The core message of this article is to model the computation offloading problem in multi-access edge computing (MEC) systems as a non-cooperative game and employ the mean-field game framework to derive a decentralized algorithm that optimizes the tradeoff between power consumption and information freshness (age of information) for the IoT devices.
Eine digitaler Zwilling-unterstützte Deep-Reinforcement-Learning-Methode (DTDRLMO) wird entwickelt, um die dynamische Ressourcenverfügbarkeit bei der gemeinsamen Optimierung von Microservice-Offloading und Bandbreitenzuweisung in Collaborative Edge Computing (CEC) Netzwerken zu adressieren.
Die X-HEEP-Plattform bietet eine offene, konfigurierbare und erweiterbare Lösung für die Integration von Ultra-Low-Power-Edge-Beschleunigern.
Heterogeneous architectures with custom accelerators enhance energy efficiency in edge computing.
Unikernels zeigen vielversprechende Leistung für Edge FaaS, trotz einiger Einschränkungen.
Unikernels show promise for edge FaaS environments, offering advantages in cold start efficiency and memory usage.
Proposing a novel edge computing system for real-time video analysis with adaptive spatial-temporal semantic filtering to maximize processing rate and accuracy.
Building edge software testbeds presents challenges and insights for researchers and practitioners.
Optimizing forwarding and computation offloading in edge computing networks for service chain tasks is crucial for minimizing network costs.
Efficiently accelerating federated learning on resource-constrained edge devices through adaptive model partitioning and bandwidth allocation.