Fundamentals of Data Engineering: Plan and Build Robust Data Systems (Paperback)
Reis, Joe, Housley, Matt
- 出版商: O'Reilly
- 出版日期: 2022-07-26
- 定價: $2,800
- 售價: 8.8 折 $2,464
- 語言: 英文
- 頁數: 446
- 裝訂: Quality Paper - also called trade paper
- ISBN: 1098108302
- ISBN-13: 9781098108304
-
相關分類:
大數據 Big-data、Data Science
-
相關翻譯:
資料工程基礎|規劃和建構強大、穩健的資料系統 (Fundamentals of Data Engineering) (繁中版)
立即出貨
買這商品的人也買了...
-
$480$379 -
$580$452 -
$1,700$1,700 -
$1,892Designing Data-Intensive Applications: The Big Ideas Behind Reliable, Scalable, and Maintainable Systems (Paperback)
-
$265Web API 的設計與開發 (Web API : the Good Parts)
-
$2,119OCA Oracle Database SQL Exam Guide (Exam 1Z0-071) (Oracle Press)
-
$650$553 -
$500$390 -
$1,900$1,805 -
$4,620$4,389 -
$580$452 -
$505分佈式系統常用技術及案例分析, 2/e
-
$480$408 -
$1,700$1,615 -
$980$774 -
$1,155Cloud Native Go: Building Reliable Services in Unreliable Environments (Paperback)
-
$980$774 -
$520$410 -
$2,200Software Architecture: The Hard Parts: Modern Trade-Off Analyses for Distributed Architectures (Paperback)
-
$2,710$2,575 -
$2,650$2,597 -
$2,146Introduction to Algorithms, 4/e (Hardcover)
-
$1,800$1,782 -
$580$458 -
$660$521
相關主題
商品描述
Data engineering has grown rapidly in the past decade, leaving many software engineers, data scientists, and analysts looking for a comprehensive view of this practice. With this practical book, you'll learn how to plan and build systems to serve the needs of your organization and customers by evaluating the best technologies available through the framework of the data engineering lifecycle.
Authors Joe Reis and Matt Housley walk you through the data engineering lifecycle and show you how to stitch together a variety of cloud technologies to serve the needs of downstream data consumers. You'll understand how to apply the concepts of data generation, ingestion, orchestration, transformation, storage, and governance that are critical in any data environment regardless of the underlying technology.
This book will help you:
- Get a concise overview of the entire data engineering landscape
- Assess data engineering problems using an end-to-end framework of best practices
- Cut through marketing hype when choosing data technologies, architecture, and processes
- Use the data engineering lifecycle to design and build a robust architecture
- Incorporate data governance and security across the data engineering lifecycle