
Causal Models in Practice at Lyft with Sean Taylor - #486
The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence)
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Causal Forecasting at Lyft
This chapter explores the complexities of forecasting and causal modeling within Lyft's ride-hailing marketplace. It emphasizes the importance of balanced supply and demand, utilizing flexible forecasting systems that incorporate external influences and company decisions. The discussion highlights the challenges of experimentation, automation, and creating actionable insights to drive business performance effectively.
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