141 reputation
210
bio website
location
age
visits member for 2 years, 9 months
seen Nov 24 '13 at 19:03

Jul
2
awarded  Curious
Jun
4
awarded  Nice Question
Mar
9
awarded  Popular Question
Feb
12
awarded  Notable Question
Nov
25
awarded  Popular Question
Nov
6
awarded  Notable Question
Sep
26
awarded  Popular Question
Aug
23
awarded  Commentator
Aug
23
comment Largest Seed Possible for Mersenne Twister c++
Some system specs are: Scientific Linux release 6.4 (Carbon) with gcc version 4.7.2 20121015 (Red Hat 4.7.2-5) (GCC) using devtoolset-1.1-1-13.el6.noarch.
Aug
23
comment Largest Seed Possible for Mersenne Twister c++
How do I check which version of stdlib I have?
Aug
23
asked Largest Seed Possible for Mersenne Twister c++
Aug
23
accepted Saving Random Number Generator State in C++11
Aug
21
asked Saving Random Number Generator State in C++11
Aug
18
comment C++ Random Number Generation Using Mersenne Twister
std::mt19937 works perfectly, but the other suggestions do not. When I type gcc -v I get: Target: x86_64-redhat-linux, gcc version 4.4.7 20120313 (Red Hat 4.4.7-3) (GCC)
Aug
18
comment C++ Random Number Generation Using Mersenne Twister
yes, both computers are 64 bit however, on my laptop I'm using Microsoft Visual Studio 2012 whereas I'm compiling at command line on my other machine, which runs linux
Aug
18
asked C++ Random Number Generation Using Mersenne Twister
Aug
16
asked Basic c++ constructor notation
Aug
16
accepted Converting a random number generator from matlab to C
Aug
16
accepted Random Number Generator Matlab with Multiple CPUs
Aug
9
comment Random Number Generator Matlab with Multiple CPUs
Unfortunately that does not work. When I run the script over and over again it does indeed give different output. However, each random number generated inside the parfor loop is not independent. For example, the code will generate output numbers such as those shown in an example trial here: 0.7152 -1.2560 0.7152 -0.6342 -1.4328 0.0950 -1.4328 1.3823 1.3823 1.3823. I believe this is because the time that the different cores call rng('shuffle') is basically at the same time.