# Retry
## Retry
XMLJavaBoth
To make processing more robust and less prone to failure, it sometimes helps to
automatically retry a failed operation in case it might succeed on a subsequent attempt.
Errors that are susceptible to intermittent failure are often transient in nature.
Examples include remote calls to a web service that fails because of a network glitch or a`DeadlockLoserDataAccessException` in a database update.
### `RetryTemplate`
| |The retry functionality was pulled out of Spring Batch as of 2.2.0.
It is now part of a new library, [Spring Retry](https://github.com/spring-projects/spring-retry).|
|---|-------------------------------------------------------------------------------------------------------------------------------------------------------------------------|
To automate retry operations Spring Batch has the `RetryOperations` strategy. The
following interface definition for `RetryOperations`:
```
public interface RetryOperations {
T execute(RetryCallback retryCallback) throws E;
T execute(RetryCallback retryCallback, RecoveryCallback recoveryCallback)
throws E;
T execute(RetryCallback retryCallback, RetryState retryState)
throws E, ExhaustedRetryException;
T execute(RetryCallback retryCallback, RecoveryCallback recoveryCallback,
RetryState retryState) throws E;
}
```
The basic callback is a simple interface that lets you insert some business logic to be
retried, as shown in the following interface definition:
```
public interface RetryCallback {
T doWithRetry(RetryContext context) throws E;
}
```
The callback runs and, if it fails (by throwing an `Exception`), it is retried until
either it is successful or the implementation aborts. There are a number of overloaded`execute` methods in the `RetryOperations` interface. Those methods deal with various use
cases for recovery when all retry attempts are exhausted and deal with retry state, which
lets clients and implementations store information between calls (we cover this in more
detail later in the chapter).
The simplest general purpose implementation of `RetryOperations` is `RetryTemplate`. It
can be used as follows:
```
RetryTemplate template = new RetryTemplate();
TimeoutRetryPolicy policy = new TimeoutRetryPolicy();
policy.setTimeout(30000L);
template.setRetryPolicy(policy);
Foo result = template.execute(new RetryCallback() {
public Foo doWithRetry(RetryContext context) {
// Do stuff that might fail, e.g. webservice operation
return result;
}
});
```
In the preceding example, we make a web service call and return the result to the user. If
that call fails, then it is retried until a timeout is reached.
#### `RetryContext`
The method parameter for the `RetryCallback` is a `RetryContext`. Many callbacks ignore
the context, but, if necessary, it can be used as an attribute bag to store data for the
duration of the iteration.
A `RetryContext` has a parent context if there is a nested retry in progress in the same
thread. The parent context is occasionally useful for storing data that need to be shared
between calls to `execute`.
#### `RecoveryCallback`
When a retry is exhausted, the `RetryOperations` can pass control to a different callback,
called the `RecoveryCallback`. To use this feature, clients pass in the callbacks together
to the same method, as shown in the following example:
```
Foo foo = template.execute(new RetryCallback() {
public Foo doWithRetry(RetryContext context) {
// business logic here
},
new RecoveryCallback() {
Foo recover(RetryContext context) throws Exception {
// recover logic here
}
});
```
If the business logic does not succeed before the template decides to abort, then the
client is given the chance to do some alternate processing through the recovery callback.
#### Stateless Retry
In the simplest case, a retry is just a while loop. The `RetryTemplate` can just keep
trying until it either succeeds or fails. The `RetryContext` contains some state to
determine whether to retry or abort, but this state is on the stack and there is no need
to store it anywhere globally, so we call this stateless retry. The distinction between
stateless and stateful retry is contained in the implementation of the `RetryPolicy` (the`RetryTemplate` can handle both). In a stateless retry, the retry callback is always
executed in the same thread it was on when it failed.
#### Stateful Retry
Where the failure has caused a transactional resource to become invalid, there are some
special considerations. This does not apply to a simple remote call because there is no
transactional resource (usually), but it does sometimes apply to a database update,
especially when using Hibernate. In this case it only makes sense to re-throw the
exception that called the failure immediately, so that the transaction can roll back and
we can start a new, valid transaction.
In cases involving transactions, a stateless retry is not good enough, because the
re-throw and roll back necessarily involve leaving the `RetryOperations.execute()` method
and potentially losing the context that was on the stack. To avoid losing it we have to
introduce a storage strategy to lift it off the stack and put it (at a minimum) in heap
storage. For this purpose, Spring Batch provides a storage strategy called`RetryContextCache`, which can be injected into the `RetryTemplate`. The default
implementation of the `RetryContextCache` is in memory, using a simple `Map`. Advanced
usage with multiple processes in a clustered environment might also consider implementing
the `RetryContextCache` with a cluster cache of some sort (however, even in a clustered
environment, this might be overkill).
Part of the responsibility of the `RetryOperations` is to recognize the failed operations
when they come back in a new execution (and usually wrapped in a new transaction). To
facilitate this, Spring Batch provides the `RetryState` abstraction. This works in
conjunction with a special `execute` methods in the `RetryOperations` interface.
The way the failed operations are recognized is by identifying the state across multiple
invocations of the retry. To identify the state, the user can provide a `RetryState`object that is responsible for returning a unique key identifying the item. The identifier
is used as a key in the `RetryContextCache` interface.
| |Be very careful with the implementation of `Object.equals()` and `Object.hashCode()` in
the key returned by `RetryState`. The best advice is to use a business key to identify the
items. In the case of a JMS message, the message ID can be used.|
|---|-----------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------|
When the retry is exhausted, there is also the option to handle the failed item in a
different way, instead of calling the `RetryCallback` (which is now presumed to be likely
to fail). Just like in the stateless case, this option is provided by the`RecoveryCallback`, which can be provided by passing it in to the `execute` method of`RetryOperations`.
The decision to retry or not is actually delegated to a regular `RetryPolicy`, so the
usual concerns about limits and timeouts can be injected there (described later in this
chapter).
### Retry Policies
Inside a `RetryTemplate`, the decision to retry or fail in the `execute` method is
determined by a `RetryPolicy`, which is also a factory for the `RetryContext`. The`RetryTemplate` has the responsibility to use the current policy to create a`RetryContext` and pass that in to the `RetryCallback` at every attempt. After a callback
fails, the `RetryTemplate` has to make a call to the `RetryPolicy` to ask it to update its
state (which is stored in the `RetryContext`) and then asks the policy if another attempt
can be made. If another attempt cannot be made (such as when a limit is reached or a
timeout is detected) then the policy is also responsible for handling the exhausted state.
Simple implementations throw `RetryExhaustedException`, which causes any enclosing
transaction to be rolled back. More sophisticated implementations might attempt to take
some recovery action, in which case the transaction can remain intact.
| |Failures are inherently either retryable or not. If the same exception is always going to
be thrown from the business logic, it does no good to retry it. So do not retry on all
exception types. Rather, try to focus on only those exceptions that you expect to be
retryable. It is not usually harmful to the business logic to retry more aggressively, but
it is wasteful, because, if a failure is deterministic, you spend time retrying something
that you know in advance is fatal.|
|---|-----------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------|
Spring Batch provides some simple general purpose implementations of stateless`RetryPolicy`, such as `SimpleRetryPolicy` and `TimeoutRetryPolicy` (used in the preceding example).
The `SimpleRetryPolicy` allows a retry on any of a named list of exception types, up to a
fixed number of times. It also has a list of "fatal" exceptions that should never be
retried, and this list overrides the retryable list so that it can be used to give finer
control over the retry behavior, as shown in the following example:
```
SimpleRetryPolicy policy = new SimpleRetryPolicy();
// Set the max retry attempts
policy.setMaxAttempts(5);
// Retry on all exceptions (this is the default)
policy.setRetryableExceptions(new Class[] {Exception.class});
// ... but never retry IllegalStateException
policy.setFatalExceptions(new Class[] {IllegalStateException.class});
// Use the policy...
RetryTemplate template = new RetryTemplate();
template.setRetryPolicy(policy);
template.execute(new RetryCallback() {
public Foo doWithRetry(RetryContext context) {
// business logic here
}
});
```
There is also a more flexible implementation called `ExceptionClassifierRetryPolicy`,
which lets the user configure different retry behavior for an arbitrary set of exception
types though the `ExceptionClassifier` abstraction. The policy works by calling on the
classifier to convert an exception into a delegate `RetryPolicy`. For example, one
exception type can be retried more times before failure than another by mapping it to a
different policy.
Users might need to implement their own retry policies for more customized decisions. For
instance, a custom retry policy makes sense when there is a well-known, solution-specific
classification of exceptions into retryable and not retryable.
### Backoff Policies
When retrying after a transient failure, it often helps to wait a bit before trying again,
because usually the failure is caused by some problem that can only be resolved by
waiting. If a `RetryCallback` fails, the `RetryTemplate` can pause execution according to
the `BackoffPolicy`.
The following code shows the interface definition for the `BackOffPolicy` interface:
```
public interface BackoffPolicy {
BackOffContext start(RetryContext context);
void backOff(BackOffContext backOffContext)
throws BackOffInterruptedException;
}
```
A `BackoffPolicy` is free to implement the backOff in any way it chooses. The policies
provided by Spring Batch out of the box all use `Object.wait()`. A common use case is to
backoff with an exponentially increasing wait period, to avoid two retries getting into
lock step and both failing (this is a lesson learned from ethernet). For this purpose,
Spring Batch provides the `ExponentialBackoffPolicy`.
### Listeners
Often, it is useful to be able to receive additional callbacks for cross cutting concerns
across a number of different retries. For this purpose, Spring Batch provides the`RetryListener` interface. The `RetryTemplate` lets users register `RetryListeners`, and
they are given callbacks with `RetryContext` and `Throwable` where available during the
iteration.
The following code shows the interface definition for `RetryListener`:
```
public interface RetryListener {
boolean open(RetryContext context, RetryCallback callback);
void onError(RetryContext context, RetryCallback callback, Throwable throwable);
void close(RetryContext context, RetryCallback callback, Throwable throwable);
}
```
The `open` and `close` callbacks come before and after the entire retry in the simplest
case, and `onError` applies to the individual `RetryCallback` calls. The `close` method
might also receive a `Throwable`. If there has been an error, it is the last one thrown by
the `RetryCallback`.
Note that, when there is more than one listener, they are in a list, so there is an order.
In this case, `open` is called in the same order while `onError` and `close` are called in
reverse order.
### Declarative Retry
Sometimes, there is some business processing that you know you want to retry every time it
happens. The classic example of this is the remote service call. Spring Batch provides an
AOP interceptor that wraps a method call in a `RetryOperations` implementation for just
this purpose. The `RetryOperationsInterceptor` executes the intercepted method and retries
on failure according to the `RetryPolicy` in the provided `RepeatTemplate`.
The following example shows a declarative retry that uses the Spring AOP namespace to
retry a service call to a method called `remoteCall` (for more detail on how to configure
AOP interceptors, see the Spring User Guide):
```
```
The following example shows a declarative retry that uses java configuration to retry a
service call to a method called `remoteCall` (for more detail on how to configure AOP
interceptors, see the Spring User Guide):
```
@Bean
public MyService myService() {
ProxyFactory factory = new ProxyFactory(RepeatOperations.class.getClassLoader());
factory.setInterfaces(MyService.class);
factory.setTarget(new MyService());
MyService service = (MyService) factory.getProxy();
JdkRegexpMethodPointcut pointcut = new JdkRegexpMethodPointcut();
pointcut.setPatterns(".*remoteCall.*");
RetryOperationsInterceptor interceptor = new RetryOperationsInterceptor();
((Advised) service).addAdvisor(new DefaultPointcutAdvisor(pointcut, interceptor));
return service;
}
```
The preceding example uses a default `RetryTemplate` inside the interceptor. To change the
policies or listeners, you can inject an instance of `RetryTemplate` into the interceptor.