Get introduced to ML.NET, a new open source, cross-platform machine learning framework from Microsoft that is intended to democratize machine learning and enable as many developers as possible.
Dive in to learn how ML.NET is designed to encapsulate complex algorithms, making it easy to consume them in many application settings without having to think about the internal details. You will learn about the features that do the necessary "plumbing" that is required in a variety of machine learning problems, freeing up your time to focus on your applications. You will understand that while the infrastructure pieces may at first appear to be disconnected and haphazard, they are not.
Developers who are curious about trying machine learning, yet are shying away from it due to its perceived complexity, will benefit from this book. This introductory guide will help you make sense of it all and inspire you to try out scenarios and code samples thatcan be used in many real-world situations.
What You Will Learn
- Create a machine learning model using only the C# language
- Build confidence in your understanding of machine learning algorithms
- Painlessly implement algorithms
- Begin using the ML.NET library software
- Recognize the many opportunities to utilize ML.NET to your advantage
- Apply and reuse code samples from the book
- Utilize the bonus algorithm selection quick references available online
This book is for developerswho want to learn how to use and apply machine learning to enrich their applications.
Sudipta Mukherjee is an electronics engineer by education and a computer scientist by profession. He holds a degree in electronics and communication engineering. He is passionate about data structure, algorithms, text processing, natural language processing tools development, programming languages, and machine learning. He is the author of several technical books. He has presented at @FuConf and other developer events, and he lives in Bangalore with his wife and son.
Autorentext
Sudipta Mukherjee is an electronics engineer by education and a computer scientist by profession. He holds a degree in electronics and communication engineering. He is passionate about data structure, algorithms, text processing, natural language processing tools development, programming languages, and machine learning. He is the author of several technical books. He has presented at @FuConf and other developer events, and he lives in Bangalore with his wife and son.
Zusammenfassung
Get introduced to ML.NET, a new open source, cross-platform machine learning framework from Microsoft that is intended to democratize machine learning and enable as many developers as possible.
Dive in to learn how ML.NET is designed to encapsulate complex algorithms, making it easy to consume them in many application settings without having to think about the internal details. You will learn about the features that do the necessary plumbing that is required in a variety of machine learning problems, freeing up your time to focus on your applications. You will understand that while the infrastructure pieces may at first appear to be disconnected and haphazard, they are not.
Developers who are curious about trying machine learning, yet are shying away from it due to its perceived complexity, will benefit from this book. This introductory guide will help you make sense of it all and inspire you to try out scenarios and code samples that can be used in many real-world situations.
What You Will Learn
- Create a machine learning model using only the C# language
- Build confidence in your understanding of machine learning algorithms
- Painlessly implement algorithms
- Begin using the ML.NET library software
- Recognize the many opportunities to utilize ML.NET to your advantage
- Apply and reuse code samples from the book
- Utilize the bonus algorithm selection quick references available online
Who This Book Is For
Developers who want to learn how to use and apply machine learning to enrich their applications
Inhalt
Chapter 01: Meet ML.NET
Chapter 02: The Pipeline
Chapter 03: Handling Data
Chapter 04: Regressions
Chapter 05: Classifications
Chapter 06: Clustering
Chapter 07: Sentiment Analysis
Chapter 08: Product Recommendation
Chapter 09: Anomaly Detection
Chapter 10: Object Detection
Titel
ML.NET Revealed
Untertitel
Simple Tools for Applying Machine Learning to Your Applications
Autor
EAN
9781484265437
Format
E-Book (pdf)
Hersteller
Veröffentlichung
18.12.2020
Digitaler Kopierschutz
Wasserzeichen
Dateigrösse
10.04 MB
Anzahl Seiten
174
Unerwartete Verzögerung
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