SPECTRA -a Maple library for solving linear matrix inequalities in exact arithmetic

11/07/2016
by   Didier Henrion, et al.
0

This document describes our freely distributed Maple library spectra, for Semidefinite Programming solved Exactly with Computational Tools of Real Algebra. It solves linear matrix inequalities with symbolic computation in exact arithmetic and it is targeted to small-size, possibly degenerate problems for which symbolic infeasibility or feasibility certificates are required.

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