Apache Flink handles data types and serialization in a unique way, containing its own type descriptors, generic type extraction, and type serialization framework. This document describes the concepts and the rationale behind them.
Flink places some restrictions on the type of elements that can be in a DataSet or DataStream. The reason for this is that the system analyzes the types to determine efficient execution strategies.
There are seven different categories of data types:
Tuples are composite types that contain a fixed number of fields with various types.
The Java API provides classes from Tuple1
up to Tuple25
. Every field of a tuple
can be an arbitrary Flink type including further tuples, resulting in nested tuples. Fields of a
tuple can be accessed directly using the field’s name as tuple.f4
, or using the generic getter method
tuple.getField(int position)
. The field indices start at 0. Note that this stands in contrast
to the Scala tuples, but it is more consistent with Java’s general indexing.
Scala case classes (and Scala tuples which are a special case of case classes), are composite types that contain a fixed number of fields with various types. Tuple fields are addressed by their 1-offset names such as _1
for the first field. Case class fields are accessed by their name.
Java and Scala classes are treated by Flink as a special POJO data type if they fulfill the following requirements:
The class must be public.
It must have a public constructor without arguments (default constructor).
All fields are either public or must be accessible through getter and setter functions. For a field called foo
the getter and setter methods must be named getFoo()
and setFoo()
.
The type of a field must be supported by a registered serializer.
POJOs are generally represented with a PojoTypeInfo
and serialized with the PojoSerializer
(using Kryo as configurable fallback).
The exception is when the POJOs are actually Avro types (Avro Specific Records) or produced as “Avro Reflect Types”.
In that case the POJO’s are represented by an AvroTypeInfo
and serialized with the AvroSerializer
.
You can also register your own custom serializer if required; see Serialization for further information.
Flink analyzes the structure of POJO types, i.e., it learns about the fields of a POJO. As a result POJO types are easier to use than general types. Moreover, Flink can process POJOs more efficiently than general types.
The following example shows a simple POJO with two public fields.
Flink supports all Java and Scala primitive types such as Integer
, String
, and Double
.
Flink supports most Java and Scala classes (API and custom). Restrictions apply to classes containing fields that cannot be serialized, like file pointers, I/O streams, or other native resources. Classes that follow the Java Beans conventions work well in general.
All classes that are not identified as POJO types (see POJO requirements above) are handled by Flink as general class types. Flink treats these data types as black boxes and is not able to access their content (e.g., for efficient sorting). General types are de/serialized using the serialization framework Kryo.
Value types describe their serialization and deserialization manually. Instead of going through a
general purpose serialization framework, they provide custom code for those operations by means of
implementing the org.apache.flink.types.Value
interface with the methods read
and write
. Using
a Value type is reasonable when general purpose serialization would be highly inefficient. An
example would be a data type that implements a sparse vector of elements as an array. Knowing that
the array is mostly zero, one can use a special encoding for the non-zero elements, while the
general purpose serialization would simply write all array elements.
The org.apache.flink.types.CopyableValue
interface supports manual internal cloning logic in a
similar way.
Flink comes with pre-defined Value types that correspond to basic data types. (ByteValue
,
ShortValue
, IntValue
, LongValue
, FloatValue
, DoubleValue
, StringValue
, CharValue
,
BooleanValue
). These Value types act as mutable variants of the basic data types: Their value can
be altered, allowing programmers to reuse objects and take pressure off the garbage collector.
You can use types that implement the org.apache.hadoop.Writable
interface. The serialization logic
defined in the write()
and readFields()
methods will be used for serialization.
You can use special types, including Scala’s Either
, Option
, and Try
.
The Java API has its own custom implementation of Either
.
Similarly to Scala’s Either
, it represents a value of two possible types, Left or Right.
Either
can be useful for error handling or operators that need to output two different types of records.
Note: This Section is only relevant for Java.
The Java compiler throws away much of the generic type information after compilation. This is
known as type erasure in Java. It means that at runtime, an instance of an object does not know
its generic type any more. For example, instances of DataStream<String>
and DataStream<Long>
look the
same to the JVM.
Flink requires type information at the time when it prepares the program for execution (when the
main method of the program is called). The Flink Java API tries to reconstruct the type information
that was thrown away in various ways and store it explicitly in the data sets and operators. You can
retrieve the type via DataStream.getType()
. The method returns an instance of TypeInformation
,
which is Flink’s internal way of representing types.
The type inference has its limits and needs the “cooperation” of the programmer in some cases.
Examples for that are methods that create data sets from collections, such as
ExecutionEnvironment.fromCollection(),
where you can pass an argument that describes the type. But
also generic functions like MapFunction<I, O>
may need extra type information.
The ResultTypeQueryable interface can be implemented by input formats and functions to tell the API explicitly about their return type. The input types that the functions are invoked with can usually be inferred by the result types of the previous operations.
Flink tries to infer a lot of information about the data types that are exchanged and stored during the distributed computation. Think about it like a database that infers the schema of tables. In most cases, Flink infers all necessary information seamlessly by itself. Having the type information allows Flink to do some cool things:
The more Flink knows about data types, the better the serialization and data layout schemes are. That is quite important for the memory usage paradigm in Flink (work on serialized data inside/outside the heap where ever possible and make serialization very cheap).
Finally, it also spares users in the majority of cases from worrying about serialization frameworks and having to register types.
In general, the information about data types is needed during the pre-flight phase - that is, when the program’s calls on DataStream
and DataSet
are made, and before any call to execute()
, print()
, count()
, or collect()
.
The most frequent issues where users need to interact with Flink’s data type handling are:
Registering subtypes: If the function signatures describe only the supertypes, but they actually use subtypes of those during execution,
it may increase performance a lot to make Flink aware of these subtypes.
For that, call .registerType(clazz)
on the StreamExecutionEnvironment
or ExecutionEnvironment
for each subtype.
Registering custom serializers: Flink falls back to Kryo for the types that it does not handle transparently
by itself. Not all types are seamlessly handled by Kryo (and thus by Flink). For example, many Google Guava collection types do not work well
by default. The solution is to register additional serializers for the types that cause problems.
Call .getConfig().addDefaultKryoSerializer(clazz, serializer)
on the StreamExecutionEnvironment
or ExecutionEnvironment
.
Additional Kryo serializers are available in many libraries. See Custom Serializers for more details on working with custom serializers.
Adding Type Hints: Sometimes, when Flink cannot infer the generic types despite all tricks, a user must pass a type hint. That is generally only necessary in the Java API. The Type Hints Section describes that in more detail.
Manually creating a TypeInformation
: This may be necessary for some API calls where it is not possible for Flink to infer
the data types due to Java’s generic type erasure. See Creating a TypeInformation or TypeSerializer
for details.
The class TypeInformation is the base class for all type descriptors. It reveals some basic properties of the type and can generate serializers and, in specializations, comparators for the types. (Note that comparators in Flink do much more than defining an order - they are basically the utility to handle keys)
Internally, Flink makes the following distinctions between types:
Basic types: All Java primitives and their boxed form, plus void
, String
, Date
, BigDecimal
, and BigInteger
.
Primitive arrays and Object arrays
Composite types
Flink Java Tuples (part of the Flink Java API): max 25 fields, null fields not supported
Scala case classes (including Scala tuples): null fields not supported
Row: tuples with arbitrary number of fields and support for null fields
POJOs: classes that follow a certain bean-like pattern
Auxiliary types (Option, Either, Lists, Maps, …)
Generic types: These will not be serialized by Flink itself, but by Kryo.
POJOs are of particular interest, because they support the creation of complex types and the use of field
names in the definition of keys: dataSet.join(another).where("name").equalTo("personName")
.
They are also transparent to the runtime and can be handled very efficiently by Flink.
Flink recognizes a data type as a POJO type (and allows “by-name” field referencing) if the following conditions are fulfilled:
Note that when a user-defined data type can’t be recognized as a POJO type, it must be processed as GenericType and serialized with Kryo.
To create a TypeInformation object for a type, use the language specific way:
Because Java generally erases generic type information, you need to pass the type to the TypeInformation construction:
For non-generic types, you can pass the Class:
For generic types, you need to “capture” the generic type information via the TypeHint
:
Internally, this creates an anonymous subclass of the TypeHint that captures the generic information to preserve it until runtime.
In Scala, Flink uses macros that runs at compile time and captures all generic type information while it is still available.
You can still use the same method as in Java as a fallback.
To create a TypeSerializer
, simply call typeInfo.createSerializer(config)
on the TypeInformation
object.
The config
parameter is of type ExecutionConfig
and holds the information about the program’s registered
custom serializers. Where ever possibly, try to pass the programs proper ExecutionConfig. You can usually
obtain it from DataStream
or DataSet
via calling getExecutionConfig()
. Inside functions (like MapFunction
), you can
get it by making the function a Rich Function and calling getRuntimeContext().getExecutionConfig()
.
Scala has very elaborate concepts for runtime type information though type manifests and class tags. In general, types and methods have access to the types of their generic parameters - thus, Scala programs do not suffer from type erasure as Java programs do.
In addition, Scala allows to run custom code in the Scala Compiler through Scala Macros - that means that some Flink code gets executed whenever you compile a Scala program written against Flink’s Scala API.
We use the Macros to look at the parameter types and return types of all user functions during compilation - that is the point in time when certainly all type information is perfectly available. Within the macro, we create a TypeInformation for the function’s return types (or parameter types) and make it part of the operation.
In the case where TypeInformation could not be created, programs fail to compile with an error stating “could not find implicit value for evidence parameter of type TypeInformation”.
A frequent reason if that the code that generates the TypeInformation has not been imported. Make sure to import the entire flink.api.scala package.
Another common cause are generic methods, which can be fixed as described in the following section.
Consider the following case below:
For such generic methods, the data types of the function parameters and return type may not be the same for every call and are not known at the site where the method is defined. The code above will result in an error that not enough implicit evidence is available.
In such cases, the type information has to be generated at the invocation site and passed to the method. Scala offers implicit parameters for that.
The following code tells Scala to bring a type information for T into the function. The type information will then be generated at the sites where the method is invoked, rather than where the method is defined.
In the general case, Java erases generic type information. Flink tries to reconstruct as much type information as possible via reflection, using the few bits that Java preserves (mainly function signatures and subclass information). This logic also contains some simple type inference for cases where the return type of a function depends on its input type:
There are cases where Flink cannot reconstruct all generic type information. In that case, a user has to help out via type hints.
In cases where Flink cannot reconstruct the erased generic type information, the Java API offers so called type hints. The type hints tell the system the type of the data stream or data set produced by a function:
The returns
statement specifies the produced type, in this case via a class. The hints support
type definition via
returns(new TypeHint<Tuple2<Integer, SomeType>>(){})
. The TypeHint
class
can capture generic type information and preserve it for the runtime (via an anonymous subclass).Type extraction for Java 8 lambdas works differently than for non-lambdas, because lambdas are not associated with an implementing class that extends the function interface.
Currently, Flink tries to figure out which method implements the lambda and uses Java’s generic signatures to determine the parameter types and the return type. However, these signatures are not generated for lambdas by all compilers (as of writing this document only reliably by the Eclipse JDT compiler from 4.5 onwards).
The PojoTypeInfo
is creating serializers for all the fields inside the POJO. Standard types such as
int, long, String etc. are handled by serializers we ship with Flink.
For all other types, we fall back to Kryo.
If Kryo is not able to handle the type, you can ask the PojoTypeInfo
to serialize the POJO using Avro.
To do so, you have to call
Note that Flink is automatically serializing POJOs generated by Avro with the Avro serializer.
If you want your entire POJO Type to be treated by the Kryo serializer, set
If Kryo is not able to serialize your POJO, you can add a custom serializer to Kryo, using
There are different variants of these methods available.
There are cases when programs may want to explicitly avoid using Kryo as a fallback for generic types. The most common one is wanting to ensure that all types are efficiently serialized either through Flink’s own serializers, or via user-defined custom serializers.
The setting below will raise an exception whenever a data type is encountered that would go through Kryo:
A type information factory allows for plugging-in user-defined type information into the Flink type system.
You have to implement org.apache.flink.api.common.typeinfo.TypeInfoFactory
to return your custom type information.
The factory is called during the type extraction phase if the corresponding type has been annotated
with the @org.apache.flink.api.common.typeinfo.TypeInfo
annotation.
Type information factories can be used in both the Java and Scala API.
In a hierarchy of types the closest factory will be chosen while traversing upwards, however, a built-in factory has highest precedence. A factory has also higher precedence than Flink’s built-in types, therefore you should know what you are doing.
The following example shows how to annotate a custom type MyTuple
and supply custom type information for it using a factory in Java.
The annotated custom type:
The factory supplying custom type information:
The method createTypeInfo(Type, Map<String, TypeInformation<?>>)
creates type information for the type the factory is targeted for.
The parameters provide additional information about the type itself as well as the type’s generic type parameters if available.
If your type contains generic parameters that might need to be derived from the input type of a Flink function, make sure to also
implement org.apache.flink.api.common.typeinfo.TypeInformation#getGenericParameters
for a bidirectional mapping of generic
parameters to type information.