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Is it possible to get 3-6x speedup from the following simple class?

I am trying to make a class that pretends to be an inline function but the parenthesis/subsref operator overloading doesn't go fast enough for me.

I created the class CTestOp to replace the inline function f = @(x) A*x by letting subsref take a vector and multiplying it against the class property A.

Benchmarks indicate that for small size A and x (say, m=5) it takes 4-7x as long to use the inline function as to just write A*x and it takes 4-7x as long to use the class as to use the inline function:

Elapsed time is 0.327328 seconds for the class
Elapsed time is 0.053322 seconds for the inline function.
Elapsed time is 0.011704 seconds for just writing A*x.

I have made a series of improvements to get here but there are problems. I can see substantial gains, for instance, by not asking for this.A but then that defeats the whole purpose. I would have liked to use an abstract class that allows us to write various operation functions---but while making the class abstract didn't add much time at all, making the actual function call did.

Any ideas?

The class is:

classdef CTestOp < handle

        A = [];

        function this = CTestOp(A)
            this.A = A;

        function result = operation(this, x)
            result = this.A*x;

        function result = subsref(this, S)

%             switch S.type
%                 case '()'
                    %   result = this.operation(S.subs{1});  % Killed because this was really slow
                    %   result = operation(this, S.subs{1}); % I wanted this, but it was too slow
                    result = this.A*S.subs{1};
%                 otherwise
%                     result = builtin('subsref', this, S);
%             end



While the test code is:

m = 5;
A = randn(m,m);
x = randn(m,1);

f = @(x) A*x;

myOp = CTestOp(A);

nc = 10000;

% Try with the class:
for ind  = 1:nc
r_abs = myOp(x);

% Try with the inline function:
for ind = 1:nc
r_fp = f(x);

% Try just inline. so fast!
for ind = 1:nc
r_inline = A*x;
share|improve this question
I'm convinced that performance and OO are mutually exclusive in matlab – slayton Jan 30 '13 at 1:55
Check out this article… if you have not already done so. – Navan Jan 30 '13 at 2:14
@slayton: With OOP it's like with the rest of Matlab: Avoid lots and lots of unnecessary function/method calls. Doing OOP in Matlab like you'd do in Java or C++ (i.e. many classes with lots of small methods that call one another) won't be efficient. – Jonas Jan 30 '13 at 3:07
@Navan is exactly right - in particular, note that you're using dot-reference method invocation which is slower than function-call-style invocation. (i.e. you're using obj.method() rather than method(obj) - internally, for the first style, MATLAB first has to check if you mean to index obj rather than call a function on it (yes, even if you put the parens there)). – Edric Jan 30 '13 at 8:29
up vote 1 down vote accepted

If you want to write fast code in Matlab, the trick was always to vectorize the code. The same holds for using Matlab OO. Though I am unable to test it at the moment I am quite confident that you can reduce the overhead by performing one big operation rather than many small ones.

In your specific example, you can run the benchmark again and see if my statement actually holds by changing these two lines:

m = 500; % Work with one big matrix rather than many tiny ones

nc = 99; % Just some number that should give you reasonable run times
share|improve this answer
In this case I chose a small dimension to isolate and measure the overhead. It is true we can reduce the percent time spent on overhead but the hope is to remove actual overhead rather than just saying it is irrelevant. – Steve Feb 5 '13 at 18:43
@Steve that is correct, but if your big matrix contains the information of all those small matrices together it is also possible to reduce the total overhead in ms. – Dennis Jaheruddin Feb 6 '13 at 8:56

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