ML-dip.py takes as input cartesian coordinates (XYZ-traj1.xyz) and dipole moments (DIP-traj1.dat) from a trajectory, and outputs dipole moments corresponding to another trajectory (XYZ-traj2.xyz).
A Jupyter notebook for RNN model is also available. The used open dataset 'Household Power Consumption' available at https://archive.ics.uci.edu/ml/datasets ...
Abstract: This paper proposes a proximity effect correction (PEC) method for electron beam lithography (EBL) using multilayer perceptron (MLP) neural network (NN). By leveraging the symmetric ...
Abstract: Detecting emotions in audio speech files is a significant challenge for machines, despite the natural skill of humans in this area. While computers excel at comprehending informational ...