qdrant-vector-search
Installation
SKILL.md
Qdrant - Vector Similarity Search Engine
High-performance vector database written in Rust for production RAG and semantic search.
When to use Qdrant
Use Qdrant when:
- Building production RAG systems requiring low latency
- Need hybrid search (vectors + metadata filtering)
- Require horizontal scaling with sharding/replication
- Want on-premise deployment with full data control
- Need multi-vector storage per record (dense + sparse)
- Building real-time recommendation systems
Related skills
More from nousresearch/hermes-agent
dogfood
Exploratory QA of web apps: find bugs, evidence, reports.
2.4Kyuanbao
Yuanbao (元宝) groups: @mention users, query info/members.
161llm-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