论文标题

朝向带有流管线的设备AI的设备AI中

Toward Among-Device AI from On-Device AI with Stream Pipelines

论文作者

Ham, MyungJoo, Woo, Sangjung, Jung, Jaeyun, Song, Wook, Jang, Gichan, Ahn, Yongjoo, Ahn, Hyoung Joo

论文摘要

现代消费电子设备通常会提供深层神经网络的情报服务。我们已经开始将智能服务的计算位置从云服务器(传统AI系统)迁移到相应的设备(On Device AI系统)。机上AI系统通常具有保留隐私,消除网络延迟和节省云成本的优势。随着启动的设备AI系统具有相对较低的计算能力,不一致和不同的硬件资源和功能构成了困难。作者的隶属关系已开始应用流管线框架NNStreamer,用于设备AI系统,节省开发成本和硬件资源并提高性能。我们希望使用隶属关系和第二/第三方的设备AI服务产品扩​​展设备和应用程序的类型。我们还希望在任意供应商的连接设备之间共享每个AI服务原子,并重新部署并共享;现在,我们已经介绍了另一种一直以来一直介绍的要求。 “设备AI之间”的新要求包括AI管道之间的连接性,因此无论供应商和制造商如何,它们都可以在各种设备上共享计算资源和硬件功能。我们提出了device AI的流管线框架NNStreamer的扩展,以便NNStreamer可以提供设备AI功能。这项工作是Linux基金会(LF AI和数据)开源项目,接受了公众的贡献。

Modern consumer electronic devices often provide intelligence services with deep neural networks. We have started migrating the computing locations of intelligence services from cloud servers (traditional AI systems) to the corresponding devices (on-device AI systems). On-device AI systems generally have the advantages of preserving privacy, removing network latency, and saving cloud costs. With the emergent of on-device AI systems having relatively low computing power, the inconsistent and varying hardware resources and capabilities pose difficulties. Authors' affiliation has started applying a stream pipeline framework, NNStreamer, for on-device AI systems, saving developmental costs and hardware resources and improving performance. We want to expand the types of devices and applications with on-device AI services products of both the affiliation and second/third parties. We also want to make each AI service atomic, re-deployable, and shared among connected devices of arbitrary vendors; we now have yet another requirement introduced as it always has been. The new requirement of "among-device AI" includes connectivity between AI pipelines so that they may share computing resources and hardware capabilities across a wide range of devices regardless of vendors and manufacturers. We propose extensions of the stream pipeline framework, NNStreamer, for on-device AI so that NNStreamer may provide among-device AI capability. This work is a Linux Foundation (LF AI and Data) open source project accepting contributions from the general public.

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