Beispiel #1
0
    def Predict(self, test_generator):

        metrics = Metrics()

        valid_loss_x, valid_loss_y, valid_loss_z, valid_loss_phi, y_pred, gt_labels = self.ValidateSingleEpoch(
            test_generator)

        gt_labels = torch.tensor(gt_labels, dtype=torch.float32)
        y_pred = torch.tensor(y_pred, dtype=torch.float32)
        MSE, MAE, r2_score = metrics.Update(y_pred, gt_labels,
                                           [0, 0, 0, 0],
                                           [valid_loss_x, valid_loss_y, valid_loss_z, valid_loss_phi])

        y_pred_viz = metrics.GetPred()
        gt_labels_viz = metrics.GetLabels()

        DataVisualization.desc = "Test_"
        DataVisualization.PlotGTandEstimationVsTime(gt_labels_viz, y_pred_viz)
        DataVisualization.PlotGTVsEstimation(gt_labels_viz, y_pred_viz)
        DataVisualization.DisplayPlots()
        logging.info('Test MSE: {}'.format(MSE))
        logging.info('Test MAE: {}'.format(MAE))
        logging.info('Test r2_score: {}'.format(r2_score))

        return y_pred
    def Predict(self, test_generator):

        metrics = Metrics()

        valid_loss_x, valid_loss_y, valid_loss_z, valid_loss_phi, y_pred, gt_labels = self.ValidateSingleEpoch(
            test_generator)

        gt_labels = torch.tensor(gt_labels, dtype=torch.float32)
        y_pred = torch.tensor(y_pred, dtype=torch.float32)
        MSE, MAE, r2_score = metrics.Update(y_pred, gt_labels,
                                           [0, 0, 0, 0],
                                           [valid_loss_x, valid_loss_y, valid_loss_z, valid_loss_phi])

        y_pred_viz = metrics.GetPred()
        gt_labels_viz = metrics.GetLabels()

        DataVisualization.desc = "Test_"
        DataVisualization.PlotGTandEstimationVsTime(gt_labels_viz, y_pred_viz)
        DataVisualization.PlotGTVsEstimation(gt_labels_viz, y_pred_viz)
        DataVisualization.DisplayPlots()

        logging.info('[ModelTrainer] Test MSE: [{0:.4f}, {1:.4f}, {2:.4f}, {3:.4f}]'.format(MSE[0], MSE[1], MSE[2], MSE[3]))
        logging.info('[ModelTrainer] Test MAE: [{0:.4f}, {1:.4f}, {2:.4f}, {3:.4f}]'.format(MAE[0], MAE[1], MAE[2], MAE[3]))
        logging.info('[ModelTrainer] Test r2_score: [{0:.4f}, {1:.4f}, {2:.4f}, {3:.4f}]'.format(r2_score[0], r2_score[1], r2_score[2],
                                                                                  r2_score[3]))
Beispiel #3
0
 def __init__(self,inputFile = None, reference=None):
     """        
     Inputs
         •	inputFile: Name of the input file. Default value is None
         •	reference: Name of the reference column. Default value is None. 
     Local variables set:
         •	dataDict
         •	header
         •	reference
         •	stats 
         •	visualize
     Outputs: None
     """
     # Check if inputFile is None
     if inputFile == None:
         # Initialize all the variables to None
         self.dataDict = None            
         self.reference = None     
         self.header = None
         self.numColumns = None
         self.numRows = None
         self.inputFile = None
     else:
         # else call the load function
         self.load(inputFile,reference)
     
     # initialize DataStatistics and DataVisualization objects        
     self.visualize = DataVisualization(self)
    def Train(self, training_generator, validation_generator):

        metrics = Metrics()
        early_stopping = EarlyStopping(patience=10, verbose=True)
        scheduler = torch.optim.lr_scheduler.ReduceLROnPlateau(self.optimizer, mode='min', factor=np.sqrt(0.1),
                                                                    patience=5, verbose=False,
                                                                    threshold=0.0001, threshold_mode='rel', cooldown=0,
                                                                    min_lr=0.1e-6, eps=1e-08)
        loss_epoch_m1 = 1e3

        for epoch in range(1, self.args.epochs + 1):
            logging.info("[ModelTrainer] Starting Epoch {}".format(epoch))

            change_prec = False
            ended = False
            # if self.args.quantize:
            #     change_prec, ended = self.relax.step(loss_epoch_m1, epoch, None)
            # if ended:
            #     break

            train_loss_x, train_loss_y, train_loss_z, train_loss_phi = self.TrainSingleEpoch(training_generator)

            valid_loss_x, valid_loss_y, valid_loss_z, valid_loss_phi, y_pred, gt_labels = self.ValidateSingleEpoch(
                validation_generator)

            valid_loss = valid_loss_x + valid_loss_y + valid_loss_z + valid_loss_phi
            scheduler.step(valid_loss)

            gt_labels = torch.tensor(gt_labels, dtype=torch.float32)
            y_pred = torch.tensor(y_pred, dtype=torch.float32)
            MSE, MAE, r_score = metrics.Update(y_pred, gt_labels,
                                               [train_loss_x, train_loss_y, train_loss_z, train_loss_phi],
                                               [valid_loss_x, valid_loss_y, valid_loss_z, valid_loss_phi])

            logging.info('[ModelTrainer] Validation MSE: {}'.format(MSE))
            logging.info('[ModelTrainer] Validation MAE: {}'.format(MAE))
            logging.info('[ModelTrainer] Validation r_score: {}'.format(r_score))

            checkpoint_filename = self.folderPath + self.model.name + '-{:03d}.pt'.format(epoch)
            early_stopping(valid_loss, self.model, epoch, checkpoint_filename)
            if early_stopping.early_stop:
                logging.info("[ModelTrainer] Early stopping")
                break

        MSEs = metrics.GetMSE()
        MAEs = metrics.GetMAE()
        r_score = metrics.Getr2_score()
        y_pred_viz = metrics.GetPred()
        gt_labels_viz = metrics.GetLabels()
        train_losses_x, train_losses_y, train_losses_z, train_losses_phi, valid_losses_x, valid_losses_y, valid_losses_z, valid_losses_phi = metrics.GetLosses()

        DataVisualization.desc = "Train_"
        DataVisualization.PlotLoss(train_losses_x, train_losses_y, train_losses_z, train_losses_phi , valid_losses_x, valid_losses_y, valid_losses_z, valid_losses_phi)
        DataVisualization.PlotMSE(MSEs)
        DataVisualization.PlotMAE(MAEs)
        DataVisualization.PlotR2Score(r_score)

        DataVisualization.PlotGTandEstimationVsTime(gt_labels_viz, y_pred_viz)
        DataVisualization.PlotGTVsEstimation(gt_labels_viz, y_pred_viz)
        DataVisualization.DisplayPlots()
Beispiel #5
0
new_time_series = fe.execute_feature_engineering(time_series)

# new_time_series = dp.delete_column(time_series, ['Confirmed Cases', 'Deaths', 'Recovered Cases', 'Active Cases'])

# Truncate zero values from the time series
# new_time_series = dp.truncate_time_series(new_time_series, '26/02/2020')

# Preliminary Analysis: Stationarity Check
pa = PreliminaryAnalysis()

pa.execute_preliminary_analysis(new_time_series)

# Data Visualization Phase
log.info(Constants.DATA_VISUALIZATION_MSG)
dv = DataVisualization()

# original time series data
dv.plot_data_structure(time_series)
# new time series data
dv.plot_data_structure(new_time_series)

# plots of all cases
dv.plot_data_structure(new_time_series['New Confirmed Cases'])
dv.plot_data_structure(new_time_series['New Deaths'])
dv.plot_data_structure(new_time_series['New Recovered Cases'])
dv.plot_data_structure(new_time_series['New Active Cases'])

# Decomposition plots for:
# Confirmed Cases
x = new_time_series['New Confirmed Cases'].resample('D').mean()