What if you could get the performance of a massive, 100-example prompt, but with 13 times fewer tokens?That’s the breakthrough promise of "instruction induction" —teaching an AI to be the prompt engineer.This week, we dive into PROMPT-MII , a new framework that essentially meta-learns how to write compact, high-performance instructions for LLMs. It’s a reinforcement learning approach that could make AI adaptation both cheaper and more effective.This episode explores the original research by Emily Xiao, Yixiao Zeng, Ada Chen, Chin-Jou Li, Amanda Bertsch, and Graham Neubig from Carnegie Mellon University.Read the full paper here for a deeperdive: https://arxiv.org/abs/2510.16932
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