Vol. 1 No. 1 (2021): Journal of AI-Assisted Scientific Discovery
Articles

Scalable Data Architectures: Key principles for building systems that efficiently manage growing data volumes and complexity

Muneer Ahmed Salamkar
Senior Associate at JP Morgan Chase, USA
Cover

Published 06-01-2021

Keywords

  • Scalable data architecture,
  • cloud computing,
  • distributed systems

How to Cite

[1]
Muneer Ahmed Salamkar, “Scalable Data Architectures: Key principles for building systems that efficiently manage growing data volumes and complexity”, Journal of AI-Assisted Scientific Discovery, vol. 1, no. 1, pp. 251–270, Jan. 2021, Accessed: Dec. 24, 2024. [Online]. Available: https://scienceacadpress.com/index.php/jaasd/article/view/219

Abstract

Scalable data architectures have become critical in evolving data-driven technologies, enabling businesses to handle and process massive amounts of data efficiently and effectively. The increasing volume, velocity, and variety of data, often called the "3Vs," has put traditional data processing methods to the test. As organizations strive for agility, flexibility, and real-time insights, scalable architectures offer solutions that allow them to expand their infrastructure cost-effectively and performance-optimised. These architectures typically involve distributed systems, cloud computing, and big data technologies that automatically adjust resources based on demand. The rise of technologies such as Hadoop, Spark, & distributed databases has revolutionized how data is stored, processed, and analyzed, facilitating large-scale data operations that were previously unimaginable. This article explores the concept of scalable data architectures, highlighting the key technologies that drive their success, including data storage, processing frameworks, and cloud infrastructure. We will examine their role in finance, healthcare, and e-commerce industries, where high availability, low latency, and real-time data processing are paramount. Furthermore, the paper discusses challenges related to scalability, such as data consistency, security, & the management of increasingly complex systems. The article also reviews best practices for designing and implementing scalable data architectures, offering insights into future trends, including integrating AI and machine learning for predictive scaling and automated resource management. By understanding the principles behind scalable data architectures, organizations can build more resilient, flexible, & high-performance systems to meet the demands of tomorrow’s data-centric world.

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