I have multiple input layers (20 input layers) and I want to use a `tf.dataset`

for feeding the model. The batch_size is 16.
Unfortunately `model.fit(train_dataset, epochs=5)`

is throwing the following error:

**ValueError: Error when checking model input: the list of numpy arrays that you are passing to your model is not the size the model expected. Expected to see 20 array(s), for inputs ['input_2', ... , 'input_21'] but instead got the following list of 1 arrays: [<tf.Tensor 'args_0:0' shape=(None, 20, 512, 512, 3) dtype=int32>]...**

I assume, that keras wants a shape like **(20,None,512,512,3)**.
Has someone an idea to this problem or how to use tf.datasets correctly for a model with multiple input layers?

```
def read_tfrecord(bin_data):
for i in feature_map_dict:
label_seq[i] = tf_input_feature_selector(feature_map_dict[i])
img_seq = {'images': tf.io.FixedLenSequenceFeature([], dtype=tf.string)}
cont, seq = tf.io.parse_single_sequence_example(serialized=bin_data, context_features=label_seq, sequence_features=img_seq)
image_raw = seq['images']
images = decode_image_raw(image_raw)
images = tf.reshape(images, [20,512,512,3])
images = preprocess_input(images)
label = cont["label"]
return images, label
def get_dataset(tfrecord_path):
dataset = tf.data.TFRecordDataset(filenames=tfrecord_path)
dataset = dataset.map(read_tfrecord)
dataset = dataset.prefetch(buffer_size=AUTOTUNE)
dataset = dataset.batch(BATCH_SIZE)
return dataset
def create_model():
nets =[]
inputs=[]
# Set up base model
base_ResNet50 = ResNet50(weights='imagenet', include_top= False, input_shape=(512, 512, 3))
for images_idx in list(range(0,20)):
x = Input(shape=(512,512,3))
inputs.append(x)
x = base_ResNet50(x)
nets.append(x)
maxpooling = tf.reduce_max(nets, [0])
flatten = Flatten()(maxpooling)
dense_1 = Dense(10,activation='sigmoid')(flatten)
predictions = Dense(1,activation='sigmoid')(dense_1)
model = Model(inputs=inputs, outputs=predictions)
model.compile(loss='binary_crossentropy', optimizer='adam', metrics=['accuracy'])
return model
```

Thanks in advance.

With a small modification of Niteya's idea the test toy-model runs the training. Great!

But I am still not happy with this solution, because all 20 images belong to one object and so far I understand this solution I have to create 21 tfrecords. By that, the informations of one object will be distributed overall these files. I would like to have a more easy solution, where all the informations of an object are in only one tfrecord.

This testing toy-model works!!!

```
import tensorflow as tf
import tensorflow.keras as keras
from tensorflow.keras.layers import Input, Flatten, Dense
from tensorflow.keras.models import Model
x_1 = Input(shape=(100,100,3))
x_2 = Input(shape=(100,100,3))
inputs = [x_1,x_2]
flatten_1 = Flatten()(x_1)
flatten_2 = Flatten()(x_2)
dense_1 = Dense(50,activation='sigmoid')
d1_1 = dense_1(flatten_1)
d1_2 = dense_1(flatten_2)
nets =[d1_1,d1_2]
maxpooling = tf.reduce_max(nets, [0])
d2 = Dense(10,activation='sigmoid')(maxpooling)
predictions = Dense(1,activation='sigmoid')(d2)
model = Model(inputs=inputs, outputs=predictions)
model.compile(loss='binary_crossentropy', optimizer='adam',
metrics=['accuracy'])
for layer in model.layers:
print(layer.name)
input_d = tf.data.Dataset.zip(tuple(tf.data.Dataset.from_tensors(tf.random.normal([16,100,100,3])) for i in range(2)))
output = tf.data.Dataset.from_tensors(tf.ones(16))
dataset = tf.data.Dataset.zip((input_d, output))
model.fit(dataset,epochs=5)
```

Using Niteya's second idea with the function tf.split is a good solution. Niteya, thank you very much.

```
inputs = Input(shape=(20,512,512,3))
for x in tf.split(inputs,num_or_size_splits=20, axis=1):
x = tf.reshape(x,[-1,512,512,3])
x = base_ResNet50(x)
nets.append(x)```
and
```

BATCH_SIZE=1 model.fit(train_dataset, steps_per_epoch=10, epochs=5)