# kb Personal knowledge base with hybrid search (full-text + semantic vector search). v2 uses a client-server architecture: a **FastAPI engine** running in Docker (with optional GPU acceleration) and a lightweight **Go CLI client** that talks to it over HTTP. ## Architecture ``` Go CLI (kb) ──HTTP──▶ FastAPI Engine (Docker) ──▶ SQLite + GPU ``` - **Engine**: Keeps the embedding model warm in memory. Handles search, ingestion, and document management via REST API. Runs in Docker with NVIDIA GPU, AMD GPU (ROCm), or CPU-only support. - **Client**: Single static Go binary. No Python, no ML dependencies, instant startup. Talks to the engine over HTTP. - **Storage**: Single SQLite database with FTS5 (keyword search) and sqlite-vec (vector search). Portable via bind mount — just copy the data directory between hosts. ## Quick start ### 1. Start the engine **From pre-built images** (recommended): ```bash # NVIDIA GPU docker run -d --name kb-engine \ --gpus all \ -p 8000:8000 \ -v ~/kb-data:/data \ -e KB_MODEL=all-MiniLM-L6-v2 \ -e KB_DEVICE=auto \ -e KB_API_KEY=your-secret-key \ --restart unless-stopped \ docker.dcglab.co.uk/dcg/kb/engine:latest-nvidia # AMD GPU (ROCm) docker run -d --name kb-engine \ --device /dev/kfd --device /dev/dri \ --group-add video \ -p 8000:8000 \ -v ~/kb-data:/data \ -e KB_MODEL=all-MiniLM-L6-v2 \ -e KB_DEVICE=auto \ -e KB_API_KEY=your-secret-key \ --restart unless-stopped \ docker.dcglab.co.uk/dcg/kb/engine:latest-rocm # CPU only (no GPU required — smaller image) docker run -d --name kb-engine \ -p 8000:8000 \ -v ~/kb-data:/data \ -e KB_MODEL=all-MiniLM-L6-v2 \ -e KB_API_KEY=your-secret-key \ --restart unless-stopped \ docker.dcglab.co.uk/dcg/kb/engine:latest-cpu ``` Or use a compose file from the repo: ```bash # NVIDIA GPU KB_DATA_PATH=~/kb-data docker compose -f engine/compose.nvidia.yaml up -d # AMD GPU (ROCm) KB_DATA_PATH=~/kb-data docker compose -f engine/compose.rocm.yaml up -d # CPU only KB_DATA_PATH=~/kb-data docker compose -f engine/compose.cpu.yaml up -d ``` See [DEVELOPER.md](DEVELOPER.md) to run the engine from source. The engine will download the embedding model on first start (~90MB) and load it into memory (GPU or CPU). Check readiness: ```bash curl http://localhost:8000/api/v1/health # {"status": "healthy"} ``` ### 2. Install the client **From a release** (recommended): Check [releases](https://gitea.dcglab.co.uk/steve/kb/releases) for the latest client tag, then: ```bash # Set the version tag TAG=client-v2.1.0 # Linux (amd64) curl -L -o kb https://gitea.dcglab.co.uk/steve/kb/releases/download/${TAG}/kb-linux-amd64 # Linux (arm64) curl -L -o kb https://gitea.dcglab.co.uk/steve/kb/releases/download/${TAG}/kb-linux-arm64 # macOS (Apple Silicon) curl -L -o kb https://gitea.dcglab.co.uk/steve/kb/releases/download/${TAG}/kb-darwin-arm64 # macOS (Intel) curl -L -o kb https://gitea.dcglab.co.uk/steve/kb/releases/download/${TAG}/kb-darwin-amd64 # Then install chmod +x kb sudo mv kb /usr/local/bin/ ``` See [DEVELOPER.md](DEVELOPER.md) to build the client from source. ### 3. Configure the client The client works with zero configuration if the engine is on localhost:8000. To customise, create `~/.kb/client.yaml`: ```yaml engine_url: http://localhost:8000 api_key: "" default_format: human ``` Override via environment variables (`KB_ENGINE_URL`, `KB_API_KEY`) or CLI flags (`--engine`, `--api-key`, `--format`). ### 4. Use it ```bash # Add notes kb addnote "Always restart nginx after config changes" kb addnote "Server room is building 3, floor 2" --tags ops # Add files (async — uploads and exits immediately) kb addfile ~/docs/manual.pdf --tags admin kb addfile ~/notes/ --recursive # Check ingestion progress kb jobs # Search kb search "how to install git" kb search "deploy process" --tags ops --type pdf # Manage kb list kb info 1 kb tags kb tag 1 --add important kb export 1 -o manual.pdf # download original file kb remove 3 --yes kb status ``` ## How it works - **Ingestion**: Files are uploaded to the engine and queued for async processing. The engine chunks documents (PDFs via Docling, markdown by headers, code by AST/functions, notes as whole text), generates embeddings on GPU, and stores everything in SQLite. - **Search**: Hybrid retrieval combining BM25 keyword scoring (FTS5) and vector similarity (sqlite-vec), merged via Reciprocal Rank Fusion. Sub-100ms with a warm model. - **Output**: JSON (for scripts/LLM tool use) or human-readable terminal format. Use `--format json` on any command. ## Engine configuration The engine is configured via environment variables (set in the compose file or via `docker compose` CLI): | Variable | Default | Description | |---|---|---| | `KB_DATA_DIR` | `/data` | Data directory inside the container (bind-mounted) | | `KB_MODEL` | `all-MiniLM-L6-v2` | HuggingFace embedding model name | | `KB_DEVICE` | `auto` | Embedding/search device: `auto`, `cpu`, or `cuda` | | `KB_INGEST_DEVICE` | `auto` | Docling layout detection device: `auto`, `cpu`, or `cuda` | | `KB_API_KEY` | (none) | Optional Bearer token for API authentication | | `KB_SEARCH_THRESHOLD` | `0.01` | Minimum score for search results (filters noise) | | `KB_PORT` | `8000` | Port to expose | | `KB_HOST` | `0.0.0.0` | Host to bind to | | `HF_HUB_OFFLINE` | (none) | Set to `1` to prevent model downloads (use cached only) | | `KB_DATA_PATH` | `./data` | Host path for bind mount (compose variable, not used by engine) | ## Data portability The data directory contains everything: SQLite database, model cache, and staging files. To migrate between hosts: ```bash # On source host rsync -a ~/kb-data/ user@target:/home/user/kb-data/ # On target host KB_DATA_PATH=~/kb-data docker compose -f compose.nvidia.yaml up -d ``` Data is device-agnostic — you can ingest on NVIDIA and serve from AMD or CPU (or any combination) with the same data directory. ## Claude Code skill This tool is designed to be wrapped as a Claude Code skill. See `SKILL.md` for the skill definition.