What is feature engineering and how does it impact model evaluation and validation?
Feature engineering is the process of transforming raw data into features that can be used to build and train machine learning models. Features are the attributes or variables that represent the characteristics of the data and influence the model's performance and accuracy. In this article, you will learn what feature engineering is, why it is important, and how it affects the evaluation and validation of machine learning models.
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Soledad GalliData scientist | Best-selling instructor | Open-source developer | Book author
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Khushee KapoorUWaterloo | Master of Data Science and Artificial Intelligence (Co-op) | LinkedIn Top Voice for Data Science | Amongst…
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Shravan Kumar K.Indian | AI Leader | IIT Madras | IIM Bangalore | Associate Director at Novartis| Generative AI | Kaggle Competitions…