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Data in Production and Supply Chain Planning

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Part of the book series: International Series in Operations Research & Management Science ((ISOR,volume 151))

Abstract

Charles Babbage, one of the inventors of mechanical engines capable of calculation, commented (Babbage 1864): “On two occasions I have been asked, – ‘Pray, Mr. Babbage, if you put into the machine wrong figures, will the right answers come out?’ I am not able rightly to apprehend the kind of confusion of ideas that could provoke such a question.” Roughly 100 years later in the age of electronic engines capable of calculation, an IBM instructor in New York named George Fuechsel captured this idea more succinctly when he used “garbage in, garbage out” as a training mantra.

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Correspondence to Karl G. Kempf .

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Dionne, L., Kempf, K.G. (2011). Data in Production and Supply Chain Planning. In: Kempf, K., Keskinocak, P., Uzsoy, R. (eds) Planning Production and Inventories in the Extended Enterprise. International Series in Operations Research & Management Science, vol 151. Springer, New York, NY. https://doi.org/10.1007/978-1-4419-6485-4_8

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