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Barriers to big data analytics in manufacturing supply chains: A case study from Bangladesh

机译:制造业供应链中大数据分析的障碍:孟加拉国的案例研究

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Recently, big data (BD) has attracted researchers and practitioners due to its potential usefulness in decision-making processes. Big data analytics (BDA) is becoming increasingly popular among manufacturing companies as it helps gain insights and make decisions based on BD. However, there many barriers to the adoption of BDA in manufacturing supply chains. It is therefore necessary for manufacturing companies to identify and examine the nature of each barrier. Previous studies have mostly built conceptual frameworks for BDA in a given situation and have ignored examining the nature of the barriers to BDA. Due to the significance of both BD and BDA, this research aims to identify and examine the critical barriers to the adoption of BDA in manufacturing supply chains in the context of Bangladesh. This research explores the existing body of knowledge by examining these barriers using a Delphi-based analytic hierarchy process (AHP). Data were obtained from five Bangladeshi manufacturing companies. The findings of this research are as follows: (i) data-related barriers are most important, (ii) technology-related barriers are second, and (iii) the five most important components of these barriers are (a) lack of infrastructure, (b) complexity of data integration, (c) data privacy, (d) lack of availability of BDA tools and (e) high cost of investment. The findings can assist industrial managers to understand the actual nature of the barriers and potential benefits of using BDA and to make policy regarding BDA adoption in manufacturing supply chains. A sensitivity analysis was carried out to justify the robustness of the barrier rankings.
机译:最近,大数据(BD)由于其在决策过程中的潜在用途而吸引了研究人员和从业人员。大数据分析(BDA)在制造业公司中变得越来越受欢迎,因为它有助于获取洞察力并根据BD做出决策。但是,在制造业供应链中采用BDA面临许多障碍。因此,制造公司有必要识别并检查每个障碍的性质。先前的研究大多在给定情况下为BDA建立了概念框架,而忽略了检查BDA障碍的性质。鉴于BD和BDA的重要性,本研究旨在确定和检验孟加拉国在制造业供应链中采用BDA的主要障碍。这项研究通过使用基于Delphi的层次分析法(AHP)来检查这些障碍,从而探索了现有的知识体系。数据来自五个孟加拉国制造公司。这项研究的结果如下:(i)与数据相关的障碍是最重要的,(ii)与技术相关的障碍是第二,并且(iii)这些障碍的五个最重要的组成部分是(a)缺乏基础设施, (b)数据集成的复杂性,(c)数据隐私,(d)缺乏BDA工具的可用性,以及(e)高投资成本。这些发现可以帮助工业管理者了解使用BDA的障碍的实际性质和潜在利益,并制定有关在制造供应链中采用BDA的政策。进行了敏感性分析以证明障碍物等级的稳健性。

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