水母:动态边缘网络的及时推理服务

Vinod Nigade, P. Bauszat, H. Bal, Lin Wang
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引用次数: 3

摘要

虽然高精度对于深度学习(DL)推理至关重要,但及时提供推理请求同样至关重要,但尚未经过仔细研究,特别是当请求必须通过边缘的动态无线网络提供服务时。在本文中,我们提出了一种新的边缘深度学习推理服务系统jellyfish,它实现了端到端推理延迟的软保证,通常被指定为服务水平目标(SLO)。为了处理网络变异性,Jellyfish利用数据和深度神经网络(DNN)自适应在准确性和延迟之间进行权衡。水母采用了一种新的设计,可以实现集体适应政策,其中数据和DNN适应的决策在不同网络条件下的多个用户之间保持一致和协调。我们提出了有效的算法来动态适应dnn和映射用户,从而在最大限度地提高整体推理精度的同时实现延迟slo。我们基于原型实现和现实世界WiFi和LTE网络痕迹的实验表明,Jellyfish可以在保持高精度的同时满足大约99%的延迟slo。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Jellyfish: Timely Inference Serving for Dynamic Edge Networks
While high accuracy is of paramount importance for deep learning (DL) inference, serving inference requests on time is equally critical but has not been carefully studied especially when the request has to be served over a dynamic wireless network at the edge. In this paper, we propose Jellyfish—a novel edge DL inference serving system that achieves soft guarantees on end-to-end inference latency often specified as a service-level objective (SLO). To handle the network variability, Jellyfish exploits both data and deep neural network (DNN) adaptation to conduct tradeoffs between accuracy and latency. Jellyfish features a new design that enables collective adaptation policies where the decisions for data and DNN adaptations are aligned and coordinated among multiple users with varying network conditions. We propose efficient algorithms to dynamically adapt DNNs and map users, so that we fulfill latency SLOs while maximizing the overall inference accuracy. Our experiments based on a prototype implementation and real-world WiFi and LTE network traces show that Jellyfish can meet latency SLOs at around the 99th percentile while maintaining high accuracy.
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