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import gradio as gr
import json
import pandas as pd
import config
from vocab import load_tokener
from utils.character_util import iter_vocab
from utils.log_util import logger
from utils.compression_util import tokenize_corpus, unit_convertor
from functools import lru_cache
@lru_cache
def tokenize(text, tokenizer_name, color_num=5):
"""
"""
logger.info("param=" + json.dumps({"text": text, "tokenizer_type": tokenizer_name}, ensure_ascii=False))
pos_tokens = []
tokenizer = load_tokener(tokenizer_name)
if config.ADD_SPECIAL_TOKEN:
encoding = tokenizer.encode(text, add_special_tokens=True)
else:
encoding = tokenizer.encode(text, add_special_tokens=False)
table = []
for idx, token_id in enumerate(encoding):
decode_text = tokenizer.decode([token_id]) # 特殊字符解码后会统一变成 �,对应 "\ufffd"
pos_tokens.extend([(decode_text, str(idx % color_num))])
# token "Byte": # 这是 utf-8编码吧?
token = tokenizer.convert_ids_to_tokens([token_id], skip_special_tokens=False)[0]
if isinstance(token, bytes):
try:
token_str = token.decode("utf-8")
except:
token_str = token.decode("utf-8", errors="ignore")
logger.error(f"{idx}: decode_error: " + json.dumps( # gpt_35_turbo 经常有token会decode error,这里用来记录一下
{"tokenizer_type": tokenizer_name, "token": str(token), "token_str": token_str},
ensure_ascii=False))
token_bytes = token
# json_dumps = json.dumps(token_str)
elif isinstance(token, str):
token_str = token
token_bytes = bytes(token_str, "utf-8")
# json_dumps = json.dumps(token_str)
else:
logger.error(f"{idx}: wrong type for token {token_id} {type(token)} " + json.dumps({"text": text, "tokenizer_type": tokenizer_name}, ensure_ascii=False))
token_str = token
token_bytes = token
# continue
# ⭐
# TODO: gpt3.5_turbo错误: 只有id和text是对的,token和 utf8都是错的。说明 convert_ids_to_tokens 出错了。
table.append(
{"TokenID": token_id,
"Token": token_str, # utf-8解码后的字符串,为什么有些是 <0xE7>,表示什么?比如llama
"Text": decode_text, #
# "Bytes": token_bytes, # bytes类型在gradio前端页面被解码成字符串,比如 b'\xe4\xb8\xad' 仍然显示成 "中"。因此 str(token_bytes)
"UTF8 Bytes": str(token_bytes),
# "Unicode": json_dumps # unicode, 如果是ascii码,就直接显示。如果不是ascii码,就显示unicode
}
)
table_df = pd.DataFrame(table)
logger.info(f"tokenizer_type={tokenizer_name}, Tokens={table[:4]}")
# print(table_df)
return gr.update(value=pos_tokens, label=f"Tokens: {len(encoding)}"), table_df
@lru_cache
def tokenize_pair(text, tokenizer_type_1, tokenizer_type_2):
"""
input_text.change
"""
pos_tokens_1, table_df_1 = tokenize(text, tokenizer_type_1)
pos_tokens_2, table_df_2 = tokenize(text, tokenizer_type_2)
return pos_tokens_1, table_df_1, pos_tokens_2, table_df_2
@lru_cache
def basic_count(tokenizer_name):
stats = iter_vocab(tokenizer_name)
return stats['vocab_size'], f'{stats["中文token数"]}'
# return tokenizer.vocab_size, f'{stats["中文汉字数"]["中文单字"]}/{stats["中文汉字数"]["中文多字"]}'
def get_compress_rate(tokenizer_type, all_corpus, unit):
tokenizer = load_tokener(tokenizer_type)
compress_rate_stats = tokenize_corpus(tokenizer, all_corpus)
compress_rate = unit_convertor(compress_rate_stats, unit)
return compress_rate
# def get_all_compress_rate(corpuses, unit):
# stats = {}
# for lang in corpuses:
# print("###" * 10 + lang)
# for tokenizer_name in tokenizers:
# tokenizer = load_tokener(tokenizer_name)
# stat = tokenize_corpus(tokenizer, [lang])
# stats[tokenizer_name] = stat
# pprint(stats)
@lru_cache
def get_overlap_token_size(tokenizer_type_1, tokenizer_type_2):
tokenizer1 = load_tokener(tokenizer_type_1)
tokenizer2 = load_tokener(tokenizer_type_2)
vocab_set_1 = tokenizer1.get_vocab().keys()
vocab_set_2 = tokenizer2.get_vocab().keys()
token1 = next(iter(vocab_set_1))
token2 = next(iter(vocab_set_2))
if type(token1) != type(token2): # bytes str
if isinstance(token1, str):
vocab_set_1 = set([token.encode("utf-8") for token in vocab_set_1])
if isinstance(token2, str):
vocab_set_2 = set([token.encode("utf-8") for token in vocab_set_2])
overlap_tokens = vocab_set_1 & vocab_set_2
overlap_token_size = len(overlap_tokens)
logger.info(
f"{overlap_token_size} OverlapTokens of {tokenizer_type_1} {tokenizer_type_2}: {list(overlap_tokens)[:10]}")
return overlap_token_size, overlap_token_size
def on_load(url_params, request: gr.Request):
"""
onLoad
"""
text = None
tokenizer_type_1 = None
tokenizer_type_2 = None
try:
url_params = json.loads(url_params)
except:
url_params = {}
if request:
logger.info(str(request.headers))
client_ip = request.client.host
# local_ip = socket.gethostbyname(socket.gethostbyname(""))
# headers = request.kwargs['headers']
# if headers and 'x-forwarded-for' in headers:
# x_forwarded_for = headers['x-forwarded-for']
# client_ip = x_forwarded_for.split(' ')[0] if x_forwarded_for else ""
# if "referer" in request.headers: # not work for huggingface-space
# url_params = parse_qs(urlparse(request.headers["referer"]).query)
# url_params = {k: v[0] for k, v in url_params.items() if len(v) > 0}
tokenizer_type_1 = url_params.get("tokenizer1", config.default_tokenizer_type_1)
tokenizer_type_2 = url_params.get("tokenizer2", config.default_tokenizer_type_2)
text = url_params.get("text", config.default_user_input)
logger.info(f"client_ip: {client_ip}; params: {url_params}")
return text, tokenizer_type_1, tokenizer_type_2
def compress_rate_unit_change(unit):
return gr.update(label=f"Compress Rate: {unit}"), gr.update(label=f"Compress Rate: {unit}"),
def test_coding():
bytes1 = b'\xe4\xb8\xad'
print(bytes1) # b'\xe4\xb8\xad'
if __name__ == "__main__":
print(get_overlap_token_size("gpt_35_turbo", "gpt_4"))
# print(basic_count("internlm_chat_7b"))