TY - BOOK AU - Rahimi, Iman AU - Gandomi, Amir H. AU - Fong, Simon James TI - Big data analytics in supply chain management: : theory and applications SN - 9780367407179 U1 - 658.7028557 PY - 2021/// CY - Boco Raton PB - CRC Press KW - Big data KW - Business logistics N1 - Table of Contents Chapter 1. Big Data Analytics in Supply Chain Management: A Scientometric Analysis Chapter 2. Supply Chain Analytics Technology for Big Data Chapter 3. Prioritizing the Barriers and Challenges of Big Data Analytics in Logistics and Supply Chain Management Using MCDM Method Chapter 4. Big Data in Procurement 4.0: Critical Success Factors and Solutions Chapter 5. Recommendation Model based on Expiry Date of Product Using Big Data Analytics Chapter 6. Comparing Company’s Performance To Its Peers: A Data Envelopment Approach Chapter 7. Sustainability, Big Data, and Consumer Behavior: A Supply Chain Framework Chapter 8. A Soft Computing Techniques Application of An Inventory Model in Solving Two-Warehouses Using Cuckoo Search Algorithm Chapter 9. An Overview of the Internet of Things Technologies Focuses on Disaster Response Chapter 10. Closing the Big Data Talent Gap N2 - In a world of soaring digitization, social media, financial transactions, and production and logistics processes constantly produce massive data. Employing analytical tools to extract insights and foresights from data improves the quality, speed, and reliability of solutions to highly intertwined issues faced in supply chain operations. From procurement in Industry 4.0 to sustainable consumption behavior to curriculum development for data scientists, this book offers a wide array of techniques and theories of Big Data Analytics applied to Supply Chain Management. It offers a comprehensive overview and forms a new synthesis by bringing together seemingly divergent fields of research. Intended for Engineering and Business students, scholars, and professionals, this book is a collection of state-of-the-art research and best practices to spur discussion about and extend the cumulant knowledge of emerging supply chain problems ER -