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Linear algebra / Control theory / Eigenvalues and eigenvectors / Singular value decomposition / Complex number / State space / Cubic function / Polynomial / Integral transform / Algebra / Mathematics / Matrix theory
Date: 2011-03-16 22:50:05
Linear algebra
Control theory
Eigenvalues and eigenvectors
Singular value decomposition
Complex number
State space
Cubic function
Polynomial
Integral transform
Algebra
Mathematics
Matrix theory

C02 – Zeros of Polynomials C02AMF NAG Fortran Library Routine Document C02AMF

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