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Human resources for Big Data professions: A systematic classification of job roles and required skill sets

机译:大数据行业的人力资源:工作角色和所需技能的系统分类

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摘要

The rapid expansion of Big Data Analytics is forcing companies to rethink their Human Resource (HR) needs. However, at the same time, it is unclear which types of job roles and skills constitute this area. To this end, this study pursues to drive clarity across the heterogeneous nature of skills required in Big Data professions, by analyzing a large amount of real-world job posts published online. More precisely we: 1) identify four Big Data 'job families'; 2) recognize nine homogeneous groups of Big Data skills (skill sets) that are being demanded by companies; 3) characterize each job family with the appropriate level of competence required within each Big Data skill set. We propose a novel, semi-automated, fully replicable, analytical methodology based on a combination of machine learning algorithms and expert judgement. Our analysis leverages a significant amount of online job posts, obtained through web scraping, to generate an intelligible classification of job roles and skill sets. The results can support business leaders and HR managers in establishing clear strategies for the acquisition and the development of the right skills needed to leverage Big Data at best. Moreover, the structured classification of job families and skill sets will help establish a common dictionary to be used by HR recruiters and education providers, so that supply and demand can more effectively meet in the job marketplace. (C) 2017 Elsevier Ltd. All rights reserved.
机译:大数据分析的快速扩展正迫使企业重新考虑其人力资源(HR)需求。但是,同时,尚不清楚哪种类型的工作角色和技能构成了该领域。为此,本研究旨在通过分析在线发布的大量现实工作职位,来提高大数据专业所需技能的异质性的清晰度。更准确地说,我们:1)确定四个大数据“工作家庭”; 2)识别公司要求的九种同类的大数据技能(技能组); 3)用每个大数据技能要求的适当水平的能力来表征每个工作家庭。我们提出了一种新颖的,半自动化的,完全可复制的,基于机器学习算法和专家判断能力的分析方法。我们的分析利用了通过网络抓取获得的大量在线工作职位,以产生对工作角色和技能集的可理解分类。结果可以支持业务领导者和人力资源经理制定清晰的战略,以获取和开发最佳技能,以充分利用大数据。此外,对工作族和技能集的结构化分类将有助于建立可供人力资源招聘人员和教育提供者使用的通用词典,从而使供求可以更有效地满足工作市场。 (C)2017 Elsevier Ltd.保留所有权利。

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