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Episode 7: Terrapin on Automating Muni Reference Data

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Manage episode 505601469 series 3661311
Content provided by Mark Hebert. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Mark Hebert or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://podcastplayer.com/legal.

In this episode of The OpenYield Markets Podcast, host Mark Hebert sits down with Miguel Jaques and Daniel Dyulgerski, co-founders of Terrapin, a Scotland-based startup rethinking how reference data is built and delivered in fixed income markets.

With backgrounds spanning multi-asset portfolio management and machine learning research, the Terrapin founders explain how they’re using fine-tuned LLMs, rigorous OCR pipelines, and automated QA to achieve ~99% automation in extracting and maintaining municipal bond reference data. Together, they explore:

  • What “reference data” actually means and why it underpins analytics, settlement, and trading
  • Why Muni bonds, with their scale and complexity, became the perfect use case for AI
  • How incumbents still rely on armies of manual typists—and why automation changes the cost base
  • Building infrastructure that keeps LLMs accurate at scale
  • Why flexible APIs, fast feature rollouts, and lower costs win clients from Goliaths

🔔 Subscribe for more episodes to gain insights from leaders shaping the future of fixed income trading.

  continue reading

7 episodes

Artwork
iconShare
 
Manage episode 505601469 series 3661311
Content provided by Mark Hebert. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Mark Hebert or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://podcastplayer.com/legal.

In this episode of The OpenYield Markets Podcast, host Mark Hebert sits down with Miguel Jaques and Daniel Dyulgerski, co-founders of Terrapin, a Scotland-based startup rethinking how reference data is built and delivered in fixed income markets.

With backgrounds spanning multi-asset portfolio management and machine learning research, the Terrapin founders explain how they’re using fine-tuned LLMs, rigorous OCR pipelines, and automated QA to achieve ~99% automation in extracting and maintaining municipal bond reference data. Together, they explore:

  • What “reference data” actually means and why it underpins analytics, settlement, and trading
  • Why Muni bonds, with their scale and complexity, became the perfect use case for AI
  • How incumbents still rely on armies of manual typists—and why automation changes the cost base
  • Building infrastructure that keeps LLMs accurate at scale
  • Why flexible APIs, fast feature rollouts, and lower costs win clients from Goliaths

🔔 Subscribe for more episodes to gain insights from leaders shaping the future of fixed income trading.

  continue reading

7 episodes

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