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Machine Learning in Microservices Productionizing microservices architecture for machine learning solutions

Machine Learning in Microservices Productionizing microservices architecture for machine learning solutions
Free Download Machine Learning in Microservices: Productionizing microservices architecture for machine learning solutions by Mohamed Abouahmed, Omar Ahmed
English | March 10, 2023 | ISBN: 1804617741 | 270 pages | MOBI | 12 Mb
Implement real-world machine learning in a microservices architecture as well as design, build, and deploy intelligent microservices systems using examples and case studies


Purchase of the print or Kindle book includes a free PDF eBook
Key FeaturesDesign, build, and run microservices systems that utilize the full potential of machine learningDiscover the latest models and techniques for combining microservices and machine learning to create scalable systemsImplement machine learning in microservices architecture using open source applications with pros and cons
Book Description
With the rising need for agile development and very short time-to-market system deployments, incorporating machine learning algorithms into decoupled fine-grained microservices systems provides the perfect technology mix for modern systems. Machine Learning in Microservices is your essential guide to staying ahead of the curve in this ever-evolving world of technology.
The book starts by introducing you to the concept of machine learning microservices architecture (MSA) and comparing MSA with service-based and event-driven architectures, along with how to transition into MSA. Next, you'll learn about the different approaches to building MSA and find out how to overcome common practical challenges faced in MSA design. As you advance, you'll get to grips with machine learning (ML) concepts and see how they can help better design and run MSA systems. Finally, the book will take you through practical examples and open source applications that will help you build and run highly efficient, agile microservices systems.
By the end of this microservices book, you'll have a clear idea of different models of microservices architecture and machine learning and be able to combine both technologies to deliver a flexible and highly scalable enterprise system.
What you will learnRecognize the importance of MSA and ML and deploy both technologies in enterprise systemsExplore MSA enterprise systems and their general practical challengesDiscover how to design and develop microservices architectureUnderstand the different AI algorithms, types, and models and how they can be applied to MSAIdentify and overcome common MSA deployment challenges using AI and ML algorithmsExplore general open source and commercial tools commonly used in MSA enterprise systems
Who this book is for
This book is for machine learning solution architects, system and machine learning developers, and system and solution integrators of private and public sector organizations. Basic knowledge of DevOps, system architecture, and artificial intelligence (AI) systems is assumed, and working knowledge of the Python programming language is highly desired.
Table of ContentsImportance of MSA and Machine Learning in Enterprise SystemsRefactoring Your MonolithSolving Common MSA Enterprise System ChallengesKey Machine Learning Algorithms and ConceptsMachine Learning System DesignStabilizing the Machine Learning SystemHow Machine Learning and Deep Learning Help in MSA Enterprise SystemsThe Role of DevOps in Building Intelligent MSA Enterprise SystemsBuilding an MSA with Docker ContainersBuilding an Intelligent MSA Enterprise SystemManaging the New System's Deployment - Greenfield versus BrownfieldDeploying, Testing, and Operating an Intelligent MSA Enterprise System



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