<p><b>Get to grips with automated machine learning and adopt a hands-on approach to AutoML implementation and associated methodologies</b></p>Key Features<ul><li>Get up to speed with AutoML using OSS, Azure, AWS, GCP, or any platform of your choice</li><li>Eliminate mundane tasks in data engineering
Automated Machine Learning: Hyperparameter optimization, neural architecture search, and algorithm selection with cloud platforms
โ Scribed by Adnan Masood
- Publisher
- Packt Publishing Ltd
- Year
- 2021
- Tongue
- English
- Leaves
- 312
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
Get to grips with automated machine learning and adopt a hands-on approach to AutoML implementation and associated methodologies
Key Features
- Get up to speed with AutoML using OSS, Azure, AWS, GCP, or any platform of your choice
- Eliminate mundane tasks in data engineering and reduce human errors in machine learning models
- Find out how you can make machine learning accessible for all users to promote decentralized processes
Book Description
Every machine learning engineer deals with systems that have hyperparameters, and the most basic task in automated machine learning (AutoML) is to automatically set these hyperparameters to optimize performance. The latest deep neural networks have a wide range of hyperparameters for their architecture, regularization, and optimization, which can be customized effectively to save time and effort.
This book reviews the underlying techniques of automated feature engineering, model and hyperparameter tuning, gradient-based approaches, and much more. You'll discover different ways of implementing these techniques in open source tools and then learn to use enterprise tools for implementing AutoML in three major cloud service providers: Microsoft Azure, Amazon Web Services (AWS), and Google Cloud Platform. As you progress, youโll explore the features of cloud AutoML platforms by building machine learning models using AutoML. The book will also show you how to develop accurate models by automating time-consuming and repetitive tasks in the machine learning development lifecycle.
By the end of this machine learning book, youโll be able to build and deploy AutoML models that are not only accurate, but also increase productivity, allow interoperability, and minimize feature engineering tasks.
What you will learn
- Explore AutoML fundamentals, underlying methods, and techniques
- Assess AutoML aspects such as algorithm selection, auto featurization, and hyperparameter tuning in an applied scenario
- Find out the difference between cloud and operations support systems (OSS)
- Implement AutoML in enterprise cloud to deploy ML models and pipelines
- Build explainable AutoML pipelines with transparency
- Understand automated feature engineering and time series forecasting
- Automate data science modeling tasks to implement ML solutions easily and focus on more complex problems
Who this book is for
Citizen data scientists, machine learning developers, artificial intelligence enthusiasts, or anyone looking to automatically build machine learning models using the features offered by open source tools, Microsoft Azure Machine Learning, AWS, and Google Cloud Platform will find this book useful. Beginner-level knowledge of building ML models is required to get the best out of this book. Prior experience in using Enterprise cloud is beneficial.
๐ SIMILAR VOLUMES
This book presents recent advances in automated machine learning (AutoML) and automated algorithm design and indicates the future directions in this fast-developing area. Methods have been developed to automate the design of neural networks, heuristics and metaheuristics using techniques such as met
This book describes the theory, operation, and application of genetic algorithms-search algorithms based on the mechanics of natural selection and genetics.
This book brings together - in an informal and tutorial fashion - the computer techniques, mathematical tools, and research results that will enable both students and practitioners to apply genetic algorithms to problems in many fields. Major concepts are illustrated with running examples, and major