On the sustainability of deep learning projects: Maintainers' perspective

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING Journal of Software-Evolution and Process Pub Date : 2023-12-13 DOI:10.1002/smr.2645
Junxiao Han, Jiakun Liu, David Lo, Chen Zhi, Yishan Chen, Shuiguang Deng
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Abstract

Deep learning (DL) techniques have grown in leaps and bounds in both academia and industry over the past few years. Despite the growth of DL projects, there has been little study on how DL projects evolve, whether maintainers in this domain encounter a dramatic increase in workload and whether or not existing maintainers can guarantee the sustained development of projects. To address this gap, we perform an empirical study to investigate the sustainability of DL projects, understand maintainers' workloads and workloads growth in DL projects, and compare them with traditional open-source software (OSS) projects. In this regard, we first investigate how DL projects grow, then, understand maintainers' workload in DL projects, and explore the workload growth of maintainers as DL projects evolve. After that, we mine the relationships between maintainers' activities and the sustainability of DL projects. Eventually, we compare it with traditional OSS projects. Our study unveils that although DL projects show increasing trends in most activities, maintainers' workloads present a decreasing trend. Meanwhile, the proportion of workload maintainers conducted in DL projects is significantly lower than in traditional OSS projects. Moreover, there are positive and moderate correlations between the sustainability of DL projects and the number of maintainers' releases, pushes, and merged pull requests. Our findings shed lights that help understand maintainers' workload and growth trends in DL and traditional OSS projects and also highlight actionable directions for organizations, maintainers, and researchers.

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深度学习项目的可持续性:维护者的观点
在过去的几年里,深度学习(DL)技术在学术界和工业界都有了突飞猛进的发展。尽管深度学习项目在增长,但关于深度学习项目如何发展、该领域的维护者是否会遇到工作量的急剧增加以及现有维护者是否能够保证项目的持续发展的研究很少。为了解决这一差距,我们进行了一项实证研究,以调查DL项目的可持续性,了解DL项目中维护者的工作量和工作量增长,并将其与传统的开源软件(OSS)项目进行比较。在这方面,我们首先调查了深度学习项目是如何增长的,然后,了解了深度学习项目中维护者的工作量,并探讨了随着深度学习项目的发展维护者的工作量增长。之后,我们挖掘维护者的活动和DL项目的可持续性之间的关系。最后,我们将其与传统的OSS项目进行比较。我们的研究表明,尽管DL项目在大多数活动中显示出增加的趋势,但维护人员的工作量呈现出减少的趋势。同时,在DL项目中进行工作量维护的比例明显低于传统OSS项目。此外,DL项目的可持续性与维护者的发布、推送和合并的拉取请求的数量之间存在正相关和适度相关。我们的发现有助于理解DL和传统OSS项目中维护者的工作量和增长趋势,同时也为组织、维护者和研究人员强调了可操作的方向。
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Journal of Software-Evolution and Process
Journal of Software-Evolution and Process COMPUTER SCIENCE, SOFTWARE ENGINEERING-
自引率
10.00%
发文量
109
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