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							- #!/usr/bin/python3
 
- from __future__ import print_function
 
- from keras.models import Sequential
 
- from keras.models import Model
 
- from keras.layers import Input
 
- from keras.layers import Dense
 
- from keras.layers import LSTM
 
- from keras.layers import GRU
 
- from keras.layers import CuDNNGRU
 
- from keras.layers import SimpleRNN
 
- from keras.layers import Dropout
 
- from keras import losses
 
- import h5py
 
- from keras.optimizers import Adam
 
- from keras.constraints import Constraint
 
- from keras import backend as K
 
- import numpy as np
 
- import tensorflow as tf
 
- from keras.backend.tensorflow_backend import set_session
 
- config = tf.ConfigProto()
 
- config.gpu_options.per_process_gpu_memory_fraction = 0.44
 
- set_session(tf.Session(config=config))
 
- def binary_crossentrop2(y_true, y_pred):
 
-     return K.mean(2*K.abs(y_true-0.5) * K.binary_crossentropy(y_true, y_pred), axis=-1)
 
- def binary_accuracy2(y_true, y_pred):
 
-     return K.mean(K.cast(K.equal(y_true, K.round(y_pred)), 'float32') + K.cast(K.equal(y_true, 0.5), 'float32'), axis=-1)
 
- def quant_model(model):
 
-     weights = model.get_weights()
 
-     for k in range(len(weights)):
 
-         weights[k] = np.maximum(-128, np.minimum(127, np.round(128*weights[k])*0.0078125))
 
-     model.set_weights(weights)
 
- class WeightClip(Constraint):
 
-     '''Clips the weights incident to each hidden unit to be inside a range
 
-     '''
 
-     def __init__(self, c=2):
 
-         self.c = c
 
-     def __call__(self, p):
 
-         return K.clip(p, -self.c, self.c)
 
-     def get_config(self):
 
-         return {'name': self.__class__.__name__,
 
-             'c': self.c}
 
- reg = 0.000001
 
- constraint = WeightClip(.998)
 
- print('Build model...')
 
- main_input = Input(shape=(None, 25), name='main_input')
 
- x = Dense(32, activation='tanh', kernel_constraint=constraint, bias_constraint=constraint)(main_input)
 
- #x = CuDNNGRU(24, return_sequences=True, kernel_constraint=constraint, recurrent_constraint=constraint, bias_constraint=constraint)(x)
 
- x = GRU(24, recurrent_activation='sigmoid', activation='tanh', return_sequences=True, kernel_constraint=constraint, recurrent_constraint=constraint, bias_constraint=constraint)(x)
 
- x = Dense(2, activation='sigmoid', kernel_constraint=constraint, bias_constraint=constraint)(x)
 
- model = Model(inputs=main_input, outputs=x)
 
- batch_size = 2048
 
- print('Loading data...')
 
- with h5py.File('features10b.h5', 'r') as hf:
 
-     all_data = hf['data'][:]
 
- print('done.')
 
- window_size = 1500
 
- nb_sequences = len(all_data)//window_size
 
- print(nb_sequences, ' sequences')
 
- x_train = all_data[:nb_sequences*window_size, :-2]
 
- x_train = np.reshape(x_train, (nb_sequences, window_size, 25))
 
- y_train = np.copy(all_data[:nb_sequences*window_size, -2:])
 
- y_train = np.reshape(y_train, (nb_sequences, window_size, 2))
 
- print("Marking ignores")
 
- for s in y_train:
 
-     for e in s:
 
-         if (e[1] >= 1):
 
-             break
 
-         e[0] = 0.5
 
- all_data = 0;
 
- x_train = x_train.astype('float32')
 
- y_train = y_train.astype('float32')
 
- print(len(x_train), 'train sequences. x shape =', x_train.shape, 'y shape = ', y_train.shape)
 
- model.load_weights('newweights10a1b_ep206.hdf5')
 
- #weights = model.get_weights()
 
- #for k in range(len(weights)):
 
- #    weights[k] = np.round(128*weights[k])*0.0078125
 
- #model.set_weights(weights)
 
- # try using different optimizers and different optimizer configs
 
- model.compile(loss=binary_crossentrop2,
 
-               optimizer=Adam(0.0001),
 
-               metrics=[binary_accuracy2])
 
- print('Train...')
 
- quant_model(model)
 
- model.fit(x_train, y_train,
 
-           batch_size=batch_size,
 
-           epochs=10, validation_data=(x_train, y_train))
 
- model.save("newweights10a1c_ep10.hdf5")
 
- quant_model(model)
 
- model.fit(x_train, y_train,
 
-           batch_size=batch_size,
 
-           epochs=50, initial_epoch=10)
 
- model.save("newweights10a1c_ep50.hdf5")
 
- model.compile(loss=binary_crossentrop2,
 
-               optimizer=Adam(0.0001),
 
-               metrics=[binary_accuracy2])
 
- quant_model(model)
 
- model.fit(x_train, y_train,
 
-           batch_size=batch_size,
 
-           epochs=100, initial_epoch=50)
 
- model.save("newweights10a1c_ep100.hdf5")
 
- quant_model(model)
 
- model.fit(x_train, y_train,
 
-           batch_size=batch_size,
 
-           epochs=150, initial_epoch=100)
 
- model.save("newweights10a1c_ep150.hdf5")
 
- quant_model(model)
 
- model.fit(x_train, y_train,
 
-           batch_size=batch_size,
 
-           epochs=200, initial_epoch=150)
 
- model.save("newweights10a1c_ep200.hdf5")
 
- quant_model(model)
 
- model.fit(x_train, y_train,
 
-           batch_size=batch_size,
 
-           epochs=201, initial_epoch=200)
 
- model.save("newweights10a1c_ep201.hdf5")
 
- quant_model(model)
 
- model.fit(x_train, y_train,
 
-           batch_size=batch_size,
 
-           epochs=202, initial_epoch=201, validation_data=(x_train, y_train))
 
- model.save("newweights10a1c_ep202.hdf5")
 
- quant_model(model)
 
- model.fit(x_train, y_train,
 
-           batch_size=batch_size,
 
-           epochs=203, initial_epoch=202, validation_data=(x_train, y_train))
 
- model.save("newweights10a1c_ep203.hdf5")
 
- quant_model(model)
 
- model.fit(x_train, y_train,
 
-           batch_size=batch_size,
 
-           epochs=204, initial_epoch=203, validation_data=(x_train, y_train))
 
- model.save("newweights10a1c_ep204.hdf5")
 
- quant_model(model)
 
- model.fit(x_train, y_train,
 
-           batch_size=batch_size,
 
-           epochs=205, initial_epoch=204, validation_data=(x_train, y_train))
 
- model.save("newweights10a1c_ep205.hdf5")
 
- quant_model(model)
 
- model.fit(x_train, y_train,
 
-           batch_size=batch_size,
 
-           epochs=206, initial_epoch=205, validation_data=(x_train, y_train))
 
- model.save("newweights10a1c_ep206.hdf5")
 
 
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