Energy-aware Prediction-based Scheduling of Dataflow Processing on the Cloud, Fog, and Edge

Narges Mehran; Zahra Najafabadi Samani; Samira Afzal; Frank Pallas (2025): Energy-aware Prediction-based Scheduling of Dataflow Processing on the Cloud, Fog, and Edge In: 2025 IEEE International Conference on Cloud Engineering (IC2E)

Global climate change is a significant environmental concern, and reducing greenhouse gas emissions is crucial to mitigating this issue. Moreover, there is a need to exploit a prediction-based method to assess the future requirements of applications and (re-)schedule them with the aim of reducing completion time and energy consumption. Therefore, we consider the stochastic requirements of users and investigate an Energy-aware Prediction-based scheduling of dataflow processing on the cloud, fog, and edge method, named EPreMatch, for microservice scaling by applying a machine learning (ML) model based on gradient boosting regression (GBR) and scheduling due to ranking and matching game principles. Firstly, EPreMatch predicts the number of microservice replicas using GBR. Then, the ranking method orders the microservice replicas and devices based on completion times and energy consumption. Thereafter, the EPreMatch schedules microservice replicas requiring dataflow processing on computing devices. Experimental analysis reveals lower completion times, energy consumption, and CO2 emission compared to a related prediction-based scheduling method.

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