A Complete Exploratory Data Analysis in Python
Last Updated on November 5, 2023 by Editorial Team
Author(s): Rashida Nasrin Sucky
Originally published on Towards AI.
Data Cleaning, Analysis, Visualization, Feature Selection, Predictive Modeling
Photo by NEOM on Unsplash
I have a few tutorials on Exploratory Data Analysis before. But I feel I should do some more of that. Taking a dataset and explore it, doing the data cleaning, analytics, visualization, and prediction model all in one piece is necessary. As a Data Scientist or Data Analyst, we may have to work with so much strange data, sometimes we may not even understand the features properly but that should not stop us from doing our job. It’s best to know the features very well. But if that information is not available still analytics part shouldn’t… Read the full blog for free on Medium.
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