For a Feedforward Network (FFN), it is easy to compute the number of parameters. Given a CNN, LSTM etc is there a quick way to find the number of parameters in a keras model?
4 Answers
Models and layers have special method for that purpose:
model.count_params()
Also, to get a short summary of each layer dimensions and parameters, you might find useful the following method
model.summary()
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Notice, that is the count for total, trainable and non-trainable parameters. Apr 13, 2022 at 11:43
import keras.backend as K
def size(model): # Compute number of params in a model (the actual number of floats)
return sum([np.prod(K.get_value(w).shape) for w in model.trainable_weights])
Tracing back the print_summary()
function, Keras developers compute the number of trainable and non_trainable parameters of a given model
as follows:
import keras.backend as K
import numpy as np
trainable_count = int(np.sum([K.count_params(p) for p in set(model.trainable_weights)]))
non_trainable_count = int(np.sum([K.count_params(p) for p in set(model.non_trainable_weights)]))
Given that K.count_params()
is defined as np.prod(int_shape(x))
, this solution is quite similar to the one of Anuj Gupta, except for the use of set()
and the way the shape of the tensors are retrieved.
After creating your network add: model.summary
And it will give you a summary of your network and the number of parameters.