I've heard that is possible to feed a neural network built using tensorflow/keras with complex data and get a complex output specifying the "dtype" of each layer = tf.complex64 (or similar).

X = K.Input(shape = (n_taps,1), dtype = tf.complex64)
fc1 = K.layers.LSTM(n_fc1,activation="tanh",dtype = tf.complex64)  (X)

The declaration of each single layer does not give errors but calling the second layer giving as argument the first layer (2nd line I mean) gives the following expected error:

TypeError: Input 'b' of 'MatMul' Op has type float32 that does not match type complex64 of argument 'a'.

I did not understand if it's possible or not have this kind of network. Has anyone more informations about this? Thanks in advance


It's because K.layers.LSTM doesn't support tf.complex64 types. You would need to implement the layer yourself. You should start by subclassing tf.keras.layers.Layer, of which you can find an example in the docs of tf.keras.layers.Layer. The example is called the SimpleDense layer.

  • Thank you a lot! Do you know any layer already implemented that I can put in place of my LSTM layer that already support tf.complex64? – Marco Aprea Jul 3 '20 at 9:35
  • No not really. Let's try something else, why is your data complex? A complex number has a real and an imaginary part. So why not just represent your data as with shape=(n_taps, 2)? The 2 is for both the real and the imaginary part. – Frederik Bode Jul 3 '20 at 10:01
  • 1
    Yes I’ve already done in that way and it works. I was just trying to improve my results. Thank you a lot, now I ve clearer ideas. – Marco Aprea Jul 4 '20 at 12:58

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