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Intelligent Resource Allocation Optimization for Cloud Computing via Machine Learning

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DOI: 10.23977/acss.2025.090109 | Downloads: 50 | Views: 1294

Author(s)

Yuqing Wang 1, Xiao Yang 2

Affiliation(s)

1 One Microsoft Way, Redmond, WA, 98052, USA
2 University of California, Los Angeles, 405 Hilgard Avenue, Los Angeles, CA, USA

Corresponding Author

Yuqing Wang

ABSTRACT

With the rapid expansion of cloud computing applications, optimizing resource allocation has become crucial for improving system performance and cost efficiency. This paper proposes an intelligent resource allocation algorithm that leverages deep learning (LSTM) for demand prediction and reinforcement learning (DQN) for dynamic scheduling. By accurately forecasting computing resource demands and enabling real-time adjustments, the proposed system enhances resource utilization by 32.5%, reduces average response time by 43.3%, and lowers operational costs by 26.6%. Experimental results in a production cloud environment confirm that the method significantly improves efficiency while maintaining high service quality. This study provides a scalable and effective solution for intelligent cloud resource management, offering valuable insights for future cloud optimization strategies.

KEYWORDS

Cloud computing resources; machine learning; resource allocation optimization; deep learning

CITE THIS PAPER

Yuqing Wang, Xiao Yang, Intelligent Resource Allocation Optimization for Cloud Computing via Machine Learning. Advances in Computer, Signals and Systems (2025) Vol. 9: 55-63. DOI: http://dx.doi.org/10.23977/acss.2025.090109.

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