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Convex analysis / Mathematical optimization / Real analysis / Convex geometry / Convex optimization / Convex function / Quasiconvex function / Convex set / Logarithmically convex function / ShapleyFolkman lemma
Date: 2011-04-22 17:11:28
Convex analysis
Mathematical optimization
Real analysis
Convex geometry
Convex optimization
Convex function
Quasiconvex function
Convex set
Logarithmically convex function
ShapleyFolkman lemma

PACORA: Performance Aware Convex Optimization for Resource Allocation Sarah L. Bird, University of California-Berkeley <> Burton J. Smith, Microsoft <> Abstract Resource alloc

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