Weaviate
Weaviate is an open source vector database that stores both objects and vectors, allowing for combining vector search with structured filtering.
LangChain connects to Weaviate via the weaviate-ts-client
package, the official Typescript client for Weaviate.
LangChain inserts vectors directly to Weaviate, and queries Weaviate for the nearest neighbors of a given vector, so that you can use all the LangChain Embeddings integrations with Weaviate.
Setup
Weaviate has their own standalone integration package with LangChain, accessible via @langchain/weaviate
on NPM!
- npm
- Yarn
- pnpm
npm install @langchain/weaviate @langchain/openai @langchain/community
yarn add @langchain/weaviate @langchain/openai @langchain/community
pnpm add @langchain/weaviate @langchain/openai @langchain/community
You'll need to run Weaviate either locally or on a server, see the Weaviate documentation for more information.
Usage, insert documents
/* eslint-disable @typescript-eslint/no-explicit-any */
import weaviate, { ApiKey } from "weaviate-ts-client";
import { WeaviateStore } from "@langchain/weaviate";
import { OpenAIEmbeddings } from "@langchain/openai";
export async function run() {
// Something wrong with the weaviate-ts-client types, so we need to disable
const client = (weaviate as any).client({
scheme: process.env.WEAVIATE_SCHEME || "https",
host: process.env.WEAVIATE_HOST || "localhost",
apiKey: new ApiKey(process.env.WEAVIATE_API_KEY || "default"),
});
// Create a store and fill it with some texts + metadata
await WeaviateStore.fromTexts(
["hello world", "hi there", "how are you", "bye now"],
[{ foo: "bar" }, { foo: "baz" }, { foo: "qux" }, { foo: "bar" }],
new OpenAIEmbeddings(),
{
client,
indexName: "Test",
textKey: "text",
metadataKeys: ["foo"],
}
);
}
API Reference:
- WeaviateStore from
@langchain/weaviate
- OpenAIEmbeddings from
@langchain/openai
Usage, query documents
/* eslint-disable @typescript-eslint/no-explicit-any */
import weaviate, { ApiKey } from "weaviate-ts-client";
import { WeaviateStore } from "@langchain/weaviate";
import { OpenAIEmbeddings } from "@langchain/openai";
export async function run() {
// Something wrong with the weaviate-ts-client types, so we need to disable
const client = (weaviate as any).client({
scheme: process.env.WEAVIATE_SCHEME || "https",
host: process.env.WEAVIATE_HOST || "localhost",
apiKey: new ApiKey(process.env.WEAVIATE_API_KEY || "default"),
});
// Create a store for an existing index
const store = await WeaviateStore.fromExistingIndex(new OpenAIEmbeddings(), {
client,
indexName: "Test",
metadataKeys: ["foo"],
});
// Search the index without any filters
const results = await store.similaritySearch("hello world", 1);
console.log(results);
/*
[ Document { pageContent: 'hello world', metadata: { foo: 'bar' } } ]
*/
// Search the index with a filter, in this case, only return results where
// the "foo" metadata key is equal to "baz", see the Weaviate docs for more
// https://weaviate.io/developers/weaviate/api/graphql/filters
const results2 = await store.similaritySearch("hello world", 1, {
where: {
operator: "Equal",
path: ["foo"],
valueText: "baz",
},
});
console.log(results2);
/*
[ Document { pageContent: 'hi there', metadata: { foo: 'baz' } } ]
*/
}
API Reference:
- WeaviateStore from
@langchain/weaviate
- OpenAIEmbeddings from
@langchain/openai
Usage, maximal marginal relevance
You can use maximal marginal relevance search, which optimizes for similarity to the query AND diversity.
/* eslint-disable @typescript-eslint/no-explicit-any */
import weaviate, { ApiKey } from "weaviate-ts-client";
import { WeaviateStore } from "@langchain/weaviate";
import { OpenAIEmbeddings } from "@langchain/openai";
export async function run() {
// Something wrong with the weaviate-ts-client types, so we need to disable
const client = (weaviate as any).client({
scheme: process.env.WEAVIATE_SCHEME || "https",
host: process.env.WEAVIATE_HOST || "localhost",
apiKey: new ApiKey(process.env.WEAVIATE_API_KEY || "default"),
});
// Create a store for an existing index
const store = await WeaviateStore.fromExistingIndex(new OpenAIEmbeddings(), {
client,
indexName: "Test",
metadataKeys: ["foo"],
});
const resultOne = await store.maxMarginalRelevanceSearch("Hello world", {
k: 1,
});
console.log(resultOne);
}
API Reference:
- WeaviateStore from
@langchain/weaviate
- OpenAIEmbeddings from
@langchain/openai
Usage, delete documents
/* eslint-disable @typescript-eslint/no-explicit-any */
import weaviate, { ApiKey } from "weaviate-ts-client";
import { WeaviateStore } from "@langchain/weaviate";
import { OpenAIEmbeddings } from "@langchain/openai";
export async function run() {
// Something wrong with the weaviate-ts-client types, so we need to disable
const client = (weaviate as any).client({
scheme: process.env.WEAVIATE_SCHEME || "https",
host: process.env.WEAVIATE_HOST || "localhost",
apiKey: new ApiKey(process.env.WEAVIATE_API_KEY || "default"),
});
// Create a store for an existing index
const store = await WeaviateStore.fromExistingIndex(new OpenAIEmbeddings(), {
client,
indexName: "Test",
metadataKeys: ["foo"],
});
const docs = [{ pageContent: "see ya!", metadata: { foo: "bar" } }];
// Also supports an additional {ids: []} parameter for upsertion
const ids = await store.addDocuments(docs);
// Search the index without any filters
const results = await store.similaritySearch("see ya!", 1);
console.log(results);
/*
[ Document { pageContent: 'see ya!', metadata: { foo: 'bar' } } ]
*/
// Delete documents with ids
await store.delete({ ids });
const results2 = await store.similaritySearch("see ya!", 1);
console.log(results2);
/*
[]
*/
const docs2 = [
{ pageContent: "hello world", metadata: { foo: "bar" } },
{ pageContent: "hi there", metadata: { foo: "baz" } },
{ pageContent: "how are you", metadata: { foo: "qux" } },
{ pageContent: "hello world", metadata: { foo: "bar" } },
{ pageContent: "bye now", metadata: { foo: "bar" } },
];
await store.addDocuments(docs2);
const results3 = await store.similaritySearch("hello world", 1);
console.log(results3);
/*
[ Document { pageContent: 'hello world', metadata: { foo: 'bar' } } ]
*/
// delete documents with filter
await store.delete({
filter: {
where: {
operator: "Equal",
path: ["foo"],
valueText: "bar",
},
},
});
const results4 = await store.similaritySearch("hello world", 1, {
where: {
operator: "Equal",
path: ["foo"],
valueText: "bar",
},
});
console.log(results4);
/*
[]
*/
}
API Reference:
- WeaviateStore from
@langchain/weaviate
- OpenAIEmbeddings from
@langchain/openai
Related
- Vector store conceptual guide
- Vector store how-to guides