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  <title>Making Vertical LLMs More Accurate, Auditable, and Defensible</title>
  <description>As financial institutions pursue the promise of generative AI to streamline compliance, enhance reporting, and improve operational efficiency, one challenge consistently emerges: trust. A curated content strategy changes the equation. By limiting an LLM’s training and retrieval functions to a validated, domain-specific corpus including federal and state regulations, supervisory guidance, internal policy documents, and examiner manuals, financial institutions can significantly improve the accuracy, traceability, and auditability of AI-generated outputs. Speakers:  Todd Cooper, CEO, NuComply Craig Driver, VP Partner Network, ABA  </description>
  <author_name>ABA Partner Network Podcast</author_name>
  <author_url>https://www.aba.com</author_url>
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