# Is there a `numpy.minimum` equivalent in GSL?

I'm working on porting a complex data analysis routine I "prototyped" in Python to C++. I used Numpy extensively throughout the Python code. I'm looking at employing the GSL in the C++ port since it implements all of the various numerical routines I require (whereas Armadillo, Eigen, etc. only have a subset of what I need, though their APIs are closer to what I am looking for).

Is there an equivalent to `numpy.minimum` in the GSL (i.e., element-wise minimum of two matrices)? This is just one example of the abstractions from Numpy that I am looking for. Do things like this simply have to be reimplemented manually when using the GSL? I note that the GSL provides for things like:

`double gsl_matrix_min (const gsl_matrix * m)`

But that simply provides the minimum value of the entire matrix. Regardless of element-wise comparisons, it doesn't even seem possible to report the minimum along a particular axis of a single matrix using the GSL. That surprises me.

Are my expectations misplaced?

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You can implement an element-wise minimum easily in Armadillo, via the find() and .elem() functions:

``````mat A; A.randu(5,5);
mat B; B.randu(5,5);

umat indices = find(B < A);

mat C = A;
C.elem(indices) = B.elem(indices);
``````

For other functions that are not present in Armadillo, it might be possible to interface Armadillo matrices with GSL functions, through the .memptr() function.

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As I noted, neither Armadillo nor Eigen have all of the features I need. I did play with Eigen (similar to Armadillo, I would think) and it was very easy to get the reductions I need. However, I'll need GSL for the balance. I will take a look at .memptr() and report back. –  ph0t0n Oct 5 '13 at 23:26
Followed your link. This definitely applies to me! "Obtain a raw pointer to the memory used for storing elements. Not recommended for use unless you know what you're doing!" –  ph0t0n Oct 5 '13 at 23:28