Spaces:
Runtime error
Runtime error
| import pandas as pd | |
| from pathlib import Path | |
| from ..styles import highlight_color | |
| # Define the absolute path to the file | |
| abs_path = Path(__file__).parent.parent.parent | |
| def load_json_data(file_path): | |
| # Load the JSON data | |
| ZAW_SCORES = pd.read_json(file_path) | |
| # Reset index so model names become a column and transpose for (year, name) pairs as rows | |
| ZAW_SCORES = ZAW_SCORES.T.reset_index() | |
| # Rename the first column as 'Model' to keep model names visible | |
| ZAW_SCORES.rename(columns={'index': 'Model'}, inplace=True) | |
| # Filter columns that contain 'Egzaminy Gimnazjalne' in the name | |
| filtered_columns = ['Model'] + [col for col in ZAW_SCORES.columns if "Egzaminy Zawodowe" in col] | |
| ZAW_SCORES = ZAW_SCORES[filtered_columns] | |
| ZAW_SCORES["Model"] = ZAW_SCORES["Model"].apply( | |
| lambda name: f"[{name.replace('__','/')}](https://huggingface.co/{name.replace('__','/')})" | |
| ) | |
| # Round numeric values to 2 decimal places | |
| numeric_columns = ZAW_SCORES.columns[1:] # Get all year columns | |
| ZAW_SCORES[numeric_columns] = ZAW_SCORES[numeric_columns].apply(pd.to_numeric, errors='coerce') * 100 | |
| ZAW_SCORES[numeric_columns] = ZAW_SCORES[numeric_columns].round(2) | |
| # Convert year part in column names to strings for Gradio compatibility | |
| ZAW_SCORES.columns = [col.split(',')[0][1:] if col != 'Model' else col for col in ZAW_SCORES.columns] | |
| year_columns = ZAW_SCORES.columns[1:] | |
| sorted_year_columns = sorted(year_columns.astype(str).tolist()) # Sort the year columns as strings | |
| sorted_columns = ['Model'] + sorted_year_columns | |
| ZAW_SCORES = ZAW_SCORES[sorted_columns] | |
| # Sort alphabetically by model name | |
| ZAW_SCORES = ZAW_SCORES.sort_values(by='Model') | |
| return ZAW_SCORES | |
| # Define file path | |
| file_path = str(abs_path / "leaderboards/all_types_years.json") | |
| ZAW_SCORES = load_json_data(file_path) | |
| ZAW_SCORES = ZAW_SCORES.style.highlight_max( | |
| color = highlight_color, | |
| subset=ZAW_SCORES.columns[-12:]).format(precision=2) | |