Scalable and Resilient Data Architectures in Different Sectors: Building Robust Systems for Analytics and Secure Decision-Making
Main Article Content
Abstract
The need for scalable and resilient data architectures is paramount, especially as sectors ranging from finance to healthcare rely heavily on data for analytics and secure decision-making. Modern data systems must accommodate increasing data volumes while ensuring performance and minimizing downtime, necessitating architectures that are both scalable and resilient. This paper explores the core principles and implementation strategies of scalable and resilient data architectures across various sectors. Specifically, we examine architectural models such as data lakes, data warehouses, and cloud-native approaches that enable organizations to handle large volumes of data. Additionally, we address resilience mechanisms, including redundancy, failover strategies, and disaster recovery protocols, to maintain continuous operations. By leveraging scalable data architectures, organizations can not only handle growth in data but also integrate real-time analytics and advanced machine learning algorithms, enhancing decision-making. We also discuss the importance of security measures and compliance frameworks, particularly in sectors like finance and healthcare, where data privacy and integrity are crucial. Through a comparative analysis across different industries, we aim to highlight best practices and tailored approaches that support robust, secure, and efficient data-driven decision-making. The findings suggest that while scalable and resilient data architectures vary significantly based on sector-specific requirements, commonalities exist in the underlying design principles that focus on modularity, elasticity, and fault tolerance. This paper concludes with recommendations on implementing scalable and resilient data systems that align with both technological advances and regulatory requirements, ensuring that organizations can sustainably manage data growth and derive actionable insights securely.
Downloads
Article Details
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.