Author
Listed:
- Gulnara Sagindykova
- Galiya Mauina
- Aigul Zholmukhanova
- Elmira Adiyetova
- Aslan Tasmaganbetov
Abstract
Digital transformation is a process of change characterized by the deep integration of new technologies such as big data, artificial intelligence, and blockchain. The extensive collection, storage, and analysis of internal and external company data provide an accurate foundation for decision-making; AI systems offer intelligent functions for analysis, forecasting, and decision-making to automate and optimize processes. The article presents the results of a study on the impact of digital transformation on professional development and working conditions. The analysis is based on survey data covering organizational, functional, market, and personal factors. The use of stepwise regression modeling made it possible to identify key predictors, such as regional differences in digital infrastructure and the interaction of skills with individual growth support. The identified negative relationship between digital skills and the level of workplace digitalization indicates potential adaptation barriers. Organizational variables mainly influence through mediating mechanisms. Interacting factors demonstrate a synergistic effect, confirming the importance of a comprehensive approach to managing digital change. Correlation-regression analysis also revealed moderate multicollinearity between variables, requiring additional attention when interpreting the models. The results have practical significance for developing digitalization strategies focused on supporting and developing personnel in various regional contexts.
Suggested Citation
Gulnara Sagindykova & Galiya Mauina & Aigul Zholmukhanova & Elmira Adiyetova & Aslan Tasmaganbetov, 2025.
"The transformation of labor in the digital age: Matching skills to job requirements,"
International Journal of Innovative Research and Scientific Studies, Innovative Research Publishing, vol. 8(5), pages 575-584.
Handle:
RePEc:aac:ijirss:v:8:y:2025:i:5:p:575-584:id:8769
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