Data-driven Strategies for Enhanced Risk Management Performance in Software Development Perspective: An Agile Implementation

In software development, proper risk management is important to achieve project success and reduce possible failures or losses, especially in Agile environments, where traditional approaches usually fail to handle modern projects' dynamic and complex nature. This research proposes a conceptual...

全面介紹

書目詳細資料
發表在:2024 IEEE 22nd Student Conference on Research and Development, SCOReD 2024
主要作者: 2-s2.0-85219572714
格式: Conference paper
語言:English
出版: Institute of Electrical and Electronics Engineers Inc. 2024
在線閱讀:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85219572714&doi=10.1109%2fSCOReD64708.2024.10872763&partnerID=40&md5=af95afb20bb7a097cb49fa0d49148a56
實物特徵
總結:In software development, proper risk management is important to achieve project success and reduce possible failures or losses, especially in Agile environments, where traditional approaches usually fail to handle modern projects' dynamic and complex nature. This research proposes a conceptual model to enhance risk management performance by integrating data-driven strategies. The approach uses machine learning, specifically the Decision Tree algorithm, to enhance the risk management process - risk identification, risk assessment, risk mitigation and risk monitoring in software development projects. This research involved two phases in developing the proposed conceptual model: 1) problem assessment and research study and 2) data-driven strategies to enhance risk management performance. Then, the model is evaluated based on its ability to provide accurate and useful information about risk factors such as deadlines for the project, resource allocation, and stakeholder feedback. Besides, gaining expert validation shows the model's effectiveness in real-world software development environments. In conclusion, based on the developed model, we can ensure it will significantly improve the risk management performance in software development. © 2024 IEEE.
ISSN:
DOI:10.1109/SCOReD64708.2024.10872763