Detailed Course Outline
Module 1 - Understand the Data Analytics Lifecycle on Google Cloud
Topics:
- Data analytics workflow
 - Data sources
 - Storage methods
 - Google Cloud data analytics products
 - Data types
 
Objectives:
- Detail and describe the data analytics workflow on Google Cloud.
 - Compare and contrast data sources and storage methods available in Google Cloud.
 - Compare how different data types can be used for data analytics.
 
Activities:
- Quiz
 
Module 2 - Explore Data and Extract Insights by Using BigQuery
Topics:
- BigQuery services, capabilities, and organization
 - Data storage
 - Basic SQL
 - Answering data-driven questions
 
Objectives:
- Describe BigQuery and the BigQuery solution architecture.
 - Derive insights from data by using BigQuery.
 - Use the BigQuery user interface to run basic queries
 
Activities:
- Lab 1: BigQuery Qwik Start: Console
 - Lab 2: Introduction to SQL for BigQuery and Cloud SQL
 - Lab 3: BigLake: Qwik Start
 - Lab 4: Analyze data with Gemini Assistance
 - Quiz
 
Module 3 - Make Data-Driven Decisions by Using Looker
Topics:
- Looker data exploration terms and concepts
 - Looks and dashboards
 - Visualizations
 - Report sharing
 - Looker Studio
 
Objectives:
- Manipulate a Looker Explore to answer data-driven questions.
 - Create a situation-appropriate visualization to highlight the answer for a datadriven question.
 - Choose between Looker and Looker Studio for data visualization and sharing.
 - Share visualizations with others.
 
Activities:
- Lab 1: Looker Data Explorer—Qwik Start
 - Lab 2: Looker Data Studio—Qwik Start
 - Quiz
 
Module 4 - Course Summary
Topics:
- Topic review
 - Slides
 
Objectives:
- Find resources for additional learning and support.