Skills Artificial Intelligence Vector Embedding Generation and Indexing

Vector Embedding Generation and Indexing

v20260716
vector-embed
A utility designed to generate high-dimensional vector embeddings (384-dim) from various sources including text, code, or documents. This process converts raw data into numerical representations optimized for semantic search, similarity comparison, and clustering, utilizing ONNX and HNSW indexing for efficient retrieval.
Get Skill
353 downloads
Overview

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

  1. 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
    
  2. 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.
  3. Adaptive (LoRA) variant: npx -y ruvector@0.2.25 embed text "..." --adaptive --domain code
  4. Confirm — report vector dimension (384), norm, and any output path written.
  5. Store metadata in AgentDB if needed: mcp__plugin_ruflo-core_ruflo__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.
Info
Name vector-embed
Version v20260716
Size 2.31KB
Updated At 2026-07-18
Language