codefuse-chatbot/dev_opsgpt/service/model_workers/zhipu.py

111 lines
3.8 KiB
Python
Raw Permalink Blame History

This file contains ambiguous Unicode characters

This file contains Unicode characters that might be confused with other characters. If you think that this is intentional, you can safely ignore this warning. Use the Escape button to reveal them.

from fastchat.conversation import Conversation
from .base import *
from fastchat import conversation as conv
import sys
from typing import List, Dict, Iterator, Literal
from configs import logger, log_verbose
class ChatGLMWorker(ApiModelWorker):
DEFAULT_EMBED_MODEL = "text_embedding"
def __init__(
self,
*,
model_names: List[str] = ["zhipu-api"],
controller_addr: str = None,
worker_addr: str = None,
version: Literal["chatglm_turbo"] = "chatglm_turbo",
**kwargs,
):
kwargs.update(model_names=model_names, controller_addr=controller_addr, worker_addr=worker_addr)
kwargs.setdefault("context_len", 32768)
super().__init__(**kwargs)
self.version = version
def do_chat(self, params: ApiChatParams) -> Iterator[Dict]:
# TODO: 维护request_id
import zhipuai
params.load_config(self.model_names[0])
zhipuai.api_key = params.api_key
if log_verbose:
logger.info(f'{self.__class__.__name__}:params: {params}')
response = zhipuai.model_api.sse_invoke(
model=params.version,
prompt=params.messages,
temperature=params.temperature,
top_p=params.top_p,
incremental=False,
)
for e in response.events():
if e.event == "add":
yield {"error_code": 0, "text": e.data}
elif e.event in ["error", "interrupted"]:
data = {
"error_code": 500,
"text": str(e),
"error": {
"message": str(e),
"type": "invalid_request_error",
"param": None,
"code": None,
}
}
self.logger.error(f"请求智谱 API 时发生错误:{data}")
yield data
def do_embeddings(self, params: ApiEmbeddingsParams) -> Dict:
import zhipuai
params.load_config(self.model_names[0])
zhipuai.api_key = params.api_key
embeddings = []
try:
for t in params.texts:
response = zhipuai.model_api.invoke(model=params.embed_model or self.DEFAULT_EMBED_MODEL, prompt=t)
if response["code"] == 200:
embeddings.append(response["data"]["embedding"])
else:
self.logger.error(f"请求智谱 API 时发生错误:{response}")
return response # dict with code & msg
except Exception as e:
self.logger.error(f"请求智谱 API 时发生错误:{data}")
data = {"code": 500, "msg": f"对文本向量化时出错:{e}"}
return data
return {"code": 200, "data": embeddings}
def get_embeddings(self, params):
# TODO: 支持embeddings
print("embedding")
# print(params)
def make_conv_template(self, conv_template: str = None, model_path: str = None) -> Conversation:
# 这里的是chatglm api的模板其它API的conv_template需要定制
return conv.Conversation(
name=self.model_names[0],
system_message="你是一个聪明的助手,请根据用户的提示来完成任务",
messages=[],
roles=["Human", "Assistant", "System"],
sep="\n###",
stop_str="###",
)
if __name__ == "__main__":
import uvicorn
from server.utils import MakeFastAPIOffline
from fastchat.serve.model_worker import app
worker = ChatGLMWorker(
controller_addr="http://127.0.0.1:20001",
worker_addr="http://127.0.0.1:21001",
)
sys.modules["fastchat.serve.model_worker"].worker = worker
MakeFastAPIOffline(app)
uvicorn.run(app, port=21001)