Descubre un mundo infinito de historias
No ficción
"Apache Arrow Dataset in Practice"
"Apache Arrow Dataset in Practice" is a comprehensive guide for data engineers, analysts, and systems architects seeking to master high-performance, cross-language in-memory analytics using the Apache Arrow ecosystem. This authoritative book begins by setting the stage with a rich overview of Arrow’s evolution in the context of modern data interchange, deeply exploring its columnar in-memory format, abstractions like schemas and record batches, and the Dataset API's foundational principles. By blending theory with hands-on design philosophy and performance motivations, the introduction thoroughly prepares readers to leverage Arrow’s full potential in contemporary data workflows.
The heart of the book delves deeply into practical applications, covering sophisticated aspects of the Dataset API, including storage layer integration, partitioning, schema management, and expression-based filtering for scalable analytics. Readers learn efficient ingestion strategies, rigorous data validation techniques, vectorized transformations, and robust error handling to maintain data quality from source to export. Advanced chapters illuminate the mechanics of query processing—from vectorized execution and predicate pushdown to handling complex data types, aggregations, and performant joins—equipping practitioners with tools to optimize analytic workloads at any scale.
Beyond core functionalities, the book dedicates thorough coverage to real-world operations: achieving scalability across distributed environments, integrating seamlessly with leading analytics engines and data science toolkits, and maintaining security, privacy, and compliance throughout the data lifecycle. Practical guidance on debugging, optimization, and cost control is matched with a forward-looking perspective on extending Arrow and engaging with its vibrant open-source community. Through detailed case studies and in-depth technical advice, "Apache Arrow Dataset in Practice" stands as an indispensable resource for building next-generation, interoperable data applications.
© 2025 HiTeX Press (Ebook): 6610000964550
Fecha de lanzamiento
Ebook: 12 de julio de 2025
Etiquetas
Más de 1 millón de títulos
Modo sin conexión
Kids Mode
Cancela en cualquier momento
Para los que quieren escuchar y leer sin límites.
1 cuenta
Acceso ilimitado
Escucha y lee los títulos que quieras
Modo sin conexión + Modo Infantil
Cancela en cualquier momento
Español
América Latina
