import argparse import collections import torch parser = argparse.ArgumentParser(formatter_class=argparse.ArgumentDefaultsHelpFormatter) parser.add_argument("--input_model_path", type=str, default="models/input_model.bin", help=".") parser.add_argument("--output_model_path", type=str, default="models/output_model.bin", help=".") parser.add_argument("--layers_num", type=int, default=12, help=".") args = parser.parse_args() input_model = torch.load(args.input_model_path, map_location='cpu') output_model = collections.OrderedDict() emb_size = \ input_model["roberta.embeddings.word_embeddings.weight"].shape[1] output_model["embedding.word.embedding.weight"] = \ input_model["roberta.embeddings.word_embeddings.weight"] output_model["embedding.pos.embedding.weight"] = \ torch.cat((input_model["roberta.embeddings.position_embeddings.weight"][2:], torch.zeros(2, emb_size)), 0) output_model["embedding.seg.embedding.weight"] = \ torch.cat((torch.Tensor(torch.zeros(2, emb_size)), input_model["roberta.embeddings.token_type_embeddings.weight"]), dim=0) output_model["embedding.layer_norm.gamma"] = \ input_model["roberta.embeddings.LayerNorm.weight"] output_model["embedding.layer_norm.beta"] = \ input_model["roberta.embeddings.LayerNorm.bias"] for i in range(args.layers_num): output_model["encoder.transformer." + str(i) + ".self_attn.linear_layers.0.weight"] = \ input_model["roberta.encoder.layer." + str(i) + ".attention.self.query.weight"] output_model["encoder.transformer." + str(i) + ".self_attn.linear_layers.0.bias"] = \ input_model["roberta.encoder.layer." + str(i) + ".attention.self.query.bias"] output_model["encoder.transformer." + str(i) + ".self_attn.linear_layers.1.weight"] = \ input_model["roberta.encoder.layer." + str(i) + ".attention.self.key.weight"] output_model["encoder.transformer." + str(i) + ".self_attn.linear_layers.1.bias"] = \ input_model["roberta.encoder.layer." + str(i) + ".attention.self.key.bias"] output_model["encoder.transformer." + str(i) + ".self_attn.linear_layers.2.weight"] = \ input_model["roberta.encoder.layer." + str(i) + ".attention.self.value.weight"] output_model["encoder.transformer." + str(i) + ".self_attn.linear_layers.2.bias"] = \ input_model["roberta.encoder.layer." + str(i) + ".attention.self.value.bias"] output_model["encoder.transformer." + str(i) + ".self_attn.final_linear.weight"] = \ input_model["roberta.encoder.layer." + str(i) + ".attention.output.dense.weight"] output_model["encoder.transformer." + str(i) + ".self_attn.final_linear.bias"] = \ input_model["roberta.encoder.layer." + str(i) + ".attention.output.dense.bias"] output_model["encoder.transformer." + str(i) + ".layer_norm_1.gamma"] = \ input_model["roberta.encoder.layer." + str(i) + ".attention.output.LayerNorm.weight"] output_model["encoder.transformer." + str(i) + ".layer_norm_1.beta"] = \ input_model["roberta.encoder.layer." + str(i) + ".attention.output.LayerNorm.bias"] output_model["encoder.transformer." + str(i) + ".feed_forward.linear_1.weight"] = \ input_model["roberta.encoder.layer." + str(i) + ".intermediate.dense.weight"] output_model["encoder.transformer." + str(i) + ".feed_forward.linear_1.bias"] = \ input_model["roberta.encoder.layer." + str(i) + ".intermediate.dense.bias"] output_model["encoder.transformer." + str(i) + ".feed_forward.linear_2.weight"] = \ input_model["roberta.encoder.layer." + str(i) + ".output.dense.weight"] output_model["encoder.transformer." + str(i) + ".feed_forward.linear_2.bias"] = \ input_model["roberta.encoder.layer." + str(i) + ".output.dense.bias"] output_model["encoder.transformer." + str(i) + ".layer_norm_2.gamma"] = \ input_model["roberta.encoder.layer." + str(i) + ".output.LayerNorm.weight"] output_model["encoder.transformer." + str(i) + ".layer_norm_2.beta"] = \ input_model["roberta.encoder.layer." + str(i) + ".output.LayerNorm.bias"] output_model["target.mlm.linear_1.weight"] = \ input_model["lm_head.dense.weight"] output_model["target.mlm.linear_1.bias"] = \ input_model["lm_head.dense.bias"] output_model["target.mlm.layer_norm.gamma"] = \ input_model["lm_head.layer_norm.weight"] output_model["target.mlm.layer_norm.beta"] = \ input_model["lm_head.layer_norm.bias"] output_model["target.mlm.linear_2.weight"] = \ input_model["lm_head.decoder.weight"] output_model["target.mlm.linear_2.bias"] = \ input_model["lm_head.bias"] torch.save(output_model, args.output_model_path)