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model.py
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model.py
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import _pickle as pickle
import os
import time
import numpy as np
import shutil
import tensorflow as tf
import reader
from common import Common
from rouge import FilesRouge
class Model:
topk = 10
num_batches_to_log = 100
def __init__(self, config):
self.config = config
self.sess = tf.Session()
self.eval_queue = None
self.predict_queue = None
self.eval_placeholder = None
self.predict_placeholder = None
self.eval_predicted_indices_op, self.eval_top_values_op, self.eval_true_target_strings_op, self.eval_topk_values = None, None, None, None
self.predict_top_indices_op, self.predict_top_scores_op, self.predict_target_strings_op = None, None, None
self.subtoken_to_index = None
if config.LOAD_PATH:
self.load_model(sess=None)
else:
with open('{}.dict.c2s'.format(config.TRAIN_PATH), 'rb') as file:
subtoken_to_count = pickle.load(file)
node_to_count = pickle.load(file)
target_to_count = pickle.load(file)
max_contexts = pickle.load(file)
self.num_training_examples = pickle.load(file)
print('Dictionaries loaded.')
if self.config.DATA_NUM_CONTEXTS <= 0:
self.config.DATA_NUM_CONTEXTS = max_contexts
self.subtoken_to_index, self.index_to_subtoken, self.subtoken_vocab_size = \
Common.load_vocab_from_dict(subtoken_to_count, add_values=[Common.PAD, Common.UNK],
max_size=config.SUBTOKENS_VOCAB_MAX_SIZE)
print('Loaded subtoken vocab. size: %d' % self.subtoken_vocab_size)
self.target_to_index, self.index_to_target, self.target_vocab_size = \
Common.load_vocab_from_dict(target_to_count, add_values=[Common.PAD, Common.UNK, Common.SOS],
max_size=config.TARGET_VOCAB_MAX_SIZE)
print('Loaded target word vocab. size: %d' % self.target_vocab_size)
self.node_to_index, self.index_to_node, self.nodes_vocab_size = \
Common.load_vocab_from_dict(node_to_count, add_values=[Common.PAD, Common.UNK], max_size=None)
print('Loaded nodes vocab. size: %d' % self.nodes_vocab_size)
self.epochs_trained = 0
def close_session(self):
self.sess.close()
def train(self):
print('Starting training')
start_time = time.time()
batch_num = 0
sum_loss = 0
best_f1 = 0
best_epoch = 0
best_f1_precision = 0
best_f1_recall = 0
epochs_no_improve = 0
self.queue_thread = reader.Reader(subtoken_to_index=self.subtoken_to_index,
node_to_index=self.node_to_index,
target_to_index=self.target_to_index,
config=self.config)
optimizer, train_loss = self.build_training_graph(self.queue_thread.get_output())
self.print_hyperparams()
print('Number of trainable params:',
np.sum([np.prod(v.get_shape().as_list()) for v in tf.trainable_variables()]))
self.initialize_session_variables(self.sess)
print('Initalized variables')
if self.config.LOAD_PATH:
self.load_model(self.sess)
time.sleep(1)
print('Started reader...')
multi_batch_start_time = time.time()
for iteration in range(1, (self.config.NUM_EPOCHS // self.config.SAVE_EVERY_EPOCHS) + 1):
self.queue_thread.reset(self.sess)
try:
while True:
batch_num += 1
_, batch_loss = self.sess.run([optimizer, train_loss])
sum_loss += batch_loss
# print('SINGLE BATCH LOSS', batch_loss)
if batch_num % self.num_batches_to_log == 0:
self.trace(sum_loss, batch_num, multi_batch_start_time)
sum_loss = 0
multi_batch_start_time = time.time()
except tf.errors.OutOfRangeError:
self.epochs_trained += self.config.SAVE_EVERY_EPOCHS
print('Finished %d epochs' % self.config.SAVE_EVERY_EPOCHS)
results, precision, recall, f1, rouge = self.evaluate()
if self.config.BEAM_WIDTH == 0:
print('Accuracy after %d epochs: %.5f' % (self.epochs_trained, results))
else:
print('Accuracy after {} epochs: {}'.format(self.epochs_trained, results))
print('After %d epochs: Precision: %.5f, recall: %.5f, F1: %.5f' % (
self.epochs_trained, precision, recall, f1))
print('Rouge: ', rouge)
if f1 > best_f1:
best_f1 = f1
best_f1_precision = precision
best_f1_recall = recall
best_epoch = self.epochs_trained
epochs_no_improve = 0
self.save_model(self.sess, self.config.SAVE_PATH)
else:
epochs_no_improve += self.config.SAVE_EVERY_EPOCHS
if epochs_no_improve >= self.config.PATIENCE:
print('Not improved for %d epochs, stopping training' % self.config.PATIENCE)
print('Best scores - epoch %d: ' % best_epoch)
print('Precision: %.5f, recall: %.5f, F1: %.5f' % (best_f1_precision, best_f1_recall, best_f1))
return
if self.config.SAVE_PATH:
self.save_model(self.sess, self.config.SAVE_PATH + '.final')
print('Model saved in file: %s' % self.config.SAVE_PATH)
elapsed = int(time.time() - start_time)
print("Training time: %sh%sm%ss\n" % ((elapsed // 60 // 60), (elapsed // 60) % 60, elapsed % 60))
def trace(self, sum_loss, batch_num, multi_batch_start_time):
multi_batch_elapsed = time.time() - multi_batch_start_time
avg_loss = sum_loss / self.num_batches_to_log
print('Average loss at batch %d: %f, \tthroughput: %d samples/sec' % (batch_num, avg_loss,
self.config.BATCH_SIZE * self.num_batches_to_log / (
multi_batch_elapsed if multi_batch_elapsed > 0 else 1)))
def evaluate(self, release=False):
eval_start_time = time.time()
if self.eval_queue is None:
self.eval_queue = reader.Reader(subtoken_to_index=self.subtoken_to_index,
node_to_index=self.node_to_index,
target_to_index=self.target_to_index,
config=self.config, is_evaluating=True)
reader_output = self.eval_queue.get_output()
self.eval_predicted_indices_op, self.eval_topk_values, _, _ = \
self.build_test_graph(reader_output)
self.eval_true_target_strings_op = reader_output[reader.TARGET_STRING_KEY]
self.saver = tf.train.Saver(max_to_keep=10)
if self.config.LOAD_PATH and not self.config.TRAIN_PATH:
self.initialize_session_variables(self.sess)
self.load_model(self.sess)
if release:
release_name = self.config.LOAD_PATH + '.release'
print('Releasing model, output model: %s' % release_name)
self.saver.save(self.sess, release_name)
shutil.copyfile(src=self.config.LOAD_PATH + '.dict', dst=release_name + '.dict')
return None
model_dirname = os.path.dirname(self.config.SAVE_PATH if self.config.SAVE_PATH else self.config.LOAD_PATH)
ref_file_name = model_dirname + '/ref.txt'
predicted_file_name = model_dirname + '/pred.txt'
if not os.path.exists(model_dirname):
os.makedirs(model_dirname)
with open(model_dirname + '/log.txt', 'w') as output_file, open(ref_file_name, 'w') as ref_file, open(
predicted_file_name,
'w') as pred_file:
num_correct_predictions = 0 if self.config.BEAM_WIDTH == 0 \
else np.zeros([self.config.BEAM_WIDTH], dtype=np.int32)
total_predictions = 0
total_prediction_batches = 0
true_positive, false_positive, false_negative = 0, 0, 0
self.eval_queue.reset(self.sess)
start_time = time.time()
try:
while True:
predicted_indices, true_target_strings, top_values = self.sess.run(
[self.eval_predicted_indices_op, self.eval_true_target_strings_op, self.eval_topk_values],
)
true_target_strings = Common.binary_to_string_list(true_target_strings)
ref_file.write(
'\n'.join(
[name.replace(Common.internal_delimiter, ' ') for name in true_target_strings]) + '\n')
if self.config.BEAM_WIDTH > 0:
# predicted indices: (batch, time, beam_width)
predicted_strings = [[[self.index_to_target[i] for i in timestep] for timestep in example] for
example in predicted_indices]
predicted_strings = [list(map(list, zip(*example))) for example in
predicted_strings] # (batch, top-k, target_length)
pred_file.write('\n'.join(
[' '.join(Common.filter_impossible_names(words)) for words in predicted_strings[0]]) + '\n')
else:
predicted_strings = [[self.index_to_target[i] for i in example]
for example in predicted_indices]
pred_file.write('\n'.join(
[' '.join(Common.filter_impossible_names(words)) for words in predicted_strings]) + '\n')
num_correct_predictions = self.update_correct_predictions(num_correct_predictions, output_file,
zip(true_target_strings,
predicted_strings))
true_positive, false_positive, false_negative = self.update_per_subtoken_statistics(
zip(true_target_strings, predicted_strings),
true_positive, false_positive, false_negative)
total_predictions += len(true_target_strings)
total_prediction_batches += 1
if total_prediction_batches % self.num_batches_to_log == 0:
elapsed = time.time() - start_time
self.trace_evaluation(output_file, num_correct_predictions, total_predictions, elapsed)
except tf.errors.OutOfRangeError:
pass
print('Done testing, epoch reached')
output_file.write(str(num_correct_predictions / total_predictions) + '\n')
# Common.compute_bleu(ref_file_name, predicted_file_name)
elapsed = int(time.time() - eval_start_time)
precision, recall, f1 = self.calculate_results(true_positive, false_positive, false_negative)
try:
files_rouge = FilesRouge()
rouge = files_rouge.get_scores(
hyp_path=predicted_file_name, ref_path=ref_file_name, avg=True, ignore_empty=True)
except ValueError:
rouge = 0
print("Evaluation time: %sh%sm%ss" % ((elapsed // 60 // 60), (elapsed // 60) % 60, elapsed % 60))
return num_correct_predictions / total_predictions, \
precision, recall, f1, rouge
def update_correct_predictions(self, num_correct_predictions, output_file, results):
for original_name, predicted in results:
original_name_parts = original_name.split(Common.internal_delimiter) # list
filtered_original = Common.filter_impossible_names(original_name_parts) # list
predicted_first = predicted
if self.config.BEAM_WIDTH > 0:
predicted_first = predicted[0]
filtered_predicted_first_parts = Common.filter_impossible_names(predicted_first) # list
if self.config.BEAM_WIDTH == 0:
output_file.write('Original: ' + Common.internal_delimiter.join(original_name_parts) +
' , predicted 1st: ' + Common.internal_delimiter.join(filtered_predicted_first_parts) + '\n')
if filtered_original == filtered_predicted_first_parts or Common.unique(filtered_original) == Common.unique(
filtered_predicted_first_parts) or ''.join(filtered_original) == ''.join(filtered_predicted_first_parts):
num_correct_predictions += 1
else:
filtered_predicted = [Common.internal_delimiter.join(Common.filter_impossible_names(p)) for p in predicted]
true_ref = original_name
output_file.write('Original: ' + ' '.join(original_name_parts) + '\n')
for i, p in enumerate(filtered_predicted):
output_file.write('\t@{}: {}'.format(i + 1, ' '.join(p.split(Common.internal_delimiter)))+ '\n')
if true_ref in filtered_predicted:
index_of_correct = filtered_predicted.index(true_ref)
update = np.concatenate(
[np.zeros(index_of_correct, dtype=np.int32),
np.ones(self.config.BEAM_WIDTH - index_of_correct, dtype=np.int32)])
num_correct_predictions += update
return num_correct_predictions
def update_per_subtoken_statistics(self, results, true_positive, false_positive, false_negative):
for original_name, predicted in results:
if self.config.BEAM_WIDTH > 0:
predicted = predicted[0]
filtered_predicted_names = Common.filter_impossible_names(predicted)
filtered_original_subtokens = Common.filter_impossible_names(original_name.split(Common.internal_delimiter))
if ''.join(filtered_original_subtokens) == ''.join(filtered_predicted_names):
true_positive += len(filtered_original_subtokens)
continue
for subtok in filtered_predicted_names:
if subtok in filtered_original_subtokens:
true_positive += 1
else:
false_positive += 1
for subtok in filtered_original_subtokens:
if not subtok in filtered_predicted_names:
false_negative += 1
return true_positive, false_positive, false_negative
def print_hyperparams(self):
print('Training batch size:\t\t\t', self.config.BATCH_SIZE)
print('Dataset path:\t\t\t\t', self.config.TRAIN_PATH)
print('Training file path:\t\t\t', self.config.TRAIN_PATH + '.train.c2s')
print('Validation path:\t\t\t', self.config.TEST_PATH)
print('Taking max contexts from each example:\t', self.config.MAX_CONTEXTS)
print('Random path sampling:\t\t\t', self.config.RANDOM_CONTEXTS)
print('Embedding size:\t\t\t\t', self.config.EMBEDDINGS_SIZE)
if self.config.BIRNN:
print('Using BiLSTMs, each of size:\t\t', self.config.RNN_SIZE // 2)
else:
print('Uni-directional LSTM of size:\t\t', self.config.RNN_SIZE)
print('Decoder size:\t\t\t\t', self.config.DECODER_SIZE)
print('Decoder layers:\t\t\t\t', self.config.NUM_DECODER_LAYERS)
print('Max path lengths:\t\t\t', self.config.MAX_PATH_LENGTH)
print('Max subtokens in a token:\t\t', self.config.MAX_NAME_PARTS)
print('Max target length:\t\t\t', self.config.MAX_TARGET_PARTS)
print('Embeddings dropout keep_prob:\t\t', self.config.EMBEDDINGS_DROPOUT_KEEP_PROB)
print('LSTM dropout keep_prob:\t\t\t', self.config.RNN_DROPOUT_KEEP_PROB)
print('============================================')
@staticmethod
def calculate_results(true_positive, false_positive, false_negative):
if true_positive + false_positive > 0:
precision = true_positive / (true_positive + false_positive)
else:
precision = 0
if true_positive + false_negative > 0:
recall = true_positive / (true_positive + false_negative)
else:
recall = 0
if precision + recall > 0:
f1 = 2 * precision * recall / (precision + recall)
else:
f1 = 0
return precision, recall, f1
@staticmethod
def trace_evaluation(output_file, correct_predictions, total_predictions, elapsed):
accuracy_message = str(correct_predictions / total_predictions)
throughput_message = "Prediction throughput: %d" % int(total_predictions / (elapsed if elapsed > 0 else 1))
output_file.write(accuracy_message + '\n')
output_file.write(throughput_message)
# print(accuracy_message)
print(throughput_message)
def build_training_graph(self, input_tensors):
target_index = input_tensors[reader.TARGET_INDEX_KEY]
target_lengths = input_tensors[reader.TARGET_LENGTH_KEY]
path_source_indices = input_tensors[reader.PATH_SOURCE_INDICES_KEY]
node_indices = input_tensors[reader.NODE_INDICES_KEY]
path_target_indices = input_tensors[reader.PATH_TARGET_INDICES_KEY]
valid_context_mask = input_tensors[reader.VALID_CONTEXT_MASK_KEY]
path_source_lengths = input_tensors[reader.PATH_SOURCE_LENGTHS_KEY]
path_lengths = input_tensors[reader.PATH_LENGTHS_KEY]
path_target_lengths = input_tensors[reader.PATH_TARGET_LENGTHS_KEY]
with tf.variable_scope('model'):
subtoken_vocab = tf.get_variable('SUBTOKENS_VOCAB',
shape=(self.subtoken_vocab_size, self.config.EMBEDDINGS_SIZE),
dtype=tf.float32,
initializer=tf.contrib.layers.variance_scaling_initializer(factor=1.0,
mode='FAN_OUT',
uniform=True))
target_words_vocab = tf.get_variable('TARGET_WORDS_VOCAB',
shape=(self.target_vocab_size, self.config.EMBEDDINGS_SIZE),
dtype=tf.float32,
initializer=tf.contrib.layers.variance_scaling_initializer(factor=1.0,
mode='FAN_OUT',
uniform=True))
nodes_vocab = tf.get_variable('NODES_VOCAB', shape=(self.nodes_vocab_size, self.config.EMBEDDINGS_SIZE),
dtype=tf.float32,
initializer=tf.contrib.layers.variance_scaling_initializer(factor=1.0,
mode='FAN_OUT',
uniform=True))
# (batch, max_contexts, decoder_size)
batched_contexts = self.compute_contexts(subtoken_vocab=subtoken_vocab, nodes_vocab=nodes_vocab,
source_input=path_source_indices, nodes_input=node_indices,
target_input=path_target_indices,
valid_mask=valid_context_mask,
path_source_lengths=path_source_lengths,
path_lengths=path_lengths, path_target_lengths=path_target_lengths)
batch_size = tf.shape(target_index)[0]
outputs, final_states = self.decode_outputs(target_words_vocab=target_words_vocab,
target_input=target_index, batch_size=batch_size,
batched_contexts=batched_contexts,
valid_mask=valid_context_mask)
step = tf.Variable(0, trainable=False)
logits = outputs.rnn_output # (batch, max_output_length, dim * 2 + rnn_size)
crossent = tf.nn.sparse_softmax_cross_entropy_with_logits(labels=target_index, logits=logits)
target_words_nonzero = tf.sequence_mask(target_lengths + 1,
maxlen=self.config.MAX_TARGET_PARTS + 1, dtype=tf.float32)
loss = tf.reduce_sum(crossent * target_words_nonzero) / tf.to_float(batch_size)
if self.config.USE_MOMENTUM:
learning_rate = tf.train.exponential_decay(0.01, step * self.config.BATCH_SIZE,
self.num_training_examples,
0.95, staircase=True)
optimizer = tf.train.MomentumOptimizer(learning_rate, 0.95, use_nesterov=True)
train_op = optimizer.minimize(loss, global_step=step)
else:
params = tf.trainable_variables()
gradients = tf.gradients(loss, params)
clipped_gradients, _ = tf.clip_by_global_norm(gradients, clip_norm=5)
optimizer = tf.train.AdamOptimizer()
train_op = optimizer.apply_gradients(zip(clipped_gradients, params))
self.saver = tf.train.Saver(max_to_keep=10)
return train_op, loss
def decode_outputs(self, target_words_vocab, target_input, batch_size, batched_contexts, valid_mask,
is_evaluating=False):
num_contexts_per_example = tf.count_nonzero(valid_mask, axis=-1)
start_fill = tf.fill([batch_size],
self.target_to_index[Common.SOS]) # (batch, )
decoder_cell = tf.nn.rnn_cell.MultiRNNCell([
tf.nn.rnn_cell.LSTMCell(self.config.DECODER_SIZE) for _ in range(self.config.NUM_DECODER_LAYERS)
])
contexts_sum = tf.reduce_sum(batched_contexts * tf.expand_dims(valid_mask, -1),
axis=1) # (batch_size, dim * 2 + rnn_size)
contexts_average = tf.divide(contexts_sum, tf.to_float(tf.expand_dims(num_contexts_per_example, -1)))
fake_encoder_state = tuple(tf.nn.rnn_cell.LSTMStateTuple(contexts_average, contexts_average) for _ in
range(self.config.NUM_DECODER_LAYERS))
projection_layer = tf.layers.Dense(self.target_vocab_size, use_bias=False)
if is_evaluating and self.config.BEAM_WIDTH > 0:
batched_contexts = tf.contrib.seq2seq.tile_batch(batched_contexts, multiplier=self.config.BEAM_WIDTH)
num_contexts_per_example = tf.contrib.seq2seq.tile_batch(num_contexts_per_example,
multiplier=self.config.BEAM_WIDTH)
attention_mechanism = tf.contrib.seq2seq.LuongAttention(
num_units=self.config.DECODER_SIZE,
memory=batched_contexts
)
# TF doesn't support beam search with alignment history
should_save_alignment_history = is_evaluating and self.config.BEAM_WIDTH == 0
decoder_cell = tf.contrib.seq2seq.AttentionWrapper(decoder_cell, attention_mechanism,
attention_layer_size=self.config.DECODER_SIZE,
alignment_history=should_save_alignment_history)
if is_evaluating:
if self.config.BEAM_WIDTH > 0:
decoder_initial_state = decoder_cell.zero_state(dtype=tf.float32,
batch_size=batch_size * self.config.BEAM_WIDTH)
decoder_initial_state = decoder_initial_state.clone(
cell_state=tf.contrib.seq2seq.tile_batch(fake_encoder_state, multiplier=self.config.BEAM_WIDTH))
decoder = tf.contrib.seq2seq.BeamSearchDecoder(
cell=decoder_cell,
embedding=target_words_vocab,
start_tokens=start_fill,
end_token=self.target_to_index[Common.PAD],
initial_state=decoder_initial_state,
beam_width=self.config.BEAM_WIDTH,
output_layer=projection_layer,
length_penalty_weight=0.0)
else:
helper = tf.contrib.seq2seq.GreedyEmbeddingHelper(target_words_vocab, start_fill, 0)
initial_state = decoder_cell.zero_state(batch_size, tf.float32).clone(cell_state=fake_encoder_state)
decoder = tf.contrib.seq2seq.BasicDecoder(cell=decoder_cell, helper=helper, initial_state=initial_state,
output_layer=projection_layer)
else:
decoder_cell = tf.nn.rnn_cell.DropoutWrapper(decoder_cell,
output_keep_prob=self.config.RNN_DROPOUT_KEEP_PROB)
target_words_embedding = tf.nn.embedding_lookup(target_words_vocab,
tf.concat([tf.expand_dims(start_fill, -1), target_input],
axis=-1)) # (batch, max_target_parts, dim * 2 + rnn_size)
helper = tf.contrib.seq2seq.TrainingHelper(inputs=target_words_embedding,
sequence_length=tf.ones([batch_size], dtype=tf.int32) * (
self.config.MAX_TARGET_PARTS + 1))
initial_state = decoder_cell.zero_state(batch_size, tf.float32).clone(cell_state=fake_encoder_state)
decoder = tf.contrib.seq2seq.BasicDecoder(cell=decoder_cell, helper=helper, initial_state=initial_state,
output_layer=projection_layer)
outputs, final_states, final_sequence_lengths = tf.contrib.seq2seq.dynamic_decode(decoder,
maximum_iterations=self.config.MAX_TARGET_PARTS + 1)
return outputs, final_states
def calculate_path_abstraction(self, path_embed, path_lengths, valid_contexts_mask, is_evaluating=False):
return self.path_rnn_last_state(is_evaluating, path_embed, path_lengths, valid_contexts_mask)
def path_rnn_last_state(self, is_evaluating, path_embed, path_lengths, valid_contexts_mask):
# path_embed: (batch, max_contexts, max_path_length+1, dim)
# path_length: (batch, max_contexts)
# valid_contexts_mask: (batch, max_contexts)
max_contexts = tf.shape(path_embed)[1]
flat_paths = tf.reshape(path_embed, shape=[-1, self.config.MAX_PATH_LENGTH,
self.config.EMBEDDINGS_SIZE]) # (batch * max_contexts, max_path_length+1, dim)
flat_valid_contexts_mask = tf.reshape(valid_contexts_mask, [-1]) # (batch * max_contexts)
lengths = tf.multiply(tf.reshape(path_lengths, [-1]),
tf.cast(flat_valid_contexts_mask, tf.int32)) # (batch * max_contexts)
if self.config.BIRNN:
rnn_cell_fw = tf.nn.rnn_cell.LSTMCell(self.config.RNN_SIZE / 2)
rnn_cell_bw = tf.nn.rnn_cell.LSTMCell(self.config.RNN_SIZE / 2)
if not is_evaluating:
rnn_cell_fw = tf.nn.rnn_cell.DropoutWrapper(rnn_cell_fw,
output_keep_prob=self.config.RNN_DROPOUT_KEEP_PROB)
rnn_cell_bw = tf.nn.rnn_cell.DropoutWrapper(rnn_cell_bw,
output_keep_prob=self.config.RNN_DROPOUT_KEEP_PROB)
_, (state_fw, state_bw) = tf.nn.bidirectional_dynamic_rnn(
cell_fw=rnn_cell_fw,
cell_bw=rnn_cell_bw,
inputs=flat_paths,
dtype=tf.float32,
sequence_length=lengths)
final_rnn_state = tf.concat([state_fw.h, state_bw.h], axis=-1) # (batch * max_contexts, rnn_size)
else:
rnn_cell = tf.nn.rnn_cell.LSTMCell(self.config.RNN_SIZE)
if not is_evaluating:
rnn_cell = tf.nn.rnn_cell.DropoutWrapper(rnn_cell, output_keep_prob=self.config.RNN_DROPOUT_KEEP_PROB)
_, state = tf.nn.dynamic_rnn(
cell=rnn_cell,
inputs=flat_paths,
dtype=tf.float32,
sequence_length=lengths
)
final_rnn_state = state.h # (batch * max_contexts, rnn_size)
return tf.reshape(final_rnn_state,
shape=[-1, max_contexts, self.config.RNN_SIZE]) # (batch, max_contexts, rnn_size)
def compute_contexts(self, subtoken_vocab, nodes_vocab, source_input, nodes_input,
target_input, valid_mask, path_source_lengths, path_lengths, path_target_lengths,
is_evaluating=False):
source_word_embed = tf.nn.embedding_lookup(params=subtoken_vocab,
ids=source_input) # (batch, max_contexts, max_name_parts, dim)
path_embed = tf.nn.embedding_lookup(params=nodes_vocab,
ids=nodes_input) # (batch, max_contexts, max_path_length+1, dim)
target_word_embed = tf.nn.embedding_lookup(params=subtoken_vocab,
ids=target_input) # (batch, max_contexts, max_name_parts, dim)
source_word_mask = tf.expand_dims(
tf.sequence_mask(path_source_lengths, maxlen=self.config.MAX_NAME_PARTS, dtype=tf.float32),
-1) # (batch, max_contexts, max_name_parts, 1)
target_word_mask = tf.expand_dims(
tf.sequence_mask(path_target_lengths, maxlen=self.config.MAX_NAME_PARTS, dtype=tf.float32),
-1) # (batch, max_contexts, max_name_parts, 1)
source_words_sum = tf.reduce_sum(source_word_embed * source_word_mask,
axis=2) # (batch, max_contexts, dim)
path_nodes_aggregation = self.calculate_path_abstraction(path_embed, path_lengths, valid_mask,
is_evaluating) # (batch, max_contexts, rnn_size)
target_words_sum = tf.reduce_sum(target_word_embed * target_word_mask, axis=2) # (batch, max_contexts, dim)
context_embed = tf.concat([source_words_sum, path_nodes_aggregation, target_words_sum],
axis=-1) # (batch, max_contexts, dim * 2 + rnn_size)
if not is_evaluating:
context_embed = tf.nn.dropout(context_embed, self.config.EMBEDDINGS_DROPOUT_KEEP_PROB)
batched_embed = tf.layers.dense(inputs=context_embed, units=self.config.DECODER_SIZE,
activation=tf.nn.tanh, trainable=not is_evaluating, use_bias=False)
return batched_embed
def build_test_graph(self, input_tensors):
target_index = input_tensors[reader.TARGET_INDEX_KEY]
path_source_indices = input_tensors[reader.PATH_SOURCE_INDICES_KEY]
node_indices = input_tensors[reader.NODE_INDICES_KEY]
path_target_indices = input_tensors[reader.PATH_TARGET_INDICES_KEY]
valid_mask = input_tensors[reader.VALID_CONTEXT_MASK_KEY]
path_source_lengths = input_tensors[reader.PATH_SOURCE_LENGTHS_KEY]
path_lengths = input_tensors[reader.PATH_LENGTHS_KEY]
path_target_lengths = input_tensors[reader.PATH_TARGET_LENGTHS_KEY]
with tf.variable_scope('model', reuse=self.get_should_reuse_variables()):
subtoken_vocab = tf.get_variable('SUBTOKENS_VOCAB',
shape=(self.subtoken_vocab_size, self.config.EMBEDDINGS_SIZE),
dtype=tf.float32, trainable=False)
target_words_vocab = tf.get_variable('TARGET_WORDS_VOCAB',
shape=(self.target_vocab_size, self.config.EMBEDDINGS_SIZE),
dtype=tf.float32, trainable=False)
nodes_vocab = tf.get_variable('NODES_VOCAB',
shape=(self.nodes_vocab_size, self.config.EMBEDDINGS_SIZE),
dtype=tf.float32, trainable=False)
batched_contexts = self.compute_contexts(subtoken_vocab=subtoken_vocab, nodes_vocab=nodes_vocab,
source_input=path_source_indices, nodes_input=node_indices,
target_input=path_target_indices,
valid_mask=valid_mask,
path_source_lengths=path_source_lengths,
path_lengths=path_lengths, path_target_lengths=path_target_lengths,
is_evaluating=True)
outputs, final_states = self.decode_outputs(target_words_vocab=target_words_vocab,
target_input=target_index, batch_size=tf.shape(target_index)[0],
batched_contexts=batched_contexts, valid_mask=valid_mask,
is_evaluating=True)
if self.config.BEAM_WIDTH > 0:
predicted_indices = outputs.predicted_ids
topk_values = outputs.beam_search_decoder_output.scores
attention_weights = [tf.no_op()]
else:
predicted_indices = outputs.sample_id
topk_values = tf.constant(1, shape=(1, 1), dtype=tf.float32)
attention_weights = tf.squeeze(final_states.alignment_history.stack(), 1)
return predicted_indices, topk_values, target_index, attention_weights
def predict(self, predict_data_lines):
if self.predict_queue is None:
self.predict_queue = reader.Reader(subtoken_to_index=self.subtoken_to_index,
node_to_index=self.node_to_index,
target_to_index=self.target_to_index,
config=self.config, is_evaluating=True)
self.predict_placeholder = tf.placeholder(tf.string)
reader_output = self.predict_queue.process_from_placeholder(self.predict_placeholder)
reader_output = {key: tf.expand_dims(tensor, 0) for key, tensor in reader_output.items()}
self.predict_top_indices_op, self.predict_top_scores_op, _, self.attention_weights_op = \
self.build_test_graph(reader_output)
self.predict_source_string = reader_output[reader.PATH_SOURCE_STRINGS_KEY]
self.predict_path_string = reader_output[reader.PATH_STRINGS_KEY]
self.predict_path_target_string = reader_output[reader.PATH_TARGET_STRINGS_KEY]
self.predict_target_strings_op = reader_output[reader.TARGET_STRING_KEY]
self.initialize_session_variables(self.sess)
self.saver = tf.train.Saver()
self.load_model(self.sess)
results = []
for line in predict_data_lines:
predicted_indices, top_scores, true_target_strings, attention_weights, path_source_string, path_strings, path_target_string = self.sess.run(
[self.predict_top_indices_op, self.predict_top_scores_op, self.predict_target_strings_op,
self.attention_weights_op,
self.predict_source_string, self.predict_path_string, self.predict_path_target_string],
feed_dict={self.predict_placeholder: line})
top_scores = np.squeeze(top_scores, axis=0)
path_source_string = path_source_string.reshape((-1))
path_strings = path_strings.reshape((-1))
path_target_string = path_target_string.reshape((-1))
predicted_indices = np.squeeze(predicted_indices, axis=0)
true_target_strings = Common.binary_to_string(true_target_strings[0])
if self.config.BEAM_WIDTH > 0:
predicted_strings = [[self.index_to_target[sugg] for sugg in timestep]
for timestep in predicted_indices] # (target_length, top-k)
predicted_strings = list(map(list, zip(*predicted_strings))) # (top-k, target_length)
top_scores = [np.exp(np.sum(s)) for s in zip(*top_scores)]
else:
predicted_strings = [self.index_to_target[idx]
for idx in predicted_indices] # (batch, target_length)
attention_per_path = None
if self.config.BEAM_WIDTH == 0:
attention_per_path = self.get_attention_per_path(path_source_string, path_strings, path_target_string,
attention_weights)
results.append((true_target_strings, predicted_strings, top_scores, attention_per_path))
return results
@staticmethod
def get_attention_per_path(source_strings, path_strings, target_strings, attention_weights):
# attention_weights: (time, contexts)
results = []
for time_step in attention_weights:
attention_per_context = {}
for source, path, target, weight in zip(source_strings, path_strings, target_strings, time_step):
string_triplet = (
Common.binary_to_string(source), Common.binary_to_string(path), Common.binary_to_string(target))
attention_per_context[string_triplet] = weight
results.append(attention_per_context)
return results
def save_model(self, sess, path):
save_target = path + '_iter%d' % self.epochs_trained
dirname = os.path.dirname(save_target)
if not os.path.exists(dirname):
os.makedirs(dirname)
self.saver.save(sess, save_target)
dictionaries_path = save_target + '.dict'
with open(dictionaries_path, 'wb') as file:
pickle.dump(self.subtoken_to_index, file)
pickle.dump(self.index_to_subtoken, file)
pickle.dump(self.subtoken_vocab_size, file)
pickle.dump(self.target_to_index, file)
pickle.dump(self.index_to_target, file)
pickle.dump(self.target_vocab_size, file)
pickle.dump(self.node_to_index, file)
pickle.dump(self.index_to_node, file)
pickle.dump(self.nodes_vocab_size, file)
pickle.dump(self.num_training_examples, file)
pickle.dump(self.epochs_trained, file)
pickle.dump(self.config, file)
print('Saved after %d epochs in: %s' % (self.epochs_trained, save_target))
def load_model(self, sess):
if not sess is None:
self.saver.restore(sess, self.config.LOAD_PATH)
print('Done loading model')
with open(self.config.LOAD_PATH + '.dict', 'rb') as file:
if self.subtoken_to_index is not None:
return
print('Loading dictionaries from: ' + self.config.LOAD_PATH)
self.subtoken_to_index = pickle.load(file)
self.index_to_subtoken = pickle.load(file)
self.subtoken_vocab_size = pickle.load(file)
self.target_to_index = pickle.load(file)
self.index_to_target = pickle.load(file)
self.target_vocab_size = pickle.load(file)
self.node_to_index = pickle.load(file)
self.index_to_node = pickle.load(file)
self.nodes_vocab_size = pickle.load(file)
self.num_training_examples = pickle.load(file)
self.epochs_trained = pickle.load(file)
saved_config = pickle.load(file)
self.config.take_model_hyperparams_from(saved_config)
print('Done loading dictionaries')
@staticmethod
def initialize_session_variables(sess):
sess.run(tf.group(tf.global_variables_initializer(), tf.local_variables_initializer(), tf.tables_initializer()))
def get_should_reuse_variables(self):
if self.config.TRAIN_PATH:
return True
else:
return None