Pengaruh Penggunaan Artificial Intelligence terhadap Kinerja Karyawan di Era Transformasi Digital
DOI:
https://doi.org/10.59024/jumek.v4i3.792Keywords:
Artificial Intelligence, Digital Competence, Employee Performance, Digital Transformation, PLS-SEMAbstract
This research was conducted in response to the increasing pace of digital transformation, which has accelerated the adoption of Artificial Intelligence in the workplace and emphasized the importance of employees' digital competencies. The study aims to examine the influence of Artificial Intelligence and digital competence on employee performance. A quantitative method with an explanatory research design was applied. Data were obtained through a questionnaire survey involving 96 employees who utilize Artificial Intelligence as part of their work activities. The collected data were analyzed using SmartPLS 4 based on the Partial Least Squares Structural Equation Modeling (PLS-SEM) technique. The findings reveal that Artificial Intelligence exerts a positive and statistically significant influence on employee performance. Likewise, digital competence is found to positively and significantly contribute to employee performance. These results suggest that greater adoption of Artificial Intelligence, together with higher levels of digital competence, enhances employees' ability to achieve better work quality, productivity, timeliness, effectiveness, and target accomplishment. The study highlights the importance for organizations to invest in Artificial Intelligence implementation while continuously developing employees' digital capabilities to support improved performance in the context of ongoing digital transformation.
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