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  • Book Overview & Buying Azure Machine Learning Engineering
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Azure Machine Learning Engineering

Azure Machine Learning Engineering

By : Dennis Michael Sawyers , Sina Fakhraee Ph.D , Balamurugan Balakreshnan, Megan Masanz
4.6 (13)
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Azure Machine Learning Engineering

Azure Machine Learning Engineering

4.6 (13)
By: Dennis Michael Sawyers , Sina Fakhraee Ph.D , Balamurugan Balakreshnan, Megan Masanz

Overview of this book

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.
Table of Contents (17 chapters)
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1
Part 1: Training and Tuning Models with the Azure Machine Learning Service
7
Part 2: Deploying and Explaining Models in AMLS
12
Part 3: Productionizing Your Workload with MLOps

Tuning Your Models with AMLS

Tuning your models is an important step in your data science journey. The objective of a data science workload is to provide the best model on unseen data in the shortest duration of time. In order to provide a reliable model, not only are you required to tune the features that are the inputs to your model but you also need to tune the parameters of your model itself. Model parameters, also known as hyperparameters, can have a significant impact on the performance of your trained model. Tuning a model can take a lot of effort and involves trial and error. Several frameworks can be leveraged to automate this task. AMLS provides this functionality, which we will explore in this chapter. AMLS allows you to define model parameters that should be tuned to find the best model through the use of a special type of job referred to as a sweep job. These hyperparameters will be defined for a given AMLS job, and AMLS will run many trials and determine the best model...

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Azure Machine Learning Engineering
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