AI-Driven Workflow Optimization for Supply Chain Management: A Case Study Approach
DOI:
https://doi.org/10.32996/jcsts.2025.7.3.49Keywords:
Supply Chain Optimization, Artificial Intelligence, Machine Learning, Human-AI Collaboration, Digital Twin IntegrationAbstract
This technical article examines the application of artificial intelligence techniques to optimize workflows in supply chain management through a case study methodology. It analyzes how modern AI technologies including machine learning, deep learning, and reinforcement learning can address critical challenges in contemporary supply chains across diverse industries. Through detailed examination of five distinct organizations that have implemented AI-driven workflow optimization solutions, It identifies common technical challenges, success factors, and implementation approaches. It provides evidence demonstrating significant improvements in operational efficiency, cost reduction, and decision-making capabilities across multiple supply chain functions. The findings suggest that AI-driven workflow optimization represents a transformative approach for organizations seeking to enhance supply chain resilience and competitive advantage, particularly when implemented with attention to data integration, computational efficiency, model interpretability, continuous adaptation, and human-AI collaboration. The article concludes with a proposed implementation framework and promising directions for future research.