基于盆景算法的资源约束边缘设备机器学习

Soumyalatha Naveen, Manjunath R. Kounte
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引用次数: 5

摘要

在世界范围内,数十亿的设备相互连接,与周围环境互动,以收集基于上下文的数据。使用机器学习算法,智能可以整合到这些物联网(IoT)设备中,从这些数据中获得有价值的见解,以进行准确的预测。机器学习模型被部署到设备上,以便在本地做出决策。通过避免数据传输到云,这可以在几毫秒内实现快速,准确的预测,并完全适用于实时应用程序。本文利用公开的数据集,采用盆景算法进行实验。该算法在python 2.7内核处理器的Linux环境下实现,模型大小为6.25KB,准确率达到92%,可以轻松部署在资源受限的物联网设备上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning at Resource Constraint Edge Device Using Bonsai Algorithm
In the worldwide billions of devices connected each other to interact with the surrounding environment to collect the data based on the context. Using machine learning algorithm intelligence can be incorporated in these Internet of Things (IoT) devices to get valuable insights from these data for accurate predictions. Machine learning model is deployed onto the devices for making the decisions locally. This enables fast, accurate prediction within few milliseconds by evading data transmission to the cloud and makes perfectly applicable for real time applications. In this paper, the experiment is conducted with publicly available dataset with Bonsai algorithm. This algorithm is implemented in Linux environment with core is processor in python 2.7 and achieved 92% accuracy with model size of 6.25KB, which can be easily deployed on resource constraint IoT devices.
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