why is acumarray much slower calculating means than sum?

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Hi all,
why is acumarray much slower calculating means than sum?
I understand averages are slightly more complex, but I wouldn't expect 20x slower. Here's some code:
ind = randi([1,100],1000000,1);
dat = randn(1e6,1);
f_mean = @() accumarray(ind,dat,[],@mean);
f_sum = @() accumarray(ind,dat,[],@sum);
>> timeit(f_mean)
ans =
0.0562
>> timeit(f_sum)
ans =
0.0028
If I benchmark taking averages and sums using the following code, I get approximately only twice as slow using averages vs sum:
tic;
for jj = 1:1000
x = randn(100,1);
mean(x);
end
toc
Elapsed time is 0.005451 seconds.
tic;
for jj = 1:1000
x = randn(100,1);
sum(x);
end
toc
Elapsed time is 0.002414 seconds.
  2 Commenti
Walter Roberson
Walter Roberson il 9 Ago 2022
You are right, it is slower by a fair bit.
ind = randi([1,100],1000000,1);
dat = randn(1e6,1);
f_mean = @() accumarray(ind,dat,[],@mean);
f_sum = @() accumarray(ind,dat,[],@sum);
N = 50;
tm = zeros(N,1); ts = zeros(N,1);
for K = 1 : N; t0 = tic; f_mean(); tend = toc(t0); tm(K) = tend; end
for K = 1 : N; t0 = tic; f_sum(); tend = toc(t0); ts(K) = tend; end
plot([tm, ts]);
legend({'mean', 'sum'})
mean(tm) ./ mean(ts)
ans = 16.7634

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Risposta accettata

Bruno Luong
Bruno Luong il 9 Ago 2022
Modificato: Bruno Luong il 9 Ago 2022
The default behavior of accumarray is sum and it's low-level coded.
When you pass user-defined function MATLAB will call the function and the overhead is significan't slower.
i=randi(10,1e6,1);
v=rand(size(i));
tic; accumarray(i,v); toc
Elapsed time is 0.008750 seconds.
tic; accumarray(i,v,[],@sum); toc % smart parsing
Elapsed time is 0.007060 seconds.
tic; accumarray(i,v,[],@(x) sum(x)); toc % % smart parsing stops here
Elapsed time is 0.090754 seconds.
The faster way to compute mean is
tic; meanv = accumarray(i,v)./accumarray(i,1); toc
Elapsed time is 0.007861 seconds.
tic; meanv = accumarray(i,v,[],@mean); toc
Elapsed time is 0.087376 seconds.
  2 Commenti
Christine Tobler
Christine Tobler il 10 Nov 2022
That's it exactly. Specifically, @sum, @min and @max are special-cased in accumarray nowadays.
These are able to be faster than an unkonwn function handle for one thing because we have built them in explicitly, but also because we don't need to know all the elements in a bin ahead of time. We can do something like this:
ind = [1;2;2];
var = [2;3;5];
out = zeros(max(ind), 1);
for i=1:length(ind)
out(ind(i)) = out(ind(i)) + var(i);
end
This wouldn't work for a function handle like @sort, where we need to first find all the elements in a bin and then apply the function handle.
@mean is an interesting in-between case, where we can't use the same technique as for the three function handles above, but could still get some performance from a special-case threatment. We have added it to our tracker of potential enhancements.
Bruno Luong
Bruno Luong il 10 Nov 2022
IMO one thing that is missing in basic MATLAB is argmin/argmax on finite set, meaning function that returns the second output of min/max functions as main output.
I could argue the same argmin/argmax as accumarray special treated function would be useful (it should returns the row index of the first argument of accumarray, not the index within the group)

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Più risposte (1)

Matt J
Matt J il 9 Ago 2022
Modificato: Matt J il 9 Ago 2022
I suspect it is because, when you pass in @sum, accumarray is smart enough to recognize that it can use its default settings, which are implemented in a less generic and well-optimized way.The timing comparisons below support this.
Note, in any case, that the speed differences have nothing to do with the complexities of the summation and mean operations themselves. When we specify summation using an anonymous function, we get the same slow speed as with @mean.
ind = randi([1,100],1000000,1);
dat = randn(1e6,1);
f_mean = @() accumarray(ind,dat,[],@mean);
f_sum = @() accumarray(ind,dat,[],@sum);
f_sumAnon = @() accumarray(ind,dat,[],@(x) sum(x));
f_sumDefault = @() accumarray(ind,dat);
timeit(f_mean)
ans = 0.0790
timeit(f_sumAnon)
ans = 0.0781
timeit(f_sumDefault)
ans = 0.0033
timeit(f_sum)
ans = 0.0033
  2 Commenti
Matt J
Matt J il 9 Ago 2022
Modificato: Matt J il 9 Ago 2022
If you wish to do a more optimized group-wise mean, you can implement it this way:
ind = randi([1,100],1000000,1);
dat = randn(1e6,1);
f_mean = @() accumarray(ind,dat)./accumarray(ind,1);
timeit(f_mean)
ans = 0.0067
dleal
dleal il 9 Ago 2022
thanks for your answer Matt! very helpful

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