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Vector calculus / Differential calculus / Convex analysis / Functions and mappings / Numerical linear algebra / Gradient / Inner product space / Conjugate gradient method / Convex function / Algebra / Mathematics / Mathematical analysis
Date: 2008-08-22 12:14:27
Vector calculus
Differential calculus
Convex analysis
Functions and mappings
Numerical linear algebra
Gradient
Inner product space
Conjugate gradient method
Convex function
Algebra
Mathematics
Mathematical analysis

Derivations for Linear Algebra and Optimization John Duchi

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