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[Post Event] CloudBrew 2015, Belgium

This week I was invited by Belgium Azure group (Azug.be) to CloudBrew conference. This was the
second time when I was invited as speaker at this conference. Like the first time, I had a great time, meeting great people and rediscovering what beer tasting means.
CloudBrew is that kind of conference where you discover a great and powerful Azure community, that is very active and up to date with all trends and new stuff. 

At this event I had the opportunity to about IoT and how you can create a solution that can manage 1 million messages per second. At the end of this post you can find my slides and a few picture from the event.

Title:
How to manage one million messages per second using Azure

Abstract: 
At the beginning of a project it is simple to promise to clients different things, but when you need to prove them you might have discover that is impossible. Living in the IoT era we need to be able to process large amounts of content per second. This is why in this session we will see how we can construct a solution around Azure that can handle very easy 1M messages per second. We will start the session with a real time demo and we will continue to describe how we can construct such a system using Azure Services in less than 8h. Each Azure component that was used for the demo will be describes in detail and will see what are the pros and cons of it.

Picture:







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