Introduction to Stochastic Programming, 2nd Edition by John R. Birge, François Louveaux

Introduction to Stochastic Programming, 2nd Edition



Introduction to Stochastic Programming, 2nd Edition ebook download




Introduction to Stochastic Programming, 2nd Edition John R. Birge, François Louveaux ebook
ISBN: 1461402360, 9781461402367
Publisher: Springer
Format: pdf
Page: 512


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