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Christoph Schubert

The SCIP Optimization Suite 6.0

Published: 2018/07/02, Updated: 2018/07/03
  • Michael Bastubbe
  • Leon Eifler
  • Tristan Gally
  • Gerald Gamrath
  • Ambros Gleixner
  • Robert Lion Gottwald
  • Gregor Hendel
  • Christopher Hojny
  • Thorsten Koch
  • Marco E. Lübbecke
  • Stephen J. Maher
  • Matthias Miltenberger
  • Marc E. Pfetsch
  • Felipe Serrano
  • Matthias Walter
  • Jakob Witzig
  • Benjamin Müller
  • Christian Puchert
  • Daniel Rehfeldt
  • Franziska Schlösser
  • Christoph Schubert
  • Yuji Shinano
  • Merlin Viernickel
  • Fabian Wegscheider
  • Jonas T. Witt
Categories (Mixed) Integer Linear Programming, (Mixed) Integer Nonlinear Programming Tags benders decomposition, branch-and-cut, branch-and-price, column generation, constraint integer programming, linear programming, mixed-integer linear programming, mixed-integer nonlinear programming, mixed-integer semidefinite programming, optimization solver, parallelization, steiner tree optimization

The SCIP Optimization Suite provides a collection of software packages for mathematical optimization centered around the constraint integer programming framework SCIP. This paper discusses enhancements and extensions contained in version 6.0 of the SCIP Optimization Suite. Besides performance improvements of the MIP and MINLP core achieved by new primal heuristics and a new selection criterion … Read more

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Keywords

alternating direction method of multipliers augmented lagrangian method benders decomposition bilevel optimization Branch-and-Bound branch-and-cut chance constraints column generation combinatorial optimization complexity constrained optimization convex optimization cutting planes decomposition derivative-free optimization distributionally robust optimization duality dynamic programming first-order methods global convergence global optimization heuristics integer programming interior point methods large-scale optimization linear programming machine learning mixed-integer linear programming mixed-integer nonlinear programming mixed-integer programming multiobjective optimization nonconvex optimization nonlinear optimization nonlinear programming nonsmooth optimization optimal control optimization proximal point algorithm quadratic programming robust optimization semidefinite programming stochastic optimization stochastic programming trust-region methods unconstrained optimization

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