Why is it faster to sum a Data.Sequence by divide-and-conquer, even with no parallelism?

I was playing with parallel reduction on a `Data.Sequence.Seq`, and I noticed that divide-and-conquer gives a speed advantage even without parallelism. Does anyone know why?

Here's my code:

``````import qualified Data.Sequence as S
import qualified Data.Foldable as F

import System.Random
import Control.DeepSeq
import Criterion.Main
import Test.QuickCheck
import Control.Exception ( evaluate )

instance (Arbitrary a) => Arbitrary (S.Seq a) where
arbitrary = fmap S.fromList arbitrary

instance NFData a => NFData (S.Seq a) where
rnf = F.foldr seq ()

funs :: [(String, S.Seq Int -> Int)]
funs =
[ ("seqDirect"   , seqDirect)
, ("seqFoldr"    , seqFoldr)
, ("seqFoldl'"   , seqFoldl')
, ("seqSplit  1" , (seqSplit  1))
, ("seqSplit  2" , (seqSplit  2))
, ("seqSplit  4" , (seqSplit  4))
, ("seqSplit  8" , (seqSplit  8))
, ("seqSplit 16" , (seqSplit 16))
, ("seqSplit 32" , (seqSplit 32)) ]

main :: IO ()
main = do
mapM_ (\(_,f) -> quickCheck (\xs -> seqDirect xs == f xs)) funs
gen <- newStdGen
let inpt = S.fromList . take 100000 \$ randoms gen
evaluate (rnf inpt)
defaultMain [ bench n (nf f inpt) | (n,f) <- funs ]

seqDirect :: S.Seq Int -> Int
seqDirect v = case S.viewl v of
S.EmptyL -> 0
x S.:< xs -> x + seqDirect xs

seqFoldr :: S.Seq Int -> Int
seqFoldr = F.foldr (+) 0

seqFoldl' :: S.Seq Int -> Int
seqFoldl' = F.foldl' (+) 0

seqSplit :: Int -> S.Seq Int -> Int
seqSplit 1 xs = seqFoldr xs
seqSplit _ xs | S.null xs = 0
seqSplit n xs =
let (a, b) = S.splitAt (S.length xs `div` n) xs
sa = seqFoldr a
sb = seqSplit (n-1) b
in  sa + sb
``````

And the results:

``````\$ ghc -V
The Glorious Glasgow Haskell Compilation System, version 7.0.4

\$ ghc --make -O2 -fforce-recomp -rtsopts seq.hs
[1 of 1] Compiling Main             ( seq.hs, seq.o )

\$ ./seq +RTS -s
./seq +RTS -s
+++ OK, passed 100 tests.
+++ OK, passed 100 tests.
+++ OK, passed 100 tests.
+++ OK, passed 100 tests.
+++ OK, passed 100 tests.
+++ OK, passed 100 tests.
+++ OK, passed 100 tests.
+++ OK, passed 100 tests.
+++ OK, passed 100 tests.
warming up
estimating clock resolution...
mean is 5.882556 us (160001 iterations)
found 2368 outliers among 159999 samples (1.5%)
2185 (1.4%) high severe
estimating cost of a clock call...
mean is 85.26448 ns (44 iterations)
found 4 outliers among 44 samples (9.1%)
3 (6.8%) high mild
1 (2.3%) high severe

benchmarking seqDirect
mean: 23.37511 ms, lb 23.01101 ms, ub 23.77594 ms, ci 0.950
std dev: 1.953348 ms, lb 1.781578 ms, ub 2.100916 ms, ci 0.950

benchmarking seqFoldr
mean: 25.60206 ms, lb 25.39648 ms, ub 25.80034 ms, ci 0.950
std dev: 1.030794 ms, lb 926.7246 us, ub 1.156656 ms, ci 0.950

benchmarking seqFoldl'
mean: 10.65757 ms, lb 10.29087 ms, ub 10.99869 ms, ci 0.950
std dev: 1.819595 ms, lb 1.703732 ms, ub 1.922018 ms, ci 0.950

benchmarking seqSplit  1
mean: 25.50376 ms, lb 25.29045 ms, ub 25.71225 ms, ci 0.950
std dev: 1.075497 ms, lb 961.5707 us, ub 1.229739 ms, ci 0.950

benchmarking seqSplit  2
mean: 18.15032 ms, lb 17.62943 ms, ub 18.66413 ms, ci 0.950
std dev: 2.652232 ms, lb 2.288088 ms, ub 3.044585 ms, ci 0.950

benchmarking seqSplit  4
mean: 10.48334 ms, lb 10.14152 ms, ub 10.87061 ms, ci 0.950
std dev: 1.869274 ms, lb 1.690063 ms, ub 1.997915 ms, ci 0.950

benchmarking seqSplit  8
mean: 5.737956 ms, lb 5.616747 ms, ub 5.965689 ms, ci 0.950
std dev: 825.2361 us, lb 442.1652 us, ub 1.232003 ms, ci 0.950

benchmarking seqSplit 16
mean: 3.677038 ms, lb 3.669035 ms, ub 3.685547 ms, ci 0.950
std dev: 42.18741 us, lb 36.57112 us, ub 49.93574 us, ci 0.950

benchmarking seqSplit 32
mean: 2.855626 ms, lb 2.849962 ms, ub 2.862226 ms, ci 0.950
std dev: 31.25475 us, lb 26.49104 us, ub 37.18611 us, ci 0.950
25,154,069,064 bytes allocated in the heap
4,120,506,464 bytes copied during GC
32,344,120 bytes maximum residency (446 sample(s))
4,042,704 bytes maximum slop
78 MB total memory in use (0 MB lost due to fragmentation)

Generation 0: 42092 collections,     0 parallel,  6.57s,  6.57s elapsed
Generation 1:   446 collections,     0 parallel,  2.62s,  2.62s elapsed

INIT  time    0.00s  (  0.00s elapsed)

MUT   time   18.57s  ( 18.58s elapsed)
GC    time    9.19s  (  9.19s elapsed)
EXIT  time    0.00s  (  0.00s elapsed)
Total time   27.76s  ( 27.77s elapsed)

%GC time      33.1%  (33.1% elapsed)

Alloc rate    1,354,367,579 bytes per MUT second

Productivity  66.9% of total user, 66.9% of total elapsed
``````
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This is really weird. Here's another one: `seqTraverse = getSum . T.foldMapDefault Sum` On my machine it performed just a bit slower than the seqSplit 16 case. (And weirdly is was also faster than the `foldMap` implementation I then added myself, which followed the `traverse` code structure exactly.) –  Sjoerd Visscher Oct 23 '11 at 22:31
The sweet spot seems to lie at splitting into groups of about size 1000, make them smaller and you loose performance. –  Sjoerd Visscher Oct 23 '11 at 22:48
@SjoerdVisscher: are you using 32-bit or 64? Also, what's the size of your CPU cache? I would almost certainly bet that this is due to cacheing effects, i.e. a seq of size 1000 can be entirely loaded into the cache on your system. –  John L Oct 24 '11 at 7:28
@JohnL 64-bit, 4 times 256Kb L2 cache. –  Sjoerd Visscher Oct 24 '11 at 8:50
@JohnL: Why would it work that way? Either linear or divide-and-conquer should load each element into the cache exactly once. Do you have a more specific caching story which relates to GHC's layout of heap objects? –  keegan Oct 24 '11 at 18:45

Note: This answer doesn't actually answer the question. It only restates the question in a different way. The precise reason why `Data.Sequence.foldr` slows down as the sequence is getting bigger is still unknown.

``````seqFoldr :: S.Seq Int -> Int
seqFoldr = F.foldr (+) 0
``````

has non-linear performance depending on the length of the sequence. Take a look at this benchmark:

``````./seq-customized +RTS -s -A128M

[Length] [Performance of function seqFoldr]
25000:   mean: 1.096352 ms, lb 1.083301 ms, ub 1.121152 ms, ci 0.950
50000:   mean: 2.542133 ms, lb 2.514076 ms, ub 2.583209 ms, ci 0.950
100000:  mean: 6.068437 ms, lb 5.951889 ms, ub 6.237442 ms, ci 0.950
200000:  mean: 14.41332 ms, lb 13.95552 ms, ub 15.21217 ms, ci 0.950
``````

Using the line with 25000 as a base gives us the following table:

``````[Length] [Performance of function seqFoldr]
1x:      mean: 1.00 = 1*1.00
2x:      mean: 2.32 = 2*1.16
4x:      mean: 5.54 = 4*1.39
8x:      mean: 13.15 = 8*1.64
``````

In the above table, the non-linearity is demonstrated by the series 1.00, 1.16, 1.39, 1.64.

Assuming the initial length of Seq `xs` is 100000 and `n` is 32, your code

``````seqSplit n xs =
let (a, b) = S.splitAt (S.length xs `div` n) xs
sa = seqFoldr a
sb = seqSplit (n-1) b
in  sa + sb
``````

will be passing somewhat shorter Seqs to the function `seqFoldr`. The successive lengths of the Seqs passed from the above code to function `seqFoldr` look like:

``````(length xs)/n = (length a)
--------------------------
100000/32 = 3125
(100000-3125)/31 = 3125
(100000-2*3125)/30 = 3125
...
(100000-30*3125)/2 = 3125
``````

Based on the first part of my answer (where we saw that the performance was non-linear), [32 calls to `seqFoldr` with Seq of length 3125] will execute faster than [1 call to `seqFoldr` with a single Seq of length 32*3125=100000].

Thus, the answer to your question is: Because `foldr` on `Data.Sequence` is slower as the sequence is getting larger.

-
Would be nice to explain why it gets slower with bigger N, and what is `Data.Sequence.foldr`'s big-O complexity. –  Mikhail Glushenkov Oct 26 '11 at 19:04
I agree that my answer is somewhat circular. I would also like to know <code>Data.Sequence.foldr</code>'s complexity. The link I mentioned in my answer say that it is "O(log(min(i,n-i))) for access". –  Atom Oct 26 '11 at 21:54
Yes, for random access, but presumably foldr's access pattern makes it faster. –  Mikhail Glushenkov Oct 27 '11 at 6:15
I don't know. Considering line 284 in file "ghc-7.0.4/libraries/containers/Data/Sequence.hs", how do I print out the successive evaluations so that I can see what Haskell is executing? –  Atom Oct 27 '11 at 8:06
Try `Debug.Trace`. –  Mikhail Glushenkov Oct 27 '11 at 8:08

Try use `foldr'` instead of `foldr`. I bet it is by lazy behavior of `foldr` which leads to allocate thunk for each data in sequence and evaluate on the end.

Edit:

So using `foldr'` halves taken time in mine case but still slower even then `foldl'`. Which means there is some complexity issue in `Data.Sequence.fold*` implementation.

``````benchmarking seqFoldr
collecting 100 samples, 1 iterations each, in estimated 2.516484 s
bootstrapping with 100000 resamples
mean: 24.93222 ms, lb 24.72772 ms, ub 25.15255 ms, ci 0.950
std dev: 1.081204 ms, lb 938.4503 us, ub 1.332666 ms, ci 0.950
found 1 outliers among 100 samples (1.0%)
variance introduced by outliers: 0.999%
variance is unaffected by outliers

benchmarking seqFoldr'
collecting 100 samples, 1 iterations each, in estimated 902.7004 ms
bootstrapping with 100000 resamples
mean: 11.05375 ms, lb 10.68481 ms, ub 11.42519 ms, ci 0.950
std dev: 1.895777 ms, lb 1.685334 ms, ub 2.410870 ms, ci 0.950
found 1 outliers among 100 samples (1.0%)
variance introduced by outliers: 1.000%
variance is unaffected by outliers

benchmarking seqFoldl'
collecting 100 samples, 1 iterations each, in estimated 862.4077 ms
bootstrapping with 100000 resamples
mean: 10.35651 ms, lb 9.947395 ms, ub 10.73637 ms, ci 0.950
std dev: 2.011693 ms, lb 1.875869 ms, ub 2.131425 ms, ci 0.950
variance introduced by outliers: 1.000%
variance is unaffected by outliers
``````
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