Added this other version for bow-tie

This commit is contained in:
Crista Lopes
2020-12-03 10:19:24 -08:00
parent 454e4956e3
commit 2b8e26b54b

View File

@@ -0,0 +1,73 @@
from keras.models import Sequential
from keras.layers import Dense, Activation, Multiply, ReLU, Lambda
import keras.backend as K
import numpy as np
import sys, os, string, random
characters = string.printable
char_indices = dict((c, i) for i, c in enumerate(characters))
indices_char = dict((i, c) for i, c in enumerate(characters))
INPUT_VOCAB_SIZE = len(characters)
BATCH_SIZE = 200
def encode_one_hot(line):
x = np.zeros((len(line), INPUT_VOCAB_SIZE))
for i, c in enumerate(line):
index = char_indices[c] if c in characters else char_indices[' ']
x[i][index] = 1
return x
def decode_one_hot(x):
s = []
for onehot in x:
one_index = np.argmax(onehot)
s.append(indices_char[one_index])
return ''.join(s)
def build_model():
model = Sequential()
model.add(Dense(1, input_shape=(INPUT_VOCAB_SIZE,)))
model.add(Dense(INPUT_VOCAB_SIZE))
model.add(Dense(INPUT_VOCAB_SIZE, activation='softmax'))
return model
def input_generator(nsamples):
def generate_line():
inline = []; outline = []
for _ in range(nsamples):
c = random.choice(characters)
expected = c.lower() if c in string.ascii_letters else ' '
inline.append(c); outline.append(expected)
return ''.join(inline), ''.join(outline)
while True:
input_data, expected = generate_line()
data_in = encode_one_hot(input_data)
data_out = encode_one_hot(expected)
yield data_in, data_out
def train(model):
model.compile(loss='categorical_crossentropy',
optimizer='adam',
metrics=['accuracy'])
input_gen = input_generator(BATCH_SIZE)
validation_gen = input_generator(BATCH_SIZE)
model.fit_generator(input_gen,
epochs = 10, workers=1,
steps_per_epoch = 1000,
validation_data = validation_gen,
validation_steps = 10)
model = build_model()
model.summary()
train(model)
input("Network has been trained. Press <Enter> to run program.")
with open(sys.argv[1]) as f:
for line in f:
if line.isspace(): continue
batch = encode_one_hot(line)
preds = model.predict(batch)
normal = decode_one_hot(preds)
print(normal)