CB-36 An Analysis on Generative AI’s Ability to Maximize Supply Chain Outcomes, Disaster Avoidance and its Environmental Outlook.

SCURS Disciplines

Business

Document Type

Poster Presentation

Abstract

Generative Artificial Intelligence (Gen AI) is transforming the transportation of goods within supply chains by optimizing shipping logistics, customer demand predictions, and improving overall efficiency. This study explores how Gen AI enhances profitability by streamlining transportation networks which use enhanced data and metrics to foster real-time decision making to adapt to changing transportation conditions. Adoption trends are analyzed, and simultaneously suggest a strong link between Gen AI implementation in transportation ease and financial growth. Companies that opt to utilize Gen AI face fewer inefficiencies compared to those who do not. In addition, companies that enroll in Gen AI in supply chain management are able to predict demand changes and fluctuations, and preemptively ship goods according to predicted consumer behavior changes. Furthermore, the paper examines disparities in access to Gen AI-powered logistics, highlighting how early adopters gain a multitude of competitive advantages while others face transport inefficiencies like congestion and weather complications. The role of Gen AI in disaster avoidance is analyzed, focusing on its ability to predict traffic patterns, predict demand, mitigate road disruptions, and dynamically reroute shipments in real-time. Environmental impacts are also considered, assessing whether AI-driven logistics contribute to a reduced carbon footprint through smarter routing, fuel efficiency, and resource optimization. Lastly, the influence of proprietary supply chain focused Gen AI like Logility, SAP and Oracle is discussed, and their enhancements and offerings are analyzed for market effectiveness. By focusing on the transportation aspect as well as the predictive nature of Gen AI, this paper highlights Gen AI’s ability to revolutionize efficiency in the realm of supply chain transportation management.

Keywords

Gen-AI, Generative AI, Transportation, Fuel Efficiency, Supply Chain, Logistics

Start Date

11-4-2025 9:30 AM

Location

University Readiness Center Greatroom

End Date

11-4-2025 11:30 AM

This document is currently not available here.

Share

COinS
 
Apr 11th, 9:30 AM Apr 11th, 11:30 AM

CB-36 An Analysis on Generative AI’s Ability to Maximize Supply Chain Outcomes, Disaster Avoidance and its Environmental Outlook.

University Readiness Center Greatroom

Generative Artificial Intelligence (Gen AI) is transforming the transportation of goods within supply chains by optimizing shipping logistics, customer demand predictions, and improving overall efficiency. This study explores how Gen AI enhances profitability by streamlining transportation networks which use enhanced data and metrics to foster real-time decision making to adapt to changing transportation conditions. Adoption trends are analyzed, and simultaneously suggest a strong link between Gen AI implementation in transportation ease and financial growth. Companies that opt to utilize Gen AI face fewer inefficiencies compared to those who do not. In addition, companies that enroll in Gen AI in supply chain management are able to predict demand changes and fluctuations, and preemptively ship goods according to predicted consumer behavior changes. Furthermore, the paper examines disparities in access to Gen AI-powered logistics, highlighting how early adopters gain a multitude of competitive advantages while others face transport inefficiencies like congestion and weather complications. The role of Gen AI in disaster avoidance is analyzed, focusing on its ability to predict traffic patterns, predict demand, mitigate road disruptions, and dynamically reroute shipments in real-time. Environmental impacts are also considered, assessing whether AI-driven logistics contribute to a reduced carbon footprint through smarter routing, fuel efficiency, and resource optimization. Lastly, the influence of proprietary supply chain focused Gen AI like Logility, SAP and Oracle is discussed, and their enhancements and offerings are analyzed for market effectiveness. By focusing on the transportation aspect as well as the predictive nature of Gen AI, this paper highlights Gen AI’s ability to revolutionize efficiency in the realm of supply chain transportation management.