All Pre-processing Steps and MAchine Learning Algorithm -Basic Evaluation Metrics
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Updated
Feb 4, 2018 - Python
All Pre-processing Steps and MAchine Learning Algorithm -Basic Evaluation Metrics
This is the final project for Udacity A/B Testing provided by Google. In this project, We implement a few statistical powers to make our data-driven solution that can bring impact to business
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This Python package is designed to easily evaluate your machine learning models
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