FlatFileItemReader
A flat file is any type of file that contains at most two-dimensional (tabular) data.
Reading flat files in the Spring Batch framework is facilitated by the class called
FlatFileItemReader
, which provides basic functionality for reading and parsing flat
files. The two most important required dependencies of FlatFileItemReader
are
Resource
and LineMapper
. The LineMapper
interface is explored more in the next
sections. The resource property represents a Spring Core Resource
. Documentation
explaining how to create beans of this type can be found in
Spring
Framework, Chapter 5. Resources. Therefore, this guide does not go into the details of
creating Resource
objects beyond showing the following simple example:
Resource resource = new FileSystemResource("resources/trades.csv");
In complex batch environments, the directory structures are often managed by the Enterprise Application Integration (EAI) infrastructure, where drop zones for external interfaces are established for moving files from FTP locations to batch processing locations and vice versa. File moving utilities are beyond the scope of the Spring Batch architecture, but it is not unusual for batch job streams to include file moving utilities as steps in the job stream. The batch architecture only needs to know how to locate the files to be processed. Spring Batch begins the process of feeding the data into the pipe from this starting point. However, Spring Integration provides many of these types of services.
The other properties in FlatFileItemReader
let you further specify how your data is
interpreted, as described in the following table:
Property | Type | Description |
---|---|---|
comments |
String[] |
Specifies line prefixes that indicate comment rows. |
encoding |
String |
Specifies what text encoding to use. The default value is |
lineMapper |
|
Converts a |
linesToSkip |
int |
Number of lines to ignore at the top of the file. |
recordSeparatorPolicy |
RecordSeparatorPolicy |
Used to determine where the line endings are and do things like continue over a line ending if inside a quoted string. |
resource |
|
The resource from which to read. |
skippedLinesCallback |
LineCallbackHandler |
Interface that passes the raw line content of
the lines in the file to be skipped. If |
strict |
boolean |
In strict mode, the reader throws an exception on |
LineMapper
As with RowMapper
, which takes a low-level construct such as ResultSet
and returns
an Object
, flat file processing requires the same construct to convert a String
line
into an Object
, as shown in the following interface definition:
public interface LineMapper<T> {
T mapLine(String line, int lineNumber) throws Exception;
}
The basic contract is that, given the current line and the line number with which it is
associated, the mapper should return a resulting domain object. This is similar to
RowMapper
, in that each line is associated with its line number, just as each row in a
ResultSet
is tied to its row number. This allows the line number to be tied to the
resulting domain object for identity comparison or for more informative logging. However,
unlike RowMapper
, the LineMapper
is given a raw line which, as discussed above, only
gets you halfway there. The line must be tokenized into a FieldSet
, which can then be
mapped to an object, as described later in this document.
LineTokenizer
An abstraction for turning a line of input into a FieldSet
is necessary because there
can be many formats of flat file data that need to be converted to a FieldSet
. In
Spring Batch, this interface is the LineTokenizer
:
public interface LineTokenizer {
FieldSet tokenize(String line);
}
The contract of a LineTokenizer
is such that, given a line of input (in theory the
String
could encompass more than one line), a FieldSet
representing the line is
returned. This FieldSet
can then be passed to a FieldSetMapper
. Spring Batch contains
the following LineTokenizer
implementations:
-
DelimitedLineTokenizer
: Used for files where fields in a record are separated by a delimiter. The most common delimiter is a comma, but pipes or semicolons are often used as well. -
FixedLengthTokenizer
: Used for files where fields in a record are each a "fixed width". The width of each field must be defined for each record type. -
PatternMatchingCompositeLineTokenizer
: Determines whichLineTokenizer
among a list of tokenizers should be used on a particular line by checking against a pattern.
FieldSetMapper
The FieldSetMapper
interface defines a single method, mapFieldSet
, which takes a
FieldSet
object and maps its contents to an object. This object may be a custom DTO, a
domain object, or an array, depending on the needs of the job. The FieldSetMapper
is
used in conjunction with the LineTokenizer
to translate a line of data from a resource
into an object of the desired type, as shown in the following interface definition:
public interface FieldSetMapper<T> {
T mapFieldSet(FieldSet fieldSet) throws BindException;
}
The pattern used is the same as the RowMapper
used by JdbcTemplate
.
DefaultLineMapper
Now that the basic interfaces for reading in flat files have been defined, it becomes clear that three basic steps are required:
-
Read one line from the file.
-
Pass the
String
line into theLineTokenizer#tokenize()
method to retrieve aFieldSet
. -
Pass the
FieldSet
returned from tokenizing to aFieldSetMapper
, returning the result from theItemReader#read()
method.
The two interfaces described above represent two separate tasks: converting a line into a
FieldSet
and mapping a FieldSet
to a domain object. Because the input of a
LineTokenizer
matches the input of the LineMapper
(a line), and the output of a
FieldSetMapper
matches the output of the LineMapper
, a default implementation that
uses both a LineTokenizer
and a FieldSetMapper
is provided. The DefaultLineMapper
,
shown in the following class definition, represents the behavior most users need:
public class DefaultLineMapper<T> implements LineMapper<>, InitializingBean {
private LineTokenizer tokenizer;
private FieldSetMapper<T> fieldSetMapper;
public T mapLine(String line, int lineNumber) throws Exception {
return fieldSetMapper.mapFieldSet(tokenizer.tokenize(line));
}
public void setLineTokenizer(LineTokenizer tokenizer) {
this.tokenizer = tokenizer;
}
public void setFieldSetMapper(FieldSetMapper<T> fieldSetMapper) {
this.fieldSetMapper = fieldSetMapper;
}
}
The above functionality is provided in a default implementation, rather than being built into the reader itself (as was done in previous versions of the framework) to allow users greater flexibility in controlling the parsing process, especially if access to the raw line is needed.
Simple Delimited File Reading Example
The following example illustrates how to read a flat file with an actual domain scenario. This particular batch job reads in football players from the following file:
ID,lastName,firstName,position,birthYear,debutYear "AbduKa00,Abdul-Jabbar,Karim,rb,1974,1996", "AbduRa00,Abdullah,Rabih,rb,1975,1999", "AberWa00,Abercrombie,Walter,rb,1959,1982", "AbraDa00,Abramowicz,Danny,wr,1945,1967", "AdamBo00,Adams,Bob,te,1946,1969", "AdamCh00,Adams,Charlie,wr,1979,2003"
The contents of this file are mapped to the following
Player
domain object:
public class Player implements Serializable {
private String ID;
private String lastName;
private String firstName;
private String position;
private int birthYear;
private int debutYear;
public String toString() {
return "PLAYER:ID=" + ID + ",Last Name=" + lastName +
",First Name=" + firstName + ",Position=" + position +
",Birth Year=" + birthYear + ",DebutYear=" +
debutYear;
}
// setters and getters...
}
To map a FieldSet
into a Player
object, a FieldSetMapper
that returns players needs
to be defined, as shown in the following example:
protected static class PlayerFieldSetMapper implements FieldSetMapper<Player> {
public Player mapFieldSet(FieldSet fieldSet) {
Player player = new Player();
player.setID(fieldSet.readString(0));
player.setLastName(fieldSet.readString(1));
player.setFirstName(fieldSet.readString(2));
player.setPosition(fieldSet.readString(3));
player.setBirthYear(fieldSet.readInt(4));
player.setDebutYear(fieldSet.readInt(5));
return player;
}
}
The file can then be read by correctly constructing a FlatFileItemReader
and calling
read
, as shown in the following example:
FlatFileItemReader<Player> itemReader = new FlatFileItemReader<>();
itemReader.setResource(new FileSystemResource("resources/players.csv"));
DefaultLineMapper<Player> lineMapper = new DefaultLineMapper<>();
//DelimitedLineTokenizer defaults to comma as its delimiter
lineMapper.setLineTokenizer(new DelimitedLineTokenizer());
lineMapper.setFieldSetMapper(new PlayerFieldSetMapper());
itemReader.setLineMapper(lineMapper);
itemReader.open(new ExecutionContext());
Player player = itemReader.read();
Each call to read
returns a new
Player
object from each line in the file. When the end of the file is
reached, null
is returned.
Mapping Fields by Name
There is one additional piece of functionality that is allowed by both
DelimitedLineTokenizer
and FixedLengthTokenizer
and that is similar in function to a
JDBC ResultSet
. The names of the fields can be injected into either of these
LineTokenizer
implementations to increase the readability of the mapping function.
First, the column names of all fields in the flat file are injected into the tokenizer,
as shown in the following example:
tokenizer.setNames(new String[] {"ID", "lastName", "firstName", "position", "birthYear", "debutYear"});
A FieldSetMapper
can use this information as follows:
public class PlayerMapper implements FieldSetMapper<Player> {
public Player mapFieldSet(FieldSet fs) {
if (fs == null) {
return null;
}
Player player = new Player();
player.setID(fs.readString("ID"));
player.setLastName(fs.readString("lastName"));
player.setFirstName(fs.readString("firstName"));
player.setPosition(fs.readString("position"));
player.setDebutYear(fs.readInt("debutYear"));
player.setBirthYear(fs.readInt("birthYear"));
return player;
}
}
Automapping FieldSets to Domain Objects
For many, having to write a specific FieldSetMapper
is equally as cumbersome as writing
a specific RowMapper
for a JdbcTemplate
. Spring Batch makes this easier by providing
a FieldSetMapper
that automatically maps fields by matching a field name with a setter
on the object using the JavaBean specification.
-
Java
-
XML
Again using the football example, the BeanWrapperFieldSetMapper
configuration looks like
the following snippet in Java:
@Bean
public FieldSetMapper fieldSetMapper() {
BeanWrapperFieldSetMapper fieldSetMapper = new BeanWrapperFieldSetMapper();
fieldSetMapper.setPrototypeBeanName("player");
return fieldSetMapper;
}
@Bean
@Scope("prototype")
public Player player() {
return new Player();
}
Again using the football example, the BeanWrapperFieldSetMapper
configuration looks like
the following snippet in XML:
<bean id="fieldSetMapper"
class="org.springframework.batch.item.file.mapping.BeanWrapperFieldSetMapper">
<property name="prototypeBeanName" value="player" />
</bean>
<bean id="player"
class="org.springframework.batch.samples.domain.Player"
scope="prototype" />
For each entry in the FieldSet
, the mapper looks for a corresponding setter on a new
instance of the Player
object (for this reason, prototype scope is required) in the
same way the Spring container looks for setters matching a property name. Each available
field in the FieldSet
is mapped, and the resultant Player
object is returned, with no
code required.
Fixed Length File Formats
So far, only delimited files have been discussed in much detail. However, they represent only half of the file reading picture. Many organizations that use flat files use fixed length formats. An example fixed length file follows:
UK21341EAH4121131.11customer1 UK21341EAH4221232.11customer2 UK21341EAH4321333.11customer3 UK21341EAH4421434.11customer4 UK21341EAH4521535.11customer5
While this looks like one large field, it actually represent 4 distinct fields:
-
ISIN: Unique identifier for the item being ordered - 12 characters long.
-
Quantity: Number of the item being ordered - 3 characters long.
-
Price: Price of the item - 5 characters long.
-
Customer: ID of the customer ordering the item - 9 characters long.
When configuring the FixedLengthLineTokenizer
, each of these lengths must be provided
in the form of ranges.
-
Java
-
XML
The following example shows how to define ranges for the FixedLengthLineTokenizer
in
Java:
@Bean
public FixedLengthTokenizer fixedLengthTokenizer() {
FixedLengthTokenizer tokenizer = new FixedLengthTokenizer();
tokenizer.setNames("ISIN", "Quantity", "Price", "Customer");
tokenizer.setColumns(new Range(1, 12),
new Range(13, 15),
new Range(16, 20),
new Range(21, 29));
return tokenizer;
}
The following example shows how to define ranges for the FixedLengthLineTokenizer
in
XML:
<bean id="fixedLengthLineTokenizer"
class="org.springframework.batch.item.file.transform.FixedLengthTokenizer">
<property name="names" value="ISIN,Quantity,Price,Customer" />
<property name="columns" value="1-12, 13-15, 16-20, 21-29" />
</bean>
Because the FixedLengthLineTokenizer
uses the same LineTokenizer
interface as
discussed earlier, it returns the same FieldSet
as if a delimiter had been used. This
allows the same approaches to be used in handling its output, such as using the
BeanWrapperFieldSetMapper
.
Supporting the preceding syntax for ranges requires that a specialized property editor,
|
Because the FixedLengthLineTokenizer
uses the same LineTokenizer
interface as
discussed above, it returns the same FieldSet
as if a delimiter had been used. This
lets the same approaches be used in handling its output, such as using the
BeanWrapperFieldSetMapper
.
Multiple Record Types within a Single File
All of the file reading examples up to this point have all made a key assumption for simplicity’s sake: all of the records in a file have the same format. However, this may not always be the case. It is very common that a file might have records with different formats that need to be tokenized differently and mapped to different objects. The following excerpt from a file illustrates this:
USER;Smith;Peter;;T;20014539;F LINEA;1044391041ABC037.49G201XX1383.12H LINEB;2134776319DEF422.99M005LI
In this file we have three types of records, "USER", "LINEA", and "LINEB". A "USER" line
corresponds to a User
object. "LINEA" and "LINEB" both correspond to Line
objects,
though a "LINEA" has more information than a "LINEB".
The ItemReader
reads each line individually, but we must specify different
LineTokenizer
and FieldSetMapper
objects so that the ItemWriter
receives the
correct items. The PatternMatchingCompositeLineMapper
makes this easy by allowing maps
of patterns to LineTokenizers
and patterns to FieldSetMappers
to be configured.
-
Java
-
XML
@Bean
public PatternMatchingCompositeLineMapper orderFileLineMapper() {
PatternMatchingCompositeLineMapper lineMapper =
new PatternMatchingCompositeLineMapper();
Map<String, LineTokenizer> tokenizers = new HashMap<>(3);
tokenizers.put("USER*", userTokenizer());
tokenizers.put("LINEA*", lineATokenizer());
tokenizers.put("LINEB*", lineBTokenizer());
lineMapper.setTokenizers(tokenizers);
Map<String, FieldSetMapper> mappers = new HashMap<>(2);
mappers.put("USER*", userFieldSetMapper());
mappers.put("LINE*", lineFieldSetMapper());
lineMapper.setFieldSetMappers(mappers);
return lineMapper;
}
The following example shows how to define ranges for the FixedLengthLineTokenizer
in
XML:
<bean id="orderFileLineMapper"
class="org.spr...PatternMatchingCompositeLineMapper">
<property name="tokenizers">
<map>
<entry key="USER*" value-ref="userTokenizer" />
<entry key="LINEA*" value-ref="lineATokenizer" />
<entry key="LINEB*" value-ref="lineBTokenizer" />
</map>
</property>
<property name="fieldSetMappers">
<map>
<entry key="USER*" value-ref="userFieldSetMapper" />
<entry key="LINE*" value-ref="lineFieldSetMapper" />
</map>
</property>
</bean>
In this example, "LINEA" and "LINEB" have separate LineTokenizer
instances, but they both use
the same FieldSetMapper
.
The PatternMatchingCompositeLineMapper
uses the PatternMatcher#match
method
in order to select the correct delegate for each line. The PatternMatcher
allows for
two wildcard characters with special meaning: the question mark ("?") matches exactly one
character, while the asterisk ("*") matches zero or more characters. Note that, in the
preceding configuration, all patterns end with an asterisk, making them effectively
prefixes to lines. The PatternMatcher
always matches the most specific pattern
possible, regardless of the order in the configuration. So if "LINE*" and "LINEA*" were
both listed as patterns, "LINEA" would match pattern "LINEA*", while "LINEB" would match
pattern "LINE*". Additionally, a single asterisk ("*") can serve as a default by matching
any line not matched by any other pattern.
-
Java
-
XML
The following example shows how to match a line not matched by any other pattern in Java:
...
tokenizers.put("*", defaultLineTokenizer());
...
The following example shows how to match a line not matched by any other pattern in XML:
<entry key="*" value-ref="defaultLineTokenizer" />
There is also a PatternMatchingCompositeLineTokenizer
that can be used for tokenization
alone.
It is also common for a flat file to contain records that each span multiple lines. To
handle this situation, a more complex strategy is required. A demonstration of this
common pattern can be found in the multiLineRecords
sample.
Exception Handling in Flat Files
There are many scenarios when tokenizing a line may cause exceptions to be thrown. Many
flat files are imperfect and contain incorrectly formatted records. Many users choose to
skip these erroneous lines while logging the issue, the original line, and the line
number. These logs can later be inspected manually or by another batch job. For this
reason, Spring Batch provides a hierarchy of exceptions for handling parse exceptions:
FlatFileParseException
and FlatFileFormatException
. FlatFileParseException
is
thrown by the FlatFileItemReader
when any errors are encountered while trying to read a
file. FlatFileFormatException
is thrown by implementations of the LineTokenizer
interface and indicates a more specific error encountered while tokenizing.
IncorrectTokenCountException
Both DelimitedLineTokenizer
and FixedLengthLineTokenizer
have the ability to specify
column names that can be used for creating a FieldSet
. However, if the number of column
names does not match the number of columns found while tokenizing a line, the FieldSet
cannot be created, and an IncorrectTokenCountException
is thrown, which contains the
number of tokens encountered, and the number expected, as shown in the following example:
tokenizer.setNames(new String[] {"A", "B", "C", "D"});
try {
tokenizer.tokenize("a,b,c");
}
catch (IncorrectTokenCountException e) {
assertEquals(4, e.getExpectedCount());
assertEquals(3, e.getActualCount());
}
Because the tokenizer was configured with 4 column names but only 3 tokens were found in
the file, an IncorrectTokenCountException
was thrown.
IncorrectLineLengthException
Files formatted in a fixed-length format have additional requirements when parsing because, unlike a delimited format, each column must strictly adhere to its predefined width. If the total line length does not equal the widest value of this column, an exception is thrown, as shown in the following example:
tokenizer.setColumns(new Range[] { new Range(1, 5),
new Range(6, 10),
new Range(11, 15) });
try {
tokenizer.tokenize("12345");
fail("Expected IncorrectLineLengthException");
}
catch (IncorrectLineLengthException ex) {
assertEquals(15, ex.getExpectedLength());
assertEquals(5, ex.getActualLength());
}
The configured ranges for the tokenizer above are: 1-5, 6-10, and 11-15. Consequently,
the total length of the line is 15. However, in the preceding example, a line of length 5
was passed in, causing an IncorrectLineLengthException
to be thrown. Throwing an
exception here rather than only mapping the first column allows the processing of the
line to fail earlier and with more information than it would contain if it failed while
trying to read in column 2 in a FieldSetMapper
. However, there are scenarios where the
length of the line is not always constant. For this reason, validation of line length can
be turned off via the 'strict' property, as shown in the following example:
tokenizer.setColumns(new Range[] { new Range(1, 5), new Range(6, 10) });
tokenizer.setStrict(false);
FieldSet tokens = tokenizer.tokenize("12345");
assertEquals("12345", tokens.readString(0));
assertEquals("", tokens.readString(1));
The preceding example is almost identical to the one before it, except that
tokenizer.setStrict(false)
was called. This setting tells the tokenizer to not enforce
line lengths when tokenizing the line. A FieldSet
is now correctly created and
returned. However, it contains only empty tokens for the remaining values.