Safe Haskell | None |
---|---|
Language | Haskell2010 |
Synopsis
- defaultMain :: [Benchmark] -> IO ()
- data Benchmark
- bench :: String -> Benchmarkable -> Benchmark
- bgroup :: String -> [Benchmark] -> Benchmark
- env :: NFData env => IO env -> (env -> Benchmark) -> Benchmark
- envWithCleanup :: NFData env => IO env -> (env -> IO a) -> (env -> Benchmark) -> Benchmark
- data Benchmarkable
- nfIO :: NFData a => IO a -> Benchmarkable
- whnfIO :: IO a -> Benchmarkable
- nf :: NFData b => (a -> b) -> a -> Benchmarkable
- whnf :: (a -> b) -> a -> Benchmarkable
- perBatchEnv :: (NFData env, NFData b) => (Int64 -> IO env) -> (env -> IO b) -> Benchmarkable
- perBatchEnvWithCleanup :: (NFData env, NFData b) => (Int64 -> IO env) -> (Int64 -> env -> IO ()) -> (env -> IO b) -> Benchmarkable
- perRunEnv :: (NFData env, NFData b) => IO env -> (env -> IO b) -> Benchmarkable
- perRunEnvWithCleanup :: (NFData env, NFData b) => IO env -> (env -> IO ()) -> (env -> IO b) -> Benchmarkable
Running benchmarks
defaultMain :: [Benchmark] -> IO () #
An entry point that can be used as a main
function.
import Gauge.Main fib :: Int -> Int fib 0 = 0 fib 1 = 1 fib n = fib (n-1) + fib (n-2) main = defaultMain [ bgroup "fib" [ bench "10" $ whnf fib 10 , bench "35" $ whnf fib 35 , bench "37" $ whnf fib 37 ] ]
Constructing benchmarks
Benchmark
Specification of a collection of benchmarks and environments. A benchmark may consist of:
- An environment that creates input data for benchmarks, created
with
env
. - A single
Benchmarkable
item with a name, created withbench
. - A (possibly nested) group of
Benchmark
s, created withbgroup
.
:: String | A name to identify the benchmark. |
-> Benchmarkable | An activity to be benchmarked. |
-> Benchmark |
Create a single benchmark.
:: String | A name to identify the group of benchmarks. |
-> [Benchmark] | Benchmarks to group under this name. |
-> Benchmark |
Group several benchmarks together under a common name.
:: NFData env | |
=> IO env | Create the environment. The environment will be evaluated to normal form before being passed to the benchmark. |
-> (env -> Benchmark) | Take the newly created environment and make it available to the given benchmarks. |
-> Benchmark |
Run a benchmark (or collection of benchmarks) in the given environment. The purpose of an environment is to lazily create input data to pass to the functions that will be benchmarked.
A common example of environment data is input that is read from a file. Another is a large data structure constructed in-place.
By deferring the creation of an environment when its associated benchmarks need the its, we avoid two problems that this strategy caused:
- Memory pressure distorted the results of unrelated benchmarks. If one benchmark needed e.g. a gigabyte-sized input, it would force the garbage collector to do extra work when running some other benchmark that had no use for that input. Since the data created by an environment is only available when it is in scope, it should be garbage collected before other benchmarks are run.
- The time cost of generating all needed inputs could be significant in cases where no inputs (or just a few) were really needed. This occurred often, for instance when just one out of a large suite of benchmarks was run, or when a user would list the collection of benchmarks without running any.
Creation. An environment is created right before its related
benchmarks are run. The IO
action that creates the environment
is run, then the newly created environment is evaluated to normal
form (hence the NFData
constraint) before being passed to the
function that receives the environment.
Complex environments. If you need to create an environment that contains multiple values, simply pack the values into a tuple.
Lazy pattern matching. In situations where a "real"
environment is not needed, e.g. if a list of benchmark names is
being generated, undefined
will be passed to the function that
receives the environment. This avoids the overhead of generating
an environment that will not actually be used.
The function that receives the environment must use lazy pattern
matching to deconstruct the tuple, as use of strict pattern
matching will cause a crash if undefined
is passed in.
Example. This program runs benchmarks in an environment that contains two values. The first value is the contents of a text file; the second is a string. Pay attention to the use of a lazy pattern to deconstruct the tuple in the function that returns the benchmarks to be run.
setupEnv = do let small = replicate 1000 (1 :: Int) big <- map length . words <$> readFile "/usr/dict/words" return (small, big) main = defaultMain [ -- notice the lazy pattern match here! env setupEnv $ \ ~(small,big) -> bgroup "main" [ bgroup "small" [ bench "length" $ whnf length small , bench "length . filter" $ whnf (length . filter (==1)) small ] , bgroup "big" [ bench "length" $ whnf length big , bench "length . filter" $ whnf (length . filter (==1)) big ] ] ]
Discussion. The environment created in the example above is
intentionally not ideal. As Haskell's scoping rules suggest, the
variable big
is in scope for the benchmarks that use only
small
. It would be better to create a separate environment for
big
, so that it will not be kept alive while the unrelated
benchmarks are being run.
Benchmarkable
data Benchmarkable #
A pure function or impure action that can be benchmarked. The function to
be benchmarked is wrapped into a function (runRepeatedly
) that takes an
Int64
parameter which indicates the number of times to run the given
function or action. The wrapper is constructed automatically by the APIs
provided in this library to construct Benchmarkable
.
When perRun
is not set then runRepeatedly
is invoked to perform all
iterations in one measurement interval. When perRun
is set,
runRepeatedly
is always invoked with 1 iteration in one measurement
interval, before a measurement allocEnv
is invoked and after the
measurement cleanEnv
is invoked. The performance counters for each
iteration are then added together for all iterations.
nfIO :: NFData a => IO a -> Benchmarkable #
Perform an action, then evaluate its result to normal form.
This is particularly useful for forcing a lazy IO
action to be
completely performed.
whnfIO :: IO a -> Benchmarkable #
Perform an action, then evaluate its result to weak head normal
form (WHNF). This is useful for forcing an IO
action whose result
is an expression to be evaluated down to a more useful value.
nf :: NFData b => (a -> b) -> a -> Benchmarkable #
Apply an argument to a function, and evaluate the result to normal form (NF).
whnf :: (a -> b) -> a -> Benchmarkable #
Apply an argument to a function, and evaluate the result to weak head normal form (WHNF).
:: (NFData env, NFData b) | |
=> (Int64 -> IO env) | Create an environment for a batch of N runs. The environment will be evaluated to normal form before running. |
-> (env -> IO b) | Function returning the IO action that should be benchmarked with the newly generated environment. |
-> Benchmarkable |
Create a Benchmarkable where a fresh environment is allocated for every batch of runs of the benchmarkable.
The environment is evaluated to normal form before the benchmark is run.
When using whnf
, whnfIO
, etc. Gauge creates a Benchmarkable
whichs runs a batch of N
repeat runs of that expressions. Gauge may
run any number of these batches to get accurate measurements. Environments
created by env
and envWithCleanup
, are shared across all these batches
of runs.
This is fine for simple benchmarks on static input, but when benchmarking IO operations where these operations can modify (and especially grow) the environment this means that later batches might have their accuracy effected due to longer, for example, longer garbage collection pauses.
An example: Suppose we want to benchmark writing to a Chan, if we allocate
the Chan using environment and our benchmark consists of writeChan env ()
,
the contents and thus size of the Chan will grow with every repeat. If
Gauge runs a 1,000 batches of 1,000 repeats, the result is that the
channel will have 999,000 items in it by the time the last batch is run.
Since GHC GC has to copy the live set for every major GC this means our last
set of writes will suffer a lot of noise of the previous repeats.
By allocating a fresh environment for every batch of runs this function should eliminate this effect.
:: (NFData env, NFData b) | |
=> (Int64 -> IO env) | Create an environment for a batch of N runs. The environment will be evaluated to normal form before running. |
-> (Int64 -> env -> IO ()) | Clean up the created environment. |
-> (env -> IO b) | Function returning the IO action that should be benchmarked with the newly generated environment. |
-> Benchmarkable |
Same as perBatchEnv
, but but allows for an additional callback
to clean up the environment. Resource clean up is exception safe, that is,
it runs even if the Benchmark
throws an exception.
:: (NFData env, NFData b) | |
=> IO env | Action that creates the environment for a single run. |
-> (env -> IO b) | Function returning the IO action that should be benchmarked with the newly genereted environment. |
-> Benchmarkable |
Create a Benchmarkable where a fresh environment is allocated for every run of the operation to benchmark. This is useful for benchmarking mutable operations that need a fresh environment, such as sorting a mutable Vector.
As with env
and perBatchEnv
the environment is evaluated to normal form
before the benchmark is run.
This introduces extra noise and result in reduce accuracy compared to other Gauge benchmarks. But allows easier benchmarking for mutable operations than was previously possible.