Outline detalhado do curso
Module 1 - Introduction to Analytics and AI
Topics:
- What is AI?
 - From ad hoc data analysis to data-driven decisions
 - Options for ML models on Google Cloud
 
Objectives:
- Describe the relationship between ML, AI, and deep learning
 - Identify ML options on Google Cloud
 
Module 2 - Prebuilt ML Model APIs for Unstructured Data
Topics:
- The difficulties of unstructured data
 - ML APIs for enriching data
 
Objectives:
- Discuss challenges when working with unstructured data
 - Identify ready-to-use ML API’s for unstructured data
 
Module 3 - Big Data Analytics with Notebooks
Topics:
- Defining notebooks
 - BigQuery magic and ties to Pandas
 
Objectives:
- Introduce notebooks as a tool for prototyping ML solutions.
 - Execute BigQuery commands from notebooks.
 
Module 4 - Production ML Pipelines
Topics:
- Ways to do ML on Google Cloud
 - Vertex AI Pipelines
 - TensorFlow Hub
 
Objectives:
- Describe options available for building custom ML models.
 - Describe the use of tools like Vertex AI and TensorFlow Hub.
 
Module 5 - Custom Model Building with SQL in BigQuery ML
Topics:
- BigQuery ML for quick model building
 - Supported models
 
Objectives:
- Create ML models by using SQL syntax in BigQuery.
 - Demonstrate building different kinds of ML models by using BigQuery ML.
 
Module 6 - Custom Model Building with AutoML
Topics:
- Why use AutoML?
 - AutoML Vision
 - AutoML NLP
 - AutoML Tables
 
Objectives:
- Explore various AutoML products used in machine learning.
 - Identify ready-to-use ML API’s for unstructured data.