NEPTUNE: Network- and GPU-aware Management of Serverless Functions at the Edge

L. Baresi, David Hu, G. Quattrocchi, L. Terracciano
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引用次数: 6

Abstract

Nowadays a wide range of applications is constrained by low-latency requirements that cloud infrastructures cannot meet. Multi-access Edge Computing (MEC) has been proposed as the reference architecture for executing applications closer to users and reducing latency, but new challenges arise: edge nodes are resource-constrained, the workload can vary significantly since users are nomadic, and task complexity is increasing (e.g., machine learning inference). To overcome these problems, the paper presents NEPTUNE, a serverless-based framework for managing complex MEC solutions. NEPTUNE i) places functions on edge nodes according to user locations, ii) avoids the saturation of single nodes, iii) exploits GPUs when available, and iv) allocates resources (CPU cores) dynamically to meet foreseen execution times. A prototype, built on top of K3S, was used to evaluate NEPTUNE on a set of experiments that demonstrate a significant reduction in terms of response time, network overhead, and resource consumption compared to three well-known approaches. CCS CONCEPTS • Theory of computation → Scheduling algorithms; • Computing methodologies →Distributed computing methodologies; • Computer systems organization →Distributed architectures.
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海王星:边缘无服务器功能的网络和gpu感知管理
如今,许多应用程序都受到云基础设施无法满足的低延迟需求的限制。多访问边缘计算(MEC)已被提出作为执行更接近用户的应用程序和减少延迟的参考架构,但出现了新的挑战:边缘节点资源受限,由于用户是游牧的,工作负载可能会有很大变化,任务复杂性正在增加(例如,机器学习推理)。为了克服这些问题,本文提出了NEPTUNE,这是一个用于管理复杂MEC解决方案的无服务器框架。NEPTUNE i)根据用户位置将功能放置在边缘节点上,ii)避免单个节点饱和,iii)在可用时利用gpu, iv)动态分配资源(CPU内核)以满足预期的执行时间。在K3S之上构建了一个原型,用于在一组实验中评估NEPTUNE,这些实验表明,与三种知名方法相比,NEPTUNE在响应时间、网络开销和资源消耗方面显著降低。•计算理论→调度算法;•计算方法→分布式计算方法;•计算机系统组织→分布式架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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