Publication: AI Integration in Fundamental Logistics Components: Advanced Theoretical Framework for Knowledge Process Capabilities and Dynamic Capabilities Hybridization
Loading...
Date
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Background: Despite significant technological advances, many logistics organizations in
emerging markets struggle to realize the transformative potential of artificial intelligence,
with reported success rates below 65% and limited theoretical understanding of the organizational capabilities. This study develops and proposes an integrated theoretical framework
examining how knowledge process capabilities and dynamic capabilities interact to enable
successful artificial intelligence adoption in logistics organizations within emerging market
contexts. Methods: Through comprehensive literature review and theoretical synthesis, we
propose a hybrid capability framework that integrates knowledge-based view perspectives
with dynamic capabilities theory. Results: Theoretical analysis suggests that knowledge
combination capabilities may be the strongest predictor of artificial intelligence implementation success, while dynamic reconfiguring capabilities could mediate the relationship
between artificial intelligence adoption and performance outcomes. The proposed framework indicates that organizations with hybrid capability architecture may achieve superior
implementation success compared to traditional approaches. Environmental uncertainty is
theorized to strengthen the knowledge process capabilities—artificial intelligence adoption
relationship. Conclusions: The framework suggests that successful artificial intelligence
integration requires simultaneous development of knowledge-based and adaptive capabilities rather than sequential capability building. The hybrid capability framework provides
theoretical guidance for managers in emerging markets, while highlighting the critical role
of environmental context in shaping transformation strategies.
