
Choice Made Simple!
Too many options?Click below to purchase an online gift card that can be used at participating retailers in Village Green Shopping Centre and continue your shopping IN CENTRE!Purchase HereHome
Ultimate Data Engineering Design Patterns: Design and Build Scalable Data Pipelines Using Proven Patterns for Modern Data Platforms (English Edition)
Coles
Loading Inventory...
Ultimate Data Engineering Design Patterns: Design and Build Scalable Data Pipelines Using Proven Patterns for Modern Data Platforms (English Edition) in Vernon, BC
By None
Current price: $34.99

Coles
Ultimate Data Engineering Design Patterns: Design and Build Scalable Data Pipelines Using Proven Patterns for Modern Data Platforms (English Edition) in Vernon, BC
By None
Current price: $34.99
Loading Inventory...
Size: Kobo eBook
*Product information may vary - to confirm product availability, pricing, shipping and return information please contact Coles
Build data pipelines that perform, scale, and last in production.
Book Description
Data engineering is the backbone of every modern data-driven organization — and the ability to design scalable, reliable pipelines is the most in-demand skill across analytics, AI, and platform engineering. Ultimate Data Engineering Design Patterns provides a comprehensive, pattern-driven guide to building robust data infrastructure, from foundational ingestion and storage to stream processing, governance, and cloud-native deployment.
You begin with core architectural patterns and data engineering fundamentals, then progressively work through ingestion, storage, batch processing, stream processing, and transformation patterns using tools such as Apache Spark, Kafka, and Airflow. Each chapter grounds concepts in hands-on exercises and industry case studies drawn from finance, healthcare, and e-commerce, ensuring every pattern is immediately applicable to real engineering scenarios.
What you will learn
● Design scalable batch and real-time data pipelines using proven engineering patterns.
● Implement reliable data ingestion workflows across diverse sources and formats.
● Build efficient data lakes, warehouses, and lakehouse architectures for modern platforms.
● Apply data governance, quality, and observability practices to production pipelines.
● Optimize pipeline performance and scalability using cloud-native tools and strategies.
● Implement DataOps practices for operationalising and maintaining enterprise data platforms.
Table of Contents
Introduction to Data Engineering
Data Engineering Fundamentals
Architectural Patterns in Data Engineering
Data Ingestion Patterns in Data Engineering
Storage Design Patterns in Data Engineering
Batch Processing Patterns
Stream Processing Patterns
Data Transformation and Enrichment Patterns
Machine Learning Engineering Patterns
Data Quality Patterns
Data Governance and Compliance
Scalability and Performance Optimization
Building End-to-End Data Pipelines
Operationalizing Data Pipelines
Future of Data Engineering
Index
Build data pipelines that perform, scale, and last in production.
Book Description
Data engineering is the backbone of every modern data-driven organization — and the ability to design scalable, reliable pipelines is the most in-demand skill across analytics, AI, and platform engineering. Ultimate Data Engineering Design Patterns provides a comprehensive, pattern-driven guide to building robust data infrastructure, from foundational ingestion and storage to stream processing, governance, and cloud-native deployment.
You begin with core architectural patterns and data engineering fundamentals, then progressively work through ingestion, storage, batch processing, stream processing, and transformation patterns using tools such as Apache Spark, Kafka, and Airflow. Each chapter grounds concepts in hands-on exercises and industry case studies drawn from finance, healthcare, and e-commerce, ensuring every pattern is immediately applicable to real engineering scenarios.
What you will learn
● Design scalable batch and real-time data pipelines using proven engineering patterns.
● Implement reliable data ingestion workflows across diverse sources and formats.
● Build efficient data lakes, warehouses, and lakehouse architectures for modern platforms.
● Apply data governance, quality, and observability practices to production pipelines.
● Optimize pipeline performance and scalability using cloud-native tools and strategies.
● Implement DataOps practices for operationalising and maintaining enterprise data platforms.
Table of Contents
Introduction to Data Engineering
Data Engineering Fundamentals
Architectural Patterns in Data Engineering
Data Ingestion Patterns in Data Engineering
Storage Design Patterns in Data Engineering
Batch Processing Patterns
Stream Processing Patterns
Data Transformation and Enrichment Patterns
Machine Learning Engineering Patterns
Data Quality Patterns
Data Governance and Compliance
Scalability and Performance Optimization
Building End-to-End Data Pipelines
Operationalizing Data Pipelines
Future of Data Engineering
Index


















