Deep reinforcement learning (DRL) enables autonomic optical networking by allowing the network control and management systems to self-learn successful networking policies from operational experiences. This paper proposes a transfer learning approach for effective and scalable DRL in optical networks. We first present a modular DRL agent design to facilitate retrieving and transferring relevant knowledge between tasks requiring different dimensions of network state data. In particular, we partition network state data into common states, which contain generic information critical to multiple tasks (e.g., the spectrum utilization on fiber links), and task-specific states that are only used by a specific task (e.g., the utilization of virtual n...
Deep reinforcement learning (DRL) has recently revolutionized the resolution of decision-making and ...
The advancing applications based on machine learning and deep learning in communication networks hav...
Modern services consist of interconnected compo- nents, e.g., microservices in a service mesh or mac...
Conventional schemes for service provisioning in next-generation elastic optical networks (EONs) rel...
Deep Reinforcement Learning (DRL) is rising as a promising tool for solving optimization problems in...
This paper addresses the use of Deep Reinforcement Learning for automatic routing in Optical Transpo...
Recent successes in applying Deep Learning techniques on Reinforcement Learning algorithms have led ...
This paper evaluates different aspects of the performance of a solution for routing and spectrum all...
Optical networks must continue to grow and evolve to meet growing service demands. These networks ar...
Deep Reinforcement Learning (DRL) has shown a dramatic improvement in decision-making and automated ...
A deep reinforcement learning approach is applied, for the first time, to solve the routing, modulat...
This paper proposes DeepRMSA, a deep reinforcement learning framework for routing, modulation and sp...
Driven by recent developments in Artificial Intelligence research, a promising new technology for bu...
Optimizing Deep Reinforcement Learning Process by Applying Transfer Learning. In this thesis we try ...
As the dynamicity of the traffic increases, the need for self-network operation becomes more evident...
Deep reinforcement learning (DRL) has recently revolutionized the resolution of decision-making and ...
The advancing applications based on machine learning and deep learning in communication networks hav...
Modern services consist of interconnected compo- nents, e.g., microservices in a service mesh or mac...
Conventional schemes for service provisioning in next-generation elastic optical networks (EONs) rel...
Deep Reinforcement Learning (DRL) is rising as a promising tool for solving optimization problems in...
This paper addresses the use of Deep Reinforcement Learning for automatic routing in Optical Transpo...
Recent successes in applying Deep Learning techniques on Reinforcement Learning algorithms have led ...
This paper evaluates different aspects of the performance of a solution for routing and spectrum all...
Optical networks must continue to grow and evolve to meet growing service demands. These networks ar...
Deep Reinforcement Learning (DRL) has shown a dramatic improvement in decision-making and automated ...
A deep reinforcement learning approach is applied, for the first time, to solve the routing, modulat...
This paper proposes DeepRMSA, a deep reinforcement learning framework for routing, modulation and sp...
Driven by recent developments in Artificial Intelligence research, a promising new technology for bu...
Optimizing Deep Reinforcement Learning Process by Applying Transfer Learning. In this thesis we try ...
As the dynamicity of the traffic increases, the need for self-network operation becomes more evident...
Deep reinforcement learning (DRL) has recently revolutionized the resolution of decision-making and ...
The advancing applications based on machine learning and deep learning in communication networks hav...
Modern services consist of interconnected compo- nents, e.g., microservices in a service mesh or mac...