JoseLuisAcuna20100183/AI-DCH26-Water-Quality-Prediction-in-rivers-using-ML-and-AI-Acuna-Yangali
Predicting alkalinity, conductance and phosphorus in unseen river stations using satellite imagery, climate data and spatial generalization — EY AI & Data Challenge 2026.
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