Designing Data-Intensive Applications by Martin Kleppmann (Author)
- Publisher: COMPUTER SCIENCE
- Availability: In Stock
- SKU: 58173
- Number of Pages: 611
Rs.1,390.00
Rs.1,750.00
Tags: application scalability , applied data engineering , backend architecture , batch processing , best books , Best Price , Best Selling Books , big data architecture , big data design , big data systems , big data technologies , cloud system design , computer science textbooks , data engineering , data infrastructure , data management systems , data pipelines , data processing frameworks , data storage systems , data-driven applications , data-intensive applications , database architecture , database systems , Designing Data-Intensive Applications , distributed computing , distributed data systems , enterprise system design , fault tolerant systems , high performance data systems , large scale system design , maintainable software systems , maintainable systems , Martin Kleppmann , Online Bookshop , reliable data applications , reliable systems , scalable architecture , scalable data architecture , scalable systems , software engineering books , stream processing , system scalability , systems reliability
📘 Title Name: Designing Data-Intensive Applications: The Big Ideas Behind Reliable, Scalable, and Maintainable Systems
✍️ Author: Martin Kleppmann
Quality: Black White Pakistan Print
🔹 Introduction:
This book explores the fundamental concepts behind building reliable, scalable, and maintainable data systems. It equips readers with the knowledge to design and manage complex data-intensive applications effectively.
🔑 Key Points:
-
Provides deep insights into distributed systems, databases, and data pipelines.
-
Explains scalability, fault tolerance, and system reliability with practical examples.
-
Covers batch and stream processing architectures.
-
Guides in choosing the right tools and technologies for large-scale applications.
-
Ideal for software engineers, architects, and computer science students.
🔹 Conclusion:
Martin Kleppmann’s book is a must-have resource for anyone aiming to design modern, data-intensive systems that can handle growth, complexity, and real-world demands.