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train.py
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train.py
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'''
This script handling the training process.
'''
import argparse
import math
import time
from tqdm import tqdm
import torch
import torch.nn as nn
import torch.optim as optim
import transformer.Constants as Constants
from transformer.Models import Transformer
from transformer.Optim import ScheduledOptim
from DataLoader import DataLoader
def get_performance(crit, pred, gold, smoothing=False, num_class=None):
''' Apply label smoothing if needed '''
# TODO: Add smoothing
if smoothing:
assert bool(num_class)
eps = 0.1
gold = gold * (1 - eps) + (1 - gold) * eps / num_class
raise NotImplementedError
loss = crit(pred, gold.contiguous().view(-1))
pred = pred.max(1)[1]
gold = gold.contiguous().view(-1)
n_correct = pred.data.eq(gold.data)
n_correct = n_correct.masked_select(gold.ne(Constants.PAD).data).sum()
return loss, n_correct
def train_epoch(model, training_data, crit, optimizer):
''' Epoch operation in training phase'''
model.train()
total_loss = 0
n_total_words = 0
n_total_correct = 0
for batch in tqdm(
training_data, mininterval=2,
desc=' - (Training) ', leave=False):
# prepare data
src, tgt = batch
gold = tgt[0][:, 1:]
# forward
optimizer.zero_grad()
pred = model(src, tgt)
# backward
loss, n_correct = get_performance(crit, pred, gold)
loss.backward()
# update parameters
optimizer.step()
optimizer.update_learning_rate()
# note keeping
n_words = gold.data.ne(Constants.PAD).sum()
n_total_words += n_words
n_total_correct += n_correct
total_loss += loss.data[0]
return total_loss/n_total_words, n_total_correct/n_total_words
def eval_epoch(model, validation_data, crit):
''' Epoch operation in evaluation phase '''
model.eval()
total_loss = 0
n_total_words = 0
n_total_correct = 0
for batch in tqdm(
validation_data, mininterval=2,
desc=' - (Validation) ', leave=False):
# prepare data
src, tgt = batch
gold = tgt[0][:, 1:]
# forward
pred = model(src, tgt)
loss, n_correct = get_performance(crit, pred, gold)
# note keeping
n_words = gold.data.ne(Constants.PAD).sum()
n_total_words += n_words
n_total_correct += n_correct
total_loss += loss.data[0]
return total_loss/n_total_words, n_total_correct/n_total_words
def train(model, training_data, validation_data, crit, optimizer, opt):
''' Start training '''
log_train_file = None
log_valid_file = None
if opt.log:
log_train_file = opt.log + '.train.log'
log_valid_file = opt.log + '.valid.log'
print('[Info] Training performance will be written to file: {} and {}'.format(
log_train_file, log_valid_file))
with open(log_train_file, 'w') as log_tf, open(log_valid_file, 'w') as log_vf:
log_tf.write('epoch,loss,ppl,accuracy\n')
log_vf.write('epoch,loss,ppl,accuracy\n')
valid_accus = []
for epoch_i in range(opt.epoch):
print('[ Epoch', epoch_i, ']')
start = time.time()
train_loss, train_accu = train_epoch(model, training_data, crit, optimizer)
print(' - (Training) ppl: {ppl: 8.5f}, accuracy: {accu:3.3f} %, '\
'elapse: {elapse:3.3f} min'.format(
ppl=math.exp(min(train_loss, 100)), accu=100*train_accu,
elapse=(time.time()-start)/60))
start = time.time()
valid_loss, valid_accu = eval_epoch(model, validation_data, crit)
print(' - (Validation) ppl: {ppl: 8.5f}, accuracy: {accu:3.3f} %, '\
'elapse: {elapse:3.3f} min'.format(
ppl=math.exp(min(valid_loss, 100)), accu=100*valid_accu,
elapse=(time.time()-start)/60))
valid_accus += [valid_accu]
model_state_dict = model.state_dict()
checkpoint = {
'model': model_state_dict,
'settings': opt,
'epoch': epoch_i}
if opt.save_model:
if opt.save_mode == 'all':
model_name = opt.save_model + '_accu_{accu:3.3f}.chkpt'.format(accu=100*valid_accu)
torch.save(checkpoint, model_name)
elif opt.save_mode == 'best':
model_name = opt.save_model + '.chkpt'
if valid_accu >= max(valid_accus):
torch.save(checkpoint, model_name)
print(' - [Info] The checkpoint file has been updated.')
if log_train_file and log_valid_file:
with open(log_train_file, 'a') as log_tf, open(log_valid_file, 'a') as log_vf:
log_tf.write('{epoch},{loss: 8.5f},{ppl: 8.5f},{accu:3.3f}\n'.format(
epoch=epoch_i, loss=train_loss,
ppl=math.exp(min(train_loss, 100)), accu=100*train_accu))
log_vf.write('{epoch},{loss: 8.5f},{ppl: 8.5f},{accu:3.3f}\n'.format(
epoch=epoch_i, loss=valid_loss,
ppl=math.exp(min(valid_loss, 100)), accu=100*valid_accu))
def main():
''' Main function '''
parser = argparse.ArgumentParser()
parser.add_argument('-data', required=True)
parser.add_argument('-epoch', type=int, default=10)
parser.add_argument('-batch_size', type=int, default=64)
#parser.add_argument('-d_word_vec', type=int, default=512)
parser.add_argument('-d_model', type=int, default=512)
parser.add_argument('-d_inner_hid', type=int, default=1024)
parser.add_argument('-d_k', type=int, default=64)
parser.add_argument('-d_v', type=int, default=64)
parser.add_argument('-n_head', type=int, default=8)
parser.add_argument('-n_layers', type=int, default=6)
parser.add_argument('-n_warmup_steps', type=int, default=4000)
parser.add_argument('-dropout', type=float, default=0.1)
parser.add_argument('-embs_share_weight', action='store_true')
parser.add_argument('-proj_share_weight', action='store_true')
parser.add_argument('-log', default=None)
parser.add_argument('-save_model', default=None)
parser.add_argument('-save_mode', type=str, choices=['all', 'best'], default='best')
parser.add_argument('-no_cuda', action='store_true')
opt = parser.parse_args()
opt.cuda = not opt.no_cuda
opt.d_word_vec = opt.d_model
#========= Loading Dataset =========#
data = torch.load(opt.data)
opt.max_token_seq_len = data['settings'].max_token_seq_len
#========= Preparing DataLoader =========#
training_data = DataLoader(
data['dict']['src'],
data['dict']['tgt'],
src_insts=data['train']['src'],
tgt_insts=data['train']['tgt'],
batch_size=opt.batch_size,
cuda=opt.cuda)
validation_data = DataLoader(
data['dict']['src'],
data['dict']['tgt'],
src_insts=data['valid']['src'],
tgt_insts=data['valid']['tgt'],
batch_size=opt.batch_size,
shuffle=False,
test=True,
cuda=opt.cuda)
opt.src_vocab_size = training_data.src_vocab_size
opt.tgt_vocab_size = training_data.tgt_vocab_size
#========= Preparing Model =========#
if opt.embs_share_weight and training_data.src_word2idx != training_data.tgt_word2idx:
print('[Warning]',
'The src/tgt word2idx table are different but asked to share word embedding.')
print(opt)
transformer = Transformer(
opt.src_vocab_size,
opt.tgt_vocab_size,
opt.max_token_seq_len,
proj_share_weight=opt.proj_share_weight,
embs_share_weight=opt.embs_share_weight,
d_k=opt.d_k,
d_v=opt.d_v,
d_model=opt.d_model,
d_word_vec=opt.d_word_vec,
d_inner_hid=opt.d_inner_hid,
n_layers=opt.n_layers,
n_head=opt.n_head,
dropout=opt.dropout)
#print(transformer)
optimizer = ScheduledOptim(
optim.Adam(
transformer.get_trainable_parameters(),
betas=(0.9, 0.98), eps=1e-09),
opt.d_model, opt.n_warmup_steps)
def get_criterion(vocab_size):
''' With PAD token zero weight '''
weight = torch.ones(vocab_size)
weight[Constants.PAD] = 0
return nn.CrossEntropyLoss(weight, size_average=False)
crit = get_criterion(training_data.tgt_vocab_size)
if opt.cuda:
transformer = transformer.cuda()
crit = crit.cuda()
train(transformer, training_data, validation_data, crit, optimizer, opt)
if __name__ == '__main__':
main()