L

LLM Code Context

LLM Context is a tool that helps developers quickly inject code/text project content into the chat interface of large language models, supporting intelligent file selection and multiple integration methods.
3.5 points
235

What is the MCP server?

The MCP server is a tool that allows developers to easily inject relevant content from code or text projects into the conversation interface of large language models (LLMs). It uses.gitignore rules for intelligent file selection and works through the command-line clipboard workflow or directly interacts with the model.

How to use the MCP server?

First, configure the MCP server, then initialize your project, select the files to be included, and finally generate the context and pass it to the LLM.

Applicable scenarios

The MCP server is suitable for developers who need to interact with LLMs frequently, especially teams that want to work within the project context.

Main Features

Intelligent File SelectionAutomatically filters relevant files based on.gitignore rules.
Multi-Profile SupportAllows creating custom configuration files to extend the system's default settings.
Dynamic UpdatesSynchronizes the latest changes to the LLM context in real-time.

Advantages and Limitations

Advantages
Improve development efficiency
Reduce manual operation time
Support multiple LLM interfaces
Limitations
May not be suitable for ultra-large-scale projects
Requires certain initial configuration

How to Use

Install the MCP server
Install the MCP server through the uv tool.
Initialize the project
Run the lc-init command to initialize the project configuration.
Select files
Run lc-sel-files to select the files to be included.
Generate context
Run lc-context to generate the project context.

Usage Examples

Example 1: Integration with Claude DesktopAfter configuring the MCP server, you can directly interact with Claude Desktop.
Example 2: Generate code contextGenerate the code context of the current project and pass it to the LLM.

Frequently Asked Questions

Does the MCP server support all types of projects?
How to upgrade the MCP server?
Is the MCP server secure?

Related Resources

Official Documentation
Understand the design concept of the MCP server.
GitHub Repository
View the source code and contribute.
User Guide
Learn in-depth how to use the MCP server.
Installation
Copy the following command to your Client for configuration
Note: Your key is sensitive information, do not share it with anyone.
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