Towards edge-caching for image recognition

Utsav Drolia, Katherine Guo, Jiaqi Tan, R. Gandhi, P. Narasimhan
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引用次数: 7

Abstract

With the available sensors on mobile devices and their improved CPU and storage capability, users expect their devices to recognize the surrounding environment and to provide relevant information and/or content automatically and immediately. For such classes of real-time applications, user perception of performance is key. To enable a truly seamless experience for the user, responses to requests need to be provided with minimal user-perceived latency. Current state-of-the-art systems for these applications require offloading requests and data to the cloud. This paper proposes an approach to allow users' devices and their onboard applications to leverage resources closer to home, i.e., resources at the edge of the network. We propose to use edge-servers as specialized caches for image-recognition applications. We develop a detailed formula for the expected latency for such a cache that incorporates the effects of recognition algorithms' computation time and accuracy. We show that, counter-intuitively, large cache sizes can lead to higher latencies. To the best of our knowledge, this is the first work that models edge-servers as caches for compute-intensive recognition applications.
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面向图像识别的边缘缓存
随着移动设备上可用的传感器及其改进的CPU和存储能力,用户希望他们的设备能够识别周围环境,并自动立即提供相关信息和/或内容。对于这类实时应用程序,用户对性能的感知是关键。为了为用户提供真正无缝的体验,需要以最小的用户感知延迟提供请求响应。目前用于这些应用程序的最先进系统需要将请求和数据卸载到云。本文提出了一种方法,允许用户的设备及其机载应用程序利用离家更近的资源,即网络边缘的资源。我们建议使用边缘服务器作为图像识别应用程序的专用缓存。我们为这种缓存开发了一个详细的预期延迟公式,该公式结合了识别算法的计算时间和准确性的影响。我们表明,与直觉相反,大的缓存大小可能导致更高的延迟。据我们所知,这是第一个将边缘服务器建模为计算密集型识别应用程序的缓存的工作。
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