ashifpathan21/Drug-Toxicity-Prediction-ML
A machine learning-powered web application that predicts drug toxicity across 12 different biological endpoints using XGBoost models with ensemble averaging. Achieve up to 80% accuracy in predicting adverse effects of chemical compounds.
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Last pushed
Mar 18, 2026
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