neural_networks2
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@ -15,20 +15,10 @@ dig_train_images, dig_train_labels = extract_training_samples('digits')
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dig_test_images, dig_test_labels = extract_test_samples('digits')
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let_train_images, let_train_labels = extract_training_samples('letters')
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let_test_images, let_test_labels = extract_test_samples('letters')
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#print(dig_train_images.shape)
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#def plotdigit(image):
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# img = np.reshape(image, (-1, 28))
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# imshow(img, cmap='Greys', vmin=0, vmax=255)
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print(dig_train_images.shape)
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"""
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dig_train_images = dig_train_images / 255
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dig_test_images = dig_test_images / 255
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let_train_images = let_train_images / 255
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let_test_images = let_test_images / 255
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dig_train_images = [torch.tensor(image, dtype=torch.float32) for image in dig_train_images]
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"""
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#print(dig_train_images[0])
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dig_train_images = dig_train_images.reshape(len(dig_train_images),28*28)
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d_train = dig_train_images[:1000]
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@ -45,13 +35,16 @@ print(d_labelstest)
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class NeuralNetwork:
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def __init__(self, inputNodes, hiddenNodes, outputNodes, learningGrade):
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def __init__(self, inputNodes, hiddenNodes, outputNodes, learningGrade, fileWeight, fileHidden):
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self.inodes = inputNodes
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self.hnodes = hiddenNodes
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self.onodes = outputNodes
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self.weights = (np.random.rand(self.hnodes, self.inodes) - 0.5)
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self.hidden = (np.random.rand(self.onodes, self.hnodes) - 0.5)
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"""te pierwsze dwa użyj przy nauce, potem zostaw cały czas te 2"""
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#self.weights = (np.random.rand(self.hnodes, self.inodes) - 0.5)
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#self.hidden = (np.random.rand(self.onodes, self.hnodes) - 0.5)
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self.weights = np.load(fileWeight)
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self.hidden = np.load(fileHidden)
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#print( 'Matrix1 \n', self.weights)
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#print( 'Matrix2 \n', self.hidden)
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@ -89,6 +82,10 @@ class NeuralNetwork:
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pass
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def saveTraining(self, fileWeight, fileHidden):
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np.save(fileWeight, self.weights)
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np.save(fileHidden, self.hidden)
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def query(self, inputsList):
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inputs = np.array(inputsList, ndmin=2).T
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@ -104,27 +101,18 @@ class NeuralNetwork:
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"""
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def getAccurancy(predictons,Y):
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print(predictons,Y)
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return np.sum(predictons=Y)/Y.size
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def getPredictions(A2):
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return np.argmax(A2,0)
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"""
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""" dodaj tablicę literek"""
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#n = NeuralNetwork(inputNodes=3, hiddenNodes=5, outputNodes=2, learningGrade=0.2)
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n = NeuralNetwork(inputNodes=784, hiddenNodes=200, outputNodes=10, learningGrade=0.1)
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digitNetwork = NeuralNetwork(inputNodes=784, hiddenNodes=200, outputNodes=10, learningGrade=0.1, fileWeight="Dweights.npy", fileHidden="Dhidden.npy")
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def trainNetwork(n):
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def trainNetwork(n, fWeight, fHidden, trainingSamples):
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epochs = 10
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outputNodes = 10
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for e in range(epochs):
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m=0
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print('Epoch', e+1)
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for record in d_train:
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for record in trainingSamples:
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inputs = (np.asfarray(record[0:])/255 * 0.99) + 0.01
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#print(inputs.shape)
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@ -136,15 +124,17 @@ def trainNetwork(n):
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m+=1
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pass
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pass
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n.saveTraining(fileWeight=fWeight, fileHidden=fHidden)
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trainNetwork(n)
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record = d_test[0]
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##################################### ODPALANIE TRAINING
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#trainNetwork(digitNetwork, "Dweights.npy", "Dhidden.npy", d_train)
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#record = d_test[0]
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#print('Label', d_labelstest[0])
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inputs = np.asfarray(record[0:])/ 255 * 0.99 + 0.01
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#inputs = np.asfarray(record[0:])/ 255 * 0.99 + 0.01
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#print(n.query(inputs))
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#testing
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