4.6 Article

Deep Reinforcement Learning for Workload Prediction in Federated Cloud Environments

期刊

SENSORS
卷 23, 期 15, 页码 -

出版社

MDPI
DOI: 10.3390/s23156911

关键词

Deep Reinforcement Learning; Deep Q learning; workload prediction; Federated Cloud Computing; energy efficiency; Virtual Machine placement; Machine Learning

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In this paper, a novel solution called FEDQWP is proposed, which leverages deep Q-learning to predict federated cloud workload. The solution comprehensively addresses the issues of VM placement, energy efficiency, and SLA adherence, and the experimental results demonstrate its superiority in optimizing performance.
The Federated Cloud Computing (FCC) paradigm provides scalability advantages to Cloud Service Providers (CSP) in preserving their Service Level Agreement (SLA) as opposed to single Data Centers (DC). However, existing research has primarily focused on Virtual Machine (VM) placement, with less emphasis on energy efficiency and SLA adherence. In this paper, we propose a novel solution, Federated Cloud Workload Prediction with Deep Q-Learning (FEDQWP). Our solution addresses the complex VM placement problem, energy efficiency, and SLA preservation, making it comprehensive and beneficial for CSPs. By leveraging the capabilities of deep learning, our FEDQWP model extracts underlying patterns and optimizes resource allocation. Real-world workloads are extensively evaluated to demonstrate the efficacy of our approach compared to existing solutions. The results show that our DQL model outperforms other algorithms in terms of CPU utilization, migration time, finished tasks, energy consumption, and SLA violations. Specifically, our QLearning model achieves efficient CPU utilization with a median value of 29.02, completes migrations in an average of 0.31 units, finishes an average of 699 tasks, consumes the least energy with an average of 1.85 kWh, and exhibits the lowest number of SLA violations with an average of 0.03 violations proportionally. These quantitative results highlight the superiority of our proposed method in optimizing performance in FCC environments.

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