Data Pipelines with Apache Airflow, Second Edition
商品資訊
ISBN13:9781633436374
出版社:MANNING PUBN
作者:Julian de Ruiter
出版日:2025/12/30
裝訂:平裝
定價
:NT$ 3000 元無庫存,下單後進貨(到貨天數約30-45天)
下單可得紅利積點 :90 點
商品簡介
商品簡介
Simplify, streamline, and scale your data operations with data pipelines built on Apache Airflow. Apache Airflow provides a batteries-included platform for designing, implementing, and monitoring data pipelines. Building pipelines on Airflow eliminates the need for patchwork stacks and homegrown processes, adding security and consistency to the process. Now in its second edition, Data Pipelines with Apache Airflow teaches you to harness this powerful platform to simplify and automate your data pipelines, reduce operational overhead, and seamlessly integrate all the technologies in your stack. In Data Pipelines with Apache Airflow, Second Edition you'll learn how to: - Master the core concepts of Airflow architecture and workflow design
- Schedule data pipelines using the Dataset API and time tables, including complex irregular schedules
- Develop custom Airflow components for your specific needs
- Implement comprehensive testing strategies for your pipelines
- Apply industry best practices for building and maintaining Airflow workflows
- Deploy and operate Airflow in production environments
- Orchestrate workflows in container-native environments
- Build and deploy Machine Learning and Generative AI models using Airflow Data Pipelines with Apache Airflow has empowered thousands of data engineers to build more successful data platforms. This new second edition has been fully revised to cover the latest features of Apache Airflow, including the Taskflow API, deferrable operators, and Large Language Model integration. Filled with real-world scenarios and examples, you'll be carefully guided from Airflow novice to expert. About the book Data Pipelines with Apache Airflow, Second Edition teaches you how to build and maintain effective data pipelines. You'll master every aspect of directed acyclic graphs (DAGs)--the power behind Airflow--and learn to customize them for your pipeline's specific needs. Part reference and part tutorial, each technique is illustrated with engaging hands-on examples, from training machine learning models for generative AI to optimizing delivery routes. You'll explore common Airflow usage patterns, including aggregating multiple data sources and connecting to data lakes, while discovering exciting new features such as dynamic scheduling, the Taskflow API, and Kubernetes deployments. About the reader For DevOps, data engineers, machine learning engineers, and sysadmins with intermediate Python skills. About the author Julian de Ruiter is a Data + AI engineering lead at Xebia Data, with a background in computer and life sciences and a PhD in computational cancer biology. As consultant at Xebia Data, he enjoys helping clients design and build AI solutions and platforms, as well as the teams that drive them. From this work, he has extensive experience in deploying and applying Apache Airflow in production in diverse environments. Ismael Cabral is a Machine Learning Engineer and Airflow trainer with experience spanning across Europe, US, Mexico, and South America, where he has worked with market-leading companies. He has vast experience implementing data pipelines and deploying machine learning models in production. Kris Geusebroek is a data-engineering consultant with extensive hands-on experience with Apache Airflow at several clients and is the maintainer of Whirl (the open source local testing with Airflow repository), where he is actively adding new examples based on new functionality and new technologies that integrate with Airflow. Daniel van der Ende is a Data Engineer who first started using Apache Airflow back in 2016. Since then, he has worked in many different Airflow environments, both on-premises and in the cloud. He has actively contributed to the Airflow project itself, as well as related projects such as Astronomer-Cosmos. Bas Harenslak is a Staff Architect at Astronomer, where he helps customers develop mission-critical data pipelines at large scale using Apache Airflow and the Astro platform. With a background in software engineering and computer science, he enjoys working on software and data as if they are challenging puzzles. He favours working on open source software, is a committer on the Apache Airflow project, and co-author of the first edition of Data Pipelines with Apache Airflow. Get a free eBook (PDF or ePub) from Manning as well as access to the online liveBook format (and its AI assistant that will answer your questions in any language) when you purchase the print book.
- Schedule data pipelines using the Dataset API and time tables, including complex irregular schedules
- Develop custom Airflow components for your specific needs
- Implement comprehensive testing strategies for your pipelines
- Apply industry best practices for building and maintaining Airflow workflows
- Deploy and operate Airflow in production environments
- Orchestrate workflows in container-native environments
- Build and deploy Machine Learning and Generative AI models using Airflow Data Pipelines with Apache Airflow has empowered thousands of data engineers to build more successful data platforms. This new second edition has been fully revised to cover the latest features of Apache Airflow, including the Taskflow API, deferrable operators, and Large Language Model integration. Filled with real-world scenarios and examples, you'll be carefully guided from Airflow novice to expert. About the book Data Pipelines with Apache Airflow, Second Edition teaches you how to build and maintain effective data pipelines. You'll master every aspect of directed acyclic graphs (DAGs)--the power behind Airflow--and learn to customize them for your pipeline's specific needs. Part reference and part tutorial, each technique is illustrated with engaging hands-on examples, from training machine learning models for generative AI to optimizing delivery routes. You'll explore common Airflow usage patterns, including aggregating multiple data sources and connecting to data lakes, while discovering exciting new features such as dynamic scheduling, the Taskflow API, and Kubernetes deployments. About the reader For DevOps, data engineers, machine learning engineers, and sysadmins with intermediate Python skills. About the author Julian de Ruiter is a Data + AI engineering lead at Xebia Data, with a background in computer and life sciences and a PhD in computational cancer biology. As consultant at Xebia Data, he enjoys helping clients design and build AI solutions and platforms, as well as the teams that drive them. From this work, he has extensive experience in deploying and applying Apache Airflow in production in diverse environments. Ismael Cabral is a Machine Learning Engineer and Airflow trainer with experience spanning across Europe, US, Mexico, and South America, where he has worked with market-leading companies. He has vast experience implementing data pipelines and deploying machine learning models in production. Kris Geusebroek is a data-engineering consultant with extensive hands-on experience with Apache Airflow at several clients and is the maintainer of Whirl (the open source local testing with Airflow repository), where he is actively adding new examples based on new functionality and new technologies that integrate with Airflow. Daniel van der Ende is a Data Engineer who first started using Apache Airflow back in 2016. Since then, he has worked in many different Airflow environments, both on-premises and in the cloud. He has actively contributed to the Airflow project itself, as well as related projects such as Astronomer-Cosmos. Bas Harenslak is a Staff Architect at Astronomer, where he helps customers develop mission-critical data pipelines at large scale using Apache Airflow and the Astro platform. With a background in software engineering and computer science, he enjoys working on software and data as if they are challenging puzzles. He favours working on open source software, is a committer on the Apache Airflow project, and co-author of the first edition of Data Pipelines with Apache Airflow. Get a free eBook (PDF or ePub) from Manning as well as access to the online liveBook format (and its AI assistant that will answer your questions in any language) when you purchase the print book.
主題書展
更多
主題書展
更多書展購物須知
外文書商品之書封,為出版社提供之樣本。實際出貨商品,以出版社所提供之現有版本為主。部份書籍,因出版社供應狀況特殊,匯率將依實際狀況做調整。
無庫存之商品,在您完成訂單程序之後,將以空運的方式為你下單調貨。為了縮短等待的時間,建議您將外文書與其他商品分開下單,以獲得最快的取貨速度,平均調貨時間為1~2個月。
為了保護您的權益,「三民網路書店」提供會員七日商品鑑賞期(收到商品為起始日)。
若要辦理退貨,請在商品鑑賞期內寄回,且商品必須是全新狀態與完整包裝(商品、附件、發票、隨貨贈品等)否則恕不接受退貨。

