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EADRL: Efficiency-aware adaptive deep reinforcement learning for dynamic task scheduling in edge-cloud environments

J. Anand, B. Karthikeyan

2025Results in Engineering12 citationsDOIOpen Access PDF

Abstract

In dynamic edge–cloud environments, task scheduling must adapt to fluctuations in workload and resource conditions. This paper presents Efficiency-Aware Adaptive Deep Reinforcement Learning (EADRL), a framework that introduces two key mechanisms: an adaptive learning rate and a dynamic confidence-aware reward adjustment to enable intelligent context-aware scheduling decisions. The learning rate adapts over time to reward trends, improving convergence while maintaining stability under varying load conditions. The reward mechanism aligns with system feedback and incorporates a confidence coefficient derived from recent reward variance to scale Q-value updates. This strategy reduces instability during volatile periods and supports learning under consistent task outcomes. Through these adaptive mechanisms, the EADRL framework fosters resilience and efficiency in task placement across distributed edge and cloud nodes. Experimental evaluations demonstrate that EADRL achieves significant improvements over existing benchmark methods, including DRL-based approaches such as Double DQN (DDQN), Deep Deterministic Policy Gradient (DDPG), and Server Real-Time Performance Deep Reinforcement Learning (SRP-DRL), as well as heuristic-based methods like Best-Fit, Random, and Earliest Idle Time First (EITF). These improvements are evident in key metrics such as task response time, success rate, and load variance. The results validate EADRL's ability to adaptively optimize scheduling policies without prior knowledge of future workloads, making it suitable for scalable and latency sensitive edge-cloud environments.

Topics & Concepts

Reinforcement learningComputer scienceCloud computingScheduling (production processes)Task (project management)Enhanced Data Rates for GSM EvolutionReinforcementArtificial intelligenceDistributed computingPsychologyEngineeringOperations managementSocial psychologyOperating systemSystems engineeringIoT and Edge/Fog ComputingCloud Computing and Resource ManagementAge of Information Optimization
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