Large Data Processing for Cloud Service Collaborative Authenticity Computing Model

Sagar Ramesh Pujar, Raghavendra Vijay Patil, Vivek Sharma S, Srikanth M S
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Abstract

The provision of a highly secure service is by far the most important responsibility of any cloud computing network. Users are able to entrust cloud data centers with their most sensitive data and computing operations since this phase in the cloud computing process is built on trust between users and cloud services providers. However, with the proliferation of collaborative cloud computing comes a significant obstacle in the form of the question of how to provide instant responses to a large number of client enquiries. In order to provide highly dependable services in a timely manner, tens of millions of customers' expectations must be met, and the underlying service platform must be able to efficiently and swiftly fulfil tens of thousands of service requirements automatically. The basic need for setting up a reliable and interactive cloud infrastructure is to use trust systems that are not only lightweight and speedy but also high-speed and low-cost. This paper proposes a novel and concurrent computing architecture for confidence that is centered on large data processing, and it is intended for usage in a world that relies on secure cloud infrastructure. Second, it is suggested that a distributed and scalable perceptive infrastructure for the operation of large virtual machines be built using remote monitoring agents. This infrastructure would be built using remote monitoring agents. After that, a technique for the calculation of confidence that is adaptable, lightweight, and parallel is provided for big, controlled data sets. According to what is currently known, this article is the first one to employ a disruptive and parallel computing method together with a significantly accelerated rate of confidence measurement. This enables the confidence calculation framework to be suitable for application in a large-scale cloud setting. The intended system's efficiency and effectiveness were evaluated based on the outcomes of the success review and experimental research.
面向云服务协同真实性计算模型的大数据处理
到目前为止,提供高度安全的服务是任何云计算网络最重要的责任。用户能够将其最敏感的数据和计算操作委托给云数据中心,因为云计算过程的这一阶段是建立在用户和云服务提供商之间的信任基础上的。然而,随着协作云计算的普及,出现了一个重大障碍,即如何对大量客户查询提供即时响应。为了及时提供高度可靠的服务,必须满足千万客户的期望,底层服务平台必须能够高效、快速地自动完成数万条服务需求。建立可靠的交互式云基础设施的基本需求是使用信任系统,这些系统不仅轻量级和快速,而且高速和低成本。本文提出了一种以大数据处理为中心的新型并发计算体系结构,旨在用于依赖安全云基础设施的世界。其次,建议使用远程监控代理构建用于大型虚拟机操作的分布式可伸缩感知基础设施。该基础设施将使用远程监控代理构建。然后,为大型受控数据集提供了一种适应性强、轻量级且并行的置信度计算技术。据目前所知,本文首次采用破坏性并行计算方法,并显著加快了置信度测量的速度。这使得置信度计算框架适用于大规模云环境中的应用。基于成功评审和实验研究的结果,对预期系统的效率和有效性进行了评估。
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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