""" A model worker that executes the model. """ import argparse import asyncio import dataclasses import logging import json import os import time from typing import List 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 fastchat.constants import WORKER_HEART_BEAT_INTERVAL, ErrorCode, SERVER_ERROR_MSG from fastchat.model.model_adapter import ( load_model, add_model_args, get_conversation_template, get_generate_stream_function, ) from fastchat.modules.gptq import GptqConfig from fastchat.utils import build_logger, pretty_print_semaphore, get_context_length worker_id = str(uuid.uuid4())[:8] logger = build_logger("model_worker", f"model_worker_{worker_id}.log") global_counter = 0 model_semaphore = None app = FastAPI() def heart_beat_worker(controller): while True: time.sleep(WORKER_HEART_BEAT_INTERVAL) controller.send_heart_beat() class BaseModelWorker: def __init__( self, controller_addr: str, worker_addr: str, worker_id: str, model_path: str, model_names: List[str], ): self.controller_addr = controller_addr self.worker_addr = worker_addr self.worker_id = worker_id if model_path.endswith("/"): model_path = model_path[:-1] self.model_names = model_names or [model_path.split("/")[-1]] self.conv = get_conversation_template(model_path) self.tokenizer = None self.context_len = None self.heart_beat_thread = None def init_heart_beat(self): self.register_to_controller() self.heart_beat_thread = threading.Thread( target=heart_beat_worker, args=(self,) ) self.heart_beat_thread.start() def register_to_controller(self): logger.info("Register to controller") url = self.controller_addr + "/register_worker" data = { "worker_name": self.worker_addr, "check_heart_beat": True, "worker_status": self.get_status(), } r = requests.post(url, json=data) assert r.status_code == 200 def send_heart_beat(self): logger.info( f"Send heart beat. Models: {self.model_names}. " f"Semaphore: {pretty_print_semaphore(model_semaphore)}. " f"global_counter: {global_counter}. " f"worker_id: {worker_id}. " ) url = self.controller_addr + "/receive_heart_beat" while True: try: ret = requests.post( url, json={ "worker_name": self.worker_addr, "queue_length": self.get_queue_length(), }, timeout=5, ) exist = ret.json()["exist"] break except requests.exceptions.RequestException as e: logger.error(f"heart beat error: {e}") time.sleep(5) if not exist: self.register_to_controller() def get_queue_length(self): if ( model_semaphore is None or model_semaphore._value is None or model_semaphore._waiters is None ): return 0 else: return ( args.limit_model_concurrency - model_semaphore._value + len(model_semaphore._waiters) ) def get_status(self): return { "model_names": self.model_names, "speed": 1, "queue_length": self.get_queue_length(), } def count_token(self, params): prompt = params["prompt"] input_ids = self.tokenizer(prompt).input_ids input_echo_len = len(input_ids) ret = { "count": input_echo_len, "error_code": 0, } return ret def get_conv_template(self): return {"conv": self.conv} class ModelWorker(BaseModelWorker): def __init__( self, controller_addr: str, worker_addr: str, worker_id: str, model_path: str, model_names: List[str], no_register: bool, device: str, num_gpus: int, max_gpu_memory: str, load_8bit: bool = False, cpu_offloading: bool = False, gptq_config: bool = None, ): super().__init__( controller_addr, worker_addr, worker_id, model_path, model_names ) logger.info(f"Loading the model {self.model_names} on worker {worker_id} ...") self.model, self.tokenizer = load_model( model_path, device, num_gpus, max_gpu_memory, load_8bit, cpu_offloading, gptq_config, ) self.device = device if self.tokenizer.pad_token == None: self.tokenizer.pad_token = self.tokenizer.eos_token self.context_len = get_context_length(self.model.config) self.generate_stream_func = get_generate_stream_function(self.model, model_path) if not no_register: self.init_heart_beat() def generate_stream_gate(self, params): try: for output in self.generate_stream_func( self.model, self.tokenizer, params, self.device, self.context_len, args.stream_interval, ): ret = { "text": output["text"], "error_code": 0, } if "usage" in output: ret["usage"] = output["usage"] if "finish_reason" in output: ret["finish_reason"] = output["finish_reason"] if "logprobs" in output: ret["logprobs"] = output["logprobs"] yield json.dumps(ret).encode() + b"\0" except torch.cuda.OutOfMemoryError as e: ret = { "text": f"{SERVER_ERROR_MSG}\n\n({e})", "error_code": ErrorCode.CUDA_OUT_OF_MEMORY, } yield json.dumps(ret).encode() + b"\0" except (ValueError, RuntimeError) as e: ret = { "text": f"{SERVER_ERROR_MSG}\n\n({e})", "error_code": ErrorCode.INTERNAL_ERROR, } yield json.dumps(ret).encode() + b"\0" def generate_gate(self, params): for x in self.generate_stream_gate(params): pass return json.loads(x[:-1].decode()) @torch.inference_mode() def get_embeddings(self, params): try: tokenizer = self.tokenizer is_llama = "llama" in str( type(self.model) ) # llama supports batch inference is_chatglm = "chatglm" in str(type(self.model)) is_t5 = "t5" in str(type(self.model)) if is_llama: encoding = tokenizer.batch_encode_plus( params["input"], padding=True, return_tensors="pt" ) input_ids = encoding["input_ids"].to(self.device) attention_mask = encoding["attention_mask"].to(self.device) model_output = self.model( input_ids, attention_mask, output_hidden_states=True ) data = model_output.hidden_states[-1] mask = attention_mask.unsqueeze(-1).expand(data.size()).float() masked_embeddings = data * mask sum_embeddings = torch.sum(masked_embeddings, dim=1) seq_length = torch.sum(mask, dim=1) embedding = sum_embeddings / seq_length normalized_embeddings = F.normalize(embedding, p=2, dim=1) ret = { "embedding": normalized_embeddings.tolist(), "token_num": torch.sum(attention_mask).item(), } else: embedding = [] token_num = 0 for text in params["input"]: input_ids = tokenizer.encode(text, return_tensors="pt").to( self.device ) if is_t5: model_output = self.model( input_ids, decoder_input_ids=input_ids ) else: model_output = self.model(input_ids, output_hidden_states=True) if is_chatglm: data = (model_output.hidden_states[-1].transpose(0, 1))[0] elif is_t5: data = model_output.encoder_last_hidden_state[0] else: data = model_output.hidden_states[-1][0] data = F.normalize(torch.mean(data, dim=0), p=2, dim=0) embedding.append(data.tolist()) token_num += len(input_ids[0]) ret = { "embedding": embedding, "token_num": token_num, } except torch.cuda.OutOfMemoryError as e: ret = { "text": f"{SERVER_ERROR_MSG}\n\n({e})", "error_code": ErrorCode.CUDA_OUT_OF_MEMORY, } except (ValueError, RuntimeError) as e: ret = { "text": f"{SERVER_ERROR_MSG}\n\n({e})", "error_code": ErrorCode.INTERNAL_ERROR, } return ret def release_model_semaphore(): model_semaphore.release() def acquire_model_semaphore(): global model_semaphore, global_counter global_counter += 1 if model_semaphore is None: model_semaphore = asyncio.Semaphore(args.limit_model_concurrency) return model_semaphore.acquire() def create_background_tasks(): background_tasks = BackgroundTasks() background_tasks.add_task(release_model_semaphore) return background_tasks @app.post("/worker_generate_stream") async def api_generate_stream(request: Request): params = await request.json() await acquire_model_semaphore() 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_model_semaphore() output = worker.generate_gate(params) release_model_semaphore() return JSONResponse(output) @app.post("/worker_get_embeddings") async def api_get_embeddings(request: Request): params = await request.json() await acquire_model_semaphore() embedding = worker.get_embeddings(params) release_model_semaphore() return JSONResponse(content=embedding) @app.post("/worker_get_status") async def api_get_status(request: Request): return worker.get_status() @app.post("/count_token") async def api_count_token(request: Request): params = await request.json() return worker.count_token(params) @app.post("/worker_get_conv_template") async def api_get_conv(request: Request): return worker.get_conv_template() @app.post("/model_details") async def api_model_details(request: Request): return {"context_length": worker.context_len} if __name__ == "__main__": parser = argparse.ArgumentParser() 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) parser.add_argument( "--model-names", type=lambda s: s.split(","), help="Optional display comma separated names", ) parser.add_argument( "--limit-model-concurrency", type=int, default=5, help="Limit the model concurrency to prevent OOM.", ) parser.add_argument("--stream-interval", type=int, default=2) parser.add_argument("--no-register", action="store_true") 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, ) worker = ModelWorker( args.controller_address, args.worker_address, worker_id, args.model_path, args.model_names, 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, ) uvicorn.run(app, host=args.host, port=args.port, log_level="info")