
Data Engineering Best Practices: Architecture tools and techniques for the data analytics lifecycle
Author(s): Luiz Fernando F Dos Santos (Author), Chandan Ramanna (Author)
- Publisher: BPB Publications
- Publication Date: 30 Jan. 2026
- Edition: 1st
- Language: English
- Print length: 567 pages
- ISBN-10: B0GKM4QXG9
Book Description
This book follows the journey of data from source to insight. It defines the data engineering role, presents reference architectures, and explains how to model, secure, and govern data for analytics. Subsequent chapters cover CI/CD, ETL versus ELT, infrastructure operations, data quality, operations, AI, and supporting processes.
By the end of this book, the readers will possess the competency to build, design, and operate end-to-end data platforms, collaborate effectively with analysts and data scientists, and apply repeatable patterns to build secure, scalable, and high-quality data solutions.
What you will learn● Grasp the core responsibilities of modern data engineers.
● Design practical analytics and data platform architectures.
● Model data for performance, clarity, and governance.
● Secure, test, and automate pipelines with CI/CD.
● Design agnostic models and analyze topologies.
● Apply data operations to analytics, AI, and daily operations. Who this book is for
This book is designed for data engineers, analysts, BI developers, and scientists building analytics platforms and pipelines, and it also guides the professionals responsible for data strategy, governance, and reliable data-driven decisions. Table of Contents
1. Data Engineering’s Role
2. Reference Architectures
3. Data Models
4. Permission Management
5. Governance and Cataloguing
6. Continuous Integration and Deployment
7. ETL and ELT
8. Infrastructure Operations
9. Quality Assurance
10. DataOps and AI
11. Additional Processes
12. Popular Technologies
Wow! eBook


