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train_rs3_lr_new.py
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train_rs3_lr_new.py
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from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import torch
import torch.nn as nn
import torch.optim as optim
import numpy as np
import time
import os
from six.moves import cPickle
import opts
import models
from dataloader_rs2 import *
import eval_utils_rs3
import misc.utils as utils
from misc.rewards_rs3_new import init_scorer, get_self_critical_reward
try:
import tensorboardX as tb
except ImportError:
print("tensorboardX is not installed")
tb = None
def add_summary_value(writer, key, value, iteration):
if writer:
writer.add_scalar(key, value, iteration)
def train(opt):
# Deal with feature things before anything
opt.use_att = utils.if_use_att(opt.caption_model)
ac = 0
loader = DataLoader(opt)
opt.vocab_size = loader.vocab_size
opt.seq_length = loader.seq_length
tb_summary_writer = tb and tb.SummaryWriter(opt.checkpoint_path)
infos = {}
histories = {}
if opt.start_from is not None:
# open old infos and check if models are compatible
with open(os.path.join(opt.checkpoint_path, 'infos_' + opt.id + format(int(opt.start_from),'04') + '.pkl')) as f:
infos = cPickle.load(f)
saved_model_opt = infos['opt']
need_be_same=["caption_model", "rnn_type", "rnn_size", "num_layers"]
for checkme in need_be_same:
assert vars(saved_model_opt)[checkme] == vars(opt)[checkme], "Command line argument and saved model disagree on '%s' " % checkme
if os.path.isfile(os.path.join(opt.checkpoint_path, 'histories_' + opt.id + format(int(opt.start_from),'04') + '.pkl')):
with open(os.path.join(opt.checkpoint_path, 'histories_' + opt.id + format(int(opt.start_from),'04') + '.pkl')) as f:
histories = cPickle.load(f)
iteration = infos.get('iter', 0)
epoch = infos.get('epoch', 0)
val_result_history = histories.get('val_result_history', {})
loss_history = histories.get('loss_history', {})
lr_history = histories.get('lr_history', {})
ss_prob_history = histories.get('ss_prob_history', {})
loader.iterators = infos.get('iterators', loader.iterators)
loader.split_ix = infos.get('split_ix', loader.split_ix)
if opt.load_best_score == 1:
best_val_score = infos.get('best_val_score', None)
model = models.setup(opt).cuda()
#dp_model = torch.nn.DataParallel(model)
#dp_model = torch.nn.DataParallel(model, [0,2,3])
dp_model = model
update_lr_flag = True
# Assure in training mode
dp_model.train()
for name, param in model.named_parameters():
print(name)
crit = utils.LanguageModelCriterion()
rl_crit = utils.RewardCriterion()
CE_ac = utils.CE_ac()
optim_para = model.parameters()
optimizer = utils.build_optimizer(optim_para, opt)
# Load the optimizer
if vars(opt).get('start_from', None) is not None and os.path.isfile(
os.path.join(opt.checkpoint_path, 'optimizer' + opt.id + format(int(opt.start_from),'04')+'.pth')):
optimizer.load_state_dict(torch.load(os.path.join(
opt.checkpoint_path, 'optimizer' + opt.id + format(int(opt.start_from),'04')+'.pth')))
optimizer.zero_grad()
accumulate_iter = 0
train_loss = 0
reward = np.zeros([1,1])
sim_lambda = opt.sim_lambda
reset_optimzer_index = 1
while True:
if opt.self_critical_after != -1 and epoch >= opt.self_critical_after and reset_optimzer_index :
opt.learning_rate_decay_start = opt.self_critical_after
opt.learning_rate_decay_rate = opt.learning_rate_decay_rate_rl
opt.learning_rate = opt.learning_rate_rl
reset_optimzer_index = 0
if update_lr_flag:
# Assign the learning rate
if epoch > opt.learning_rate_decay_start and opt.learning_rate_decay_start >= 0:
frac = (epoch - opt.learning_rate_decay_start) // opt.learning_rate_decay_every
decay_factor = opt.learning_rate_decay_rate ** frac
opt.current_lr = opt.learning_rate * decay_factor
else:
opt.current_lr = opt.learning_rate
utils.set_lr(optimizer, opt.current_lr)
# Assign the scheduled sampling prob
if epoch > opt.scheduled_sampling_start and opt.scheduled_sampling_start >= 0:
frac = (epoch - opt.scheduled_sampling_start) // opt.scheduled_sampling_increase_every
opt.ss_prob = min(opt.scheduled_sampling_increase_prob * frac, opt.scheduled_sampling_max_prob)
model.ss_prob = opt.ss_prob
# If start self critical training
if opt.self_critical_after != -1 and epoch >= opt.self_critical_after:
sc_flag = True
init_scorer(opt.cached_tokens)
else:
sc_flag = False
update_lr_flag = False
start = time.time()
# Load data from train split (0)
data = loader.get_batch(opt.train_split)
print('Read data:', time.time() - start)
torch.cuda.synchronize()
start = time.time()
tmp = [data['labels'], data['masks'], data['mods']]
tmp = [_ if _ is None else torch.from_numpy(_).cuda() for _ in tmp]
labels, masks, mods = tmp
tmp = [data['att_feats'], data['att_masks'], data['attr_feats'], data['attr_masks'],data['rela_feats'], data['rela_masks']]
tmp = [_ if _ is None else torch.from_numpy(_).cuda() for _ in tmp]
att_feats, att_masks, attr_feats, attr_masks, rela_feats, rela_masks = tmp
rs_data = {}
rs_data['att_feats'] = att_feats
rs_data['att_masks'] = att_masks
rs_data['attr_feats'] = attr_feats
rs_data['attr_masks'] = attr_masks
rs_data['rela_feats'] = rela_feats
rs_data['rela_masks'] = rela_masks
if not sc_flag:
logits, cw_logits = dp_model(rs_data, labels)
ac = CE_ac(logits,labels[:,1:], masks[:,1:])
print('ac :{0}'.format(ac))
loss_lan = crit(logits,labels[:,1:], masks[:,1:])
else:
gen_result, sample_logprobs, cw_logits = dp_model(rs_data,
opt={'sample_max':0}, mode='sample')
reward = get_self_critical_reward(dp_model, rs_data, data, gen_result, opt)
loss_lan = rl_crit(sample_logprobs, gen_result.data, torch.from_numpy(reward).float().cuda())
loss_cw = crit(cw_logits, mods[:, 1:], masks[:, 1:])
ac2 = CE_ac(cw_logits, mods[:, 1:], masks[:, 1:])
print('ac :{0}'.format(ac2))
if epoch < opt.step2_train_after:
loss = loss_lan + sim_lambda*loss_cw
else:
loss = loss_lan
accumulate_iter = accumulate_iter + 1
loss = loss/opt.accumulate_number
loss.backward()
if accumulate_iter % opt.accumulate_number == 0:
utils.clip_gradient(optimizer, opt.grad_clip)
optimizer.step()
optimizer.zero_grad()
iteration += 1
accumulate_iter = 0
train_loss = loss.item()*opt.accumulate_number
train_loss_lan = loss_lan.item()
train_loss_cw = loss_cw.item()
end = time.time()
if not sc_flag:
print("iter {} (epoch {}), train_loss = {:.3f}, time/batch = {:.3f}" \
.format(iteration, epoch, train_loss, end - start))
print("train_loss_lan = {:.3f}, train_loss_cw = {:.3f}" \
.format(train_loss_lan, train_loss_cw))
else:
print("iter {} (epoch {}), avg_reward = {:.3f}, time/batch = {:.3f}" \
.format(iteration, epoch, np.mean(reward[:, 0]), end - start))
print("train_loss_lan = {:.3f}, train_loss_cw = {:.3f}" \
.format(train_loss_lan, train_loss_cw))
print('lr:{0}'.format(opt.current_lr))
torch.cuda.synchronize()
# Update the iteration and epoch
if data['bounds']['wrapped']:
epoch += 1
update_lr_flag = True
# Write the training loss summary
if (iteration % opt.losses_log_every == 0) and (accumulate_iter % opt.accumulate_number == 0):
add_summary_value(tb_summary_writer, 'train_loss', train_loss, iteration)
add_summary_value(tb_summary_writer, 'train_loss_lan', train_loss_lan, iteration)
add_summary_value(tb_summary_writer, 'train_loss_cw', train_loss_cw, iteration)
add_summary_value(tb_summary_writer, 'learning_rate', opt.current_lr, iteration)
add_summary_value(tb_summary_writer, 'scheduled_sampling_prob', model.ss_prob, iteration)
add_summary_value(tb_summary_writer, 'ac', ac, iteration)
if sc_flag:
add_summary_value(tb_summary_writer, 'avg_reward', np.mean(reward[:,0]), iteration)
loss_history[iteration] = train_loss if not sc_flag else np.mean(reward[:,0])
lr_history[iteration] = opt.current_lr
ss_prob_history[iteration] = model.ss_prob
# make evaluation on validation set, and save model
if (iteration % opt.save_checkpoint_every == 0) and (accumulate_iter % opt.accumulate_number == 0):
# eval model
eval_kwargs = {'split': 'test',
'dataset': opt.input_json}
eval_kwargs.update(vars(opt))
#val_loss, predictions, lang_stats = eval_utils_rs3.eval_split(dp_model, crit, loader, eval_kwargs)
# Write validation result into summary
# add_summary_value(tb_summary_writer, 'validation loss', val_loss, iteration)
# if lang_stats is not None:
# for k,v in lang_stats.items():
# add_summary_value(tb_summary_writer, k, v, iteration)
# val_result_history[iteration] = {'loss': val_loss, 'lang_stats': lang_stats, 'predictions': predictions}
# Save model if is improving on validation result
# if opt.language_eval == 1:
# current_score = lang_stats['CIDEr']
# else:
# current_score = - val_loss
current_score=0
best_flag = False
if True: # if true
save_id = iteration/opt.save_checkpoint_every
if best_val_score is None or current_score > best_val_score:
best_val_score = current_score
best_flag = True
checkpoint_path = os.path.join(opt.checkpoint_path, 'model'+opt.id+format(int(save_id),'04')+'.pth')
torch.save(model.state_dict(), checkpoint_path)
print("model saved to {}".format(checkpoint_path))
optimizer_path = os.path.join(opt.checkpoint_path, 'optimizer'+opt.id+format(int(save_id),'04')+'.pth')
torch.save(optimizer.state_dict(), optimizer_path)
# Dump miscalleous informations
infos['iter'] = iteration
infos['epoch'] = epoch
infos['iterators'] = loader.iterators
infos['split_ix'] = loader.split_ix
infos['best_val_score'] = best_val_score
infos['opt'] = opt
infos['vocab'] = loader.get_vocab()
histories['val_result_history'] = val_result_history
histories['loss_history'] = loss_history
histories['lr_history'] = lr_history
histories['ss_prob_history'] = ss_prob_history
with open(os.path.join(opt.checkpoint_path, 'infos_'+opt.id+format(int(save_id),'04')+'.pkl'), 'wb') as f:
cPickle.dump(infos, f)
with open(os.path.join(opt.checkpoint_path, 'histories_'+opt.id+format(int(save_id),'04')+'.pkl'), 'wb') as f:
cPickle.dump(histories, f)
if best_flag:
checkpoint_path = os.path.join(opt.checkpoint_path, 'model-best.pth')
torch.save(model.state_dict(), checkpoint_path)
print("model saved to {}".format(checkpoint_path))
with open(os.path.join(opt.checkpoint_path, 'infos_'+opt.id+'-best.pkl'), 'wb') as f:
cPickle.dump(infos, f)
# Stop if reaching max epochs
if epoch >= opt.max_epochs and opt.max_epochs != -1:
break
opt = opts.parse_opt()
os.environ["CUDA_VISIBLE_DEVICES"]=str(opt.gpu)
#memory_pool = torch.FloatTensor(15000, 3, 400, 200).cuda()
#del memory_pool
train(opt)