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Anomaly-Detection-using-Sequence-to-Seqence-modeling

Using RNNs to do sequence to sequence modeling for power consumption values in kW/hr. Comparing predicted value (PV) from RNN to exact power consumption value (EV) to find the deflection between PV and EV.

power_forecast.py : initial training.

testing.py : checking accuracy.

more_training.py : further training done using pre-trained weight file and different optimizers.

training_data.npz : Consists training data with keywords train_X and train_Y.

log_file : Keeps track of all the results and updates done to the model.