On the sustainability of deep learning projects: Maintainers' perspective

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 no...

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Main Authors: HAN, Junxiao, LIU, Jiakun, LO, David, ZHI, Chen, CHEN, Yishan, DENG, Shuiguang
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Language:English
Published: Institutional Knowledge at Singapore Management University 2023
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Online Access:https://ink.library.smu.edu.sg/sis_research/8481
https://ink.library.smu.edu.sg/context/sis_research/article/9484/viewcontent/DeepLearningProj_Maintainer_sv.pdf
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Institution: Singapore Management University
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spelling sg-smu-ink.sis_research-94842024-01-04T09:06:58Z On the sustainability of deep learning projects: Maintainers' perspective HAN, Junxiao LIU, Jiakun LO, David ZHI, Chen CHEN, Yishan DENG, Shuiguang 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. 2023-11-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/8481 info:doi/10.1002/smr.2645 https://ink.library.smu.edu.sg/context/sis_research/article/9484/viewcontent/DeepLearningProj_Maintainer_sv.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University deep learning maintainers sustainability workload Software Engineering
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic deep learning
maintainers
sustainability
workload
Software Engineering
spellingShingle deep learning
maintainers
sustainability
workload
Software Engineering
HAN, Junxiao
LIU, Jiakun
LO, David
ZHI, Chen
CHEN, Yishan
DENG, Shuiguang
On the sustainability of deep learning projects: Maintainers' perspective
description 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.
format text
author HAN, Junxiao
LIU, Jiakun
LO, David
ZHI, Chen
CHEN, Yishan
DENG, Shuiguang
author_facet HAN, Junxiao
LIU, Jiakun
LO, David
ZHI, Chen
CHEN, Yishan
DENG, Shuiguang
author_sort HAN, Junxiao
title On the sustainability of deep learning projects: Maintainers' perspective
title_short On the sustainability of deep learning projects: Maintainers' perspective
title_full On the sustainability of deep learning projects: Maintainers' perspective
title_fullStr On the sustainability of deep learning projects: Maintainers' perspective
title_full_unstemmed On the sustainability of deep learning projects: Maintainers' perspective
title_sort on the sustainability of deep learning projects: maintainers' perspective
publisher Institutional Knowledge at Singapore Management University
publishDate 2023
url https://ink.library.smu.edu.sg/sis_research/8481
https://ink.library.smu.edu.sg/context/sis_research/article/9484/viewcontent/DeepLearningProj_Maintainer_sv.pdf
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