Назад към всички

qdrant-integration

// Qdrant vector database with filtering, payloads, and quantization support

$ git log --oneline --stat
stars:384
forks:73
updated:March 4, 2026
SKILL.mdreadonly
SKILL.md Frontmatter
nameqdrant-integration
descriptionQdrant vector database with filtering, payloads, and quantization support
allowed-toolsRead,Write,Edit,Bash,Glob,Grep

Qdrant Integration Skill

Capabilities

  • Set up Qdrant (local, cloud, self-hosted)
  • Create collections with configuration
  • Implement advanced filtering with payloads
  • Configure quantization for efficiency
  • Set up sparse vectors for hybrid search
  • Implement batch operations and optimization

Target Processes

  • vector-database-setup
  • rag-pipeline-implementation

Implementation Details

Deployment Modes

  1. Local Memory: For testing
  2. Local Disk: Persistent local storage
  3. Qdrant Cloud: Managed service
  4. Self-Hosted: Docker/Kubernetes deployment

Core Operations

  • Collection management with parameters
  • Point upsert with vectors and payloads
  • Search with filters (must, should, must_not)
  • Scroll for pagination
  • Batch operations

Configuration Options

  • Vector parameters (size, distance)
  • Quantization (scalar, product)
  • Sparse vector configuration
  • Payload indexes
  • Replication and sharding

Best Practices

  • Use quantization for large collections
  • Design payload indexes for filters
  • Implement proper batch sizes
  • Configure appropriate distance metrics

Dependencies

  • qdrant-client
  • langchain-qdrant