Dekorationsartikel gehören nicht zum Leistungsumfang.
Sprache:
Englisch
51,95 €*
Versandkostenfrei per Post / DHL
Lieferzeit 1-2 Wochen
Kategorien:
Beschreibung
Fully build and productionize end-to-end machine learning solutions using Azure Machine Learning Service
Key Features:Automate complete machine learning solutions using Microsoft Azure
Understand how to productionize machine learning models
Get to grips with monitoring, MLOps, deep learning, distributed training, and reinforcement learning
Book Description:
Data scientists working on productionizing machine learning (ML) workloads face a breadth of challenges at every step owing to the countless factors involved in getting ML models deployed and running. This book offers solutions to common issues, detailed explanations of essential concepts, and step-by-step instructions to productionize ML workloads using the Azure Machine Learning service. You'll see how data scientists and ML engineers working with Microsoft Azure can train and deploy ML models at scale by putting their knowledge to work with this practical guide.
Throughout the book, you'll learn how to train, register, and productionize ML models by making use of the power of the Azure Machine Learning service. You'll get to grips with scoring models in real time and batch, explaining models to earn business trust, mitigating model bias, and developing solutions using an MLOps framework.
By the end of this Azure Machine Learning book, you'll be ready to build and deploy end-to-end ML solutions into a production system using the Azure Machine Learning service for real-time scenarios.
What You Will Learn:Train ML models in the Azure Machine Learning service
Build end-to-end ML pipelines
Host ML models on real-time scoring endpoints
Mitigate bias in ML models
Get the hang of using an MLOps framework to productionize models
Simplify ML model explainability using the Azure Machine Learning service and Azure Interpret
Who this book is for:
Machine learning engineers and data scientists who want to move to ML engineering roles will find this AMLS book useful. Familiarity with the Azure ecosystem will assist with understanding the concepts covered.
Key Features:Automate complete machine learning solutions using Microsoft Azure
Understand how to productionize machine learning models
Get to grips with monitoring, MLOps, deep learning, distributed training, and reinforcement learning
Book Description:
Data scientists working on productionizing machine learning (ML) workloads face a breadth of challenges at every step owing to the countless factors involved in getting ML models deployed and running. This book offers solutions to common issues, detailed explanations of essential concepts, and step-by-step instructions to productionize ML workloads using the Azure Machine Learning service. You'll see how data scientists and ML engineers working with Microsoft Azure can train and deploy ML models at scale by putting their knowledge to work with this practical guide.
Throughout the book, you'll learn how to train, register, and productionize ML models by making use of the power of the Azure Machine Learning service. You'll get to grips with scoring models in real time and batch, explaining models to earn business trust, mitigating model bias, and developing solutions using an MLOps framework.
By the end of this Azure Machine Learning book, you'll be ready to build and deploy end-to-end ML solutions into a production system using the Azure Machine Learning service for real-time scenarios.
What You Will Learn:Train ML models in the Azure Machine Learning service
Build end-to-end ML pipelines
Host ML models on real-time scoring endpoints
Mitigate bias in ML models
Get the hang of using an MLOps framework to productionize models
Simplify ML model explainability using the Azure Machine Learning service and Azure Interpret
Who this book is for:
Machine learning engineers and data scientists who want to move to ML engineering roles will find this AMLS book useful. Familiarity with the Azure ecosystem will assist with understanding the concepts covered.
Fully build and productionize end-to-end machine learning solutions using Azure Machine Learning Service
Key Features:Automate complete machine learning solutions using Microsoft Azure
Understand how to productionize machine learning models
Get to grips with monitoring, MLOps, deep learning, distributed training, and reinforcement learning
Book Description:
Data scientists working on productionizing machine learning (ML) workloads face a breadth of challenges at every step owing to the countless factors involved in getting ML models deployed and running. This book offers solutions to common issues, detailed explanations of essential concepts, and step-by-step instructions to productionize ML workloads using the Azure Machine Learning service. You'll see how data scientists and ML engineers working with Microsoft Azure can train and deploy ML models at scale by putting their knowledge to work with this practical guide.
Throughout the book, you'll learn how to train, register, and productionize ML models by making use of the power of the Azure Machine Learning service. You'll get to grips with scoring models in real time and batch, explaining models to earn business trust, mitigating model bias, and developing solutions using an MLOps framework.
By the end of this Azure Machine Learning book, you'll be ready to build and deploy end-to-end ML solutions into a production system using the Azure Machine Learning service for real-time scenarios.
What You Will Learn:Train ML models in the Azure Machine Learning service
Build end-to-end ML pipelines
Host ML models on real-time scoring endpoints
Mitigate bias in ML models
Get the hang of using an MLOps framework to productionize models
Simplify ML model explainability using the Azure Machine Learning service and Azure Interpret
Who this book is for:
Machine learning engineers and data scientists who want to move to ML engineering roles will find this AMLS book useful. Familiarity with the Azure ecosystem will assist with understanding the concepts covered.
Key Features:Automate complete machine learning solutions using Microsoft Azure
Understand how to productionize machine learning models
Get to grips with monitoring, MLOps, deep learning, distributed training, and reinforcement learning
Book Description:
Data scientists working on productionizing machine learning (ML) workloads face a breadth of challenges at every step owing to the countless factors involved in getting ML models deployed and running. This book offers solutions to common issues, detailed explanations of essential concepts, and step-by-step instructions to productionize ML workloads using the Azure Machine Learning service. You'll see how data scientists and ML engineers working with Microsoft Azure can train and deploy ML models at scale by putting their knowledge to work with this practical guide.
Throughout the book, you'll learn how to train, register, and productionize ML models by making use of the power of the Azure Machine Learning service. You'll get to grips with scoring models in real time and batch, explaining models to earn business trust, mitigating model bias, and developing solutions using an MLOps framework.
By the end of this Azure Machine Learning book, you'll be ready to build and deploy end-to-end ML solutions into a production system using the Azure Machine Learning service for real-time scenarios.
What You Will Learn:Train ML models in the Azure Machine Learning service
Build end-to-end ML pipelines
Host ML models on real-time scoring endpoints
Mitigate bias in ML models
Get the hang of using an MLOps framework to productionize models
Simplify ML model explainability using the Azure Machine Learning service and Azure Interpret
Who this book is for:
Machine learning engineers and data scientists who want to move to ML engineering roles will find this AMLS book useful. Familiarity with the Azure ecosystem will assist with understanding the concepts covered.
Über den Autor
Sina Fakhraee, Ph.D., is currently working at Microsoft as an enterprise data scientist and senior cloud solution architect. He has helped customers to successfully migrate to Azure by providing best practices around data and AI architectural design and by helping them implement AI/ML solutions on Azure. Prior to working at Microsoft, Sina worked at Ford Motor Company as a product owner for Ford's AI/ML platform. Sina holds a Ph.D. degree in computer science and engineering from Wayne State University and prior to joining the industry, he taught various undergrad and grad computer science courses part time.
Details
Erscheinungsjahr: | 2023 |
---|---|
Genre: | Informatik |
Rubrik: | Naturwissenschaften & Technik |
Medium: | Taschenbuch |
ISBN-13: | 9781803239309 |
ISBN-10: | 1803239301 |
Sprache: | Englisch |
Ausstattung / Beilage: | Paperback |
Einband: | Kartoniert / Broschiert |
Autor: |
Fakhraee, Ph. D. Sina
Balakreshnan, Balamurugan Masanz, Megan |
Hersteller: | Packt Publishing |
Maße: | 235 x 191 x 20 mm |
Von/Mit: | Ph. D. Sina Fakhraee (u. a.) |
Erscheinungsdatum: | 20.01.2023 |
Gewicht: | 0,676 kg |
Über den Autor
Sina Fakhraee, Ph.D., is currently working at Microsoft as an enterprise data scientist and senior cloud solution architect. He has helped customers to successfully migrate to Azure by providing best practices around data and AI architectural design and by helping them implement AI/ML solutions on Azure. Prior to working at Microsoft, Sina worked at Ford Motor Company as a product owner for Ford's AI/ML platform. Sina holds a Ph.D. degree in computer science and engineering from Wayne State University and prior to joining the industry, he taught various undergrad and grad computer science courses part time.
Details
Erscheinungsjahr: | 2023 |
---|---|
Genre: | Informatik |
Rubrik: | Naturwissenschaften & Technik |
Medium: | Taschenbuch |
ISBN-13: | 9781803239309 |
ISBN-10: | 1803239301 |
Sprache: | Englisch |
Ausstattung / Beilage: | Paperback |
Einband: | Kartoniert / Broschiert |
Autor: |
Fakhraee, Ph. D. Sina
Balakreshnan, Balamurugan Masanz, Megan |
Hersteller: | Packt Publishing |
Maße: | 235 x 191 x 20 mm |
Von/Mit: | Ph. D. Sina Fakhraee (u. a.) |
Erscheinungsdatum: | 20.01.2023 |
Gewicht: | 0,676 kg |
Warnhinweis