Search your files across your devices with natural language | 使用自然语言跨设备搜索文件的桌面应用
-
Updated
May 28, 2026 - Rust
Search your files across your devices with natural language | 使用自然语言跨设备搜索文件的桌面应用
Build Semantic Search with S-BERT and Fine-tune your model in unsupervised way
An easy-to-use vector database.
A Repository-Aware, Self-Evolving Agent That Understands Codebase in Real Time powered by Hybrid Semantic + Full-Text Engine
A Repository-Aware, Knowledge-Learning local MCP that understands your codebase in Real Time powered by Hybrid Semantic + Full-Text Engine, both supports claude code and codex
LLM-assistant that searches PubMed, retrieves abstracts or full-texts, and generates answers using OpenAI ChatGPT. Features a custom RAG pipeline, semantic search, and knowledge graph generation.
Agentic RAG with LangGraph 🔥
The embedded database for local-first JavaScript apps.
A .NET-based AI project leveraging Retrieval-Augmented Generation (RAG) and OpenAI to provide efficient, intelligent search capabilities for team documentation.
AI-focused news aggregator that ranks, summarizes, and deduplicates articles about artificial intelligence in real time.
A RAG (Retrieval-Augmented Generation) pipeline implementation using .NET 10, Gemini AI, and Qdrant Vector Database.
Hybrid AI assistant combining Keras intent classification, FAISS vector semantic memory, and a self-learning LLM pipeline.
Amgix Now is a high-performance hybrid search engine from the Amgix family
AI-powered developer documentation search engine using RAG (Retrieval-Augmented Generation) with FAISS, Sentence Transformers, and local LLM (Ollama). Enables fast, context-aware answers from Python, Django, Flask, FastAPI, NumPy, and Pandas docs.
🌟 Lumiere: Multi-agent RAG system with semantic memory. Combines LangGraph, Qdrant vector search, and OpenAI for intelligent document Q&A, SQL data analysis, and context-aware conversations. Features long-term learning, critic validation, and full observability.
🤖 AI-powered e-commerce platform with intelligent chat assistants, semantic product search via RAG, and real-time streaming charts. A proof-of-concept showcasing MCP servers and advanced AI integration patterns.
Docker image of PostgreSQL with vector database extension **pgvector** on Alpine Linux.
Persistent memory backend for AI systems (FastAPI + SQLite)
RAG Chatbot that turns documents in Google Drive into a conversational AI. Uses OpenAI embeddings, Qdrant vector search, and Google Gemini for context-aware answers. Applied to large document collections, including legal texts, it drastically cuts search time and provides accurate responses grounded in multiple sources.
Add a description, image, and links to the sematic-search topic page so that developers can more easily learn about it.
To associate your repository with the sematic-search topic, visit your repo's landing page and select "manage topics."