qdrant-client
OpenAPI client for Qdrant
Found 58 results for qdrant
OpenAPI client for Qdrant
Give Claude perfect memory of all your conversations - Installation wizard for Python MCP server
Qdrant vector search engine client library
MCP server for semantic search using local Qdrant and Ollama (default) with support for OpenAI, Cohere, and Voyage AI
Qdrant module for Testcontainers
Gatsby plugin to recommend articles based on OpenAI embeddings and Qdrant vector search.
MCP server for AutoMem: AI memory storage and recall
Add markup for the search modal popup:
MCP server for memory management using Qdrant vector database
A TypeScript client library for the Vectors Gateway API
AI-powered MCP server for codebase navigation and LLM prompt optimization
A Model Context Protocol server for fetching and storing documentation in a vector database, enabling semantic search and retrieval to augment LLM capabilities with relevant documentation context.
Qdrant vector search engine client library for node
Modern JavaScript-first RAG framework with contextual embeddings, professional CLI, and one-command deployment
A service hub for AI services
Genkit AI framework plugin for the Qdrant vector database.
An MCP server for semantic documentation search and retrieval using vector databases to augment LLM capabilities.
Retrieval Augmented Generation (RAG) and local GPT (text generation LLM - large language models) toolkit for machine learning (ML) apps with node-red
Developer-friendly TypeScript client for the Catalyst RAG Server.
Simplified advanced memory engine - no tiers, just powerful semantic search with persistence
MCP server for enhanced Qdrant vector database functionality
This is a WebAssembly (WASM) port of the modified Barnes-Hut t-SNE algorithm that works with pre-computed distance vector. The original Rust implementation can be found [here](https://github.com/frjnn/bhtsne).
An MCP server for semantic documentation search and retrieval using vector databases to augment LLM capabilities.
A code indexing service using MCP, Ollama, and Qdrant.
Semantic knowledge infrastructure for Claude Code agents - AI-powered messaging with vector search and intelligent ranking
CLI tool to create modern Node.js projects with TypeScript, AI capabilities, and more
Adis CLI for interacting with Qdrant and Milvus databases.
Een MCP server voor interactie met Qdrant vectordatabase
TypeScript SDK for turbopuffer vector database API
An MCP server for semantic documentation search and retrieval using vector databases to augment LLM capabilities.
CLI tool to load german snippets vectors to Qdrant Cloud.
A robust and optimized JavaScript library for integrating Google's Teachable Machine models, supporting various image sources and providing efficient classification capabilities.
Qdrant client for NestJS with gRPC and REST support
A Model Context Protocol server for fetching and storing documentation in a vector database, enabling semantic search and retrieval to augment LLM capabilities with relevant documentation context.
A code context tool with vector search and real-time monitoring, with optional Git integration.
A TypeScript/JavaScript module for implementing Retrieval-Augmented Generation (RAG) using Qdrant vector database, Google's Generative AI embeddings, and Groq LLM.
Busca de dados de controle de acesso em condomínios usando Qdrant e rastreamento integrado com Firestore.
⚡ Instantly create and manage local databases with one command
Pipedream Qdrant Components
Advanced Qdrant community node for n8n — full Qdrant HTTP API support with $fromAI expressions
MCP server to search qdrant database
MCP server for hybrid search using Meilisearch and Qdrant
Javascript API for qdrant
Web Application powered by Go and Qdrant to search through 2500+ common German words and sentences.
One-command installer to set up and run Toq via Docker Compose
A powerful memory stack for AI applications with vector embeddings
A Model Context Protocol server for fetching and storing documentation in a vector database, enabling semantic search and retrieval to augment LLM capabilities with relevant documentation context.
One-command installer to set up and run Torqbit via Docker Compose
A Model Context Protocol server for fetching and storing documentation in a vector database, enabling semantic search and retrieval to augment LLM capabilities with relevant documentation context.
A powerful and flexible Retrieval-Augmented Generation (RAG) library for Node.js and TypeScript
A NodeJS RAG framework to easily work with LLMs and custom datasets
一个MCP服务器实现,提供通过向量搜索检索和处理文档的工具,使得AI助手可以在其响应中增加相关文档内容。
MCP server for codebase indexing with Voyage AI embeddings and Qdrant vector storage
A RAG-based document question answering system
Semantic caching SDK for LLM cost reduction using Qdrant
Hukuki kararlar için özel Qdrant tabanlı MCP sunucusu
AI-powered MCP server for codebase navigation and LLM prompt optimization
MCP server for enhanced Qdrant vector database functionality