporate the suggestions and show me the final improved design."

"Create an event-driven architecture for our order processing system. Use gemini to think deeper about event ordering and failure scenarios. Then integrate gemini's insights and present the enhanced architecture."

Key Features:

  • Provides a second opinion on Claude's analysis
  • Challenges assumptions and identifies edge cases Claude might miss
  • Offers alternative perspectives and approaches
  • Validates architectural decisions and design patterns
  • Can reference specific files for context: "Use gemini to think deeper about my API design with reference to api/routes.py"

Triggers: think deeper, ultrathink, extend my analysis, validate my approach

2. review_code - Professional Code Review

Comprehensive code analysis with prioritized feedback

Example Prompts:

Basic Usage:

"Use gemini to review auth.py for issues"
"Use gemini to do a security review of auth/ focusing on authentication"

Collaborative Workflow:

"Refactor the authentication module to use dependency injection. Then use gemini to review your refactoring for any security vulnerabilities. Based on gemini's feedback, make any necessary adjustments and show me the final secure implementation."

"Optimize the slow database queries in user_service.py. Get gemini to review your optimizations for potential regressions or edge cases. Incorporate gemini's suggestions and present the final optimized queries."

Key Features:

  • Issues prioritized by severity (🔴 CRITICAL → 🟢 LOW)
  • Supports specialized reviews: security, performance, quick
  • Can enforce coding standards: "Use gemini to review src/ against PEP8 standards"
  • Filters by severity: "Get gemini to review auth/ - only report critical vulnerabilities"

Triggers: review code, check for issues, find bugs, security check

3. debug_issue - Expert Debugging Assistant

Root cause analysis for complex problems

Example Prompts:

Basic Usage:

"Use gemini to debug this TypeError: 'NoneType' object has no attribute 'split'"
"Get gemini to debug why my API returns 500 errors with the full stack trace: [paste traceback]"

Collaborative Workflow:

"I'm getting 'ConnectionPool limit exceeded' errors under load. Debug the issue and use gemini to analyze it deeper with context from db/pool.py. Based on gemini's root cause analysis, implement a fix and get gemini to validate the solution will scale."

"Debug why tests fail randomly on CI. Once you identify potential causes, share with gemini along with test logs and CI configuration. Apply gemini's debugging strategy, then use gemini to suggest preventive measures."

Key Features:

  • Accepts error context, stack traces, and logs
  • Can reference relevant files for investigation
  • Supports runtime info and previous attempts
  • Provides root cause analysis and solutions

Triggers: debug, error, failing, root cause, trace, not working

4. analyze - Smart File Analysis

General-purpose code understanding and exploration

Example Prompts:

Basic Usage:

"Use gemini to analyze main.py to understand how it works"
"Get gemini to do an architecture analysis of the src/ directory"

Collaborative Workflow:

"Analyze our project structure in src/ and identify architectural improvements. Share your analysis with gemini for a deeper review of design patterns and anti-patterns. Based on both analyses, create a refactoring roadmap."

"Perform a security analysis of our authentication system. Use gemini to analyze auth/, middleware/, and api/ for vulnerabilities. Combine your findings with gemini's to create a comprehensive security report."

Key Features:

  • Analyzes single files or entire directories
  • Supports specialized analysis types: architecture, performance, security, quality
  • Uses file paths (not content) for clean terminal output
  • Can identify patterns, anti-patterns, and refactoring opportunities

Triggers: analyze, examine, look at, understand, inspect

5. chat - General Development Chat

For everything else - explanations, comparisons, brainstorming

Example Prompts:

Basic Usage:

"Use gemini to explain how async/await works in Python"
"Get gemini to compare Redis vs Memcached for session storage"

Collaborative Workflow:

"Research the best message queue for our use case (high throughput, exactly-once delivery). Use gemini to compare RabbitMQ, Kafka, and AWS SQS. Based on gemini's analysis and your research, recommend the best option with implementation plan."

"Design a caching strategy for our API. Get gemini's input on Redis vs Memcached vs in-memory caching. Combine both perspectives to create a comprehensive caching implementation guide."

Key Features:

  • General development questions and explanations
  • Technology comparisons and best practices
  • Architecture and design discussions
  • Can reference files for context: "Use gemini to explain this algorithm with context from algorithm.py"

Triggers: ask, explain, compare, suggest, what about

6. list_models - See Available Gemini Models

"Use gemini to list available models"
"Get gemini to show me what models I can use"

7. get_version - Server Information

"Use gemini for its version"
"Get gemini to show server configuration"

Tool Parameters

All tools that work with files support both individual files and entire directories. The server automatically expands directories, filters for relevant code files, and manages token limits.

File-Processing Tools

analyze - Analyze files or directories

  • files: List of file paths or directories (required)
  • question: What to analyze (required)
  • analysis_type: architecture|performance|security|quality|general
  • output_format: summary|detailed|actionable
"Use gemini to analyze the src/ directory for architectural patterns"
"Get gemini to analyze main.py and tests/ to understand test coverage"

review_code - Review code files or directories

  • files: List of file paths or directories (required)
  • review_type: full|security|performance|quick
  • focus_on: Specific aspects to focus on
  • standards: Coding standards to enforce
  • severity_filter: critical|high|medium|all
"Use gemini to review the entire api/ directory for security issues"
"Get gemini to review src/ with focus on performance, only show critical issues"

debug_issue - Debug with file context

  • error_description: Description of the issue (required)
  • error_context: Stack trace or logs
  • files: Files or directories related to the issue
  • runtime_info: Environment details
  • previous_attempts: What you've tried
"Use gemini to debug this error with context from the entire backend/ directory"

think_deeper - Extended analysis with file context

  • current_analysis: Your current thinking (required)
  • problem_context: Additional context
  • focus_areas: Specific aspects to focus on
  • files: Files or directories for context
"Use gemini to think deeper about my design with reference to the src/models/ directory"

Directory Support Features

  • Automatic Expansion: Directories are recursively scanned for code files
  • Smart Filtering: Hidden files, caches, and non-code files are automatically excluded
  • Token Management: Loads as many files as possible within token limits
  • Clear Markers: Each file is marked with full path for Gemini to distinguish

Example with mixed paths:

"Use gemini to analyze config.py, src/, and tests/unit/ to understand the testing strategy"

Collaborative Workflows

Design → Review → Implement

"Design a real-time collaborative editor. Use gemini to think deeper about edge cases and scalability. Implement an improved version incorporating gemini's suggestions."

Code → Review → Fix

"Implement JWT authentication. Get gemini to do a security review. Fix any issues gemini identifies and show me the secure implementation."

Debug → Analyze → Solution

"Debug why our API crashes under load. Use gemini to analyze deeper with context from api/handlers/. Implement a fix based on gemini's root cause analysis."

Pro Tips

Natural Language Triggers

The server recognizes natural phrases. Just talk normally:

  • "Use the think_deeper tool with current_analysis parameter..."
  • "Use gemini to think deeper about this approach"

Automatic Tool Selection

Claude will automatically pick the right tool based on your request:

  • "review" → review_code
  • "debug" → debug_issue
  • "analyze" → analyze
  • "think deeper" → think_deeper

Clean Terminal Output

All file operations use paths, not content, so your terminal stays readable even with large files.

Context Awareness

Tools can reference files for additional context:

"Use gemini to debug this error with context from app.py and config.py"
"Get gemini to think deeper about my design, reference the current architecture.md"

Configuration

The server includes several configurable properties that control its behavior:

Model Configuration

  • DEFAULT_MODEL: "gemini-2.5-pro-preview-06-05" - The default Gemini model used
  • MAX_CONTEXT_TOKENS: 1,000,000 - Maximum input context (1M tokens for Gemini 2.5 Pro)
  • MAX_OUTPUT_TOKENS: 32,768 - Maximum output tokens per response

Temperature Defaults

Different tools use optimized temperature settings:

  • TEMPERATURE_ANALYTICAL: 0.2 - Used for code review and debugging (focused, deterministic)
  • TEMPERATURE_BALANCED: 0.5 - Used for general chat (balanced creativity/accuracy)
  • TEMPERATURE_CREATIVE: 0.7 - Used for deep thinking and architecture (more creative)

Customizing Output Length

Each tool accepts an optional max_tokens parameter to override the default:

"Use gemini to analyze main.py with max_tokens 16000"
"Get gemini to think deeper about this design with max_tokens 50000"

Note: The maximum supported output is 32,768 tokens for Gemini 2.5 Pro.

Installation

  1. Clone the repository:

    git clone https://github.com/BeehiveInnovations/gemini-mcp-server.git
    cd gemini-mcp-server
    
  2. Create virtual environment:

    python3 -m venv venv
    source venv/bin/activate  # On Windows: venv\Scripts\activate
    
  3. Install dependencies:

    pip install -r requirements.txt
    
  4. Set your Gemini API key:

    export GEMINI_API_KEY="your-api-key-here"
    

How System Prompts Work

The server uses carefully crafted system prompts to give each tool specialized expertise:

Prompt Architecture

  • Centralized Prompts: All system prompts are defined in prompts/tool_prompts.py
  • Tool Integration: Each tool inherits from BaseTool and implements get_system_prompt()
  • Prompt Flow: User Request → Tool Selection → System Prompt + Context → Gemini Response

Specialized Expertise

Each tool has a unique system prompt that defines its role and approach:

  • think_deeper: Acts as a senior development partner, challenging assumptions and finding edge cases
  • review_code: Expert code reviewer with security/performance focus, uses severity levels
  • debug_issue: Systematic debugger providing root cause analysis and prevention strategies
  • analyze: Code analyst focusing on architecture, patterns, and actionable insights

Customization

To modify tool behavior, you can:

  1. Edit prompts in prompts/tool_prompts.py for global changes
  2. Override get_system_prompt() in a tool class for tool-specific changes
  3. Use the temperature parameter to adjust response style (0.2 for focused, 0.7 for creative)

Contributing

We welcome contributions! The modular architecture makes it easy to add new tools:

  1. Create a new tool in tools/
  2. Inherit from BaseTool
  3. Implement required methods (including get_system_prompt())
  4. Add your system prompt to prompts/tool_prompts.py
  5. Register your tool in TOOLS dict in server.py

See existing tools for examples.

License

MIT License - see LICENSE file for details.

Acknowledgments

Built with MCP by Anthropic and powered by Google's Gemini API.