For example, the following expression:
r = (rand() % 10)+1;
Generates a random number from
How can we make it generate random numbers from
You're almost there! The
To get values between 0 and 10, you can take
More generally, to get random values in the range [0, n], you can write
And finally, to get values in the range [k, n + k], you can write
Of course, as purists will point out, this isn't necessarily going to give you truly uniform values because modding
You leave out the +1 to start with 0. And since there are 11 different values you want, you need to calculate the remainder modulo 11 instead of 10.
Note that you need to seed a PRNG so it doesn't always produce the same sequence.
And the standard
A Mersenne twister is a popular choice, and in one my projects I used Well512 since it's fast, good and easy to implement.
If the user must not predict the random numbers even those good PRNGs are not enough and you have to choose a cryptographic PRNG. They can neither be predicted (with realistic computational power) nor be distinguished from real random numbers unless you know the seed. They are a bit slower though.
Generating a uniform distribution is much simpler and less error prone in C++11 using std::uniform_real_distribution or for the integer case std::uniform_int_distribution. Here is a sample using std::uniform_real_distribution which displays a simple graphic to give a rough demonstration that it is uniform:
Some of the sample code was taken from this reference.