How to avoid using 'for' loop
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'u' and 'v' are 401*401 matrices and 'R' is a 401*1 matrix. I have a function which gets 'u' and 'v' vectors and one value of 'R' per iteration and calculates the value of the function. Then after that, I have to sum all these values to get the final result. I wish to achieve my goal without using 'for' loop. Is it possible?
Example:
% Initialize 'u', 'v', and 'R' matrices
u = ...; % 401x401 matrix
v = ...; % 401x401 matrix
R = ...; % 401x1 matrix
functionValues =zeros(401,401);
% Calculate the values of the function for each element
for i=1:numel(R)،
functionValues = functionValues + calculateValue(u, v, R(i)); % 401x401 matrix
end
In fact I wish to avoid using 'for' loop to increase running speed.
1 comentario
moh mor
el 22 de Oct. de 2023
Respuestas (2)
Image Analyst
el 22 de Oct. de 2023
0 votos
Just modify youir calculateValue() so that it takes multiple values of R (can handle R being a vector) and returns a vector instead of a single scalar number. Then just call the function -- no for loop needed.
2 comentarios
moh mor
el 22 de Oct. de 2023
Image Analyst
el 22 de Oct. de 2023
Then why not
theSum = 0;
for k = 1 : numel(R)،
theSum = theSum + calculateValue(u, v, R(k)); % 401x401 matrix
end
And I agree with @Dyuman Joshi with only a few iterations (401*401) you'd most likely not notice any difference at all. It might be a different story if you had hundreds of millions of elements.
Dyuman Joshi
el 22 de Oct. de 2023
0 votos
However, this assumes that calculateValue() can be vectorized.
And if it can be, I doubt if you will see any noticeable speed increase by using vectorization instead of using a for loop.
5 comentarios
moh mor
el 22 de Oct. de 2023
moh mor
el 22 de Oct. de 2023
Dyuman Joshi
el 22 de Oct. de 2023
"I have heard that deploying 'for' loop decrease the speed by a huge amount."
No, that is not generally true. If utilized properly, for loops can be faster.
However, Vectorization is faster because MATLAB is optimized for it. But that does not mean for loop are very slow.
On the other hand, if someone writes an inefficient for loop, then it might be slower, but that is because the way the code was written, not due to the nature of the for loop.
"'Sorry, I think sth is misunderstood. functionValues' has the same dimension as 'u' and 'v'. In fact I wish to sum up values of 'functionValues' for different 'R' at each position."
I understood your query perfectly and yes, I know that.
Using a for loop, the sum has to be updated in each iteration, whereas in the case of vectorization, the values are calculated together.
Did you try to vectorize the function calculateValue()?
moh mor
el 22 de Oct. de 2023
Editada: Walter Roberson
el 25 de Oct. de 2023
Dyuman Joshi
el 22 de Oct. de 2023
Editada: Dyuman Joshi
el 25 de Oct. de 2023
@moh mor, is there still a problem?
Does it work properly? And did you check the speed of the two methods for comparison?
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