Detailed Course Outline
Module 1 - Google Cloud Demos for Researchers
- Demo: Provision Compute Engine virtual machines
 - Demo: Query a billion rows of data in seconds using BigQuery
 - Demo: Train a custom vision model using AutoML Vision
 
Module 2 - Google Project Concepts
- Organizing resources in Google Cloud
 - Controlling Access to projects and resources
 - Cost and billing management
 
Module 3 - Computing and Storage on Google Cloud
- Interacting with Google Cloud
 - Create and Manage Cloud Storage Buckets
 - Compute Engine virtual machines
 - Understanding computing costs
 - Introduction to HPC on Google Cloud
 - Lab 1: Create and Manage a Virtual Machine (Linux) and Cloud Storage
 
Module 4 - BigQuery
- BigQuery fundamentals
 - Querying public datasets
 - Importing and exporting data in BigQuery
 - Connecting to Looker Studio
 - Lab 3: BigQuery and Looker Studio Fundamentals
 
Module 5 - Vertex AI Notebooks
- Enabling APIs and services
 - Vertex AI
 - Vertex Workbench
 - Connecting Jupyter notebooks to BigQuery
 - Lab 4: Interacting with BigQuery using Python and R Running in Jupyter Notebooks
 
Module 6 - Machine Learning
- Types of ML within Google Cloud
 - Prebuilt ML APIs
 - Vertex AI AutoML
 - BigQuery ML
 - Lab 5: Optional (take-home) labs to choose from:
- Extract, Analyze, and Translate Text from Images with the Cloud ML APIs
 - Identify Damaged Car Parts with Vertex AutoML Vision
 - Getting Started with BigQuery Machine Learning