Book Image

Mastering Azure Machine Learning

By : Christoph Körner, Kaijisse Waaijer
Book Image

Mastering Azure Machine Learning

By: Christoph Körner, Kaijisse Waaijer

Overview of this book

The increase being seen in data volume today requires distributed systems, powerful algorithms, and scalable cloud infrastructure to compute insights and train and deploy machine learning (ML) models. This book will help you improve your knowledge of building ML models using Azure and end-to-end ML pipelines on the cloud. The book starts with an overview of an end-to-end ML project and a guide on how to choose the right Azure service for different ML tasks. It then focuses on Azure Machine Learning and takes you through the process of data experimentation, data preparation, and feature engineering using Azure Machine Learning and Python. You'll learn advanced feature extraction techniques using natural language processing (NLP), classical ML techniques, and the secrets of both a great recommendation engine and a performant computer vision model using deep learning methods. You'll also explore how to train, optimize, and tune models using Azure Automated Machine Learning and HyperDrive, and perform distributed training on Azure. Then, you'll learn different deployment and monitoring techniques using Azure Kubernetes Services with Azure Machine Learning, along with the basics of MLOps—DevOps for ML to automate your ML process as CI/CD pipeline. By the end of this book, you'll have mastered Azure Machine Learning and be able to confidently design, build and operate scalable ML pipelines in Azure.
Table of Contents (20 chapters)
1
Section 1: Azure Machine Learning
4
Section 2: Experimentation and Data Preparation
9
Section 3: Training Machine Learning Models
15
Section 4: Optimization and Deployment of Machine Learning Models
19
Index

The future of ML is automated

Training an ML model is a complex iterative process that includes data preparation, feature engineering, model selection, optimization, and deployment. Above all, an enterprise-grade end-to-end ML pipeline needs to be reproducible, interpretable, secure, and automated, which poses an additional challenge for most companies in terms of know-how, costs, and infrastructure requirements.

In previous chapters, we learned the ins and outs of this process, and hence we can confirm that there is nothing simple or easy about it. Tuning a feature engineering approach will affect model training; the missing value strategy during data cleansing will influence the optimization process.

On top of all this, the information captured by your model is rarely constant and therefore most ML models require frequent retraining and deployments. This leads to a whole new requirement for MLOps: a DevOps pipeline for ML to ensure continuous integration and continuous deployment...