Data Engineering Podcast

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

78 snips
Nov 9, 2025
Ariel Pohoryles, head of product marketing at Boomi with over 20 years in data engineering, discusses a fascinating survey of 300 data leaders. He reveals the surprising paradox where 77% trust AI data yet only 50% trust their organization's overall data. Ariel emphasizes the need for stronger automation and governance in data management for effective AI production. He explores the challenges of unstructured data, advocates for automated pipelines, and predicts a convergence between data and application teams, highlighting the importance of managing AI workflows responsibly.
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INSIGHT

Traceability Beats Blind Trust

  • Unstructured data and vector stores complicate quality checks and traceability for AI outputs.
  • You must instrument AI workflows for traceability, activity logs, and output-level monitoring.
INSIGHT

Legacy Systems Stall Automation

  • Only 42% of organizations have automated data pipelines, leaving much manual maintenance.
  • Legacy systems, hidden logic, and migration costs slow automation and modernization efforts.
ADVICE

Start With High-Value Use Cases

  • Start by automating high-value use cases to demonstrate ROI and reduce reliance on legacy systems.
  • Use quick wins to justify broader migrations and free engineers for AI work.
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