Improving ETA Predictions with Advanced Deep Learning Architecture [DoorDash] - podcast episode cover

Improving ETA Predictions with Advanced Deep Learning Architecture [DoorDash]

Jul 22, 202414 min
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Episode description

In this episode, we will discuss the importance of Estimated Time of Arrival (ETA) for DoorDash and how the company enhanced its machine learning model through three key directions: upgrading from a tree-based model to a deep-learning architecture, adopting a multi-task modeling approach, and leveraging probabilistic models.

For more details, you can refer to their published tech blog, linked here for your reference: https://doordash.engineering/2024/03/12/improving-etas-with-multi-task-models-deep-learning-and-probabilistic-forecasts/

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