2024
DOI: 10.21203/rs.3.rs-4557533/v1
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Machine Learning for Diagnosing Water Potability and Explainable AI for Contextual Insights

Md. Mamun Hossain,
Md. Hasibur Rahman,
Md. Ashiqur Rahman
et al.

Abstract: Availability of water is one of the most important aspects of Earth’s status as the only planet capable of supporting life. Although water makes up 70% of the earth’s surface, the availability of drinkable water is extremely limited. Water makes up about 70% of the human body and aids in the healthy functioning of the human body. Contaminated water can have a pernicious effect on the human body, thus it’s important to find a safe drinking water source. Five machine learning algorithms were explored to estimate… Show more

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