Workflow1
LevenshteinDistance
LevenshteinDistanceServicePortType_computeDistance
LevenshteinDistanceServicePortType:computeDistance
LevenshteinDistanceServicePortType_computeDistance_out_0
LevenshteinDistanceServicePortType_computeDistance_in_0
LevenshteinDistanceServicePortType_computeDistance_in_1
LevenshteinDistanceServicePortType_computeDistance_ctrl_in_0
LevenshteinDistanceServicePortType_computeDistance_ctrl_out_0
369
159
_
{http://interpreter.xbaya.airavata.apache.org}LevenshteinDistanceServicePortType
computeDistance
Input
Input
Input_out_0
42
32
{http://www.w3.org/2001/XMLSchema}any
abc
true
Input_2
Input
Input_2_out_0
29
244
{http://www.w3.org/2001/XMLSchema}any
def
true
ForEach
ForEach
ForEach_out_0
ForEach_out_1
ForEach_in_0
ForEach_in_1
ForEach_ctrl_in_0
ForEach_ctrl_out_0
176
146
EndForEach
EndForEach
EndForEach_out_0
EndForEach_in_0
EndForEach_ctrl_in_0
EndForEach_ctrl_out_0
842
167
Output
Output
Output_in_0
897
37
{http://www.w3.org/2001/XMLSchema}int
LevenshteinDistanceServicePortType_computeDistance_in_0
sequence1
LevenshteinDistanceServicePortType_computeDistance
LevenshteinDistanceServicePortType_computeDistance_in_1
sequence2
LevenshteinDistanceServicePortType_computeDistance
LevenshteinDistanceServicePortType_computeDistance_out_0
return
LevenshteinDistanceServicePortType_computeDistance
LevenshteinDistanceServicePortType_computeDistance_ctrl_in_0
control
LevenshteinDistanceServicePortType_computeDistance
LevenshteinDistanceServicePortType_computeDistance_ctrl_out_0
control
LevenshteinDistanceServicePortType_computeDistance
Input_out_0
Parameter
Input
Input_2_out_0
Parameter
Input_2
ForEach_in_0
Input
ForEach
ForEach_out_0
Output1
ForEach
ForEach_ctrl_in_0
control
ForEach
ForEach_ctrl_out_0
control
ForEach
EndForEach_in_0
Input
EndForEach
EndForEach_out_0
Output
EndForEach
EndForEach_ctrl_in_0
control
EndForEach
EndForEach_ctrl_out_0
control
EndForEach
Output_in_0
Parameter
Output
ForEach_in_1
Input
ForEach
ForEach_out_1
Output1
ForEach
LevenshteinDistanceServicePortType_computeDistance_out_0
EndForEach_in_0
ForEach_out_0
LevenshteinDistanceServicePortType_computeDistance_in_0
ForEach_out_1
LevenshteinDistanceServicePortType_computeDistance_in_1
Input_out_0
ForEach_in_0
Input_2_out_0
ForEach_in_1
EndForEach_out_0
Output_in_0
<wsdl:definitions targetNamespace="http://interpreter.xbaya.airavata.apache.org" xmlns:ns1="http://org.apache.axis2/xsd"
xmlns:ns="http://interpreter.xbaya.airavata.apache.org"
xmlns:wsaw="http://www.w3.org/2006/05/addressing/wsdl" xmlns:http="http://schemas.xmlsoap.org/wsdl/http/" xmlns:xs="http://www.w3.org/2001/XMLSchema" xmlns:mime="http://schemas.xmlsoap.org/wsdl/mime/" xmlns:soap="http://schemas.xmlsoap.org/wsdl/soap/" xmlns:soap12="http://schemas.xmlsoap.org/wsdl/soap12/" xmlns:wsdl="http://schemas.xmlsoap.org/wsdl/">
<wsdl:types>
<xs:schema attributeFormDefault="qualified" elementFormDefault="unqualified" targetNamespace="http://interpreter.xbaya.airavata.apache.org">
<xs:element name="main">
<xs:complexType>
<xs:sequence>
<xs:element maxOccurs="unbounded" minOccurs="0" name="args" nillable="true" type="xs:string" />
</xs:sequence>
</xs:complexType>
</xs:element>
<xs:element name="computeDistance">
<xs:complexType>
<xs:sequence>
<xs:element minOccurs="0" name="sequence1" nillable="true" type="xs:string" />
<xs:element minOccurs="0" name="sequence2" nillable="true" type="xs:string" />
</xs:sequence>
</xs:complexType>
</xs:element>
<xs:element name="computeDistanceResponse">
<xs:complexType>
<xs:sequence>
<xs:element minOccurs="0" name="return" type="xs:int" />
</xs:sequence>
</xs:complexType>
</xs:element>
</xs:schema>
</wsdl:types>
<wsdl:message name="mainRequest">
<wsdl:part name="parameters" element="ns:main" />
</wsdl:message>
<wsdl:message name="computeDistanceRequest">
<wsdl:part name="parameters" element="ns:computeDistance" />
</wsdl:message>
<wsdl:message name="computeDistanceResponse">
<wsdl:part name="parameters" element="ns:computeDistanceResponse" />
</wsdl:message>
<wsdl:portType name="LevenshteinDistanceServicePortType">
<wsdl:operation name="main">
<wsdl:input wsaw:Action="urn:main" message="ns:mainRequest" />
</wsdl:operation>
<wsdl:operation name="computeDistance">
<wsdl:input wsaw:Action="urn:computeDistance" message="ns:computeDistanceRequest" />
<wsdl:output wsaw:Action="urn:computeDistanceResponse" message="ns:computeDistanceResponse" />
</wsdl:operation>
</wsdl:portType>
<wsdl:binding name="LevenshteinDistanceServiceSoap11Binding" type="ns:LevenshteinDistanceServicePortType">
<soap:binding transport="http://schemas.xmlsoap.org/soap/http" style="document" />
<wsdl:operation name="main">
<soap:operation soapAction="urn:main" style="document" />
<wsdl:input>
<soap:body use="literal" />
</wsdl:input>
</wsdl:operation>
<wsdl:operation name="computeDistance">
<soap:operation soapAction="urn:computeDistance" style="document" />
<wsdl:input>
<soap:body use="literal" />
</wsdl:input>
<wsdl:output>
<soap:body use="literal" />
</wsdl:output>
</wsdl:operation>
</wsdl:binding>
<wsdl:binding name="LevenshteinDistanceServiceSoap12Binding" type="ns:LevenshteinDistanceServicePortType">
<soap12:binding transport="http://schemas.xmlsoap.org/soap/http" style="document" />
<wsdl:operation name="main">
<soap12:operation soapAction="urn:main" style="document" />
<wsdl:input>
<soap12:body use="literal" />
</wsdl:input>
</wsdl:operation>
<wsdl:operation name="computeDistance">
<soap12:operation soapAction="urn:computeDistance" style="document" />
<wsdl:input>
<soap12:body use="literal" />
</wsdl:input>
<wsdl:output>
<soap12:body use="literal" />
</wsdl:output>
</wsdl:operation>
</wsdl:binding>
<wsdl:binding name="LevenshteinDistanceServiceHttpBinding" type="ns:LevenshteinDistanceServicePortType">
<http:binding verb="POST" />
<wsdl:operation name="main">
<http:operation location="LevenshteinDistanceService/main" />
<wsdl:input>
<mime:content type="text/xml" part="main" />
</wsdl:input>
</wsdl:operation>
<wsdl:operation name="computeDistance">
<http:operation location="LevenshteinDistanceService/computeDistance" />
<wsdl:input>
<mime:content type="text/xml" part="computeDistance" />
</wsdl:input>
<wsdl:output>
<mime:content type="text/xml" part="computeDistance" />
</wsdl:output>
</wsdl:operation>
</wsdl:binding>
<wsdl:service name="LevenshteinDistanceService">
<wsdl:port name="LevenshteinDistanceServiceHttpSoap11Endpoint" binding="ns:LevenshteinDistanceServiceSoap11Binding">
<soap:address location="http://localhost:8080/airavata-server/services/LevenshteinDistanceService/" />
</wsdl:port>
<wsdl:port name="LevenshteinDistanceServiceHttpSoap12Endpoint" binding="ns:LevenshteinDistanceServiceSoap12Binding">
<soap12:address location="http://localhost:8080/airavata-server/services/LevenshteinDistanceService/" />
</wsdl:port>
<wsdl:port name="LevenshteinDistanceServiceHttpEndpoint" binding="ns:LevenshteinDistanceServiceHttpBinding">
<http:address location="http://localhost:8080/airavata-server/services/LevenshteinDistanceService/" />
</wsdl:port>
</wsdl:service>
</wsdl:definitions>
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