Machine Learning in the Enterprise
Enterprise ML on Google Vertex AI — data management, custom training, Vizier tuning, pipelines and monitoring.
Case study approach — the fictional XYZ team (data analysts, data scientists, developers, ML engineers)
This course takes a case study approach: a fictional team of data analysts, data scientists, software developers, and ML engineers — called the XYZ team — works across multiple ML/AI projects.
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What's inside
10 sections- 1 Table of Contents
- 2 Introduction
- 3 Understanding the Enterprise ML Workflow
- 4 Enterprise Data Management
- 5 ML Science and Custom Training
- 6 Vertex Vizier — Hyperparameter Tuning
- 7 Predictions and Model Monitoring with Vertex AI
- 8 Vertex AI Pipelines
- 9 Best Practices for ML Development
- 10 Vertex AI Tools Summary
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