Trends and Challenges Towards Effective Data-Driven Decision Making in UK Small and Medium-Sized Enterprises: Case Studies and Lessons Learnt from the Analysis of 85 Small and Medium-Sized Enterprises

Abdel-Rahman H. Tawil, Muhidin Mohamed, Xavier Schmoor, Konstantinos Vlachos, Diana Haidar
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Abstract

The adoption of data science brings vast benefits to Small and Medium-sized Enterprises (SMEs) including business productivity, economic growth, innovation and job creation. Data science can support SMEs to optimise production processes, anticipate customers’ needs, predict machinery failures and deliver efficient smart services. Businesses can also harness the power of artificial intelligence (AI) and big data, and the smart use of digital technologies to enhance productivity and performance, paving the way for innovation. However, integrating data science decisions into an SME requires both skills and IT investments. In most cases, such expenses are beyond the means of SMEs due to their limited resources and restricted access to financing. This paper presents trends and challenges towards effective data-driven decision making for organisations based on a 3-year long study which covered more than 85 UK SMEs, mostly from the West Midlands region of England. In particular, this study attempts to find answers to several key research questions around data science and AI adoption among UK SMEs, and the advantages of digitalisation and data-driven decision making, as well as the challenges hindering their effective utilisation of these technologies. We also present two case studies that demonstrate the potential of digitisation and data science, and use these as examples to unveil challenges and showcase the wealth of currently available opportunities for SMEs.
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英国中小企业实现有效数据驱动决策的趋势和挑战:对 85 家中小企业的案例研究和经验教训分析
数据科学的应用为中小企业(SMEs)带来了巨大的利益,包括企业生产力、经济增长、创新和创造就业机会。数据科学可以帮助中小企业优化生产流程、预测客户需求、预测机器故障并提供高效的智能服务。企业还可以利用人工智能(AI)和大数据的力量,以及数字技术的智能使用来提高生产力和绩效,为创新铺平道路。然而,将数据科学决策融入中小企业需要技能和信息技术投资。在大多数情况下,由于中小企业资源有限,融资渠道受限,这些费用超出了它们的承受能力。本文基于一项长达 3 年的研究,介绍了企业在有效数据驱动决策方面的趋势和挑战,该研究涵盖了超过 85 家英国中小企业,其中大部分来自英格兰西米德兰兹地区。特别是,本研究试图找到英国中小企业采用数据科学和人工智能的几个关键研究问题的答案,以及数字化和数据驱动决策的优势和阻碍它们有效利用这些技术的挑战。我们还介绍了两个案例研究,展示了数字化和数据科学的潜力,并以此为例揭示了中小企业面临的挑战,展示了当前存在的大量机遇。
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