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"""
A multi-model worker that contains multiple sub-works one for each model. This
supports running a list of models on the same machine so that they can
(potentially) share the same background weights.
Each model can have one or more model names.
This multi-model worker assumes the models shares some underlying weights and
thus reports the combined queue lengths for health checks.
We recommend using this with multiple Peft models (with `peft` in the name)
where all Peft models are trained on the exact same base model.
"""
import argparse
import asyncio
import dataclasses
import logging
import json
import os
import time
from typing import List, Union
import threading
import uuid
from fastapi import FastAPI, Request, BackgroundTasks
from fastapi.responses import StreamingResponse, JSONResponse
import requests
try:
from transformers import (
AutoTokenizer,
AutoModelForCausalLM,
LlamaTokenizer,
AutoModel,
)
except ImportError:
from transformers import (
AutoTokenizer,
AutoModelForCausalLM,
LLaMATokenizer,
AutoModel,
)
import torch
import torch.nn.functional as F
import uvicorn
from src.constants import WORKER_HEART_BEAT_INTERVAL, ErrorCode, SERVER_ERROR_MSG
from src.model.model_adapter import (
load_model,
add_model_args,
get_conversation_template,
)
from src.model.model_chatglm import generate_stream_chatglm
from src.model.model_falcon import generate_stream_falcon
from src.model.model_codet5p import generate_stream_codet5p
from src.modules.gptq import GptqConfig
from src.modules.exllama import ExllamaConfig
from src.modules.xfastertransformer import XftConfig
from src.serve.inference import generate_stream
from src.serve.model_worker import ModelWorker, worker_id, logger
from src.utils import build_logger, pretty_print_semaphore, get_context_length
# We store both the underlying workers and a mapping from their model names to
# the worker instance. This makes it easy to fetch the appropriate worker for
# each API call.
workers = []
worker_map = {}
app = FastAPI()
def release_worker_semaphore():
workers[0].semaphore.release()
def acquire_worker_semaphore():
if workers[0].semaphore is None:
# Share the same semaphore for all workers because
# all workers share the same GPU.
semaphore = asyncio.Semaphore(workers[0].limit_worker_concurrency)
for w in workers:
w.semaphore = semaphore
return workers[0].semaphore.acquire()
def create_background_tasks():
background_tasks = BackgroundTasks()
background_tasks.add_task(release_worker_semaphore)
return background_tasks
# Note: for all the calls below, we make a hard assumption that the caller
# includes the model name in the payload, otherwise we can't figure out which
# underlying sub-worker to call.
@app.post("/worker_generate_stream")
async def api_generate_stream(request: Request):
params = await request.json()
await acquire_worker_semaphore()
worker = worker_map[params["model"]]
generator = worker.generate_stream_gate(params)
background_tasks = create_background_tasks()
return StreamingResponse(generator, background=background_tasks)
@app.post("/worker_generate")
async def api_generate(request: Request):
params = await request.json()
await acquire_worker_semaphore()
worker = worker_map[params["model"]]
output = worker.generate_gate(params)
release_worker_semaphore()
return JSONResponse(output)
@app.post("/worker_get_embeddings")
async def api_get_embeddings(request: Request):
params = await request.json()
await acquire_worker_semaphore()
worker = worker_map[params["model"]]
embedding = worker.get_embeddings(params)
background_tasks = create_background_tasks()
return JSONResponse(content=embedding, background=background_tasks)
@app.post("/worker_get_status")
async def api_get_status(request: Request):
return {
"model_names": [m for w in workers for m in w.model_names],
"speed": 1,
"queue_length": sum([w.get_queue_length() for w in workers]),
}
@app.post("/count_token")
async def api_count_token(request: Request):
params = await request.json()
worker = worker_map[params["model"]]
return worker.count_token(params)
@app.post("/worker_get_conv_template")
async def api_get_conv(request: Request):
params = await request.json()
worker = worker_map[params["model"]]
return worker.get_conv_template()
@app.post("/model_details")
async def api_model_details(request: Request):
params = await request.json()
worker = worker_map[params["model"]]
return {"context_length": worker.context_len}
def create_multi_model_worker():
# Note: Ensure we resolve arg conflicts. We let `add_model_args` add MOST
# of the model args but we'll override one to have an append action that
# supports multiple values.
parser = argparse.ArgumentParser(conflict_handler="resolve")
parser.add_argument("--host", type=str, default="localhost")
parser.add_argument("--port", type=int, default=21002)
parser.add_argument("--worker-address", type=str, default="http://localhost:21002")
parser.add_argument(
"--controller-address", type=str, default="http://localhost:21001"
)
add_model_args(parser)
# Override the model path to be repeated and align it with model names.
parser.add_argument(
"--model-path",
type=str,
default=[],
action="append",
help="One or more paths to model weights to load. This can be a local folder or a Hugging Face repo ID.",
)
parser.add_argument(
"--model-names",
type=lambda s: s.split(","),
action="append",
help="One or more model names. Values must be aligned with `--model-path` values.",
)
parser.add_argument(
"--conv-template",
type=str,
default=None,
action="append",
help="Conversation prompt template. Values must be aligned with `--model-path` values. If only one value is provided, it will be repeated for all models.",
)
parser.add_argument("--limit-worker-concurrency", type=int, default=5)
parser.add_argument("--stream-interval", type=int, default=2)
parser.add_argument("--no-register", action="store_true")
parser.add_argument(
"--ssl",
action="store_true",
required=False,
default=False,
help="Enable SSL. Requires OS Environment variables 'SSL_KEYFILE' and 'SSL_CERTFILE'.",
)
args = parser.parse_args()
logger.info(f"args: {args}")
if args.gpus:
if len(args.gpus.split(",")) < args.num_gpus:
raise ValueError(
f"Larger --num-gpus ({args.num_gpus}) than --gpus {args.gpus}!"
)
os.environ["CUDA_VISIBLE_DEVICES"] = args.gpus
gptq_config = GptqConfig(
ckpt=args.gptq_ckpt or args.model_path,
wbits=args.gptq_wbits,
groupsize=args.gptq_groupsize,
act_order=args.gptq_act_order,
)
if args.enable_exllama:
exllama_config = ExllamaConfig(
max_seq_len=args.exllama_max_seq_len,
gpu_split=args.exllama_gpu_split,
cache_8bit=args.exllama_cache_8bit,
)
else:
exllama_config = None
if args.enable_xft:
xft_config = XftConfig(
max_seq_len=args.xft_max_seq_len,
data_type=args.xft_dtype,
)
if args.device != "cpu":
print("xFasterTransformer now is only support CPUs. Reset device to CPU")
args.device = "cpu"
else:
xft_config = None
if args.model_names is None:
args.model_names = [[x.split("/")[-1]] for x in args.model_path]
if args.conv_template is None:
args.conv_template = [None] * len(args.model_path)
elif len(args.conv_template) == 1: # Repeat the same template
args.conv_template = args.conv_template * len(args.model_path)
# Launch all workers
workers = []
for conv_template, model_path, model_names in zip(
args.conv_template, args.model_path, args.model_names
):
w = ModelWorker(
args.controller_address,
args.worker_address,
worker_id,
model_path,
model_names,
args.limit_worker_concurrency,
args.no_register,
device=args.device,
num_gpus=args.num_gpus,
max_gpu_memory=args.max_gpu_memory,
load_8bit=args.load_8bit,
cpu_offloading=args.cpu_offloading,
gptq_config=gptq_config,
exllama_config=exllama_config,
xft_config=xft_config,
stream_interval=args.stream_interval,
conv_template=conv_template,
)
workers.append(w)
for model_name in model_names:
worker_map[model_name] = w
# Register all models
url = args.controller_address + "/register_worker"
data = {
"worker_name": workers[0].worker_addr,
"check_heart_beat": not args.no_register,
"worker_status": {
"model_names": [m for w in workers for m in w.model_names],
"speed": 1,
"queue_length": sum([w.get_queue_length() for w in workers]),
},
}
r = requests.post(url, json=data)
assert r.status_code == 200
return args, workers
if __name__ == "__main__":
args, workers = create_multi_model_worker()
if args.ssl:
uvicorn.run(
app,
host=args.host,
port=args.port,
log_level="info",
ssl_keyfile=os.environ["SSL_KEYFILE"],
ssl_certfile=os.environ["SSL_CERTFILE"],
)
else:
uvicorn.run(app, host=args.host, port=args.port, log_level="info")
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