ALGORITMOS SUPERVISADOS PARA LA PREDICCIÓN DEL ANCHO DE BANDA DE LAS APLICACIONES EN AMAZON WEB SERVICE DESDE UNA PYME RURAL

RAMIRO OSORIO DIAZ, MARTHA YANETH SEGURA RUIZ, MAURICIO A LONSO VILLALBA
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Abstract

This article presents a methodology to measure the bandwidth behaviour by making predictions of the network traffic that connects to the cloud in small and medium enterprises in rural areas with difficult access in Colombia, in order to optimize network resources over time and ensure the quality of service in web applications. A comparative study of three neural network algorithms that model a multilayer neural network is performed, selecting the one that has a minimum error that approaches zero; the selected algorithm is trained from a data source to predict the network traffic that connects to the cloud.It is necessary to analyse network behaviour to ensure the quality of web applications in the cloud that transmit information such as data, images, sound, video, etc., some in real time, and that generate large volumes of traffic. Understanding the traffic flowing through the network enables network capacity planning when managing limited resources, such as in the case of small and medium-sized enterprises in rural areas. As a product of the research analysis, a free software prototype will be developed to perform the measurements and predictions in rural areas. The results of the implementation show that the proposed approach is superior to other forecasting methods in terms of accuracy and predictability.
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来自农村中小企业的AMAZON WEB SERVICE应用程序带宽预测的监督算法
本文介绍了一种测量带宽行为的方法,通过对哥伦比亚农村地区难以访问的中小型企业连接到云的网络流量进行预测,以便随着时间的推移优化网络资源并确保web应用程序的服务质量。对三种神经网络算法进行了比较研究,选择了误差最小且接近于零的神经网络算法;所选算法从数据源中进行训练,以预测连接到云的网络流量。有必要对网络行为进行分析,以确保云中的web应用程序的质量,这些应用程序传输数据、图像、声音、视频等信息,有些是实时的,并且产生大量流量。了解网络中流量的流向,可以在资源有限的情况下进行网络容量规划,如农村中小企业。作为研究分析的成果,将开发一个免费的软件原型,用于在农村地区进行测量和预测。实施结果表明,该方法在精度和可预测性方面优于其他预测方法。
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ALGORITMOS SUPERVISADOS PARA LA PREDICCIÓN DEL ANCHO DE BANDA DE LAS APLICACIONES EN AMAZON WEB SERVICE DESDE UNA PYME RURAL CARACTERIZACIÓN DE LAS PLATAFORMAS AUTOMATION ANYWHERE Y UIPATH PARA LA IMPLEMENTACIÓN DE RPA ENTRE LO MODERNO Y LO TRADICIONAL: RELATO DE UNA EXPERIENCIA DE APRENDIZAJE EN PROGRAMACIÓN DE COMPUTADORES UNA APLICACIÓN DEL MODELO PROBIT SOBRE EL EFECTO VECINDARIO EN ENTORNOS EDUCATIVOS FACTORES DE RIESGO BIOMECÁNICO EN LA PERCEPCIÓN DE LA CALIDAD DE VIDA LABORAL DE LOS TRABAJADORES DE UNA EMPRESA DE SERVICIOS GENERALES
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