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Re-Imagining Supply Chain Management

Re-Imagining Supply Chain Management

Re-Imagining Supply Chain Management

Uncovering the Hidden Trade-offs in the Digital Age
Işık Biçer, York University, Toronto
October 2025
Not yet published - available from October 2025
Hardback
9781009619189
£90.00
GBP
Hardback
GBP
Paperback

    Supply chain management is a substantially complex area for many businesses due to its diverse set of actions, agents, decisions, risks, and uncertainties. Consequently, supply chains often break up in disarray due to their structural complexity coupled with risks and uncertainties in the absence of clear objectives. Işık Biçer addresses these issues by uncovering the fundamental trade-offs of supply chain management, their economic causes, and strategic implications. He offers a novel framework of supply chain management based on its role in economic systems. The framework shows four effective supply chain strategies according to business models and organizational sensitivity to operational trade-offs. Furthermore, it offers a detailed account of the digital transformation of supply chains, elaborating on crucial aspects of the design and implementation of digitalization. This is an indispensable source for supply chain professionals, consultants, economists, and policymakers with a keen interest in supply chain management.

    • Introduces the economics of supply chain management and fundamental trade-offs, as well as demonstrating effective supply chain strategies according to business models and firms' sensitivity to supply-demand mismatches
    • Provides a clear, two-phase roadmap for the digital transformation of supply chains, focusing on design and implementation to achieve substantial improvements
    • Each chapter features a case study that connects theoretical concepts with real-world practice to enhance understanding and engagement

    Product details

    October 2025
    Hardback
    9781009619189
    250 pages
    229 × 152 mm
    Not yet published - available from October 2025

    Table of Contents

    • Part I. Anatomy of Supply Chain Management:
    • 1. Economics of supply chain management
    • 2. Trade-off structure of supply chain management
    • 3. Supply chain risks and uncertainties
    • Part II. Four Strategies of Supply Chain Management:
    • 4. Leading the operational edge: supply chain integration
    • 5. Innovative business development: supply chain finance
    • 6. The premium business: market-driven supply chain management
    • 7. Economic theory's sweet spot: lean systems
    • Part III. Digitizing the supply chain:
    • 8. Design of digital transformation
    • 9. Integrating end-to-end digital transformation
    • 10. Closing remarks.
    Resources for
    Type
    Course_slides_Reimagining_SCM
    Size: 20.09 MB
    Type: application/zip
      Author
    • Işık Biçer , York University, Toronto

      Işık Biçer is an Associate Professor of Operations Management and Information Systems in the Schulich School of Business at York University in Toronto, Canada. He is also area director of the Ph.D. program and director of an executive certificate program in supply chain management. He teaches graduate-level courses about digital transformation, predictive modeling, and prescriptive analytics in the Tech MBA, MBAN, and MMAI programs at Schulich School of Business, as well as conducting research on uncertainty modelling and convolutional optimization techniques and their applications to supply chains. Işık has worked on several digital transformation projects with various firms, some of which feature in this book.  The author of 15 top research papers, his work has appeared in Harvard Business Review, Journal of Operations Management, and Production and Operations Management.  He has also published a graduate-level textbook, Supply Chain Analytics: Uncertainty Modeling Approach (2023).