在雾到云范式中使用机器学习进行性能预测的架构模式

Souvik Sengupta, Jordi García, X. Masip-Bruin, Andrés Prieto-González
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引用次数: 2

摘要

雾到云(F2C)模式正在兴起,它既为对延迟敏感的服务提供更高的功能效率,也帮助现代计算系统变得更加智能。由于该领域仍处于起步阶段,因此该领域面临的最大挑战是构建适当的资源分配技术,作为高效资源管理模块的一部分。该范式的多样化和分布式特性为选择执行某些任务所需的适当资源造成了一些额外的障碍。值得注意的是,有效的资源消耗估算和性能预测是设计和开发合适和智能的F2C系统资源管理机制的核心问题。考虑到这一事实,在本文中,我们的目标是为F2C系统设计一个基于预测的资源管理机制的架构框架。性能预测基于监督式机器学习技术。通过多次测试,预测了F2C资源的性能和资源使用情况,对该方案进行了评估和验证。首先,我们在不同的F2C资源上运行了一个图像识别应用程序,收集了与性能相关的信息和资源消耗信息。然后,通过采用多元回归方法,我们执行一些标准的机器学习技术来预测性能并估计F2C资源的资源消耗。最后,为了证明我们建议的有效性,我们计算了估计值和实际测量值之间的成本函数的值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Architectural Schema for Performance Prediction using Machine Learning in the Fog-to-Cloud Paradigm
The Fog-to-Cloud (F2C) paradigm is emerging to both provide higher functional efficiency for latency-sensitive services and also help modern computing systems to be more intelligent. As it is still in its infancy, the biggest challenge for this domain is to build a proper resource allocation technique as part of an efficient resource management module. The diversified and distributed nature of that paradigm creates some additional hurdles for choosing the appropriate resources for executing some tasks. Significantly, efficient resource consumption estimation and performance forecasting are core issues in the design and development of a proper and smart resource management mechanism for F2C systems. Considering this fact, in this paper, we aim at designing an architectural framework for a prediction-based resource management mechanism for F2C systems. The performance prediction is based on supervised machine learning technology. The proposal has been evaluated and validated by predicting the performance and resources usage of F2C resources through several tests. Primarily, we have run an image recognition application on different F2C resources and collected performance-related information and resource consumption information. Then, by adopting the multivariate regression methodology, we perform some standard machine learning techniques to predict the performance and estimate the resource consumption of the F2C resources. Finally, to justify the effectiveness of our proposal, we calculated the value of a cost function between estimated values and the real measured values.
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