Supply Chain
Supply chain management aims to optimize the flow of goods, information, and finances across interconnected entities, focusing on efficiency, resilience, and risk mitigation. Current research emphasizes the application of advanced machine learning techniques, including graph neural networks (GNNs), reinforcement learning (RL), and large language models (LLMs), to improve forecasting, risk assessment, and decision-making within complex supply chain networks. These models are being applied to various challenges, such as inventory management, fraud detection, and vulnerability identification, with a growing focus on incorporating causal inference and enhancing supply chain visibility. The resulting advancements have significant implications for improving operational efficiency, enhancing supply chain security, and fostering greater transparency and accountability across various industries.
Papers
"Sch\"one neue Lieferkettenwelt": Workers' Voice und Arbeitsstandards in Zeiten algorithmischer Vorhersage
Lukas Daniel Klausner, Maximilian Heimstädt, Leonhard Dobusch
Trustworthy, responsible, ethical AI in manufacturing and supply chains: synthesis and emerging research questions
Alexandra Brintrup, George Baryannis, Ashutosh Tiwari, Svetan Ratchev, Giovanna Martinez-Arellano, Jatinder Singh
An Integrated System Dynamics and Discrete Event Supply Chain Simulation Framework for Supply Chain Resilience with Non-Stationary Pandemic Demand
Mustafa Can Camur, Chin-Yuan Tseng, Aristotelis E. Thanos, Chelsea C. White, Walter Yund, Eleftherios Iakovou
Understanding accountability in algorithmic supply chains
Jennifer Cobbe, Michael Veale, Jatinder Singh