Current software creation has challenges due to faster release times, complicated systems, and higher quality needs. Old testing methods can't handle these well. Regular test automation is better than doing tests by hand, but it still has problems. It needs a lot of upkeep, which cancels out any time saved. Adding AI and Machine Learning to testing changes things a lot. Instead of just making small improvements, it makes testing predictive and automatic. These systems can assess how apps act over time, learn from past problems, and create testing plans that change as the software does. Moving from regular automation to smart testing includes things like making test cases automatically, finding bugs early, managing test data smartly, and testing user interfaces dynamically. Together, these things make testing better and reduce how much people need to get involved. This tech helps quality assurance reach better coverage than old methods. It supports modern ways of creating software, like continuous delivery and DevOps, in big companies.
Baradwa Bandi Sudakara (Mon,) studied this question.
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context: