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not_used.py
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not_used.py
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# def self_training(args):
# """Perform self-training
#
# First load decoding results on disjoint data
# also load pre-trained model and perform supervised
# training on both existing training data and the
# decoded results
# """
#
# print('load pre-trained model from [%s]' % args.load_model, file=sys.stderr)
# params = torch.load(args.load_model, map_location=lambda storage, loc: storage)
# vocab = params['vocab']
# transition_system = params['transition_system']
# saved_args = params['args']
# saved_state = params['state_dict']
#
# # transfer arguments
# saved_args.cuda = args.cuda
# saved_args.save_to = args.save_to
# saved_args.train_file = args.train_file
# saved_args.unlabeled_file = args.unlabeled_file
# saved_args.dev_file = args.dev_file
# saved_args.load_decode_results = args.load_decode_results
# args = saved_args
#
# update_args(args, arg_parser)
#
# model = Parser(saved_args, vocab, transition_system)
# model.load_state_dict(saved_state)
#
# if args.cuda: model = model.cuda()
# model.train()
# optimizer = torch.optim.Adam(model.parameters(), lr=args.lr)
#
# print('load unlabeled data [%s]' % args.unlabeled_file, file=sys.stderr)
# unlabeled_data = Dataset.from_bin_file(args.unlabeled_file)
#
# print('load decoding results of unlabeled data [%s]' % args.load_decode_results, file=sys.stderr)
# decode_results = pickle.load(open(args.load_decode_results))
#
# labeled_data = Dataset.from_bin_file(args.train_file)
# dev_set = Dataset.from_bin_file(args.dev_file)
#
# print('Num. examples in unlabeled data: %d' % len(unlabeled_data), file=sys.stderr)
# assert len(unlabeled_data) == len(decode_results)
# self_train_examples = []
# for example, hyps in zip(unlabeled_data, decode_results):
# if hyps:
# hyp = hyps[0]
# sampled_example = Example(idx='self_train-%s' % example.idx,
# src_sent=example.src_sent,
# tgt_code=hyp.code,
# tgt_actions=hyp.action_infos,
# tgt_ast=hyp.tree)
# self_train_examples.append(sampled_example)
# print('Num. self training examples: %d, Num. labeled examples: %d' % (len(self_train_examples), len(labeled_data)),
# file=sys.stderr)
#
# train_set = Dataset(examples=labeled_data.examples + self_train_examples)
#
# print('begin training, %d training examples, %d dev examples' % (len(train_set), len(dev_set)), file=sys.stderr)
# print('vocab: %s' % repr(vocab), file=sys.stderr)
#
# epoch = train_iter = 0
# report_loss = report_examples = 0.
# history_dev_scores = []
# num_trial = patience = 0
# while True:
# epoch += 1
# epoch_begin = time.time()
#
# for batch_examples in train_set.batch_iter(batch_size=args.batch_size, shuffle=True):
# batch_examples = [e for e in batch_examples if len(e.tgt_actions) <= args.decode_max_time_step]
#
# train_iter += 1
# optimizer.zero_grad()
#
# loss = -model.score(batch_examples)
# # print(loss.data)
# loss_val = torch.sum(loss).data[0]
# report_loss += loss_val
# report_examples += len(batch_examples)
# loss = torch.mean(loss)
#
# loss.backward()
#
# # clip gradient
# if args.clip_grad > 0.:
# grad_norm = torch.nn.utils.clip_grad_norm(model.parameters(), args.clip_grad)
#
# optimizer.step()
#
# if train_iter % args.log_every == 0:
# print('[Iter %d] encoder loss=%.5f' %
# (train_iter,
# report_loss / report_examples),
# file=sys.stderr)
#
# report_loss = report_examples = 0.
#
# print('[Epoch %d] epoch elapsed %ds' % (epoch, time.time() - epoch_begin), file=sys.stderr)
# # model_file = args.save_to + '.iter%d.bin' % train_iter
# # print('save model to [%s]' % model_file, file=sys.stderr)
# # model.save(model_file)
#
# # perform validation
# print('[Epoch %d] begin validation' % epoch, file=sys.stderr)
# eval_start = time.time()
# eval_results = evaluation.evaluate(dev_set.examples, model, args, verbose=True)
# dev_acc = eval_results['accuracy']
# print('[Epoch %d] code generation accuracy=%.5f took %ds' % (epoch, dev_acc, time.time() - eval_start), file=sys.stderr)
# is_better = history_dev_scores == [] or dev_acc > max(history_dev_scores)
# history_dev_scores.append(dev_acc)
#
# if is_better:
# patience = 0
# model_file = args.save_to + '.bin'
# print('save currently the best model ..', file=sys.stderr)
# print('save model to [%s]' % model_file, file=sys.stderr)
# model.save(model_file)
# # also save the optimizers' state
# torch.save(optimizer.state_dict(), args.save_to + '.optim.bin')
# elif epoch == args.max_epoch:
# print('reached max epoch, stop!', file=sys.stderr)
# exit(0)
# elif patience < args.patience:
# patience += 1
# print('hit patience %d' % patience, file=sys.stderr)
#
# if patience == args.patience:
# num_trial += 1
# print('hit #%d trial' % num_trial, file=sys.stderr)
# if num_trial == args.max_num_trial:
# print('early stop!', file=sys.stderr)
# exit(0)
#
# # decay lr, and restore from previously best checkpoint
# lr = optimizer.param_groups[0]['lr'] * args.lr_decay
# print('load previously best model and decay learning rate to %f' % lr, file=sys.stderr)
#
# # load model
# params = torch.load(args.save_to + '.bin', map_location=lambda storage, loc: storage)
# model.load_state_dict(params['state_dict'])
# if args.cuda: model = model.cuda()
#
# # load optimizers
# if args.reset_optimizer:
# print('reset optimizer', file=sys.stderr)
# optimizer = torch.optim.Adam(model.inference_model.parameters(), lr=lr)
# else:
# print('restore parameters of the optimizers', file=sys.stderr)
# optimizer.load_state_dict(torch.load(args.save_to + '.optim.bin'))
#
# # set new lr
# for param_group in optimizer.param_groups:
# param_group['lr'] = lr
#
# # reset patience
# patience = 0
#