A Framework for Energy-aware Evaluation of Distributed Data Processing Platforms in Edge-Cloud Environment
Faheem Ullah, Imaduddin Mohammed, M. Ali Babar

TL;DR
This paper introduces a framework for evaluating the energy efficiency of distributed data processing platforms in integrated edge-cloud environments, highlighting the impact of offloading and network factors.
Contribution
It presents a novel framework for energy-aware evaluation and applies it to Hadoop, Spark, and Flink in edge-cloud settings, revealing key insights.
Findings
Flink is the most energy-efficient platform among the three.
Offloading tasks reduces energy consumption by 55.2%.
Bandwidth and distance significantly affect energy use.
Abstract
Distributed data processing platforms (e.g., Hadoop, Spark, and Flink) are widely used to distribute the storage and processing of data among computing nodes of a cloud. The centralization of cloud resources has given birth to edge computing, which enables the processing of data closer to the data source instead of sending it to the cloud. However, due to resource constraints such as energy limitations, edge computing cannot be used for deploying all kinds of applications. Therefore, tasks are offloaded from an edge device to the more resourceful cloud. Previous research has evaluated the energy consumption of the distributed data processing platforms in the isolated cloud and edge environments. However, there is a paucity of research on evaluating the energy consumption of these platforms in an integrated edge-cloud environment, where tasks are offloaded from a resource-constraint…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Cloud Computing and Resource Management · Green IT and Sustainability
