def retrain(self):
        """Train for a session, pulling in any new data from the filesystem"""
        folder = TrainData.from_folder(self.args.folder)
        train_data, test_data = folder.load(True, not self.args.no_validation)

        train_data = TrainData.merge(train_data, self.sampled_data)
        test_data = TrainData.merge(test_data, self.test)
        train_inputs, train_outputs = train_data
        print()
        try:
            self.listener.runner.model.fit(
                train_inputs, train_outputs, self.args.batch_size, self.epoch + self.args.epochs,
                validation_data=test_data, callbacks=self.callbacks, initial_epoch=self.epoch
            )
        finally:
            self.listener.runner.model.save(self.args.model)
    def retrain(self):
        """Train for a session, pulling in any new data from the filesystem"""
        folder = TrainData.from_folder(self.args.folder)
        train_data, test_data = folder.load(True, not self.args.no_validation)

        train_data = TrainData.merge(train_data, self.tags_data[0])
        test_data = TrainData.merge(test_data, self.tags_data[1])
        print()
        try:
            self.listener.runner.model.fit(*train_data,
                                           self.args.batch_size,
                                           self.args.epochs,
                                           validation_data=test_data,
                                           callbacks=[self.checkpoint])
        finally:
            self.listener.runner.model.save(self.args.model)