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I'm interacting with an AzureStorageAccount with CloudQueueClient similarly to the manner described in this msdn example

CloudStorageAccount storageAccount = CloudStorageAccount.Parse("some connection string");
CloudQueueClient queueClient = storageAccount.CreateCloudQueueClient();

and to add an element to a queue (with some boiler plate removed):

var queue = queueClient.GetQueueReference("queuename");
var message = new CloudQueueMessage("myString");
queue.AddMessageAsync(message);

So that means I can add "myString" to my queue. Great. And if I repeatedly call those lines of code I can add "mystring" lots of time. Also good, but inefficient.

How do I add multiple items to the queue in one message?

I've researched this a bit and found Entity Group Transactions, which may be a suitable fit. However, this looks very different to what I've been doing and don't really give me any code examples. Is there any way to use this and continue to use Microsoft.WindowsAzure.StorageClient libary to construct my messages?

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My use case is that I'm uploading strings to an azure queue to be consumed by a load test where the order is not important. Right now I'm just async sending messages that individually enqueueing each pieces of data. My interest is in speed. However, from what I'm hearing optimisation sounds too difficult for the time I have. Thanks for both of your help. –  Nathan Cooper May 16 '14 at 12:51

2 Answers 2

up vote 1 down vote accepted

I believe there is no real need to add multiple items into one message, because the best practice is to keep message and corresponding message handler as small as possible.

This is very hard to talk about inefficiency here. But when amount of messages will grow so that it will really impact performance then you could use BatchFlushInterval property to batch your messages. Otherwise follow Best Practices for Performance Improvements Using Service Bus Brokered Messaging

UPDATE:

By batching messages yourself withing e.g. list, you would need to solve at least the following problems which may result an unmanageable solution:

  • Keep track on the size of the message to not exceed maximum limit
  • Find the ways to abandon, complete and move to dead letters only particular items
  • Implement batching strategy yourself
  • Keep track on big message processing time and extend lock if it is too long

PS If you could list the real needs behind, then more nice solution must be found

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Thanks. I'm not using service bus brokered messages, however, so that sor of client side batching isn't available to me. I'm pretty sure that best practice is to have less bigger messages, search Chunky not chatty –  Nathan Cooper May 15 '14 at 12:27
    
True. But this doesn't say anything about size and number of messages, only about batching. Client side batching is one of the options and probably the easiest one. Otherwise those 2 guides will conflict with each other –  Vladimir Sachek May 15 '14 at 12:47
    
Please check updated answer. –  Vladimir Sachek May 16 '14 at 12:38

One way you can send multiple messages is to build a wrapper class that contains a list of individual string values (or objects), serialize this into a JSon object for example, and send that as the payload for the message. The issue here is that depending on the size of your objects, you could eventually exceed the size limitation of a message. So that's not a recommended implemtation.

At some point I was dealing with a system that needed to send a lot of messages per second; it was massively distributed. Instead of batching multiple messages we ended up creating a shard of message queues, across multiple storage accounts. The scalability requirements drove us to this implementation.

Keep in mind that Chunky vs Chatty applies to sending more information in order to avoid roundtrips, so as to optimize performance. Message queuing is not as much about performance; it is more about scalability and distribution of information. In other words, eventual consistency and distributed scale out are the patterns to favor in this environment. I am not saying you should ignore chunky vs chatty, but you should apply it where it makes sense.

If you need to send 1 million messages per second for example, then chunkier calls is an option; sharding is another. I typically favor sharding because there are fewer scalability boundaries. But in some cases, if the problem is simple enough, chunking might suffice.

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