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What Every Engineer Should Know About Decision Making Under Uncertainty John X Wang

  • SKU: BELL-55113246
What Every Engineer Should Know About Decision Making Under Uncertainty John X Wang
$ 31.00 $ 45.00 (-31%)

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What Every Engineer Should Know About Decision Making Under Uncertainty John X Wang instant download after payment.

Publisher: CRC Press
File Extension: PDF
File size: 13.12 MB
Author: John X. Wang
ISBN: 9780824743734, 0824743733
Language: English
Year: 2002

Product desciption

What Every Engineer Should Know About Decision Making Under Uncertainty John X Wang by John X. Wang 9780824743734, 0824743733 instant download after payment.

Covering the prediction of outcomes for engineering decisions through regression analysis, this succinct and practical reference presents statistical reasoning and interpretational techniques to aid in the decision making process when faced with engineering problems. The author emphasizes the use of spreadsheet simulations and decision trees as important tools in the practical application of decision making analyses and models to improve real-world engineering operations. He offers insight into the realities of high-stakes engineering decision making in the investigative and corporate sectors by optimizing engineering decision variables to maximize payoff.

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