Vol. 3 No. 1 (2023): Journal of AI-Assisted Scientific Discovery
Articles

Intelligent Data Tiering in Hybrid Cloud Environments

Abhilash Katari
Engineering Lead at Persistent Systems Inc, USA
Sudhir Koundinya
manager in persistent systems., USA
Cover

Published 22-04-2023

Keywords

  • Intelligent Data Tiering,
  • Hybrid Cloud

How to Cite

[1]
Abhilash Katari and Sudhir Koundinya, “Intelligent Data Tiering in Hybrid Cloud Environments ”, Journal of AI-Assisted Scientific Discovery, vol. 3, no. 1, pp. 695–715, Apr. 2023, Accessed: Dec. 30, 2024. [Online]. Available: https://scienceacadpress.com/index.php/jaasd/article/view/254

Abstract

In today's rapidly evolving digital landscape, data is growing at an unprecedented rate, and organizations face the challenge of managing this data efficiently while balancing cost and performance. Intelligent data tiering in hybrid cloud environments offers a dynamic solution to this challenge. By strategically placing data across various storage tiers—such as on-premises infrastructure, public clouds, and private clouds—companies can optimize their storage costs, improve accessibility, and maintain high-performance standards. Data that is frequently accessed, or "hot" data, can be stored on high-performance, low-latency storage, while "cold" data, which is rarely accessed, can be offloaded to more cost-effective, long-term storage solutions. Artificial intelligence (AI) and machine learning (ML) are crucial in automating this tiering process by analyzing data usage patterns and making real-time decisions on where data should reside. This automation reduces administrative burdens, minimizes human error, and ensures data is always stored in the most appropriate tier. Additionally, intelligent data tiering helps organizations adhere to regulatory requirements, providing flexibility in managing sensitive data. It also enhances data lifecycle management, as businesses can define rules and policies aligning with their goals. By combining the strengths of both cloud and on-premises infrastructure, hybrid cloud environments provide the flexibility needed to achieve these goals. The seamless integration of intelligent tiering into these environments helps organizations remain agile and scalable without compromising performance or cost efficiency. As data volumes continue to soar, intelligent data tiering offers a forward-thinking approach to storage management that empowers organizations to harness the full potential of their data while maintaining control over operational expenses and resource allocation.

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