Collaborative predictive business intelligence model for spare parts inventory replenishment

  title={Collaborative predictive business intelligence model for spare parts inventory replenishment},
  author={Nenad Stefanovic},
  journal={Comput. Sci. Inf. Syst.},
In today’s volatile and turbulent business environment, supply chains face great challenges when making supply and demand decisions. Making optimal inventory replenishment decision became critical for successful supply chain management. Existing traditional inventory management approaches and technologies showed as inadequate for these tasks. Current business environment requires new methods that incorporate more intelligent technologies and tools capable to make fast, accurate and reliable… CONTINUE READING


Publications referenced by this paper.
Showing 1-10 of 30 references

The bullwhip effect in supply chains

IEEE Engineering Management Review • 2015
View 1 Excerpt

A survey on recent research in business intelligence

M. Aruldoss, L. M. Travis, V. P. Venkatesan
Journal of Enterprise Information Management, Vol. 27 No. 6, 831 – 866. • 2014
View 1 Excerpt

Big Data Driven Supply Chain Management - A Framework for Implementing Analytics and Turning Information into Intelligence

N. R. Sanders
Pearson Education, Inc. Upper Saddle River, New Jersey, USA. • 2014
View 1 Excerpt

SQL Server 2014 Business Intelligence Development

R. Rad.
Packt Publishing, Birmingham, UK. • 2014
View 1 Excerpt

Electronic Commerce 2012: A Managerial and Social Networks Perspective

E. Turban, D. King, +3 authors D. Turban
Pearson Education, London, UK. • 2012
View 1 Excerpt

Keeping your supply chain in balance

Predictive inventory management
IBM • 2012
View 1 Excerpt

Similar Papers

Loading similar papers…