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I have a Sequential model defined as the following:

model = Sequential([
    BatchNormalization(axis=1,input_shape=(2,4)),
    Flatten(),
    Dense(256, activation='relu'),       
    BatchNormalization(),
    Dropout(0.1),
    Dense(2, activation='softmax')
])

I'd like to change this model to take inputs of variable shapes. Specifically, the first dimension needs to be variable. Reading the Keras docs on specifying the input shape, I see that you can use None entries in the input_shape tuple where None indicates that any positive integer may be expected.

With my existing model, if I change the input_shape from (2,4) to (None,4), I receive the error below:

---> Dense(2, activation='softmax')
TypeError: an integer is required

I'm not positive, but I don't believe one can specify variable input shapes when the model contains a Flatten() layer. I've read that Flatten() needs to know the input shape, and so variable input shapes are not compatible with Flatten(). If I remove the Flatten() layer, I receive the same error as above. I wouldn't expect this model to work without the Flatten() layer since I believe it is a requirement that the input is flattened before being passed to a Dense layer.

Given this, can anyone explain how I may be able to utilize variable input shapes? If the problem here is the Flatten() layer, what would be some ways to work around that given that inputs should be flattened before being passed to Dense layers?

Thanks in advance for any advice.

Edit: To give an example of a potential training set-- For the model shown above with input_shape=(2,4), the training set may look like the following, where each 2-d array in the set has shape (2,4):

x_train = np.array([
         [[1, 1.02, 1.3, 0.9], [1.1, 1.2, 0.91, 0.99]], 
         [[1, 1.02, 1.3, 0.9], [1.1, 1.2, 0.91, 0.99]],
         [[1.01 ,1, 1.2, 1.2], [1.3, 1.2, 0.89, 0.98]]
        ])

For the data with input_shape = (None,4), where the shape of the first dimension of each data point can vary, and the second is fixed at 4, the training set may look like:

x_train = np.array([
         [[1, 1.02, 1.3, 0.9], [1.1, 1.2, 0.91, 0.99], [1.1, 1.2, 0.91, 0.99]], 
         [[1, 1.02, 1.3, 0.9], [1.1, 1.2, 0.91, 0.99]],
         [[1,1,1,1], [1.3, 1.2, 0.89, 0.98], [1,1,1,1], [1,1,1,1]]
        ])
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    Can you explain a bit more about your data shape. Why will it be variable? Are you talking about the number of samples that can vary. Or the features can vary? – Vivek Kumar Jul 19 '17 at 9:09
  • @VivekKumar I'm talking about the features can vary. For example, in the model above, I'm passing inputs that have shape (2,4). Example: [[1, 1.02, 1.3, 0.9], [1.1, 1.2, 0.91, 0.99]] But instead of having this hard-coded shape of (2,4), I need the model to be able to accept inputs with a variable first dimension. So some of the input could have shape (2,4), for example, like what's illustrated in the example just above, and other inputs could have shape (3,4) or (4,4) or (5,4), etc. Example input of shape (3,4): [[1, 1.02, 1.3, 0.9], [1.1, 1.2, 0.91, 0.99], [1.3, 1.2, 0.89, 0.98]]. – blackHoleDetector Jul 20 '17 at 0:12
  • Yes, thats what I am asking. In a 2-d data array, first dimension represents the samples, not features. This means that your samples are changing and features are same. You should specify input_shape=(4). – Vivek Kumar Jul 20 '17 at 2:36
  • Thanks @VivekKumar, but I don't think this is correct. With input_shape=(4), the model expects each data point to be a single 1-d array of length 4. This will not be the case. My entire data set is not a 2-d array containing sub 1-d arrays of length 4. Each data point within the set will be a 2-d array where there could be 2,3,4,5,...,n 1-d arrays of length 4 within that 2-d array. x_train = np.array([ [[1,1,1,1], [1,2,3,9], [1,1,1,1]], [[1,2,2,2], [1,1,1,7]], [[1,1,1,1],[1,1,5,2],[1,2,1,1],[1,2,2,2]] ]) – blackHoleDetector Jul 21 '17 at 2:18
  • Added an edit to the original post to better display example training sets. – blackHoleDetector Jul 21 '17 at 2:33
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x_train is having a varing dimension which will cause trouble at training stage. Does it make a big deal to your data if wer pad extra zeros? If not, find out the maximum of varying dimensoin and build your new array accordingly as illustrated below in the jupyter notebook:Dimension of x_train and x_train2

The way how you pad zeros

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