71 lines
2.3 KiB
Python
71 lines
2.3 KiB
Python
# Copyright (c) ModelScope Contributors. All rights reserved.
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import gradio as gr
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from typing import Type
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from swift.dataset import get_dataset_list
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from ..base import BaseUI
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class Dataset(BaseUI):
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group = 'llm_train'
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locale_dict = {
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'dataset': {
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'label': {
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'zh': '数据集名称',
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'en': 'Dataset Code'
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},
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'info': {
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'zh': '选择训练的数据集,支持复选/本地路径',
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'en': 'The dataset(s) to train the models, support multi select and local folder/files'
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}
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},
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'max_length': {
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'label': {
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'zh': '句子最大长度',
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'en': 'The max length',
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},
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'info': {
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'zh': '设置输入模型的最大长度',
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'en': 'Set the max length input to the model',
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}
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},
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'split_dataset_ratio': {
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'label': {
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'zh': '验证集拆分比例',
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'en': 'Split ratio of eval dataset'
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},
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'info': {
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'zh': '表示将总数据的多少拆分到验证集中',
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'en': 'Split the datasets by this ratio for eval'
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}
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},
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'padding_free': {
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'label': {
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'zh': '无填充批处理',
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'en': 'Padding-free batching'
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},
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'info': {
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'zh': '将一个batch中的数据进行展平而避免数据padding',
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'en': 'Flatten the data in a batch to avoid data padding'
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}
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},
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'dataset_param': {
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'label': {
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'zh': '数据集设置',
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'en': 'Dataset settings'
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},
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},
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}
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@classmethod
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def do_build_ui(cls, base_tab: Type['BaseUI']):
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with gr.Accordion(elem_id='dataset_param', open=True):
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with gr.Row():
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gr.Dropdown(
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elem_id='dataset', multiselect=True, choices=get_dataset_list(), scale=20, allow_custom_value=True)
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gr.Slider(elem_id='split_dataset_ratio', minimum=0.0, maximum=1.0, step=0.05, scale=10)
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gr.Slider(elem_id='max_length', minimum=32, maximum=32768, value=1024, step=1, scale=10)
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gr.Checkbox(elem_id='padding_free', scale=10)
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