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I have a web server written in Haskell that computes some data in multiple steps.

I want to accurately measure and display how long each action takes.

In the presence of laziness, what is a good way to do this?

Note that "benchmarking" is not quite the right terminology since I only only want to measure time in a production system and not sample many runs. I know that for that case I can use criterion.

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1 Answer 1

You can use force from Control.DeepSeq to fully evaluate a data structure (and thus demand and measure its computation).

One problem is that forcing a large data structure takes some time itself!

This is because a deepseq (used by force) will walk down your algebraic data type tree, visiting every node (but not doing anything with it).

When you perform only a cheap operation to each node, such as map (*2) mylist, and try to measure how long it takes, this overhead can suddenly become significant, messing up your measurements.

import Control.DeepSeq
import Control.Exception (evaluate)
import Data.Time (diffUTCTime, getCurrentTime)

-- | Measures how long a computation takes, printing both the time and the
-- overhead of `force` to stdout. So it forces *twice*.
benchmarkForce :: NFData a => String -> IO a -> IO a
benchmarkForce msg action = do
    before <- getCurrentTime

    -- Force the first time to measure computation + forcing
    result <- evaluate . force =<< action

    after <- getCurrentTime

    -- Force again to see how long forcing itself takes
    _ <- evaluate . force $ result

    afterAgain <- getCurrentTime
    putStrLn $ msg ++ ": " ++ show (diffTimeMs before after) ++ " ms"
                   ++ " (force time: " ++ show (diffTimeMs after afterAgain) ++ " ms)"
    return result

        -- Time difference `t2 - t1` in milliseconds
        diffTimeMs t1 t2 = realToFrac (t2 `diffUTCTime` t1) * 1000.0 :: Double

The first evaluate . force run will make sure your action and its return value are evaluated entirely.

By doing a second force run over the result, we can measure how much overhead it added to the first traversal.

This of course comes at the expense of two traversals; being able to measure how much time a deepseq wastes requires you to waste that time twice.

Here is an example to measure some pure functions with that:

main :: IO ()
main = do

    l <- benchmarkForce "create list" $
        return [1..10000000 :: Integer]

    _ <- benchmarkForce "double each list element" $
        return $ map (*2) l

    _ <- benchmarkForce "map id l" $
        return $ map id l

    return ()

(Of course it also works with functions in IO.)

The output:

create list: 1091.936 ms (force time: 71.33200000000001 ms)
double each list element: 1416.0569999999998 ms (force time: 96.808 ms)
map id l: 484.493 ms (force time: 67.232 ms)

As we can see, the force creates around 13% overhead in the map id l case.

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My chronograph package can be used to measure evaluation times in the presence of laziness. Unfortunately the force time is included in the measurement, and as you point out, it can be significant. –  John L Sep 5 '13 at 19:21

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