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AI-driven Closed-loop Automation in 5G and beyond Mobile Networks
- Raouf Boutaba,
- Nashid Shahriar,
- Mohammad A. Salahuddin,
- Shihabur R. Chowdhury,
- Niloy Saha,
- Alexander James
The 5th Generation (5G) mobile networks support a wide range of services that impose diverse and stringent QoS requirements. This will be further exacerbated with the evolution towards 6th Generation mobile networks. Inevitably, 5G and beyond mobile ...
Practical Automation for Management Planes of Service Provider Infrastructure
- Bingzhe Liu,
- Kuan-Yen Chou,
- Pramod Jamkhedkar,
- Bilal Anwer,
- Rakesh K. Sinha,
- Kostas Oikonomou,
- Matthew Caesar,
- P. Brighten Godfrey
Managing service provider infrastructures (SPI) is ever more challenging with increasing scale and complexity. Network and container orchestration systems alleviate some manual tasks, but they are generally narrow solutions, with controllers for ...
FedRAN: Federated Mobile Edge Computing with Differential Privacy
In this paper, we propose FedRAN, a mobile edge, federated learning system that incorporates differential privacy to improve the privacy integrity of sensitive edge information, preventing adversarial entities from exploiting the network interactions ...
Recommending Changes on QoE Factors with Conditional Variational AutoEncoder
Increasing complexity in management of immense number of network elements and their dynamically changing environment necessitates machine learning based recommendation models to guide human experts in setting appropriate network configurations to ...
Reinforcement Learning and Energy-Aware Routing
We present an approach that uses Reinforcement Learning (RL) with the Random Neural Network (RNN) acting as an adaptive critic, to route traffic in a SDN network, so as to minimize a composite Goal function that includes both packet delay and energy ...
Mitigation of Scheduling Violations in Time-Sensitive Networking using Deep Deterministic Policy Gradient
Time-Sensitive Networking (TSN) is designed for real-time applications, usually pertaining to a set of Time-Triggered (TT) data flows. TT traffic generally requires low packet loss and guaranteed upper bounds on end-to-end delay. To guarantee the end-to-...
Internet Traffic Classification Using an Ensemble of Deep Convolutional Neural Networks
Network traffic classification (NTC) has attracted considerable attention in recent years. The importance of traffic classification stems from the fact that data traffic in modern networks is extremely complex and ever-evolving in different aspects, ...
Automated Collaborator Selection for Federated Learning with Multi-armed Bandit Agents
Rapid change in sensitive behaviour and profile of distributed mobile network elements necessitates privacy preserving distributed learning mechanism such as Federated Learning. Moreover, this mechanism needs to be robust that seamlessly sustains the ...
A Reinforcement Learning Framework for Optimizing Throughput in DOCSIS Networks
The capacity in a communication network is restricted by the famous Shannon-Hartley theorem, which establishes a relationship between maximum achievable capacity, channel bandwidth, and signal-to-noise ratio of the channel. The state-of-the-art in ...