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Numerical analysis / Generalized minimal residual method / Krylov subspace / Preconditioner / Conjugate gradient method / Lanczos algorithm / Iterative method / Symmetric matrix / Schur complement / Algebra / Numerical linear algebra / Linear algebra
Date: 2013-06-06 21:37:08
Numerical analysis
Generalized minimal residual method
Krylov subspace
Preconditioner
Conjugate gradient method
Lanczos algorithm
Iterative method
Symmetric matrix
Schur complement
Algebra
Numerical linear algebra
Linear algebra

Report no[removed]The Bramble-Pasciak+ preconditioner for saddle

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