AI-driven reinforced optimal cloud resource allocation (ROCRA) for high-speed satellite imagery data processing

Uma Maheswara Rao Inkollu1, J. K. R. Sastry1
1Department of Computer Science and Engineering, Koneru Lakshmaiah Education Foundation, Guntur, India

Tóm tắt

The emergence of cloud computing has brought attention to the broad issue of resource allocation across domains. A thorough and adaptable solution to this complex issue is AI-driven Reinforced Optimal Cloud Resource Allocation, or ROCRA. By expertly fusing artificial intelligence with reinforcement learning, ROCRA develops an adaptive cloud resource allocation plan that works for a wide range of applications. One of the most difficult and remarkable uses of ROCRA is processing Sentinel-2 satellite imagery for earth science applications. The timely, dependable, and effective allocation of resources is required for the processing and analysis of high-resolution satellite data for scientific investigations. By learning from and refining its strategies through its integrated adaptive feedback mechanism, ROCRA maintains its responsiveness to intricate tasks. ROCRA is perfect for dynamic research problems because of its evolutionary nature, which aids in anticipating and preparing for future challenges. We underscore the significance of ROCRA in cloud computing and its transformative potential by framing it as a universal solution, exemplified by tasks such as Sentinel-2 imagery processing. In the expanding field of cloud-based applications and research, ROCRA is an essential tool.

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