Brief
Data Curation: The Driving Force Behind Successful Language Models in Capital Markets
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What’s in the Brief?
Building language models capable of reconstructing counterparty intentions demands more than just advanced algorithms—it requires high-quality, well-curated data.
Financial chat data is anything but straightforward—fragmented messages, jargon, and context shifts are just the beginning. Without a strong data curation process, even the most advanced models can fall short.
Download Our Post-Webinar Brief to learn:
Annotation Frameworks: Providing clarity and structure to extract meaningful insights.
Data Quality Assurance: The role of expert teams, thorough documentation, and iterative review loops in maintaining consistency and accuracy.
Schema Adaptability: Why schemas need to evolve with market trends, new formats, and edge cases to stay effective.
Real-World Solutions: Addressing ambiguity, polysemy, and context shifts in financial chats with innovative approaches.