Exploring the process of AI integration seen through a resource and capability perspective: A qualitative study of international SMEs in the manufacturing industry
Abstract
This thesis investigates the necessary resources and capabilities to integrate Artificial Intelligence (AI)
in International Small and Medium-sized Enterprises (ISMEs) in the manufacturing industry. By
applying theories as the Resource-Based View, Dynamic Capabilities, Absorptive Capacity, and the
Technology-Organization-Environment framework, we construct our own Conceptual Framework to
research the necessary internal capabilities in conjunction with external factors for ISMEs to integrate
AI. This study uses a qualitative methodology and adopts an abductive approach, complemented by a
multiple-case study design, where we spoke to eight ISMEs using semi-structured interviews. The
research reveals that successful AI integration in ISMEs depends on a combination of firm-specific
resources, such as financial resources, human resources, and data availability, alongside organizational
capabilities like an innovative culture and strong absorptive capacity, this in turn makes it possible to
leverage both internal and external resources. The study highlights the importance of strategic
alignment between resources and capabilities, effective communication between management and
board, and an environment conducive to technological adoption. As the study provides insight of
facilitators and barriers of AI integration in ISMEs, this thesis offers practical implications for
managers aiming to integrate AI.
Degree
Master 2-years
Other description
MSc in International Business and Trade
Collections
View/ Open
Date
2024-06-27Author
Alm, Emil
Chiu Falck, Johan
Keywords
Absorptive Capacity
AI
Capabilities
Competitive Advantage
Dynamic Capabilities
Integration
ISME
Resources
SME
Series/Report no.
Master Degree Project 2024:3
Language
eng