Azure: Fundamental Principles of Machine Learning
Machine-learning principles on Azure — data prep, training, AutoML, the Designer and evaluation metrics.
AI-900 — Fundamental Principles of Machine Learning on Azure
This course covers the fundamental principles of Machine Learning on Azure and is the second course in the AI-900 exam preparation path.
Machine Learning is a technique that uses mathematics and statistics to create a model capable of predicting unknown values. It relies on historical data to learn patterns and make predictions.
Sign in to read this course
A free account unlocks all 514 courses. 20 are readable without one.
What's inside
13 sections- 1 Table of Contents
- 2 Course Overview
- 3 Introduction to Machine Learning
- 4 Types of Machine Learning
- 5 Data Preparation
- 6 Algorithms and Training
- 7 Azure Automated Machine Learning
- 8 Azure Machine Learning Designer
- 9 Classification Models in Detail
- 10 Inference Pipelines and Deployment
- 11 Complete Evaluation Metrics
- 12 AI-900 Exam Tips
- 13 References
More Azure AI Services courses
View all 13AI-900: Describe AI Workloads and Considerations
AI workloads, use cases, Microsoft’s responsible-AI principles and the matching Azure services.
AI-900: Generative AI Workloads on Azure
Generative AI models, Microsoft Foundry, Azure OpenAI, the model catalog and responsible generative AI.
AI-900: Computer Vision Workloads on Azure
Azure AI Vision, Custom Vision, Face, OCR, Document Intelligence and Video Indexer for the AI-900 exam.
AI-900: Fundamental Principles of Machine Learning on Azure
Types of ML, data preparation, AutoML, the Designer and model evaluation for the AI-900 exam.
AI-900: NLP Workloads on Azure
Text analytics, speech, translation, language understanding and question answering on Azure.
Azure AI Fundamentals – Complete Overview
A tour of the Azure AI ecosystem: AI services, AI Search, AI Foundry and Copilot for Azure.
Interested in this course?
Contact us to book it or get a custom training plan for your team.