Class PythonScalarFunction
- All Implemented Interfaces:
Serializable,FunctionDefinition,PythonFunction
- See Also:
-
Constructor Summary
ConstructorsConstructorDescriptionPythonScalarFunction(String name, byte[] serializedScalarFunction, String[] inputTypesString, String resultTypeString, PythonFunctionKind pythonFunctionKind, boolean deterministic, boolean takesRowAsInput, PythonEnv pythonEnv) PythonScalarFunction(String name, byte[] serializedScalarFunction, PythonFunctionKind pythonFunctionKind, boolean deterministic, boolean takesRowAsInput, PythonEnv pythonEnv) PythonScalarFunction(String name, byte[] serializedScalarFunction, DataType[] inputTypes, DataType resultType, PythonFunctionKind pythonFunctionKind, boolean deterministic, boolean takesRowAsInput, PythonEnv pythonEnv) -
Method Summary
Modifier and TypeMethodDescriptionorg.apache.flink.api.common.typeinfo.TypeInformation[]getParameterTypes(Class[] signature) ReturnsTypeInformationabout the operands of the evaluation method with a given signature.Returns the Python execution environment.Returns the kind of the user-defined python function.org.apache.flink.api.common.typeinfo.TypeInformationgetResultType(Class[] signature) Returns the result type of the evaluation method with a given signature.byte[]Returns the serialized representation of the user-defined python function.getTypeInference(DataTypeFactory typeFactory) Returns the logic for performing type inference of a call to this function definition.booleanReturns information about the determinism of the function's results.booleanReturns Whether the Python function takes row as input instead of each columns of a row.toString()Returns the name of the UDF that is used for plan explanation and logging.Methods inherited from class org.apache.flink.table.functions.ScalarFunction
getKindMethods inherited from class org.apache.flink.table.functions.UserDefinedFunction
close, functionIdentifier, openMethods inherited from class java.lang.Object
clone, equals, finalize, getClass, hashCode, notify, notifyAll, wait, wait, waitMethods inherited from interface org.apache.flink.table.functions.FunctionDefinition
getRequirements, supportsConstantFolding
-
Constructor Details
-
PythonScalarFunction
public PythonScalarFunction(String name, byte[] serializedScalarFunction, DataType[] inputTypes, DataType resultType, PythonFunctionKind pythonFunctionKind, boolean deterministic, boolean takesRowAsInput, PythonEnv pythonEnv) -
PythonScalarFunction
public PythonScalarFunction(String name, byte[] serializedScalarFunction, String[] inputTypesString, String resultTypeString, PythonFunctionKind pythonFunctionKind, boolean deterministic, boolean takesRowAsInput, PythonEnv pythonEnv) -
PythonScalarFunction
public PythonScalarFunction(String name, byte[] serializedScalarFunction, PythonFunctionKind pythonFunctionKind, boolean deterministic, boolean takesRowAsInput, PythonEnv pythonEnv)
-
-
Method Details
-
eval
-
getSerializedPythonFunction
public byte[] getSerializedPythonFunction()Description copied from interface:PythonFunctionReturns the serialized representation of the user-defined python function.- Specified by:
getSerializedPythonFunctionin interfacePythonFunction
-
getPythonEnv
Description copied from interface:PythonFunctionReturns the Python execution environment.- Specified by:
getPythonEnvin interfacePythonFunction
-
getPythonFunctionKind
Description copied from interface:PythonFunctionReturns the kind of the user-defined python function.- Specified by:
getPythonFunctionKindin interfacePythonFunction
-
takesRowAsInput
public boolean takesRowAsInput()Description copied from interface:PythonFunctionReturns Whether the Python function takes row as input instead of each columns of a row.- Specified by:
takesRowAsInputin interfacePythonFunction
-
isDeterministic
public boolean isDeterministic()Description copied from interface:FunctionDefinitionReturns information about the determinism of the function's results.It returns
trueif and only if a call to this function is guaranteed to always return the same result given the same parameters.trueis assumed by default. If the function is not purely functional likerandom(), date(), now(), ...this method must returnfalse.Furthermore, return
falseif the planner should always execute this function on the cluster side. In other words: the planner should not perform constant expression reduction during planning for constant calls to this function.- Specified by:
isDeterministicin interfaceFunctionDefinition
-
getParameterTypes
Description copied from class:ScalarFunctionReturnsTypeInformationabout the operands of the evaluation method with a given signature.- Overrides:
getParameterTypesin classScalarFunction
-
getResultType
Description copied from class:ScalarFunctionReturns the result type of the evaluation method with a given signature.- Overrides:
getResultTypein classScalarFunction
-
getTypeInference
Description copied from class:UserDefinedFunctionReturns the logic for performing type inference of a call to this function definition.The type inference process is responsible for inferring unknown types of input arguments, validating input arguments, and producing result types. The type inference process happens independent of a function body. The output of the type inference is used to search for a corresponding runtime implementation.
Instances of type inference can be created by using
TypeInference.newBuilder().See
BuiltInFunctionDefinitionsfor concrete usage examples.The type inference for user-defined functions is automatically extracted using reflection. It does this by analyzing implementation methods such as
eval() or accumulate()and the generic parameters of a function class if present. If the reflective information is not sufficient, it can be supported and enriched withDataTypeHintandFunctionHintannotations.Note: Overriding this method is only recommended for advanced users. If a custom type inference is specified, it is the responsibility of the implementer to make sure that the output of the type inference process matches with the implementation method:
The implementation method must comply with each
DataType.getConversionClass()returned by the type inference. For example, ifDataTypes.TIMESTAMP(3).bridgedTo(java.sql.Timestamp.class)is an expected argument type, the method must accept a calleval(java.sql.Timestamp).Regular Java calling semantics (including type widening and autoboxing) are applied when calling an implementation method which means that the signature can be
eval(java.lang.Object).The runtime will take care of converting the data to the data format specified by the
DataType.getConversionClass()coming from the type inference logic.- Specified by:
getTypeInferencein interfaceFunctionDefinition- Overrides:
getTypeInferencein classScalarFunction
-
toString
Description copied from class:UserDefinedFunctionReturns the name of the UDF that is used for plan explanation and logging.- Overrides:
toStringin classUserDefinedFunction
-