Analyzing software quality and maintainability in object-oriented systems using software metrics
Abstract
Effective evaluation of software quality and maintainability is compulsory for
successful object-oriented system development, and the potential of software
metrics in achieving these goals are investigated in this research. To evaluate
the quality of software, this research employs software metrics to identify potential
errors and weaknesses in object-oriented systems. This analysis has
been conducted by us in the Python programming language. We have applied
machine learning techniques to different software metrics to analyze the issues
consistently, which has evaluated the effectiveness and long-term feasibility
of the system. Lastly, this study establishes a foundation for future advancements
in software quality assurance, demonstrating the significant benefits
of integrating machine learning with traditional quality measurements to enhance
the predictability and reliability of object-oriented systems.