Evaluating svd() on slice of matrix array.
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I have an array of matrices such that
size(A) == [3, 3, 1e3]
for example. These 1000 [3x3] matrices must be orthonormal so I am attempting to project each one to the nearest orthonormal basis, using svd() and the approximation

This function is made to work on a single [3x3] matrix at a time however. A workaround could be using for loops like
[~,~,np] = size(A);
for i=1:np
    [U,~,V] = svd(A(:,:,i));
    A(:,:,i) = U*V';
end
but this function will be called very often with high numbers of matrices so I am attempting to make efficient. Is there a better way to do this?
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  David Goodmanson
      
      
 el 23 de En. de 2020
        
      Editada: David Goodmanson
      
      
 el 23 de En. de 2020
  
      Hi Morten
I take it that your matrices are close to being orthonomal already.  Try
[Q, ~] = qr(A(:,:,i));
A(:,:,i) = Q;
which is about three times faster, not counting overhead to read and write to A(:,:,i).  The result is slightly different, but of course still orthogonal.
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