Distributed vector search for AI-native applications
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Updated
May 9, 2026 - Go
Distributed vector search for AI-native applications
The universal tool suite for vector database management. Manage Pinecone, Chroma, Qdrant, Weaviate and more vector databases with ease.
Parsing-free RAG supported by VLMs
High performance embedded vector database
Vector search demo with the arXiv paper dataset, RedisVL, HuggingFace, OpenAI, Cohere, FastAPI, React, and Redis.
🐊 Snappy's unique approach unifies vision-language late interaction with structured OCR for region-level knowledge retrieval. Like the project? Drop a star! ⭐
The first database built to let AI agents think their way to the right answer using structural reasoning, rather than guessing based on vector similarity.
A post-retrieval temporal layer for RAG systems — validity filtering, time decay, document kind classification, and hybrid reranking in one pipeline.
[VLSP 2025] ViDRILL is a Vietnamese document retrieval system for VLSP 2025. It combines dense and sparse retrieval, reranking, and optional LLM-based query rewriting and reasoning to support high-accuracy information retrieval and future LLM-enhanced pipelines.
Vietnamese long form question answering system with documents retrieval.
Implementation of ECIR 2022 Paper: How Can Graph Neural Networks Help Document Retrieval: A Case Study on CORD19 with Concept Map Generation
Retrieves the top 10 documents from the Wikipedia corpus for a user inputted free-text query
Document Querying with LLMs - Google PaLM API: Semantic Search With LLM Embeddings
Run text embeddings with Instructor-Large on AWS Lambda.
corporate law RAG system with advanced retrieval and context handling
We address the task of learning contextualized word, sentence and document representations with a hierarchical language model by stacking Transformer-based encoders on a sentence level and subsequently on a document level and performing masked token prediction.
Sub-second RAG regression testing. Define golden questions, detect lost chunks in CI. pytest for your RAG pipeline.
Benchmark 7 retrieval strategies on your own docs — naive vector, contextual, QnA pairs, knowledge graph, RAPTOR, PageIndex, and hybrid. Find which KB architecture fits your data.
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