This document describes a project analyzing vehicle data using SAP HANA. There are two tables of vehicle data, including a master table with vehicle details and a transactional table with additional features. Four hypotheses are proposed regarding factors that may impact insurance amounts, premiums, and purchase prices. Theorems developed from the data analysis find that insurance decreases with age, premium decreases with age, expensive models have higher premiums, and higher-income jobs purchase pricier cars. SAP HANA, Lumira, and predictive tools are used to build models predicting price from features. Regression and decision tree models achieve over 90% accuracy.