New Arrivals/Restock

Machine Learning Engineering on AWS: Build, deploy, and operationalize LLMs, AI agents, and generative AI systems on AWS

flash sale iconLimited Time Sale
Until the end
08
51
11

US$25.86 cheaper than the new price!!

Free shipping for purchases over $99 ( Details )
Free cash-on-delivery fees for purchases over $99
Please note that the sales price and tax displayed may differ between online and in-store. Also, the product may be out of stock in-store.
Used  US$17.24
quantity

Product details

Management number 231976859 Release Date 2026/06/18 List Price US$17.24 Model Number 231976859
Category

Solve machine learning engineering challenges for GenAI-powered systems and AI agents on AWS, and automate LLMOps pipelines using Amazon Bedrock, SageMaker AI, Bedrock AgentCore, and Strands Agents.Free with your book: DRM-free PDF version + access to Packt's next-gen Reader*Key FeaturesBuild and scale AI agents using Amazon Bedrock AgentCore and Strands AgentsFine-tune, evaluate, and deploy ML models using Amazon SageMaker AIAutomate LLMOps workflows with SageMaker PipelinesBook DescriptionModern AI systems increasingly leverage large language models, retrieval-augmented generation, and AI agents to power generative AI applications in the cloud. As organizations operationalize these systems at scale, there is a growing need for engineers with strong machine learning engineering expertise. To stay ahead in this rapidly evolving field, you need a deep understanding of AI and ML concepts as well as, practical, hands-on experience with the platforms and tools used to build and operate production-grade AI systems.Machine Learning Engineering on AWS is a practical guide that shows you how to use AWS services such as Amazon Bedrock and Amazon SageMaker AI to fine-tune, evaluate, and deploy LLMs and generative AI systems. You'll learn how to develop RAG-powered systems, build and deploy AI agents using Bedrock AgentCore and Strands Agents, evaluate models using LLM-as-a-judge techniques, and automate LLMOps pipelines using SageMaker Pipelines. The book also covers best practices for building scalable, secure, and production-ready GenAI systems.AWS AI hero Joshua Arvin Lat equips you with the skills and practical knowledge to handle a wide variety of ML engineering requirements, helping you design, operationalize, and secure generative AI systems and AI agents on AWS with confidence.*Email sign-up and proof of purchase required"What you will learnBuild and deploy AI agents using Bedrock AgentCore and Strands AgentsDive deep into ML engineering with Amazon SageMaker AIEvaluate model performance using LLM-as-a-judgeExplore advanced model fine-tuning and deployment using SageMaker AIBuild RAG-powered systems using Bedrock Knowledge Bases and S3 VectorsModernize analytics with a managed transactional data lakeAutomate LLMOps pipelines using SageMaker Pipelines and AWS LambdaExplore best practices for building GenAI systems and AI agents on AWSWho this book is forThis book is intended for AI engineers, data scientists, machine learning engineers, and technology leaders who want to deepen their understanding of machine learning engineering, generative AI, large language models, retrieval-augmented generation, AI agents, and MLOps on AWS. A foundational understanding of artificial intelligence, machine learning, generative AI, and cloud engineering concepts is recommended.Table of ContentsA Gentle Introduction to Generative AI and AI Agents on AWSBuilding AI Agents with SageMaker AI and Bedrock AgentCoreMachine Learning Engineering with Amazon SageMaker AIModernizing Analytics with a Managed Transactional Data LakePractical Data Management on AWSPragmatic Data Processing on AWSSageMaker AI Model Training and Tuning CapabilitiesSageMaker AI Model Deployment Options and StrategiesAutomating LLMOps Workflows with SageMaker Pipelines Read more

ASIN 1835881084
ISBN10 1835881092
ISBN13 978-1835881088
Language English
Publisher Packt Publishing
Dimensions 7.5 x 1.33 x 9.25 inches
Item Weight 2.2 pounds
Print length 548 pages
Publication date May 29, 2026

Correction of product information

If you notice any omissions or errors in the product information on this page, please use the correction request form below.

Correction Request Form

Product Review

You must be logged in to post a review