PRICELESS: Privacy enhanced AI-driven scalable framework for IoT applications in serverless edge computing environments

IF 0.5 Q4 TELECOMMUNICATIONS Internet Technology Letters Pub Date : 2024-02-14 DOI:10.1002/itl2.510
Muhammed Golec, Mustafa Golec, Minxian Xu, Huaming Wu, Sukhpal Singh Gill, Steve Uhlig
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Abstract

Serverless edge computing has emerged as a new paradigm that integrates the serverless and edge computing. By bringing processing power closer to the edge of the network, it provides advantages such as low latency by quickly processing data for time-sensitive Internet of Things (IoT) applications. Additionally, serverless edge computing also brings inherent problems of edge and serverless computing such as cold start, security and privacy that are still waiting to be solved. In this paper, we propose a new Blockchain-based AI-driven scalable framework called PRICELESS, to offer security and privacy in serverless edge computing environments while performing cold start prediction. In PRICELESS framework, we used deep reinforcement learning for the cold start latency prediction. For experiments, a cold start dataset is created using a heart disease risk-based IoT application and deployed using Google Cloud Functions. Experimental results show the additional delay that the blockchain module brings to cold start latency and its impact on cold start prediction performance. Additionally, the performance of PRICELESS is compared with the current state-of-the-art method based on energy cost, computation time and cold start prediction. Specifically, it has been observed that PRICELESS causes 19 ms of external latency, 358.2 watts for training, and 3.6 watts for prediction operations, resulting in additional energy consumption at the expense of security and privacy.

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PRICELESS:无服务器边缘计算环境中物联网应用的隐私增强型人工智能驱动可扩展框架
无服务器边缘计算是一种整合了无服务器和边缘计算的新模式。通过将处理能力更靠近网络边缘,它可以为时间敏感的物联网(IoT)应用快速处理数据,从而提供低延迟等优势。此外,无服务器边缘计算也带来了边缘计算和无服务器计算固有的问题,如冷启动、安全和隐私等,这些问题仍有待解决。在本文中,我们提出了一种基于区块链的新型人工智能驱动可扩展框架--PRICELESS,以在无服务器边缘计算环境中提供安全和隐私保护,同时进行冷启动预测。在 PRICELESS 框架中,我们使用深度强化学习进行冷启动延迟预测。在实验中,我们使用基于心脏病风险的物联网应用创建了冷启动数据集,并使用谷歌云函数进行了部署。实验结果显示了区块链模块给冷启动延迟带来的额外延迟及其对冷启动预测性能的影响。此外,基于能源成本、计算时间和冷启动预测,PRICELESS 的性能与当前最先进的方法进行了比较。具体而言,我们观察到 PRICELESS 会导致 19 毫秒的外部延迟、358.2 瓦的训练功耗和 3.6 瓦的预测操作功耗,从而以牺牲安全性和隐私性为代价增加能耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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