09 Nov 2025
51m

The AI Data Paradox: High Trust in Models, Low Trust in Data

Podcast cover

Data Engineering Podcast

The discussion centers on a Boomi-conducted survey exploring data management investments for scaling AI implementations. Ariel Pohoryles, leading product marketing at Boomi, shares insights from a survey of 300 data leaders across various markets and industries. A key finding is that while many leaders monitor data quality, only 50% trust their data, posing risks for AI systems. The conversation explores the paradox of high trust in AI system data versus low overall data trust, suggesting AI systems often rely on small, static datasets. Pohoryles emphasizes the need for automation in data pipelines and highlights the importance of metadata management and governance to ensure data quality for AI applications. She predicts a convergence of data and IT teams due to the increasing role of AI in business process automation.

Outlines

Part 1: Background, Survey Context

Part 2: The Data Trust Paradox

Part 3: Automation, Governance, and Metadata

Part 4: Architecture and Risk Management

Part 5: Future Trends and Tooling

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