Drug activity prediction package with EDA and model pipeline utilities.
Project description
Welcome to my Drug Activity Prediction Project. In this project I have used machine learning to predict activity of a drug on the basis of my training data obtained from....... There were 5 diffrent component on the basis of which i have classified the data.
Citation-Ballabio,Davide, Cassotti,Matteo, Consonni,Viviana, and Todeschini,Roberto. (2019). QSAR fish toxicity. UCI Machine Learning Repository. https://doi.org/10.24432/C5JG7B.
More help was taken from-Design of experiments for the NIPS 2003 variable selection benchmark Isabelle Guyon – July 2003 isabelle@clopinet.com
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