data science supply chain optimization: Data Science for Supply Chain Forecasting Nicolas Vandeput, 2021-03-22 Using data science in order to solve a problem requires a scientific mindset more than coding skills. Data Science for Supply Chain Forecasting, Second Edition contends that a true scientific method which includes experimentation, observation, and constant questioning must be applied to supply chains to achieve excellence in demand forecasting. This second edition adds more than 45 percent extra content with four new chapters including an introduction to neural networks and the forecast value added framework. Part I focuses on statistical traditional models, Part II, on machine learning, and the all-new Part III discusses demand forecasting process management. The various chapters focus on both forecast models and new concepts such as metrics, underfitting, overfitting, outliers, feature optimization, and external demand drivers. The book is replete with do-it-yourself sections with implementations provided in Python (and Excel for the statistical models) to show the readers how to apply these models themselves. This hands-on book, covering the entire range of forecasting—from the basics all the way to leading-edge models—will benefit supply chain practitioners, forecasters, and analysts looking to go the extra mile with demand forecasting. |
data science supply chain optimization: Big Data Analytics in Supply Chain Management Iman Rahimi, Amir H. Gandomi, Simon James Fong, M. Ali Ülkü, 2020-12-20 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. |
data science supply chain optimization: Supply Chain Optimization, Management and Integration: Emerging Applications Wang, John, 2010-11-30 Our rapidly changing world has forced business practitioners, in corporation with academic researchers, to respond quickly and develop effective solution methodologies and techniques to handle new challenges in supply chain systems. Supply Chain Optimization, Management and Integration: Emerging Applications presents readers with a rich collection of ideas from researchers who are bridging the gap between the latest in information technology and supply chain management. This book includes theoretical, analytical, and empirical research, comprehensive reviews of relevant research, and case studies of effective applications in the field of SCM. The use of new technologies, methods, and techniques are emphasized by those who have worked with supply chain management across the world for those in the field of information systems. |
data science supply chain optimization: Data Science for Supply Chain Forecasting Nicolas Vandeput, 2021-03-22 Using data science in order to solve a problem requires a scientific mindset more than coding skills. Data Science for Supply Chain Forecasting, Second Edition contends that a true scientific method which includes experimentation, observation, and constant questioning must be applied to supply chains to achieve excellence in demand forecasting. This second edition adds more than 45 percent extra content with four new chapters including an introduction to neural networks and the forecast value added framework. Part I focuses on statistical traditional models, Part II, on machine learning, and the all-new Part III discusses demand forecasting process management. The various chapters focus on both forecast models and new concepts such as metrics, underfitting, overfitting, outliers, feature optimization, and external demand drivers. The book is replete with do-it-yourself sections with implementations provided in Python (and Excel for the statistical models) to show the readers how to apply these models themselves. This hands-on book, covering the entire range of forecasting—from the basics all the way to leading-edge models—will benefit supply chain practitioners, forecasters, and analysts looking to go the extra mile with demand forecasting. Events around the book Link to a De Gruyter Online Event in which the author Nicolas Vandeput together with Stefan de Kok, supply chain innovator and CEO of Wahupa; Spyros Makridakis, professor at the University of Nicosia and director of the Institute For the Future (IFF); and Edouard Thieuleux, founder of AbcSupplyChain, discuss the general issues and challenges of demand forecasting and provide insights into best practices (process, models) and discussing how data science and machine learning impact those forecasts. The event will be moderated by Michael Gilliland, marketing manager for SAS forecasting software: https://youtu.be/1rXjXcabW2s |
data science supply chain optimization: Supply Chain Analytics Peter W. Robertson, 2020-11-25 Supply Chain Analytics introduces the reader to data analytics and demonstrates the value of their effective use in supply chain management. By describing the key supply chain processes through worked examples, and the descriptive, predictive and prescriptive analytic methods that can be applied to bring about improvements to those processes, the book presents a more comprehensive learning experience for the reader than has been offered previously. Key topics are addressed, including optimisation, big data, data mining and cloud computing. The author identifies four core supply chain processes – strategy, design, execution and people – to which the analytic techniques explained can be applied to ensure continuous improvement. Pedagogy to aid learning is incorporated throughout, including an opening section for each chapter explaining the learnings designed for the chapter; worked examples illustrating how each analytic technique works, how it is applied and what to be careful of; tables, diagrams and equations to help ‘visualise’ the concepts and methods covered; chapter case studies; and end-of-chapter review questions and assignment tasks. Providing both management expertise and technical skills, which are essential to decision-makers in the supply chain, this textbook should be essential reading for advanced undergraduate and postgraduate students of supply chain analytics, supply chain leadership, and supply chain and operations management. Its practice-based and applied approach also makes it valuable for operating supply chain practitioners and those studying for professional qualifications. Online resources include chapter-by-chapter PowerPoint slides, tutorial exercises, written assignments and a test bank of exam questions. |
data science supply chain optimization: Inventory Optimization Nicolas Vandeput, 2020-08-24 In this book . . . Nicolas Vandeput hacks his way through the maze of quantitative supply chain optimizations. This book illustrates how the quantitative optimization of 21st century supply chains should be crafted and executed. . . . Vandeput is at the forefront of a new and better way of doing supply chains, and thanks to a richly illustrated book, where every single situation gets its own illustrating code snippet, so could you. --Joannes Vermorel, CEO, Lokad Inventory Optimization argues that mathematical inventory models can only take us so far with supply chain management. In order to optimize inventory policies, we have to use probabilistic simulations. The book explains how to implement these models and simulations step-by-step, starting from simple deterministic ones to complex multi-echelon optimization. The first two parts of the book discuss classical mathematical models, their limitations and assumptions, and a quick but effective introduction to Python is provided. Part 3 contains more advanced models that will allow you to optimize your profits, estimate your lost sales and use advanced demand distributions. It also provides an explanation of how you can optimize a multi-echelon supply chain based on a simple—yet powerful—framework. Part 4 discusses inventory optimization thanks to simulations under custom discrete demand probability functions. Inventory managers, demand planners and academics interested in gaining cost-effective solutions will benefit from the do-it-yourself examples and Python programs included in each chapter. Events around the book Link to a De Gruyter Online Event in which the author Nicolas Vandeput together with Stefan de Kok, supply chain innovator and CEO of Wahupa; Koen Cobbaert, Director in the S&O Industry practice of PwC Belgium; Bram Desmet, professor of operations & supply chain at the Vlerick Business School in Ghent; and Karl-Eric Devaux, Planning Consultant, Hatmill, discuss about models for inventory optimization. The event will be moderated by Eric Wilson, Director of Thought Leadership for Institute of Business Forecasting (IBF): https://youtu.be/565fDQMJEEg |
data science supply chain optimization: Supply Chain Network Design Michael Watson, 2013 Introduction and basic building blocks. Adding costs to two echelon supply chains. Advanced modeling and expanding to multiple echelons. How to get industrial streng results. Case study wrap up. |
data science supply chain optimization: Data Science for Supply Chain Forecast Nicolas Vandeput, 2018-11-12 Data Science for Supply Chain Forecast Data Science for Supply Chain Forecast is a book for practitioners focusing on data science and machine learning; it demonstrates how both are closely interlinked in order to create an advanced forecast for supply chain. As one will discover in this book, artificial intelligence (AI) & machine learning (ML) are not simply a question of coding skills. Using data science in order to solve a problem requires a scientific mindset more than coding skills. The story behind these models is one of experimentation, of observation and of constant questioning; a true scientific method must be applied to supply chain. In the data science field as well as that of the supply chain, simple questions do not come with simple answers. In order to resolve these questions, one needs to be both a scientist as well as to use the correct tools. In this book, we will discuss both. Is this Book for me? This book has been written for supply chain practitioners, forecasters and analysts who are looking to go the extra mile. You do not need technical IT skills to start using the models of this book. You do not need a dedicated server or expensive software licenses: you solely need your own computer. You do not need a PhD in mathematics: mathematics will only be utilized as a tool to tweak and understand the models. In the majority of the cases - especially when it comes to machine learning - a deep understanding of the mathematical inner workings of a model will not be necessary in order to optimize it and understand its limitations. Reviews In an age where analytics and machine learning are taking on larger roles in the business forecasting, Nicolas' book is perfect solution for professionals who need to combine practical supply chain experience with the mathematical and technological tools that can help us predict the future more reliably. Daniel Stanton - Author, Supply Chain Management For Dummies Open source statistical toolkits have progressed tremendously over the last decade. Nicolas demonstrates that these toolkits are more than enough to start addressing real-world forecasting challenges as found in supply chains. Moreover, through its hands-on approach, this book is accessible to a large audience of supply chain practitioners. The supply chain of the 21st century will be data-driven and Nicolas gets it perfectly. Joannes Vermorel - CEO Lokad This book is unique in its kind. It explains the basics of Python using basic traditional forecasting techniques and shows how machine learning is revolutionizing the forecasting domain. Nicolas has done an outstanding job explaining a technical subject in an easily accessible way. A must-read for any supply chain professional. Professor Bram Desmet - CEO Solventure This book is before anything a practical and business-oriented DIY user manual to help planners move into 21st-century demand planning. The breakthrough comes from several tools and techniques available to all, and which thanks to Nicolas' precise and concrete explanations can now be implemented in real business environments by any normal planner. I can confirm that Nicolas' learnings are based on real-life experience and can tremendously help on improving top and bottom lines. Henri-Xavier Benoist - VP Supply Chain Bridegstone EMEA |
data science supply chain optimization: Supply Chain Optimization, Design, and Management: Advances and Intelligent Methods Minis, Ioannis, Zeimpekis, Vasileios, Dounias, Georgios, Ampazis, Nicholas, 2010-12-31 Computational Intelligence (CI) is a term corresponding to a new generation of algorithmic methodologies in artificial intelligence, which combines elements of learning, adaptation, evolution and approximate (fuzzy) reasoning to create programs that can be considered intelligent. Supply Chain Optimization, Design, and Management: Advances and Intelligent Methods presents computational intelligence methods for addressing supply chain issues. Emphasis is given to techniques that provide effective solutions to complex supply chain problems and exhibit superior performance to other methods of operations research. |
data science supply chain optimization: Supply Chain Optimization Joseph Geunes, Panos M. Pardalos, 2006-03-30 Supply Chain Optimization captures the latest results in a segment of current research activity in supply chain management. This research area focuses on applying optimization techniques to supply chain management problems. The research papers that make up the volume provide a snapshot of state-of-the-art optimization methods within the field. This book presents rigorous modelling approaches for supply chain operations problems with a goal of improving supply chain performance (or the performance of some segment thereof). It contains high-quality works from leading researchers in the field whose expertise fits within this scope. The book provides a diverse blend of research topics and novel modelling and solution approaches for difficult classes of supply chain operations, planning, and design problems. |
data science supply chain optimization: Modeling, Simulation, and Optimization of Supply Chains Ciro D'Apice, Simone Gottlich, Michael Herty, Benedetto Piccoli, 2010-07-01 This book offers a state-of-the-art introduction to the mathematical theory of supply chain networks, focusing on those described by partial differential equations. The authors discuss modeling of complex supply networks as well as their mathematical theory, explore modeling, simulation, and optimization of some of the discussed models, and present analytical and numerical results on optimization problems. Real-world examples are given to demonstrate the applicability of the presented approaches. Graduate students and researchers who are interested in the theory of supply chain networks described by partial differential equations will find this book useful. It can also be used in advanced graduate-level courses on modeling of physical phenomena as well as introductory courses on supply chain theory. |
data science supply chain optimization: Learning to Love Data Science Mike Barlow, 2015 Until recently, many people thought big data was a passing fad. Data science was an enigmatic term. Today, big data is taken seriously, and data science is considered downright sexy. With this anthology of reports from award-winning journalist Mike Barlow, you'll appreciate how data science is fundamentally altering our world, for better and for worse. Barlow paints a picture of the emerging data space in broad strokes. From new techniques and tools to the use of data for social good, you'll find out how far data science reaches. With this anthology, you'll learn how: Analysts can now get results from their data queries in near real time Indie manufacturers are blurring the lines between hardware and software Companies try to balance their desire for rapid innovation with the need to tighten data security Advanced analytics and low-cost sensors are transforming equipment maintenance from a cost center to a profit center CIOs have gradually evolved from order takers to business innovators New analytics tools let businesses go beyond data analysis and straight to decision-making Mike Barlow is an award-winning journalist, author, and communications strategy consultant. Since launching his own firm, Cumulus Partners, he has represented major organizations in a number of industries. |
data science supply chain optimization: Large Scale Optimization in Supply Chains and Smart Manufacturing Jesús M. Velásquez-Bermúdez, Marzieh Khakifirooz, Mahdi Fathi, 2020-09-20 In this book, theory of large scale optimization is introduced with case studies of real-world problems and applications of structured mathematical modeling. The large scale optimization methods are represented by various theories such as Benders’ decomposition, logic-based Benders’ decomposition, Lagrangian relaxation, Dantzig –Wolfe decomposition, multi-tree decomposition, Van Roy’ cross decomposition and parallel decomposition for mathematical programs such as mixed integer nonlinear programming and stochastic programming. Case studies of large scale optimization in supply chain management, smart manufacturing, and Industry 4.0 are investigated with efficient implementation for real-time solutions. The features of case studies cover a wide range of fields including the Internet of things, advanced transportation systems, energy management, supply chain networks, service systems, operations management, risk management, and financial and sales management. Instructors, graduate students, researchers, and practitioners, would benefit from this book finding the applicability of large scale optimization in asynchronous parallel optimization, real-time distributed network, and optimizing the knowledge-based expert system for convex and non-convex problems. |
data science supply chain optimization: Big Data Driven Supply Chain Management Nada R. Sanders, 2014-05-07 Master a complete, five-step roadmap for leveraging Big Data and analytics to gain unprecedented competitive advantage from your supply chain. Using Big Data, pioneers such as Amazon, UPS, and Wal-Mart are gaining unprecedented mastery over their supply chains. They are achieving greater visibility into inventory levels, order fulfillment rates, material and product delivery… using predictive data analytics to match supply with demand; leveraging new planning strengths to optimize their sales channel strategies; optimizing supply chain strategy and competitive priorities; even launching powerful new ventures. Despite these opportunities, many supply chain operations are gaining limited or no value from Big Data. In Big Data Driven Supply Chain Management, Nada Sanders presents a systematic five-step framework for using Big Data in supply chains. You'll learn best practices for segmenting and analyzing customers, defining competitive priorities for each segment, aligning functions behind strategy, dissolving organizational boundaries to sense demand and make better decisions, and choose the right metrics to support all of this. Using these techniques, you can overcome the widespread obstacles to making the most of Big Data in your supply chain — and earn big profits from the data you're already generating. For all executives, managers, and analysts interested in using Big Data technologies to improve supply chain performance. |
data science supply chain optimization: Supply Chain Analytics and Modelling Nicoleta Tipi, 2021-04-03 An incredible volume of data is generated at a very high speed within the supply chain and it is necessary to understand, use and effectively apply the knowledge learned from analyzing data using intelligent business models. However, practitioners and students in the field of supply chain management face a number of challenges when dealing with business models and mathematical modelling. Supply Chain Analytics and Modelling presents a range of business analytics models used within the supply chain to help readers develop knowledge on a variety of topics to overcome common issues. Supply Chain Analytics and Modelling covers areas including supply chain planning, single and multi-objective optimization, demand forecasting, product allocations, end-to-end supply chain simulation, vehicle routing and scheduling models. Learning is supported by case studies of specialist software packages for each example. Readers will also be provided with a critical view on how supply chain management performance measurement systems have been developed and supported by reliable and accurate data available in the supply chain. Online resources including lecturer slides are available. |
data science supply chain optimization: Application of Optimization in Production, Logistics, Inventory, Supply Chain Management and Block Chain Biswajit Sarkar, Mitali Sarkar, 2020-04-23 The evolution of industrial development since the 18th century is now experiencing the fourth industrial revolution. The effect of the development has propagated into almost every sector of the industry. From inventory to the circular economy, the effectiveness of technology has been fruitful for industry. The recent trends in research, with new ideas and methodologies, are included in this book. Several new ideas and business strategies are developed in the area of the supply chain management, logistics, optimization, and forecasting for the improvement of the economy of the society and the environment. The proposed technologies and ideas are either novel or help modify several other new ideas. Different real life problems with different dimensions are discussed in the book so that readers may connect with the recent issues in society and industry. The collection of the articles provides a glimpse into the new research trends in technology, business, and the environment. |
data science supply chain optimization: Modeling and Optimization of Biomass Supply Chains Calliope Panoutsou, 2017-08-11 Modeling and Optimization of Biomass Supply Chains: Top Down and Bottom Up Assessment for Agricultural, Forest and Waste Feedstock provides scientific evidence for assessing biomass supply and logistics, placing emphasis on methods, modeling capacities, large data collection, processing and storage. The information presented builds on recent relevant research work from the Biomass Futures, Biomass Policies and S2Biom projects. In addition to technical issues, the book covers the economic, social and environmental aspects with direct implications on biomass availability. Its chapters offer an overview of methodologies for assessing and modeling supply, biomass quality and requirements for different conversion processes, logistics and demand for biobased sectors. Case studies from the projects that inspire the book present practical examples of the implementation of these methodologies. The authors also compare methodologies for different regions, including Europe and the U.S. Biomass feedstock-specific chapters address the relevant elements for forest, agriculture, biowastes, post-consumer wood and non-food crops. Engineers in the bioenergy sector, as well as researchers and graduate students will find this book to be a very useful resource when working on optimization and modeling of biomass supply chains. For energy policymakers, analysts and consultants, the book provides consistent and technically sound projections for policy and market development decisions. - Provides consistent ratios and indicators for assessing biomass supply and its logistical component - Explores assumptions behind the assessment of different types of biomass, including key technical and non-technical factors - Presents the existing modeling platforms, their input requirements and possible output projections |
data science supply chain optimization: Retail Supply Chain Management Narendra Agrawal, Stephen A. Smith, 2015-04-20 This new edition focuses on three crucial areas of retail supply chain management: (1) empirical studies of retail supply chain practices, (2) assortment and inventory planning and (3) integrating price optimization into retail supply chain decisions. The book has been fully updated, expanding on the distinguishing features of the original, while offering three new chapters on recent topics which reflect areas of great interest and relevance to the academic and professional communities alike - inventory management in the presence of data inaccuracies, retail workforce management, and fast fashion retail strategies. The innovations, lessons for practice, and new technological solutions for managing retail supply chains are important not just in retailing, but offer crucial insights and strategies for the ultimate effective management of supply chains in other industries as well. The retail industry has emerged as a fascinating choice for researchers in the field of supply chain management. It presents a vast array of stimulating challenges that have long provided the context of much of the research in the area of operations research and inventory management. However, in recent years, advances in computing capabilities and information technologies, hyper-competition in the retail industry, emergence of multiple retail formats and distribution channels, an ever increasing trend towards a globally dispersed retail network, and a better understanding of the importance of collaboration in the extended supply chain have led to a surge in academic research on topics in retail supply chain management. Many supply chain innovations (e.g., vendor managed inventory) were first conceived and successfully validated in this industry, and have since been adopted in others. Conversely, many retailers have been quick to adopt cutting edge practices that first originated in other industries. Retail Supply Chain Management: Quantitative Models and Empirical Studies, 2nd Ed. is an attempt to summarize the state of the art in this research, as well as offer a perspective on what new applications may lie ahead. |
data science supply chain optimization: Applications of Machine Learning Prashant Johri, Jitendra Kumar Verma, Sudip Paul, 2020-05-04 This book covers applications of machine learning in artificial intelligence. The specific topics covered include human language, heterogeneous and streaming data, unmanned systems, neural information processing, marketing and the social sciences, bioinformatics and robotics, etc. It also provides a broad range of techniques that can be successfully applied and adopted in different areas. Accordingly, the book offers an interesting and insightful read for scholars in the areas of computer vision, speech recognition, healthcare, business, marketing, and bioinformatics. |
data science supply chain optimization: Supply Chain Optimization through Segmentation and Analytics Gerhard J. Plenert, 2014-04-01 Supply Chain Segmentation (SCS) has become a critical tool in optimizing supply chain performance. By using segmentation, an organization is taken out of the world of one size fits all and brought into a world that facilitates customized responses. This book explains what SCS is, how it works, and the role of analytics. The book gives detailed case studies demonstrating how SCS is applied and improves efficiency. It covers software appropriateness and integration, as well as a full summary perspective on segmentation and its competitive impacts in terms of economic pressure, supplier and consumer interfaces. |
data science supply chain optimization: ICICCT 2019 – System Reliability, Quality Control, Safety, Maintenance and Management Vinit Kumar Gunjan, Vicente Garcia Diaz, Manuel Cardona, Vijender Kumar Solanki, K. V. N. Sunitha, 2019-06-27 This book discusses reliability applications for power systems, renewable energy and smart grids and highlights trends in reliable communication, fault-tolerant systems, VLSI system design and embedded systems. Further, it includes chapters on software reliability and other computer engineering and software management-related disciplines, and also examines areas such as big data analytics and ubiquitous computing. Outlining novel, innovative concepts in applied areas of reliability in electrical, electronics and computer engineering disciplines, it is a valuable resource for researchers and practitioners of reliability theory in circuit-based engineering domains. |
data science supply chain optimization: The Digital Supply Chain Bart L. MacCarthy, Dmitry Ivanov, 2022-06-09 The Digital Supply Chain is a thorough investigation of the underpinning technologies, systems, platforms and models that enable the design, management, and control of digitally connected supply chains. The book examines the origin, emergence and building blocks of the Digital Supply Chain, showing how and where the virtual and physical supply chain worlds interact. It reviews the enabling technologies that underpin digitally controlled supply chains and examines how the discipline of supply chain management is affected by enhanced digital connectivity, discussing purchasing and procurement, supply chain traceability, performance management, and supply chain cyber security. The book provides a rich set of cases on current digital practices and challenges across a range of industrial and business sectors including the retail, textiles and clothing, the automotive industry, food, shipping and international logistics, and SMEs. It concludes with research frontiers, discussing network science for supply chain analysis, challenges in Blockchain applications and in digital supply chain surveillance, as well as the need to re-conceptualize supply chain strategies for digitally transformed supply chains. |
data science supply chain optimization: Enterprise Analytics Thomas H. Davenport, 2013 International Institute for Analytics--Dust jacket. |
data science supply chain optimization: Africa's Platforms and the Evolving Sharing Economy Umukoro, Immanuel Ovemeso, Onuoha, Raymond Okwudiri, 2020-12-18 Digital transformation concepts have created new business principles such as the on-demand economy and a new sharing economy. While the on-demand economy has primarily grown out of industrialized economies, especially North America, Africa has been known to exhibit communal living characterized by sharing. Literature has shown that the introduction of ICTs to everyday life and business has redefined the concept of sharing and also evolved an entirely new spectrum of sharing – both in the individual and business settings. Alongside this new spectrum is a new disruptive business model known as the platform business model. While the subject continues to attract interest globally and locally, there is a need to deepen the understanding of this subject to validate global perspectives on platforms as economic drivers within the African context. Africa's Platforms and the Evolving Sharing Economy is an essential reference source that explores evidence-based platform dynamics and their impact on Africa as a continent leveraging technology for economic development. The book also delves into current data protection and privacy issues and the policies and regulations that could impact the design, deployment, and use of platforms for businesses. Featuring research on topics such as digital design, e-commerce, and enterprise information systems, this book is ideally designed for government officials, economists, business executives, managers, academicians, students, researchers, and global finance professionals. |
data science supply chain optimization: Multi-Objective Optimization of Industrial Power Generation Systems: Emerging Research and Opportunities Ganesan, Timothy, 2019-12-27 The increased complexity of the economy in recent years has led to the advancement of energy generation systems. Engineers in this industrial sector have been compelled to seek contemporary methods to keep pace with the rapid development of these systems. Computational intelligence has risen as a capable method that can effectively resolve complex scenarios within the power generation sector. In-depth research on the various applications of this technology is lacking, as engineering professionals need up-to-date information on how to successfully utilize computational intelligence in industrial systems. Multi-Objective Optimization of Industrial Power Generation Systems: Emerging Research and Opportunities provides emerging research exploring the theoretical and practical aspects of the application of intelligent optimization techniques within industrial energy systems. Featuring coverage on a broad range of topics such as swarm intelligence, renewable energy, and predictive modeling, this book is ideally designed for industrialists, engineers, industry professionals, researchers, students, and academics seeking current research on computational intelligence frameworks within the power generation sector. |
data science supply chain optimization: Supply Chain Analytics Kurt Y. Liu, 2022-04-07 This innovative new core textbook, written by an experienced professor and practitioner in supply chain management, offers a business-focused overview of the applications of data analytics and machine learning to supply chain management. Accessible yet rigorous, this text introduces students to the relevant concepts and techniques needed for data analysis and decision making in modern supply chains and enables them to develop proficiency in a popular and powerful programming software. Suitable for use on upper-level undergraduate, postgraduate and MBA courses in supply chain management, it covers all of the major supply chain processes, including managing supply and demand, warehousing and inventory control, transportation and route optimization. Each chapter comes with practical real-world examples drawn from a range of business contexts, including Amazon and Starbucks, case study discussion questions, computer-assisted exercises and programming projects. |
data science supply chain optimization: Optimization in the Agri-Food Supply Chain Mayssa Koubaa, Mohamed Haykal Ammar, Diala Dhouib, Sirine Mnejja, 2024-10-08 |
data science supply chain optimization: Encyclopedia of Business Analytics and Optimization Wang, John, 2014-02-28 As the age of Big Data emerges, it becomes necessary to take the five dimensions of Big Data- volume, variety, velocity, volatility, and veracity- and focus these dimensions towards one critical emphasis - value. The Encyclopedia of Business Analytics and Optimization confronts the challenges of information retrieval in the age of Big Data by exploring recent advances in the areas of knowledge management, data visualization, interdisciplinary communication, and others. Through its critical approach and practical application, this book will be a must-have reference for any professional, leader, analyst, or manager interested in making the most of the knowledge resources at their disposal. |
data science supply chain optimization: Optimization and Inventory Management Nita H. Shah, Mandeep Mittal, 2019-08-31 This book discusses inventory models for determining optimal ordering policies using various optimization techniques, genetic algorithms, and data mining concepts. It also provides sensitivity analyses for the models’ robustness. It presents a collection of mathematical models that deal with real industry scenarios. All mathematical model solutions are provided with the help of various optimization techniques to determine optimal ordering policy. The book offers a range of perspectives on the implementation of optimization techniques, inflation, trade credit financing, fuzzy systems, human error, learning in production, inspection, green supply chains, closed supply chains, reworks, game theory approaches, genetic algorithms, and data mining, as well as research on big data applications for inventory management and control. Starting from deterministic inventory models, the book moves towards advanced inventory models. The content is divided into eight major sections: inventory control and management – inventory models with trade credit financing for imperfect quality items; environmental impact on ordering policies; impact of learning on the supply chain models; EOQ models considering warehousing; optimal ordering policies with data mining and PSO techniques; supply chain models in fuzzy environments; optimal production models for multi-items and multi-retailers; and a marketing model to understand buying behaviour. Given its scope, the book offers a valuable resource for practitioners, instructors, students and researchers alike. It also offers essential insights to help retailers/managers improve business functions and make more accurate and realistic decisions. |
data science supply chain optimization: Data Science and Business Intelligence for Corporate Decision-Making Dr. P. S. Aithal, 2024-02-09 About the Book: A comprehensive book plan on Data Science and Business Intelligence for Corporate Decision-Making with 15 chapters, each with several sections: Chapter 1: Introduction to Data Science and Business Intelligence Chapter 2: Foundations of Data Science Chapter 3: Business Intelligence Tools and Technologies Chapter 4: Data Visualization for Decision-Making Chapter 5: Machine Learning for Business Intelligence Chapter 6: Big Data Analytics Chapter 7: Data Ethics and Governance Chapter 8: Data-Driven Decision-Making Process Chapter 9: Business Intelligence in Marketing Chapter 10: Financial Analytics and Business Intelligence Chapter 11: Operational Excellence through Data Analytics Chapter 12: Human Resources and People Analytics Chapter 13: Case Studies in Data-Driven Decision-Making Chapter 14: Future Trends in Data Science and Business Intelligence Chapter 15: Implementing Data Science Strategies in Corporations Each chapter dives deep into the concepts, methods, and applications of data science and business intelligence, providing practical insights, real-world examples, and case studies for corporate decision-making processes. |
data science supply chain optimization: Deep Learning Techniques and Optimization Strategies in Big Data Analytics Thomas, J. Joshua, Karagoz, Pinar, Ahamed, B. Bazeer, Vasant, Pandian, 2019-11-29 Many approaches have sprouted from artificial intelligence (AI) and produced major breakthroughs in the computer science and engineering industries. Deep learning is a method that is transforming the world of data and analytics. Optimization of this new approach is still unclear, however, and there’s a need for research on the various applications and techniques of deep learning in the field of computing. Deep Learning Techniques and Optimization Strategies in Big Data Analytics is a collection of innovative research on the methods and applications of deep learning strategies in the fields of computer science and information systems. While highlighting topics including data integration, computational modeling, and scheduling systems, this book is ideally designed for engineers, IT specialists, data analysts, data scientists, engineers, researchers, academicians, and students seeking current research on deep learning methods and its application in the digital industry. |
data science supply chain optimization: Handbook of Research on Smart Technology Models for Business and Industry Thomas, J. Joshua, Fiore, Ugo, Lechuga, Gilberto Perez, Kharchenko, Valeriy, Vasant, Pandian, 2020-06-19 Advances in machine learning techniques and ever-increasing computing power has helped create a new generation of hardware and software technologies with practical applications for nearly every industry. As the progress has, in turn, excited the interest of venture investors, technology firms, and a growing number of clients, implementing intelligent automation in both physical and information systems has become a must in business. Handbook of Research on Smart Technology Models for Business and Industry is an essential reference source that discusses relevant abstract frameworks and the latest experimental research findings in theory, mathematical models, software applications, and prototypes in the area of smart technologies. Featuring research on topics such as digital security, renewable energy, and intelligence management, this book is ideally designed for machine learning specialists, industrial experts, data scientists, researchers, academicians, students, and business professionals seeking coverage on current smart technology models. |
data science supply chain optimization: Logistics 4.0 Turan Paksoy, Cigdem Gonul Kochan, Sadia Samar Ali, 2020-12-17 Industrial revolutions have impacted both, manufacturing and service. From the steam engine to digital automated production, the industrial revolutions have conduced significant changes in operations and supply chain management (SCM) processes. Swift changes in manufacturing and service systems have led to phenomenal improvements in productivity. The fast-paced environment brings new challenges and opportunities for the companies that are associated with the adaptation to the new concepts such as Internet of Things (IoT) and Cyber Physical Systems, artificial intelligence (AI), robotics, cyber security, data analytics, block chain and cloud technology. These emerging technologies facilitated and expedited the birth of Logistics 4.0. Industrial Revolution 4.0 initiatives in SCM has attracted stakeholders’ attentions due to it is ability to empower using a set of technologies together that helps to execute more efficient production and distribution systems. This initiative has been called Logistics 4.0 of the fourth Industrial Revolution in SCM due to its high potential. Connecting entities, machines, physical items and enterprise resources to each other by using sensors, devices and the internet along the supply chains are the main attributes of Logistics 4.0. IoT enables customers to make more suitable and valuable decisions due to the data-driven structure of the Industry 4.0 paradigm. Besides that, the system’s ability of gathering and analyzing information about the environment at any given time and adapting itself to the rapid changes add significant value to the SCM processes. In this peer-reviewed book, experts from all over the world, in the field present a conceptual framework for Logistics 4.0 and provide examples for usage of Industry 4.0 tools in SCM. This book is a work that will be beneficial for both practitioners and students and academicians, as it covers the theoretical framework, on the one hand, and includes examples of practice and real world. |
data science supply chain optimization: Integer Programming and Combinatorial Optimization Daniel Bienstock, George L. Nemhauser, 2004-05-24 This book constitutes the refereed proceedings of the 10th International Conference on Integer Programming and Combinatorial Optimization, IPCO 2004, held in New York City, USA in June 2004. The 32 revised papers presented were carefully reviewed and selected from 109 submissions. Among the topics addressed are vehicle routing, network management, mixed-integer programming, computational complexity, game theory, supply chain management, stochastic optimization problems, production scheduling, graph computations, computational graph theory, separation algorithms, local search, linear optimization, integer programming, graph coloring, packing, combinatorial optimization, routing, flow algorithms, 0/1 polytopes, and polyhedra. |
data science supply chain optimization: Technology Optimization and Change Management for Successful Digital Supply Chains Ehap H. Sabri, 2019 This book provides a guide to the best practices in digital enablement, change management, and process optimization. It also builds on the available limited literature in the field of digital supply chain optimization and business transformation and complement it with practical and proven tactics from the industry-- |
data science supply chain optimization: Computational Intelligence in Data Science Mieczyslaw Lech Owoc, |
data science supply chain optimization: Demand Prediction in Retail Maxime C. Cohen, Paul-Emile Gras, Arthur Pentecoste, Renyu Zhang, 2022-01-01 From data collection to evaluation and visualization of prediction results, this book provides a comprehensive overview of the process of predicting demand for retailers. Each step is illustrated with the relevant code and implementation details to demystify how historical data can be leveraged to predict future demand. The tools and methods presented can be applied to most retail settings, both online and brick-and-mortar, such as fashion, electronics, groceries, and furniture. This book is intended to help students in business analytics and data scientists better master how to leverage data for predicting demand in retail applications. It can also be used as a guide for supply chain practitioners who are interested in predicting demand. It enables readers to understand how to leverage data to predict future demand, how to clean and pre-process the data to make it suitable for predictive analytics, what the common caveats are in terms of implementation and how to assess prediction accuracy. |
data science supply chain optimization: Learning to Love Data Science Mike Barlow, 2015-10-27 Until recently, many people thought big data was a passing fad. Data science was an enigmatic term. Today, big data is taken seriously, and data science is considered downright sexy. With this anthology of reports from award-winning journalist Mike Barlow, you’ll appreciate how data science is fundamentally altering our world, for better and for worse. Barlow paints a picture of the emerging data space in broad strokes. From new techniques and tools to the use of data for social good, you’ll find out how far data science reaches. With this anthology, you’ll learn how: Analysts can now get results from their data queries in near real time Indie manufacturers are blurring the lines between hardware and software Companies try to balance their desire for rapid innovation with the need to tighten data security Advanced analytics and low-cost sensors are transforming equipment maintenance from a cost center to a profit center CIOs have gradually evolved from order takers to business innovators New analytics tools let businesses go beyond data analysis and straight to decision-making Mike Barlow is an award-winning journalist, author, and communications strategy consultant. Since launching his own firm, Cumulus Partners, he has represented major organizations in a number of industries. |
data science supply chain optimization: Open Problems in Optimization and Data Analysis Panos M. Pardalos, Athanasios Migdalas, 2018-12-04 Computational and theoretical open problems in optimization, computational geometry, data science, logistics, statistics, supply chain modeling, and data analysis are examined in this book. Each contribution provides the fundamentals needed to fully comprehend the impact of individual problems. Current theoretical, algorithmic, and practical methods used to circumvent each problem are provided to stimulate a new effort towards innovative and efficient solutions. Aimed towards graduate students and researchers in mathematics, optimization, operations research, quantitative logistics, data analysis, and statistics, this book provides a broad comprehensive approach to understanding the significance of specific challenging or open problems within each discipline. The contributions contained in this book are based on lectures focused on “Challenges and Open Problems in Optimization and Data Science” presented at the Deucalion Summer Institute for Advanced Studies in Optimization, Mathematics, and Data Science in August 2016. |
data science supply chain optimization: The Quantitative Supply Chain Joannès Vermorel, 2018-01-26 The Quantitative Supply Chain represents a novel and disruptive perspective on the optimization of supply chains. It can be seen as a refoundation of many supply chain practices, in particular regarding inventory forecasting, and has been built to make the most of the latest statistical approaches and vast computing resources that are available nowadays. |
Data and Digital Outputs Management Plan (DDOMP)
Data and Digital Outputs Management Plan (DDOMP)
Building New Tools for Data Sharing and Reuse through a …
Jan 10, 2019 · The SEI CRA will closely link research thinking and technological innovation toward accelerating the full path of discovery-driven data use and open science. This will …
Open Data Policy and Principles - Belmont Forum
The data policy includes the following principles: Data should be: Discoverable through catalogues and search engines; Accessible as open data by default, and made available with …
Belmont Forum Adopts Open Data Principles for Environmental …
Jan 27, 2016 · Adoption of the open data policy and principles is one of five recommendations in A Place to Stand: e-Infrastructures and Data Management for Global Change Research, …
Belmont Forum Data Accessibility Statement and Policy
The DAS encourages researchers to plan for the longevity, reusability, and stability of the data attached to their research publications and results. Access to data promotes reproducibility, …
Climate-Induced Migration in Africa and Beyond: Big Data and …
CLIMB will also leverage earth observation and social media data, and combine them with survey and official statistical data. This holistic approach will allow us to analyze migration process …
Advancing Resilience in Low Income Housing Using Climate …
Jun 4, 2020 · Environmental sustainability and public health considerations will be included. Machine Learning and Big Data Analytics will be used to identify optimal disaster resilient …
Belmont Forum
What is the Belmont Forum? The Belmont Forum is an international partnership that mobilizes funding of environmental change research and accelerates its delivery to remove critical …
Waterproofing Data: Engaging Stakeholders in Sustainable Flood …
Apr 26, 2018 · Waterproofing Data investigates the governance of water-related risks, with a focus on social and cultural aspects of data practices. Typically, data flows up from local levels …
Data Management Annex (Version 1.4) - Belmont Forum
A full Data Management Plan (DMP) for an awarded Belmont Forum CRA project is a living, actively updated document that describes the data management life cycle for the data to be …
INTELLIGENT SUPPLY CHAIN - NVIDIA
– Rob Armstrong, Director of Data Science, Tesco. Forward-thinking retailers are optimizing the management of supply chains by ... INTELLIGENT SUPPLY CHAIN SUPPLY CHAIN …
Advances in Automation and AI for Enhancing Supply Chain …
Additionally, AI-driven supply chain optimization tools are enhancing resource allocation, improving supply chain visibility, and promoting data-driven decision-making. Automation in …
Supply Chain Analytics: Optimizing Operations with Big Data …
Keywords Data insights, supply chain analytics, optimization, big data Introduction Evolution in data generation and analysis are being brought about by advances in technology [1] asserts …
Leveraging artificial intelligence for enhanced supply chain …
for SCM will undoubtedly enrich supply chain decision-aid tools, further enhancing the efficiency and effectiveness of supply chain operations. 1.3. Historical Evolution: From Traditional …
Optimizing Supply Chain Demand Forecasting and Inventory …
A. Supply Chain Demand Forecasting Supply chain demand forecasting is critical in enterprise operations related to production plans, inventory levels, and customer satisfaction. [5]This …
Applications of Machine Learning Techniques in Supply …
Applications of Machine Learning Techniques in Supply Chain Optimization Sandhya Makkar1, ... Keywords: Machine Learning, Data Science, Analytics, Supply Chain Optimization
Big Data – Supply Chain Management Framework for …
optimization followed, and in shedding light on future research. Keywords: Data analysis, Decision making, Demand forecasting, Hyperparameter tuning, Literature review, Supply chain …
Enhancing supply chain resilience through artificial …
Supply chain resilience refers to the capacity of a supply chain to anticipate, prepare for, respond to, and recover from unexpected disruptions while maintaining functionality and continuity ...
Applications of Machine Learning Techniques in Supply …
niques in Supply Chain Management. The research reviews the cases where Machine Learning Techniques are being used in Supply chain optimization. Keywords: Machine Learning Data …
Big Data—Supply Chain Management Framework for …
Big Data—Supply Chain Management Framework for Forecasting: Data Preprocessing and Machine… 3621 • The introduction of a comprehensive BDA-SCM frame-work that provides a …
IoT based Data-Driven Methodology for Real Time …
IoT based Data-Driven Methodology for Real Time Production Optimization and Supply Chain Visibility in Smart Manufacturing and Logistics . B. PRABHA1, RASHMI SHAHU2, SATISH V. …
INTEGRATING ARTIFICIAL INTELLIGENCE AND …
enhance the optimization of supply chain operations, with a particular focus on improving sustainability and operational efficiency. The paper explores specific aspects of supply chain …
Justin O. Holman Curriculum Vitae CONTACT INFORMATION
GIS, visualization, supply chain optimization, network design, logistics planning, spatial decision support systems, product development, technology team leadership. LogicTools was acquired …
Agriculture supply-chain optimization and value creation
A complex supply chain Supply-chain processes are inherently complex across industries, with multiple functions interacting with different, potentially conflicting objectives and numerous …
Capacity and Inventory Optimization for Pharmaceutical …
Capacity and Inventory Optimization for Pharmaceutical Industry by Huong Thi Dang and Brett Anthony Elgersma Submitted to the Program in Supply Chain Management on May 1, 2020 in …
Frontiers and trends of supply chain optimization in the age of ...
Keywords Supply chain optimization · Operation research methods · Industrial 4.0 · Literature review · Data analytics B Adel Elomri aelomri@hbku.edu.qa 1 College of Economics and …
Optimizing logistics and supply chain management through …
supply chain management, with numerous variables affecting delivery times, costs, and efficiency. Advanced analytics tools can analyze traffic patterns, fuel costs, weather conditions, and other ...
Demand Forecasting with Machine Learning - Massachusetts …
Jun 20, 2024 · Requirements for the Degree of Master of Applied Science in Supply Chain Management ABSTRACT Our capstone project focuses on forecasting sales of the sponsor …
Big Data Driven Agricultural Products Supply Chain …
Big Data Driven Agricultural Products Supply Chain Management: A Trustworthy Scheduling optimization Approach Qian Tao 1, 2 , Chunqin Gu 1 , Zhenyu Wang 1* , Joseph Rocchio 3 …
Data Science for Supply Chain Forecast - ResearchGate
Data Science for Supply Chain Forecast Arti cial intelligence is the new electricity Andrew Ng1 In the same way electricity revolutionized the second half of the XIXth century, allowing industries ...
Large Language Model Supply Chain: A Research Agenda
Large Language Model Supply Chain: A Research Agenda SHENAO WANG∗,Huazhong University of Science and Technology, China YANJIE ZHAO∗,Huazhong University of Science …
Predictive Modeling for Business Optimization: Leveraging …
Waller and Fawcett (2015) explore the transformative potential of data science, predictive analytics, and big data regarding supply chain design and management. They believe these …
ARTIFICIAL INTELLIGENCE, MACHINE LEARNING AND …
Data Science, Supply Chain Management, Optimization, Efficiency, Decision-making, Integration. I. INTRODUCTION 1.1 Supply Chain Management: The process of controlling the flow of …
Supply Chain Analytics Professional Certificate - gatech.edu
planning, supply chain optimization, and electric mobility. Lorenzo's expertise has led him to be sought after as a guest speaker at numerous universities, where he shares insights into how …
Transforming Intel s Supply Chain with Real-Time Analytics
Hadoop’s big data capabilities creates a real-time “sense-and-respond” supply chain. Defining a Supply Chain Data Transformation Strategy Our supply chain transformation strategy consists …
International Journal of Social Science Exceptional Research
Supply chain optimization refers to the process of enhancing a supply chain's performance by improving its components' ... artificial intelligence and data science for enterprise
Transforming Agricultural Productivity with AI-Driven …
Food Security and Supply Chain Optimization October 2024 Sambandh Bhusan Dhal, Debashish Kar. DISCLAIMER This information was prepared as an account of work sponsored by an ...
Leveraging Big Data Analytics for Supply Chain Network …
in Big Data Analysis in Supply Chain Network Optimization. 4. Big Data Analytics in Supply Chain Networks 4.1 Types of Supply Chain Data and Their Sources • Demand Data - Sales-related …
Leveraging Data Science to Enhance your Supply Chain and …
supply chain will have a profound impact on supply chains and how they perform. Understanding data science will enable supply chain managers to better understand its impact on their firm …
Tutorial and Practice in Linear Programming - arXiv.org
Some of the optimization topics covered in this tutorial will be familiar to those who studied operations research (OR), management science, or decision science. Students can use this …
An Overview of Manufacturing & Supply Chain Analytics at …
Supply Chain in the last few years. In this presentation, the speaker will briefly introduce GDI&A, its mission, vision, and the journey since its debut in 2015. He will then provide an overview of …
Supply Chain Management Using Optimization and Machine …
supply chain performance amidst uncertainties. Keywords: Machine Learning · Data Science · Supply chain optimization · Late delivery production. 1 Introduction Modern businesses heavily …
Supply Chain Network Robustness Against Disruptions: …
formance measurement relevant to a supply chain context, and an optimization for increasing supply network performance. The topology of a supply chain network has considerable …
SUPPLY CHAIN OPTIMIZATION - content.e-bookshelf.de
The title of this edited book, Supply Chain Optimization^ aims to capture a segment of recent research activity in supply chain manage ment. This research area focuses on applying …
The application of big data analytics in optimizing logistics: a ...
data to the optimization of logistics. First, the evolution and features of both logistics and big data are reviewed using the systematic review method. This is followed by discussions on the …
STOCHASTIC PROGRAMMING SOLUTIONS TO SUPPLY …
4.2 Non-Smooth Optimization Using a Collection of Subgradients. . . . . .28 ... supply chain network itself has already been designed and built; that is, manufacturing plants, distribution …
Research on the Optimization of Agricultural Supply Chain …
agricultural supply chain standardization system and operation mode, weak administrative details and other issues, led to agricultural supply chain operational efficiency low. At present, …
Review of Data-Driven Robust Optimization
a linear programming model. Zhao & You (2018) discusses supply chain under uncertain production capacity the using robust optimization. Data-driven robust optimization has also …
Big data optimisation and management in supply chain
An example of using optimization in supply chain is found in Amazon, which has revo-lutionized the game by providing extremely fast delivery timeframes and alerts for projected delivery …
Resilient Supply Chain Design and Operations with Decision …
Dec 20, 2018 · • A novel bi-objective twostage adaptive robust - fractional programmingmodel for supply chain resilience optimization under endogenous uncertainty ; • A novel data-driven …
Analytical assortment optimization - McKinsey & Company
Simpli ed supply chain Improved procurement conditions Up to 0.5 pp¹ of margin 2–4% revenue growth Up to 0.5 pp of margin 1–3% of procurement costs Prot margin improvement from …
Designing and Deploying AI Models for Sustainable Logistics ...
contribute to a more resilient and adaptive supply chain ecosystem. Keywords: Artificial Intelligence, Machine Learning, Sustainable Logistics, Route Optimization, Logistics …
SupplyGraph: A Benchmark Dataset for Supply Chain …
Supply Chain machine learning with Graph Neural Networks holds significant promise by enabling the modeling of com-plex supply chain structures, optimizing logistics, and en-hancing …
JEN AMLANI ALURA VINCENT DAN BORCHIK
Commerce Control Tower Mgr. at GEODIS Supply Chain Optimization •B.S.E. Industrial Engineering, Instituto Tecnologico de Veracruz •Professional interests in sustainability and …
SUSTAINABLE SUPPLY CHAIN MANAGEMENT IN THE …
International Medical Science Research Journal, Volume 4, Issue 3, March 2024 ... in driving sustainability in medical supply chains, with advancements in data analytics, blockchain, and …
Mathematical Optimization Models and Applications
Unconstrained Optimization: Ω is the entire space Rn Linear Optimization: If both the objective and the constraint functions are linear/affine Nonlinear Optimization: If the …