How to adapt my loop to get it working with parfor of matlab?

I am quite new to Matlab. I use parfor loop to do an extremely time-consuming task. See the snippet below. However, I got the error info from Matlab. Can anyone help? I read the document about parfor but do not see what to do...

Thank you.

``````The parfor loop cannot run due to the way variable "M" is used

The parfor loop cannot run due to the way variable "T" is used

Explanation
MATLAB runs loops in parfor functions by dividing the loop iterations into groups, and then sending them to MATLAB workers where they run in parallel. For MATLAB to do this in a repeatable, reliable manner, it must be able to classify all the variables used in the loop. The code uses the indicated variable in a way that is incompatible with classification.

parfor i=1:size(x,1)

if (ind(index(i)) == Index1)
para=lsqcurvefit(F, [M(index(i)) T(index(i))], t, SS(ind(index(i)):end,i), [0 0], [MaxiM(index(i)) maxT],options);
elseif  (ind(index(i)) == Index2)
para=lsqcurvefit(F, [M(index(i)) T(index(i))], t2, SS(ind(index(i)):end,i), [0 0], [MaxiM(index(i)) maxT],options);
end

end
``````
-
I assume `para` is the result of your calculations. If you ran your code in serial mode, para would be overwritten at each step, so I can't see how you could possibly run it in parallel. How does your serial loop look? –  Kleist Feb 16 '13 at 13:17
@Kleist: fortunately, this is easily fixed by wrinting e.g. `para{i}=...` –  Jonas Feb 16 '13 at 19:36

You should reorganize `M` and `T` in order to use them in a parallel loop. This should work:

``````M = M(index);
T = T(index);
parfor i=1:size(x,1)
if (ind(index(i)) == Index1)
para = lsqcurvefit(F, [M(i) T(i)], t, SS(ind(index(i)):end,i), ...
[0 0], [MaxiM(index(i)) maxT], options);
elseif (ind(index(i)) == Index2)
para = lsqcurvefit(F, [M(i) T(i)], t2, SS(ind(index(i)):end,i), ...
[0 0], [MaxiM(index(i)) maxT], options);
end
end
``````

However, if you need return of function `lsqcurvefit` - then I would agree with the comment by Kleist that your code is meaningless.

UPDATE:

You can try to do similar rearrangements to further increase performance:

``````M = M(index);
T = T(index);
ind = ind(index);
MaxiM = MaxiM(index);
parfor i=1:size(x,1)
if (ind(i) == Index1)
para = lsqcurvefit(F, [M(i) T(i)], t, SS(ind(i):end,i), ...
[0 0], [MaxiM(i) maxT], options);
elseif (ind(i) == Index2)
para = lsqcurvefit(F, [M(i) T(i)], t2, SS(ind(i):end,i), ...
[0 0], [MaxiM(i) maxT], options);
end
end
``````
-
Hi, it works. However, the performance enhancement is only 30%. Is that normal? –  zell Feb 18 '13 at 19:51
@zell: See update for my post. –  miy Feb 18 '13 at 21:02
@zell: 30% is on 2 cores? In general - you should use arrays in a parfor loop in a way that would allow them to be sliced between workers. –  miy Feb 18 '13 at 21:16
@zell: the last version of the code probably can be further improved (in terms of performance) by rearranging `SS` array. –  miy Feb 18 '13 at 21:25