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# Copyright (c) Alibaba, Inc. and its affiliates.
import os
from typing import List
os.environ['CUDA_VISIBLE_DEVICES'] = '0'
def infer_batch(engine: 'InferEngine', infer_requests: List['InferRequest']):
request_config = RequestConfig(max_tokens=512, temperature=0)
metric = InferStats()
resp_list = engine.infer(infer_requests, request_config, metrics=[metric])
# # The asynchronous interface below is equivalent to the synchronous interface above.
# async def _run():
# tasks = [engine.infer_async(infer_request, request_config) for infer_request in infer_requests]
# return await asyncio.gather(*tasks)
# resp_list = asyncio.run(_run())
query0 = infer_requests[0].messages[0]['content']
print(f'query0: {query0}')
print(f'response0: {resp_list[0].choices[0].message.content}')
print(f'metric: {metric.compute()}')
def infer_stream(engine: 'InferEngine', infer_request: 'InferRequest'):
request_config = RequestConfig(max_tokens=512, temperature=0, stream=True)
metric = InferStats()
gen_list = engine.infer([infer_request], request_config, metrics=[metric])
query = infer_request.messages[0]['content']
print(f'query: {query}\nresponse: ', end='')
for resp in gen_list[0]:
if resp is None:
continue
print(resp.choices[0].delta.content, end='', flush=True)
print()
print(f'metric: {metric.compute()}')
def run_client(host: str = '127.0.0.1', port: int = 8000):
engine = InferClient(host=host, port=port)
print(f'models: {engine.models}')
# Here, `load_dataset` is used for convenience; `infer_batch` does not require creating a dataset.
dataset = load_dataset(['AI-ModelScope/alpaca-gpt4-data-zh#1000'], seed=42)[0]
print(f'dataset: {dataset}')
infer_requests = [InferRequest(**data) for data in dataset]
infer_batch(engine, infer_requests)
messages = [{'role': 'user', 'content': 'who are you?'}]
infer_stream(engine, InferRequest(messages=messages))
if __name__ == '__main__':
from swift.llm import (InferEngine, InferRequest, InferClient, RequestConfig, load_dataset, run_deploy,
DeployArguments)
from swift.plugin import InferStats
# NOTE: In a real deployment scenario, please comment out the context of run_deploy.
with run_deploy(
DeployArguments(model='Qwen/Qwen2.5-1.5B-Instruct', verbose=False, log_interval=-1,
infer_backend='vllm')) as port:
run_client(port=port)