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window.plot(model)にて描画しようとすると下記のようなエラーが発生します。
いろいろ試しましたが、解決できず質問いたしました。
何かヒントをいただけると幸いです。
どうぞよろしくお願いいたします!

エラーメッセージ:

    plt.scatter(self.label_indices, predictions[n, :, label_col_index],
                                    ~~~~~~~~~~~^^^^^^^^^^^^^^^^^^^^^^^
  File "C:\Users\okuno\AppData\Local\Programs\Python\Python312\Lib\site-packages\tensorflow\python\util\traceback_utils.py", line 153, in error_handler
    raise e.with_traceback(filtered_tb) from None
  File "C:\Users\okuno\AppData\Local\Programs\Python\Python312\Lib\site-packages\tensorflow\python\framework\ops.py", line 5983, in raise_from_not_ok_stat
us
    raise core._status_to_exception(e) from None  # pylint: disable=protected-access
    ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
tensorflow.python.framework.errors_impl.InvalidArgumentError: {{function_node __wrapped__StridedSlice_device_/job:localhost/replica:0/task:0/device:CPU:0}
} Index out of range using input dim 2; input has only 2 dims [Op:StridedSlice] name: strided_slice/

全体のコード:

n = len(df_4)

train = df_4[0 : int(n * 0.7)]
val = df_4[int(n * 0.7) : int(n * 0.9)]
test = df_4[int(n * 0.9) :]

print(train.shape, val.shape, test.shape)

# MinMaxScalerの処理
scaler = MinMaxScaler()
scaler.fit(train)

train_df = scaler.transform(train)
val_df = scaler.transform(val)
test_df = scaler.transform(test)

train_df = pd.DataFrame(train_df, columns=train.columns)
val_df = pd.DataFrame(val_df, columns=val.columns)
test_df = pd.DataFrame(test_df, columns=test.columns)

# DataWindow
class DataWindow():
    def __init__(self, input_width, label_width, shift, 
                 train_df=train_df, val_df=val_df, test_df=test_df, 
                 label_columns=None):
        
        self.train_df = train_df
        self.val_df = val_df
        self.test_df = test_df
        
        self.label_columns = label_columns
        if label_columns is not None:
            self.label_columns_indices = {name: i for i, name in enumerate(label_columns)}
        self.column_indices = {name: i for i, name in enumerate(train_df.columns)}
        
        self.input_width = input_width
        self.label_width = label_width
        self.shift = shift
        
        self.total_window_size = input_width + shift
        
        self.input_slice = slice(0, input_width)
        self.input_indices = np.arange(self.total_window_size)[self.input_slice]
        
        self.label_start = self.total_window_size - self.label_width
        self.labels_slice = slice(self.label_start, None)
        self.label_indices = np.arange(self.total_window_size)[self.labels_slice]
    
    def split_to_inputs_labels(self, features):
        inputs = features[:, self.input_slice, :]
        labels = features[:, self.labels_slice, :]
        if self.label_columns is not None:
            labels = tf.stack(
                [labels[:, :, self.column_indices[name]] for name in self.label_columns],
                axis=-1
            )
        inputs.set_shape([None, self.input_width, None])
        labels.set_shape([None, self.label_width, None]) 
        
        return inputs, labels
    
    def plot(self, model=None, plot_col="temperature", max_subplots=1):
        inputs, labels = self.sample_batch  
        
        plt.figure(figsize=(12, 8))
        plot_col_index = self.column_indices[plot_col]
        max_n = min(max_subplots, len(inputs))
        
        for n in range(max_n):
            plt.subplot(3, 1, n+1)
            plt.ylabel(f'{plot_col} ')
            plt.plot(self.input_indices, inputs[n, :, plot_col_index],
                     label='Inputs', marker='.', zorder=-10)

            if self.label_columns:
              label_col_index = self.label_columns_indices.get(plot_col, None)
            else:
              label_col_index = plot_col_index

            if label_col_index is None:
              continue

            plt.scatter(self.label_indices, labels[n, :, label_col_index],
                        edgecolors='k', marker='s', label='Labels', c='green', s=64)
            if model is not None:
              predictions = model(inputs)
              plt.scatter(self.label_indices, predictions[n, :, label_col_index],
                          marker='X', edgecolors='k', label='Predictions',
                          c='red', s=64)

            if n == 0:
              plt.legend()

        plt.xlabel('Time(m)')
        
    def make_dataset(self, data):
        data = np.array(data, dtype=np.float32)
        ds = tf.keras.preprocessing.timeseries_dataset_from_array(
            data=data,
            targets=None,
            sequence_length=self.total_window_size,
            sequence_stride=1,
            shuffle=True,
            batch_size=64
        )
        
        ds = ds.map(self.split_to_inputs_labels)
        return ds
    
    @property
    def train(self):
        return self.make_dataset(self.train_df)
    
    @property
    def val(self):
        return self.make_dataset(self.val_df)
    
    @property
    def test(self):
        return self.make_dataset(self.test_df)
    
    @property
    def sample_batch(self):
        result = getattr(self, '_sample_batch', None)
        if result is None:
            result = next(iter(self.train))
            self._sample_batch = result
        return result
    
    @property
    def pred(self, model=None):
        inputs, _ = self.sample_batch
        prediction = model(inputs)
        return prediction

# set window
window = DataWindow(input_width=60, label_width=60, shift=60, label_columns=["temperature"])

for example_inputs, example_labels in window.train.take(1):
  print(f'Inputs shape (batch, time, features): {example_inputs.shape}')
  print(f'Labels shape (batch, time, features): {example_labels.shape}')

# model
inputs = keras.Input(shape=(60, 10))
x = layers.LSTM(35, return_sequences=True)(inputs)
x = layers.Dropout(0.5)(x)
x = layers.LSTM(35)(x)
x = layers.Dropout(0.5)(x)
outputs = layers.Dense(1)(x) #type: ignore

model = keras.Model(inputs, outputs)

model.summary()

tf.keras.utils.plot_model(model, "model_shape_info.png", show_shapes=True)

model.compile(optimizer=tf.keras.optimizers.Adam(learning_rate=0.001),
              loss="mse",
              metrics=["mae"])

callbacks = [
    keras.callbacks.EarlyStopping(
        patience = 5,
        mode = "min")
]

history = model.fit(
    window.train,
    epochs = 5,
    validation_data = window.val,
    callbacks = callbacks
)

loss, mae = model.evaluate(window.test)
print("test loss: ", loss)
print("test mae: ", mae)

loss = history.history["loss"]
val_loss = history.history["val_loss"]

# plot loss and val loss
fig, ax = plt.subplots(figsize=(16, 10))
ax.plot(loss, "b", label="Training loss")
ax.plot(val_loss, "r", label="Validation loss")
ax.set_xlabel("epochs")
ax.set_ylabel("loss")
ax.set_title("Training loss and Validation loss")
ax.grid()
plt.legend()
plt.show()

# plot inputs, labels, preds
window.plot(model)
print(f"prediction shape: {window.predictions_shape}")
plt.show()
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