CodeBrain
Provides semantic code search and index status for codebases using RAG, enabling AI tools to query code knowledge.
README
CodeBrain
CodeBrain(代码知识库大脑)is a local AI assistant that understands your codebase. It uses RAG (Retrieval-Augmented Generation) with a local embedding model and local LLM (Ollama/DeepSeek), exposes an MCP server for external AI tools, and provides a simple Gradio web UI.
Features
- Codebase indexing: auto-scan Python / Java / Go / JavaScript / TypeScript repositories
- Semantic search: vectorize code chunks (functions, classes, modules) with
sentence-transformers - Local vector DB: persist embeddings with ChromaDB
- Natural-language Q&A: retrieve relevant snippets and generate answers with line-number citations
- Incremental updates: re-index only changed files; optional file-system watcher
- MCP server: expose
codebrain_searchandcodebrain_statustools to Cursor / Claude Code / Cline - Web UI: chat + index project + view status
Quick Start
1. Install
pip install -r requirements.txt
2. Start Ollama and pull a code model
ollama pull deepseek-coder:6.7b
ollama serve
You can change the model in config.yaml.
3. Index your codebase
python -m codebrain index /path/to/your/codebase
Add --watch to monitor file changes:
python -m codebrain index /path/to/your/codebase --watch
4. Ask questions
python -m codebrain ask "用户登录功能在哪个文件里实现的?"
5. Launch web UI
python -m codebrain web
Open http://127.0.0.1:7860.
Configuration (config.yaml)
project:
supported_languages:
- python
- java
- go
- javascript
- typescript
ignore_patterns:
- node_modules
- .git
- __pycache__
- .venv
- venv
- dist
- build
- target
- .idea
- .vscode
- .codebrain
- ".mypy_cache"
- ".pytest_cache"
indexer:
embedding_model: all-MiniLM-L6-v2 # sentence-transformers model
chunk_size: 512
chunk_overlap: 50
vector_store:
provider: chromadb
persist_directory: .codebrain/chroma_db
collection_name: codebrain
llm:
provider: ollama
model: deepseek-coder:6.7b
base_url: http://localhost:11434
temperature: 0.1
max_tokens: 2048
web:
host: 127.0.0.1
port: 7860
mcp:
transport: stdio
Key options
| Section | Option | Description |
|---|---|---|
project |
supported_languages |
Languages to index |
project |
ignore_patterns |
Glob patterns for directories/files to skip |
indexer |
embedding_model |
HuggingFace sentence-transformers model name |
vector_store |
persist_directory |
Where ChromaDB stores vectors |
llm |
model |
Ollama model tag |
llm |
base_url |
Ollama server URL |
web |
host / port |
Gradio server bind address |
MCP Server Setup
CodeBrain implements an MCP server over stdio. Tools exposed:
codebrain_search(query, top_k=5, language="")— search the knowledge basecodebrain_status()— show index statistics
Cursor
Add to ~/.cursor/mcp.json:
{
"mcpServers": {
"codebrain": {
"command": "python",
"args": ["-m", "codebrain", "mcp"],
"cwd": "/absolute/path/to/codebrain"
}
}
}
Claude Code
Add to ~/.claude-code/settings.json:
{
"mcpServers": {
"codebrain": {
"command": "python",
"args": ["-m", "codebrain", "mcp"]
}
}
}
Cline
Add to Cline MCP settings:
{
"mcpServers": {
"codebrain": {
"command": "python",
"args": ["-m", "codebrain", "mcp"],
"env": {},
"disabled": false,
"autoApprove": ["codebrain_search", "codebrain_status"]
}
}
}
CLI Reference
python -m codebrain --help
python -m codebrain index <path> [--watch]
python -m codebrain status
python -m codebrain ask "question" [--language python]
python -m codebrain web
python -m codebrain mcp
Architecture
codebrain/
├── config.py # Configuration loading
├── models.py # CodeChunk / RetrievalResult dataclasses
├── indexer/
│ ├── parser.py # Python AST + regex-based parser for Java/Go/JS/TS
│ ├── embedder.py # sentence-transformers wrapper
│ ├── store.py # ChromaDB wrapper
│ ├── indexer.py # Scan / embed / upsert orchestration
│ └── watcher.py # File-system watcher for incremental updates
├── rag/
│ ├── llm.py # Ollama client
│ └── engine.py # RAG retrieval + generation
├── mcp_server/
│ └── server.py # MCP server implementation
├── web/
│ └── app.py # Gradio chat UI
└── main.py # CLI entry point
Notes
- First indexing downloads the embedding model and may take a few minutes.
- Make sure Ollama is running before using
ask/web/ MCP tools. - The vector store is stored locally in
.codebrain/chroma_dbby default.
License
MIT
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