Author
Listed:
- Olga Ergunova
(Higher School of Industrial Management, Peter the Great St. Petersburg Polytechnic University, 29 Polytechnicheskaya St., St. Petersburg 195251, Russia)
- Gaini Mukhanova
(EXPO Business Center, Astana IT University LLP, Block C1, 55/11 Mangilik El Avenue, Astana 010000, Kazakhstan)
- Andrei Somov
(Higher School of Industrial Management, Peter the Great St. Petersburg Polytechnic University, 29 Polytechnicheskaya St., St. Petersburg 195251, Russia)
Abstract
The rapid transition to Industry 4.0/5.0 has widened the gap between graduates’ skill sets and labor market expectations; this study aimed to profile student competencies and align academic pathways with inclusive and adaptive AI-driven learning. A quantitative design was applied: an online survey of n = 126 students (engineering and economics, February–March 2025), expert evaluations from 5 faculty and 5 employers on a 5-point scale, framed by T-shaped competencies, 4C skills, and Bloom’s taxonomy. Analysis was performed in Python 3.11; future demand until 2035 was forecasted using ARIMA and Prophet models trained on publicly available labor market data (OECD, WEF, Eurostat 2015–2024); competency prioritization employed K-Means clustering and Random Forest models. Strengths included cooperation 4.2, critical thinking 3.9, communication 3.8, and creativity 3.6. Deficits were programming 2.8, project management 3.2, and solution development 3.2; employers rated programming at 2.5 (−0.7 compared to faculty). Forecast 2025–2035 showed growth in demand for programming +56% (3.2 → 5.0), data analytics +39% (3.6 → 5.0), project management +34% (3.2 → 4.3), digital literacy +30% (3.7 → 4.8), and critical thinking +15% (3.9 → 4.5). Clustering identified critical (programming, analytics, project management), supporting (creativity, communication, teamwork), and optional (narrow theoretical depth) competencies. Curriculum adjustment with practice-oriented modules, AI-enabled adaptive learning, and systematic university–employer feedback is essential; the proposed AI-supported profiling model is scalable and enhances inclusiveness.
Suggested Citation
Olga Ergunova & Gaini Mukhanova & Andrei Somov, 2026.
"AI-Supported Student Skills Profiling Integrating AI and EdTech into Inclusive and Adaptive Learning,"
Social Sciences, MDPI, vol. 15(3), pages 1-12, March.
Handle:
RePEc:gam:jscscx:v:15:y:2026:i:3:p:209-:d:1901429
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