Comparative Study on Various Storage Optimisation Techniques in Machine Learning based Cloud Computing System

Jyoti L. Bangare, Dhiraj Kapila, Pallavi Nehete, S. Malwade, K. Sankar, Samrat Ray
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引用次数: 3

Abstract

Cloud computing is gaining more popularity in various industries as it enables in creating better services to different individuals, companies and government. With the progressive aspect on the concept, it offers flexible solutions to the growing computing problems related to infrastructure, application and other aspects. Cloud computing enables in minimizing the investments on IT infrastructure as it offers better and extensive support in saving various data and information of the companies, government and individuals, enable in retrieving them as and when required. Through the application of cloud computing the users received better and reliable services from the service providers which enables in reducing the investments, optimizing the cost and enable in enhancing products of the company in the long run. The cloud computing is taking better aspects and is considered as the paramount aspect for the business and individuals. This study is more focused in making a comparative understanding in the optimization techniques using machine learning based cloud computing systems. This research is more focused in analysing the application of machine learning as a key technique which can be applied in order to estimate the request patterns of the clients related to cloud storage. The research further focuses on the machine learning techniques covering linear regression model, Artificial neural networks, Support vector machines etc. are being explored in order to understand the optimization techniques for services the users in a better manner. The research applies questionnaire method for collecting the information and extensive analysis using SPSS is applied for analysing the data.
基于机器学习的云计算系统中各种存储优化技术的比较研究
云计算在各行各业越来越受欢迎,因为它可以为不同的个人、公司和政府创建更好的服务。随着概念的渐进式发展,它为日益增长的与基础设施、应用程序等方面相关的计算问题提供了灵活的解决方案。云计算可以最大限度地减少对IT基础设施的投资,因为它在保存公司、政府和个人的各种数据和信息方面提供了更好和广泛的支持,并可以在需要时检索它们。通过云计算的应用,用户可以从服务提供商那里获得更好、更可靠的服务,从而减少投资,优化成本,从长远来看可以提升公司的产品。云计算正在呈现出更好的一面,被认为是企业和个人最重要的方面。本研究更侧重于使用基于机器学习的云计算系统对优化技术进行比较理解。本研究更侧重于分析机器学习作为一项关键技术的应用,该技术可用于估计与云存储相关的客户端的请求模式。为了更好地了解为用户服务的优化技术,我们进一步研究了包括线性回归模型、人工神经网络、支持向量机等在内的机器学习技术。本研究采用问卷调查法收集资料,并采用SPSS进行广泛分析,分析数据。
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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