retry-0.7.6.2: Retry combinators for monadic actions that may fail

CopyrightOzgun Ataman <ozgun.ataman@soostone.com>
LicenseBSD3
MaintainerOzgun Ataman
Stabilityprovisional
Safe HaskellNone
LanguageHaskell2010

Control.Retry

Contents

Description

This module exposes combinators that can wrap arbitrary monadic actions. They run the action and potentially retry running it with some configurable delay for a configurable number of times.

The express purpose of this library is to make it easier to work with IO and especially network IO actions that often experience temporary failure that warrant retrying of the original action. For example, a database query may time out for a while, in which case we should delay a bit and retry the query.

Synopsis

Types and Operations

newtype RetryPolicyM m Source #

A RetryPolicyM is a function that takes an RetryStatus and possibly returns a delay in microseconds. Iteration numbers start at zero and increase by one on each retry. A *Nothing* return value from the function implies we have reached the retry limit.

Please note that RetryPolicyM is a Monoid. You can collapse multiple strategies into one using mappend or <>. The semantics of this combination are as follows:

  1. If either policy returns Nothing, the combined policy returns Nothing. This can be used to inhibit after a number of retries, for example.
  2. If both policies return a delay, the larger delay will be used. This is quite natural when combining multiple policies to achieve a certain effect.

Example:

One can easily define an exponential backoff policy with a limited number of retries:

> limitedBackoff = exponentialBackoff 50 <> limitRetries 5

Naturally, mempty will retry immediately (delay 0) for an unlimited number of retries, forming the identity for the Monoid.

The default under def implements a constant 50ms delay, up to 5 times:

> def = constantDelay 50000 <> limitRetries 5

For anything more complex, just define your own RetryPolicyM:

> myPolicy = retryPolicy $ \ rs -> if rsIterNumber n > 10 then Just 1000 else Just 10000

Since 0.7.

Constructors

RetryPolicyM 

type RetryPolicy = forall m. Monad m => RetryPolicyM m Source #

Simplified RetryPolicyM without any use of the monadic context in determining policy. Mostly maintains backwards compatitibility with type signatures pre-0.7.

retryPolicy :: (RetryStatus -> Maybe Int) -> RetryPolicy Source #

Helper for making simplified policies that don't use the monadic context.

data RetryStatus Source #

Datatype with stats about retries made thus far. The constructor is deliberately not exported to make additional fields easier to add in a backward-compatible manner. To read or modify fields in RetryStatus, use the accessors or lenses below. Note that if you don't want to use lenses, the exported field names can be used for updates:

> retryStatus { rsIterNumber = newIterNumber }
> retryStatus & rsIterNumberL .~ newIterNumber

Constructors

RetryStatus 

Fields

defaultRetryStatus :: RetryStatus Source #

Initial, default retry status. Exported mostly to allow user code to test their handlers and retry policies. Use fields or lenses to update.

applyPolicy :: Monad m => RetryPolicyM m -> RetryStatus -> m (Maybe RetryStatus) Source #

Apply policy on status to see what the decision would be. Nothing implies no retry, Just returns updated status.

applyAndDelay :: MonadIO m => RetryPolicyM m -> RetryStatus -> m (Maybe RetryStatus) Source #

Apply policy and delay by its amount if it results in a retry. Return updated status.

Lenses for RetryStatus

Applying Retry Policies

retrying Source #

Arguments

:: MonadIO m 
=> RetryPolicyM m 
-> (RetryStatus -> b -> m Bool)

An action to check whether the result should be retried. If True, we delay and retry the operation.

-> (RetryStatus -> m b)

Action to run

-> m b 

Retry combinator for actions that don't raise exceptions, but signal in their type the outcome has failed. Examples are the Maybe, Either and EitherT monads.

Let's write a function that always fails and watch this combinator retry it 5 additional times following the initial run:

>>> import Data.Maybe
>>> let f _ = putStrLn "Running action" >> return Nothing
>>> retrying def (const $ return . isNothing) f
Running action
Running action
Running action
Running action
Running action
Running action
Nothing

Note how the latest failing result is returned after all retries have been exhausted.

recovering Source #

Arguments

:: (MonadIO m, MonadMask m) 
=> RetryPolicyM m

Just use def for default settings

-> [RetryStatus -> Handler m Bool]

Should a given exception be retried? Action will be retried if this returns True *and* the policy allows it. This action will be consulted first even if the policy later blocks it.

-> (RetryStatus -> m a)

Action to perform

-> m a 

Run an action and recover from a raised exception by potentially retrying the action a number of times. Note that if you're going to use a handler for SomeException, you should add explicit cases *earlier* in the list of handlers to reject AsyncException and SomeAsyncException, as catching these can cause thread and program hangs. recoverAll already does this for you so if you just plan on catching SomeException, you may as well ues recoverAll

stepping Source #

Arguments

:: (MonadIO m, MonadMask m) 
=> RetryPolicyM m

Just use def for default settings

-> [RetryStatus -> Handler m Bool]

Should a given exception be retried? Action will be retried if this returns True *and* the policy allows it. This action will be consulted first even if the policy later blocks it.

-> (RetryStatus -> m ())

Action to run with updated status upon failure.

-> (RetryStatus -> m a)

Main action to perform with current status.

-> RetryStatus

Current status of this step

-> m (Maybe a) 

A version of recovering that tries to run the action only a single time. The control will return immediately upon both success and failure. Useful for implementing retry logic in distributed queues and similar external-interfacing systems.

recoverAll :: (MonadIO m, MonadMask m) => RetryPolicyM m -> (RetryStatus -> m a) -> m a Source #

Retry ALL exceptions that may be raised. To be used with caution; this matches the exception on SomeException. Note that this handler explicitly does not handle AsyncException nor SomeAsyncException (for versions of base >= 4.7). It is not a good idea to catch async exceptions as it can result in hanging threads and programs. Note that if you just throw an exception to this thread that does not descend from SomeException, recoverAll will catch it.

See how the action below is run once and retried 5 more times before finally failing for good:

>>> let f _ = putStrLn "Running action" >> error "this is an error"
>>> recoverAll def f
Running action
Running action
Running action
Running action
Running action
Running action
*** Exception: this is an error

skipAsyncExceptions :: MonadIO m => [RetryStatus -> Handler m Bool] Source #

List of pre-made handlers that will skip retries on AsyncException and SomeAsyncException. Append your handlers to this list as a convenient way to make sure you're not catching async exceptions like user interrupt.

logRetries Source #

Arguments

:: (Monad m, Exception e) 
=> (e -> m Bool)

Test for whether action is to be retried

-> (Bool -> e -> RetryStatus -> m ())

How to report the generated warning message. Boolean is whether it's being retried or crashed.

-> RetryStatus

Retry number

-> Handler m Bool 

Helper function for constructing handler functions of the form required by recovering.

Retry Policies

constantDelay Source #

Arguments

:: Int

Base delay in microseconds

-> RetryPolicy 

Implement a constant delay with unlimited retries.

exponentialBackoff Source #

Arguments

:: Int

Base delay in microseconds

-> RetryPolicy 

Grow delay exponentially each iteration. Each delay will increase by a factor of two.

fullJitterBackoff Source #

Arguments

:: MonadIO m 
=> Int

Base delay in microseconds

-> RetryPolicyM m 

FullJitter exponential backoff as explained in AWS Architecture Blog article.

http://www.awsarchitectureblog.com/2015/03/backoff.html

temp = min(cap, base * 2 ** attempt)

sleep = temp / 2 + random_between(0, temp / 2)

fibonacciBackoff Source #

Arguments

:: Int

Base delay in microseconds

-> RetryPolicy 

Implement Fibonacci backoff.

limitRetries Source #

Arguments

:: Int

Maximum number of retries.

-> RetryPolicy 

Retry immediately, but only up to n times.

Policy Transformers

limitRetriesByDelay Source #

Arguments

:: Monad m 
=> Int

Time-delay limit in microseconds.

-> RetryPolicyM m 
-> RetryPolicyM m 

Add an upperbound to a policy such that once the given time-delay amount *per try* has been reached or exceeded, the policy will stop retrying and fail. If you need to stop retrying once *cumulative* delay reaches a time-delay amount, use limitRetriesByCumulativeDelay

limitRetriesByCumulativeDelay Source #

Arguments

:: Monad m 
=> Int

Time-delay limit in microseconds.

-> RetryPolicyM m 
-> RetryPolicyM m 

Add an upperbound to a policy such that once the cumulative delay over all retries has reached or exceeded the given limit, the policy will stop retrying and fail.

capDelay Source #

Arguments

:: Monad m 
=> Int

A maximum delay in microseconds

-> RetryPolicyM m 
-> RetryPolicyM m 

Set a time-upperbound for any delays that may be directed by the given policy. This function does not terminate the retrying. The policy `capDelay maxDelay (exponentialBackoff n)` will never stop retrying. It will reach a state where it retries forever with a delay of maxDelay between each one. To get termination you need to use one of the limitRetries function variants.

Development Helpers

simulatePolicy :: Monad m => Int -> RetryPolicyM m -> m [(Int, Maybe Int)] Source #

Run given policy up to N iterations and gather results. In the pair, the Int is the iteration number and the Maybe Int is the delay in microseconds.

simulatePolicyPP :: Int -> RetryPolicyM IO -> IO () Source #

Run given policy up to N iterations and pretty print results on the console.