Item processing

The ItemReader and ItemWriter interfaces are both very useful for their specific tasks, but what if you want to insert business logic before writing? One option for both reading and writing is to use the composite pattern: Create an ItemWriter that contains another ItemWriter or an ItemReader that contains another ItemReader. The following code shows an example:

public class CompositeItemWriter<T> implements ItemWriter<T> {

    ItemWriter<T> itemWriter;

    public CompositeItemWriter(ItemWriter<T> itemWriter) {
        this.itemWriter = itemWriter;
    }

    public void write(Chunk<? extends T> items) throws Exception {
        //Add business logic here
       itemWriter.write(items);
    }

    public void setDelegate(ItemWriter<T> itemWriter){
        this.itemWriter = itemWriter;
    }
}

The preceding class contains another ItemWriter to which it delegates after having provided some business logic. This pattern could easily be used for an ItemReader as well, perhaps to obtain more reference data based on the input that was provided by the main ItemReader. It is also useful if you need to control the call to write yourself. However, if you only want to “transform” the item passed in for writing before it is actually written, you need not write yourself. You can just modify the item. For this scenario, Spring Batch provides the ItemProcessor interface, as the following interface definition shows:

public interface ItemProcessor<I, O> {

    O process(I item) throws Exception;
}

An ItemProcessor is simple. Given one object, transform it and return another. The provided object may or may not be of the same type. The point is that business logic may be applied within the process, and it is completely up to the developer to create that logic. An ItemProcessor can be wired directly into a step. For example, assume an ItemReader provides a class of type Foo and that it needs to be converted to type Bar before being written out. The following example shows an ItemProcessor that performs the conversion:

public class Foo {}

public class Bar {
    public Bar(Foo foo) {}
}

public class FooProcessor implements ItemProcessor<Foo, Bar> {
    public Bar process(Foo foo) throws Exception {
        //Perform simple transformation, convert a Foo to a Bar
        return new Bar(foo);
    }
}

public class BarWriter implements ItemWriter<Bar> {
    public void write(Chunk<? extends Bar> bars) throws Exception {
        //write bars
    }
}

In the preceding example, there is a class named Foo, a class named Bar, and a class named FooProcessor that adheres to the ItemProcessor interface. The transformation is simple, but any type of transformation could be done here. The BarWriter writes Bar objects, throwing an exception if any other type is provided. Similarly, the FooProcessor throws an exception if anything but a Foo is provided. The FooProcessor can then be injected into a Step, as the following example shows:

XML Configuration
<job id="ioSampleJob">
    <step name="step1">
        <tasklet>
            <chunk reader="fooReader" processor="fooProcessor" writer="barWriter"
                   commit-interval="2"/>
        </tasklet>
    </step>
</job>
Java Configuration
@Bean
public Job ioSampleJob(JobRepository jobRepository) {
	return new JobBuilder("ioSampleJob", jobRepository)
				.start(step1())
				.build();
}

@Bean
public Step step1(JobRepository jobRepository, PlatformTransactionManager transactionManager) {
	return new StepBuilder("step1", jobRepository)
				.<Foo, Bar>chunk(2, transactionManager)
				.reader(fooReader())
				.processor(fooProcessor())
				.writer(barWriter())
				.build();
}

A difference between ItemProcessor and ItemReader or ItemWriter is that an ItemProcessor is optional for a Step.

Chaining ItemProcessors

Performing a single transformation is useful in many scenarios, but what if you want to “chain” together multiple ItemProcessor implementations? You can do so by using the composite pattern mentioned previously. To update the previous, single transformation, example, Foo is transformed to Bar, which is transformed to Foobar and written out, as the following example shows:

public class Foo {}

public class Bar {
    public Bar(Foo foo) {}
}

public class Foobar {
    public Foobar(Bar bar) {}
}

public class FooProcessor implements ItemProcessor<Foo, Bar> {
    public Bar process(Foo foo) throws Exception {
        //Perform simple transformation, convert a Foo to a Bar
        return new Bar(foo);
    }
}

public class BarProcessor implements ItemProcessor<Bar, Foobar> {
    public Foobar process(Bar bar) throws Exception {
        return new Foobar(bar);
    }
}

public class FoobarWriter implements ItemWriter<Foobar>{
    public void write(Chunk<? extends Foobar> items) throws Exception {
        //write items
    }
}

A FooProcessor and a BarProcessor can be 'chained' together to give the resultant Foobar, as shown in the following example:

CompositeItemProcessor<Foo,Foobar> compositeProcessor =
                                      new CompositeItemProcessor<Foo,Foobar>();
List itemProcessors = new ArrayList();
itemProcessors.add(new FooProcessor());
itemProcessors.add(new BarProcessor());
compositeProcessor.setDelegates(itemProcessors);

Just as with the previous example, you can configure the composite processor into the Step:

XML Configuration
<job id="ioSampleJob">
    <step name="step1">
        <tasklet>
            <chunk reader="fooReader" processor="compositeItemProcessor" writer="foobarWriter"
                   commit-interval="2"/>
        </tasklet>
    </step>
</job>

<bean id="compositeItemProcessor"
      class="org.springframework.batch.item.support.CompositeItemProcessor">
    <property name="delegates">
        <list>
            <bean class="..FooProcessor" />
            <bean class="..BarProcessor" />
        </list>
    </property>
</bean>
Java Configuration
@Bean
public Job ioSampleJob(JobRepository jobRepository) {
	return new JobBuilder("ioSampleJob", jobRepository)
				.start(step1())
				.build();
}

@Bean
public Step step1(JobRepository jobRepository, PlatformTransactionManager transactionManager) {
	return tnew StepBuilder("step1", jobRepository)
				.<Foo, Foobar>chunk(2, transactionManager)
				.reader(fooReader())
				.processor(compositeProcessor())
				.writer(foobarWriter())
				.build();
}

@Bean
public CompositeItemProcessor compositeProcessor() {
	List<ItemProcessor> delegates = new ArrayList<>(2);
	delegates.add(new FooProcessor());
	delegates.add(new BarProcessor());

	CompositeItemProcessor processor = new CompositeItemProcessor();

	processor.setDelegates(delegates);

	return processor;
}

Filtering Records

One typical use for an item processor is to filter out records before they are passed to the ItemWriter. Filtering is an action distinct from skipping. Skipping indicates that a record is invalid, while filtering indicates that a record should not be written.

For example, consider a batch job that reads a file containing three different types of records: records to insert, records to update, and records to delete. If record deletion is not supported by the system, we would not want to send any deletable records to the ItemWriter. However, since these records are not actually bad records, we would want to filter them out rather than skip them. As a result, the ItemWriter would receive only insertable and updatable records.

To filter a record, you can return null from the ItemProcessor. The framework detects that the result is null and avoids adding that item to the list of records delivered to the ItemWriter. An exception thrown from the ItemProcessor results in a skip.

Validating Input

The ItemReaders and ItemWriters chapter discusses multiple approaches to parsing input. Each major implementation throws an exception if it is not “well formed.” The FixedLengthTokenizer throws an exception if a range of data is missing. Similarly, attempting to access an index in a RowMapper or FieldSetMapper that does not exist or is in a different format than the one expected causes an exception to be thrown. All of these types of exceptions are thrown before read returns. However, they do not address the issue of whether or not the returned item is valid. For example, if one of the fields is an age, it cannot be negative. It may parse correctly, because it exists and is a number, but it does not cause an exception. Since there are already a plethora of validation frameworks, Spring Batch does not attempt to provide yet another. Rather, it provides a simple interface, called Validator, that you can implement by any number of frameworks, as the following interface definition shows:

public interface Validator<T> {

    void validate(T value) throws ValidationException;

}

The contract is that the validate method throws an exception if the object is invalid and returns normally if it is valid. Spring Batch provides an ValidatingItemProcessor, as the following bean definition shows:

XML Configuration
<bean class="org.springframework.batch.item.validator.ValidatingItemProcessor">
    <property name="validator" ref="validator" />
</bean>

<bean id="validator" class="org.springframework.batch.item.validator.SpringValidator">
	<property name="validator">
		<bean class="org.springframework.batch.sample.domain.trade.internal.validator.TradeValidator"/>
	</property>
</bean>
Java Configuration
@Bean
public ValidatingItemProcessor itemProcessor() {
	ValidatingItemProcessor processor = new ValidatingItemProcessor();

	processor.setValidator(validator());

	return processor;
}

@Bean
public SpringValidator validator() {
	SpringValidator validator = new SpringValidator();

	validator.setValidator(new TradeValidator());

	return validator;
}

You can also use the BeanValidatingItemProcessor to validate items annotated with the Bean Validation API (JSR-303) annotations. For example, consider the following type Person:

class Person {

    @NotEmpty
    private String name;

    public Person(String name) {
     this.name = name;
    }

    public String getName() {
     return name;
    }

    public void setName(String name) {
     this.name = name;
    }

}

You can validate items by declaring a BeanValidatingItemProcessor bean in your application context and register it as a processor in your chunk-oriented step:

@Bean
public BeanValidatingItemProcessor<Person> beanValidatingItemProcessor() throws Exception {
    BeanValidatingItemProcessor<Person> beanValidatingItemProcessor = new BeanValidatingItemProcessor<>();
    beanValidatingItemProcessor.setFilter(true);

    return beanValidatingItemProcessor;
}

Fault Tolerance

When a chunk is rolled back, items that have been cached during reading may be reprocessed. If a step is configured to be fault-tolerant (typically by using skip or retry processing), any ItemProcessor used should be implemented in a way that is idempotent. Typically that would consist of performing no changes on the input item for the ItemProcessor and updating only the instance that is the result.