Intermédiaire
Pandas Data Cleaning Pipeline - Cookbook
pandas data analysis techniques
Prompt Complet
Build a comprehensive data cleaning pipeline with pandas: handle missing values with multiple imputation strategies, outlier detection using IQR and Z-score methods, data type conversion and validation, duplicate detection and resolution, string cleaning and standardization, date parsing across formats, and automated data quality reporting with statistics
Tags
Compatible avec
✨GPT-4o✨Claude 3.5 Sonnet✨GitHub Copilot✨Cursor
Débutant Rating
4.4(3,980)
Stats
1,493Vues
262Copies
3,980J'aime
262Sauvegardes