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// Copyright 2018 Developers of the Rand project.
//
// Licensed under the Apache License, Version 2.0 <LICENSE-APACHE or
// https://www.apache.org/licenses/LICENSE-2.0> or the MIT license
// <LICENSE-MIT or https://opensource.org/licenses/MIT>, at your
// option. This file may not be copied, modified, or distributed
// except according to those terms.
#![feature(custom_inner_attributes)]
#![feature(test)]
// Rustfmt splits macro invocations to shorten lines; in this case longer-lines are more readable
#![rustfmt::skip]
extern crate test;
const RAND_BENCH_N: u64 = 1000;
use std::mem::size_of;
use test::Bencher;
use rand::prelude::*;
use rand_distr::{weighted::WeightedIndex, *};
// At this time, distributions are optimised for 64-bit platforms.
use rand_pcg::Pcg64Mcg;
macro_rules! distr_int {
($fnn:ident, $ty:ty, $distr:expr) => {
#[bench]
fn $fnn(b: &mut Bencher) {
let mut rng = Pcg64Mcg::from_entropy();
let distr = $distr;
b.iter(|| {
let mut accum = 0 as $ty;
for _ in 0..RAND_BENCH_N {
let x: $ty = distr.sample(&mut rng);
accum = accum.wrapping_add(x);
}
accum
});
b.bytes = size_of::<$ty>() as u64 * RAND_BENCH_N;
}
};
}
macro_rules! distr_float {
($fnn:ident, $ty:ty, $distr:expr) => {
#[bench]
fn $fnn(b: &mut Bencher) {
let mut rng = Pcg64Mcg::from_entropy();
let distr = $distr;
b.iter(|| {
let mut accum = 0.0;
for _ in 0..RAND_BENCH_N {
let x: $ty = distr.sample(&mut rng);
accum += x;
}
accum
});
b.bytes = size_of::<$ty>() as u64 * RAND_BENCH_N;
}
};
}
macro_rules! distr {
($fnn:ident, $ty:ty, $distr:expr) => {
#[bench]
fn $fnn(b: &mut Bencher) {
let mut rng = Pcg64Mcg::from_entropy();
let distr = $distr;
b.iter(|| {
let mut accum = 0u32;
for _ in 0..RAND_BENCH_N {
let x: $ty = distr.sample(&mut rng);
accum = accum.wrapping_add(x as u32);
}
accum
});
b.bytes = size_of::<$ty>() as u64 * RAND_BENCH_N;
}
};
}
macro_rules! distr_arr {
($fnn:ident, $ty:ty, $distr:expr) => {
#[bench]
fn $fnn(b: &mut Bencher) {
let mut rng = Pcg64Mcg::from_entropy();
let distr = $distr;
b.iter(|| {
let mut accum = 0u32;
for _ in 0..RAND_BENCH_N {
let x: $ty = distr.sample(&mut rng);
accum = accum.wrapping_add(x[0] as u32);
}
accum
});
b.bytes = size_of::<$ty>() as u64 * RAND_BENCH_N;
}
};
}
// distributions
distr_float!(distr_exp, f64, Exp::new(1.23 * 4.56).unwrap());
distr_float!(distr_normal, f64, Normal::new(-1.23, 4.56).unwrap());
distr_float!(distr_log_normal, f64, LogNormal::new(-1.23, 4.56).unwrap());
distr_float!(distr_gamma_large_shape, f64, Gamma::new(10., 1.0).unwrap());
distr_float!(distr_gamma_small_shape, f64, Gamma::new(0.1, 1.0).unwrap());
distr_float!(distr_cauchy, f64, Cauchy::new(4.2, 6.9).unwrap());
distr_float!(distr_triangular, f64, Triangular::new(0., 1., 0.9).unwrap());
distr_int!(distr_binomial, u64, Binomial::new(20, 0.7).unwrap());
distr_int!(distr_binomial_small, u64, Binomial::new(1000000, 1e-30).unwrap());
distr_int!(distr_poisson, u64, Poisson::new(4.0).unwrap());
distr!(distr_bernoulli, bool, Bernoulli::new(0.18).unwrap());
distr_arr!(distr_circle, [f64; 2], UnitCircle);
distr_arr!(distr_sphere, [f64; 3], UnitSphere);
// Weighted
distr_int!(distr_weighted_i8, usize, WeightedIndex::new(&[1i8, 2, 3, 4, 12, 0, 2, 1]).unwrap());
distr_int!(distr_weighted_u32, usize, WeightedIndex::new(&[1u32, 2, 3, 4, 12, 0, 2, 1]).unwrap());
distr_int!(distr_weighted_f64, usize, WeightedIndex::new(&[1.0f64, 0.001, 1.0/3.0, 4.01, 0.0, 3.3, 22.0, 0.001]).unwrap());
distr_int!(distr_weighted_large_set, usize, WeightedIndex::new((0..10000).rev().chain(1..10001)).unwrap());
distr_int!(distr_weighted_alias_method_i8, usize, weighted::alias_method::WeightedIndex::new(vec![1i8, 2, 3, 4, 12, 0, 2, 1]).unwrap());
distr_int!(distr_weighted_alias_method_u32, usize, weighted::alias_method::WeightedIndex::new(vec![1u32, 2, 3, 4, 12, 0, 2, 1]).unwrap());
distr_int!(distr_weighted_alias_method_f64, usize, weighted::alias_method::WeightedIndex::new(vec![1.0f64, 0.001, 1.0/3.0, 4.01, 0.0, 3.3, 22.0, 0.001]).unwrap());
distr_int!(distr_weighted_alias_method_large_set, usize, weighted::alias_method::WeightedIndex::new((0..10000).rev().chain(1..10001).collect()).unwrap());
#[bench]
fn dist_iter(b: &mut Bencher) {
let mut rng = Pcg64Mcg::from_entropy();
let distr = Normal::new(-2.71828, 3.14159).unwrap();
let mut iter = distr.sample_iter(&mut rng);
b.iter(|| {
let mut accum = 0.0;
for _ in 0..RAND_BENCH_N {
accum += iter.next().unwrap();
}
accum
});
b.bytes = size_of::<f64>() as u64 * RAND_BENCH_N;
}
macro_rules! sample_binomial {
($name:ident, $n:expr, $p:expr) => {
#[bench]
fn $name(b: &mut Bencher) {
let mut rng = Pcg64Mcg::from_rng(&mut thread_rng()).unwrap();
let (n, p) = ($n, $p);
b.iter(|| {
let d = Binomial::new(n, p).unwrap();
rng.sample(d)
})
}
};
}
sample_binomial!(misc_binomial_1, 1, 0.9);
sample_binomial!(misc_binomial_10, 10, 0.9);
sample_binomial!(misc_binomial_100, 100, 0.99);
sample_binomial!(misc_binomial_1000, 1000, 0.01);
sample_binomial!(misc_binomial_1e12, 1000_000_000_000, 0.2);