Research Unpacked

LLM Detects Burnout Signals Hidden in Our Workplace Stories

14 min · 8 de dic de 2025
portada del episodio LLM Detects Burnout Signals Hidden in Our Workplace Stories

Descripción

In this episode, we unpack research showing how LLM can understand human wellbeing. The paper is (link [https://riko.io/from-narratives-to-numbers.pdf]): From Narratives to Numbers: Evaluating a Large Language Model (LLM) for Transforming Workplace Interview Narratives into Numerical Wellbeing Indicators [https://riko.io/from-narratives-to-numbers.pdf] Whether you’re curious about AI in research, workplace wellbeing, or the future of mixed-methods analysis, this episode offers a clear, accessible dive into how LLMs are learning to hear the emotional signals we don’t always say out loud.

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