Student0809's picture
Add files using upload-large-folder tool
7feac49 verified
raw
history blame
7.84 kB
# Copyright (c) Alibaba, Inc. and its affiliates.
import os
import re
import sys
import time
from datetime import datetime
from functools import partial
from typing import 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 ExportArguments
from swift.ui.base import BaseUI
from swift.ui.llm_export.export import Export
from swift.ui.llm_export.model import Model
from swift.ui.llm_export.runtime import ExportRuntime
from swift.utils import get_device_count
class LLMExport(BaseUI):
group = 'llm_export'
sub_ui = [Model, Export, ExportRuntime]
locale_dict = {
'llm_export': {
'label': {
'zh': 'LLM导出',
'en': 'LLM export',
}
},
'more_params': {
'label': {
'zh': '更多参数',
'en': 'More params'
},
'info': {
'zh': '以json格式或--xxx xxx命令行格式填入',
'en': 'Fill in with json format or --xxx xxx cmd format'
}
},
'export': {
'value': {
'zh': '开始导出',
'en': 'Begin Export'
},
},
'gpu_id': {
'label': {
'zh': '选择可用GPU',
'en': 'Choose GPU'
},
'info': {
'zh': '选择使用的GPU号,如CUDA不可用只能选择CPU',
'en': 'Select GPU to export'
}
},
}
choice_dict = BaseUI.get_choices_from_dataclass(ExportArguments)
default_dict = BaseUI.get_default_value_from_dataclass(ExportArguments)
arguments = BaseUI.get_argument_names(ExportArguments)
@classmethod
def do_build_ui(cls, base_tab: Type['BaseUI']):
with gr.TabItem(elem_id='llm_export', label=''):
default_device = 'cpu'
device_count = get_device_count()
if device_count > 0:
default_device = '0'
with gr.Blocks():
Model.build_ui(base_tab)
Export.build_ui(base_tab)
ExportRuntime.build_ui(base_tab)
with gr.Row():
gr.Textbox(elem_id='more_params', lines=4, scale=20)
gr.Button(elem_id='export', scale=2, variant='primary')
gr.Dropdown(
elem_id='gpu_id',
multiselect=True,
choices=[str(i) for i in range(device_count)] + ['cpu'],
value=default_device,
scale=8)
cls.element('export').click(
cls.export_model, list(base_tab.valid_elements().values()),
[cls.element('runtime_tab'), cls.element('running_tasks')])
base_tab.element('running_tasks').change(
partial(ExportRuntime.task_changed, base_tab=base_tab), [base_tab.element('running_tasks')],
list(base_tab.valid_elements().values()) + [cls.element('log')])
ExportRuntime.element('kill_task').click(
ExportRuntime.kill_task,
[ExportRuntime.element('running_tasks')],
[ExportRuntime.element('running_tasks')] + [ExportRuntime.element('log')],
)
@classmethod
def export(cls, *args):
export_args = cls.get_default_value_from_dataclass(ExportArguments)
kwargs = {}
kwargs_is_list = {}
other_kwargs = {}
more_params = {}
more_params_cmd = ''
keys = cls.valid_element_keys()
for key, value in zip(keys, args):
compare_value = export_args.get(key)
compare_value_arg = str(compare_value) if not isinstance(compare_value, (list, dict)) else compare_value
compare_value_ui = str(value) if not isinstance(value, (list, dict)) else value
if key in export_args and compare_value_ui != compare_value_arg and value:
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
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
kwargs.update(more_params)
model = kwargs.get('model')
if os.path.exists(model) and os.path.exists(os.path.join(model, 'args.json')):
kwargs['ckpt_dir'] = kwargs.pop('model')
export_args = ExportArguments(
**{
key: value.split(' ') if key in kwargs_is_list and kwargs_is_list[key] else value
for key, value in kwargs.items()
})
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 + ' '
devices = other_kwargs['gpu_id']
devices = [d for d in devices if d]
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 = ''
now = datetime.now()
time_str = f'{now.year}{now.month}{now.day}{now.hour}{now.minute}{now.second}'
file_path = f'output/{export_args.model_type}-{time_str}'
if not os.path.exists(file_path):
os.makedirs(file_path, exist_ok=True)
log_file = os.path.join(os.getcwd(), f'{file_path}/run_export.log')
export_args.log_file = log_file
params += f'--log_file "{log_file}" '
params += '--ignore_args_error true '
additional_param = ''
if export_args.quant_method == 'gptq':
additional_param = 'OMP_NUM_THREADS=14'
if sys.platform == 'win32':
if cuda_param:
cuda_param = f'set {cuda_param} && '
if additional_param:
additional_param = f'set {additional_param} && '
run_command = f'{cuda_param}{additional_param}start /b swift export {params} > {log_file} 2>&1'
else:
run_command = f'{cuda_param} {additional_param} nohup swift export {params} > {log_file} 2>&1 &'
return run_command, export_args, log_file
@classmethod
def export_model(cls, *args):
run_command, export_args, log_file = cls.export(*args)
os.system(run_command)
time.sleep(2)
return gr.update(open=True), ExportRuntime.refresh_tasks(log_file)