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# Copyright (c) Alibaba, Inc. and its affiliates.
import collections
import os
import re
import sys
import time
from functools import partial
from subprocess import PIPE, STDOUT, Popen
from typing import Dict, Type
import gradio as gr
import json
import torch
from json import JSONDecodeError
from transformers.utils import is_torch_cuda_available, is_torch_npu_available
from swift.llm import RLHFArguments
from swift.llm.argument.base_args.base_args import get_supported_tuners
from swift.ui.base import BaseUI
from swift.ui.llm_train.advanced import Advanced
from swift.ui.llm_train.dataset import Dataset
from swift.ui.llm_train.galore import Galore
from swift.ui.llm_train.hyper import Hyper
from swift.ui.llm_train.lisa import Lisa
from swift.ui.llm_train.llamapro import LlamaPro
from swift.ui.llm_train.lora import LoRA
from swift.ui.llm_train.model import Model
from swift.ui.llm_train.quantization import Quantization
from swift.ui.llm_train.report_to import ReportTo
from swift.ui.llm_train.rlhf import RLHF
from swift.ui.llm_train.runtime import Runtime
from swift.ui.llm_train.save import Save
from swift.ui.llm_train.self_cog import SelfCog
from swift.utils import get_device_count, get_logger
logger = get_logger()
class LLMTrain(BaseUI):
group = 'llm_train'
sub_ui = [
Model,
Dataset,
Runtime,
Save,
LoRA,
Hyper,
Quantization,
SelfCog,
Advanced,
RLHF,
Lisa,
Galore,
LlamaPro,
ReportTo,
]
locale_dict: Dict[str, Dict] = {
'llm_train': {
'label': {
'zh': 'LLM训练',
'en': 'LLM Training',
}
},
'train_stage': {
'label': {
'zh': '训练Stage',
'en': 'Train Stage'
},
'info': {
'zh': '请注意选择与此匹配的数据集,人类对齐配置在页面下方',
'en': 'Please choose matched dataset, RLHF settings is at the bottom of the page'
}
},
'submit_alert': {
'value': {
'zh':
'任务已开始,请查看tensorboard或日志记录,关闭本页面不影响训练过程',
'en':
'Task started, please check the tensorboard or log file, '
'closing this page does not affect training'
}
},
'dataset_alert': {
'value': {
'zh': '请选择或填入一个数据集',
'en': 'Please input or select a dataset'
}
},
'submit': {
'value': {
'zh': '🚀 开始训练',
'en': '🚀 Begin'
}
},
'dry_run': {
'label': {
'zh': '仅生成运行命令',
'en': 'Dry-run'
},
'info': {
'zh': '仅生成运行命令,开发者自行运行',
'en': 'Generate run command only, for manually running'
}
},
'gpu_id': {
'label': {
'zh': '选择可用GPU',
'en': 'Choose GPU'
},
'info': {
'zh': '选择训练使用的GPU号,如CUDA不可用只能选择CPU',
'en': 'Select GPU to train'
}
},
'train_type': {
'label': {
'zh': '训练方式',
'en': 'Train type'
},
'info': {
'zh': '选择训练的方式',
'en': 'Select the training type'
}
},
'seed': {
'label': {
'zh': '随机数种子',
'en': 'Seed'
},
'info': {
'zh': '选择随机数种子',
'en': 'Select a random seed'
}
},
'torch_dtype': {
'label': {
'zh': '训练精度',
'en': 'Training Precision'
},
'info': {
'zh': '选择训练精度',
'en': 'Select the training precision'
}
},
'envs': {
'label': {
'zh': '环境变量',
'en': 'Extra env vars'
},
},
'use_ddp': {
'label': {
'zh': '使用DDP',
'en': 'Use DDP'
},
'info': {
'zh': '是否使用数据并行训练',
'en': 'Use Distributed Data Parallel to train'
}
},
'ddp_num': {
'label': {
'zh': 'DDP分片数量',
'en': 'Number of DDP sharding'
},
'info': {
'zh': '启用多少进程的数据并行',
'en': 'The data parallel size of DDP'
}
},
'tuner_backend': {
'label': {
'zh': 'Tuner backend',
'en': 'Tuner backend'
},
'info': {
'zh': 'tuner实现框架',
'en': 'The tuner backend'
}
},
'use_liger_kernel': {
'label': {
'zh': '使用Liger kernel',
'en': 'Use Liger kernel'
},
'info': {
'zh': 'Liger kernel可以有效降低显存使用',
'en': 'Liger kernel can reduce memory usage'
}
},
'train_param': {
'label': {
'zh': '训练参数设置',
'en': 'Train settings'
},
},
}
choice_dict = BaseUI.get_choices_from_dataclass(RLHFArguments)
default_dict = BaseUI.get_default_value_from_dataclass(RLHFArguments)
arguments = BaseUI.get_argument_names(RLHFArguments)
@classmethod
def do_build_ui(cls, base_tab: Type['BaseUI']):
with gr.TabItem(elem_id='llm_train', label=''):
default_device = 'cpu'
device_count = get_device_count()
if device_count > 0:
default_device = '0'
with gr.Blocks():
Model.build_ui(base_tab)
Dataset.build_ui(base_tab)
with gr.Accordion(elem_id='train_param', open=True):
with gr.Row():
gr.Dropdown(elem_id='train_stage', choices=['pt', 'sft', 'rlhf'], value='sft', scale=3)
gr.Dropdown(elem_id='train_type', scale=2, choices=list(get_supported_tuners()))
gr.Dropdown(elem_id='tuner_backend', scale=2)
with gr.Row():
gr.Textbox(elem_id='seed', scale=4)
gr.Dropdown(elem_id='torch_dtype', scale=4)
gr.Checkbox(elem_id='use_liger_kernel', scale=4)
gr.Checkbox(elem_id='use_ddp', value=False, scale=4)
gr.Textbox(elem_id='ddp_num', value='2', scale=4)
Hyper.build_ui(base_tab)
Runtime.build_ui(base_tab)
with gr.Row():
gr.Dropdown(
elem_id='gpu_id',
multiselect=True,
choices=[str(i) for i in range(device_count)] + ['cpu'],
value=default_device,
scale=8)
gr.Textbox(elem_id='envs', scale=8)
gr.Checkbox(elem_id='dry_run', value=False, scale=4)
submit = gr.Button(elem_id='submit', scale=4, variant='primary')
LoRA.build_ui(base_tab)
RLHF.build_ui(base_tab)
Quantization.build_ui(base_tab)
Galore.build_ui(base_tab)
Lisa.build_ui(base_tab)
LlamaPro.build_ui(base_tab)
SelfCog.build_ui(base_tab)
Save.build_ui(base_tab)
ReportTo.build_ui(base_tab)
Advanced.build_ui(base_tab)
cls.element('train_type').change(
Hyper.update_lr, inputs=[base_tab.element('train_type')], outputs=[cls.element('learning_rate')])
submit.click(
cls.train_local,
list(cls.valid_elements().values()), [
cls.element('running_cmd'),
cls.element('logging_dir'),
cls.element('runtime_tab'),
cls.element('running_tasks'),
cls.element('train_record'),
],
queue=True)
base_tab.element('running_tasks').change(
partial(Runtime.task_changed, base_tab=base_tab), [base_tab.element('running_tasks')],
list(base_tab.valid_elements().values()) + [cls.element('log')] + Runtime.all_plots)
Runtime.element('kill_task').click(
Runtime.kill_task,
[Runtime.element('running_tasks')],
[Runtime.element('running_tasks')] + [Runtime.element('log')] + Runtime.all_plots,
).then(Runtime.reset, [], [Runtime.element('logging_dir')] + [Hyper.element('output_dir')])
@classmethod
def update_runtime(cls):
return gr.update(open=True), gr.update(visible=True)
@classmethod
def train(cls, *args):
ignore_elements = ('logging_dir', 'more_params', 'train_stage', 'envs')
default_args = cls.get_default_value_from_dataclass(RLHFArguments)
kwargs = {}
kwargs_is_list = {}
other_kwargs = {}
more_params = {}
more_params_cmd = ''
keys = cls.valid_element_keys()
train_stage = 'sft'
for key, value in zip(keys, args):
compare_value = default_args.get(key)
if isinstance(value, str) and re.fullmatch(cls.int_regex, value):
value = int(value)
elif isinstance(value, str) and re.fullmatch(cls.float_regex, value):
value = float(value)
elif isinstance(value, str) and re.fullmatch(cls.bool_regex, value):
value = True if value.lower() == 'true' else False
if key not in ignore_elements and key in default_args and compare_value != value and value:
kwargs[key] = value if not isinstance(value, list) else ' '.join(value)
kwargs_is_list[key] = isinstance(value, list) or getattr(cls.element(key), 'is_list', False)
else:
other_kwargs[key] = value
if key == 'more_params' and value:
try:
more_params = json.loads(value)
except (JSONDecodeError or TypeError):
more_params_cmd = value
if key == 'train_stage':
train_stage = value
kwargs.update(more_params)
if 'dataset' not in kwargs and 'custom_train_dataset_path' not in kwargs:
raise gr.Error(cls.locale('dataset_alert', cls.lang)['value'])
model = kwargs.get('model')
if os.path.exists(model) and os.path.exists(os.path.join(model, 'args.json')):
kwargs['resume_from_checkpoint'] = kwargs.pop('model')
cmd = train_stage
if kwargs.get('deepspeed'):
more_params_cmd += f' --deepspeed {kwargs.pop("deepspeed")} '
try:
sft_args = RLHFArguments(
**{
key: value.split(' ') if kwargs_is_list.get(key, False) and isinstance(value, str) else value
for key, value in kwargs.items()
})
except Exception as e:
if 'using `--model`' in str(e): # TODO a dirty fix
kwargs['model'] = kwargs.pop('resume_from_checkpoint')
sft_args = RLHFArguments(
**{
key: value.split(' ') if kwargs_is_list.get(key, False) and isinstance(value, str) else value
for key, value in kwargs.items()
})
else:
raise e
params = ''
sep = f'{cls.quote} {cls.quote}'
for e in kwargs:
if isinstance(kwargs[e], list):
params += f'--{e} {cls.quote}{sep.join(kwargs[e])}{cls.quote} '
elif e in kwargs_is_list and kwargs_is_list[e]:
all_args = [arg for arg in kwargs[e].split(' ') if arg.strip()]
params += f'--{e} {cls.quote}{sep.join(all_args)}{cls.quote} '
else:
params += f'--{e} {cls.quote}{kwargs[e]}{cls.quote} '
params += more_params_cmd + ' '
params += f'--add_version False --output_dir {sft_args.output_dir} ' \
f'--logging_dir {sft_args.logging_dir} --ignore_args_error True'
ddp_param = ''
devices = other_kwargs['gpu_id']
envs = other_kwargs['envs'] or ''
envs = envs.strip()
devices = [d for d in devices if d]
if other_kwargs['use_ddp']:
assert int(other_kwargs['ddp_num']) > 0
ddp_param = f'NPROC_PER_NODE={int(other_kwargs["ddp_num"])}'
assert (len(devices) == 1 or 'cpu' not in devices)
gpus = ','.join(devices)
cuda_param = ''
if gpus != 'cpu':
if is_torch_npu_available():
cuda_param = f'ASCEND_RT_VISIBLE_DEVICES={gpus}'
elif is_torch_cuda_available():
cuda_param = f'CUDA_VISIBLE_DEVICES={gpus}'
else:
cuda_param = ''
log_file = os.path.join(sft_args.logging_dir, 'run.log')
if sys.platform == 'win32':
if cuda_param:
cuda_param = f'set {cuda_param} && '
if ddp_param:
ddp_param = f'set {ddp_param} && '
if envs:
envs = [env.strip() for env in envs.split(' ') if env.strip()]
_envs = ''
for env in envs:
_envs += f'set {env} && '
envs = _envs
run_command = f'{cuda_param}{ddp_param}{envs}start /b swift sft {params} > {log_file} 2>&1'
else:
run_command = f'{cuda_param} {ddp_param} {envs} nohup swift {cmd} {params} > {log_file} 2>&1 &'
logger.info(f'Run training: {run_command}')
if model:
record = {}
for key, value in zip(keys, args):
if key in default_args or key in ('more_params', 'train_stage', 'use_ddp', 'ddp_num', 'gpu_id', 'envs'):
record[key] = value or None
cls.save_cache(model, record)
return run_command, sft_args, other_kwargs
@classmethod
def train_studio(cls, *args):
run_command, sft_args, other_kwargs = cls.train(*args)
if not other_kwargs['dry_run']:
lines = collections.deque(maxlen=int(os.environ.get('MAX_LOG_LINES', 50)))
process = Popen(run_command, shell=True, stdout=PIPE, stderr=STDOUT)
with process.stdout:
for line in iter(process.stdout.readline, b''):
line = line.decode('utf-8')
lines.append(line)
yield ['\n'.join(lines)] + Runtime.plot(run_command) + [run_command]
else:
yield [
'Current is dryrun mode so you can only view the training cmd, please duplicate this space to '
'do training or use with inference.'
] + [None] * len(Runtime.sft_plot) + [run_command]
@classmethod
def train_local(cls, *args):
run_command, sft_args, other_kwargs = cls.train(*args)
if not other_kwargs['dry_run']:
os.makedirs(sft_args.logging_dir, exist_ok=True)
os.system(run_command)
time.sleep(1) # to make sure the log file has been created.
gr.Info(cls.locale('submit_alert', cls.lang)['value'])
return run_command, sft_args.logging_dir, gr.update(open=True), Runtime.refresh_tasks(
sft_args.output_dir), gr.update(choices=cls.list_cache(sft_args.model))