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Al Ghadban Y, Lu HY, Adavi U et al. Transforming healthcare education: Harnessing large language models for frontline health worker capacity building using retrieval-augmented generation [version 1; not peer reviewed]. Gates Open Res 2023, 7:136 (poster) (https://doi.org/10.21955/gatesopenres.1117064.1)
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Transforming healthcare education: Harnessing large language models for frontline health worker capacity building using retrieval-augmented generation

Yasmina Al Ghadban1, Huiqi Yvonne Lu, Uday Adavi, Ankita Sharma, Sridevi Gara, Neelanjana Das, Bhaskar Kumar, Renu John, Praveen Devarsetty, Jane E Hirst
Author Affiliations
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Published 15 Dec 2023

Transforming healthcare education: Harnessing large language models for frontline health worker capacity building using retrieval-augmented generation

[version 1; not peer reviewed]

Yasmina Al Ghadban1, Huiqi Yvonne Lu, Uday Adavi, Ankita Sharma, Sridevi Gara, Neelanjana Das, Bhaskar Kumar, Renu John, Praveen Devarsetty, Jane E Hirst
Author Affiliations
1 Womens and Reproductive Health, University of Oxford, Oxford, England, UK
Presented at
Generative AI for Education (GAIED), 2023
Abstract
Gates Foundation grant number
INV-062589
Competing Interests

No competing interests were disclosed

Keywords
Large Language Model, Retrieval Augmented Generation, Community Health Worker, ASHA
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