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Data Science Methodologies: Current Challenges and Future Approaches

机译:数据科学方法:目前的挑战和未来的方法

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Data science has employed great research efforts in developing advanced analytics, improving data models and cultivating new algorithms. However, not many authors have come across the organizational and socio-technical challenges that arise when executing a data science project: lack of vision and clear objectives, a biased emphasis on technical issues, a low level of maturity for ad-hoc projects and the ambiguity of roles in data science are among these challenges. Few methodologies have been proposed on the literature that tackle these type of challenges, some of them date back to the mid-1990, and consequently they are not updated to the current paradigm and the latest developments in big data and machine learning technologies. In addition, fewer methodologies offer a complete guideline across team, project and data & information management. In this article we would like to explore the necessity of developing a more holistic approach for carrying out data science projects. We first review methodologies that have been presented on the literature to work on data science projects and classify them according to the their focus: project, team, data and information management. Finally, we propose a conceptual framework containing general characteristics that a methodology for managing data science projects with a holistic point of view should have. This framework can be used by other researchers as a roadmap for the design of new data science methodologies or the updating of existing ones. (C) 2021 Elsevier Inc. All rights reserved.
机译:数据科学在开发先进的分析方面采用了巨大的研究努力,改善了数据模型和培养新算法。然而,在执行数据科学项目时出现的组织和社会技术挑战并不是许多作者:缺乏愿景和明确的目标,对技术问题的偏见强调,适用于临时项目的低成熟度数据科学中角色的歧义是这些挑战。在解决这些类型的挑战的文献中提出了很少的方法,其中一些日期回到1990年中期,因此他们没有更新到当前的范式和大数据和机器学习技术的最新发展。此外,更少的方法可以在团队,项目和数据和信息管理方面提供完整的指导。在本文中,我们希望探讨开发更全面的探索数据科学项目的方法的必要性。我们首先审查文献中介绍的方法,以便根据其重点:项目,团队,数据和信息管理对其进行分类。最后,我们提出了一种概念框架,其中包含一种具有全面观点的数据科学项目的方法的一般特征应该具有。此框架可以由其他研究人员用作设计新数据科学方法的路线图或现有数据的更新。 (c)2021 Elsevier Inc.保留所有权利。

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