Abstract

This study introduces a new approach to prognosticating the onset of detection of diabetes via using machine learning ways. By assaying a dataset containing different demographic, clinical, and life factors, the study identifies crucial predictors for assessing diabetes threat. Several ML algorithms, similar as logistic regression, KNN, Ada-boost, and support vector machine, are utilized and estimated for their prophetic performance. The results demonstrate that the ML- grounded models effectively identify individualities at high threat of developing diabetes. These models give precious decision making aids for healthcare interpreters, easing early intervention and substantiated operational strategies. Overall, this approach has the implicit to significantly reduce the burden of diabetes on public health systems. Keywords: : prognosticating, individualities, operational strategies, Public health systems.

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