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Uber: Applying Machine Learning to Improve the Customer Pickup Experience

Publication date: 15 November 2019

Abstract

Uber had pioneered the growth and delivery of modern ridesharing services by leveraging the explosive growth of technology, GPS navigation, and smartphones. Ridesharing services had expanded across the world, growing rapidly in the United States, China, India, Europe, and Southeast Asia. Even as these services expanded and gained popularity, however, the pickup experience for drivers and riders did not always meet the expectations of either party. Pickups were complicated by traffic congestion, faulty GPS signals, and crowded pickup venues. Flawed pickups resulted in rider dissatisfaction and in lost revenues for drivers. Uber had identified the pickup experience as a top strategic priority, and a team at Uber, led by group product manager Birju Shah, was tasked with designing an automated solution to improve the pickup experience. This involved three steps. First, the team needed to analyze the pickup experience for various rider personas to identify problems at different stages in the pickup process. Next, it needed to create a model for predicting the best rider location for a pickup. The team also needed to develop a quantitative metric that would determine the quality of the pickup experience. These models and metrics would be used as inputs for a machine learning.

Keywords

Citation

Sawhney, M., Shah, B., Yu, R., Rubtsov, E. and Goodman, P. (2019), "Uber: Applying Machine Learning to Improve the Customer Pickup Experience", . https://doi.org/10.1108/case.kellogg.2021.000090

Publisher

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Kellogg School of Management

Copyright © 2020, The Kellogg School of Management at Northwestern University

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