Towards the evaluation of a big data-as-a-service model: A decision theoretic approach

Georgios Skourletopoulos, C. Mavromoustakis, P. Chatzimisios, G. Mastorakis, E. Pallis, J. M. Batalla
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引用次数: 18

Abstract

The rise of large data centers has created new business models, where businesses can lease storage and computing capacity and pay only for the storage they actually use, rather than making the large capital investments needed to construct and provision large-scale computer installations. In this context, investments in big-data computing are rapidly gaining ground, having extraordinary near-term and long-term benefits. The mobile cloud can be considered as a marketplace, where the storage and computing capabilities of the mobile cloud-based system architectures can be leased off. However, cloud storage is not less expensive, only that it incurs operating rather than capital expenses. This paper elaborates on a novel cost analysis model, adopting a non-linear and asymmetric approach. The proposed modelling aims to evaluate the adoption of a big data-as-a-service business model against the traditional high-performance data warehouse appliances that exist in the market in order to inform effective and strategic decision making. The lease of cloud storage is investigated, when developing the mathematical formulas, and the research approach is examined with respect to the cost that derives from the unused storage. Possible upgradation of the storage and the risk of entering into new and accumulated costs in the future are also considered in this study. A quantification tool has been also developed as a proof of concept (PoC), implementing the proposed quantitative model and intending to shed light on the adoption of big data-as-a-service business models.
面向大数据即服务模型的评估:决策理论方法
大型数据中心的兴起创造了新的商业模式,企业可以租用存储和计算能力,只需为他们实际使用的存储付费,而不必进行建设和提供大型计算机安装所需的大量资本投资。在这种背景下,对大数据计算的投资正在迅速取得进展,具有非凡的近期和长期效益。可以将移动云视为一个市场,在这个市场中,可以出租基于移动云的系统架构的存储和计算能力。然而,云存储并不便宜,只是它会产生运营费用而不是资本费用。本文阐述了一种采用非线性和非对称方法的新型成本分析模型。建议的建模旨在评估大数据即服务业务模型的采用情况,以对比市场上现有的传统高性能数据仓库设备,从而为有效的战略决策提供信息。在开发数学公式时,对云存储的租赁进行了研究,并对未使用存储的成本进行了研究。本研究还考虑了存储可能升级的风险以及未来进入新的和累积的成本。还开发了一种量化工具作为概念验证(PoC),用于实施拟议的定量模型,并旨在阐明采用大数据即服务的业务模型。
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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