Building Apps with ML.NET
Use ML.NET for data and image classification in a real .NET (Wired Brain Coffee) application.
Machine learning (ML) is a branch of artificial intelligence. It enables machines to learn so they can perform tasks autonomously. In other words, machine learning lets you program the unprogrammable.
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What's inside
6 sections- 1 Table of Contents
- 2 Understanding Machine Learning and ML.NET
- 3 Using Data Classification
- 4 Working with Image Classification
- 5 Final Project Structure
- 6 Summary and Key Concepts
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