faiss
Installation
SKILL.md
FAISS - Efficient Similarity Search
Facebook AI's library for billion-scale vector similarity search.
When to use FAISS
Use FAISS when:
- Need fast similarity search on large vector datasets (millions/billions)
- GPU acceleration required
- Pure vector similarity (no metadata filtering needed)
- High throughput, low latency critical
- Offline/batch processing of embeddings
Metrics:
- 31,700+ GitHub stars
- Meta/Facebook AI Research
- Handles billions of vectors
- C++ with Python bindings
Related skills
More from nousresearch/hermes-agent
dogfood
Exploratory QA of web apps: find bugs, evidence, reports.
2.5Kyuanbao
Yuanbao (元宝) groups: @mention users, query info/members.
166llm-wiki
Karpathy's LLM Wiki: build/query interlinked markdown KB.
20manim-video
Manim CE animations: 3Blue1Brown math/algo videos.
15powerpoint
Create, read, edit .pptx decks, slides, notes, templates.
14ocr-and-documents
Extract text from PDFs/scans (pymupdf, marker-pdf).
14