A Bayesian Model for Sales Forecasting at Sun Microsystems

An accurate short-term forecast of product sales is vital for the smooth operation of modern supply chains, especially when a company internationally outsources the manufacture of complex products. Sun Microsystems' business model has long emphasized such outsourcing. Historically, Sun has reli...

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Veröffentlicht in:Interfaces (Providence) 2010-03, Vol.40 (2), p.118-129
Hauptverfasser: Yelland, Phillip M., Kim, Shinji, Stratulate, Renée
Format: Artikel
Sprache:eng
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Zusammenfassung:An accurate short-term forecast of product sales is vital for the smooth operation of modern supply chains, especially when a company internationally outsources the manufacture of complex products. Sun Microsystems' business model has long emphasized such outsourcing. Historically, Sun has relied on a judgment-based forecasting process, involving its direct sales force, marketing management, and channel partners. However, management recognized the need to address the many heuristic and organizational distortions to which judgment-based forecasting procedures are prey. Simply replacing the judgmental forecasts by statistical methods with no judgmental input was unrealistic; short product life cycles and volatile demand confounded purely statistical approaches. This article documents a forecasting system that Sun developed and deploys currently; it uses Bayesian methods to combine both judgmental and statistical information. We discuss its development and architecture, including steps that Sun took to incorporate it into the existing forecasting and planning processes. We also present an evaluation of its forecasting performance and possible directions for future development.
ISSN:0092-2102
2644-0865
1526-551X
2644-0873
DOI:10.1287/inte.1090.0477