deepview-mcp
DeepView MCP is designed for integrating with IDEs to analyze large codebases using the Model Context Protocol. It supports loading codebases from text files and querying them using Gemini's context capabilities. Notably, it offers seamless connectivity with IDEs like Cursor and Windsurf.
DeepView MCP
DeepView MCP is a Model Context Protocol server that enables IDEs like Cursor and Windsurf to analyze large codebases using Gemini's extensive context window.
Features
- Load an entire codebase from a single text file (e.g., created with tools like repomix)
- Query the codebase using Gemini's large context window
- Connect to IDEs that support the MCP protocol, like Cursor and Windsurf
- Configurable Gemini model selection via command-line arguments
Prerequisites
- Python 3.13+
- Gemini API key from Google AI Studio
Installation
Installing via Smithery
To install DeepView for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install @ai-1st/deepview-mcp --client claude
Using pip
pip install deepview-mcp
Usage
Starting the Server
Note: you don't need to start the server manually. These parameters are configured in your MCP setup in your IDE (see below).
# Basic usage with default settings
deepview-mcp [path/to/codebase.txt]
# Specify a different Gemini model
deepview-mcp [path/to/codebase.txt] --model gemini-2.0-pro
# Change log level
deepview-mcp [path/to/codebase.txt] --log-level DEBUG
The codebase file parameter is optional. If not provided, you'll need to specify it when making queries.
Command-line Options
--model MODEL
: Specify the Gemini model to use (default: gemini-2.0-flash-lite)--log-level {DEBUG,INFO,WARNING,ERROR,CRITICAL}
: Set the logging level (default: INFO)
Using with an IDE (Cursor/Windsurf/...)
- Open IDE settings
- Navigate to the MCP configuration
- Add a new MCP server with the following configuration:
{ "mcpServers": { "deepview": { "command": "/path/to/deepview-mcp", "args": [], "env": { "GEMINI_API_KEY": "your_gemini_api_key" } } } }
Setting a codebase file is optional. If you are working with the same codebase, you can set the default codebase file using the following configuration:
{
"mcpServers": {
"deepview": {
"command": "/path/to/deepview-mcp",
"args": ["/path/to/codebase.txt"],
"env": {
"GEMINI_API_KEY": "your_gemini_api_key"
}
}
}
}
Here's how to specify the Gemini version to use:
{
"mcpServers": {
"deepview": {
"command": "/path/to/deepview-mcp",
"args": ["--model", "gemini-2.5-pro-exp-03-25"],
"env": {
"GEMINI_API_KEY": "your_gemini_api_key"
}
}
}
}
- Reload MCP servers configuration
Available Tools
The server provides one tool:
deepview
: Ask a question about the codebase- Required parameter:
question
- The question to ask about the codebase - Optional parameter:
codebase_file
- Path to a codebase file to load before querying
- Required parameter:
Preparing Your Codebase
DeepView MCP requires a single file containing your entire codebase. You can use repomix to prepare your codebase in an AI-friendly format.
Using repomix
- Basic Usage: Run repomix in your project directory to create a default output file:
# Make sure you're using Node.js 18.17.0 or higher
npx repomix
This will generate a repomix-output.xml
file containing your codebase.
- Custom Configuration: Create a configuration file to customize which files get packaged and the output format:
npx repomix --init
This creates a repomix.config.json
file that you can edit to:
- Include/exclude specific files or directories
- Change the output format (XML, JSON, TXT)
- Set the output filename
- Configure other packaging options
Example repomix Configuration
Here's an example repomix.config.json
file:
{
"include": [
"**/*.py",
"**/*.js",
"**/*.ts",
"**/*.jsx",
"**/*.tsx"
],
"exclude": [
"node_modules/**",
"venv/**",
"**/__pycache__/**",
"**/test/**"
],
"output": {
"format": "xml",
"filename": "my-codebase.xml"
}
}
For more information on repomix, visit the repomix GitHub repository.
License
MIT
Author
Dmitry Degtyarev ()