I am trying to train a very simple model which only have one convolution layer.

```
def kernel_model(filters=1, kernel_size=3):
input_layer = Input(shape=(250,1))
conv_layer = Conv1D(filters=filters,kernel_size=kernel_size,padding='same',use_bias = False)(input_layer)
model = Model(inputs=input_layer,output=conv_layer)
return model
```

But the input(X), prediction output(y_pred) and true_output(y_true) are all complex number. When I call the function `model.fit(X,y_true)`

There is the error
`TypeError: Gradients of complex tensors must set grad_ys (y.dtype = tf.complex64)`

Does that means I have to write the back-propagation by hand?

What should I do to solve this problem? thanks

`def mse_error(y_true,y_pred): y_pred = tf.cast(y_pred,tf.complex64) y_true = K.cast(y_true,tf.complex64) error = K.cast(K.mean(K.square(y_pred_propgation - y_true)),tf.complex64) return error`

`K.mean(K.square(K.abs(y_true-y_pred)))`

Then the model can be trained! I will check whether the prediction result is right or not. Thanks for help @MartinThøgersen. Really helps a lot!1more comment