# Weaviate This page covers how to use the Weaviate ecosystem within LangChain. What is Weaviate? **Weaviate in a nutshell:** - Weaviate is an open-source ​database of the type ​vector search engine. - Weaviate allows you to store JSON documents in a class property-like fashion while attaching machine learning vectors to these documents to represent them in vector space. - Weaviate can be used stand-alone (aka bring your vectors) or with a variety of modules that can do the vectorization for you and extend the core capabilities. - Weaviate has a GraphQL-API to access your data easily. - We aim to bring your vector search set up to production to query in mere milliseconds (check our [open source benchmarks](https://weaviate.io/developers/weaviate/current/benchmarks/) to see if Weaviate fits your use case). - Get to know Weaviate in the [basics getting started guide](https://weaviate.io/developers/weaviate/current/core-knowledge/basics.html) in under five minutes. **Weaviate in detail:** Weaviate is a low-latency vector search engine with out-of-the-box support for different media types (text, images, etc.). It offers Semantic Search, Question-Answer Extraction, Classification, Customizable Models (PyTorch/TensorFlow/Keras), etc. Built from scratch in Go, Weaviate stores both objects and vectors, allowing for combining vector search with structured filtering and the fault tolerance of a cloud-native database. It is all accessible through GraphQL, REST, and various client-side programming languages. ## Installation and Setup - Install the Python SDK with `pip install weaviate-client` ## Wrappers ### VectorStore There exists a wrapper around Weaviate indexes, allowing you to use it as a vectorstore, whether for semantic search or example selection. To import this vectorstore: ```python from langchain.vectorstores import Weaviate ``` For a more detailed walkthrough of the Weaviate wrapper, see [this notebook](/docs/modules/data_connection/vectorstores/integrations/weaviate.html)