Enhanced Partitioning of DNN Layers for Uploading from Mobile Devices to Edge Servers

K. Shin, H. Jeong, Soo-Mook Moon
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引用次数: 15

Abstract

Offloading computations to servers is a promising method for resource constrained devices to run deep neural network (DNN). It often requires pre-installing DNN models at the server, which is not a valid assumption in an edge server environment where a client can offload to any nearby server, especially when it is on the move. So, the client needs to upload the DNN model on demand, but uploading the entire layers at once can seriously delay the offloading of the DNN queries due to its high overhead. IONN is a technique to partition the layers and upload them incrementally for fast start of offloading [1]. It partitions the DNN layers using the shortest path on a DNN execution graph between the client and the server based on a penalty factor for the uploading overhead. This paper proposes a new partition algorithm based on efficiency, which generates a more fine-grained uploading plan. Experimental results show that the proposed algorithm tangibly improves the query performance during uploading by as much as 55%, with faster execution of initially-raised queries.
从移动设备上传到边缘服务器的增强DNN层划分
对于资源受限的设备,将计算任务转移到服务器上是一种很有前途的深度神经网络运行方法。它通常需要在服务器上预先安装DNN模型,这在边缘服务器环境中不是一个有效的假设,因为客户机可以将负载卸载到附近的任何服务器上,特别是当它在移动时。因此,客户端需要按需上传DNN模型,但是一次上传整个层会严重延迟DNN查询的卸载,因为它的开销很高。IONN是一种对层进行分区并增量上传以快速启动卸载的技术[1]。它根据上传开销的惩罚因子,在客户端和服务器之间使用DNN执行图上的最短路径来划分DNN层。本文提出了一种新的基于效率的分区算法,该算法生成了更细粒度的上传计划。实验结果表明,该算法在上传过程中的查询性能明显提高了55%,初始查询的执行速度更快。
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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