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my_api.py
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346 lines (307 loc) · 13.2 KB
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import json
import os
import re
import time
from concurrent.futures import ThreadPoolExecutor
from threading import Lock
from typing import Dict, List, Optional, Union
import jieba
import requests
from opencompass.registry import MODELS
from opencompass.utils.prompt import PromptList
from .base_api import BaseAPIModel
PromptType = Union[PromptList, str]
API_BASE = "XXX"
API_KEY = "XXX"
@MODELS.register_module()
class MyModelAPI(BaseAPIModel):
"""Model wrapper around OpenAI's models.
Args:
path (str): The name of OpenAI's model.
max_seq_len (int): The maximum allowed sequence length of a model.
Note that the length of prompt + generated tokens shall not exceed
this value. Defaults to 2048.
query_per_second (int): The maximum queries allowed per second
between two consecutive calls of the API. Defaults to 1.
retry (int): Number of retires if the API call fails. Defaults to 2.
key (str or List[str]): OpenAI key(s). In particular, when it
is set to "ENV", the key will be fetched from the environment
variable $OPENAI_API_KEY, as how openai defaults to be. If it's a
list, the keys will be used in round-robin manner. Defaults to
'ENV'.
org (str or List[str], optional): OpenAI organization(s). If not
specified, OpenAI uses the default organization bound to each API
key. If specified, the orgs will be posted with each request in
round-robin manner. Defaults to None.
meta_template (Dict, optional): The model's meta prompt
template if needed, in case the requirement of injecting or
wrapping of any meta instructions.
openai_api_base (str): The base url of OpenAI's API. Defaults to
'https://api.openai.com/v1/chat/completions'.
mode (str, optional): The method of input truncation when input length
exceeds max_seq_len. 'front','mid' and 'rear' represents the part
of input to truncate. Defaults to 'none'.
temperature (float, optional): What sampling temperature to use.
If not None, will override the temperature in the `generate()`
call. Defaults to None.
tokenizer_path (str, optional): The path to the tokenizer. Use path if
'tokenizer_path' is None, otherwise use the 'tokenizer_path'.
Defaults to None.
extra_body (Dict, optional): Add additional JSON properties to
the request
"""
is_api: bool = True
def __init__(self,
path: str = 'gdrl',
max_seq_len: int = 16384,
query_per_second: int = 1,
rpm_verbose: bool = False,
retry: int = 2,
key: Union[str, List[str]] = API_KEY,
org: Optional[Union[str, List[str]]] = None,
meta_template: Optional[Dict] = None,
openai_api_base: str = API_BASE,
mode: str = 'none',
logprobs: Optional[bool] = False,
top_logprobs: Optional[int] = None,
temperature: Optional[float] = 0,
tokenizer_path: Optional[str] = None,
extra_body: Optional[Dict] = None):
super().__init__(path=path,
max_seq_len=max_seq_len,
meta_template=meta_template,
query_per_second=query_per_second,
rpm_verbose=rpm_verbose,
retry=retry)
import tiktoken
self.tiktoken = tiktoken
self.temperature = temperature
assert mode in ['none', 'front', 'mid', 'rear']
self.mode = mode
self.logprobs = logprobs
self.top_logprobs = top_logprobs
self.tokenizer_path = tokenizer_path
self.hf_tokenizer = None
self.extra_body = extra_body
if isinstance(key, str):
if key == 'ENV':
if 'OPENAI_API_KEY' not in os.environ:
raise ValueError('OpenAI API key is not set.')
self.keys = os.getenv('OPENAI_API_KEY').split(',')
else:
self.keys = [key]
else:
self.keys = key
# record invalid keys and skip them when requesting API
# - keys have insufficient_quota
self.invalid_keys = set()
self.key_ctr = 0
if isinstance(org, str):
self.orgs = [org]
else:
self.orgs = org
self.org_ctr = 0
self.url = openai_api_base
self.path = path
def generate(self,
inputs: List[PromptType],
max_out_len: int = 16384,
temperature: float = 1,
**kwargs) -> List[str]:
"""Generate results given a list of inputs.
Args:
inputs (List[PromptType]): A list of strings or PromptDicts.
The PromptDict should be organized in OpenCompass'
API format.
max_out_len (int): The maximum length of the output.
temperature (float): What sampling temperature to use,
between 0 and 2. Higher values like 0.8 will make the output
more random, while lower values like 0.2 will make it more
focused and deterministic. Defaults to 0.7.
Returns:
List[str]: A list of generated strings.
"""
if self.temperature is not None:
temperature = self.temperature
with ThreadPoolExecutor() as executor:
results = list(
executor.map(self._generate, inputs,
[max_out_len] * len(inputs),
[temperature] * len(inputs)))
return results
def _generate(self, input: PromptType, max_out_len: int,
temperature: float) -> str:
"""Generate results given a list of inputs.
Args:
inputs (PromptType): A string or PromptDict.
The PromptDict should be organized in OpenCompass'
API format.
max_out_len (int): The maximum length of the output.
temperature (float): What sampling temperature to use,
between 0 and 2. Higher values like 0.8 will make the output
more random, while lower values like 0.2 will make it more
focused and deterministic.
Returns:
str: The generated string.
"""
assert isinstance(input, (str, PromptList))
# # max num token for gpt-3.5-turbo is 4097
# context_window = 32768
# # if '32k' in self.path:
# # context_window = 32768
# # elif '16k' in self.path:
# # context_window = 16384
# # elif 'gpt-4' in self.path:
# # context_window = 8192
# # will leave 100 tokens as prompt buffer, triggered if input is str
# if isinstance(input, str) and self.mode != 'none':
# context_window = self.max_seq_len
# input = self.bin_trim(input, context_window - 100 - max_out_len)
if isinstance(input, str):
messages = [{'role': 'user', 'content': input}]
else:
messages = []
for item in input:
msg = {'content': item['prompt']}
if item['role'] == 'HUMAN':
msg['role'] = 'user'
elif item['role'] == 'BOT':
msg['role'] = 'assistant'
elif item['role'] == 'SYSTEM':
msg['role'] = 'system'
messages.append(msg)
# # Hold out 100 tokens due to potential errors in tiktoken calculation
# try:
# max_out_len = min(
# max_out_len,
# context_window - self.get_token_len(str(input)) - 100)
# except KeyError:
# max_out_len = max_out_len
# if max_out_len <= 0:
# return ''
max_num_retries = 0
while max_num_retries < self.retry:
max_num_retries += 1
self.wait()
with Lock():
if len(self.invalid_keys) == len(self.keys):
raise RuntimeError('All keys have insufficient quota.')
# find the next valid key
while True:
self.key_ctr += 1
if self.key_ctr == len(self.keys):
self.key_ctr = 0
if self.keys[self.key_ctr] not in self.invalid_keys:
break
key = self.keys[self.key_ctr]
header = {
'Authorization': f'Bearer {key}',
"Content-Type": "application/json",
# 'api-key': key,
}
if self.orgs:
with Lock():
self.org_ctr += 1
if self.org_ctr == len(self.orgs):
self.org_ctr = 0
header['OpenAI-Organization'] = self.orgs[self.org_ctr]
try:
data = dict(
model=self.path,
messages=messages,
max_tokens=max_out_len,
n=1,
logprobs=self.logprobs,
top_logprobs=self.top_logprobs,
stop=None,
temperature=temperature,
)
if self.extra_body:
data.update(self.extra_body)
if isinstance(self.url, list):
import random
url = self.url[random.randint(0, len(self.url) - 1)]
else:
url = self.url
raw_response = requests.post(url,
headers=header,
data=json.dumps(data))
except requests.ConnectionError:
self.logger.error('Got connection error, retrying...')
continue
try:
response = raw_response.json()
except requests.JSONDecodeError:
self.logger.error('JsonDecode error, got',
str(raw_response.content))
continue
self.logger.debug(str(response))
try:
if self.logprobs:
return response['choices']
else:
return response['choices'][0]['message']['content'].strip()
except KeyError:
# if 'error' in response:
# if response['error']['code'] == 'rate_limit_exceeded':
# time.sleep(10)
# self.logger.warn('Rate limit exceeded, retrying...')
# continue
# elif response['error']['code'] == 'insufficient_quota':
# self.invalid_keys.add(key)
# self.logger.warn(f'insufficient_quota key: {key}')
# continue
# elif response['error']['code'] == 'invalid_prompt':
# self.logger.warn('Invalid prompt:', str(input))
# return ''
# elif response['error']['type'] == 'invalid_prompt':
# self.logger.warn('Invalid prompt:', str(input))
# return ''
#
# self.logger.error('Find error message in response: ',
# str(response['error']))
continue
# return ""
# max_num_retries += 1
return ""
# raise RuntimeError('Calling OpenAI failed after retrying for '
# f'{max_num_retries} times. Check the logs for '
# 'details.')
def bin_trim(self, prompt: str, num_token: int) -> str:
"""Get a suffix of prompt which is no longer than num_token tokens.
Args:
prompt (str): Input string.
num_token (int): The upper bound of token numbers.
Returns:
str: The trimmed prompt.
"""
token_len = self.get_token_len(prompt)
if token_len <= num_token:
return prompt
pattern = re.compile(r'[\u4e00-\u9fa5]')
if pattern.search(prompt):
words = list(jieba.cut(prompt, cut_all=False))
sep = ''
else:
words = prompt.split(' ')
sep = ' '
l, r = 1, len(words)
while l + 2 < r:
mid = (l + r) // 2
if self.mode == 'front':
cur_prompt = sep.join(words[-mid:])
elif self.mode == 'mid':
cur_prompt = sep.join(words[:mid]) + sep.join(words[-mid:])
elif self.mode == 'rear':
cur_prompt = sep.join(words[:mid])
if self.get_token_len(cur_prompt) <= num_token:
l = mid # noqa: E741
else:
r = mid
if self.mode == 'front':
prompt = sep.join(words[-l:])
elif self.mode == 'mid':
prompt = sep.join(words[:l]) + sep.join(words[-l:])
elif self.mode == 'rear':
prompt = sep.join(words[:l])
return prompt