利用基于图神经网络的强化学习在雾计算中进行多目标应用布局

Isaac Lera, Carlos Guerrero
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引用次数: 0

摘要

我们提出了一个框架,旨在利用深度强化学习(DRL)方法,解决与雾计算中应用布局相关的多目标优化难题。与整数线性规划或遗传算法等其他优化技术不同,DRL 模型在训练后可实时应用于解决类似的问题。我们的模型包括一个以图神经网络和两个行为批判者为特征的学习过程,提供了一个关于构成应用程序的相互关联服务优先级的整体视角。学习模型将服务之间的关系作为放置决策的关键因素:依赖性较高的服务在选择位置时优先。我们的实验调查包括一些示例,将我们的结果与基准策略和遗传算法进行比较。我们观察到一个可比的帕累托集合,其执行时间几乎可以忽略不计,仅为毫秒级,而其他方法则需要数小时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Multi-objective application placement in fog computing using graph neural network-based reinforcement learning

Multi-objective application placement in fog computing using graph neural network-based reinforcement learning

We propose a framework designed to tackle a multi-objective optimization challenge related to the placement of applications in fog computing, employing a deep reinforcement learning (DRL) approach. Unlike other optimization techniques, such as integer linear programming or genetic algorithms, DRL models are applied in real time to solve similar problem situations after training. Our model comprises a learning process featuring a graph neural network and two actor-critics, providing a holistic perspective on the priorities concerning interconnected services that constitute an application. The learning model incorporates the relationships between services as a crucial factor in placement decisions: Services with higher dependencies take precedence in location selection. Our experimental investigation involves illustrative cases where we compare our results with baseline strategies and genetic algorithms. We observed a comparable Pareto set with negligible execution times, measured in the order of milliseconds, in contrast to the hours required by alternative approaches.

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