Introduction
Bernardo Nicoletti
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Bernardo Nicoletti: Temple University
Chapter Chapter 1 in Artificial Intelligence for Logistics 5.0, 2025, pp 1-16 from Springer
Abstract:
Abstract This chapter takes you on a fascinating journey through the historical evolution of logistics, a field that has always been strategically important in organizations. With its origins in the military sector, logistics has evolved from a tactical function to a strategic cornerstone of business operations. The field has traversed several historical phases, from the simple transportation systems of ancient civilizations to today’s complex, AI-driven logistics networks. Understanding this evolution, including key milestones such as the Industrial Revolution, the invention of the shipping container, and the digitalization of supply chains, is crucial to appreciating logistics’ current state and future potential. This historical context will make you feel more knowledgeable and well-informed about the industry’s roots and how it has shaped it today. This chapter underscores how contemporary logistics has transitioned from mere transportation to the comprehensive management of supply networks, including inventory control, warehousing, and information flow. Significant technological advancements, from the invention of shipping containers to the deployment of state-of-the-art AI systems, have revolutionized logistics practices. The book focuses explicitly on how AI algorithms can significantly enhance logistics operations with their predictive and analytical capabilities. It also acknowledges that some organizations may face challenges in adopting these advanced technologies, but these challenges present opportunities to demonstrate a proactive commitment to innovation, making you feel proactive and committed to the industry’s advancement. Current challenges in logistics are not just hurdles to overcome but opportunities to demonstrate an organization’s commitment to sustainability and innovation. These challenges include adapting to post-pandemic realities, coping with the effects of climate change, and meeting sustainability targets. The chapter identifies five key logistics trends: Supply chain agility, rising costs due to global economic shifts, labor challenges in the face of technological advancements, transparency requirements in the age of digitalization, and sustainability regulations in response to environmental concerns. Each of these challenges can be addressed or mitigated through the application of AI in logistics. For instance, AI can optimize supply chain agility, reduce costs through predictive analytics, enhance labor productivity through automation, ensure transparency through data analysis, and facilitate compliance with sustainability regulations through efficient resource management. The conclusion emphasizes that while AI transformation significantly benefits logistics operations, organizations must balance technological advancement, environmental responsibility, and sustainable practices to ensure long-term success. By addressing these challenges and contributing to a more sustainable future, organizations can feel responsible and committed to long-term success.
Keywords: Logistics; Artificial Intelligence (AI); Supply Network Management; Sustainability; Just-in-Time (JIT); Solutions transformation (search for similar items in EconPapers)
Date: 2025
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Persistent link: https://EconPapers.repec.org/RePEc:spr:sprchp:978-3-031-94046-0_1
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DOI: 10.1007/978-3-031-94046-0_1
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