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Task offloading in edge computing for machine learning-based smart healthcare

机译:基于机器学习的智能医疗保健的边缘计算任务卸载

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Recent advances in networking and mobile technologies such as 5G, long-term evolution (LTE), LiFi, wireless broadband (WiBro), WiFi-Direct, Bluetooth Low Energy (BLE) have paved the way for intelligent and smart services. With an average of more than 6.5 devices per person, a plethora of applications are being developed especially related to healthcare. Although, current edge devices such as smartphone and smartwatch are becoming increasingly more powerful and more affordable, there are certain tasks such as those involving machine learning that require higher computational resources, thereby resulting in higher energy consumption in the case of edge devices. Offloading tasks to co-located edge nodes such as fog (a cloud-like localized, smaller resource pool), or a femto-cloud (integration of multiple edge nodes) is one viable solution to address the issues such as performing compute-intensive tasks, and managing energy consumption. The outbreak of coronavirus disease 2019 (COVID-19) and becoming a pandemic has also made a case for edge computing (involving smartphone, wearables, health sensors) for the detection of symptoms to quarantine potential carriers of the virus. We focus on how various forms of smart and opportunistic healthcare (oHealth) can be provided by leveraging edge computing that makes use of a machine learning-based approach. We apply k-nearest neighbors (kNN), naive Bayes (NB), and support vector classification (SVC) algorithms on real data trace for the healthcare and safety-related scenarios we considered. The empirical results obtained provide useful insights into machine learning-based task offloading in edge computing.
机译:网络和移动技术的最新进展,如5G,长期演进(LTE),LIFI,无线宽带(WIBRO),WiFi直接,蓝牙低能量(BLE)已经为智能和智能服务铺平了道路。平均每人平均超过6.5个设备,普遍的申请尤其与医疗保健有关。虽然,智能手机和SmartWatch等当前的边缘设备变得越来越强大,更实惠,但有一些任务,例如涉及需要更高计算资源的机器学习的任务,从而在边缘设备的情况下导致更高的能量消耗。将任务卸载到共同定位的边缘节点,例如雾(类似云定型,较小的资源池),或毫微微云(多个边缘节点的集成)是一个可行的解决方案,以解决执行Compute密集型任务等问题,并管理能源消耗。 2019年冠状病毒疾病(Covid-19)爆发并成为大流行病的案例还为边缘计算(涉及智能手机,可穿戴物,健康传感器)进行检测到检疫病毒的潜在载体的症状。我们专注于如何通过利用基于机器学习方法的边缘计算来提供各种形式的智能和机会主义医疗保健(OPECHEATIC)。我们在我们考虑的医疗保健和安全相关场景的实际数据轨迹上申请K-Colless邻居(knn),天真贝叶斯(NB),并支持矢量分类(SVC)算法。获得的经验结果为在边缘计算中的机器学习任务中提供了有用的见解。

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