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milvus-io/milvus

Milvus is a high-performance, cloud-native vector database built for scalable vector ANN search

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What it does

Milvus is a database specifically designed to store and search through massive collections of AI-generated data like images, text, and audio by finding items that are 'similar' to each other rather than exact matches. It lets applications quickly search through billions of pieces of content to find the most relevant results, which is the core technology behind features like recommendation engines, image search, and AI chatbots that retrieve relevant information.

Why it matters

As AI-powered products become the norm, the ability to search and retrieve relevant content at scale is now a core infrastructure requirement — and Milvus is one of the most battle-tested open-source solutions for this with 43,000+ stars and a thriving community. Builders choosing a vector database today are making a foundational architectural decision that affects the quality of their AI features, so Milvus's combination of open-source flexibility, massive scale, and a managed cloud option (Zilliz Cloud) makes it a strong candidate to evaluate early.

30Active

On the radar — signal detected

Stars
45.0k
Forks
4.1k
Contributors
354
Language
Go

Score updated Jun 27, 2026

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