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test.py
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from microNN import MicroNN
microNN = MicroNN()
l1 = microNN.AddInputLayer ( dimensions = MicroNN.Init1D(2),
shape = MicroNN.Shape.Bool )
l2 = microNN.AddLayer ( dimensions = MicroNN.Init1D(2),
shape = MicroNN.Shape.Neuron,
activation = MicroNN.Activation.Gaussian,
initializer = MicroNN.LogisticInitializer(MicroNN.Initializer.HeUniform),
connStruct = MicroNN.FullyConnected )
l3 = microNN.AddLayer ( dimensions = MicroNN.Init1D(1),
shape = MicroNN.Shape.Bool,
activation = MicroNN.Activation.Heaviside,
initializer = MicroNN.ReLUInitializer(MicroNN.Initializer.HeUniform),
connStruct = MicroNN.FullyConnected )
microNN.InitWeights()
#microNN = MicroNN.LoadFromJSONFile('XOR.json')
print()
print('MicroNN :')
print(' - Layers : %s' % microNN.LayersCount)
print(' - Neurons : %s' % microNN.NeuronsCount)
print(' - Connections : %s' % microNN.ConnectionsCount)
print()
microNN.AddExample( [False, False], [False] )
microNN.AddExample( [False, True ], [True ] )
microNN.AddExample( [True , True ], [False] )
microNN.AddExample( [True , False], [True ] )
learned = microNN.LearnExamples()
#microNN.SaveToJSONFile("XOR.json")
print()
print( "LEARNED [%s] :" % learned)
print( " - False XOR False = %s" % microNN.Predict([False, False])[0] )
print( " - False XOR True = %s" % microNN.Predict([False, True] )[0] )
print( " - True XOR True = %s" % microNN.Predict([True , True] )[0] )
print( " - True XOR False = %s" % microNN.Predict([True , False])[0] )
print()