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I am printing some data from a C++ program to be processed/visualized by ParaView, but I am having a problem with floating point numbers. Paraview supports both Float32 and Float64 data types. Float64 is equivalent to double with the typical limits +/-1.7e +/- 308. But, my code is printing numbers like 6.5e-318. This is throwing errors in ParaView when reading the data. I have verified that rounding those smalls numbers to zero make the errors in ParaView disappear. I am not sure why I have such "high precision" output, maybe is because some numbers are stored in higher precision than double. For example, the following code reproduces the same behavior on my system:

#include <iostream>
int main(void)
  const double var1 = 1.0e-318, var2 = 1.5e-318;
  std::cout << 1.0e-318 << std::endl; 
  std::cout << var1 << std::endl; 
  std::cout << var1 - var2 << std::endl; 
  std::cout.setf(std::ios_base::fixed | std::ios_base::scientific, std::ios_base::floatfield);
  std::cout << 1.0e-318 << std::endl; 
  std::cout << var1 << std::endl; 
  std::cout << var1 - var2 << std::endl; 

  return 0;

My output is:


My system is a Mac OS X Snow Leopard and I tested the above with GCC 4.2 and GCC 4.6 with the flags -m32, -m64 and -ffloat-store (not sure if this is useful).

Actually the output for me is fine, but for ParaView is not. I just want to know why I have this difference. I am very likely ignoring something related with floating point numbers which could be important. Could you please please give me some clue about this output/numerical behavior for doubles?

share|improve this question
What's exactly is a problem here? I can't see any difference between before and after. 1.0e-318 actually IS 9.99999e-319 – GreenScape Sep 30 '11 at 14:20
@GreenScape: The problem seems to be that normal doubles only go down to ~2.2e-308, and that all other results are denormalized floats, going down to ~4.9e-324. A lot of programs see to not understand denormalized floats. – PlasmaHH Sep 30 '11 at 14:28
up vote 11 down vote accepted

Subnormal numbers, i.e. numbers with the smallest-possible exponent and leading zeros in the fraction, can be smaller than 1E-308, down to 1E-324. You can probably filter them out using std::numeric_limits.

share|improve this answer
Yes, I think that could be the solution, by making a comparison between the actual double minimum and the current number. Thanks for pointing out the info about subnormals numbers. – iluvatar Sep 30 '11 at 19:37

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