Download PDFOpen PDF in browserEnhancing Risk Management in Software Development Through Computational Intelligence: Lessons from Traditional and Emerging SDLC ModelsEasyChair Preprint 128528 pages•Date: March 31, 2024AbstractEffective risk management is crucial for successful software development projects, ensuring timely delivery of high-quality products within budget constraints. Traditional and emerging Software Development Life Cycle (SDLC) models offer different approaches to risk management, each with its strengths and limitations. This research paper investigates the application of computational intelligence techniques to enhance risk management in software development, drawing lessons from both traditional and emerging SDLC models. Through a comprehensive analysis of existing literature and case studies, this paper explores how machine learning, artificial intelligence, and other computational intelligence methods can be integrated into SDLC processes to identify, assess, and mitigate risks more effectively. The paper also discusses challenges, best practices, and future directions for leveraging computational intelligence in software risk management. Keyphrases: Artificial Intelligence, Computational Intelligence, SDLC Models, machine learning, risk management, software development
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