In this GitHub Repository, I have Make EDA (Exploratory Data Analysis) and Feature Engineering(FE) Handwritten notes With Practical Implementation of EDA & FE :-
Topic Covers in this Repository are :-
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Core ML Pipeline
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Statistics
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Types of Data :- a) Structure Data b) Un-Structure Data c) Semi- Structure Data
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EDA Analysis :- a) Profile of the Data b) Statistic Analysis c) Graph Based Analysis
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Pre-Processing of Data
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Some Steps of Feature Engineering
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Automated Tools in Python for EDA
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Ways of Performing Feature Engineering:- a) Missing Value Handle b) Outlier Handle c) Transformation d) Scaling of Data e) Encoding Method f) Imbalanced Dataset Treatment Method.
NOTE:- And Also Done Some Practical Implementation of EDA & FE( Feature Engineering).
Thanks & Regards