

- use keras and tensorflow backend
- use CPU only , memory 128GB
- input data has the shape (45,1024,1024)
- the model has only one convolution , one (2,2) max pooling
- a 1024 *1024 fully connected.
I got this error message:
Invalid argument: Shape [4194304,1048576] is too large (more than 1099511627776 entries)
note that:
4194304 = 2048 * 2048
1048576 = 1024 * 1024
How did keras compute this shape? why is it too large?
The shape
[4194304, 1048576]is computed as follows:Applying 16 convolutions of size
[3, 3]with thesameborder mode to the inputs of size[1024, 1024, 3]gives us output of size[1024, 1024, 16]. After max pooling of size 2 it becomes[512, 512, 16]which when flattened is512 * 512 * 16 = 4194304.1048576comes from1024 * 1024as you specified in theDenselayer constructor.I think you should reconsider the architecture of you model. You can use inputs of smaller size, add several pooling layers, reduce dimensionality applying
1 x 1convolutions. And I doubt that1024 * 1024is a reasonable number of nodes in a fully connected layer.