I got the following error when I tried to train an MLP model in keras(I am using keras version 1.2.2)

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 1 arrays but instead got the following list of 12859 arrays:

This is the summary of the model

Layer (type)                     Output Shape          Param #     Connected to
dense_1 (Dense)                  (None, 20)            4020        dense_input_1[0][0]
dense_2 (Dense)                  (None, 2)             42          dense_1[0][0]
Total params: 4,062
Trainable params: 4,062
Non-trainable params: 0

This is the first line of model

 model.add(Dense(20, input_shape=(200,), init='lecun_uniform', activation='tanh'))

For training:


where X is a list of elements and each element in turn is a list of 200 values.

Edit :

I also tried

model.add(Dense(20, input_shape=(12859,200), init='lecun_uniform', activation='tanh'))

but I am getting the same error

  • 1
    Try using the keyword input_dim instead: input_dim=200 which defines the number of input nodes. The number of samples is variable then. With input_shape you have to specify the full shape, i.e. also the number of samples (input_shape=(len(X), 200)).
    – a_guest
    Commented Mar 4, 2017 at 12:39
  • 1
    How about model.fit(numpy.array(X), Y,nb_epoch=100,verbose=1) it seems that for some reason your X is not a numpy array. Commented Mar 4, 2017 at 12:41
  • 2
    Try passing a np.array(X) instead of a list of np.array to model.fit. Commented Mar 4, 2017 at 12:43
  • 1
    Exactly. It would be better if you provided a full code - with X and Y definition. Try to print out type(X). Commented Mar 4, 2017 at 12:44
  • 1
    Thanks guys .. it seems to work with input_dim=200 , passing np.array(X). Commented Mar 4, 2017 at 12:53

2 Answers 2


Your error comes from the fact that your X for some reason wasn't transformed to a numpy.array. In this your X is treated as a list of rows and this is a reason behind your error message (that it expected one input instead of list which has a number of rows elements). Transformation:

X = numpy.array(X)
Y = numpy.array(Y)

I would check a data loading process because something might go wrong there.


As it was mentioned in a comment - input_shape need to be changed to input_dim.


In order to keep input_shape one should change to it to input_shape=(200,).

  • Thank you for summarizing .. I also had to change input_shape to input_dim . Please add that to your answer :) Commented Mar 4, 2017 at 13:02
  • 1
    Done. If you want to keep input_shape then try input_shape=(200,). Commented Mar 4, 2017 at 13:04
  • Worked for me too. Oh god! This is such a dumb error. Keras developers should've written some code to just automatically convert the array into a numpy array instead of showing this dumb error!!!
    – Julian
    Commented Dec 16, 2019 at 4:28

I fixed mine by adding


to train_X , train_Y , valid_X and valid_Y. For example,


I got the help from here. This approach is likely to have a slow run because all data features will have to be converted to numpy arrays and it could be a lot of work for your system.

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