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Investigating the Impact of Artificial Intelligence on Employee Well-being and Mental Health: A Study of AI-Powered Wellness Initiatives and Talent Management Outcomes
0
Zitationen
2
Autoren
2025
Jahr
Abstract
Staff members are an organization's most precious asset, and their performance is directly impacted by their well-being. Stress problems are prevalent problem among modern employees. Worker stress is on the rise due to shifting workplace environments and lifestyles. The problem is far from being resolved, even though numerous companies and sectors offer programs of mental wellness and make an effort to improve the working environment. This study offers a novel approach to cloud computation and machine learning (ML)-based prediction systems for medical professionals' wellness with an emphasis on stress management. The increased demands on medical personnel emphasize the requirement for proactive steps to monitor and support their mental wellness. The platform gathers statistics from multiple resources, including wearable technology, social networking sites, questionnaires, and e-health records, and aggregates them in one place for analysis. Following appropriate data cleansing and preprocessing, a variety of ML approaches have been used to develop the framework. The aforementioned algorithms' accuracy was measured and compared. Out of all the algorithms used, boosting had the best accuracy. Sexual orientation, family background, and the accessibility of occupational medical services were found to be significant factors that impact stress through the use of decision trees. By employing technological advances to recognize stress trends and pinpoint their origins, medical facilities may enhance the well-being of their workforce. It can reduce such stress by using particular therapies and supportive networks. Cloud computing systems' adaptability, versatility, and openness enable broad deployment and real-time surveillance. This approach offers potential in the path of data-driven preventative measures for managing medical professionals' stress and enhancing their overall wellness.
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