The Flop (Floating Point Operations per Second) Rate of MATLAB Code

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Hello, I know Intel MKL / IPP libraries performance in simple operations (Multiplication, Summation, Matrix Multiplication, Vector Multiplication) gets something like 80-95% of the theoretical performance of the CPU (Measured in FLOPS).
Yet, doing so using MATLAB I get much worse results.
I have this simple script:
numElements = 2 ^ 16;
numIter = 100;
vecX = randn(numElements, 1, 'single');
vecY = randn(numElements, 1, 'single');
initTime = tic();
for ii = 1:numIter
vecX .* vecY;
end
stopTime = toc(initTime);
gFlops = (numElements * numIter) / stopTime
Yet I get only 1.1 GFLOPS on my i7-860 Which should be closer to 2.8GHz (Frequency) * 4 (Cores) * 4 (Single Precisio Operations per Cycle as SSE Vector - 128 Bit) = 44.8 GFLOPS.
Yet I get something like 1.4 GFLOPS. Which is only 3% of the theoretical performance.
How can MATLAB be so inefficient?
  2 Comments
Amit
Amit on 28 Jan 2014
BTW, MATLAB is only using 1 core, I'd believe. And for a benchmark, is there anything else running besides MATLAB?

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Accepted Answer

Amit
Amit on 28 Jan 2014
Edited: Amit on 28 Jan 2014
I don't think the way you're trying to calculate flops here is right. Even if one assumes that you can calculate Flops like this, you're missing out many overheads that matlab is doing. For example, try something like this:
numElements = 2 ^ 18;
numIter = 100;
vecX = randn(numElements, 1, 'single');
vecY = randn(numElements, 1, 'single');
initTime = tic();
% for ii = 1:numIter
% vecX .* vecY;
% end
vecX + vecY; % I used +, but you can switch to .* as well
stopTime = toc(initTime);
gFlops = (numElements * numIter) / stopTime
And see if you see any difference. I am pretty sure you will. Remember, for loop is slow.
  4 Comments
Walter Roberson
Walter Roberson on 16 Jun 2019
tic and toc only provide elapsed time information, which is not the same as the amount of computation done, as elapsed time can include time that the operating system suspended MATLAB in order to work on something else.

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More Answers (1)

Walter Roberson
Walter Roberson on 28 Jan 2014
single() is often slower than double()
Your arrays are not that big; I am not sure that it is kicking in calls to the libraries.
  2 Comments
Royi Avital
Royi Avital on 28 Jan 2014
I tried with doubles and larger vectors. Same result.
Feel free to try yourself and show results with better utilization of the CPU.
Such a pity this software isn't close to take a real advantage of the resources.
Walter Roberson
Walter Roberson on 29 Jan 2014
Try with timeit. Or if you have an older MATLAB that does not have that built-in, you can get timeit from the File Exchange.

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