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Linear algebra / Abstract algebra / Dimension / Vectors / Array data type / Array programming / MATLAB / Euclidean subspace / Algebra / Mathematics / Software
Date: 2009-09-22 20:25:08
Linear algebra
Abstract algebra
Dimension
Vectors
Array data type
Array programming
MATLAB
Euclidean subspace
Algebra
Mathematics
Software

CS 1173: MATLAB min function The min function returns the minimum value of the elements  along an array dimension. B = min(A, [], dim) minimum elements

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