1513. Real-time capacity management in on-demand delivery platforms: A reinforcement-learning approach
Invited abstract in session MD-38: (Deep) Reinforcement Learning for Combinatorial Optimization, stream Data Science meets Optimization.
Monday, 14:30-16:00Room: Michael Sadler LG19
Authors (first author is the speaker)
| 1. | Gökhan Ceyhan
|
| Operations Research, Just Eat Takeaway.com | |
| 2. | Pol Arias
|
| 3. | Malte Winckler
|
| JustEatTakeaway.com |
Abstract
Just Eat Takeaway.com (JET) manages an on-demand delivery platform characterised by uncertain demand with spatiotemporal patterns and short delivery time targets. A critical component of this system is the real-time capacity management that employs various actions to keep the courier demand and supply in balance in order to maintain a satisfactory and profitable customer service level. We focus on one of the demand-side actions, dynamic delivery areas, which curtails the demand by shrinking the originally planned delivery areas of the restaurants. We model this problem as a sequential decision problem under stochastic demand and develop a reinforcement learning approach to drive these decisions. As our action space is quite large, we do not attempt to train a model to learn those decisions. Instead, we train a model to learn delivery time constraints for different hours of the day and for different zones of the city. We then solve a bi-objective mixed-integer linear program at each decision point to determine the delivery areas of each partner under those learned delivery time constraints. We train our model in a simulation environment and test our approach under different scenarios. We compare our approach against the version where a single delivery time constraint is used throughout the day and across the region. We also compare our approach to the legacy approach where delivery areas are adjusted based on a pre-defined rule-based system.
Keywords
- Logistics
- Machine Learning
- Multi-Objective Decision Making
Status: accepted
Back to the list of papers