Page 165 - AI for Good-Innovate for Impact Final Report 2024
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AI for Good-Innovate for Impact



               of continuous learning and skill enhancement, aligning with the Quality Education goal. The
               focus on modular design and open-source components reflects an innovative leap towards
               Industry, Innovation, and Infrastructure (SDG 9), demonstrating a scalable and adaptable
               solution to healthcare challenges across different linguistic and cultural settings.                 37-Ethriva

               By empowering CHWs with the knowledge and tools needed for effective healthcare delivery,
               the model plays a pivotal role in reducing health disparities and inequalities. It showcases how
               leveraging AI and technology can facilitate a more equitable distribution of health resources
               and knowledge, making a significant stride towards realizing the UN's vision for health equity
               and access worldwide.


               37�2�2� Future work

               Model development, Create new variations/extensions to the same use case, Standards
               development related to the use case, Setup reference tools, notebooks and simulation
               environment, Others Elaborate proposal: Addressing the imminent shortfall of 10 million
               health workers by 2030, predominantly in Low- and Middle-Income Countries (LMICs), this
               paper introduces an innovative approach that harnesses the power of Large Language Models
               (LLMs) integrated with machine translation models. This solution is engineered to meet the
               unique needs of Community Health Workers (CHWs), overcoming language barriers, cultural
               sensitivities, and the limited availability of medical dialog datasets.

               I have crafted a model that not only boasts superior translation capabilities but also undergoes
               rigorous fine-tuning on open-source datasets to ensure medical accuracy and is equipped with
               comprehensive safety features to counteract the risks of misinformation.

               Featuring a modular design, this approach is specifically structured for swift adaptation across
               various linguistic and cultural contexts, utilizing open-source components to significantly reduce
               healthcare operational costs. This strategic innovation markedly improves the accessibility
               and quality of healthcare services by providing CHWs with contextually appropriate medical
               knowledge and diagnostic tools. This paper highlights the transformative impact of this context-
               aware LLM, underscoring its crucial role in addressing the global healthcare workforce deficit
               and propelling forward healthcare outcomes in LMICs


               37�3�  Sequence diagram





























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