The Massachusetts Institute of Technology Center for Transportation & Logistics (MIT CTL) and intralogistics group Mecaluxhave kicked off a five-year collaborative project to expedite the integration of self-learning artificial intelligence (AI) in logistics. Through MIT’s Intelligent Logistics Systems Lab, the two institutions will explore new applications of AI models with significant potential for businesses and society.
“The objective of our collaboration with Mecalux is to foster disruptive innovation and achieve two highly impactful use cases where AI transforms industry decision-making. We will train complex self-learning machine learning models to ultimately reduce costs, lower carbon footprints, and improve service quality for customers,” says Dr. Matthias Winkenbach, Director of Research at MIT CTL and the Intelligent Logistics Systems Lab.
The second research area will center on training self-learning AI models. The Intelligent Logistics Systems Lab will design systems capable of learning from demand patterns and anticipating new customer purchasing habits. “Current distribution systems fail to account for the full complexity of logistics networks and often make strong simplifying assumptions. This project seeks to help companies operating large networks of warehouses, distribution centers, and stores automatically determine the most efficient way to fulfill each order taking into account the real-time status of the distribution network,” says Winkenbach.
This research partnership between MIT CTL and Mecalux will help logistics experts, warehouse staff, and carriers perform their jobs with maximum precision. “Having contributed to founding MIT’s Intelligent Logistics Systems Lab, Mecalux has leveraged its practical expertise in warehousing and its software and automation experts to support MIT’s research. The goal is to transform companies’ logistics operations to achieve greater efficiency,” says Javier Carrillo, CEO of warehouse technology company Mecalux.