dsdp 5.8-9.1build1 source package in Ubuntu

Changelog

dsdp (5.8-9.1build1) xenial; urgency=medium

  * No-change rebuild for libblas3gf->libblas3 transition.

 -- Matthias Klose <email address hidden>  Sat, 16 Jan 2016 16:13:00 +0100

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Uploaded by:
Matthias Klose
Uploaded to:
Xenial
Original maintainer:
Soeren Sonnenburg
Architectures:
any all
Section:
science
Urgency:
Medium Urgency

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Series Pocket Published Component Section

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File Size SHA-256 Checksum
dsdp_5.8.orig.tar.gz 360.0 KiB de82af5e2daec70c8bf653ea4872108850bebea25238a799e78289ff88f88e06
dsdp_5.8-9.1build1.debian.tar.xz 6.1 KiB 0027996487ea2bd59c3afbed2e6a4921840341b3c663613a775a6856d28b859c
dsdp_5.8-9.1build1.dsc 2.0 KiB 3866a2285cfccaf247bb5cf48b64a828c17682a931fe90b988f751d4fc538617

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Binary packages built by this source

dsdp: Software for Semidefinite Programming

 The DSDP software is a free open source implementation of an interior-point
 method for semidefinite programming. It provides primal and dual solutions,
 exploits low-rank structure and sparsity in the data, and has relatively
 low memory requirements for an interior-point method. It allows feasible
 and infeasible starting points and provides approximate certificates of
 infeasibility when no feasible solution exists. The dual-scaling
 algorithm implemented in this package has a convergence proof and
 worst-case polynomial complexity under mild assumptions on the
 data. Furthermore, the solver offers scalable parallel performance for
 large problems and a well documented interface. Some of the most popular
 applications of semidefinite programming and linear matrix inequalities
 (LMI) are model control, truss topology design, and semidefinite
 relaxations of combinatorial and global optimization problems.
 .
 This package contains the binaries.

dsdp-doc: Software for Semidefinite Programming

 The DSDP software is a free open source implementation of an interior-point
 method for semidefinite programming. It provides primal and dual solutions,
 exploits low-rank structure and sparsity in the data, and has relatively
 low memory requirements for an interior-point method. It allows feasible
 and infeasible starting points and provides approximate certificates of
 infeasibility when no feasible solution exists. The dual-scaling
 algorithm implemented in this package has a convergence proof and
 worst-case polynomial complexity under mild assumptions on the
 data. Furthermore, the solver offers scalable parallel performance for
 large problems and a well documented interface. Some of the most popular
 applications of semidefinite programming and linear matrix inequalities
 (LMI) are model control, truss topology design, and semidefinite
 relaxations of combinatorial and global optimization problems.
 .
 This package contains the documentation and examples.

libdsdp-5.8gf: Software for Semidefinite Programming

 The DSDP software is a free open source implementation of an interior-point
 method for semidefinite programming. It provides primal and dual solutions,
 exploits low-rank structure and sparsity in the data, and has relatively
 low memory requirements for an interior-point method. It allows feasible
 and infeasible starting points and provides approximate certificates of
 infeasibility when no feasible solution exists. The dual-scaling
 algorithm implemented in this package has a convergence proof and
 worst-case polynomial complexity under mild assumptions on the
 data. Furthermore, the solver offers scalable parallel performance for
 large problems and a well documented interface. Some of the most popular
 applications of semidefinite programming and linear matrix inequalities
 (LMI) are model control, truss topology design, and semidefinite
 relaxations of combinatorial and global optimization problems.
 .
 This package contains the library files.

libdsdp-dev: Software for Semidefinite Programming

 The DSDP software is a free open source implementation of an interior-point
 method for semidefinite programming. It provides primal and dual solutions,
 exploits low-rank structure and sparsity in the data, and has relatively
 low memory requirements for an interior-point method. It allows feasible
 and infeasible starting points and provides approximate certificates of
 infeasibility when no feasible solution exists. The dual-scaling
 algorithm implemented in this package has a convergence proof and
 worst-case polynomial complexity under mild assumptions on the
 data. Furthermore, the solver offers scalable parallel performance for
 large problems and a well documented interface. Some of the most popular
 applications of semidefinite programming and linear matrix inequalities
 (LMI) are model control, truss topology design, and semidefinite
 relaxations of combinatorial and global optimization problems.
 .
 This package contains the header files for developers.