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Mathematical optimization / Mathematical analysis / Analysis / Mathematics / Trajectory optimization / Nonlinear programming / KarushKuhnTucker conditions / Automatic differentiation / Lagrange multiplier / BroydenFletcherGoldfarbShanno algorithm / Hessian matrix / Linear programming
Date: 2008-08-29 02:28:59
Mathematical optimization
Mathematical analysis
Analysis
Mathematics
Trajectory optimization
Nonlinear programming
KarushKuhnTucker conditions
Automatic differentiation
Lagrange multiplier
BroydenFletcherGoldfarbShanno algorithm
Hessian matrix
Linear programming

Higher-Order Derivatives in Engineering Applications

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