""" TODO: 繁体、简体、语种、 """ import os import json from collections import Counter from utils.text_util import is_chinese, get_zh_count, get_digit_count from zhon.hanzi import punctuation as zh_punc CURRENT_DIR = os.path.dirname(os.path.abspath(__file__)) zh_tokens = [line.strip() for line in open(os.path.join(CURRENT_DIR, "vocab.jd.txt.v2"), "r", encoding="utf-8") if is_chinese(line.strip())] def zh_iterator(): for idx in range(ord(u'\u4e00'), ord(u'\u9fa5')): yield (chr(idx)) def get_coding_length(tokenizer, vocab, filter=None): """ 计算编码长度。(有些中文汉字被解码成多个token) """ all_length = [] for word in vocab: if len(word) > 1: continue if filter is not None and filter(word): continue tokens = tokenizer.encode(word) all_length.append(len(tokens)) # if len(tokens.ids) > 1: # if len(tokens) > 3: # print(word, tokens) dist_length = Counter(all_length) mean_length = round(sum(all_length) / len(all_length), 2) return dist_length, mean_length def has_zh_punc(text): """ 是否包含中文标点 """ return any(ch in zh_punc for ch in text) def get_space_count(text): space_count = 0 for char in text: if len(char.strip()) == 0: space_count += 1 return space_count def remove_special_char(): """ :return: """ # bert词典有 ##开头的 # byteBPE词典有带空格的 # decode_str = decode_str.strip().replace("#", "") # TODO, 按类型 pass cache = {} def iter_vocab(tokenizer, name="", from_cache=True): if from_cache and name in cache: return cache[name] f_out = open(name + "_vocab.jsonl", "w", encoding="utf-8") zh_token_count = {"total": 0, "中文单字": 0, "中文多字": 0} # zh_token_count = {"total": 0, "包含1个中文单字": 0, "中文多字": 0} # symbol_count = 0 all_single_zh_tokens = set() zh_symbol_count = 0 for token_id in range(tokenizer.vocab_size): decode_str = tokenizer.decode([token_id], skip_special_tokens=False) token = tokenizer.convert_ids_to_tokens([token_id], skip_special_tokens=False)[0] # tokenizer.convert_tokens_to_string(tokens) if token is None: # 有些词典有空的id(不连续) continue if isinstance(token, bytes): token = token.decode("utf-8", errors="ignore") digit_count = get_digit_count(decode_str) zh_count = get_zh_count(decode_str) space_count = get_space_count(decode_str) f_out.write(json.dumps( {"id": token_id, "token": token, "token_decode": decode_str, "token_len": len(decode_str), "zh_count": zh_count, "space_count": space_count, "digit_count": digit_count, "zh_symbol_count": zh_symbol_count, }, ensure_ascii=False) + "\n" ) if zh_count >= 1: zh_token_count["total"] += 1 if zh_count > 1: zh_token_count["中文多字"] += 1 else: zh_token_count["中文单字"] += 1 all_single_zh_tokens.add(decode_str.strip().replace("#", "")) # dist_length, mean_length = get_coding_length(tokenizer, zh_tokens, filter=lambda k: not is_chinese(k)) # TODO: 繁体字,简体字 zh_token_count["中文单字-去重后"] = len(all_single_zh_tokens) result = { "name": name, "impl": str(tokenizer.__class__), "vocab_size": tokenizer.vocab_size, "中文汉字数": zh_token_count, "中文标点数": zh_symbol_count, "中文汉字编码长度均值": mean_length, "中文汉字编码长度分布": json.dumps(dist_length), } cache[name] = result return result if __name__ == "__main__": # test_coding_length(jd_vocab_tokens, filter=lambda k: not is_chinese(k)) # test_coding_length(zh_punc) # test_coding_length(zh_iterator()) from vocab.chatglm2_6b import tokenizer; name = "chatglm2_6b" # from vocab.chatglm_6b import tokenizer; name="chatglm_6b" # from vocab.baichuan2 import tokenizer; name="baichuan2" # from vocab.gpt_4 import tokenizer; name="gpt4" print(iter_vocab(tokenizer, name=name))