Table of Contents
In the traditional threaded model of concurrent programming, when we share data among threads, we keep it consistent using locks, and we notify threads of changes using condition variables. Haskell's MVar mechanism improves somewhat upon these tools, but it still suffers from all of the same problems.
These problems frequently affect even the smallest concurrent programs, but the difficulties they pose become far worse in larger code bases, or under heavy load.
For instance, a program with a few big locks is somewhat tractable to write and debug, but contention for those locks will clobber us under heavy load. If we react with finer-grained locking, it becomes far harder to keep our software working at all. The additional book-keeping will hurt performance even when loads are light.
Software transactional memory (STM) gives us a
few simple, but powerful, tools with which we can address most
of these problems. We execute a block of actions as a
transaction using the atomically
combinator. Once we enter the
block, other threads cannot see any modifications we make until
we exit, nor can our thread see any changes made by other
threads. These two properties mean that our execution is
isolated.
Upon exit from a transaction, exactly one of the following things will occur.
This all-or-nothing nature of an atomically
block is referred to as atomic, hence the
name of the combinator. If you have used databases that support
transactions, you should find that working with STM feels quite
familiar.
In a multi-player role playing game, a player's character will have some state such as health, possessions, and money. To explore the world of STM, let's start with a few simple functions and types based around working with some character state for a game. We will refine our code as we learn more about the API.
The STM API is provided by the stm
package, and its modules are in the
Control.Concurrent.STM
hierarchy.
-- file: ch28/GameInventory.hs {-# LANGUAGE GeneralizedNewtypeDeriving #-} import Control.Concurrent.STM import Control.Monad data Item = Scroll | Wand | Banjo deriving (Eq, Ord, Show) newtype Gold = Gold Int deriving (Eq, Ord, Show, Num) newtype HitPoint = HitPoint Int deriving (Eq, Ord, Show, Num) type Inventory = TVar [Item] type Health = TVar HitPoint type Balance = TVar Gold data Player = Player { balance :: Balance, health :: Health, inventory :: Inventory }
The TVar parameterized type is a mutable
variable that we can read or write inside an
atomically
block. For simplicity, we
represent a player's inventory as a list of items. Notice, too,
that we use newtype
declarations so that we cannot
accidentally confuse wealth with health.
To perform a basic transfer of money from one Balance to another, all we have to do is adjust the values in each TVar.
-- file: ch28/GameInventory.hs basicTransfer qty fromBal toBal = do fromQty <- readTVar fromBal toQty <- readTVar toBal writeTVar fromBal (fromQty - qty) writeTVar toBal (toQty + qty)
Let's write a small function to try this out.
-- file: ch28/GameInventory.hs transferTest = do alice <- newTVar (12 :: Gold) bob <- newTVar 4 basicTransfer 3 alice bob liftM2 (,) (readTVar alice) (readTVar bob)
If we run this in ghci, it behaves as we should expect.
ghci>
:load GameInventory
[1 of 1] Compiling Main ( GameInventory.hs, interpreted ) Ok, modules loaded: Main.ghci>
atomically transferTest
Loading package array-0.1.0.0 ... linking ... done. Loading package stm-2.1.1.0 ... linking ... done. (Gold 9,Gold 7)
The properties of atomicity and isolation guarantee that if
another thread sees a change in bob
's balance, they
will also be able to see the modification of
alice
's balance.
Even in a concurrent program, we strive to keep as much of our code as possible purely functional. This makes our code easier both to reason about and to test. It also gives the underlying STM engine less work to do, since the data involved is not transactional. Here's a pure function that removes an item from the list we use to represent a player's inventory.
-- file: ch28/GameInventory.hs removeInv :: Eq a => a -> [a] -> Maybe [a] removeInv x xs = case takeWhile (/= x) xs of (_:ys) -> Just ys [] -> Nothing
The result uses Maybe so that we can tell whether the item was actually present in the player's inventory.
Here is a transactional function to give an item to another player. It is slightly complicated by the need to determine whether the donor actually has the item in question.
-- file: ch28/GameInventory.hs maybeGiveItem item fromInv toInv = do fromList <- readTVar fromInv case removeInv item fromList of Nothing -> return False Just newList -> do writeTVar fromInv newList destItems <- readTVar toInv writeTVar toInv (item : destItems) return True
If we are to provide atomic, isolated transactions, it is
critical that we cannot either deliberately or accidentally escape
from an atomically
block. Haskell's type system enforces this
on our behalf, via the STM monad.
ghci>
:type atomically
atomically :: STM a -> IO a
The atomically
block takes an action in the STM monad,
executes it, and makes its result available to us in the IO
monad. This is the monad in which all transactional code
executes. For instance, the functions that we have seen for
manipulating TVar values operate in the STM
monad.
ghci>
:type newTVar
newTVar :: a -> STM (TVar a)ghci>
:type readTVar
readTVar :: TVar a -> STM aghci>
:type writeTVar
writeTVar :: TVar a -> a -> STM ()
This is also true of the transactional functions we defined earlier.
-- file: ch28/GameInventory.hs basicTransfer :: Gold -> Balance -> Balance -> STM () maybeGiveItem :: Item -> Inventory -> Inventory -> STM Bool
The STM monad does not let us perform I/O or manipulate non-transactional mutable state, such as MVar values. This lets us avoid operations that might violate the transactional guarantees.
The API of our maybeGiveItem
function
is somewhat awkward. It only gives an item if the character
actually possesses it, which is reasonable, but by returning a
Bool, it complicates the code of its callers. Here
is an item sale function that has to look at the result of
maybeGiveItem
to decide what to do
next.
-- file: ch28/GameInventory.hs maybeSellItem :: Item -> Gold -> Player -> Player -> STM Bool maybeSellItem item price buyer seller = do given <- maybeGiveItem item (inventory seller) (inventory buyer) if given then do basicTransfer price (balance buyer) (balance seller) return True else return False
Not only do we have to check whether the item was given, we have to propagate an indication of success back to our caller. The complexity thus cascades outwards.
There is a more elegant way to handle transactions that
cannot succeed. The STM API provides a retry
action which
will immediately terminate an atomically
block that cannot
proceed. As the name suggests, when this occurs, execution of
the block is restarted from scratch, with any previous
modifications unperformed. Here is a rewrite of
maybeGiveItem
to use retry
.
-- file: ch28/GameInventory.hs giveItem :: Item -> Inventory -> Inventory -> STM () giveItem item fromInv toInv = do fromList <- readTVar fromInv case removeInv item fromList of Nothing -> retry Just newList -> do writeTVar fromInv newList readTVar toInv >>= writeTVar toInv . (item :)
Our basicTransfer
from earlier had a
different kind of flaw: it did not check the sender's balance to
see if they had sufficient money to transfer. We
can use retry
to correct this, while keeping the function's
type the same.
-- file: ch28/GameInventory.hs transfer :: Gold -> Balance -> Balance -> STM () transfer qty fromBal toBal = do fromQty <- readTVar fromBal when (qty > fromQty) $ retry writeTVar fromBal (fromQty - qty) readTVar toBal >>= writeTVar toBal . (qty +)
Now that we are using retry
, our item sale function
becomes dramatically simpler.
-- file: ch28/GameInventory.hs sellItem :: Item -> Gold -> Player -> Player -> STM () sellItem item price buyer seller = do giveItem item (inventory seller) (inventory buyer) transfer price (balance buyer) (balance seller)
Its behavior is slightly different from our earlier
function. Instead of immediately returning False
if the
seller doesn't have the item, it will block (if necessary) until
both the seller has the item and the buyer has enough money to
pay for it.
The beauty of STM lies in the cleanliness of the code it lets us write. We can take two functions that work correctly, and use them to create a third that will also behave itself, all with minimal effort.
The retry
function doesn't just make our code cleaner:
its underlying behavior seems nearly magical. When we call it,
it doesn't restart our transaction immediately. Instead,
it blocks our thread until one or more of the variables that
we touched before calling retry
is changed by another
thread.
For instance, if we invoke transfer
with insufficient funds, retry
will automatically
wait until our balance changes before it starts
the atomically
block again. The same happens with our new
giveItem
function: if the sender doesn't
currently have the item in their inventory, the thread will
block until they do.
We don't always want to restart an atomically
action if it
calls retry
or fails due to concurrent modification by another
thread. For instance, our new sellItem
function will retry indefinitely as long as we are missing
either the item or enough money, but we might prefer to just try
the sale once.
The orElse
combinator lets us perform a
“backup” action if the main one fails.
ghci>
:type orElse
orElse :: STM a -> STM a -> STM a
If sellItem
fails, then orElse
will
invoke the return False
action, causing our sale
function to return immediately.
Imagine that we'd like to be a little more ambitious, and buy the first item from a list that is both in the possession of the seller and affordable to us, but do nothing if we cannot afford something right now. We could of course write code to do this in a direct manner.
-- file: ch28/GameInventory.hs crummyList :: [(Item, Gold)] -> Player -> Player -> STM (Maybe (Item, Gold)) crummyList list buyer seller = go list where go [] = return Nothing go (this@(item,price) : rest) = do sellItem item price buyer seller return (Just this) `orElse` go rest
This function suffers from the familiar problem of muddling together what we want to do with how we ought to do it. A little inspection suggests that there are two reusable patterns buried in this code.
The first of these is to make a transaction fail immediately, instead of retrying.
-- file: ch28/GameInventory.hs maybeSTM :: STM a -> STM (Maybe a) maybeSTM m = (Just `liftM` m) `orElse` return Nothing
Secondly, we want to try an action over successive
elements of a list, stopping at the first that succeeds, or
performing a retry
if every one fails. Conveniently for us,
STM is an instance of the MonadPlus
typeclass.
-- file: ch28/STMPlus.hs instance MonadPlus STM where mzero = retry mplus = orElse
The Control.Monad
module defines the
msum
function as follows, which is
exactly what we need.
-- file: ch28/STMPlus.hs msum :: MonadPlus m => [m a] -> m a msum = foldr mplus mzero
We now have a few key pieces of machinery that will help us to write a much clearer version of our function.
-- file: ch28/GameInventory.hs shoppingList :: [(Item, Gold)] -> Player -> Player -> STM (Maybe (Item, Gold)) shoppingList list buyer seller = maybeSTM . msum $ map sellOne list where sellOne this@(item,price) = do sellItem item price buyer seller return this
Since STM is an instance of the
MonadPlus typeclass, we can generalize
maybeSTM
to work over any
MonadPlus.
-- file: ch28/GameInventory.hs maybeM :: MonadPlus m => m a -> m (Maybe a) maybeM m = (Just `liftM` m) `mplus` return Nothing
This gives us a function that is useful in a greater variety of situations.
The STM monad forbids us from performing arbitrary I/O actions because they can break the guarantees of atomicity and isolation that the monad provides. Of course the need to perform I/O still arises; we just have to treat it very carefully.
Most often, we will need to perform some I/O action as a
result of a decision we made inside an atomically
block. In
these cases, the right thing to do is usually to return a piece
of data from atomically
, which will tell the caller in the
IO monad what to do next. We can even return the action to
perform, since actions are first class values.
-- file: ch28/STMIO.hs someAction :: IO a stmTransaction :: STM (IO a) stmTransaction = return someAction doSomething :: IO a doSomething = join (atomically stmTransaction)
We occasionally need to perform an I/O operation from within
STM. For instance, reading immutable data from a file that
must exist does not violate the STM guarantees of isolation or
atomicity. In these cases, we can use
unsafeIOToSTM
to execute an IO action.
This function is exported by the low-level GHC.Conc
module, so we must go out of our way to use it.
ghci>
:m +GHC.Conc
ghci>
:type unsafeIOToSTM
unsafeIOToSTM :: IO a -> STM a
The IO action that we execute must not start another
atomically
transaction. If a thread tries to nest
transactions, the runtime system will throw an exception.
Since the type system can't help us to ensure that our IO
code is doing something sensible, we will be safest if we limit
our use of unsafeIOToSTM
as much as
possible. Here is a typical error that can arise with IO
in an atomically
block.
-- file: ch28/STMIO.hs launchTorpedoes :: IO () notActuallyAtomic = do doStuff unsafeIOToSTM launchTorpedoes mightRetry
If the mightRetry
block causes our
transaction to restart, we will call
launchTorpedoes
more than once. Indeed, we
can't predict how many times it will be called, since the
runtime system handles retries for us. The solution is not to
perform these kinds of non-idempotent[61] I/O operations inside a transaction.
As well as the basic TVar type, the
stm
package provides two types that are more useful
for communicating between threads. A TMVar is the
STM equivalent of an MVar: it can hold either
Just
a value, or Nothing
. The
TChan type is the STM counterpart of
Chan, and implements a typed FIFO channel.
As a practical example of using STM, we will develop a program that checks an HTML file for broken links, that is, URLs that either point to bad web pages or dead servers. This is a good problem to address via concurrency: if we try to talk to a dead server, it will take up to two minutes before our connection attempt times out. If we use multiple threads, we can still get useful work done while one or two are stuck talking to slow or dead servers.
We can't simply create one thread per URL, because that may overburden either our CPU or our network connection if (as we expect) most of the links are live and responsive. Instead, we use a fixed number of worker threads, which fetch URLs to download from a queue.
-- file: ch28/Check.hs {-# LANGUAGE FlexibleContexts, GeneralizedNewtypeDeriving, PatternGuards #-} import Control.Concurrent (forkIO) import Control.Concurrent.STM import Control.Exception (catch, finally) import Control.Monad.Error import Control.Monad.State import Data.Char (isControl) import Data.List (nub) import Network.URI import Prelude hiding (catch) import System.Console.GetOpt import System.Environment (getArgs) import System.Exit (ExitCode(..), exitWith) import System.IO (hFlush, hPutStrLn, stderr, stdout) import Text.Printf (printf) import qualified Data.ByteString.Lazy.Char8 as B import qualified Data.Set as S -- This requires the HTTP package, which is not bundled with GHC import Network.HTTP type URL = B.ByteString data Task = Check URL | Done
Our main
function provides the top-level scaffolding for
our program.
-- file: ch28/Check.hs main :: IO () main = do (files,k) <- parseArgs let n = length files -- count of broken links badCount <- newTVarIO (0 :: Int) -- for reporting broken links badLinks <- newTChanIO -- for sending jobs to workers jobs <- newTChanIO -- the number of workers currently running workers <- newTVarIO k -- one thread reports bad links to stdout forkIO $ writeBadLinks badLinks -- start worker threads forkTimes k workers (worker badLinks jobs badCount) -- read links from files, and enqueue them as jobs stats <- execJob (mapM_ checkURLs files) (JobState S.empty 0 jobs) -- enqueue "please finish" messages atomically $ replicateM_ k (writeTChan jobs Done) waitFor workers broken <- atomically $ readTVar badCount printf fmt broken (linksFound stats) (S.size (linksSeen stats)) n where fmt = "Found %d broken links. " ++ "Checked %d links (%d unique) in %d files.\n"
When we are in the IO monad, we can create new
TVar values using the newTVarIO
function. There are also counterparts for creating
TMVar and TChan values.
Notice that we use the printf
function
to print a report at the end. Unlike its counterpart in C, the
Haskell printf
function can check its
argument types, and their number, at runtime.
ghci>
:m +Text.Printf
ghci>
printf "%d and %d\n" (3::Int)
3 and *** Exception: Printf.printf: argument list ended prematurelyghci>
printf "%s and %d\n" "foo" (3::Int)
foo and 3
Try evaluating printf "%d" True
at the ghci
prompt, and see what happens.
Supporting main
are several short functions.
-- file: ch28/Check.hs modifyTVar_ :: TVar a -> (a -> a) -> STM () modifyTVar_ tv f = readTVar tv >>= writeTVar tv . f forkTimes :: Int -> TVar Int -> IO () -> IO () forkTimes k alive act = replicateM_ k . forkIO $ act `finally` (atomically $ modifyTVar_ alive (subtract 1))
The forkTimes
function starts a number
of identical worker threads, and decreases the
“alive” count each time a thread exits. We use a
finally
combinator to ensure that the count
is always decremented, no matter how the thread
terminates.
Next, the writeBadLinks
function prints
each broken or dead link to stdout
.
-- file: ch28/Check.hs writeBadLinks :: TChan String -> IO () writeBadLinks c = forever $ atomically (readTChan c) >>= putStrLn >> hFlush stdout
We use the forever
combinator above,
which repeats an action endlessly.
ghci>
:m +Control.Monad
ghci>
:type forever
forever :: (Monad m) => m a -> m ()
Our waitFor
function uses
check
, which calls
retry
if its argument evaluates to
False
.
-- file: ch28/Check.hs waitFor :: TVar Int -> IO () waitFor alive = atomically $ do count <- readTVar alive check (count == 0)
Here is a naive function to check the state of a link. This code is similar to the podcatcher that we developed in Chapter 22, Extended Example: Web Client Programming, with a few small differences.
-- file: ch28/Check.hs getStatus :: URI -> IO (Either String Int) getStatus = chase (5 :: Int) where chase 0 _ = bail "too many redirects" chase n u = do resp <- getHead u case resp of Left err -> bail (show err) Right r -> case rspCode r of (3,_,_) -> case findHeader HdrLocation r of Nothing -> bail (show r) Just u' -> case parseURI u' of Nothing -> bail "bad URL" Just url -> chase (n-1) url (a,b,c) -> return . Right $ a * 100 + b * 10 + c bail = return . Left getHead :: URI -> IO (Result Response) getHead uri = simpleHTTP Request { rqURI = uri, rqMethod = HEAD, rqHeaders = [], rqBody = "" }
We follow a HTTP redirect response just a few times, to avoid endless redirect loops. To determine whether a URL is valid, we use the HTTP standard's HEAD verb, which uses less bandwidth than a full GET.
This code has the classic “marching off the left of the screen” style that we have learned to be wary of. Here is a rewrite that offers greater clarity via the ErrorT monad transformer and a few generally useful functions.
-- file: ch28/Check.hs getStatusE = runErrorT . chase (5 :: Int) where chase :: Int -> URI -> ErrorT String IO Int chase 0 _ = throwError "too many redirects" chase n u = do r <- embedEither show =<< liftIO (getHead u) case rspCode r of (3,_,_) -> do u' <- embedMaybe (show r) $ findHeader HdrLocation r url <- embedMaybe "bad URL" $ parseURI u' chase (n-1) url (a,b,c) -> return $ a*100 + b*10 + c -- This function is defined in Control.Arrow. left :: (a -> c) -> Either a b -> Either c b left f (Left x) = Left (f x) left _ (Right x) = Right x -- Some handy embedding functions. embedEither :: (MonadError e m) => (s -> e) -> Either s a -> m a embedEither f = either (throwError . f) return embedMaybe :: (MonadError e m) => e -> Maybe a -> m a embedMaybe err = maybe (throwError err) return
Each worker thread reads a task off the shared queue. It either checks the given URL or exits.
-- file: ch28/Check.hs worker :: TChan String -> TChan Task -> TVar Int -> IO () worker badLinks jobQueue badCount = loop where -- Consume jobs until we are told to exit. loop = do job <- atomically $ readTChan jobQueue case job of Done -> return () Check x -> checkOne (B.unpack x) >> loop -- Check a single link. checkOne url = case parseURI url of Just uri -> do code <- getStatus uri `catch` (return . Left . show) case code of Right 200 -> return () Right n -> report (show n) Left err -> report err _ -> report "invalid URL" where report s = atomically $ do modifyTVar_ badCount (+1) writeTChan badLinks (url ++ " " ++ s)
We structure our link finding around a state monad transformer stacked on the IO monad. Our state tracks links that we have already seen (so we don't check a repeated link more than once), the total number of links we have encountered, and the queue to which we should add the links that we will be checking.
-- file: ch28/Check.hs data JobState = JobState { linksSeen :: S.Set URL, linksFound :: Int, linkQueue :: TChan Task } newtype Job a = Job { runJob :: StateT JobState IO a } deriving (Monad, MonadState JobState, MonadIO) execJob :: Job a -> JobState -> IO JobState execJob = execStateT . runJob
Strictly speaking, for a small standalone program, we
don't need the newtype
wrapper, but we include it here as an
example of good practice (it only costs a few lines of code,
anyway).
The main
function maps checkURLs
over each input file, so checkURLs
only
needs to read a single file.
-- file: ch28/Check.hs checkURLs :: FilePath -> Job () checkURLs f = do src <- liftIO $ B.readFile f let urls = extractLinks src filterM seenURI urls >>= sendJobs updateStats (length urls) updateStats :: Int -> Job () updateStats a = modify $ \s -> s { linksFound = linksFound s + a } -- | Add a link to the set we have seen. insertURI :: URL -> Job () insertURI c = modify $ \s -> s { linksSeen = S.insert c (linksSeen s) } -- | If we have seen a link, return False. Otherwise, record that we -- have seen it, and return True. seenURI :: URL -> Job Bool seenURI url = do seen <- (not . S.member url) `liftM` gets linksSeen insertURI url return seen sendJobs :: [URL] -> Job () sendJobs js = do c <- gets linkQueue liftIO . atomically $ mapM_ (writeTChan c . Check) js
Our extractLinks
function doesn't
attempt to properly parse a HTML or text file. Instead, it
looks for strings that appear to be URLs, and treats them as
“good enough”.
-- file: ch28/Check.hs extractLinks :: B.ByteString -> [URL] extractLinks = concatMap uris . B.lines where uris s = filter looksOkay (B.splitWith isDelim s) isDelim c = isControl c || c `elem` " <>\"{}|\\^[]`" looksOkay s = http `B.isPrefixOf` s http = B.pack "http:"
To parse our command line arguments, we use the
System.Console.GetOpt
module. It provides useful
code for parsing arguments, but it is slightly involved to
use.
-- file: ch28/Check.hs data Flag = Help | N Int deriving Eq parseArgs :: IO ([String], Int) parseArgs = do argv <- getArgs case parse argv of ([], files, []) -> return (nub files, 16) (opts, files, []) | Help `elem` opts -> help | [N n] <- filter (/=Help) opts -> return (nub files, n) (_,_,errs) -> die errs where parse argv = getOpt Permute options argv header = "Usage: urlcheck [-h] [-n n] [file ...]" info = usageInfo header options dump = hPutStrLn stderr die errs = dump (concat errs ++ info) >> exitWith (ExitFailure 1) help = dump info >> exitWith ExitSuccess
The getOpt
function takes three
arguments.
An argument ordering, which specifies whether options
can be mixed with other arguments (Permute
,
which we use above) or must appear before them.
A list of option definitions. Each consists of a list of short names for the option, a list of long names for the option, a description of the option (e.g. whether it accepts an argument), and an explanation for users.
A list of the arguments and options, as returned by
getArgs
.
The function returns a triple which consists of the parsed options, the remaining arguments, and any error messages that arose.
We use the Flag algebraic data type to represent the options our program can accept.
-- file: ch28/Check.hs options :: [OptDescr Flag] options = [ Option ['h'] ["help"] (NoArg Help) "Show this help message", Option ['n'] [] (ReqArg (\s -> N (read s)) "N") "Number of concurrent connections (default 16)" ]
Our options
list describes each option
that we accept. Each description must be able to create a
Flag value. Take a look at our uses of
NoArg
and ReqArg
above. These are
constructors for the GetOpt
module's
ArgDescr type.
-- file: ch28/GetOpt.hs data ArgDescr a = NoArg a | ReqArg (String -> a) String | OptArg (Maybe String -> a) String
The NoArg
constructor accepts a parameter
that will represent this option. In our case, if a user
invokes our program with -h
or
--help
, we will use the value
Help
.
The ReqArg
constructor accepts a function
that maps a required argument to a value. Its second
argument is used when printing help. Here, we convert a
string into an integer, and pass it to our
Flag type's N
constructor.
The OptArg
constructor is similar to the
ReqArg
constructor, but it permits the use of
options that can be used without arguments.
We sneaked one last language extension into our definition
of parseArgs
. Pattern guards let us
write more concise guard expressions. They are enabled via
the PatternGuards
language extension.
A pattern guard has three components: a pattern, a
<-
symbol, and an expression. The expression
is evaluated and matched against the pattern. If it matches,
any variables present in the pattern are bound. We can mix
pattern guards and normal Bool guard expressions
in a single guard by separating them with commas.
-- file: ch28/PatternGuard.hs {-# LANGUAGE PatternGuards #-} testme x xs | Just y <- lookup x xs, y > 3 = y | otherwise = 0
In the above example, we return a value from the alist
xs
if its associated key
x
is present, provided the value is greater
than 3. The above definition is equivalent to the
following.
-- file: ch28/PatternGuard.hs testme_noguards x xs = case lookup x xs of Just y | y > 3 -> y _ -> 0
Pattern guards let us “collapse” a collection
of guards and case
expressions into a single guard, allowing
us to write more succinct and descriptive guards.
We have so far been quiet about the specific benefits that
STM gives us. Most obvious is how well it
composes: to add code to a transaction, we
just use our usual monadic building blocks, (>>=)
and
(>>)
.
The notion of composability is critical to building modular software. If we take two pieces of code that individually work correctly, the composition of the two should also be correct. While normal threaded programming makes composability impossible, STM restores it as a key assumption that we can rely upon.
The STM monad prevents us from accidentally performing
non-transactional I/O actions. We don't need to worry about
lock ordering, since our code contains no locks. We can forget
about lost wakeups, since we don't have condition variables. If
an exception is thrown, we can either catch it using
catchSTM
, or be bounced out of our
transaction, leaving our state untouched. Finally,
the retry
and orElse
functions give us some beautiful ways to structure our
code.
Code that uses STM will not deadlock, but it is possible for
threads to starve each other to some degree. A long-running
transaction can cause another transaction to retry
often
enough that it will make comparatively little progress. To
address a problem like this, make your transactions as short as
you can, while keeping your data consistent.
Whether with concurrency or memory management, there will be times when we must retain control: some software must make solid guarantees about latency or memory footprint, so we will be forced to spend the extra time and effort managing and debugging explicit code. For many interesting, practical uses of software, garbage collection and STM will do more than well enough.
STM is not a complete panacea. It is useful to compare it with the use of garbage collection for memory management. When we abandon explicit memory management in favour of garbage collection, we give up control in return for safer code. Likewise, with STM, we abandon the low-level details, in exchange for code that we can better hope to understand.
STM cannot eliminate certain classes of bug. For
instance, if we withdraw money from an account in one
atomically
block, return to the IO monad, then deposit it
to another account in a different atomically
block, our code
will have an inconsistency. There will be a window of time in
which the money is present in neither account.
-- file: ch28/GameInventory.hs bogusTransfer qty fromBal toBal = do fromQty <- atomically $ readTVar fromBal -- window of inconsistency toQty <- atomically $ readTVar toBal atomically $ writeTVar fromBal (fromQty - qty) -- window of inconsistency atomically $ writeTVar toBal (toQty + qty) bogusSale :: Item -> Gold -> Player -> Player -> IO () bogusSale item price buyer seller = do atomically $ giveItem item (inventory seller) (inventory buyer) bogusTransfer price (balance buyer) (balance seller)
In concurrent programs, these kinds of problems are notoriously difficult to find and reproduce. For instance, the inconsistency that we describe above will usually only occur for a brief period of time. Problems like this often refuse to show up during development, instead only occurring in the field, under heavy load.
The alwaysSucceeds
function lets us define an invariant, a
property of our data that must always be true.
ghci>
:type alwaysSucceeds
alwaysSucceeds :: STM a -> STM ()
When we create an invariant, it will immediately be checked. To fail, the invariant must raise an exception. More interestingly, the invariant will subsequently be checked automatically at the end of every transaction. If it fails at any point, the transaction will be aborted, and the exception raised by the invariant will be propagated. This means that we will get immediate feedback as soon as one of our invariants is violated.
For instance, here are a few functions to populate our game world from the beginning of this chapter with players.
-- file: ch28/GameInventory.hs newPlayer :: Gold -> HitPoint -> [Item] -> STM Player newPlayer balance health inventory = Player `liftM` newTVar balance `ap` newTVar health `ap` newTVar inventory populateWorld :: STM [Player] populateWorld = sequence [ newPlayer 20 20 [Wand, Banjo], newPlayer 10 12 [Scroll] ]
This function returns an invariant that we can use to ensure that the world's money balance is always consistent: the balance at any point in time should be the same as at the creation of the world.
-- file: ch28/GameInventory.hs consistentBalance :: [Player] -> STM (STM ()) consistentBalance players = do initialTotal <- totalBalance return $ do curTotal <- totalBalance when (curTotal /= initialTotal) $ error "inconsistent global balance" where totalBalance = foldM addBalance 0 players addBalance a b = (a+) `liftM` readTVar (balance b)
Let's write a small function that exercises this.
-- file: ch28/GameInventory.hs tryBogusSale = do players@(alice:bob:_) <- atomically populateWorld atomically $ alwaysSucceeds =<< consistentBalance players bogusSale Wand 5 alice bob
If we run it in ghci, it should detect the inconsistency
caused by our incorrect use of atomically
in the
bogusTransfer
function we wrote.
ghci>
tryBogusSale
*** Exception: inconsistent global balance
[61] An idempotent action gives the same result every time it is invoked, no matter how many times this occurs.