Home
Supply Chain Analytics and Modelling: Quantitative Tools Applications
Barnes and Noble
Loading Inventory...
Supply Chain Analytics and Modelling: Quantitative Tools Applications in Chattanooga, TN
Current price: $232.00

Barnes and Noble
Supply Chain Analytics and Modelling: Quantitative Tools Applications in Chattanooga, TN
Current price: $232.00
Loading Inventory...
Size: Hardcover
A comprehensive guide for analysing, interpreting and improving supply chain systems through data
.
Supply Chain Analytics and Modelling
by
Nicoleta Tipi
provides MSc students and supply chain professionals with a practical and structured introduction to the analytical tools and business models used across modern logistics and operations environments. The fully updated, latest edition of this core resource helps readers make sense of complex supply chain data and build the modelling skills needed to improve performance, resilience and decisionmaking.
Beginning with the foundations of analytics and business modelling, the textbook guides students and professionals through increasingly advanced techniques, from simulation and optimization to machine learning, AI and digital twins. It shows how to critically evaluate supply chain performance using accurate data, and how to apply model outputs to solve realworld problems. Throughout, readers will gain the tools to manage data complexity, assess risk and apply intelligent models to support effective decisionmaking.
To support academic study and independent learning, this edition includes:
A wide range of modelling approaches, from descriptive to predictive analytics
New content on digital twins, machine learning, AI and simulation tools
Analysis of supply chain performance measurement and data reliability
Realworld examples that connect theory to logistics and operations practice
Online resources including lecturer slides and solved model examples
equips students and practitioners with the analytical confidence and technical fluency to interpret, model and manage today's dataintensive supply chain systems.
.
Supply Chain Analytics and Modelling
by
Nicoleta Tipi
provides MSc students and supply chain professionals with a practical and structured introduction to the analytical tools and business models used across modern logistics and operations environments. The fully updated, latest edition of this core resource helps readers make sense of complex supply chain data and build the modelling skills needed to improve performance, resilience and decisionmaking.
Beginning with the foundations of analytics and business modelling, the textbook guides students and professionals through increasingly advanced techniques, from simulation and optimization to machine learning, AI and digital twins. It shows how to critically evaluate supply chain performance using accurate data, and how to apply model outputs to solve realworld problems. Throughout, readers will gain the tools to manage data complexity, assess risk and apply intelligent models to support effective decisionmaking.
To support academic study and independent learning, this edition includes:
A wide range of modelling approaches, from descriptive to predictive analytics
New content on digital twins, machine learning, AI and simulation tools
Analysis of supply chain performance measurement and data reliability
Realworld examples that connect theory to logistics and operations practice
Online resources including lecturer slides and solved model examples
equips students and practitioners with the analytical confidence and technical fluency to interpret, model and manage today's dataintensive supply chain systems.
A comprehensive guide for analysing, interpreting and improving supply chain systems through data
.
Supply Chain Analytics and Modelling
by
Nicoleta Tipi
provides MSc students and supply chain professionals with a practical and structured introduction to the analytical tools and business models used across modern logistics and operations environments. The fully updated, latest edition of this core resource helps readers make sense of complex supply chain data and build the modelling skills needed to improve performance, resilience and decisionmaking.
Beginning with the foundations of analytics and business modelling, the textbook guides students and professionals through increasingly advanced techniques, from simulation and optimization to machine learning, AI and digital twins. It shows how to critically evaluate supply chain performance using accurate data, and how to apply model outputs to solve realworld problems. Throughout, readers will gain the tools to manage data complexity, assess risk and apply intelligent models to support effective decisionmaking.
To support academic study and independent learning, this edition includes:
A wide range of modelling approaches, from descriptive to predictive analytics
New content on digital twins, machine learning, AI and simulation tools
Analysis of supply chain performance measurement and data reliability
Realworld examples that connect theory to logistics and operations practice
Online resources including lecturer slides and solved model examples
equips students and practitioners with the analytical confidence and technical fluency to interpret, model and manage today's dataintensive supply chain systems.
.
Supply Chain Analytics and Modelling
by
Nicoleta Tipi
provides MSc students and supply chain professionals with a practical and structured introduction to the analytical tools and business models used across modern logistics and operations environments. The fully updated, latest edition of this core resource helps readers make sense of complex supply chain data and build the modelling skills needed to improve performance, resilience and decisionmaking.
Beginning with the foundations of analytics and business modelling, the textbook guides students and professionals through increasingly advanced techniques, from simulation and optimization to machine learning, AI and digital twins. It shows how to critically evaluate supply chain performance using accurate data, and how to apply model outputs to solve realworld problems. Throughout, readers will gain the tools to manage data complexity, assess risk and apply intelligent models to support effective decisionmaking.
To support academic study and independent learning, this edition includes:
A wide range of modelling approaches, from descriptive to predictive analytics
New content on digital twins, machine learning, AI and simulation tools
Analysis of supply chain performance measurement and data reliability
Realworld examples that connect theory to logistics and operations practice
Online resources including lecturer slides and solved model examples
equips students and practitioners with the analytical confidence and technical fluency to interpret, model and manage today's dataintensive supply chain systems.

















