Integrating AI and Machine Learning in Project Management for Proactive Supply Chain Disruption Mitigation

Authors

  • Samuel Yaw Larbi

  • Emmanuel Opoku Manu

  • Samuel Donatus

  • Danniel Kweku Assumang

  • John Paul Adimonyemma

  • Tunmise Suliat Oyekola

Keywords:

artificial intelligence, machine learning, supply chain management, project management, risk mitigation, blockchain,

Abstract

The increasing unpredictability of global supply chains necessitate advanced technological solutions for disruption mitigation It explored the integration of Artificial Intelligence AI and Machine Learning ML in project management to enhance supply chain resilience AI-driven risk identification and forecasting enable organizations to anticipate disruptions and proactively manage risks while machine learning models optimize supply chain operations through predictive analytics and anomaly detection The application of AI in decision-making and real-time supply chain adaptation further enhances agility leveraging scenario planning digital twins and AI-powered automation in logistics Additionally the convergence of blockchain with AI and ML has introduced unprecedented transparency in supply chain operations Blockchain-integrated AI enhances real-time tracking while smart contracts automate compliance ensuring greater accountability across global supply networks However despite these advancements significant challenges persist Issues such as data quality and bias in AI-based forecasting high implementation costs cybersecurity risks ethical concerns and resistance to AI adoption hinder widespread deployment

Downloads

How to Cite

Integrating AI and Machine Learning in Project Management for Proactive Supply Chain Disruption Mitigation. (2025). Global Journal of Computer Science and Technology, 25(C1), 1-11. https://testing.computerresearch.org/index.php/computer/article/view/102416

References

 Integrating AI and Machine Learning

Published

2025-05-15

How to Cite

Integrating AI and Machine Learning in Project Management for Proactive Supply Chain Disruption Mitigation. (2025). Global Journal of Computer Science and Technology, 25(C1), 1-11. https://testing.computerresearch.org/index.php/computer/article/view/102416