I have a set of Keras models (30) that I trained and saved using:
model.save('model{0}.h5'.format(n_model))
When I try to load them, using load_model
, the time required for each model is quite large and incremental. The loading is done as:
models = {}
for i in range(30):
start = time.time()
models[i] = load_model('model{0}.h5'.format(ix))
end = time.time()
print "Model {0}: seconds {1}".format(ix, end - start)
And the output is:
...
Model 9: seconds 7.38966012001
Model 10: seconds 9.99283003807
Model 11: seconds 9.7262301445
Model 12: seconds 9.17000102997
Model 13: seconds 10.1657290459
Model 14: seconds 12.5914049149
Model 15: seconds 11.652477026
Model 16: seconds 12.0126030445
Model 17: seconds 14.3402299881
Model 18: seconds 14.3761711121
...
Each model is really simple: 2 hidden layers with 10 neurons each (size ~50Kb). Why is the loading taking so much and why is the time increasing? Am I missing something (e.g. close function for the model?)
SOLUTION
I found out that to speed up the loading of the model is better to store the structure of the networks and the weights into two distinct files: The saving part:
model.save_weights('model.h5')
model_json = model.to_json()
with open('model.json', "w") as json_file:
json_file.write(model_json)
json_file.close()
The loading part:
from keras.models import model_from_json
json_file = open("model.json", 'r')
loaded_model_json = json_file.read()
json_file.close()
model = model_from_json(loaded_model_json)
model.load_weights("model.h5")
I solved the problem by clearing the keras session before each load
from keras import backend as K
for i in range(...):
K.clear_session()
model = load_model(...)