Skip to main content
T-AIMLGC-BOfficial Google Curriculum

Introduction to AI and Machine Learning on Google Cloud

1 dayILTBeginnerLoading...

Overview

Introduces Google Cloud AI and ML capabilities, focusing on developing both generative and predictive AI projects through data-to-AI lifecycle exploration.

What You'll Learn

  • Recognize the data-to-AI technologies and tools offered by Google Cloud
  • Build generative AI projects by using Gemini multimodal, efficient prompts, and AI agent builders
  • Choose between different Google Cloud product options to develop an AI project
  • Build ML models end to end by using Vertex AI

Who Should Attend

AI developers, data scientists, and ML engineers

Prerequisites

Basic knowledge of machine learning concepts. Prior experience with programming languages such as SQL and Python.

Products Covered

Gemini multimodalVertex AIVertex AI StudioVertex AI Agent BuilderVertex AI PipelinesGemini EnterpriseNotebookLMBigQuery MLNatural Language APIAutoML

Course Modules

1

Course Introduction

Topics

  • Course introduction

Learning Outcomes

  • Define the course objectives
  • Recognize the course structure
2

AI Foundations

Topics

  • A use case
  • AI on Google Cloud
  • AI infrastructure
  • AI models
  • BigQuery ML
  • Hands-on lab: Predict Visitor Purchases with BigQuery ML

Learning Outcomes

  • Recognize the AI/ML framework on Google Cloud
  • Identify the major components of AI infrastructure
  • Define the data and ML products on Google Cloud and how they support the data-to-AI lifecycle
  • Build an ML model with BigQuery ML to bring data to AI

Activities

Lab: Predict Visitor Purchases with BigQuery MLQuizReading
3

Generative AI

Topics

  • Generative AI on Google Cloud
  • Foundation models
  • Idea to app
  • Prompt engineering
  • Deployment and model tuning
  • AI agents
  • Agent building with Google Cloud
  • Hands-on lab: Get started with Vertex AI Studio

Learning Outcomes

  • Define generative AI and foundation models
  • Recognize the prompt-to-production lifecycle and its associated tools
  • Define AI agents and their core components
  • Identify Google Cloud tools and technologies for building AI agents

Activities

Lab: Get started with Vertex AI StudioQuizReading
4

AI Development Options

Topics

  • AI development options
  • Vertex AI
  • AutoML
  • Pre-trained APIs
  • Custom training
  • Hands-on lab: Entity and Sentiment Analysis with Natural Language API

Learning Outcomes

  • Define different options to build an ML model with Vertex AI on Google Cloud
  • Identify the features and use cases of pre-trained APIs, AutoML, and custom training
  • Use the Natural Language API to analyze text

Activities

Lab: Entity and Sentiment Analysis with Natural Language APIQuizReading
5

AI Development Workflow

Topics

  • ML workflow
  • Data preparation
  • Model development
  • Model serving
  • MLOps and workflow automation
  • How a machine learns (optional)
  • Hands-on lab: Vertex AI: Predict Loan Risk with AutoML

Learning Outcomes

  • Define the workflow of building an ML model
  • Describe MLOps and workflow automation on Google Cloud
  • Build an ML model from end to end by using AutoML with Vertex AI

Activities

Lab: Vertex AI: Predict Loan Risk with AutoMLQuizReading
6

Course Summary

Topics

  • Course summary

Learning Outcomes

  • Recognize the primary concepts, tools, technologies, and products learned in the course

Activities

Reading

Get This Training

No public classes currently scheduled. Express interest below or request private training.

Request Private Session

Course Details

Course Code
T-AIMLGC-B
Duration
1 day
Format
ILT
Level
Beginner
Modules
6
Activities
17
Price
Loading...
View Official Google Datasheet →

Questions About This Course?

Contact us for custom scheduling, group discounts, or curriculum customization.

Contact Us
Starting fromLoading...