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To Improve Service Reliability for AI-Powered Time-Critical Services Using Imperfect Transmission in MEC: An Experimental Study

机译:为了提高使用MEC中的不完美传输的AI供电时间关键服务的服务可靠性:实验研究

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摘要

The emerging time-critical Internet-of-Things (IoT) use cases, e.g., augmented reality, virtual reality, autonomous vehicle, etc., involve computation-intensive tasks powered by artificial intelligence (AI) techniques. Due to the limited computation resource at IoT devices, it is challenging to fulfill the latency and reliability requirements. Offloading computation tasks using mobile-edge computing (MEC) are a promising solution. The service reliability in AI-powered time-critical services can be modeled by the transmission reliability, timeout probability, and inference accuracy. To improve service reliability, the state-of-the-art work emphasizes on transmission reliability and requires error-free transmission. We show that the AI-powered time-critical services can tolerate small image distortion and still remain the inference accuracy. Therefore, to improve service reliability, it is more important to minimize the timeout probability by shortening transmission latency than perfect error-free transmission. Motivated by this insight, we study the feasibility of user datagram protocol (UDP)-based offloading for such services in the MEC system. A prototype is developed and a series of experiments are conducted to understand how image distortion affects inference accuracy. We measure the latency and transmission reliability of transmission control protocol (TCP)-based and UDP-based offloading in real-life environments and evaluate the service reliability both experimentally and numerically. The evaluation results demonstrate that compared with the TCP-based offloading, the UDP-based offloading can improve the normalized service reliability by up to 70% for time-critical services. In addition, we propose an early termination of image reception (ETR) offloading scheme which can further improve the normalized service reliability by up to 10%, compared with the baseline UDP-based scheme.
机译:新出现的时间关键互联网(物联网)用例,例如增强现实,虚拟现实,自主车辆等涉及由人工智能(AI)技术提供支持的计算密集型任务。由于IOT设备的计算资源有限,符合延迟和可靠性要求有挑战性。使用Mobile-Edge Computing(MEC)卸载计算任务是一个有前途的解决方案。 AI供电的时间关键服务中的服务可靠性可以通过传输可靠性,超时概率和推理准确性建模。为了提高服务可靠性,最先进的工作强调传输可靠性并需要无差错传输。我们表明AI供电的时间关键服务可以容忍小图像失真,并且仍然保持推理精度。因此,为了提高服务可靠性,更重要的是通过缩短传输延迟而不是完美的无差错传输来最小化超时概率。通过这种洞察力,我们研究了在MEC系统中为这些服务的卸载的用户数据报协议(UDP)的可行性。开发了原型,并进行了一系列实验以了解图像失真如何影响推理准确性。我们测量传输控制协议(TCP)的延迟和传输可靠性 - 基于现实环境中的基于UDP的卸载,并在实验和数字上评估服务可靠性。评估结果表明,与基于TCP的卸载相比,基于UDP的卸载可以将归一化服务可靠性提高至多70%,以进行时间关键服务。此外,我们提出了图像接收(ETR)卸载方案的早期终止,与基于基于基线UDP的方案相比,可以进一步将标准化的服务可靠性提高至10%。

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