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Authors

Anuja Singh

Dr. Keshav Samrat Modi

Abstract

AIML (artificial intelligencemachine learning) are reshaping many facets of our life, includinghealthcare. The application of AI and ML in diabetes care has the potential to dramatically improveoutcomes while decreasing treatment times. The high number of diabetics in India presents specialdifficulties in terms of data availability, but it also presents an extraordinary opportunity. India might takethe medical industry by storm with the help of EMRs and establish itself as a global powerhouse. Artificialintelligence and machine learning might provide insight into our problems and inspire creative, tailor-madesolutions.

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References

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