Module One: Introduction to big data and machine learning on Google Cloud
- Overview of Google Cloud's infrastructure and data-to-AI lifecycle.
- Key products supporting big data and AI.
- Activities:
- Lab: Exploring a BigQuery Public Dataset.
- Quiz.
Module Two: Data engineering for streaming data
- Managing streaming data with Pub/Sub and Dataflow.
- Creating data visualizations with Looker and Data Studio.
- Activities:
- Lab: Building a streaming data pipeline for real-time dashboard creation.
- Quiz.
Module Three: Big data analysis with BigQuery
- BigQuery essentials for large-scale data storage and processing.
- Introduction to BigQuery ML for custom machine learning models.
- Activities:
- Lab: Predicting visitor purchases using BigQuery ML.
- Quiz.
Module Four: Machine learning options on Google Cloud
- Overview of machine learning solutions available on Google Cloud.
- Introduction to Vertex AI for unified ML project management.
- Activities:
Module Five: Machine learning workflow with Vertex AI
- Understanding the stages of a machine learning workflow: data preparation, model training, and deployment.
- Practical application using Vertex AI and AutoML.
- Activities:
- Lab: Predicting loan risk using AutoML with Vertex AI.
- Quiz.
Module Six: Course summary and additional resources
- Review of key concepts and tools.
- Guidance for continued learning in Google Cloud's big data and machine learning offerings.