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Windows Azure Service Bus Patterns - a comprehensive look at patterns that can be used in combination with Windows Azure Service Bus



In the last period of time I posted a lot about pattern that can be used in combination with Windows Azure Service Bus. This is the list of all the patterns that I presented until now:
  1. Message Splitter Pattern
  2. Message Filter Pattern 
  3. Message Aggregator Pattern
  4. Recipient List Pattern  
  5. Resequencer Pattern
  6. Content-Based Router Pattern
  7. Scatter-Gather Pattern 
  8. Dynamic Router Pattern 
If you want to find more information about Windows Azure Service Bus Topic, please follow this LINK.
For more information about Windows Azure Serbice Bus Queue please follow this LINK.

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    1. http://vunvulearadu.blogspot.co.uk/2012/10/different-methods-to-implement-message.html
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  2. Very nice and the azure theme looks great

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