Function ndarray_rand::rand::random [−][src]
pub fn random<T>() -> T where
Standard: Distribution<T>,
Generates a random value using the thread-local random number generator.
This is simply a shortcut for thread_rng().gen()
. See thread_rng
for
documentation of the entropy source and Standard
for documentation of
distributions and type-specific generation.
Provided implementations
The following types have provided implementations that generate values with the following ranges and distributions:
- Integers (
i32
,u32
,isize
,usize
, etc.): Uniformly distributed over all values of the type. char
: Uniformly distributed over all Unicode scalar values, i.e. all code points in the range0...0x10_FFFF
, except for the range0xD800...0xDFFF
(the surrogate code points). This includes unassigned/reserved code points.bool
: Generatesfalse
ortrue
, each with probability 0.5.- Floating point types (
f32
andf64
): Uniformly distributed in the half-open range[0, 1)
. See notes below. - Wrapping integers (
Wrapping<T>
), besides the type identical to their normal integer variants.
Also supported is the generation of the following compound types where all component types are supported:
- Tuples (up to 12 elements): each element is generated sequentially.
- Arrays (up to 32 elements): each element is generated sequentially;
see also
Rng::fill
which supports arbitrary array length for integer types and tends to be faster foru32
and smaller types. Option<T>
first generates abool
, and if true generates and returnsSome(value)
wherevalue: T
, otherwise returningNone
.
Examples
let x = rand::random::<u8>(); println!("{}", x); let y = rand::random::<f64>(); println!("{}", y); if rand::random() { // generates a boolean println!("Better lucky than good!"); }
If you’re calling random()
in a loop, caching the generator as in the
following example can increase performance.
use rand::Rng; let mut v = vec![1, 2, 3]; for x in v.iter_mut() { *x = rand::random() } // can be made faster by caching thread_rng let mut rng = rand::thread_rng(); for x in v.iter_mut() { *x = rng.gen(); }