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"""
merge 是干嘛的?
## 结果
共merge 4357 个 token
"""
import json
from tokenizers import Tokenizer
from data_sample.oov_base import jd_vocab_tokens
from zhon.hanzi import punctuation as zh_punc
def load_base_tokenizer(vocab_path):
data = json.load(open(vocab_path, "r", encoding="utf-8"))
tokenizer = Tokenizer.from_file(vocab_path)
print("vocab_size with added_tokens:", )
return data, tokenizer
data, base_tokenizer = load_base_tokenizer("../gpt_nexo_20b/20B_tokenizer.json")
vocab = data["model"]["vocab"]
merges = data["model"]["merges"]
vocab_size = base_tokenizer.get_vocab_size(with_added_tokens=True)
"""
方式一:原有的added_tokens保持id不变。方式二:原有的added_tokens进行id移位。
以下采用方式一。
"""
new_added_tokens = {}
for word in jd_vocab_tokens + list(zh_punc):
if len(word) > 1 or word in new_added_tokens:
continue
encoding = base_tokenizer.encode(word)
# if len(encoding.ids) > 1:
if len(encoding.ids) == 2: # 3个的,怎么处理?
tokens = [base_tokenizer.id_to_token(token_id) for token_id in encoding.ids]
# print("merging", vocab_size, word, json.dumps(tokens))
vocab["".join(tokens)] = vocab_size
new_added_tokens[word] = vocab_size
vocab_size += 1
merges.append(" ".join(tokens))
print("共merge %d 个 token" % (len(new_added_tokens)))
with open("20B_tokenizer_chinese.json", "w", encoding="utf-8") as f_out:
json.dump(data, f_out, indent=2)
## check
tokenizer = Tokenizer.from_file("20B_tokenizer_chinese.json")
all_error_ids = []
for word, idx in new_added_tokens.items():
decode_str = tokenizer.decode([idx])
if word != decode_str:
all_error_ids.append(idx)
print(idx, word, decode_str)
print(all_error_ids)
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