arrow_back

Build an application to send Chat Prompts using the Gemini model

登录 加入
访问 700 多个实验和课程

Build an application to send Chat Prompts using the Gemini model

实验 15 分钟 universal_currency_alt 免费 show_chart 入门级
info 此实验可能会提供 AI 工具来支持您学习。
访问 700 多个实验和课程

Overview

  • Labs are timed and cannot be paused. The timer starts when you click Start Lab.
  • The included cloud terminal is preconfigured with the gcloud SDK.
  • Use the terminal to execute commands and then click Check my progress to verify your work.

Objective

Generative AI on Vertex AI (also known as genAI or gen AI) gives you access to Google's large generative AI models so you can test, tune, and deploy them for use in your AI-powered applications. In this lab, you will:

  • Connect to Vertex AI (Google Cloud AI platform): Learn how to establish a connection to Google's AI services using the Vertex AI SDK.
  • Load a pre-trained generative AI model -Gemini: Discover how to use a powerful, pre-trained AI model without building one from scratch.
  • Send text to the AI model: Understand how to provide input for the AI to process.
  • Extract chat responses from the AI: Learn how to handle and interpret the chat responses generated by the AI model.
  • Understand the basics of building AI applications: Gain insights into the core concepts of integrating AI into software projects.

Working with Generative AI

After starting the lab, you will get a split pane view consisting of the Code Editor on the left side and the lab instructions on the right side. Follow these steps to interact with the Generative AI APIs using Vertex AI Python SDK.

Chat responses without using stream:

Streaming involves receiving responses to prompts as they are generated. That is, as soon as the model generates output tokens, the output tokens are sent. A non-streaming response to prompts is sent only after all of the output tokens are generated.

First we'll explore the chat responses without using stream.

Create a new file to get the chat responses without using stream:

  1. Click File > New File to open a new file within the Code Editor.
  2. Copy and paste the provided code snippet into your file.
from google import genai from google.genai.types import HttpOptions, ModelContent, Part, UserContent import logging from google.cloud import logging as gcp_logging # ------ Below cloud logging code is for Qwiklab's internal use, do not edit/remove it. -------- # Initialize GCP logging gcp_logging_client = gcp_logging.Client() gcp_logging_client.setup_logging() client = genai.Client( vertexai=True, project='{{{ project_0.project_id | "project-id" }}}', location='{{{ project_0.default_region | "REGION" }}}', http_options=HttpOptions(api_version="v1") ) chat = client.chats.create( model="gemini-2.0-flash-001", history=[ UserContent(parts=[Part(text="Hello")]), ModelContent( parts=[Part(text="Great to meet you. What would you like to know?")], ), ], ) response = chat.send_message("What are all the colors in a rainbow?") print(response.text) response = chat.send_message("Why does it appear when it rains?") print(response.text)
  1. Click File > Save, enter SendChatwithoutStream.py for the Name field and click Save.

  2. Execute the Python file by running the below command inside the terminal within the Code Editor pane to view the output.

/usr/bin/python3 /SendChatwithoutStream.py

Code Explanation

  • The code snippet is loading a pre-trained AI model called Gemini (gemini-2.0-flash-001) on Vertex AI.
  • The code calls the send_message method of the loaded Gemini model.
  • The code uses Gemini's ability to chat. It uses the text provided in the prompt to chat.

Chat responses with using stream:

Now we'll explore the chat responses using stream.

Create a new file to get the chat responses with using stream:

  1. Click File > New File to open a new file within the Code Editor.
  2. Copy and paste the provided code snippet into your file.
from google import genai from google.genai.types import HttpOptions import logging from google.cloud import logging as gcp_logging # ------ Below cloud logging code is for Qwiklab's internal use, do not edit/remove it. -------- # Initialize GCP logging gcp_logging_client = gcp_logging.Client() gcp_logging_client.setup_logging() client = genai.Client( vertexai=True, project='{{{ project_0.project_id | "project-id" }}}', location='{{{ project_0.default_region | "REGION" }}}', http_options=HttpOptions(api_version="v1") ) chat = client.chats.create(model="gemini-2.0-flash-001") response_text = "" for chunk in chat.send_message_stream("What are all the colors in a rainbow?"): print(chunk.text, end="") response_text += chunk.text
  1. Click File > Save, enter SendChatwithStream.py for the Name field and click Save.

  2. Execute the Python file by running the below command inside the terminal within the Code Editor pane to view the output.

/usr/bin/python3 /SendChatwithStream.py

Code Explanation

  • The code snippet is loading a pre-trained AI model called Gemini (gemini-2.0-flash-001) on Vertex AI.
  • The code calls the send_message_stream method of the loaded Gemini model.
  • The code uses Gemini's ability to understand prompts and have a stateful chat conversation.

Try it yourself! Experiment with different prompts to explore Gemini's capabilities.

Click Check my progress to verify the objective.

Send the text prompt requests to Gen AI and receive a chat response

Congratulations!

You have completed the lab! Congratulations!!

Copyright 2025 Google LLC. All rights reserved. Google and the Google logo are trademarks of Google LLC. All other company and product names may be trademarks of the respective companies with which they are associated.

准备工作

  1. 实验会创建一个 Google Cloud 项目和一些资源,供您使用限定的一段时间
  2. 实验有时间限制,并且没有暂停功能。如果您中途结束实验,则必须重新开始。
  3. 在屏幕左上角,点击开始实验即可开始

此内容目前不可用

一旦可用,我们会通过电子邮件告知您

太好了!

一旦可用,我们会通过电子邮件告知您

一次一个实验

确认结束所有现有实验并开始此实验

使用无痕浏览模式运行实验

请使用无痕模式或无痕式浏览器窗口运行此实验。这可以避免您的个人账号与学生账号之间发生冲突,这种冲突可能导致您的个人账号产生额外费用。