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Towards Online Learning and Concept Drift for Offloading Complex Event Processing in the Edge

机译:在线学习和概念漂移,以卸载边缘中的复杂事件处理

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Edge computing has enabled the usage of Complex Event Processing (CEP) closer to data sources, delivering on time response to critical applications. One of the challenges in this context is how to support this processing and keep an optimal resource usage (e.g., Memory, CPU). State-of-art solutions have suggested computational offloading techniques to distribute processing across the nodes and reach such optimization. Most of them take the offloading decision through predefined policies or adaptive solutions with the usage of machine learning algorithms. However, these techniques are not able to incrementally learn without any historical data or to adapt to changes on statistical data properties. This research aims to use online learning and concept drift detection on offloading decision to optimize resource usage and keep the learning model up-to-date. The feasibility of our approach was noticed through preliminary evaluations.
机译:边缘计算使得复杂的事件处理(CEP)更靠近数据源,按时对关键应用程序的时间响应。这一发明中的一个挑战是如何支持该处理并保持最佳资源使用(例如,内存,CPU)。最先进的解决方案建议计算卸载技术以在节点上分发处理并达到这种优化。他们中的大多数通过预定义的策略或自适应解决方案采用了机器学习算法的自适应解决方案。然而,这些技术无法在没有任何历史数据的情况下逐步学习或适应统计数据属性的变化。本研究旨在在在线学习和概念漂移检测上卸载决定,以优化资源使用,并将学习模型保持最新。通过初步评估注意到我们的方法的可行性。

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