| openaire: EC/H2020/871780/EU//MonB5GThe adoption of machine learning techniques in next-generation networks has increasingly attracted the attention of the research community. This is to provide adaptive learning and decision-making approaches to meet the requirements of different verticals, and to guarantee the appropriate performance requirements in complex mobility scenarios. In this perspective, the characterization of mobile service usage represents a fundamental step. In this vein, this paper highlights the new features and capabilities offered by the "Network Slice Planner"(NSP) in its second version [12]. It also proposes a method combining both supervised and unsupervised learning techniques to analyze the behavior of a mass of m...
Network performance prediction is crucial for enabling agile capacity planning in mobile networks. O...
Mobile users demand more and more data traffic, yet network resources are limited. This creates a ch...
The accurate estimation of future traffic loads is a key enabler for anticipatory mobile networking....
Abstract The adoption of machine learning techniques in next-generation networks has increasingly a...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
With the rapid development of wireless networks, more and more online services significantly raise m...
Today, a significant share of smartphone applications use Artificial Intelligence (AI) elements that...
Planning of current and future mobile networks is becoming increasingly complex due to the heterogen...
In the coming years, planning future mobile networks will be infinitely more complex than nowadays. ...
Future generation networks (5G) will bring a new paradigm to network management, as the networks the...
In the coming years, planning future mobile networks will be infinitely more complex than nowadays. ...
Planning of current and future mobile networks is becoming increasingly complex due to the heterogen...
The popularity of mobile devices and the availability of various services over mobile cellular netwo...
Network performance prediction is crucial for enabling agile capacity planning in mobile networks. O...
Mobile users demand more and more data traffic, yet network resources are limited. This creates a ch...
The accurate estimation of future traffic loads is a key enabler for anticipatory mobile networking....
Abstract The adoption of machine learning techniques in next-generation networks has increasingly a...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
With the rapid development of wireless networks, more and more online services significantly raise m...
Today, a significant share of smartphone applications use Artificial Intelligence (AI) elements that...
Planning of current and future mobile networks is becoming increasingly complex due to the heterogen...
In the coming years, planning future mobile networks will be infinitely more complex than nowadays. ...
Future generation networks (5G) will bring a new paradigm to network management, as the networks the...
In the coming years, planning future mobile networks will be infinitely more complex than nowadays. ...
Planning of current and future mobile networks is becoming increasingly complex due to the heterogen...
The popularity of mobile devices and the availability of various services over mobile cellular netwo...
Network performance prediction is crucial for enabling agile capacity planning in mobile networks. O...
Mobile users demand more and more data traffic, yet network resources are limited. This creates a ch...
The accurate estimation of future traffic loads is a key enabler for anticipatory mobile networking....