Programming ML.NET / Dino Esposito, Francesco Esposito.
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Item type | Current library | Home library | Collection | Shelving location | Call number | Status | Date due | Barcode |
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NU Fairview College LRC | NU Fairview College LRC | School of Engineering and Technology | General Circulation | GC QA 76.76 E87 2022 (Browse shelf(Opens below)) | Available | NUFAI000005835 |
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GC QA 76.73 T39 2024 SQL All-in-one : for dummies / | GC QA 76.73 Z35 2016 An introduction to programming with C++ | GC QA 76.76 A76 2022 Software engineering as a career : how to land a programming job without a computer science degree, habits of successful self-taught coders and avoiding programmer burnout / | GC QA 76.76 E87 2022 Programming ML.NET / | GC QA 76.76 F45 2015 Web development and design foundations with HTML5 / | GC QA 76.76 H37 2023 Teach Yourself Visually HTML and CSS / | GC QA 76.76 M34 2009 Teach yourself visually windows 7 / |
Includes index.
"Professional" -- Cover.
Chapter 1 : Artificially intelligent software -- Chapter 2 : An architectural perspective on ML.NET -- Chapter 3 : The foundation of ML.NET -- Chapter 4 : Prediction tasks -- Chapter 5 : Classification task -- Chapter 6 : Clustering task -- Chapter 7 : Anomaly detection -- Chapter 8 : Forecasting task -- Chapter 9 : Recommendation tasks -- Chapter 10 : Image classification tasks -- Chapter 11 : Overview of neutral networks -- Chapter 12 : A neural network to recognize passports -- Apppendix A : Model explainability.
"ML.NET brings the power of machine learning to all .NET developers and Programming ML.NET helps you apply it in real production solutions. Modeled on Dino Espositos best-selling Programming ASP.NET, this book takes the same scenario-based approach Microsofts team used to build ML.NET itself. After a foundational overview of ML.NETs libraries, the authors illuminate mini-frameworks ({28}ML Tasks.
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