Data pipelines with Apache Airflow

Bibliographische Detailangaben

Titel
Data pipelines with Apache Airflow
verantwortlich
Harenslak, Bas (VerfasserIn); Ruiter, Julian de (VerfasserIn)
veröffentlicht
Shelter Island, NY: Manning, [2021]
Erscheinungsjahr
2021
Medientyp
Buch unbewegtes Bild
Datenquelle
British Library Catalogue
Tags
Tag hinzufügen

Zugang

Weitere Informationen sehen Sie, wenn Sie angemeldet sind. Noch keinen Account? Jetzt registrieren.

Zusammenfassung
Data Pipelines with Apache Airflow teaches you how to build and maintain effective data pipelines. A successful pipeline moves data efficiently, minimizing pauses and blockages between tasks, keeping every process along the way operational. Apache Airflow provides a single customizable environment for building and managing data pipelines, eliminating the need for a hodgepodge collection of tools, snowflake code, and homegrown processes. Using real-world scenarios and examples, Data Pipelines with Apache Airflow teaches you how to simplify and automate data pipelines, reduce operational overhead, and smoothly integrate all the technologies in your stack ... Data pipelines manage the flow of data from initial collection through consolidation, cleaning, analysis, visualization, and more. Apache Airflow provides a single platform you can use to design, implement, monitor, and maintain your pipelines. Its easy-to-use UI, plug-and-play options, and flexible Python scripting make Airflow perfect for any data management task. Data Pipelines with Apache Airflow teaches you how to build and maintain effective data pipelines. You'll explore the most common usage patterns, including aggregating multiple data sources, connecting to and from data lakes, and cloud deployment. Part reference and part tutorial, this practical guide covers every aspect of the directed acyclic graphs (DAGs) that power Airflow, and how to customize them for your pipeline's needs. Build, test, and deploy Airflow pipelines as DAGs; Automate moving and transforming data; Analyze historical datasets using backfilling; Develop custom components; Set up Airflow in production environments. For DevOps, data engineers, machine learning engineers, and sysadmins with intermediate Python skills. -- From publisher's description.
Umfang
xxiv, 454 pages; illustrations (black and white), maps (black and white); 24 cm
Sprache
Englisch
Schlagworte
DDC-Notation
006.312
ISBN
9781617296901
1617296902