TL;DR
This paper introduces COSCO, a co-simulation framework with gradient-based optimization for fog computing, achieving faster, more adaptive container orchestration with significant improvements in energy, response time, and scheduling efficiency.
Contribution
The paper presents GOBI, a novel gradient-based optimization strategy, and COSCO, a co-simulation framework, enabling rapid, adaptive container scheduling in volatile fog environments.
Findings
Up to 15% reduction in energy consumption.
Up to 40% improvement in response time.
Up to 82% faster scheduling time.
Abstract
Intelligent task placement and management of tasks in large-scale fog platforms is challenging due to the highly volatile nature of modern workload applications and sensitive user requirements of low energy consumption and response time. Container orchestration platforms have emerged to alleviate this problem with prior art either using heuristics to quickly reach scheduling decisions or AI driven methods like reinforcement learning and evolutionary approaches to adapt to dynamic scenarios. The former often fail to quickly adapt in highly dynamic environments, whereas the latter have run-times that are slow enough to negatively impact response time. Therefore, there is a need for scheduling policies that are both reactive to work efficiently in volatile environments and have low scheduling overheads. To achieve this, we propose a Gradient Based Optimization Strategy using…
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