Machine learning techniques applied to supply chain dynamics

Abstract
Nowadays, supply chains are strongly affected by many sources of disruptions, which in turns may trigger a detrimental effect on social-economic aspects of countries. A leading contribution for improving the responsiveness of supply chains to disruptions might come from machine learning techniques. The objective of the thesis would consists in implementing artificial intelligence techniques to predict or to promptly react to sudden changes in the distribution network. As further source of uncertainty, changeovers in the production plant feeding the downstream supply chain will be also considered.
Keywords
supply chain
capacity restriction
artificial intelligence
optimization
ERC sector(s)
PE Physical Sciences and Engineering
Name supervisor
Antonio Costa
E-mail
antonio.costa@unict.it
Name of Department/Faculty/School
DICAR
Name of the host University
University of Catania (UNICT)
EUNICE partner e-mail of destination Research
eunice@unict.it
Country
Italy
Thesis level
Master
Minimal language knowledge requisite
English B2
Thesis mode
On-site
Start date
Length of the research internship
6 months
Financial support available (other than E+)
No