Churn Prediction with PyCaret
Customer Churn is when customers leave a service in a given period of time, which is bad for business.
exploratory-data-analysis machine-learning classification python pycaret automl article dataset code notebook churn tutorial

This work has as objective to build a machine learning model to predict what customers will leave the service, the dataset used on this notebook is the Telco Customer Churn hosted at Kaggle. Also, an Exploratory Data Analysis is made to a better understand about the data. Another point on this work is use Deepnote as development enviroment and the PyCaret Python Module to make all the experiment pipeline.

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Data Scientist with a big interest in Natural Language Processing, Business Intelligence and Medical Research.
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