i'm still new in machine learning. currently i'm creating an anomaly detection for flight data. it is a multivariate time series data that include timestamp, latitude, longitude, velocity and altitude of the aircraft. i'm splitting the data into train and test with 80% ratio. i used the keras LSTM autoencoder to do a anomaly detection. so here's my code ``` def create_sequence(data, time_step = None): Xs = [] for i in range (len(data) - time_step): Xs.append(data[i:(i + time_step)]) return np.array(Xs) # pre-process to split the data dfXscaled, scalerX = scaledf(df, normaltype=normalization) num_train = int(df.shape[0]*ratio) values_dataset = dfXscaled.values train = values_dataset[:num_train, :] test = values_dataset[num_train:, :] # sequence input data [sample, time step, features] train_input = create_sequence(train, time_step = time_step) test_input = create_sequence(test, time_step = time_step) train_time = index_time.index[:num_train] test_time = index_time.index[num_train:] # model model_arch = [] last_layer = num_layers - 1 for x in range(num_layers): if x == last_layer: model_arch.append(tf.keras.layers.LSTM(num_nodes, activation='relu', return_sequences=True, dropout = dropout)) else: model_arch.append(tf.keras.layers.LSTM(num_nodes, activation='relu', input_shape=(time_step, 4), dropout = dropout)) model_arch.append(tf.keras.layers.RepeatVector(time_step)) model_arch.append(tf.keras.layers.TimeDistributed(tf.keras.layers.Dense(4))) model = tf.keras.models.Sequential(model_arch) opt= tf.keras.optimizers.SGD(learning_rate=learning_rate) model.compile(loss=tf.keras.losses.Huber(), optimizer=opt, metrics=[tf.keras.metrics.MeanAbsolutePercentageError(name='mape'), tf.keras.metrics.RootMeanSquaredError(name='rmse'), "mae", 'accuracy']) history = model.fit(train_input, train_input, epochs=epochs, batch_size = num_batch, validation_data=(test_input, test_input), verbose=2, shuffle=False) ``` when i do a model evaluation, it come up with 100% accuracy [![model evaluation result][1]][1] [1]: https://i.sstatic.net/IiGFB.png is it good to have 100% accuracy ? or my model is overfitting the data ?