Data Engineering for AI/ML Pipelines: Ultimate guide to data pipelines and architectures for AI/ML applications

Par : Venkata Karthik Penikalapati, Mitesh Mangaonkar
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  • FormatePub
  • ISBN978-93-6589-775-3
  • EAN9789365897753
  • Date de parution18/10/2024
  • Protection num.Adobe DRM
  • Infos supplémentairesepub
  • ÉditeurBPB Publications

Résumé

DESCRIPTION Data engineering is the art of building and managing data pipelines that enable efficient data flow for AI/ML projects. This book serves as a comprehensive guide to data engineering for AI/ML systems, equipping you with the knowledge and skills to create robust and scalable data infrastructure. This book covers everything from foundational concepts to advanced techniques. It begins by introducing the role of data engineering in AI/ML, followed by exploring the lifecycle of data, from data generation and collection to storage and management.
Readers will learn how to design robust data pipelines, transform data, and deploy AI/ML models effectively for real-world applications. The book also explains security, privacy, and compliance, ensuring responsible data management. Finally, it explores future trends, including automation, real-time data processing, and advanced architectures, providing a forward-looking perspective on the evolution of data engineering.
By the end of this book, you will have a deep understanding of the principles and practices of data engineering for AI/ML. You will be able to design and implement efficient data pipelines, select appropriate technologies, ensure data quality and security, and leverage data for building successful AI/ML models.  KEY FEATURES  ? Comprehensive guide to building scalable AI/ML data engineering pipelines.? Practical insights into data collection, storage, processing, and analysis.? Emphasis on data security, privacy, and emerging trends in AI/ML. WHAT YOU WILL LEARN? Architect scalable data solutions for AI/ML-driven applications.? Design and implement efficient data pipelines for machine learning.? Ensure data security and privacy in AI/ML systems.? Leverage emerging technologies in data engineering for AI/ML.? Optimize data transformation processes for enhanced model performance.  WHO THIS BOOK IS FORThis book is ideal for software engineers, ML practitioners, IT professionals, and students wanting to master data pipelines for AI/ML.
It is also valuable for developers and system architects aiming to expand their knowledge of data-driven technologies.
DESCRIPTION Data engineering is the art of building and managing data pipelines that enable efficient data flow for AI/ML projects. This book serves as a comprehensive guide to data engineering for AI/ML systems, equipping you with the knowledge and skills to create robust and scalable data infrastructure. This book covers everything from foundational concepts to advanced techniques. It begins by introducing the role of data engineering in AI/ML, followed by exploring the lifecycle of data, from data generation and collection to storage and management.
Readers will learn how to design robust data pipelines, transform data, and deploy AI/ML models effectively for real-world applications. The book also explains security, privacy, and compliance, ensuring responsible data management. Finally, it explores future trends, including automation, real-time data processing, and advanced architectures, providing a forward-looking perspective on the evolution of data engineering.
By the end of this book, you will have a deep understanding of the principles and practices of data engineering for AI/ML. You will be able to design and implement efficient data pipelines, select appropriate technologies, ensure data quality and security, and leverage data for building successful AI/ML models.  KEY FEATURES  ? Comprehensive guide to building scalable AI/ML data engineering pipelines.? Practical insights into data collection, storage, processing, and analysis.? Emphasis on data security, privacy, and emerging trends in AI/ML. WHAT YOU WILL LEARN? Architect scalable data solutions for AI/ML-driven applications.? Design and implement efficient data pipelines for machine learning.? Ensure data security and privacy in AI/ML systems.? Leverage emerging technologies in data engineering for AI/ML.? Optimize data transformation processes for enhanced model performance.  WHO THIS BOOK IS FORThis book is ideal for software engineers, ML practitioners, IT professionals, and students wanting to master data pipelines for AI/ML.
It is also valuable for developers and system architects aiming to expand their knowledge of data-driven technologies.