采用模糊(DCNN-F)技术的深度卷积神经网络,用于优化云计算的能源和时间调度

Logesh Rajendran, Virendra Singh Shekhawat
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摘要

自适应深度学习技术为在云环境中部署和管理深度学习模型提供了可扩展性和灵活性。深度学习广泛应用于云计算架构,这些方法通过自动调整分配给机器学习任务的资源以应对工作量波动,从而优化性能和资源利用率。自适应任务调度算法可根据机器学习任务的特点和需求,最大限度地将机器学习技术分配到可用资源上。DL 算法可对任务分配做出智能判断,保证有效的资源利用和工作量管理。它们考虑的变量包括任务优先级、资源可用性和资源能力。这项研究工作通过区分云节点,部署了带有模糊(DCNN-F)技术的深度卷积神经网络。通过高效学习,优化了云环境下工作流调度的复杂性,同时有效处理了能源和时间消耗问题。DCNN-F 利用云中的资源进行训练,并通过学习数据纠正调度问题的解决方案。根据 DCNN-F 中的反馈机制,对网络进行迭代完善和优化。通过将 DCNN-F 的强大功能与高效的资源分配策略相结合,研究可以最大限度地提高云计算环境中优先级受限任务的能量和时间调度。DCNN-F 的仿真结果与最先进的技术进行了比较,DCNN-F 优于深度 Q 学习(DQL)、基于深度强化学习的优化(DRL-O)和基于深度强化学习的调度(DRL-S)技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Deep Convolutional Neural Network with a Fuzzy (DCNN-F) technique for energy and time optimized scheduling of cloud computing

Self-adaptive deep learning techniques provide scalability and flexibility in deploying and administrating deep learning models in the cloud environment. DL is widely used in cloud computing architecture, and these methods seek to optimize performance and resource utilization by automatically adjusting the resources allotted to machine learning tasks in response to workload fluctuations. Adaptive task scheduling algorithms maximise the distribution of DL techniques to available resources based on their features and needs. DL algorithms make intelligent judgements regarding job allocation, guaranteeing effective resource utilization and workload management. They consider variables, including task priority, resource availability, and resource capabilities. This research work deploys the Deep Convolutional Neural Network with a Fuzzy (DCNN-F) technique by differentiating the cloud nodes. The complexity of workflow scheduling in the cloud context is optimized by efficient learning, whereas energy and time consumption are effectively handled. The DCNN-F is trained with the resources in the cloud, and the solution for scheduling issues is rectified by learning data. The network is iteratively refined and optimized based on the feedback mechanism in DCNN-F. By combining the power of DCNN-Fs with efficient resource allocation strategies, research can maximise energy and time scheduling precedence-constrained tasks in cloud computing environments. The simulation outcome of DCNN-F is compared with state-of-art techniques, and DCNN-F outperforms Deep Q-Learning (DQL), Deep Reinforcement Learning based Optimization (DRL-O) and Deep Reinforcement Learning based Scheduling (DRL-S) techniques.

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