Krep MCP Server
A high-performance string search server powered by the krep binary.
Krep MCP Server
A high-performance string search utility with MCP (Model Context Protocol) integration for the infinity-topos environment. This is a wrapper around krep, an ultra-fast pattern matching utility that significantly outperforms traditional tools like grep.
THE KREP-MCP-SERVER ABSURDITY DIAGRAM
====================================
+-----------------------------------------------------+
| |
| The KREP MCP Redundancy Zone |
| |
+-----^--------------------+------------------------+-+
| | |
+-----------+----------+ +------+-------------+ +------+-------+
| | | | | |
| M E T A D A T A | | F U N C T I O N | | B I N A R Y |
| E X P L O S I O N | | N A M E C H A O S| | H U N T |
| | | | | |
+-----+----------+-----+ +---+-----------+----+ +------+-------+
| | | | |
v v v v v
+--------+--+ +----+-----+ +---+----+ +---+-----+ +----+------+
| | | | | | | | | |
| "Unified" | | 37 Paths | | krep | |krepSearch| | 5 Error |
| Function | | To Find | | | |krepMatch | | Handlers |
| That Does | | The Same | | | |krepCount | | For |
| 3 Things | | Binary | | | | | | 1 Error |
| | | | | | | | | |
+-----------+ +----------+ +--------+ +----------+ +-----------+
+-----------------------------------------------------+
| |
| Configuration & Shell Script Hell |
| |
+-----^--------------------+------------------------+-+
| | |
+-----------+----------+ +------+-------------+ +------+-------+
| | | | | |
| 3 Scripts to | | Integer | | Test Mode |
| Install 1 Thing | | Arithmetic in | | that Mocks |
| | | Shell that says | | Success When|
| | | 0 + 0 = Syntax | | Everything |
| | | Error | | Fails |
+----------------------+ +--------------------+ +--------------+
"It's not redundant if it's resilient!"
- MCP Engineer, probably
Overview
Krep MCP Server provides a unified interface to the krep binary, a high-performance string search utility similar to grep but with optimized algorithms and multi-threading capabilities. It exposes krep's functionality through the Model Context Protocol, allowing AI assistants to perform efficient pattern searching in files and strings.
Features
- High-Performance Search: Uses optimized algorithms (KMP, Boyer-Moore-Horspool, Rabin-Karp) selected based on pattern length
- Hardware Acceleration: Leverages SIMD instructions (SSE4.2/AVX2 on x86/x64, NEON on ARM) when available
- Optimized Multi-Threading: Automatically uses all available CPU cores for maximum parallel search performance
- Unified Interface: Single function with multiple modes (file search, string search, count-only)
- MCP Integration: Seamless integration with AI assistants through the Model Context Protocol
Why This Codebase Is Tragic
This codebase demonstrates how a simple tool (a wrapper for a string search utility) became bloated with unnecessary complexity:
-
Simple Core, Complex Implementation: The actual functionality is straightforward but buried under layers of over-engineering
-
Documentation Overload: 15 documentation files for a tool that could be explained in a single well-structured README
-
Integration Madness: 3 separate integration systems (Cline, Claude Desktop, SDK), each with redundant scripts and documentation
-
Installation Script Proliferation: 7 installation scripts when one configurable script would suffice
-
Error Handling Duplication: Error handling duplicated at multiple levels rather than having a unified approach
-
Test Fragmentation: Test files scattered across the codebase rather than being organized systematically
-
Configuration Redundancy: Configuration files and environment variables duplicated across multiple components
-
Binary Path Overkill: Searches 37 different paths for a single binary that should be in one predictable location
What It Should Have Been:
┌──────────────────────┐
│ krep-mcp-server │
│ ┌────────────────┐ │
│ │ index.js │ │
│ │ - one function│ │
│ └────────────────┘ │
│ ┌────────────────┐ │
│ │ README.md │ │
│ │ - clear docs │ │
│ └────────────────┘ │
│ ┌────────────────┐ │
│ │ install.sh │ │
│ │ - one script │ │
│ └────────────────┘ │
└──────────────────────┘
Project Structure
Here's the actual project structure:
krep-mcp-server/
├── CLINE_README.md
├── CLINE_SETUP.md
├── CLAUDE_DESKTOP_INTEGRATION.md
├── CLAUDE_DESKTOP_README.md
├── EXAMPLES.md
├── IMPLEMENTATION_SUMMARY.md
├── INSTALL_NOW.md
├── LIFECYCLE_DESIGN.md
├── MCP_COMPLIANCE.md
├── MCP_URIS.md
├── README.md
├── SETUP_CLAUDE_DESKTOP.md
├── TESTING_STRATEGY.md
├── THREAD_OPTIMIZATION.md
├── analysis/
│ └── index.tree.json
├── auto-install-claude.sh
├── cline-config.js
├── direct-install.sh
├── eslint.config.js
├── fix-claude-desktop.sh
├── go-integration/
│ ├── example/
│ └── krep.go
├── install-claude-desktop.sh
├── install-cline-integration.sh
├── install-sdk-integrations.sh
├── jest.config.js
├── just-krep.sh
├── mcp-config.json
├── package-lock.json
├── package.json
├── python-integration/
│ └── krep_mcp_client.py
├── run-claude-desktop.sh
├── run-claude-integration.sh
├── run-cline-mcp-server.sh
├── run-cline-test.sh
├── run-tests.sh
├── run.sh
├── sdk-integration.js
├── src/
│ ├── index.js
│ ├── index.min.js
│ ├── mcp_server.js
│ └── mcp_server.min.js
├── Support/
│ └── Claude/
├── test/
│ ├── benchmark.js
│ ├── fixtures/
│ ├── integration/
│ ├── mcp_benchmark.js
│ ├── mock-server.js
│ ├── unit/
│ └── utils.js
└── various test scripts...
Installation
-
Ensure you have the krep binary installed:
cd /path/to/krep-native make -
Configure the MCP server in your MCP settings file:
{ "mcpServers": { "krep": { "command": "node", "args": [ "/path/to/krep-mcp-server/src/index.js" ], "env": { "CLAUDE_MCP": "true", "KREP_PATH": "/path/to/krep-native/krep", "DEBUG": "true" }, "description": "High-performance string search utility with unified interface", "disabled": false, "autoApprove": [ "krep" ] } } }
Usage
The krep MCP server exposes a single unified function:
<use_mcp_tool>
<server_name>krep</server_name>
<tool_name>krep</tool_name>
<arguments>
{
"pattern": "search pattern",
"target": "file path or string to search",
"mode": "file|string|count",
"caseSensitive": true|false,
"threads": null // Automatically uses all CPU cores if not specified
}
</arguments>
</use_mcp_tool>
Parameters
- pattern (required): The pattern to search for
- target (required): File path or string to search in
- mode (optional): Search mode
file(default): Search in a filestring: Search in a stringcount: Count occurrences only
- caseSensitive (optional): Whether the search is case-sensitive (default: true)
- threads (optional): Number of threads to use (default: auto-detected based on CPU cores)
Examples
See examples.md for detailed usage examples and patterns.
How It Works
The krep MCP server works by:
- Receiving requests through the Model Context Protocol
- Parsing the request parameters
- Building the appropriate krep command based on the mode and parameters
- Executing the command using the krep binary
- Parsing the results and returning them in a structured format
Performance
Krep is designed for high-performance pattern searching:
- Algorithm Selection: Automatically selects the optimal algorithm based on pattern length
- KMP (Knuth-Morris-Pratt) for very short patterns (< 3 characters)
- Boyer-Moore-Horspool for medium-length patterns (3-16 characters)
- Rabin-Karp for longer patterns (> 16 characters)
- Hardware Acceleration: Uses SIMD instructions when available
- Dynamic Multi-Threading: Automatically utilizes all available CPU cores for optimal parallel search performance
Cline VSCode Extension Integration
The krep-mcp-server can be integrated with the Cline VSCode extension, allowing you to use high-performance string search capabilities directly in your VSCode environment.
Installation with Cline
We provide an automatic installation script to set up the Cline integration:
# Install the integration
./install-cline-integration.sh
# Test the integration before installing
./run-cline-test.sh
# Uninstall the integration
./uninstall-cline-integration.sh
Using krep in Cline
Once integrated, you can use krep directly in Cline conversations:
/krep krep pattern="function" target="/path/to/search" mode="file"
For detailed instructions and usage examples, see:
- CLINE_SETUP.md - Setup instructions
- CLINE_README.md - Usage guide
Integration with Infinity Topos
Krep MCP Server is designed to work seamlessly within the infinity-topos environment:
- Babashka Integration: Use Babashka to process search results
- Say Integration: Vocalize search results using the Say MCP server
- Coin-Flip Integration: Use randomization to determine search strategies
Development
Environment Variables
CLAUDE_MCP: Set to "true" to run in MCP modeKREP_PATH: Path to the krep binaryDEBUG: Set to "true" for verbose loggingKREP_TEST_MODE: Set to "true" to run in test mode with mock responsesKREP_SKIP_CHECK: Set to "true" to skip checking if the krep binary exists
HTTP Server Mode
When not running in MCP mode, the server starts an HTTP server with the following endpoints:
GET /health: Health check endpointGET /: Server informationPOST /search: Search for patterns in filesPOST /match: Match patterns in stringsGET /performance: Performance informationGET /algorithm-selection: Algorithm selection guide
License
MIT
相關伺服器
RateMySupervisor MCP
Query supervisor evaluation data with fuzzy matching for Chinese and Pinyin names.
AWS Documentation
Fetch, convert, and search AWS documentation pages, with recommendations for related content.
Baselight
By connecting to Baselight, you can browse, discover, and query 70,000+ datasets and 450+ billion rows directly from your preferred environment—whether you’re building, analysing, or exploring.
ContextMCP
A self-hosted MCP server that indexes documentation from various sources and serves it to AI Agents with semantic search.
NRT Search
A near real-time search server for indexing and querying documents, implemented in Java.
Korea Tourism API MCP Server
Search for South Korean tourism information, including festivals, temples, and restaurants, using the official Korea Tourism Organization API.
avr-docs-mcp
This MCP (Model Context Protocol) server provides integration with Wiki.JS for searching and listing pages from Agent Voice Response Wiki.JS instance.
门店大数据服务
Provides comprehensive offline store information queries, including enterprise restaurant brand store search, offline store search, and restaurant brand store statistics.
Tavily Search
Optimized web search for LLMs using the Tavily Search API.
Obsidian Omnisearch
Search your Obsidian vault using the Omnisearch plugin via a REST API.