| name | vector-embed |
| description | Generate embeddings via npx ruvector@0.2.25 embed text (ONNX all-MiniLM-L6-v2, 384-dim), normalize, and store in HNSW index |
| argument-hint | <text-or-file> |
| allowed-tools | Bash Read mcp__claude-flow__memory_store mcp__claude-flow__memory_search |
Vector Embed
Generate and store vector embeddings using the ruvector npm package.
When to use
Use this skill to embed text, code, or documents into 384-dimensional vectors for semantic search, similarity comparison, or clustering. ruvector uses ONNX all-MiniLM-L6-v2 with HNSW indexing (52,000+ inserts/sec, ~0.045ms search).
Steps
- Ensure ruvector@0.2.25 is available:
npm ls ruvector 2>/dev/null | grep '0.2.25' || npm install ruvector@0.2.25
If embed text later reports ONNX WASM files not bundled, also run:
npm install ruvector-onnx-embeddings-wasm
- Embed the input (use the
text subcommand, with text as a positional arg):
- Single string:
npx -y ruvector@0.2.25 embed text "your text here"
- With output file:
npx -y ruvector@0.2.25 embed text "your text here" -o vec.json
- For a file: read its content via the Read tool, then pass it as the positional argument.
- For batch: loop over files in shell — ruvector@0.2.25 has no built-in
--batch/--glob flags.
- Adaptive (LoRA) variant:
npx -y ruvector@0.2.25 embed text "..." --adaptive --domain code
- Confirm — report vector dimension (384), norm, and any output path written.
- Store metadata in AgentDB if needed:
mcp__claude-flow__memory_store({ key: "embed-SOURCE", value: "VECTOR_METADATA", namespace: "vector-patterns" })
MCP alternative
Register the MCP server once with the pinned version:
claude mcp add ruvector -- npx -y ruvector@0.2.25 mcp start
Then call MCP tools directly: hooks_rag_context (semantic context), brain_search (collective brain), hooks_ast_analyze, hooks_route.
Caveats
- The
embed --batch --glob and embed --file flags do not exist in ruvector@0.2.25; only embed text <text> is supported. Read files yourself and call embed text per file.
- ONNX runtime is not bundled by default. If embedding fails, install
ruvector-onnx-embeddings-wasm or run npx -y ruvector@0.2.25 doctor to diagnose.