from keras.models import load_model import numpy as np from keras.utils import np_utils def read_data(path): with open(path) as f : lines=f.readlines()[0:3] lines=[eval(line.strip()) for line in lines] X,Y=zip(*lines) X=np.array(X) X=1.0*X/256 X=X.reshape(-1,28*28) Y=np.array(Y) Y=np_utils.to_categorical(Y,num_classes) return X,Y num_classes=11 X,Y=read_data("test_data") model = load_model('model') results=model.predict(X) for result,y in zip(results,Y): print(result) print(y)