QdrantVectorStore
Only available on Node.js.
Qdrant is a vector similarity search engine. It provides a production-ready service with a convenient API to store, search, and manage points - vectors with an additional payload.
This guide provides a quick overview for getting started with Qdrant
vector stores. For detailed
documentation of all QdrantVectorStore
features and configurations
head to the API
reference.
Overview
Integration details
Class | Package | PY support | Package latest |
---|---|---|---|
QdrantVectorStore | @langchain/qdrant | ✅ |
Setup
To use Qdrant vector stores, you’ll need to set up a Qdrant instance and
install the @langchain/qdrant
integration package.
This guide will also use OpenAI
embeddings, which require you
to install the @langchain/openai
integration package. You can also use
other supported embeddings models
if you wish.
- npm
- yarn
- pnpm
npm i @langchain/qdrant @langchain/openai
yarn add @langchain/qdrant @langchain/openai
pnpm add @langchain/qdrant @langchain/openai
After installing the required dependencies, run a Qdrant instance with Docker on your computer by following the Qdrant setup instructions. Note the URL your container runs on.
Credentials
Once you’ve done this set a QDRANT_URL
environment variable:
// e.g. http://localhost:6333
process.env.QDRANT_URL = "your-qdrant-url";
If you are using OpenAI embeddings for this guide, you’ll need to set your OpenAI key as well:
process.env.OPENAI_API_KEY = "YOUR_API_KEY";
If you want to get automated tracing of your model calls you can also set your LangSmith API key by uncommenting below:
// process.env.LANGCHAIN_TRACING_V2="true"
// process.env.LANGCHAIN_API_KEY="your-api-key"
Instantiation
import { QdrantVectorStore } from "@langchain/qdrant";
import { OpenAIEmbeddings } from "@langchain/openai";
const embeddings = new OpenAIEmbeddings({
model: "text-embedding-3-small",
});
const vectorStore = await QdrantVectorStore.fromExistingCollection(embeddings, {
url: process.env.QDRANT_URL,
collectionName: "langchainjs-testing",
});
Manage vector store
Add items to vector store
import type { Document } from "@langchain/core/documents";
const document1: Document = {
pageContent: "The powerhouse of the cell is the mitochondria",
metadata: { source: "https://example.com" },
};
const document2: Document = {
pageContent: "Buildings are made out of brick",
metadata: { source: "https://example.com" },
};
const document3: Document = {
pageContent: "Mitochondria are made out of lipids",
metadata: { source: "https://example.com" },
};
const document4: Document = {
pageContent: "The 2024 Olympics are in Paris",
metadata: { source: "https://example.com" },
};
const documents = [document1, document2, document3, document4];
await vectorStore.addDocuments(documents);
Top-level document ids and deletion are currently not supported.
Query vector store
Once your vector store has been created and the relevant documents have been added you will most likely wish to query it during the running of your chain or agent.
Query directly
Performing a simple similarity search can be done as follows:
const filter = {
must: [{ key: "metadata.source", match: { value: "https://example.com" } }],
};
const similaritySearchResults = await vectorStore.similaritySearch(
"biology",
2,
filter
);
for (const doc of similaritySearchResults) {
console.log(`* ${doc.pageContent} [${JSON.stringify(doc.metadata, null)}]`);
}
* The powerhouse of the cell is the mitochondria [{"source":"https://example.com"}]
* Mitochondria are made out of lipids [{"source":"https://example.com"}]
See this page
for more on Qdrant filter syntax. Note that all values must be prefixed
with metadata.
If you want to execute a similarity search and receive the corresponding scores you can run:
const similaritySearchWithScoreResults =
await vectorStore.similaritySearchWithScore("biology", 2, filter);
for (const [doc, score] of similaritySearchWithScoreResults) {
console.log(
`* [SIM=${score.toFixed(3)}] ${doc.pageContent} [${JSON.stringify(
doc.metadata
)}]`
);
}
* [SIM=0.165] The powerhouse of the cell is the mitochondria [{"source":"https://example.com"}]
* [SIM=0.148] Mitochondria are made out of lipids [{"source":"https://example.com"}]
Query by turning into retriever
You can also transform the vector store into a retriever for easier usage in your chains.
const retriever = vectorStore.asRetriever({
// Optional filter
filter: filter,
k: 2,
});
await retriever.invoke("biology");
[
Document {
pageContent: 'The powerhouse of the cell is the mitochondria',
metadata: { source: 'https://example.com' },
id: undefined
},
Document {
pageContent: 'Mitochondria are made out of lipids',
metadata: { source: 'https://example.com' },
id: undefined
}
]
Usage for retrieval-augmented generation
For guides on how to use this vector store for retrieval-augmented generation (RAG), see the following sections:
- Tutorials: working with external knowledge.
- How-to: Question and answer with RAG
- Retrieval conceptual docs
API reference
For detailed documentation of all QdrantVectorStore
features and
configurations head to the API
reference.
Related
- Vector store conceptual guide
- Vector store how-to guides