文档
计算机科学
管道(软件)
医疗保健
人工智能
经济增长
经济
程序设计语言
作者
Sagar Goyal,Eti Rastogi,Sree Prasanna Rajagopal,Dong Yuan,Fen Zhao,Jai Chintagunta,Gautam Naik,J. D. Ward
标识
DOI:10.1145/3616855.3635739
摘要
Since the advent of LLM's like GPT4 everyone in various industries has been trying to harness their power. Healthcare is an industry where this is a specifically challenging problem due to the high accuracy requirements. Prompt Engineering is a common technique used to design instructions for model responses, however, its challenges lie in the fact that the generic models may not be trained to accurately execute these specific tasks. We will present our journey of developing a cost-effective medical LLM, surpassing GPT4 in medical note-writing tasks. We'll touch upon our trials with medical prompt engineering, GPT4's limitations, and training an optimized LLM for specific medical tasks. We'll showcase multiple comparisons on model sizes, training data, and pipeline designs that enabled us to outperform GPT4 with smaller models, maintaining precision, reducing biases, preventing hallucinations, and enhancing note-writing style.
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