Is it better to use sqrt or ^(1/2) ?
24 visualizzazioni (ultimi 30 giorni)
Mostra commenti meno recenti
In order to have better performance in terms of computational time, is it better to use sqrt or ^(1/2) ?
0 Commenti
Risposta accettata
KSSV
il 15 Mar 2016
Modificato: per isakson
il 3 Giu 2017
clc; clear all
N = 10:10:100000;
t_sqrt = zeros(length(N),1) ;
t_pow = t_sqrt ;
for i = 1:length(N)
k = rand(N(i),1) ;
t1 = tic ;
k1 = sqrt(k) ;
t_sqrt(i) = toc(t1) ;
%
t2 = tic ;
k2 = k.^0.5 ;
t_pow(i) = toc(t2) ;
end
figure
plot(t_sqrt,'r') ;
hold on
plot(t_pow,'b') ;
legend('sqrt','power')
You may check yourself.....power (^) is taking less time.
2 Commenti
Walter Roberson
il 3 Giu 2017
My tests suggest that sqrt() is faster, except maybe on some very small vectors.
Note: it will take a while to execute the below as it tests over a range of sizes.
N = round(logspace(2,7,500));
t_sqrt = zeros(length(N),1) ; t_sqrt1 = t_sqrt; t_pow = t_sqrt; t_pow1 = t_sqrt;
data = rand(1,max(N));
for i = 1 : length(N); k = data(1,1:N(i)); t_sqrt(i) = timeit(@() sqrt(k),0); t_pow(i) = timeit(@() k.^(1/2), 0); end
for i = 1 : length(N); k = data(1,1:N(i)); t_sqrt1(i) = timeit(@() sqrt(k),0); end; for i = 1 : length(N); k = data(1,1:N(i)); t_pow1(i) = timeit(@() k.^(1/2),0); end
plot(N,t_sqrt,'r-',N,t_sqrt1,'r--', N,t_pow,'b-', N,t_pow1, 'b--')
legend({'sqrt, combined loop', 'sqrt, separate loops', 'pow, combined loops', 'pow, separate loop'} )
I originally had only the combined loop, and smaller upper bounds, but I noticed some oddities in the timings for which the timings were sometimes shorter in synchronized ways. That suggested that some iterations might happen to execute faster than others by chance, so I decided to also run the loops independently to see whether the timing oddities stayed with the array sizes or were instead independent between the separated attempts. The tests did end up suggesting that the timing oddities were related to array sizes. Likely at the point where MATLAB starts handing over the work to BLAS or MLK or LINPACK or whatever, the iterations get relatively faster.
Più risposte (1)
Amarpreet
il 8 Set 2023
Both these operations result in different values when operated on a matrix, so that may also be considered while using the functions.sqrt gives square root of each element, while the pow function operates on the whole matrix.
2 Commenti
Walter Roberson
il 8 Set 2023
N = 5:5:100;
t_sqrt = zeros(length(N),1) ; t_sqrt1 = t_sqrt; t_pow = t_sqrt; t_pow1 = t_sqrt;
data = rand(max(N));
for i = 1 : length(N); k = data(1:N(i),1:N(i)); t_sqrt(i) = timeit(@() sqrtm(k),0); t_pow(i) = timeit(@() k^(1/2), 0); end
for i = 1 : length(N); k = data(1:N(i),1:N(i)); t_sqrt1(i) = timeit(@() sqrtm(k),0); end; for i = 1 : length(N); k = data(1:N(i),1:N(i)); t_pow1(i) = timeit(@() k^(1/2),0); end
plot(N,t_sqrt,'r-',N,t_sqrt1,'r--', N,t_pow,'b-', N,t_pow1, 'b--')
legend({'sqrt, combined loop', 'sqrt, separate loops', 'pow, combined loops', 'pow, separate loop'} )
Vedere anche
Categorie
Scopri di più su Loops and Conditional Statements in Help Center e File Exchange
Prodotti
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!