Although predictive machine learning for supply chain data analytics has recently been reported as a significant area of investigation due to the rising popularity of the AI paradigm in industry, there is a distinct lack of case studies that showcase its application from a practical point of view. In this paper, we discuss the application of data analytics in predicting first tier supply chain disruptions using historical data available to an Original Equipment Manufacturer (OEM). Our methodology includes three phases: First, an exploratory phase is conducted to select and engineer potential features that can act as useful predictors of disruptions. This is followed by the development of a performance metric in alignment with the specific g...
Thesis: M.B.A., Massachusetts Institute of Technology, Sloan School of Management, in conjunction wi...
Part 12: Applications of Machine Learning in Production ManagementInternational audienceFuture manuf...
With the emergence of Big Data Technologies (BDT) and the growing application of Big Data Analytics ...
Although predictive machine learning for supply chain data analytics has recently been reported as a...
Managing supply chain risks has received increased attention in recent years, aiming to shield suppl...
In today’s complex and ever-changing world, concerns about the lack of enough data have been replace...
abstract: This thesis, through a thorough literature and content review, discusses the various ways ...
Big data has become a global phenomenon with companies in almost all industries trying in some way ...
Purpose In fast moving consumer goods sector (FMCGs), manufacturers’ access to demand related data (...
This paper explores and analyses the impact of Predictive Analytics on Supply Chain Management. Pred...
Supply Chain exists since commerce has been created, and nowadays it is one of the main keys of the ...
International audienceGoal: Predicting the evolution of commodities price to improve anticipation to...
The volume of data generated by the various Supply Chain Management actors is considerable, the extr...
Sporadic demand presents a particular challenge to traditional time forecasting methods. In the past...
Supply chain business interruption has been identified as a key risk factor in recent years, with hi...
Thesis: M.B.A., Massachusetts Institute of Technology, Sloan School of Management, in conjunction wi...
Part 12: Applications of Machine Learning in Production ManagementInternational audienceFuture manuf...
With the emergence of Big Data Technologies (BDT) and the growing application of Big Data Analytics ...
Although predictive machine learning for supply chain data analytics has recently been reported as a...
Managing supply chain risks has received increased attention in recent years, aiming to shield suppl...
In today’s complex and ever-changing world, concerns about the lack of enough data have been replace...
abstract: This thesis, through a thorough literature and content review, discusses the various ways ...
Big data has become a global phenomenon with companies in almost all industries trying in some way ...
Purpose In fast moving consumer goods sector (FMCGs), manufacturers’ access to demand related data (...
This paper explores and analyses the impact of Predictive Analytics on Supply Chain Management. Pred...
Supply Chain exists since commerce has been created, and nowadays it is one of the main keys of the ...
International audienceGoal: Predicting the evolution of commodities price to improve anticipation to...
The volume of data generated by the various Supply Chain Management actors is considerable, the extr...
Sporadic demand presents a particular challenge to traditional time forecasting methods. In the past...
Supply chain business interruption has been identified as a key risk factor in recent years, with hi...
Thesis: M.B.A., Massachusetts Institute of Technology, Sloan School of Management, in conjunction wi...
Part 12: Applications of Machine Learning in Production ManagementInternational audienceFuture manuf...
With the emergence of Big Data Technologies (BDT) and the growing application of Big Data Analytics ...