Google Vertex AI Matching Engine
Only available on Node.js.
The Google Vertex AI Matching Engine "provides the industry's leading high-scale low latency vector database. These vector databases are commonly referred to as vector similarity-matching or an approximate nearest neighbor (ANN) service."
Setup
This module expects an endpoint and deployed index already created as the creation time takes close to one hour. To learn more, see the LangChain python documentation Create Index and deploy it to an Endpoint.
Before running this code, you should make sure the Vertex AI API is enabled for the relevant project in your Google Cloud dashboard and that you've authenticated to Google Cloud using one of these methods:
- You are logged into an account (using
gcloud auth application-default login
) permitted to that project. - You are running on a machine using a service account that is permitted to the project.
- You have downloaded the credentials for a service account that is permitted
to the project and set the
GOOGLE_APPLICATION_CREDENTIALS
environment variable to the path of this file.
Install the authentication library with:
- npm
- Yarn
- pnpm
npm install google-auth-library
yarn add google-auth-library
pnpm add google-auth-library
The Matching Engine does not store the actual document contents, only embeddings. Therefore, you'll need a docstore. The below example uses Google Cloud Storage, which requires the following:
- npm
- Yarn
- pnpm
npm install @google-cloud/storage
yarn add @google-cloud/storage
pnpm add @google-cloud/storage
Usage
Initializing the engine
When creating the MatchingEngine
object, you'll need some information about
the matching engine configuration. You can get this information from the Cloud Console
for Matching Engine:
- The id for the Index
- The id for the Index Endpoint
You will also need a document store. While an InMemoryDocstore
is ok for
initial testing, you will want to use something like a
GoogleCloudStorageDocstore to store it more permanently.
import { MatchingEngine } from "@langchain/community/vectorstores/googlevertexai";
import { Document } from "langchain/document";
import { SyntheticEmbeddings } from "langchain/embeddings/fake";
import { GoogleCloudStorageDocstore } from "@langchain/community/stores/doc/gcs";
const embeddings = new SyntheticEmbeddings({
vectorSize: Number.parseInt(
process.env.SYNTHETIC_EMBEDDINGS_VECTOR_SIZE ?? "768",
10
),
});
const store = new GoogleCloudStorageDocstore({
bucket: process.env.GOOGLE_CLOUD_STORAGE_BUCKET!,
});
const config = {
index: process.env.GOOGLE_VERTEXAI_MATCHINGENGINE_INDEX!,
indexEndpoint: process.env.GOOGLE_VERTEXAI_MATCHINGENGINE_INDEXENDPOINT!,
apiVersion: "v1beta1",
docstore: store,
};
const engine = new MatchingEngine(embeddings, config);
Adding documents
const doc = new Document({ pageContent: "this" });
await engine.addDocuments([doc]);
Any metadata in a document is converted into Matching Engine "allow list" values that can be used to filter during a query.
const documents = [
new Document({
pageContent: "this apple",
metadata: {
color: "red",
category: "edible",
},
}),
new Document({
pageContent: "this blueberry",
metadata: {
color: "blue",
category: "edible",
},
}),
new Document({
pageContent: "this firetruck",
metadata: {
color: "red",
category: "machine",
},
}),
];
// Add all our documents
await engine.addDocuments(documents);
The documents are assumed to have an "id" parameter available as well. If this is not set, then an ID will be assigned and returned as part of the Document.
Querying documents
Doing a straightforward k-nearest-neighbor search which returns all results is done using any of the standard methods:
const results = await engine.similaritySearch("this");
Querying documents with a filter / restriction
We can limit what documents are returned based on the metadata that was set for the document. So if we just wanted to limit the results to those with a red color, we can do:
import { Restriction } from `langchain/vectorstores/googlevertexai`;
const redFilter: Restriction[] = [
{
namespace: "color",
allowList: ["red"],
},
];
const redResults = await engine.similaritySearch("this", 4, redFilter);
If we wanted to do something more complicated, like things that are red, but not edible:
const filter: Restriction[] = [
{
namespace: "color",
allowList: ["red"],
},
{
namespace: "category",
denyList: ["edible"],
},
];
const results = await engine.similaritySearch("this", 4, filter);
Deleting documents
Deleting documents are done using ID.
import { IdDocument } from `langchain/vectorstores/googlevertexai`;
const oldResults: IdDocument[] = await engine.similaritySearch("this", 10);
const oldIds = oldResults.map( doc => doc.id! );
await engine.delete({ids: oldIds});
Related
- Vector store conceptual guide
- Vector store how-to guides