

Causal Models in Practice at Lyft with Sean Taylor - #486
May 24, 2021
Sean Taylor, Staff Data Scientist at Lyft Rideshare Labs, shares his journey from lab director to hands-on innovator. He dives into the moonshot approaches his team takes towards marketplace experimentation and forecasting. The conversation highlights the significance of causality in their modeling efforts and the challenges of balancing supply and demand. Moreover, he discusses the application of neural networks for decision-making, emphasizing collaboration and the transformation of traditional statistical methods to drive business insights.
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Sean's Career Journey
- Sean Taylor's data science journey began with real estate research and large-scale experimentations.
- A pivotal moment was a Facebook internship at 30, leading to a 7-year career there before joining Lyft.
Rideshare Labs' Role
- Rideshare Labs at Lyft incubates innovative, high-risk, high-reward projects.
- Successful projects transition to production teams, balancing innovation with product roadmap reliability.
Back to Hands-On
- Sean Taylor transitioned from a managerial role back to a hands-on data science role.
- He prioritized a "flow state" and hands-on work over management.