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    copied!<p>I can't really comment on specific libraries, but in principle there's little reason for such operations to be slower in Java. Hotspot generally does the kinds of things you'd expect a compiler to do: it compiles basic math operations on Java variables to corresponding machine instructions (it uses SSE instructions, but only one per operation); accesses to elements of an array are compiled to use "raw" MOV instructions as you'd expect; it makes decisions on how to allocate variables to registers when it can; it re-orders instructions to take advantage of processor architecture... A possible exception is that as I mentioned, Hotspot will only perform one operation per SSE instruction; in principle you could have a fantastically optimised matrix library that performed multiple operations per instruction, although I don't know if, say, your particular FORTRAN library does so or if such a library even exists. If it does, there's currently no way for Java (or at least, Hotspot) to compete with that (though you could of course write your own native library with those optimisations to call from Java).</p> <p>So what does all this mean? Well:</p> <ul> <li>in principle, it is worth hunting around for a better-performing library, though unfortunately I can't recomend one</li> <li>if performance is really critical to you, I would consider just coding your own matrix operations, because you may then be able perform certain optimisations that a library generally can't, or that a particular library your using doesn't (if you have a multiprocessor machine, find out if the library is actually multithreaded)</li> </ul> <p>A hindrance to matrix operations is often data locality issues that arise when you need to traverse both row by row and column by column, e.g. in matrix multiplication, since you have to store the data in an order that optimises one or the other. But if you hand-write the code, you can sometimes <strong>combine operations to optimise data locality</strong> (e.g. if you're multiplying a matrix by its transformation, you can turn a column traversal into a row traversal if you write a dedicated function instead of combining two library functions). As usual in life, a library will give you non-optimal performance in exchange for faster development; you need to decide just how important performance is to you.</p>
 

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