Google Vertex AI
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LangChain.js supports two different authentication methods based on whether you’re running in a Node.js environment or a web environment.
This will help you get started with VertexAI completion models (LLMs)
using LangChain. For detailed documentation on VertexAI
features and
configuration options, please refer to the API
reference.
Overview
Integration details
Class | Package | Local | Serializable | PY support | Package downloads | Package latest |
---|---|---|---|---|---|---|
VertexAI | @langchain/google-vertexai | ❌ | ✅ | ✅ |
Setup
To access VertexAI models you’ll need to create a Google Cloud Platform
(GCP) account, get an API key, and install the
@langchain/google-vertexai
integration package.
Credentials
Node.js
You should make sure the Vertex AI API is enabled for the relevant project 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. or - You set the
GOOGLE_API_KEY
environment variable to the API key for the project.
Web
To call Vertex AI models in web environments (like Edge functions),
you’ll need to install the @langchain/google-vertexai-web
package.
Then, you’ll need to add your service account credentials directly as a
GOOGLE_VERTEX_AI_WEB_CREDENTIALS
environment variable:
GOOGLE_VERTEX_AI_WEB_CREDENTIALS={"type":"service_account","project_id":"YOUR_PROJECT-12345",...}
You can also pass your credentials directly in code like this:
import { VertexAI } from "@langchain/google-vertexai";
// Or uncomment this line if you're using the web version:
// import { VertexAI } from "@langchain/google-vertexai-web";
const model = new VertexAI({
authOptions: {
credentials: {"type":"service_account","project_id":"YOUR_PROJECT-12345",...},
},
});
If you want to get automated tracing of your model calls you can also set your LangSmith API key by uncommenting below:
# export LANGCHAIN_TRACING_V2="true"
# export LANGCHAIN_API_KEY="your-api-key"
Installation
The LangChain VertexAI integration lives in the
@langchain/google-vertexai
package:
- npm
- yarn
- pnpm
npm i @langchain/google-vertexai
yarn add @langchain/google-vertexai
pnpm add @langchain/google-vertexai
or for web environments:
- npm
- yarn
- pnpm
npm i @langchain/google-vertexai-web
yarn add @langchain/google-vertexai-web
pnpm add @langchain/google-vertexai-web
Instantiation
Now we can instantiate our model object and generate chat completions:
import { VertexAI } from "@langchain/google-vertexai-web";
const llm = new VertexAI({
model: "gemini-pro",
temperature: 0,
maxRetries: 2,
// other params...
});
Invocation
const inputText = "VertexAI is an AI company that ";
const completion = await llm.invoke(inputText);
completion;
offers a wide range of cloud computing services and artificial intelligence solutions to businesses and developers worldwide.
Chaining
We can chain our completion model with a prompt template like so:
import { PromptTemplate } from "@langchain/core/prompts";
const prompt = PromptTemplate.fromTemplate(
"How to say {input} in {output_language}:\n"
);
const chain = prompt.pipe(llm);
await chain.invoke({
output_language: "German",
input: "I love programming.",
});
"Ich liebe Programmieren."
Pronunciation guide:
Ich: [ɪç] (similar to "ikh" with a soft "ch" sound)
liebe: [ˈliːbə] (LEE-buh)
Programmieren: [pʁoɡʁaˈmiːʁən] (pro-gra-MEE-ren)
You could also say:
"Ich liebe es zu programmieren."
Which translates more literally to "I love to program." This version is a bit more formal or precise.
Pronunciation:
es: [ɛs] (like the letter "S")
zu: [tsuː] (tsoo)
Both versions are correct and commonly used.
API reference
For detailed documentation of all VertexAI features and configurations head to the API reference: https://api.js.langchain.com/classes/langchain_google_vertexai.VertexAI.html
Related
- LLM conceptual guide
- LLM how-to guides