Files
HSAP/algorithms/dms_yolo/code.embedded.bak/ultralytics/utils/dist.py
Chengfang Lu e72bc061c5 feat: HSAP platform v2 — modular navigation, quality review, audit log, world model simulation
Major changes:
- New frontend (platform/web/): Vite + React 18 + TypeScript + Tailwind
- 4-module navigation: 数据送标 / 模型管理 / 车队管理 / 系统管理
- Data catalog with charts (DMS/ADAS/Lane 3-tab view)
- Quality review workflow (标注质检): Good/Fine/Bad scoring with auto-advance
- Audit enhancements: batch operations, rejection categories, Feishu notifications
- Operation audit log (操作日志)
- World model simulation studio (仿真工坊)
- Dataset version management with snapshots and diff
- ADAS 7-class dataset integration (138K images organized + compressed)
- User management with Feishu integration and pagination
- CRUD/search/filter on all pages, card layout redesign
- PIL-optimized image overlay rendering
- Auto-snapshot on build, in_review workflow stage
- Removed embedded algorithm code (now in workspace)
2026-06-03 11:40:21 +08:00

131 lines
4.3 KiB
Python

# Ultralytics 🚀 AGPL-3.0 License - https://ultralytics.com/license
from __future__ import annotations
import os
import shutil
import sys
import tempfile
from typing import TYPE_CHECKING
from . import USER_CONFIG_DIR
from .torch_utils import TORCH_1_9
if TYPE_CHECKING:
from ultralytics.engine.trainer import BaseTrainer
def find_free_network_port() -> int:
"""Find a free port on localhost.
It is useful in single-node training when we don't want to connect to a real main node but have to set the
`MASTER_PORT` environment variable.
Returns:
(int): The available network port number.
"""
import socket
with socket.socket(socket.AF_INET, socket.SOCK_STREAM) as s:
s.bind(("127.0.0.1", 0))
return s.getsockname()[1] # port
def generate_ddp_file(trainer: BaseTrainer) -> str:
"""Generate a DDP (Distributed Data Parallel) file for multi-GPU training.
This function creates a temporary Python file that enables distributed training across multiple GPUs. The file
contains the necessary configuration to initialize the trainer in a distributed environment.
Args:
trainer (ultralytics.engine.trainer.BaseTrainer): The trainer containing training configuration and arguments.
Must have args attribute and be a class instance.
Returns:
(str): Path to the generated temporary DDP file.
Notes:
The generated file is saved in the USER_CONFIG_DIR/DDP directory and includes:
- Trainer class import
- Configuration overrides from the trainer arguments
- Model path configuration
- Training initialization code
"""
module, name = f"{trainer.__class__.__module__}.{trainer.__class__.__name__}".rsplit(".", 1)
content = f"""
# Ultralytics Multi-GPU training temp file (should be automatically deleted after use)
from pathlib import Path, PosixPath # For model arguments stored as Path instead of str
overrides = {vars(trainer.args)}
if __name__ == "__main__":
from {module} import {name}
from ultralytics.utils import DEFAULT_CFG_DICT
cfg = DEFAULT_CFG_DICT.copy()
cfg.update(save_dir='') # handle the extra key 'save_dir'
trainer = {name}(cfg=cfg, overrides=overrides)
trainer.args.model = "{getattr(trainer.hub_session, "model_url", trainer.args.model)}"
results = trainer.train()
"""
(USER_CONFIG_DIR / "DDP").mkdir(exist_ok=True)
with tempfile.NamedTemporaryFile(
prefix="_temp_",
suffix=f"{id(trainer)}.py",
mode="w+",
encoding="utf-8",
dir=USER_CONFIG_DIR / "DDP",
delete=False,
) as file:
file.write(content)
return file.name
def generate_ddp_command(trainer: BaseTrainer) -> tuple[list[str], str]:
"""Generate command for distributed training.
Args:
trainer (ultralytics.engine.trainer.BaseTrainer): The trainer containing configuration for distributed training.
Returns:
cmd (list[str]): The command to execute for distributed training.
file (str): Path to the temporary file created for DDP training.
"""
import __main__ # noqa local import to avoid https://github.com/Lightning-AI/pytorch-lightning/issues/15218
if not trainer.resume:
shutil.rmtree(trainer.save_dir) # remove the save_dir
file = generate_ddp_file(trainer)
dist_cmd = "torch.distributed.run" if TORCH_1_9 else "torch.distributed.launch"
port = find_free_network_port()
cmd = [
sys.executable,
"-m",
dist_cmd,
"--nproc_per_node",
f"{trainer.world_size}",
"--master_port",
f"{port}",
file,
]
return cmd, file
def ddp_cleanup(trainer: BaseTrainer, file: str) -> None:
"""Delete temporary file if created during distributed data parallel (DDP) training.
This function checks if the provided file contains the trainer's ID in its name, indicating it was created as a
temporary file for DDP training, and deletes it if so.
Args:
trainer (ultralytics.engine.trainer.BaseTrainer): The trainer used for distributed training.
file (str): Path to the file that might need to be deleted.
Examples:
>>> trainer = YOLOTrainer()
>>> file = "/tmp/ddp_temp_123456789.py"
>>> ddp_cleanup(trainer, file)
"""
if f"{id(trainer)}.py" in file: # if temp_file suffix in file
os.remove(file)