Vertex AI Node.js SDK

The Vertex AI Node.js SDK enables developers to use Google's state-of-the-art generative AI models (like Gemini) to build AI-powered features and applications.

See here for detailed samples using the Vertex AI Node.js SDK.

Before you begin

  1. Select or create a Cloud Platform project .
  2. Enable billing for your project .
  3. Enable the Vertex AI API .
  4. Set up authentication with a service account so you can access the API from your local workstation.

Installation

Install this SDK via NPM.

 npm install @google-cloud/vertexai 

Setup

To use the SDK, create an instance of VertexAI by passing it your Google Cloud project ID and location. Then create a reference to a generative model.

 const {VertexAI, HarmCategory, HarmBlockThreshold} = require(' @google-cloud/vertexai 
');

const project = 'your-cloud-project';
const location = 'us-central1';

const vertex_ai = new VertexAI 
({project: project, location: location});

// Instantiate models
const generativeModel = vertex_ai. preview 
. getGenerativeModel 
({
    model: 'gemini-pro',
    // The following parameters are optional
    // They can also be passed to individual content generation requests
    safety_settings: [{category: HarmCategory 
. HARM_CATEGORY_DANGEROUS_CONTENT 
, threshold: HarmBlockThreshold 
. BLOCK_MEDIUM_AND_ABOVE 
}],
    generation_config: {max_output_tokens: 256},
  });

const generativeVisionModel = vertex_ai. preview 
. getGenerativeModel 
({
    model: 'gemini-pro-vision',
}); 

Streaming content generation

 async function streamGenerateContent() {
  const request = {
    contents: [{role: 'user', parts: [{text: 'How are you doing today?'}]}],
  };
  const streamingResp = await generativeModel.generateContentStream(request);
  for await (const item of streamingResp.stream) {
    console.log('stream chunk: ', JSON.stringify(item));
  }
  console.log('aggregated response: ', JSON.stringify(await streamingResp.response));
};

streamGenerateContent(); 

Streaming chat

 async function streamChat() {
  const chat = generativeModel.startChat();
  const chatInput1 = "How can I learn more about Node.js?";
  const result1 = await chat.sendMessageStream(chatInput1);
  for await (const item of result1.stream) {
      console.log(item.candidates[0].content.parts[0].text);
  }
  console.log('aggregated response: ', JSON.stringify(await result1.response));
}

streamChat(); 

Multi-part content generation

Providing a Google Cloud Storage image URI

 async function multiPartContent() {
    const filePart = {file_data: {file_uri: "gs://generativeai-downloads/images/scones.jpg", mime_type: "image/jpeg"}};
    const textPart = {text: 'What is this a picture of?'};
    const request = {
        contents: [{role: 'user', parts: [textPart, filePart]}],
      };
    const streamingResp = await generativeVisionModel.generateContentStream(request);
    for await (const item of streamingResp.stream) {
      console.log('stream chunk: ', JSON.stringify(item));
    }
    const aggregatedResponse = await streamingResp.response;
    console.log(aggregatedResponse.candidates[0].content);
}

multiPartContent(); 

Providing a base64 image string

 async function multiPartContentImageString() {
    // Replace this with your own base64 image string
    const base64Image = 'iVBORw0KGgoAAAANSUhEUgAAAAEAAAABCAYAAAAfFcSJAAAADUlEQVR42mP8z8BQDwAEhQGAhKmMIQAAAABJRU5ErkJggg==';
    const filePart = {inline_data: {data: base64Image, mime_type: 'image/jpeg'}};
    const textPart = {text: 'What is this a picture of?'};
    const request = {
        contents: [{role: 'user', parts: [textPart, filePart]}],
      };
    const resp = await generativeVisionModel.generateContentStream(request);
    const contentResponse = await resp.response;
    console.log(contentResponse.candidates[0].content.parts[0].text);
}

multiPartContentImageString(); 

Multi-part content with text and video

 async function multiPartContentVideo() {
    const filePart = {file_data: {file_uri: 'gs://cloud-samples-data/video/animals.mp4', mime_type: 'video/mp4'}};
    const textPart = {text: 'What is in the video?'};
    const request = {
        contents: [{role: 'user', parts: [textPart, filePart]}],
      };
    const streamingResp = await generativeVisionModel.generateContentStream(request);
    for await (const item of streamingResp.stream) {
      console.log('stream chunk: ', JSON.stringify(item));
    }
    const aggregatedResponse = await streamingResp.response;
    console.log(aggregatedResponse.candidates[0].content);
}

multiPartContentVideo(); 

Content generation: non-streaming

 async function generateContent() {
  const request = {
    contents: [{role: 'user', parts: [{text: 'How are you doing today?'}]}],
  };
  const resp = await generativeModel.generateContent(request);

  console.log('aggregated response: ', JSON.stringify(await resp.response));
};

generateContent(); 

Counting tokens

 async function countTokens() {
    const request = {
        contents: [{role: 'user', parts: [{text: 'How are you doing today?'}]}],
      };
    const resp = await generativeModel.countTokens(request);
    console.log('count tokens response: ', resp);
}

countTokens(); 

License

The contents of this repository are licensed under the Apache License, version 2.0 .

Create a Mobile Website
View Site in Mobile | Classic
Share by: