Fundamentals of Data Engineering by Joe Reis (Author)
- Publisher: COMPUTER SCIENCE
- Availability: In Stock
- SKU: 56048 R1 0600
- Number of Pages: 447
Rs.1,090.00
Rs.1,395.00
Tags: batch and streaming data , best books , Best Price , Best Selling Books , big data systems , cloud data systems , data analytics systems , data architecture strategies , data engineer handbook , data engineering book , data engineering guide , data governance , data infrastructure , data modeling book , data pipelines , data quality , data security , data systems design , data systems for developers , data workflows , enterprise data engineering , ETL best practices , Fundamentals of Data Engineering , Joe Reis , Matt Housley , modern data engineering , Online Bookshop , Pakistan print , practical data engineering , programming and data , real-world data examples , robust data pipelines , scalable data architecture , technology books , white paper edition
📖 Title Name: Fundamentals of Data Engineering: Plan and Build Robust Data Systems – 1st Edition
✍️ Authors: Joe Reis, Matt Housley
📦 Quality: White Paper Pakistan Print
🔹 Introduction:
Fundamentals of Data Engineering by Joe Reis and Matt Housley is a practical guide for building robust, scalable, and efficient data systems. Designed for data engineers, architects, and developers, this book covers the full lifecycle of data—from ingestion and storage to processing and analytics—providing actionable strategies, best practices, and real-world examples to design systems that are reliable, maintainable, and future-proof.
🔑 Key Points:
-
Explains the core concepts of data engineering, including pipelines, ETL, and data modeling.
-
Covers architecture patterns for scalable and fault-tolerant data systems.
-
Discusses data quality, governance, and security best practices.
-
Provides hands-on strategies for managing batch and streaming data workflows.
-
Offers practical examples and case studies for real-world implementation.
🖋️ Conclusion:
Fundamentals of Data Engineering is an essential resource for anyone aiming to design and maintain high-quality data systems. With a balance of theory and practice, it equips readers to build robust infrastructures that meet modern data demands efficiently.