位置变量对超大规模数据中心资本支出建模和预测的影响

David King
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引用次数: 0

摘要

数字时代和互联网的增长每年都呈指数级增长,这就产生了对容纳和存储所产生数据的设施的需求。生成的数据示例包括图像、电影库(如Netflix和Prime Video)以及互联网搜索数据。存储这些信息的设施是数据中心。数据中心是一个建筑物(或建筑物内的独立单元),用于容纳服务器等计算设备以及电信、网络和存储系统等相关组件。这种需求的增长要求数据中心提供商在很短的时间内扩展到新的国家。研究设计研究设计可能会使用实证主义范式和演绎方法,结合预测理论和行动研究理论,使用多元线性回归技术。数据将通过封闭式问卷调查、公开数据和行业数据收集,并以定量方法和横断面时间线进行分析。研究结果变量将建立和分析,以了解每个变量的权重及其对资本支出的影响。研究结论期望得出一个模型,该模型使用输入位置变量来预测超大规模数据中心建设的资本支出。这将有利于数据中心所有者、开发人员和基金提供商在评估超大规模数据中心选址投资所需的资本支出价值时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The impact of location variables on the modelling and forecasting of capital expenditure for hyperscale datacenters
The digital age and the growth of the internet is increasing exponentially each year, this has created a need for facilities to house and store the data generated. Examples of the data generated are such items such as images, film libraries such as Netflix and Prime Video along withinternet search data. The facility to house this information is a data center. A data centeris a building (or self-contained unit within a building) used to house computing equipment such as servers along with associated components such as telecommunications, network and storage systems. This growth in demand has required data centerproviders to expand into new countries, often at very short notice. Research Design The research design will likely use a positivist paradigm with a deductive approach, combining predictive theory and action research theory using a multivariate linear regression technique. The Data will be collected using closed questionnaires, publicly available data and industry data analysed in a quantitative method with a cross sectional timeline. Research Findings Variables will be established and analysed to understand the weighting of each variable and its impact on capital expenditure. Research Conclusions The conclusion is expected to be a model where input location variables are used to predict the capital expenditure for the construction of hyperscale data centers. This will benefit data centerowners, developers and fund providers when assessing the value of capital expenditure required as a decision for investment in selecting a site location fora hyperscale data center.
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