Semantic Search MCP Server
Enables AI agents to perform semantic search over codebases by converting natural language queries into efficient search patterns like grep and ripgrep. It utilizes LLMs to verify relevance and find code snippets that traditional keyword-based searches might miss.
README
Semantic Search MCP Server
A local Model Context Protocol (MCP) server that enables AI agents to perform semantic search over codebases using natural language queries. The server converts queries into efficient text search patterns (grep/ripgrep) and verifies relevance before returning results.
Quick Setup
Installation
pip install -e .
Environment Variables
Set the following environment variables:
REPO_PATH- Path to the repository to search (defaults to current directory)SEARCHER_TYPE- Searcher implementation to use (default:sgr_gemini_flash_lite)
API Keys (choose one based on your searcher type):
- For Claude-based searchers:
CLAUDE_API_KEYorANTHROPIC_API_KEY - For Gemini-based searchers:
GOOGLE_API_KEY,GEMINI_API_KEY,AI_STUDIO, orVERTEX_AI_API_KEY - For OpenAI-based searchers:
OPENAI_API_KEY
Available Searchers
SGR (Schema-Guided Reasoning) searchers - Production-ready implementations:
sgr/sgr_gemini_flash_lite- Default, recommended (Gemini Flash Lite)sgr_gemini_flash- SGR with Gemini Flashsgr_gemini_pro- SGR with Gemini Prosgr_gpt4o- SGR with GPT-4osgr_gpt4o_mini- SGR with GPT-4o Mini
Note: Other searcher types (ripgrep_claude, agent_claude, agent_gemini_flash_lite, etc.) are experimental implementations from earlier development phases and are not recommended for production use.
Running the MCP Server
Important: The MCP server is not meant to be run directly in a terminal. It communicates via STDIO using JSON-RPC protocol and must be launched by an IDE or MCP client.
Cursor Configuration
Add to your cursor-mcp-config.json:
{
"mcpServers": {
"qure-semantic-search": {
"command": "/path/to/.venv/bin/qure-semantic-search-mcp",
"env": {
"REPO_PATH": "/path/to/your/repo"
}
}
}
}
After configuring, restart Cursor. The server will be automatically launched when you use the semantic_search tool in Cursor's AI chat.
Note: If you see JSON parsing errors when running the command directly in terminal, this is expected - the server requires an MCP client (like Cursor) to communicate with it via JSON-RPC protocol.
Evaluation
Running Evaluation
Standard mode (single run per query):
python -m eval.run_eval
Stability mode (10 runs per query to measure consistency):
python -m eval.run_eval --stability
Stability mode with custom runs (e.g., 20 runs per query):
python -m eval.run_eval --stability --runs 20
Evaluate all searchers (compares different searcher implementations):
python -m eval.run_all_searchers --stability
Additional options:
--verbose/-v- Print detailed per-query statistics--single-dataset- Use only main dataset (exclude easy dataset)--output <path>- Export results to JSON file
Datasets
The evaluation uses two datasets:
-
Main dataset (
data/dataset.jsonl) - 12 challenging examples across different codebases (Django, Gin, CodeQL, QGIS, etc.) with non-trivial queries where simple keyword matching fails. -
Easy dataset (
data/dataset_easy.jsonl) - 14 simpler examples designed for faster evaluation and testing. These queries are more straightforward but still require semantic understanding.
By default, both datasets are used together (26 queries total). Use --single-dataset to evaluate only the main dataset.
Metrics
For detailed metric definitions and mathematical proof of perfection, see METRICS_LOGIC.md.
Quick Summary:
- Precision@K = TP / (TP + FP) - Fraction of returned results that are relevant
- Recall@K = TP / (TP + FN) - Fraction of all relevant items that were returned
- F1@K = Harmonic mean of Precision and Recall
- File Discovery Rate = Files Found / Files Expected
- Substring Coverage = Substrings Found / Substrings Required
The Logic Test: If all metrics score 1.0, the solution is mathematically perfect (see proof in METRICS_LOGIC.md).
See eval/metrics.py for detailed implementations.
Performance Results
Evaluation results for sgr_gemini_flash_lite searcher (10 runs per query, 26 queries total):
Overall Performance
| Metric | Value | Stability |
|---|---|---|
| Precision@10 | 0.30 ± 0.38 | ⚠ High variance (CV=127%) |
| Recall@10 | 0.31 ± 0.41 | ⚠ High variance (CV=133%) |
| F1@10 | 0.29 ± 0.38 | ⚠ High variance (CV=130%) |
| Success Rate@10 | 0.40 ± 0.46 | ⚠ High variance (CV=114%) |
| File Discovery Rate | 0.61 ± 0.40 | ⚠ Moderate variance (CV=66%) |
| Substring Coverage | 0.35 ± 0.39 | ⚠ High variance (CV=111%) |
| Avg Latency | 20.6s ± 7.9s | Range: 9.6s - 38.3s |
| Stability Score | 73.9% | 16/26 stable queries (61.5%) |
Dataset Breakdown
Easy Dataset (14 examples)
- Precision@10: 0.40 ± 0.44
- Recall@10: 0.46 ± 0.49
- F1@10: 0.42 ± 0.45
- File Discovery Rate: 0.92 ± 0.13 ✓ (Good stability)
- Avg Latency: 15.0s ± 4.8s
- Stability Score: 85.9% ✓ (Good stability)
Main Dataset (12 examples)
- Precision@10: 0.17 ± 0.25
- Recall@10: 0.13 ± 0.18
- F1@10: 0.14 ± 0.20
- File Discovery Rate: 0.26 ± 0.30
- Avg Latency: 27.2s ± 5.3s
- Stability Score: 60.0% ⚠ (Moderate stability)
Notes
- High variance in metrics is expected due to LLM non-determinism and the complexity of semantic search queries
- File Discovery Rate shows better stability, especially on easier queries (92% success rate)
- Latency varies significantly (9-38s) depending on query complexity and codebase size
- Results are evaluated on non-trivial queries where simple keyword matching fails
Project Structure
src/- Core MCP server and searcher implementationseval/- Evaluation scripts and metricsdata/- Evaluation dataset and test repositoriesscripts/- Utility scripts for testing and debugging
Documentation
- METRICS_LOGIC.md - Mathematical justification for metric selection and proof of perfection
- KNOWN_ISSUES.md - Current limitations, known problems, and workarounds
- FUTURE_ROADMAP.md - Planned improvements and mitigation strategies
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