So I am currently trying to understand what formats a multi input keras model expect and don´t understand how to feed in several ones.

```
from tensorflow.keras.models import Model
import tensorflow.keras
import tensorflow as tf
first_input = Input(2)
second_input = Input(2)
concat_layer= Concatenate()([first_input, second_input ])
hidden= Dense(2, activation="relu")(concat_layer)
output = Dense(1, activation="sigmoid")(hidden)
model = Model(inputs=[first_input, second_input], outputs=output)
model.summary()
model.compile(loss='mean_squared_error', metrics=['mean_squared_error'], optimizer='adam')
# I managed to get the format for prediction and single training data correct
# this works
inp = [np.array([[0,2]]), np.array([[0,2]])]
model.predict(inp)
model.fit(inp,np.array([42]), epochs=3, )
# I don´t get why this isn´t working
# this doesn´t work
model.fit(np.array([inp,inp]),np.array([42, 43]), epochs=3, )´
```

Having read the keras doc of the fit function I really don´t understand why my version isn´t working:

*x : Vector, matrix, or array of training data (or list if the model has multiple inputs). If all inputs in the model are named, you can also pass a list mapping input names to data. x can be NULL (default) if feeding from framework-native tensors (e.g. TensorFlow data tensors).*

Because I am literally giving it an array of lists.

The last code line results in following error:

*ValueError: Layer model expects 2 input(s), but it received 1 input tensors. Inputs received: [<tf.Tensor 'IteratorGetNext:0' shape=(None, 2, 1, 2) dtype=int64>]*

Any help appreciated.