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Edge-adaptable serverless acceleration for machine learning Internet of Things applications

机译:用于机器学习内容的边缘适应的无服务器加速度

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Serverless computing is an emerging event-driven programming model that accelerates the development and deployment of scalable web services on cloud computing systems. Though widely integrated with the public cloud, serverless computing use is nascent for edge-based, Internet of Things (IoT) deployments. In this work, we present STOIC (serverless teleoperable hybrid cloud), an IoT application deployment and offloading system that extends the serverless model in three ways. First, STOIC adopts a dynamic feedback control mechanism to precisely predict latency and dispatch workloads uniformly across edge and cloud systems using a distributed serverless framework. Second, STOIC leverages hardware acceleration (e.g., GPU resources) for serverless function execution when available from the underlying cloud system. Third, STOIC can be configured in multiple ways to overcome deployment variability associated with public cloud use. We overview the design and implementation of STOIC and empirically evaluate it using real-world machine learning applications and multitier IoT deployments (edge and cloud). Specifically, we show that STOIC can be used for training image processing workloads (for object recognition)-once thought too resource-intensive for edge deployments. We find that STOIC reduces overall execution time (response latency) and achieves placement accuracy that ranges from 92% to 97%.
机译:无操作系统计算是一个新兴的事件驱动编程模型,可加快云计算系统上可扩展Web服务的开发和部署。虽然与公共云广泛集成,但是无服务器计算使用是基于边缘的,事物Internet(IoT)部署的新生。在这项工作中,我们呈现了StoO(无服务器远程混合云),IOT应用程序部署和卸载系统,以三种方式扩展无服务型号。首先,StoO采用动态反馈控制机制,在使用分布式无法框架的边缘和云系统均匀地预测延迟和调度工作负载。其次,当从底层云系统中可用时,驻扎利用硬件加速(例如,GPU资源),无服务器函数执行。第三,可以以多种方式配置STOOD以克服与公共云使用相关的部署可变性。我们概述了StoO的设计和实现,并使用实际机器学习应用程序和多层IOT部署(Edge和Cloud)来验证它的设计和实现。具体而言,我们表明Stoo可以用于训练图像处理工作负载(用于对象识别) - 致以考虑的边缘部署的资源密集型。我们发现支持整体执行时间(响应延迟),并实现了92%到97%的放置精度。

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