论文标题

设备培训:现有系统的第一个概述

On-device Training: A First Overview on Existing Systems

论文作者

Zhu, Shuai, Voigt, Thiemo, Ko, JeongGil, Rahimian, Fatemeh

论文摘要

机器学习(ML)和深度学习(DL)的最新突破已经催化了广泛的应用领域的各种智能系统的设计和开发。尽管大多数现有的机器学习模型都需要大量的内存和计算能力,但也努力在资源约束设备上部署某些模型。大多数早期应用系统都侧重于利用ML和DL模型的推理功能,其中通过这些模型处理了从不同移动和嵌入式传感组件捕获的数据,以实现分类和细分等应用程序目标。最近,用于ML/DL模型培训的移动和嵌入式计算资源的概念引起了人们的关注,因为(i)(i)通过本地数据进行模型训练而无需通过无线链接共享数据,从而促进了通过设计的互联网和环境适应性连接的设计,并在不连续的模型中启用了互联网的互联网,并在不连续的模型中进行了远程访问,并在不连接的情况下进行了远程访问。这项工作的目标是总结和分析最先进的系统研究,以允许这种设备模型培训功能,并从系统的角度提供对设备培训的调查。

The recent breakthroughs in machine learning (ML) and deep learning (DL) have catalyzed the design and development of various intelligent systems over wide application domains. While most existing machine learning models require large memory and computing power, efforts have been made to deploy some models on resource-constrained devices as well. A majority of the early application systems focused on exploiting the inference capabilities of ML and DL models, where data captured from different mobile and embedded sensing components are processed through these models for application goals such as classification and segmentation. More recently, the concept of exploiting the mobile and embedded computing resources for ML/DL model training has gained attention, as such capabilities allow (i) the training of models via local data without the need to share data over wireless links, thus enabling privacy-preserving computation by design, (ii) model personalization and environment adaptation, and (ii) deployment of accurate models in remote and hardly accessible locations without stable internet connectivity. This work targets to summarize and analyze state-of-the-art systems research that allows such on-device model training capabilities and provide a survey of on-device training from a systems perspective.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源