基于强化学习的预测容器自动缩放算法A- sarsa

Shubo Zhang, Tianyang Wu, Maolin Pan, Chaomeng Zhang, Yang Yu
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引用次数: 19

摘要

容器由于其轻量级和灵活的特点,近年来逐渐被用于云平台的应用部署和资源分配的基本单元。强化学习(Reinforcement learning, RL)算法作为一种经典算法,由于其自适应性和鲁棒性等优点,在虚拟机调度场景中得到了广泛的应用。然而,大多数RL方法在容器调度中存在调度不及时、决策不准确、动态性差等问题,导致SLA违规率较高。为了解决上述问题,提出了一种结合ARIMA模型和神经网络模型的预测强化学习算法a - sarsa。该算法不仅保证了扩展策略的可预测性和准确性,而且使扩展决策能够适应不断变化的工作负载。通过大量的实验,验证了a - sarsa算法用于集装箱调度的时效性和有效性,可以在保持资源利用率良好的同时显著降低SLA违规率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A-SARSA: A Predictive Container Auto-Scaling Algorithm Based on Reinforcement Learning
Due to the lightweight and flexible characteristics, containers have gradually been used for the application deployment and the basic unit for resource allocation in a cloud platform recently. Reinforcement learning (RL), as a classic algorithm, is widely used in virtual machine scheduling scenarios due to its advantages of adaptability and robustness. However, most RL methods have problems in container scheduling, such as untimely scheduling, lack of accuracy in decision-making and poor dynamics that will lead to a higher SLA violation rate. In order to solve the above problems, a predictive RL algorithm A-SARSA is proposed, which combines the ARIMA model and the neural network model. This algorithm not only ensures the predictability and accuracy of the scaling strategy, but also enables the scaling decisions to adapt to the changing workloads. Through a large number of experiments, the timeliness and effectiveness of the A-SARSA algorithm for container scheduling are verified, which can reduce the SLA violation rate dramatically while keeping the resource utilization rate at a good level.
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