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So, I'm finding the Eigen package crashes when I try to declare a matrix larger than 10000x10000. I need to declare a matrix like this.. about 13000x13000 elements reliably. I ran a test like:

for( int tortureEigen = 1 ; tortureEigen < 50000 ; tortureEigen++ )
{
  printf( "Torturing Eigen with %dx%d..\n", tortureEigen, tortureEigen ) ;
  Eigen::MatrixXd m( tortureEigen, tortureEigen ) ;
}

Crashes on my machine (6 GB RAM) at 14008 elements.

I'm kind of disappointed! I thought Eigen was like MATLAB or octave and should not crash using larger arrays, even if it does hit the disk or something..

And what's more is when I run this test and keep TaskMan open, the process that is creating these matrices doesn't even use that much memory. TaskMan reports under 2k usage.

Using Eigen 2.0.15 stable release

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2  
Did you get any error messages along with that crash? Were you able to trap it in a debugger? If we had more information, we might be able to help. OTOH, my gut says this is a question for the Eigen mailing list. –  Michael Kristofik Aug 10 '10 at 13:43
    
The crash happens with _aligned_malloc returning 0 in the Eigen alloc code (MatrixXd::resize()) –  bobobobo Aug 14 '10 at 16:30
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4 Answers

Out of the Eigen doc:

Dense versus sparse: This Matrix class handles dense, not sparse matrices and vectors. For sparse matrices and vectors, see the Sparse module.
Dense matrices and vectors are plain usual arrays of coefficients. All the coefficients are stored, in an ordinary contiguous array. This is unlike Sparse matrices and vectors where the coefficients are stored as a list of nonzero coefficients.

Lets see, 10000x10000x8 (double-Matrix) makes about 1.5GB . Thats about the maximum size of a continuos heap block under a 32bit os, one would expect. Try sparse matrixes.

If you really need such large dense matrixes, then you have got quite some other problems: Will the calculation end before the next power outage?

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I must be crazy here but 10000*10000*8 byte = 762.9 MB. At 14000 however, is where it corresponds to 1.5GB –  Dat Chu Aug 10 '10 at 14:47
    
dat chu, you are right. calculated with 14000 and wrote 10000, oh my –  Markus Kull Aug 10 '10 at 17:29
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Given the specs of your hard-ware I can only assume you are running on a 64 bit OS.

You can still crash even if memory gets paged out to the page file. It might mean memory is fragmented, or that your page file is still too small. If so, you should bump up your page file to something pretty big like 8 or 12 GB's or so.

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I'd say memory fragmentation is unlikely. It isn't easy to fragment a 64 bit address space so badly that no continuous 1.5 GB block is free. –  nikie Aug 10 '10 at 14:22
    
Your probably right. It is far less likely though. But more likely is that the paging file is too small. –  C Johnson Aug 15 '10 at 1:51
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eigen developer here. You'd be far better off asking Eigen questions on our support channels e.g. forum... ;-)

Short answer: are you using fixed or dynamic-size matrices?

  • if fixed-size, switch to dynamic-size (for such huge sizes, it's a no-brainer anyway)

  • if you're getting the bug with dynamic-sized matrices, I'm suprised but at the same time I can see where the value 10000 comes from. In any case, if you upgrade to eigen3 (the development branch), your problem will be gone.

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Thanks for signing up! Unfortunately this did not work for me - see my response below –  bobobobo Aug 14 '10 at 16:30
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up vote 3 down vote accepted

All the answers here are helpful!

It turns out that when compiled as a 32-bit app, Eigen will crash if you try and declare a dense MatrixXd, as I was, larger than 14000 elements or so. The crash happens with _aligned_malloc returning 0 in the Eigen alloc code (MatrixXd::resize()), meaning 1.5GB of contiguous, aligned RAM couldn't be allocated under 32-bit, which makes sense, since this is getting close to half the maximum addressable memory loc. Finding more than 1.5 GB contiguous out of 4.0 becomes really unlikely, I suppose! Upgrading to Eigen 3.0 unfortunately does not solve the problem.

Solution #1

Ok then, so I compiled in 64-bit, and on my 6GB machine, the program runs successfully, with the dense MatrixXd allocation and solution working just fine.

Solution #2

Another solution is using a DynamicSparseMatrix<double>. Sparse does not crash on huge size alloc, even as 32 bit app, but API support for solving is another story (API seems to want to convert to MatrixXd dense type in order to solve, which leaves us with the same original problem.)

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on Windows 32-bit, the 4GB virtual address space is divided in two, one half for the kernel, the other half for user-mode applications (unless you use the /3GB switch, which gives you an extra one gig). So with 1.5GB you are getting pretty close to the limit of 2GB. Remember that you need contiguous block of memory for dense matrices, and with other modules and shared libraries loaded with the process working against you as they further fragment the address space. Here is an interesting read: blogs.technet.com/b/markrussinovich/archive/2008/11/17/… –  Amro Aug 23 '13 at 22:07
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