Shranjeno v:
| Glavni avtor: | |
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| Format: | Recurso digital |
| Jezik: | |
| Izdano: |
Zenodo
2025
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| Online dostop: | https://doi.org/10.5281/zenodo.18032276 |
| Oznake: |
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Kazalo:
- <p>This study examines how mathematical algorithms function as the backbone of AI-powered digital innovation and transformation in Iraq organizations during the period 2020-2024. Using the Mathematical Algorithmic Transformation Model, the study adopts a convergent mixed-methods design combining firm-level survey data from companies listed on the Iraq Stock Exchange with executive interviews and documentary analysis. Quantitative data were analyzed using regression-based techniques, while qualitative evidence provided contextual interpretation under conditions of infrastructural variability. The findings show that algorithmic design efficiency, optimization and learning capacity, data processing intelligence, and computational adaptability and resilience each exert a significant positive effect on digital transformation outcomes, measured through innovation agility, process automation, decision intelligence, and global integration. Technological infrastructure was found to play a critical moderating role, strengthening or weakening the translation of algorithmic capabilities into organizational transformation. The study contributes to digital transformation theory by advancing a capability-based perspective that treats algorithms as measurable organizational assets rather than standalone technologies. The results offer policy-relevant guidance for emerging and post-conflict economies by identifying priority areas for algorithmic capability development and infrastructure investment to achieve sustainable, AI-driven transformation.</p>