Streamly is a Haskell library that provides the building blocks to build
safe, scalable, modular and high performance software. Streamly offers:
- The type safety of Haskell.
- The performance of C programs.
- Powerful abstractions for structuring your code.
- Idiomatic functional programming.
- Declarative concurrency for the seamless use of multiprocessing hardware.
About This Document
This guide introduces programming with Streamly using a few practical
examples:
The guide then looks at how Streamly achieves its
performance. It concludes with a brief
discussion about Streamly's design philosophy, and with suggestions for
further reading.
Getting Started
Installing Streamly
If you wish to follow along with this guide, you will need to have
Streamly installed.
Please see the Getting Started With The Streamly Package
guide for instructions on how to install Streamly.
If you wish to run benchmarks, please be sure to build your
application using the instructions in the Build Guide.
An overview of the types used in these examples
As an expository device, we have indicated the types at the intermediate
stages of stream computations as comments in the examples below.
The meaning of these types are:
- A
SerialT IO a
is a serial stream of values of type a
in the IO Monad.
- An
AsyncT IO a
is a concurrent (asynchronous) stream of values of type
a
in the IO Monad.
- An
Unfold IO a b
is a representation of a function that converts a seed
value of type a
into a stream of values of type b
in the IO Monad.
- A
Fold IO a b
is a representation of a function that converts a stream of
type a
to a final accumulator of type b
in the IO Monad.
A Note on Module Naming
Some of the examples below use modules from the Internal
Streamly package
hierarchy. These are not really internal to the library. We classify
Streamly
modules into two categories:
- Released modules and APIs: These modules and APIs are
stable. Significant changes to these modules and APIs will cause
Streamly's version number to change according to the package versioning
policy.
- Pre-release modules and APIs: These modules and APIs have not been
formally released yet. They may change in the near future, and such
changes will not necessarily be reflected in Streamly's package
version number. As yet unreleased modules and APIs reside in the
Internal
namespace.
Please use a minor release upper bound to adhere to the Haskell PVP when
using the pre-release (internal) modules.
The Examples
Modular Word Counting
A Fold
in Streamly is a composable stream consumer. For our first
example, we will use Fold
s to count the number of bytes, words and lines
present in a file. We will then compose individual Fold
s together to
count words, bytes and lines at the same time.
Please see the file WordCountModular.hs for the complete example
program, including the imports that we have omitted here.
Count Bytes (wc -c)
We start with a code fragment that counts the number of bytes in a file:
import qualified Streamly.Data.Fold as Fold
import qualified Streamly.Internal.FileSystem.File as File
import qualified Streamly.Prelude as Stream
wcb :: String -> IO Int
wcb file =
File.toBytes file -- SerialT IO Word8
& Stream.fold Fold.length -- IO Int
Count Lines (wc -l)
The next code fragment shows how to count the number of lines in a file:
-- ASCII character 10 is a newline.
countl :: Int -> Word8 -> Int
countl n ch = if ch == 10 then n + 1 else n
-- The fold accepts a stream of `Word8` and returns a line count (`Int`).
nlines :: Monad m => Fold m Word8 Int
nlines = Fold.foldl' countl 0
wcl :: String -> IO Int
wcl file =
File.toBytes file -- SerialT IO Word8
& Stream.fold nlines -- IO Int
Count Words (wc -w)
Our final code fragment counts the number of whitespace-separated words
in a stream:
countw :: (Int, Bool) -> Word8 -> (Int, Bool)
countw (n, wasSpace) ch =
if isSpace $ chr $ fromIntegral ch
then (n, True)
else (if wasSpace then n + 1 else n, False)
-- The fold accepts a stream of `Word8` and returns a word count (`Int`).
nwords :: Monad m => Fold m Word8 Int
nwords = fst <$> Fold.foldl' countw (0, True)
wcw :: String -> IO Int
wcw file =
File.toBytes file -- SerialT IO Word8
& Stream.fold nwords -- IO Int
Counting Bytes, Words and Lines Together
By using the Tee
combinator we can compose the three folds that count
bytes, lines and words individually into a single fold that counts all
three at once. The applicative instance of Tee
distributes its input
to all the supplied folds (Fold.length
, nlines
, and nwords
) and
then combines the outputs from the folds using the supplied combiner
function ((,,)
).
import qualified Streamly.Internal.Data.Fold.Tee as Tee
-- The fold accepts a stream of `Word8` and returns the three counts.
countAll :: Fold IO Word8 (Int, Int, Int)
countAll = Tee.toFold $ (,,) <$> Tee Fold.length <*> Tee nlines <*> Tee nwords
wc :: String -> IO (Int, Int, Int)
wc file =
File.toBytes file -- SerialT IO Word8
& Stream.fold countAll -- IO (Int, Int, Int)
This example demonstrates the excellent modularity offered by
Streamly's simple and concise API. Experienced Haskellers will
notice that we have not used bytestrings—we instead used a stream of
Word8
values, simplifying our program.
We compare two equivalent implementations: one using Streamly,
and the other using C.
The performance of the Streamly word counting
implementation is:
$ time WordCount-hs gutenberg-500MB.txt
11242220 97050938 574714449 gutenberg-500MB.txt
real 0m1.825s
user 0m1.697s
sys 0m0.128s
The performance of an equivalent wc implementation in C is:
$ time WordCount-c gutenberg-500MB.txt
11242220 97050938 574714449 gutenberg-500MB.txt
real 0m2.100s
user 0m1.935s
sys 0m0.165s
Concurrent Word Counting
In our next example we show how the task of counting words, lines,
and bytes could be done in parallel on multiprocessor hardware.
To count words in parallel we first divide the stream into chunks
(arrays), do the counting within each chunk, and then add all the
counts across chunks. We use the same code as above except that we use
arrays for our input data.
Please see the file WordCountParallel.hs for the complete working
code for this example, including the imports that we have omitted below.
The countArray
function counts the line, word, char counts in one chunk:
import qualified Streamly.Data.Array.Foreign as Array
countArray :: Array Word8 -> IO Counts
countArray arr =
Stream.unfold Array.read arr -- SerialT IO Word8
& Stream.decodeLatin1 -- SerialT IO Char
& Stream.foldl' count (Counts 0 0 0 True) -- IO Counts
Here the function count
and the Counts
data type are defined in the
WordCount
helper module defined in WordCount.hs.
When combining the counts in two contiguous chunks, we need to check
whether the first element of the next chunk is a whitespace character
in order to determine if the same word continues in the next chunk or
whether the chunk starts with a new word. The partialCounts
function
adds a Bool
flag to Counts
returned by countArray
to indicate
whether the first character in the chunk is a space.
partialCounts :: Array Word8 -> IO (Bool, Counts)
partialCounts arr = do
let r = Array.getIndex arr 0
case r of
Just x -> do
counts <- countArray arr
return (isSpace (chr (fromIntegral x)), counts)
Nothing -> return (False, Counts 0 0 0 True)
addCounts
then adds the counts from two consecutive chunks:
addCounts :: (Bool, Counts) -> (Bool, Counts) -> (Bool, Counts)
addCounts (sp1, Counts l1 w1 c1 ws1) (sp2, Counts l2 w2 c2 ws2) =
let wcount =
if not ws1 && not sp2 -- No space between two chunks.
then w1 + w2 - 1
else w1 + w2
in (sp1, Counts (l1 + l2) wcount (c1 + c2) ws2)
To count in parallel we now only need to divide the stream into arrays,
apply our counting function to each array, and then combine the counts
from each chunk.
wc :: String -> IO (Bool, Counts)
wc file = do
Stream.unfold File.readChunks file -- AheadT IO (Array Word8)
& Stream.mapM partialCounts -- AheadT IO (Bool, Counts)
& Stream.maxThreads numCapabilities -- AheadT IO (Bool, Counts)
& Stream.fromAhead -- SerialT IO (Bool, Counts)
& Stream.foldl' addCounts (False, Counts 0 0 0 True) -- IO (Bool, Counts)
Please note that the only difference between a concurrent and a
non-concurrent program lies in the use of the Stream.fromAhead
combinator. If we remove the call to Stream.fromAhead
, we would
still have a perfectly valid and performant serial program. Notice
how succinctly and idiomatically we have expressed the concurrent word
counting problem.
A benchmark with 2 CPUs:
$ time WordCount-hs-parallel gutenberg-500MB.txt
11242220 97050938 574714449 gutenberg-500MB.txt
real 0m1.284s
user 0m1.952s
sys 0m0.140s
These example programs have assumed ASCII encoded input data. For UTF-8
streams, we have a concurrent wc implementation
with UTF-8 decoding. This concurrent implementation performs as well
as the standard wc
program in serial benchmarks. In concurrent mode
Streamly's implementation can utilise multiple processing cores if
these are present, and can thereby run much faster than the standard
binary.
Streamly provides concurrency facilities similar
to OpenMP and
Cilk but with a more declarative
style of expression. With Streamly you can write concurrent programs
with ease, with support for different types of concurrent scheduling.
A Concurrent Network Server
We now move to a slightly more complicated example: we simulate a
dictionary lookup server which can serve word meanings to multiple
clients concurrently. This example demonstrates the use of the concurrent
mapM
combinator.
Please see the file WordServer.hs for the complete code for this
example, including the imports that we have omitted below.
import qualified Streamly.Data.Fold as Fold
import qualified Streamly.Network.Inet.TCP as TCP
import qualified Streamly.Network.Socket as Socket
import qualified Streamly.Unicode.Stream as Unicode
-- Simulate network/db query by adding a delay.
fetch :: String -> IO (String, String)
fetch w = threadDelay 1000000 >> return (w,w)
-- Read lines of whitespace separated list of words from a socket, fetch the
-- meanings of each word concurrently and return the meanings separated by
-- newlines, in same order as the words were received. Repeat until the
-- connection is closed.
lookupWords :: Socket -> IO ()
lookupWords sk =
Stream.unfold Socket.read sk -- SerialT IO Word8
& Unicode.decodeLatin1 -- SerialT IO Char
& Stream.wordsBy isSpace Fold.toList -- SerialT IO String
& Stream.fromSerial -- AheadT IO String
& Stream.mapM fetch -- AheadT IO (String, String)
& Stream.fromAhead -- SerialT IO (String, String)
& Stream.map show -- SerialT IO String
& Stream.intersperse "\n" -- SerialT IO String
& Unicode.encodeStrings Unicode.encodeLatin1 -- SerialT IO (Array Word8)
& Stream.fold (Socket.writeChunks sk) -- IO ()
serve :: Socket -> IO ()
serve sk = finally (lookupWords sk) (close sk)
-- | Run a server on port 8091. Accept and handle connections concurrently. The
-- connection handler is "serve" (i.e. lookupWords). You can use "telnet" or
-- "nc" as a client to try it out.
main :: IO ()
main =
Stream.unfold TCP.acceptOnPort 8091 -- SerialT IO Socket
& Stream.fromSerial -- AsyncT IO ()
& Stream.mapM serve -- AsyncT IO ()
& Stream.fromAsync -- SerialT IO ()
& Stream.drain -- IO ()
Merging Incoming Streams
In the next example, we show how to merge logs coming from multiple
nodes in your network. These logs are merged at line boundaries and
the merged logs are written to a file or to a network destination.
This example uses the concatMapWith
combinator to merge multiple
streams concurrently.
Please see the file MergeServer.hs for the complete working code,
including the imports that we have omitted below.
import qualified Streamly.Data.Unfold as Unfold
import qualified Streamly.Network.Socket as Socket
-- | Read a line stream from a socket.
-- Note: lines are buffered, and we could add a limit to the
-- buffering for safety.
readLines :: Socket -> SerialT IO (Array Char)
readLines sk =
Stream.unfold Socket.read sk -- SerialT IO Word8
& Unicode.decodeLatin1 -- SerialT IO Char
& Stream.splitWithSuffix (== '\n') Array.write -- SerialT IO String
recv :: Socket -> SerialT IO (Array Char)
recv sk = Stream.finally (liftIO $ close sk) (readLines sk)
-- | Starts a server at port 8091 listening for lines with space separated
-- words. Multiple clients can connect to the server and send streams of lines.
-- The server handles all the connections concurrently, merges the incoming
-- streams at line boundaries and writes the merged stream to a file.
server :: Handle -> IO ()
server file =
Stream.unfold TCP.acceptOnPort 8090 -- SerialT IO Socket
& Stream.concatMapWith Stream.parallel recv -- SerialT IO (Array Char)
& Stream.unfoldMany Array.read -- SerialT IO Char
& Unicode.encodeLatin1 -- SerialT IO Word8
& Stream.fold (Handle.write file) -- IO ()
main :: IO ()
main = withFile "output.txt" AppendMode server
Listing Directories Recursively/Concurrently
Our next example lists a directory tree recursively, reading
multiple directories concurrently.
This example uses the tree traversing combinator iterateMapLeftsWith
.
This combinator maps a stream generator on the Left
values in its
input stream (directory names in this case), feeding the resulting Left
values back to the input, while it lets the Right
values (file names
in this case) pass through to the output. The Stream.ahead
stream
joining combinator then makes it iterate on the directories concurrently.
Please see the file ListDir.hs for the complete working code,
including the imports that we have omitted below.
import Streamly.Internal.Data.Stream.IsStream (iterateMapLeftsWith)
import qualified Streamly.Prelude as Stream
import qualified Streamly.Internal.FileSystem.Dir as Dir (toEither)
-- Lists a directory as a stream of (Either Dir File).
listDir :: String -> SerialT IO (Either String String)
listDir dir =
Dir.toEither dir -- SerialT IO (Either String String)
& Stream.map (bimap mkAbs mkAbs) -- SerialT IO (Either String String)
where mkAbs x = dir ++ "/" ++ x
-- | List the current directory recursively using concurrent processing.
main :: IO ()
main = do
hSetBuffering stdout LineBuffering
let start = Stream.fromPure (Left ".")
Stream.iterateMapLeftsWith Stream.ahead listDir start
& Stream.mapM_ print
Rate Limiting
For bounded concurrent streams, a stream yield rate can be specified
easily. For example, to print "tick" once every second you can simply
write:
main :: IO ()
main =
Stream.repeatM (pure "tick") -- AsyncT IO String
& Stream.timestamped -- AsyncT IO (AbsTime, String)
& Stream.avgRate 1 -- AsyncT IO (AbsTime, String)
& Stream.fromAsync -- SerialT IO (AbsTime, String)
& Stream.mapM_ print -- IO ()
Please see the file Rate.hs for the complete working code.
The concurrency of the stream is automatically controlled to match the
specified rate. Streamly's rate control works precisely even at
throughputs as high as millions of yields per second.
For more sophisticated rate control needs please see the Streamly reference
documentation.
Reactive Programming
Streamly supports reactive (time domain) programming because of its
support for declarative concurrency. Please see the Streamly.Prelude
module for time-specific combinators like intervalsOf
, and
folds like takeInterval
in Streamly.Internal.Data.Fold
.
Please also see the pre-release sampling combinators in the
Streamly.Internal.Data.Stream.IsStream.Top
module for throttle
and
debounce
like operations.
The examples AcidRain.hs and CirclingSquare.hs demonstrate
reactive programming using Streamly.
More Examples
If you would like to view more examples, please visit the Streamly
Examples web page.
Further Reading
As you have seen in the word count example above, Streamly offers
highly modular abstractions for building programs while also offering
the performance close to an equivalent (imperative) C program.
Streamly offers excellent performance even for byte-at-a-time stream
operations using efficient abstractions like Unfold
s and terminating
Fold
s. Byte-at-a-time stream operations can simplify programming
because the developer does not have to deal explicitly with chunking
and re-combining data.
Streamly exploits GHC's stream fusion optimizations (case-of-case
and
spec-constr
) aggressively to achieve C-like speed, while also offering
highly modular abstractions to developers.
Streamly will usually perform very well without any
compiler plugins. However, we have fixed some deficiencies
that we had noticed in GHC's optimizer using a compiler
plugin. We hope to fold
these optimizations into GHC in the future; until then we recommend that
you use this plugin for applications that are performance sensitive.
Benchmarks
We measured several Haskell streaming implementations
using various micro-benchmarks. Please see the streaming
benchmarks page for a detailed comparison of
Streamly against other streaming libraries.
Our results show that Streamly is the fastest effectful streaming
implementation on almost all the measured microbenchmarks. In many cases
it runs up to 100x faster, and in some cases even 1000x faster than
some of the tested alternatives. In some composite operation benchmarks
Streamly turns out to be significantly faster than Haskell's list
implementation.
Note: If you can write a program in some other way or with some other
language that runs significantly faster than what Streamly offers,
please let us know and we will improve.
Notes
Streamly comes equipped with a very powerful set of abstractions to
accomplish many kinds of programming tasks: it provides support for
programming with streams and arrays, for reading and writing from the
file system and from the network, for time domain programming (reactive
programming), and for reacting to file system events using fsnotify
.
Please view Streamly's documentation for more information
about Streamly's features.
Concurrency
Streamly uses lock-free synchronization for achieving concurrent
operation with low overheads. The number of tasks performed concurrently
are determined automatically based on the rate at which a consumer
is consuming the results. In other words, you do not need to manage
thread pools or decide how many threads to use for a particular task.
For CPU-bound tasks Streamly will try to keep the number of threads
close to the number of CPUs available; for IO-bound tasks it will utilize
more threads.
The parallelism available during program execution can be utilized with
very little overhead even where the task size is very
small, because Streamly will automatically switch between
serial or batched execution of tasks on the same CPU depending
on whichever is more efficient. Please see our concurrency
benchmarks for more detailed performance
measurements, and for a comparison with the async
package.
Design Goals
Our goals for Streamly from the very beginning have been:
- To achieve simplicity by unifying abstractions.
- To offer high performance.
These goals are hard to achieve simultaneously because they are usually
inversely related. We have spent many years trying to get the abstractions
right without compromising performance.
Unfold
is an example of an abstraction that we have created to achieve
high performance when mapping streams on streams. Unfold
allows stream
generation to be optimized well by the compiler through stream fusion.
A Fold
with termination capability is another example which modularizes
stream elimination operations through stream fusion. Terminating folds
can perform many simple parsing tasks that do not require backtracking.
In Streamly, Parser
s are a natural extension to terminating Fold
s;
Parser
s add the ability to backtrack to Fold
s. Unification leads
to simpler abstractions and lower cognitive overheads while also not
compromising performance.
Credits
The following authors/libraries have influenced or inspired this library in a
significant way:
Please see the credits
directory for a full
list of contributors, credits and licenses.
Licensing
Streamly is an open source
project available under a liberal BSD-3-Clause license
Contributing to Streamly
As an open project we welcome contributions:
Getting Support
Professional support is available for Streamly: please contact
support@composewell.com.
You can also join our community chat
channel on Gitter.