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toolbox.py
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toolbox.py
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import markdown
import importlib
import traceback
import inspect
import re
import os
from latex2mathml.converter import convert as tex2mathml
from functools import wraps, lru_cache
"""
========================================================================
第一部分
函数插件输入输出接驳区
- ChatBotWithCookies: 带Cookies的Chatbot类,为实现更多强大的功能做基础
- ArgsGeneralWrapper: 装饰器函数,用于重组输入参数,改变输入参数的顺序与结构
- update_ui: 刷新界面用 yield from update_ui(chatbot, history)
- CatchException: 将插件中出的所有问题显示在界面上
- HotReload: 实现插件的热更新
- trimmed_format_exc: 打印traceback,为了安全而隐藏绝对地址
========================================================================
"""
class ChatBotWithCookies(list):
def __init__(self, cookie):
self._cookies = cookie
def write_list(self, list):
for t in list:
self.append(t)
def get_list(self):
return [t for t in self]
def get_cookies(self):
return self._cookies
def ArgsGeneralWrapper(f):
"""
装饰器函数,用于重组输入参数,改变输入参数的顺序与结构。
"""
def decorated(cookies, max_length, llm_model, txt, txt2, top_p, temperature, chatbot, history, system_prompt, plugin_advanced_arg, *args):
txt_passon = txt
if txt == "" and txt2 != "": txt_passon = txt2
# 引入一个有cookie的chatbot
cookies.update({
'top_p':top_p,
'temperature':temperature,
})
llm_kwargs = {
'api_key': cookies['api_key'],
'llm_model': llm_model,
'top_p':top_p,
'max_length': max_length,
'temperature':temperature,
}
plugin_kwargs = {
"advanced_arg": plugin_advanced_arg,
}
chatbot_with_cookie = ChatBotWithCookies(cookies)
chatbot_with_cookie.write_list(chatbot)
yield from f(txt_passon, llm_kwargs, plugin_kwargs, chatbot_with_cookie, history, system_prompt, *args)
return decorated
def update_ui(chatbot, history, msg='正常', **kwargs): # 刷新界面
"""
刷新用户界面
"""
assert isinstance(chatbot, ChatBotWithCookies), "在传递chatbot的过程中不要将其丢弃。必要时,可用clear将其清空,然后用for+append循环重新赋值。"
yield chatbot.get_cookies(), chatbot, history, msg
def trimmed_format_exc():
import os, traceback
str = traceback.format_exc()
current_path = os.getcwd()
replace_path = "."
return str.replace(current_path, replace_path)
def CatchException(f):
"""
装饰器函数,捕捉函数f中的异常并封装到一个生成器中返回,并显示到聊天当中。
"""
@wraps(f)
def decorated(txt, top_p, temperature, chatbot, history, systemPromptTxt, WEB_PORT):
try:
yield from f(txt, top_p, temperature, chatbot, history, systemPromptTxt, WEB_PORT)
except Exception as e:
from check_proxy import check_proxy
from toolbox import get_conf
proxies, = get_conf('proxies')
tb_str = '```\n' + trimmed_format_exc() + '```'
if len(chatbot) == 0:
chatbot.clear()
chatbot.append(["插件调度异常", "异常原因"])
chatbot[-1] = (chatbot[-1][0],
f"[Local Message] 实验性函数调用出错: \n\n{tb_str} \n\n当前代理可用性: \n\n{check_proxy(proxies)}")
yield from update_ui(chatbot=chatbot, history=history, msg=f'异常 {e}') # 刷新界面
return decorated
def HotReload(f):
"""
HotReload的装饰器函数,用于实现Python函数插件的热更新。
函数热更新是指在不停止程序运行的情况下,更新函数代码,从而达到实时更新功能。
在装饰器内部,使用wraps(f)来保留函数的元信息,并定义了一个名为decorated的内部函数。
内部函数通过使用importlib模块的reload函数和inspect模块的getmodule函数来重新加载并获取函数模块,
然后通过getattr函数获取函数名,并在新模块中重新加载函数。
最后,使用yield from语句返回重新加载过的函数,并在被装饰的函数上执行。
最终,装饰器函数返回内部函数。这个内部函数可以将函数的原始定义更新为最新版本,并执行函数的新版本。
"""
@wraps(f)
def decorated(*args, **kwargs):
fn_name = f.__name__
f_hot_reload = getattr(importlib.reload(inspect.getmodule(f)), fn_name)
yield from f_hot_reload(*args, **kwargs)
return decorated
"""
========================================================================
第二部分
其他小工具:
- write_results_to_file: 将结果写入markdown文件中
- regular_txt_to_markdown: 将普通文本转换为Markdown格式的文本。
- report_execption: 向chatbot中添加简单的意外错误信息
- text_divide_paragraph: 将文本按照段落分隔符分割开,生成带有段落标签的HTML代码。
- markdown_convertion: 用多种方式组合,将markdown转化为好看的html
- format_io: 接管gradio默认的markdown处理方式
- on_file_uploaded: 处理文件的上传(自动解压)
- on_report_generated: 将生成的报告自动投射到文件上传区
- clip_history: 当历史上下文过长时,自动截断
- get_conf: 获取设置
- select_api_key: 根据当前的模型类别,抽取可用的api-key
========================================================================
"""
def get_reduce_token_percent(text):
"""
* 此函数未来将被弃用
"""
try:
# text = "maximum context length is 4097 tokens. However, your messages resulted in 4870 tokens"
pattern = r"(\d+)\s+tokens\b"
match = re.findall(pattern, text)
EXCEED_ALLO = 500 # 稍微留一点余地,否则在回复时会因余量太少出问题
max_limit = float(match[0]) - EXCEED_ALLO
current_tokens = float(match[1])
ratio = max_limit/current_tokens
assert ratio > 0 and ratio < 1
return ratio, str(int(current_tokens-max_limit))
except:
return 0.5, '不详'
def write_results_to_file(history, file_name=None):
"""
将对话记录history以Markdown格式写入文件中。如果没有指定文件名,则使用当前时间生成文件名。
"""
import os
import time
if file_name is None:
# file_name = time.strftime("chatGPT分析报告%Y-%m-%d-%H-%M-%S", time.localtime()) + '.md'
file_name = 'chatGPT分析报告' + \
time.strftime("%Y-%m-%d-%H-%M-%S", time.localtime()) + '.md'
os.makedirs('./gpt_log/', exist_ok=True)
with open(f'./gpt_log/{file_name}', 'w', encoding='utf8') as f:
f.write('# chatGPT 分析报告\n')
for i, content in enumerate(history):
try: # 这个bug没找到触发条件,暂时先这样顶一下
if type(content) != str:
content = str(content)
except:
continue
if i % 2 == 0:
f.write('## ')
f.write(content)
f.write('\n\n')
res = '以上材料已经被写入' + os.path.abspath(f'./gpt_log/{file_name}')
print(res)
return res
def regular_txt_to_markdown(text):
"""
将普通文本转换为Markdown格式的文本。
"""
text = text.replace('\n', '\n\n')
text = text.replace('\n\n\n', '\n\n')
text = text.replace('\n\n\n', '\n\n')
return text
def report_execption(chatbot, history, a, b):
"""
向chatbot中添加错误信息
"""
chatbot.append((a, b))
history.append(a)
history.append(b)
def text_divide_paragraph(text):
"""
将文本按照段落分隔符分割开,生成带有段落标签的HTML代码。
"""
if '```' in text:
# careful input
return text
else:
# wtf input
lines = text.split("\n")
for i, line in enumerate(lines):
lines[i] = lines[i].replace(" ", " ")
text = "</br>".join(lines)
return text
@lru_cache(maxsize=128) # 使用 lru缓存 加快转换速度
def markdown_convertion(txt):
"""
将Markdown格式的文本转换为HTML格式。如果包含数学公式,则先将公式转换为HTML格式。
"""
pre = '<div class="markdown-body">'
suf = '</div>'
if txt.startswith(pre) and txt.endswith(suf):
# print('警告,输入了已经经过转化的字符串,二次转化可能出问题')
return txt # 已经被转化过,不需要再次转化
markdown_extension_configs = {
'mdx_math': {
'enable_dollar_delimiter': True,
'use_gitlab_delimiters': False,
},
}
find_equation_pattern = r'<script type="math/tex(?:.*?)>(.*?)</script>'
def tex2mathml_catch_exception(content, *args, **kwargs):
try:
content = tex2mathml(content, *args, **kwargs)
except:
content = content
return content
def replace_math_no_render(match):
content = match.group(1)
if 'mode=display' in match.group(0):
content = content.replace('\n', '</br>')
return f"<font color=\"#00FF00\">$$</font><font color=\"#FF00FF\">{content}</font><font color=\"#00FF00\">$$</font>"
else:
return f"<font color=\"#00FF00\">$</font><font color=\"#FF00FF\">{content}</font><font color=\"#00FF00\">$</font>"
def replace_math_render(match):
content = match.group(1)
if 'mode=display' in match.group(0):
if '\\begin{aligned}' in content:
content = content.replace('\\begin{aligned}', '\\begin{array}')
content = content.replace('\\end{aligned}', '\\end{array}')
content = content.replace('&', ' ')
content = tex2mathml_catch_exception(content, display="block")
return content
else:
return tex2mathml_catch_exception(content)
def markdown_bug_hunt(content):
"""
解决一个mdx_math的bug(单$包裹begin命令时多余<script>)
"""
content = content.replace('<script type="math/tex">\n<script type="math/tex; mode=display">', '<script type="math/tex; mode=display">')
content = content.replace('</script>\n</script>', '</script>')
return content
def no_code(txt):
if '```' not in txt:
return True
else:
if '```reference' in txt: return True # newbing
else: return False
if ('$' in txt) and no_code(txt): # 有$标识的公式符号,且没有代码段```的标识
# convert everything to html format
split = markdown.markdown(text='---')
convert_stage_1 = markdown.markdown(text=txt, extensions=['mdx_math', 'fenced_code', 'tables', 'sane_lists'], extension_configs=markdown_extension_configs)
convert_stage_1 = markdown_bug_hunt(convert_stage_1)
# re.DOTALL: Make the '.' special character match any character at all, including a newline; without this flag, '.' will match anything except a newline. Corresponds to the inline flag (?s).
# 1. convert to easy-to-copy tex (do not render math)
convert_stage_2_1, n = re.subn(find_equation_pattern, replace_math_no_render, convert_stage_1, flags=re.DOTALL)
# 2. convert to rendered equation
convert_stage_2_2, n = re.subn(find_equation_pattern, replace_math_render, convert_stage_1, flags=re.DOTALL)
# cat them together
return pre + convert_stage_2_1 + f'{split}' + convert_stage_2_2 + suf
else:
return pre + markdown.markdown(txt, extensions=['fenced_code', 'codehilite', 'tables', 'sane_lists']) + suf
def close_up_code_segment_during_stream(gpt_reply):
"""
在gpt输出代码的中途(输出了前面的```,但还没输出完后面的```),补上后面的```
Args:
gpt_reply (str): GPT模型返回的回复字符串。
Returns:
str: 返回一个新的字符串,将输出代码片段的“后面的```”补上。
"""
if '```' not in gpt_reply:
return gpt_reply
if gpt_reply.endswith('```'):
return gpt_reply
# 排除了以上两个情况,我们
segments = gpt_reply.split('```')
n_mark = len(segments) - 1
if n_mark % 2 == 1:
# print('输出代码片段中!')
return gpt_reply+'\n```'
else:
return gpt_reply
def format_io(self, y):
"""
将输入和输出解析为HTML格式。将y中最后一项的输入部分段落化,并将输出部分的Markdown和数学公式转换为HTML格式。
"""
if y is None or y == []:
return []
i_ask, gpt_reply = y[-1]
i_ask = text_divide_paragraph(i_ask) # 输入部分太自由,预处理一波
gpt_reply = close_up_code_segment_during_stream(gpt_reply) # 当代码输出半截的时候,试着补上后个```
y[-1] = (
None if i_ask is None else markdown.markdown(i_ask, extensions=['fenced_code', 'tables']),
None if gpt_reply is None else markdown_convertion(gpt_reply)
)
return y
def find_free_port():
"""
返回当前系统中可用的未使用端口。
"""
import socket
from contextlib import closing
with closing(socket.socket(socket.AF_INET, socket.SOCK_STREAM)) as s:
s.bind(('', 0))
s.setsockopt(socket.SOL_SOCKET, socket.SO_REUSEADDR, 1)
return s.getsockname()[1]
def extract_archive(file_path, dest_dir):
import zipfile
import tarfile
import os
# Get the file extension of the input file
file_extension = os.path.splitext(file_path)[1]
# Extract the archive based on its extension
if file_extension == '.zip':
with zipfile.ZipFile(file_path, 'r') as zipobj:
zipobj.extractall(path=dest_dir)
print("Successfully extracted zip archive to {}".format(dest_dir))
elif file_extension in ['.tar', '.gz', '.bz2']:
with tarfile.open(file_path, 'r:*') as tarobj:
tarobj.extractall(path=dest_dir)
print("Successfully extracted tar archive to {}".format(dest_dir))
# 第三方库,需要预先pip install rarfile
# 此外,Windows上还需要安装winrar软件,配置其Path环境变量,如"C:\Program Files\WinRAR"才可以
elif file_extension == '.rar':
try:
import rarfile
with rarfile.RarFile(file_path) as rf:
rf.extractall(path=dest_dir)
print("Successfully extracted rar archive to {}".format(dest_dir))
except:
print("Rar format requires additional dependencies to install")
return '\n\n需要安装pip install rarfile来解压rar文件'
# 第三方库,需要预先pip install py7zr
elif file_extension == '.7z':
try:
import py7zr
with py7zr.SevenZipFile(file_path, mode='r') as f:
f.extractall(path=dest_dir)
print("Successfully extracted 7z archive to {}".format(dest_dir))
except:
print("7z format requires additional dependencies to install")
return '\n\n需要安装pip install py7zr来解压7z文件'
else:
return ''
return ''
def find_recent_files(directory):
"""
me: find files that is created with in one minutes under a directory with python, write a function
gpt: here it is!
"""
import os
import time
current_time = time.time()
one_minute_ago = current_time - 60
recent_files = []
for filename in os.listdir(directory):
file_path = os.path.join(directory, filename)
if file_path.endswith('.log'):
continue
created_time = os.path.getmtime(file_path)
if created_time >= one_minute_ago:
if os.path.isdir(file_path):
continue
recent_files.append(file_path)
return recent_files
def on_file_uploaded(files, chatbot, txt, txt2, checkboxes):
"""
当文件被上传时的回调函数
"""
if len(files) == 0:
return chatbot, txt
import shutil
import os
import time
import glob
from toolbox import extract_archive
try:
shutil.rmtree('./private_upload/')
except:
pass
time_tag = time.strftime("%Y-%m-%d-%H-%M-%S", time.localtime())
os.makedirs(f'private_upload/{time_tag}', exist_ok=True)
err_msg = ''
for file in files:
file_origin_name = os.path.basename(file.orig_name)
shutil.copy(file.name, f'private_upload/{time_tag}/{file_origin_name}')
err_msg += extract_archive(f'private_upload/{time_tag}/{file_origin_name}',
dest_dir=f'private_upload/{time_tag}/{file_origin_name}.extract')
moved_files = [fp for fp in glob.glob('private_upload/**/*', recursive=True)]
if "底部输入区" in checkboxes:
txt = ""
txt2 = f'private_upload/{time_tag}'
else:
txt = f'private_upload/{time_tag}'
txt2 = ""
moved_files_str = '\t\n\n'.join(moved_files)
chatbot.append(['我上传了文件,请查收',
f'[Local Message] 收到以下文件: \n\n{moved_files_str}' +
f'\n\n调用路径参数已自动修正到: \n\n{txt}' +
f'\n\n现在您点击任意“红颜色”标识的函数插件时,以上文件将被作为输入参数'+err_msg])
return chatbot, txt, txt2
def on_report_generated(files, chatbot):
from toolbox import find_recent_files
report_files = find_recent_files('gpt_log')
if len(report_files) == 0:
return None, chatbot
# files.extend(report_files)
chatbot.append(['汇总报告如何远程获取?', '汇总报告已经添加到右侧“文件上传区”(可能处于折叠状态),请查收。'])
return report_files, chatbot
def is_openai_api_key(key):
API_MATCH_ORIGINAL = re.match(r"sk-[a-zA-Z0-9]{48}$", key)
API_MATCH_AZURE = re.match(r"[a-zA-Z0-9]{32}$", key)
return bool(API_MATCH_ORIGINAL) or bool(API_MATCH_AZURE)
def is_api2d_key(key):
if key.startswith('fk') and len(key) == 41:
return True
else:
return False
def is_any_api_key(key):
if ',' in key:
keys = key.split(',')
for k in keys:
if is_any_api_key(k): return True
return False
else:
return is_openai_api_key(key) or is_api2d_key(key)
def what_keys(keys):
avail_key_list = {'OpenAI Key':0, "API2D Key":0}
key_list = keys.split(',')
for k in key_list:
if is_openai_api_key(k):
avail_key_list['OpenAI Key'] += 1
for k in key_list:
if is_api2d_key(k):
avail_key_list['API2D Key'] += 1
return f"检测到: OpenAI Key {avail_key_list['OpenAI Key']} 个,API2D Key {avail_key_list['API2D Key']} 个"
def select_api_key(keys, llm_model):
import random
avail_key_list = []
key_list = keys.split(',')
if llm_model.startswith('gpt-'):
for k in key_list:
if is_openai_api_key(k): avail_key_list.append(k)
if llm_model.startswith('api2d-'):
for k in key_list:
if is_api2d_key(k): avail_key_list.append(k)
if len(avail_key_list) == 0:
raise RuntimeError(f"您提供的api-key不满足要求,不包含任何可用于{llm_model}的api-key。您可能选择了错误的模型或请求源。")
api_key = random.choice(avail_key_list) # 随机负载均衡
return api_key
def read_env_variable(arg, default_value):
"""
环境变量可以是 `GPT_ACADEMIC_CONFIG`(优先),也可以直接是`CONFIG`
例如在windows cmd中,既可以写:
set USE_PROXY=True
set API_KEY=sk-j7caBpkRoxxxxxxxxxxxxxxxxxxxxxxxxxxxx
set proxies={"http":"http://127.0.0.1:10085", "https":"http://127.0.0.1:10085",}
set AVAIL_LLM_MODELS=["gpt-3.5-turbo", "chatglm"]
set AUTHENTICATION=[("username", "password"), ("username2", "password2")]
也可以写:
set GPT_ACADEMIC_USE_PROXY=True
set GPT_ACADEMIC_API_KEY=sk-j7caBpkRoxxxxxxxxxxxxxxxxxxxxxxxxxxxx
set GPT_ACADEMIC_proxies={"http":"http://127.0.0.1:10085", "https":"http://127.0.0.1:10085",}
set GPT_ACADEMIC_AVAIL_LLM_MODELS=["gpt-3.5-turbo", "chatglm"]
set GPT_ACADEMIC_AUTHENTICATION=[("username", "password"), ("username2", "password2")]
"""
from colorful import print亮红, print亮绿
arg_with_prefix = "GPT_ACADEMIC_" + arg
if arg_with_prefix in os.environ:
env_arg = os.environ[arg_with_prefix]
elif arg in os.environ:
env_arg = os.environ[arg]
else:
raise KeyError
print(f"[ENV_VAR] 尝试加载{arg},默认值:{default_value} --> 修正值:{env_arg}")
try:
if isinstance(default_value, bool):
r = bool(env_arg)
elif isinstance(default_value, int):
r = int(env_arg)
elif isinstance(default_value, float):
r = float(env_arg)
elif isinstance(default_value, str):
r = env_arg.strip()
elif isinstance(default_value, dict):
r = eval(env_arg)
elif isinstance(default_value, list):
r = eval(env_arg)
elif default_value is None:
assert arg == "proxies"
r = eval(env_arg)
else:
print亮红(f"[ENV_VAR] 环境变量{arg}不支持通过环境变量设置! ")
raise KeyError
except:
print亮红(f"[ENV_VAR] 环境变量{arg}加载失败! ")
raise KeyError(f"[ENV_VAR] 环境变量{arg}加载失败! ")
print亮绿(f"[ENV_VAR] 成功读取环境变量{arg}")
return r
@lru_cache(maxsize=128)
def read_single_conf_with_lru_cache(arg):
from colorful import print亮红, print亮绿, print亮蓝
try:
# 优先级1. 获取环境变量作为配置
default_ref = getattr(importlib.import_module('config'), arg) # 读取默认值作为数据类型转换的参考
r = read_env_variable(arg, default_ref)
except:
try:
# 优先级2. 获取config_private中的配置
r = getattr(importlib.import_module('config_private'), arg)
except:
# 优先级3. 获取config中的配置
r = getattr(importlib.import_module('config'), arg)
# 在读取API_KEY时,检查一下是不是忘了改config
if arg == 'API_KEY':
print亮蓝(f"[API_KEY] 本项目现已支持OpenAI和API2D的api-key。也支持同时填写多个api-key,如API_KEY=\"openai-key1,openai-key2,api2d-key3\"")
print亮蓝(f"[API_KEY] 您既可以在config.py中修改api-key(s),也可以在问题输入区输入临时的api-key(s),然后回车键提交后即可生效。")
if is_any_api_key(r):
print亮绿(f"[API_KEY] 您的 API_KEY 是: {r[:15]}*** API_KEY 导入成功")
else:
print亮红( "[API_KEY] 正确的 API_KEY 是'sk'开头的51位密钥(OpenAI),或者 'fk'开头的41位密钥,请在config文件中修改API密钥之后再运行。")
if arg == 'proxies':
if r is None:
print亮红('[PROXY] 网络代理状态:未配置。无代理状态下很可能无法访问OpenAI家族的模型。建议:检查USE_PROXY选项是否修改。')
else:
print亮绿('[PROXY] 网络代理状态:已配置。配置信息如下:', r)
assert isinstance(r, dict), 'proxies格式错误,请注意proxies选项的格式,不要遗漏括号。'
return r
def get_conf(*args):
# 建议您复制一个config_private.py放自己的秘密, 如API和代理网址, 避免不小心传github被别人看到
res = []
for arg in args:
r = read_single_conf_with_lru_cache(arg)
res.append(r)
return res
def clear_line_break(txt):
txt = txt.replace('\n', ' ')
txt = txt.replace(' ', ' ')
txt = txt.replace(' ', ' ')
return txt
class DummyWith():
"""
这段代码定义了一个名为DummyWith的空上下文管理器,
它的作用是……额……就是不起作用,即在代码结构不变得情况下取代其他的上下文管理器。
上下文管理器是一种Python对象,用于与with语句一起使用,
以确保一些资源在代码块执行期间得到正确的初始化和清理。
上下文管理器必须实现两个方法,分别为 __enter__()和 __exit__()。
在上下文执行开始的情况下,__enter__()方法会在代码块被执行前被调用,
而在上下文执行结束时,__exit__()方法则会被调用。
"""
def __enter__(self):
return self
def __exit__(self, exc_type, exc_value, traceback):
return
def run_gradio_in_subpath(demo, auth, port, custom_path):
"""
把gradio的运行地址更改到指定的二次路径上
"""
def is_path_legal(path: str)->bool:
'''
check path for sub url
path: path to check
return value: do sub url wrap
'''
if path == "/": return True
if len(path) == 0:
print("ilegal custom path: {}\npath must not be empty\ndeploy on root url".format(path))
return False
if path[0] == '/':
if path[1] != '/':
print("deploy on sub-path {}".format(path))
return True
return False
print("ilegal custom path: {}\npath should begin with \'/\'\ndeploy on root url".format(path))
return False
if not is_path_legal(custom_path): raise RuntimeError('Ilegal custom path')
import uvicorn
import gradio as gr
from fastapi import FastAPI
app = FastAPI()
if custom_path != "/":
@app.get("/")
def read_main():
return {"message": f"Gradio is running at: {custom_path}"}
app = gr.mount_gradio_app(app, demo, path=custom_path)
uvicorn.run(app, host="0.0.0.0", port=port) # , auth=auth
def clip_history(inputs, history, tokenizer, max_token_limit):
"""
reduce the length of history by clipping.
this function search for the longest entries to clip, little by little,
until the number of token of history is reduced under threshold.
通过裁剪来缩短历史记录的长度。
此函数逐渐地搜索最长的条目进行剪辑,
直到历史记录的标记数量降低到阈值以下。
"""
import numpy as np
from request_llm.bridge_all import model_info
def get_token_num(txt):
return len(tokenizer.encode(txt, disallowed_special=()))
input_token_num = get_token_num(inputs)
if input_token_num < max_token_limit * 3 / 4:
# 当输入部分的token占比小于限制的3/4时,裁剪时
# 1. 把input的余量留出来
max_token_limit = max_token_limit - input_token_num
# 2. 把输出用的余量留出来
max_token_limit = max_token_limit - 128
# 3. 如果余量太小了,直接清除历史
if max_token_limit < 128:
history = []
return history
else:
# 当输入部分的token占比 > 限制的3/4时,直接清除历史
history = []
return history
everything = ['']
everything.extend(history)
n_token = get_token_num('\n'.join(everything))
everything_token = [get_token_num(e) for e in everything]
# 截断时的颗粒度
delta = max(everything_token) // 16
while n_token > max_token_limit:
where = np.argmax(everything_token)
encoded = tokenizer.encode(everything[where], disallowed_special=())
clipped_encoded = encoded[:len(encoded)-delta]
everything[where] = tokenizer.decode(clipped_encoded)[:-1] # -1 to remove the may-be illegal char
everything_token[where] = get_token_num(everything[where])
n_token = get_token_num('\n'.join(everything))
history = everything[1:]
return history