Weaviate is a cloud-native, open source vector database that is robust, fast, and scalable.
To get started quickly, have a look at one of these pages:
- Quickstart tutorial To see Weaviate in action
- Contributor guide To contribute to this project
For more details, read through the summary on this page or see the system documentation.
Note
Help us improve your experience by sharing your feedback, ideas and thoughts: Fill out our Community Experience Survey, preferably by June 14th, 2024.
Weaviate uses state-of-the-art machine learning (ML) models to turn your data - text, images, and more - into a searchable vector database.
Here are some highlights.
Weaviate is fast. The core engine can run a 10-NN nearest neighbor search on millions of objects in milliseconds. See benchmarks.
Weaviate can vectorize your data at import time. Or, if you have already vectorized your data, you can upload your own vectors instead.
Modules give you the flexibility to tune Weaviate for your needs. More than two dozen modules connect you to popular services and model hubs such as OpenAI, Cohere, VoyageAI and HuggingFace. Use custom modules to work with your own models or third party services.
Weaviate is built with scaling, replication, and security in mind so you can go smoothly from rapid prototyping to production at scale.
Weaviate doesn't just power lightning-fast vector searches. Other superpowers include recommendation, summarization, and integration with neural search frameworks.
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Software Engineers
- Weaviate is an ML-first database engine
- Out-of-the-box modules for AI-powered searches, automatic classification, and LLM integration
- Full CRUD support
- Cloud-native, distributed system that runs well on Kubernetes
- Scales with your workloads
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Data Engineers
- Weaviate is a fast, flexible vector database
- Use your own ML model or third party models
- Run locally or with an inference service
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Data Scientists
- Seamless handover of Machine Learning models to engineers and MLOps
- Deploy and maintain your ML models in production reliably and efficiently
- Easily package custom trained models
A Weaviate vector database can search text, images, or a combination of both. Fast vector search provides a foundation for chatbots, recommendation systems, summarizers, and classification systems.
Here are some examples that show how Weaviate integrates with other AI and ML tools:
These demos are working applications that highlight some of Weaviate's capabilities. Their source code is available on GitHub.
Weaviate exposes a GraphQL API and a REST API. Starting in v1.23, a new gRPC API provides even faster access to your data.
Weaviate provides client libraries for several popular languages:
There are also community supported libraries for additional languages.
Free, self-paced courses in Weaviate Academy teach you how to use Weaviate. The Tutorials repo has code for example projects. The Recipes repo has even more project code to get you started.
The Weaviate blog and podcast regularly post stories on Weaviate and AI.
Here are some popular posts:
- What to expect from Weaviate in 2023
- Why is vector search so fast?
- Cohere Multilingual ML Models with Weaviate
- Vamana vs. HNSW - Exploring ANN algorithms Part 1
- HNSW+PQ - Exploring ANN algorithms Part 2.1
- The Tile Encoder - Exploring ANN algorithms Part 2.2
- How GPT4.0 and other Large Language Models Work
- Monitoring Weaviate in Production
- The ChatGPT Retrieval Plugin - Weaviate as a Long-term Memory Store for Generative AI
- Combining LangChain and Weaviate
- How to build an Image Search Application with Weaviate
- Cohere Multilingual ML Models with Weaviate
- Building Multimodal AI in TypeScript
- Giving Auto-GPT Long-Term Memory with Weaviate
- Weaviate is an open-source search engine powered by ML, vectors, graphs, and GraphQL (ZDNet)
- Weaviate, an ANN Database with CRUD support (DB-Engines.com)
- A sub-50ms neural search with DistilBERT and Weaviate (Towards Datascience)
- Getting Started with Weaviate Python Library (Towards Datascience)
At Weaviate, we love to connect with our community. We love helping amazing people build cool things. And, we love to talk with you about you passion for vector databases and AI.
Please reach out, and join our community:
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