Error Using Prediction With LSTM
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Uriel Eduardo Carrero Cuadrado
on 23 Jun 2021
Commented: Uriel Eduardo Carrero Cuadrado
on 10 Jul 2021
Hi Everyone!
I trained an LSTM with Keras and I'm importing this network with a .h5 file and it has the next characteristics:
Dimensions for inputs in this network with keras are a 3D matrix composed by (number of samples, time steps, number features per time step), I'm trying the same dimension in MATLAB but I get this error:
Undefined function 'predict' for input arguments of type 'nnet.cnn.layer.Layer'.
This is the code that I'm using for predict:
modelfile = 'Modelos\ControlLSTM_XYZ_1.h5';
net = importKerasLayers(modelfile)
save('Modelos\netLSTM.mat','net')
Example=randi([0 10],5,4,24)/10;
predict(net,Example)
In this case 'Example' is a matrix of inputs with random values between 1 and 0, that I'd use for generate a prediction with my neural network, I'd like to know if this format for inputs change in MATLAB or if it still the same, due to it's a network from Keras, also I'd like to know if in my code I'm doing some mistake with LSTM networks because I don't understanf why MATLAB show an error related with convolutional neural networks?.
Thanks for your help.
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Accepted Answer
Swetha Polemoni
on 5 Jul 2021
Edited: Swetha Polemoni
on 5 Jul 2021
Hi
It is observed that you are calling "predict" on the layerGraph object/layers array. predict is not allowed on layerGraph object/layers array. Before calling predict with layerGraph object, the layerGraph object has to be converted to dagnetwork using assembleNetwork. You can find an eample of this case in the following documentation Assemble Network from Pretrained Keras Layers.
To understand the the difference between LayerGraph and DAGNetwork refer to the following answerwhat is the difference between LayerGraph and DAGNetwork in deep learning?
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