Example #1
0
def load_program_generator(path):
    checkpoint = load_cpu(path)
    kwargs = checkpoint['program_generator_kwargs']
    state = checkpoint['program_generator_state']
    model = Seq2Seq(**kwargs)
    model.load_state_dict(state)
    return model, kwargs
Example #2
0
def get_program_generator(args):
  vocab = utils.load_vocab(args.vocab_json)
  if args.program_generator_start_from is not None:
    pg, kwargs = utils.load_program_generator(args.program_generator_start_from)
    cur_vocab_size = pg.encoder_embed.weight.size(0)
    if cur_vocab_size != len(vocab['refexp_token_to_idx']):
      print('Expanding vocabulary of program generator')
      pg.expand_encoder_vocab(vocab['refexp_token_to_idx'])
      kwargs['encoder_vocab_size'] = len(vocab['refexp_token_to_idx'])
  else:
    kwargs = {
      'encoder_vocab_size': len(vocab['refexp_token_to_idx']),
      'decoder_vocab_size': len(vocab['program_token_to_idx']),
      'wordvec_dim': args.rnn_wordvec_dim,
      'hidden_dim': args.rnn_hidden_dim,
      'rnn_num_layers': args.rnn_num_layers,
      'rnn_dropout': args.rnn_dropout,
    }
    pg = Seq2Seq(**kwargs)
  pg.cuda()
  pg.train()
  return pg, kwargs