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| import os
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| import subprocess
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| import sys
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| from copy import deepcopy
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| from functools import partial
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| USAGE = (
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| "-" * 70
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| + "\n"
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| + "| Usage: |\n"
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| + "| llamafactory-cli api -h: launch an OpenAI-style API server |\n"
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| + "| llamafactory-cli chat -h: launch a chat interface in CLI |\n"
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| + "| llamafactory-cli eval -h: evaluate models |\n"
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| + "| llamafactory-cli export -h: merge LoRA adapters and export model |\n"
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| + "| llamafactory-cli train -h: train models |\n"
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| + "| llamafactory-cli webchat -h: launch a chat interface in Web UI |\n"
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| + "| llamafactory-cli webui: launch LlamaBoard |\n"
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| + "| llamafactory-cli version: show version info |\n"
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| + "-" * 70
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| )
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| def main():
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| from . import launcher
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| from .api.app import run_api
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| from .chat.chat_model import run_chat
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| from .eval.evaluator import run_eval
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| from .extras import logging
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| from .extras.env import VERSION, print_env
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| from .extras.misc import find_available_port, get_device_count, is_env_enabled, use_ray
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| from .train.tuner import export_model, run_exp
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| from .webui.interface import run_web_demo, run_web_ui
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| logger = logging.get_logger(__name__)
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| WELCOME = (
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| "-" * 58
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| + "\n"
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| + f"| Welcome to LLaMA Factory, version {VERSION}"
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| + " " * (21 - len(VERSION))
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| + "|\n|"
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| + " " * 56
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| + "|\n"
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| + "| Project page: https://github.com/hiyouga/LLaMA-Factory |\n"
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| + "-" * 58
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| )
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| COMMAND_MAP = {
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| "api": run_api,
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| "chat": run_chat,
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| "env": print_env,
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| "eval": run_eval,
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| "export": export_model,
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| "train": run_exp,
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| "webchat": run_web_demo,
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| "webui": run_web_ui,
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| "version": partial(print, WELCOME),
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| "help": partial(print, USAGE),
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| }
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| command = sys.argv.pop(1) if len(sys.argv) >= 1 else "help"
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| if command == "train" and (is_env_enabled("FORCE_TORCHRUN") or (get_device_count() > 1 and not use_ray())):
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| nnodes = os.getenv("NNODES", "1")
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| node_rank = os.getenv("NODE_RANK", "0")
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| nproc_per_node = os.getenv("NPROC_PER_NODE", str(get_device_count()))
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| master_addr = os.getenv("MASTER_ADDR", "127.0.0.1")
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| master_port = os.getenv("MASTER_PORT", str(find_available_port()))
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| logger.info_rank0(f"Initializing {nproc_per_node} distributed tasks at: {master_addr}:{master_port}")
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| if int(nnodes) > 1:
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| print(f"Multi-node training enabled: num nodes: {nnodes}, node rank: {node_rank}")
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| env = deepcopy(os.environ)
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| if is_env_enabled("OPTIM_TORCH", "1"):
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| env["PYTORCH_CUDA_ALLOC_CONF"] = "expandable_segments:True"
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| env["TORCH_NCCL_AVOID_RECORD_STREAMS"] = "1"
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| print("nnodes: ", nnodes, "node_rank: ", node_rank, "nproc_per_node: ", nproc_per_node,"master_addr: ", master_addr, "master_port: ", master_port, "file_name: ", launcher.__file__, "args: ", sys.argv[1:])
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| process = subprocess.run(
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| (
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| "torchrun --nnodes {nnodes} --node_rank {node_rank} --nproc_per_node {nproc_per_node} "
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| "--master_addr {master_addr} --master_port {master_port} {file_name} {args}"
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| )
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| .format(
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| nnodes=nnodes,
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| node_rank=node_rank,
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| nproc_per_node=nproc_per_node,
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| master_addr=master_addr,
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| master_port=master_port,
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| file_name=launcher.__file__,
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| args=" ".join(sys.argv[1:]),
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| )
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| .split(),
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| env=env,
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| check=True,
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| )
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| sys.exit(process.returncode)
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| elif command in COMMAND_MAP:
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| COMMAND_MAP[command]()
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| else:
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| print(f"Unknown command: {command}.\n{USAGE}")
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| if __name__ == "__main__":
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| from multiprocessing import freeze_support
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| freeze_support()
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| main()
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|