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train_letters.py
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train_letters.py
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#!/usr/bin/env python
#!/usr/bin/python
import layer
import letter
# import tensorflow as tf
# import layer.baselines
# layer.clear_tensorboard() # Get rid of old runs
data = letter.batch()
input_width, output_width=data.shape[0],data.shape[1]
# learning_rate = 0.03 # divergence even on overfit
# learning_rate = 0.003 # quicker overfit
learning_rate = 0.0003
nClasses =letter.nLetters
training_steps = 500000
batch_size = 64
size = letter.max_size
# OH, it does converge
# Test Accuracy: ~0.875 Step 1.000.000 52148s
def denseConv(net):
# type: (layer.net) -> None
print("Building dense-net")
net.reshape(shape=[-1, size, size, 1]) # Reshape input picture
net.buildDenseConv(nBlocks=1)
net.classifier() # 10 classes auto
""" Baseline tests to see that your model doesn't have any bugs and can learn small test sites without efforts """
# net = layer.net(layer.baseline, input_width=size, output_width=nClasses, learning_rate=learning_rate)
# learning_rate: 0.003: full overfit at Step 800
# learning_rate: 0.0003: full overfit at Step 2400
# net = layer.net(layer.baselineDeep3, input_width=size, output_width=nClasses, learning_rate=learning_rate)
# learning_rate: 0.003: overfit 98% at Step 5000
# learning_rate: 0.0003: full overfit at Step 24000
# net = layer.net(layer.baselineBatchNormDeep, input_width=size, output_width=nClasses, learning_rate=learning_rate)
# learning_rate: 0.003: overfit 98% at Step 3000 ++
# net = layer.net(layer.baselineDenseConv, input_width=size, output_width=nClasses, learning_rate=learning_rate)
# learning_rate: 0.003: overfit 98% at Step 3000 ++
# alex = broken baseline! lol, how?
# net = layer.net(layer.alex, input_width=size, output_width=nClasses, learning_rate=.001)
# net.train(data=data, test_step=1000) # run
""" here comes the real network """
# net=layer.net(alex,input_width=28, output_width=nClasses, learning_rate=learning_rate) # NOPE!?
net = layer.net(denseConv, input_width=size, output_width=nClasses, learning_rate=learning_rate)
# net.train(data=data,steps=50000,dropout=0.6,display_step=1,test_step=1) # debug
# net.train(data=data, steps=training_steps,dropout=0.6,display_step=5,test_step=20) # test
net.train(data=data, dropout=.6, display_step=10, test_step=1000) # run resume
# net.predict() # nil=random
# net.generate(3) # nil=random