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Analysis of survey data from the UCI Machine Learning Repository on the Amazon Mechanical Turk survey regarding driver responses to various coupons under different driving scenarios.

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DriveThruML

The objective of the project was to predict whether customers would accept a coupon based on various driving scenarios through data analysis and visualization techniques. In the project, Python served as the programming language, with Seaborn and Matplotlib utilized for data visualization, Pandas for data manipulation and analysis, and NumPy for numerical computations, enhancing the ability to analyze and present data insights effectively. A Jupyter Notebook was created and used to capture all steps and analysis.

Project Notebook

The main finding was that the coupons are accepted by those people who go to the bar more than once a month, were over the age of 21 and were not widowed.

Foreseeable next steps for additional investigation could be to compare age groups and their probability to accept coupons, or compare age groups and time of rides to find out the likelihood of accepting coupons.

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Analysis of survey data from the UCI Machine Learning Repository on the Amazon Mechanical Turk survey regarding driver responses to various coupons under different driving scenarios.

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