
Sign up to save your podcasts
Or


Artificial Intelligence is frequently hailed as a transformative force for global supply chains, yet the gap between technological promise and operational reality remains a central challenge for industry leaders. In this episode, host Dr. Matthias Winkenbach, Director of Research at MIT CTL, leads a nuanced discussion on the transition from AI hype to the implementation of functional "decision technology."
Joining the discussion are three researchers from MIT CTL who bring diverse perspectives to the AI landscape. Willem Guter of the MIT Intelligent Logistics Systems Lab unpacks the intersection of machine learning and traditional optimization in warehouse robotics, while Dr. Elenna Dugundji, director of the MIT Deep Knowledge for Supply Chain and Logistics Lab, explains the evolution of demand forecasting and the importance of "deep knowledge" in predictive modeling. Dr. Bryan Reimer, founder of the MIT AgeLab’s Advanced Vehicle Technology Consortium, rounds out the discussion by addressing the critical human factor in autonomous systems. Together, they examine the future of AI in sourcing and procurement, the complexities of human-AI interaction, and the necessity of building decision-support tools that are grounded in real-world application rather than speculative promise.
By mitsupplychainfrontiers5
77 ratings
Artificial Intelligence is frequently hailed as a transformative force for global supply chains, yet the gap between technological promise and operational reality remains a central challenge for industry leaders. In this episode, host Dr. Matthias Winkenbach, Director of Research at MIT CTL, leads a nuanced discussion on the transition from AI hype to the implementation of functional "decision technology."
Joining the discussion are three researchers from MIT CTL who bring diverse perspectives to the AI landscape. Willem Guter of the MIT Intelligent Logistics Systems Lab unpacks the intersection of machine learning and traditional optimization in warehouse robotics, while Dr. Elenna Dugundji, director of the MIT Deep Knowledge for Supply Chain and Logistics Lab, explains the evolution of demand forecasting and the importance of "deep knowledge" in predictive modeling. Dr. Bryan Reimer, founder of the MIT AgeLab’s Advanced Vehicle Technology Consortium, rounds out the discussion by addressing the critical human factor in autonomous systems. Together, they examine the future of AI in sourcing and procurement, the complexities of human-AI interaction, and the necessity of building decision-support tools that are grounded in real-world application rather than speculative promise.

1,729 Listeners

4,385 Listeners

396 Listeners

1,987 Listeners

1,654 Listeners

30,217 Listeners

99 Listeners

779 Listeners

116 Listeners

798 Listeners

177 Listeners

10,192 Listeners

32 Listeners

1,475 Listeners

38 Listeners