Files
GenAIExamples/CodeGen/codegen.py
lkk bde285dfce move examples gateway (#992)
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2024-12-06 14:40:25 +08:00

95 lines
3.5 KiB
Python

# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
import asyncio
import os
from comps import Gateway, MegaServiceEndpoint, MicroService, ServiceOrchestrator, ServiceType
from comps.cores.proto.api_protocol import (
ChatCompletionRequest,
ChatCompletionResponse,
ChatCompletionResponseChoice,
ChatMessage,
UsageInfo,
)
from comps.cores.proto.docarray import LLMParams
from fastapi import Request
from fastapi.responses import StreamingResponse
MEGA_SERVICE_PORT = int(os.getenv("MEGA_SERVICE_PORT", 7778))
LLM_SERVICE_HOST_IP = os.getenv("LLM_SERVICE_HOST_IP", "0.0.0.0")
LLM_SERVICE_PORT = int(os.getenv("LLM_SERVICE_PORT", 9000))
class CodeGenService(Gateway):
def __init__(self, host="0.0.0.0", port=8000):
self.host = host
self.port = port
self.megaservice = ServiceOrchestrator()
def add_remote_service(self):
llm = MicroService(
name="llm",
host=LLM_SERVICE_HOST_IP,
port=LLM_SERVICE_PORT,
endpoint="/v1/chat/completions",
use_remote_service=True,
service_type=ServiceType.LLM,
)
self.megaservice.add(llm)
async def handle_request(self, request: Request):
data = await request.json()
stream_opt = data.get("stream", True)
chat_request = ChatCompletionRequest.parse_obj(data)
prompt = self._handle_message(chat_request.messages)
parameters = LLMParams(
max_tokens=chat_request.max_tokens if chat_request.max_tokens else 1024,
top_k=chat_request.top_k if chat_request.top_k else 10,
top_p=chat_request.top_p if chat_request.top_p else 0.95,
temperature=chat_request.temperature if chat_request.temperature else 0.01,
frequency_penalty=chat_request.frequency_penalty if chat_request.frequency_penalty else 0.0,
presence_penalty=chat_request.presence_penalty if chat_request.presence_penalty else 0.0,
repetition_penalty=chat_request.repetition_penalty if chat_request.repetition_penalty else 1.03,
streaming=stream_opt,
)
result_dict, runtime_graph = await self.megaservice.schedule(
initial_inputs={"query": prompt}, llm_parameters=parameters
)
for node, response in result_dict.items():
# Here it suppose the last microservice in the megaservice is LLM.
if (
isinstance(response, StreamingResponse)
and node == list(self.megaservice.services.keys())[-1]
and self.megaservice.services[node].service_type == ServiceType.LLM
):
return response
last_node = runtime_graph.all_leaves()[-1]
response = result_dict[last_node]["text"]
choices = []
usage = UsageInfo()
choices.append(
ChatCompletionResponseChoice(
index=0,
message=ChatMessage(role="assistant", content=response),
finish_reason="stop",
)
)
return ChatCompletionResponse(model="codegen", choices=choices, usage=usage)
def start(self):
super().__init__(
megaservice=self.megaservice,
host=self.host,
port=self.port,
endpoint=str(MegaServiceEndpoint.CODE_GEN),
input_datatype=ChatCompletionRequest,
output_datatype=ChatCompletionResponse,
)
if __name__ == "__main__":
chatqna = CodeGenService(port=MEGA_SERVICE_PORT)
chatqna.add_remote_service()
chatqna.start()