Metaheuristic-based cost-effective predictive modeling for DevOps project success

被引:1
作者
Kumar, Ankur [1 ]
Nadeem, Mohammad [1 ]
Shameem, Mohammad [2 ]
机构
[1] Aligarh Muslim Univ, Dept Comp Sci, Aligarh, Uttar Pradesh, India
[2] King Fahad Univ Petr & Minerals, Interdisciplinary Res Ctr Intelligent Secure Syst, Dhahran, Saudi Arabia
关键词
DevOps; Software project success; Naive bayes; Logistic regression; Grey wolf optimizer; CONTINUOUS INTEGRATION; LOGISTIC-REGRESSION;
D O I
10.1016/j.asoc.2024.111834
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Over the decade, DevOps practices have gained popularity within software development organizations for managing the dynamic behavior of system development. Implementing DevOps introduces risks and challenges that increase the difficulties in software development activities, which consequently leads to project failures. This study presents a probability-based predictive model to estimate the success or failure of DevOps projects based on the 13 most significant features identified from literature and data gathered from the DevOps practitioners using a survey questionnaire. The Na & iuml;ve Bayes Classifier and Logistic Regression (LR) models allied with Grey Wolf Optimization (GWO) have been used to measure the efficiency with the cost of implementing DevOps practices. The results of the study highlighted that NBC with GWO increased the success probability from 0.4954 to 0.9971, with the cost rising from 0.2577 to 0.5000. Similarly, LR with GWO also presented an increase in success probability from 0.2880 to 0.9839, along with an increase in cost from 0.2423 to 0.3558. In conclusion, the developed prediction model based on identified features could help DevOps software development practitioners to implement DevOps projects cost-effectively and successfully.
引用
收藏
页数:19
相关论文
共 65 条
[11]   Conducting Online Surveys [J].
Ball, Helen L. .
JOURNAL OF HUMAN LACTATION, 2019, 35 (03) :413-417
[12]   GitOps: The Evolution of DevOps? [J].
Beetz, Florian ;
Harrer, Simon .
IEEE SOFTWARE, 2022, 39 (04) :70-75
[13]   AIDOaRt: AI-augmented Automation for DevOps, a model-based framework for continuous development in Cyber-Physical Systems [J].
Bruneliere, Hugo ;
Muttillo, Vittoriano ;
Eramo, Romina ;
Berardinelli, Luca ;
Gomez, Abel ;
Bagnato, Alessandra ;
Sadovykh, Andrey ;
Cicchetti, Antonio .
MICROPROCESSORS AND MICROSYSTEMS, 2022, 94
[14]  
Chakraborty Bapi S., 2019, Understanding Azure Monitoring: Includes IaaS and PaaS Scenarios, P205, DOI [10.1007/978-1-4842-5130-0_6, DOI 10.1007/978-1-4842-5130-06]
[15]   A novel selective naive Bayes algorithm [J].
Chen, Shenglei ;
Webb, Geoffrey I. ;
Liu, Linyuan ;
Ma, Xin .
KNOWLEDGE-BASED SYSTEMS, 2020, 192
[16]   The Path to DevOps [J].
Doernenburg, Erik .
IEEE SOFTWARE, 2018, 35 (05) :71-75
[17]   Predictive Model for the Factors Influencing International Project Success: A Data Mining Approach [J].
Dumitrascu-Baldau, Iulia ;
Dumitrascu, Danut-Dumitru ;
Dobrota, Gabriela .
SUSTAINABILITY, 2021, 13 (07)
[18]   Automatic feedback and assessment of team-coding assignments in a DevOps context [J].
Fernandez-Gauna, Borja ;
Rojo, Naiara ;
Grana, Manuel .
INTERNATIONAL JOURNAL OF EDUCATIONAL TECHNOLOGY IN HIGHER EDUCATION, 2023, 20 (01)
[19]   A risk prediction model for software project management based on similarity analysis of context histories [J].
Filippetto, Alexsandro Souza ;
Lima, Robson ;
Barbosa, Jorge Luis Victoria .
INFORMATION AND SOFTWARE TECHNOLOGY, 2021, 131
[20]   The SPACE of Developer Productivity [J].
Forsgren, Nicole ;
Storey, Margaret-Anne ;
Maddila, Chandra ;
Zimmermann, Thomas ;
Houck, Brian ;
Butler, Jenna .
COMMUNICATIONS OF THE ACM, 2021, 64 (06) :46-53