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| from __future__ import annotations | |
| import gradio as gr | |
| import numpy as np | |
| import pandas as pd | |
| import requests | |
| from huggingface_hub.hf_api import SpaceInfo | |
| SHEET_ID = '1L7AHpWMVU_kZVLcsk8H2FTizgzeVxWPDoBxw7K8KHXw' | |
| SHEET_NAME = 'model' | |
| csv_url = f'https://docs.google.com/spreadsheets/d/{SHEET_ID}/gviz/tq?tqx=out:csv&sheet={SHEET_NAME}' | |
| class ModelList: | |
| def __init__(self): | |
| self.table = pd.read_csv(csv_url) | |
| self.table = self.table.astype({'Year':'string'}) | |
| self._preprocess_table() | |
| self.table_header = ''' | |
| <tr> | |
| <td width="15%">Name</td> | |
| <td width="10%">Year Published</td> | |
| <td width="10%">Source</td> | |
| <td width="30%">About</td> | |
| <td width="10%">Task</td> | |
| <td width="15%">Training Data Type</td> | |
| <td width="10%">Publication</td> | |
| </tr>''' | |
| def _preprocess_table(self) -> None: | |
| self.table['name_lowercase'] = self.table['Name'].str.lower() | |
| rows = [] | |
| for row in self.table.itertuples(): | |
| source = f'<a href="{row.Source}" target="_blank">Link</a>' if isinstance( | |
| row.Source, str) else '' | |
| paper = f'<a href="{row.Paper}" target="_blank">Link</a>' if isinstance( | |
| row.Source, str) else '' | |
| row = f''' | |
| <tr> | |
| <td>{row.Name}</td> | |
| <td>{row.Year}</td> | |
| <td>{source}</td> | |
| <td>{row.About}</td> | |
| <td>{row.task}</td> | |
| <td>{row.data}</td> | |
| <td>{paper}</td> | |
| </tr>''' | |
| rows.append(row) | |
| self.table['html_table_content'] = rows | |
| def render(self, search_query: str, | |
| case_sensitive: bool, | |
| filter_names: list[str], | |
| data_types: list[str]) -> tuple[int, str]: | |
| df = self.table | |
| if search_query: | |
| if case_sensitive: | |
| df = df[df.name.str.contains(search_query)] | |
| else: | |
| df = df[df.name_lowercase.str.contains(search_query.lower())] | |
| df = self.filter_table(df, filter_names, data_types) | |
| result = self.to_html(df, self.table_header) | |
| return result | |
| def filter_table(df: pd.DataFrame, filter_names: list[str], data_types: list[str]) -> pd.DataFrame: | |
| df = df.loc[df.task.isin(set(filter_names))] | |
| df = df.loc[df.data.isin(set(data_types))] | |
| return df | |
| def to_html(df: pd.DataFrame, table_header: str) -> str: | |
| table_data = ''.join(df.html_table_content) | |
| html = f''' | |
| <table> | |
| {table_header} | |
| {table_data} | |
| </table>''' | |
| return html | |
| model_list = ModelList() | |
| with gr.Blocks() as demo: | |
| with gr.Row(): | |
| gr.Image(value="RAII.svg",scale=1,show_download_button=False,show_share_button=False,show_label=False,height=100,container=False) | |
| gr.Markdown("# Models for Healthcare Teams") | |
| search_box = gr.Textbox(label='Search Name',placeholder='You can search for titles with regular expressions. e.g. (?<!sur)face',max_lines=1) | |
| case_sensitive = gr.Checkbox(label='Case Sensitive') | |
| filter_names1 = gr.CheckboxGroup(choices=['NLP','Computer Vision', 'Multi-Model'], value=['NLP','Computer Vision', 'Multi-Model'], label='Task') | |
| data_type_names1 = ['Biomedical Corpus','Scientific Corpus','Clinical Corpus','Image','Mixed'] | |
| data_types1 = gr.CheckboxGroup(choices=data_type_names1, value=data_type_names1, label='Training Data Type') | |
| search_button = gr.Button('Search') | |
| table = gr.HTML(show_label=False) | |
| demo.load(fn=model_list.render, inputs=[search_box, case_sensitive, filter_names1, data_types1,],outputs=[table,]) | |
| search_box.submit(fn=model_list.render, inputs=[search_box, case_sensitive, filter_names1, data_types1,], outputs=[table,]) | |
| search_button.click(fn=model_list.render, inputs=[search_box, case_sensitive, filter_names1, data_types1,], outputs=[table,]) | |
| demo.queue() | |
| demo.launch(share=False) | |