Book Image

Hands-On Machine Learning with ML.NET

By : Jarred Capellman
Book Image

Hands-On Machine Learning with ML.NET

By: Jarred Capellman

Overview of this book

Machine learning (ML) is widely used in many industries such as science, healthcare, and research and its popularity is only growing. In March 2018, Microsoft introduced ML.NET to help .NET enthusiasts in working with ML. With this book, you’ll explore how to build ML.NET applications with the various ML models available using C# code. The book starts by giving you an overview of ML and the types of ML algorithms used, along with covering what ML.NET is and why you need it to build ML apps. You’ll then explore the ML.NET framework, its components, and APIs. The book will serve as a practical guide to helping you build smart apps using the ML.NET library. You’ll gradually become well versed in how to implement ML algorithms such as regression, classification, and clustering with real-world examples and datasets. Each chapter will cover the practical implementation, showing you how to implement ML within .NET applications. You’ll also learn to integrate TensorFlow in ML.NET applications. Later you’ll discover how to store the regression model housing price prediction result to the database and display the real-time predicted results from the database on your web application using ASP.NET Core Blazor and SignalR. By the end of this book, you’ll have learned how to confidently perform basic to advanced-level machine learning tasks in ML.NET.
Table of Contents (19 chapters)
1
Section 1: Fundamentals of Machine Learning and ML.NET
4
Section 2: ML.NET Models
10
Section 3: Real-World Integrations with ML.NET
14
Section 4: Extending ML.NET

Creating the web browser classification application

As mentioned earlier, the application we will be creating is a web browser classification application. Using the knowledge garnered in the logistic classification chapter, we will be using the SdcaLogisticRegression algorithm to take the text content of a web page, featurize the text, and provide a confidence level of maliciousness. In addition, we will be integrating this technique into a Windows 10 UWP application that mimics a web browser—effectively on navigation to a page—running the model, and making a determination as to whether the page was malicious. If found to be malicious, we redirect to a warning page. While in a real-world scenario this might prove too slow to run on every page, the benefits of a highly secured web browser, depending on the environment requirements might far outweigh the slight overhead running our model incurs.

As with previous chapters, the completed project code, sample dataset, and project...