Learning Techniques in a Mobile Network

Because of the current evolution of society, people are increasingly on the move and need to communicate during their travels. This phenomenon has triggered greater demand and studies oriented towards the development of very sophisticated systems in order to respond to new user requirements. These requirements have indeed changed: if originally only voice was needed, wireless transmission demand providing reliable high definition sound, image and even high quality video communications has increasingly become popular with a large number of users. These users hope for mobility to be completely transparent in order to take advantage of performances similar to those from wired networks, despite the bandwidth greed of these new services.

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