108a01d65f | ||
---|---|---|
.. | ||
config | ||
constants | ||
dist | ||
mt19937 | ||
musl | ||
pcg32 | ||
seed | ||
splitmix64 | ||
sys | ||
util | ||
wyrand | ||
README.md | ||
rand.c.v | ||
rand.v | ||
random_identifiers_test.v | ||
random_numbers_test.v |
README.md
Quickstart
The V rand
module provides two main ways in which users can generate pseudorandom numbers:
- Through top-level functions in the
rand
module.import rand
- Import therand
module.rand.seed(seed_data)
to seed (optional).- Use
rand.int()
,rand.u32n(max)
, etc.
- Through a generator of choice. The PRNGs are included in their respective submodules.
import rand.pcg32
- Import the module of the PRNG required.mut rng := pcg32.PCG32RNG{}
- Initialize the struct. Note that themut
is important.rng.seed(seed_data)
- optionally seed it with an array ofu32
values.- Use
rng.int()
,rng.u32n(max)
, etc.
You can change the default generator to a different one. The only requirement is that
the generator must implement the PRNG
interface. See get_current_rng()
and set_rng()
.
For non-uniform distributions, refer to the rand.dist
module which defined functions for
sampling from non-uniform distributions. These functions make use of the global RNG.
Note: The global PRNG is not thread safe. It is recommended to use separate generators for separate threads in multi-threaded applications. If you need to use non-uniform sampling functions, it is recommended to generate them before use in a multi-threaded context.
For sampling functions and generating random strings, see string_from_set()
and other related
functions defined in this top-level module.
For arrays, see rand.util
.
General Background
A PRNG is a Pseudo Random Number Generator. Computers cannot generate truly random numbers without an external source of noise or entropy. We can use algorithms to generate sequences of seemingly random numbers, but their outputs will always be deterministic. This is often useful for simulations that need the same starting seed.
If you need truly random numbers that are going to be used for cryptography,
use the crypto.rand
module.
Guaranteed functions
The following 21 functions are guaranteed to be supported by rand
as well as the individual PRNGs.
seed(seed_data)
whereseed_data
is an array ofu32
values. Different generators require different number of bits as the initial seed. The smallest is 32-bits, required bysys.SysRNG
. Most others require 64-bits or 2u32
values.u32()
,u64()
,int()
,i64()
,f32()
,f64()
u32n(max)
,u64n(max)
,intn(max)
,i64n(max)
,f32n(max)
,f64n(max)
u32_in_range(min, max)
,u64_in_range(min, max)
,int_in_range(min, max)
,i64_in_range(min, max)
,f32_in_range(min, max)
,f64_in_range(min, max)
int31()
,int63()
There are several additional functions defined in the top-level module that rely on the global RNG. If you want to make use of those functions with a different PRNG, you can can change the global RNG to do so.
Seeding Functions
All the generators are time-seeded.
The helper functions publicly available in rand.seed
module are:
time_seed_array()
- returns a[]u32
that can be directly plugged into theseed()
functions.time_seed_32()
andtime_seed_64()
- 32-bit and 64-bit values respectively that are generated from the current time.
Caveats
Note that the sys.SysRNG
struct (in the C backend) uses C.srand()
which sets the seed globally.
Consequently, all instances of the RNG will be affected.
This problem does not arise for the other RNGs.
A workaround (if you must use the libc RNG) is to:
- Seed the first instance.
- Generate all values required.
- Seed the second instance.
- Generate all values required.
- And so on...
Notes
Please note that math interval notation is used throughout
the function documentation to denote what numbers ranges include.
An example of [0, max)
thus denotes a range with all posible values
between 0
and max
including 0 but excluding max
.