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Implementation and relevant scripts for HW QED Research Project.

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USC-QED-HW/Covid19MLNetworkedSim

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Covid19MLNetworkedSim

Implementation and relevant scripts for HW QED Research Project.

Under Professor Leana Golubchik at the Quantatitive Evalualuation and Design Research Group at the University of Southern California

Developed a stochastic multi-agent continiuous network-based simulation of Covid-19 on a variety of different random graph generation models. Generated time-series infection datasets in order to train various machine learning algorithms (LSTM, MLP, auto-encoder, and CNNs) that could analyze real-world infection data for different countries and determine the best hyperparameters and graph model to represent the spread of Covid-19, which might inform future patterns of Coronavirus spread.