Cloud Resource Optimization System
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- Create Date 9 May 2025
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Cloud Resource Optimization System
Authors:
G.AKASH, P.PRAVEEN, O.VANSHIKA, DR.B.Swaminathan
ABSTRACT - Cloud computing environments encounter considerable challenges in effectively allocating resources due to varying demands from users and applications. As businesses progressively transition workloads to cloud infrastructure, achieving optimal resource utilization becomes essential for maintaining service quality and cost-effectiveness. This paper introduces a Cloud Resource Optimization System, an interactive web application designed to aid users in enhancing cloud resource utilization based on real-time input parameters such as CPU usage, memory usage, disk storage, and task priority. The system performs dynamic analyses of resource consumption and offers customized optimization recommendations to enhance performance, lower costs, and ensure system stability. In contrast to traditional static resource management systems, our model prioritizes interactivity and task-specific guidance through rule- based dynamic analysis. Furthermore, the system improves user decision-making via a visual and user-friendly interface, providing immediate insights for various cloud workloads. This methodology effectively bridges the divide between manual monitoring and automated management by delivering actionable intelligence for proficient cloud resource planning. Our implementation illustrates that adaptive and interactive optimization systems can greatly enhance operational efficiency within cloud computing environments.
Our implementation illustrates that adaptive and interactive optimization systems can greatly enhance operational efficiency within cloud computing environments. By providing tailored and accurate recommendations based on real resource usage patterns, the proposed system aids in reducing resource waste, optimizing expenses, and facilitating scalable cloud operations. This paper emphasizes how these interactive solutions can act as a practical bridge between manual cloud resource management and sophisticated automated orchestration tools, thereby making cloud optimization attainable for users without expert knowledge.
The system performs real-time analysis of resource usage and offers customized optimization recommendations aimed at enhancing performance, lowering expenses, and maintaining system stability. In contrast to traditional static models, our system prioritizes interactivity and provides task-specific advice through rule-based dynamic analysis.
Keywords—Resource optimization system, Data processing, Reinforcement learning