dingo / app.py
DataEval's picture
add datasource local and result detail
e368b32 verified
raw
history blame
6.48 kB
import json
import os
import shutil
import gradio as gr
from dingo.exec import Executor
from dingo.io import InputArgs
def dingo_demo(dataset_source, input_path, uploaded_file, data_format, column_content, rule_list, prompt_list, model,
key, api_url):
if not data_format:
return 'ValueError: data_format can not be empty, please input.', None
if not column_content:
return 'ValueError: column_content can not be empty, please input.', None
if not rule_list and not prompt_list:
return 'ValueError: rule_list and prompt_list can not be empty at the same time.', None
# Handle input path based on dataset source
if dataset_source == "hugging_face":
if not input_path:
return 'ValueError: input_path can not be empty for hugging_face dataset, please input.', None
final_input_path = input_path
else: # local
if not uploaded_file:
return 'ValueError: Please upload a file for local dataset.', None
final_input_path = uploaded_file.name
input_data = {
"dataset": dataset_source,
"input_path": final_input_path,
"output_path": "" if dataset_source == 'hugging_face' else os.path.dirname(final_input_path),
"save_data": True,
"save_raw": True,
"data_format": data_format,
"column_content": column_content,
"custom_config":
{
"rule_list": rule_list,
"prompt_list": prompt_list,
"llm_config":
{
"detect_text_quality_detail":
{
"model": model,
"key": key,
"api_url": api_url,
}
}
}
}
input_args = InputArgs(**input_data)
executor = Executor.exec_map["local"](input_args)
executor.execute()
summary = executor.get_summary().to_dict()
detail = executor.get_bad_info_list()
new_detail = []
for item in detail:
new_detail.append(item.to_raw_dict())
if summary['output_path']:
shutil.rmtree(summary['output_path'])
# 返回两个值:概要信息和详细信息
return json.dumps(summary, indent=4), new_detail
def update_input_components(dataset_source):
# 根据数据源的不同,返回不同的输入组件
if dataset_source == "hugging_face":
# 如果数据源是huggingface,返回一个可见的文本框和一个不可见的文件组件
return [
gr.Textbox(visible=True),
gr.File(visible=False),
]
else: # local
# 如果数据源是本地,返回一个不可见的文本框和一个可见的文件组件
return [
gr.Textbox(visible=False),
gr.File(visible=True),
]
if __name__ == '__main__':
rule_options = ['RuleAbnormalChar', 'RuleAbnormalHtml', 'RuleContentNull', 'RuleContentShort', 'RuleEnterAndSpace', 'RuleOnlyUrl']
prompt_options = ['PromptRepeat', 'PromptContentChaos']
with open("header.html", "r") as file:
header = file.read()
with gr.Blocks() as demo:
gr.HTML(header)
with gr.Row():
with gr.Column():
with gr.Column():
dataset_source = gr.Dropdown(
choices=["hugging_face", "local"],
value="local",
label="dataset [source]"
)
input_path = gr.Textbox(
value='chupei/format-jsonl',
placeholder="please input hugging_face dataset path",
label="input_path",
visible=False
)
uploaded_file = gr.File(
label="upload file",
visible=True
)
data_format = gr.Dropdown(
["jsonl", "json", "plaintext", "listjson"],
label="data_format"
)
column_content = gr.Textbox(
value="content",
placeholder="please input column name of content in dataset",
label="column_content"
)
rule_list = gr.CheckboxGroup(
choices=rule_options,
label="rule_list"
)
prompt_list = gr.CheckboxGroup(
choices=prompt_options,
label="prompt_list"
)
model = gr.Textbox(
placeholder="If want to use llm, please input model, such as: deepseek-chat",
label="model"
)
key = gr.Textbox(
placeholder="If want to use llm, please input key, such as: 123456789012345678901234567890xx",
label="API KEY"
)
api_url = gr.Textbox(
placeholder="If want to use llm, please input api_url, such as: https://api.deepseek.com/v1",
label="API URL"
)
with gr.Row():
submit_single = gr.Button(value="Submit", interactive=True, variant="primary")
with gr.Column():
# 修改输出组件部分,使用Tabs
with gr.Tabs():
with gr.Tab("Result Summary"):
summary_output = gr.Textbox(label="summary", max_lines=50)
with gr.Tab("Result Detail"):
detail_output = gr.JSON(label="detail", max_height=800) # 使用JSON组件来更好地展示结构化数据
dataset_source.change(
fn=update_input_components,
inputs=dataset_source,
outputs=[input_path, uploaded_file]
)
submit_single.click(
fn=dingo_demo,
inputs=[dataset_source, input_path, uploaded_file, data_format, column_content, rule_list, prompt_list,
model, key, api_url],
outputs=[summary_output, detail_output] # 修改输出为两个组件
)
# 启动界面
demo.launch()