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using MQAdaptor in BPEL

First of all using MQAdaptor in BPEL is not so straight Forward. I will discuss here all the necessary step to deploy and run the orchestration with MQAdaptor.
1. Must read the tutorials named MQAdaptor
2. copy the com.ibm.mq.jar on application server form where the class loader can load all the required class
3. add a connection-factory on the file named oc4j-ra.xml which path should be $APP_server_HOME\OracleAS_1\j2ee\home\application-deployments\default\MQSeriesAdapter\

4. edit the MQAdaptor WSDL used in the project, in my case it's named MQConsumer.WSDL
delete the property name SecondaryMQManager from element operation
5. deploy and run
6. For more debug option, enable debug level from info to debug
manage BPEL domain->Logging->changeAll -> debug

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