The interior point method (IPM) is now well established as a computationaly com-petitive scheme for solving very large scale linear programming problems. The leading variant of the IPM is the primal dual predictor corrector algorithm due to Mehrotra. The main computational efforts in this algorithm are the repeated calculation and solution of a large sparse positive definite system of equations. We describe an implementation of this algorithm for vector processors. At the heart of the implementation is a vectorized matrix multiplication and Cholesky factorization for sparse matrices. We identify the parts where vectorization can be beneficial and discuss in details the merits of alternative vectorization techniques. We show that the best ...
Many issues that are crucial for an efficient implementation of an interior point algorithm are addr...
In the past fifteen years, research on Interior Point Methods (IPM) and their applications were ver...
Interior-point methods are among the most efficient approaches for solving large-scale nonlinear pro...
The interior point method (IPM) is now well established as a competitive technique for solving very ...
The interior point method (IPM) is now well established as a competitive technique for solving very ...
In this paper we describe a unified algorithmic framework for the interior point method (IPM) of sol...
Recent advances in linear programming solution methodology have focused on interior point algorithms...
In this paper we describe a unified scheme for implementing an interior point algorithm (IPM) over a...
this paper, we describe our implementation of a primal-dual infeasible-interior-point algorithm for ...
AbstractEvery iteration of an interior point method of large scale linear programming requires compu...
The computational burden of primal-dual interior point methods for linear program-ming relies on the...
Primal &ndash dual interior &ndash point methods (IPMs) are distinguished for their exceptional theo...
ABSTRACT Interior point methods have been widely used to determine the solution of large-scale linea...
Interior point methods (IPM) are first introduced as an efficient polynomial time algorithm to solve...
Abstract. Solution methods for very large scale optimization problems are addressed in this paper. I...
Many issues that are crucial for an efficient implementation of an interior point algorithm are addr...
In the past fifteen years, research on Interior Point Methods (IPM) and their applications were ver...
Interior-point methods are among the most efficient approaches for solving large-scale nonlinear pro...
The interior point method (IPM) is now well established as a competitive technique for solving very ...
The interior point method (IPM) is now well established as a competitive technique for solving very ...
In this paper we describe a unified algorithmic framework for the interior point method (IPM) of sol...
Recent advances in linear programming solution methodology have focused on interior point algorithms...
In this paper we describe a unified scheme for implementing an interior point algorithm (IPM) over a...
this paper, we describe our implementation of a primal-dual infeasible-interior-point algorithm for ...
AbstractEvery iteration of an interior point method of large scale linear programming requires compu...
The computational burden of primal-dual interior point methods for linear program-ming relies on the...
Primal &ndash dual interior &ndash point methods (IPMs) are distinguished for their exceptional theo...
ABSTRACT Interior point methods have been widely used to determine the solution of large-scale linea...
Interior point methods (IPM) are first introduced as an efficient polynomial time algorithm to solve...
Abstract. Solution methods for very large scale optimization problems are addressed in this paper. I...
Many issues that are crucial for an efficient implementation of an interior point algorithm are addr...
In the past fifteen years, research on Interior Point Methods (IPM) and their applications were ver...
Interior-point methods are among the most efficient approaches for solving large-scale nonlinear pro...