--- license: other tags: - csv configs: - config_name: cleaned data_files: - split: train path: cleaned.csv --- # Repair Data (Cleaned Preview) This dataset publishes the contents of the repair_data folder, with the dataset UI preview focused on cleaned.csv. The cleaned file is produced with csv_repair.py to standardize types, trim whitespace, harmonize null-like tokens, and optionally split a location column into city and country. City names can be made country-specific using a real city catalog built from GeoNames. ## Files - cleaned.csv — primary data file targeted for preview. - Other helper scripts and reports are included for reproducibility (e.g., csv_repair.py, extract_countries.py, geonames_fetch.py, JSON mappings under report/). If cleaned.csv lives in a subfolder, update the front‑matter viewer.default_path to that path (e.g., report/cleaned.csv). ## How It Was Built - Analysis and cleaning: csv_repair.py (trims strings, standardizes boolean‑like values, parses dates where feasible, detects outliers, suggests column fixes). - Location repair (optional): splits location into city and country. - Real city mode: --location-mode real --cities-json report/cities_by_country.json. - GeoNames data: geonames_fetch.py builds countries.json, provinces_by_country.json, and cities_by_country.json. Example command to generate cleaned.csv: python csv_repair.py \ -i HR_Data_Clean_2020_2025.csv \ -o report \ --cleaned-csv cleaned.csv \ --fix-location \ --location-mode real \ --cities-json report/cities_by_country.json ## Load Examples - With datasets: from datasets import load_dataset ds = load_dataset("savedata101/repair_data", data_files={"train": "cleaned.csv"}) print(ds["train"]) - With pandas (direct URL to main branch): import pandas as pd url = "https://huggingface.co/datasets/savedata101/repair_data/resolve/main/cleaned.csv" df = pd.read_csv(url) print(df.head()) ## Notes - Preview focuses on cleaned.csv via the dataset card front‑matter. - If your cleaned file path changes, keep viewer.default_path in sync. - Large original CSVs may be excluded from preview but remain accessible in the repo. ## License Data license is set to other as a placeholder. Please update to the appropriate license for your data.