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Machine Learning Engineering on AWS. Operationalize and optimize generative AI systems and LLMOps pipelines in production - Second Edition
Joshua Arvin Lat
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Recent advancements in generative AI, large language models (LLMs), Retrieval-Augmented Generation (RAG), and AI agents have created a soaring demand for machine learning engineers who can build, manage, and scale modern AI-powered systems. To stay ahead in this rapidly evolving AI landscape, you need a deep theoretical understanding as well as hands-on expertise with the right tools, services, and platforms.
Machine Learning Engineering on AWS is a practical guide that teaches you how to harness AWS services such as Amazon Bedrock and the next generation of Amazon SageMaker to build, optimize, and manage production-ready ML systems. You’ll learn how to build RAG-powered GenAI applications, automate LLMOps workflows, develop reliable and responsible AI agents, and optimize a managed transactional data lake. The book also covers proven deployment and evaluation strategies for dealing with various models, along with practical examples to help you manage, troubleshoot, and optimize ML systems running on AWS.
Guided by AWS Machine Learning Hero Joshua Arvin Lat, you’ll be able to grasp complex ML concepts with clarity and gain the confidence to operationalize and secure GenAI applications on AWS to meet a wide variety of ML engineering requirements.
Machine Learning Engineering on AWS is a practical guide that teaches you how to harness AWS services such as Amazon Bedrock and the next generation of Amazon SageMaker to build, optimize, and manage production-ready ML systems. You’ll learn how to build RAG-powered GenAI applications, automate LLMOps workflows, develop reliable and responsible AI agents, and optimize a managed transactional data lake. The book also covers proven deployment and evaluation strategies for dealing with various models, along with practical examples to help you manage, troubleshoot, and optimize ML systems running on AWS.
Guided by AWS Machine Learning Hero Joshua Arvin Lat, you’ll be able to grasp complex ML concepts with clarity and gain the confidence to operationalize and secure GenAI applications on AWS to meet a wide variety of ML engineering requirements.
- 1. A Gentle Introduction to Generative AI on AWS
- 2. Exploring the High-Level AI/ML services of AWS
- 3. Machine Learning Engineering with Amazon SageMaker
- 4. Practical Data Management on AWS
- 5. Pragmatic Data Processing and Analysis
- 6. Getting Started with SageMaker Training Solutions
- 7. Diving Deeper into SageMaker Training Solutions
- 8. Model Evaluation, Benchmarking, and Bias Detection
- 9. Machine Learning Model Deployment on AWS
- 10. Machine Learning Model Deployment Strategies
- 11. Model Monitoring and Management Solutions
- 12. Security, Governance, and Compliance Strategies
- 13. Machine Learning Pipelines with SageMaker Pipelines Part I
- 14. Machine Learning Pipelines with SageMaker Pipelines Part II
- Titel:Machine Learning Engineering on AWS. Operationalize and optimize generative AI systems and LLMOps pipelines in production - Second Edition
- Autor:Joshua Arvin Lat
- Originaler Titel:Machine Learning Engineering on AWS. Operationalize and optimize generative AI systems and LLMOps pipelines in production - Second Edition
- ISBN:9781835881095, 9781835881095
- Veröffentlichungsdatum:2026-04-24
- Format:E-Book
- Artikel-ID: e_44oh
- Verleger: Packt Publishing
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