AI-Powered Automation in Salesforce Testing: Efficiency and Accuracy
DOI:
https://doi.org/10.36676/urr.v8.i1.1365Keywords:
AI-powered automation, Salesforce testingAbstract
This study investigates the impact of AI-powered automation on Salesforce testing, focusing on improvements in efficiency and accuracy compared to traditional methods. The research addresses the challenge of ensuring robust testing processes in complex CRM environments, where conventional methods often fall short. A comparative analysis was conducted using both traditional and AI-powered testing tools, with metrics including test execution time, accuracy rates, and error detection rates. The results reveal that AI-powered tools significantly enhance testing efficiency, reducing execution time by 40% and increasing accuracy by 15%, with a 20% improvement in error detection. These findings suggest that AI can substantially optimize Salesforce testing by automating repetitive tasks and providing advanced analytical capabilities. However, challenges such as initial setup costs and integration with existing frameworks were also identified. The study concludes that AI-powered testing offers considerable benefits, but organizations must weigh these against practical considerations for effective implementation.
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