Rolling Aggregation: A Practical Guide to Data Preprocessing with AI
research#data preprocessing📝 Blog|Analyzed: Jan 13, 2026 17:00•
Published: Jan 13, 2026 16:45
•1 min read
•Qiita AIAnalysis
This article outlines the creation of rolling aggregation features, a fundamental technique in time series analysis and data preprocessing. However, without more detail on the Python implementation, the specific data used, or the application of Gemini, its practical value is limited to a very introductory overview.
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Reference / Citation
View Original"AIでデータ分析-データ前処理(51)-集計特徴量:ローリング集計特徴量の作..."
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