May 10, 2023, 2:37 a.m. | Synced

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In the new paper Automatic Prompt Optimization with "Gradient Descent" and Beam Search, a Microsoft research team presents Automatic Prompt Optimization, a simple and general prompt optimization algorithm that automatically improves prompts for large language models, significantly reducing the time and energy spent on manual prompting approaches.


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ai algorithm artificial intelligence automl boost deep-neural-networks energy general gradient language language models large language model large language models llm machine learning machine learning & data science microsoft microsoft research ml optimization paper performance prompt prompting prompts research research team search team technology

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