To check my C++ code, I would like to be able to let Boost::Random and Matlab produce the same random numbers.

So for Boost I use the code:

```
boost::mt19937 var(static_cast<unsigned> (std::time(0)));
boost::uniform_int<> dist(1, 6);
boost::variate_generator<boost::mt19937&, boost::uniform_int<> > die(var, dist);
die.engine().seed(0);
for(int i = 0; i < 10; ++i) {
std::cout << die() << " ";
}
std::cout << std::endl;
```

Which produces (every run of the program):

`4 4 5 6 4 6 4 6 3 4`

And for matlab I use:

```
RandStream.setDefaultStream(RandStream('mt19937ar','seed',0));
randi(6,1,10)
```

Which produces (every run of the program):

`5 6 1 6 4 1 2 4 6 6`

Which is bizarre, since both use the same algorithm, and same seed. What do I miss?

It seems that Python (using numpy) and Matlab seems comparable, in the random uniform numbers: Matlab

RandStream.setDefaultStream(RandStream('mt19937ar','seed',203));rand(1,10)

`0.8479 0.1889 0.4506 0.6253 0.9697 0.2078 0.5944 0.9115 0.2457 0.7743`

Python: random.seed(203);random.random(10)

```
array([ 0.84790006, 0.18893843, 0.45060688, 0.62534723, 0.96974765,
0.20780668, 0.59444858, 0.91145688, 0.24568615, 0.77430378])
```

C++Boost

`0.8479 0.667228 0.188938 0.715892 0.450607 0.0790326 0.625347 0.972369 0.969748 0.858771`

Which is identical to ever other Python and Matlab value...