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convolutional tflearn example
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# Building convolutional network | |
network = input_data(shape=[None, 28, 28, 1], name='input') | |
network = conv_2d(network, 32, 3, activation='relu', regularizer="L2") | |
network = max_pool_2d(network, 2) | |
network = local_response_normalization(network) | |
network = conv_2d(network, 64, 3, activation='relu', regularizer="L2") | |
network = max_pool_2d(network, 2) | |
network = local_response_normalization(network) | |
network = fully_connected(network, 128, activation='tanh') | |
network = dropout(network, 0.8) | |
network = fully_connected(network, 256, activation='tanh') | |
network = dropout(network, 0.8) | |
network = fully_connected(network, 10, activation='softmax') | |
network = regression(network, optimizer='adam', learning_rate=0.01, | |
loss='categorical_crossentropy', name='target') | |
# Training | |
model = tflearn.DNN(network) | |
model.fit({'input': X}, {'target': Y}, n_epoch=20, | |
validation_set=({'input': testX}, {'target': testY}), | |
snapshot_step=100, show_metric=True, run_id='convnet_mnist') |
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