This paper is concerned with the topology design of data center networks (DCNs) for low latency and fewer links using deep reinforcement learning (DRL). Starting from a Kvertex-connected graph, we propose an interactive framework with single-objective and multi-objective DRL agents to learn DCN topologies for given node traffic matrices by choosing link matrices to represent the states and actions as well as using the average shortest path length together with action penalty terms as reward feedback. Comparisons with commonly used DCN topologies are given to show the effectiveness and merits of our method. The results reveal that our learned topologies could achieve lower delay compared with common DCN topologies. Moreover, we believe that ...
Data center networks are designed with multi-rooted topologies to provide the large bisection bandwi...
The recent growth of emergent network applications (e.g., satellite networks, vehicular networks) is...
We experimentally demonstrate a traffic prediction assisted network reconfiguration method (TPANR) f...
We approach the task of network congestion control in datacenters using Reinforcement Learning (RL)....
Maintaining high-performance operation under dynamic and nonuniform network traffic has been a techn...
Maintaining high-performance operation under dynamic and nonuniform network traffic has been a techn...
Maintaining high-performance operation under dynamic and nonuniform network traffic has been a techn...
Maintaining high-performance operation under dynamic and nonuniform network traffic has been a techn...
Maintaining high-performance operation under dynamic and nonuniform network traffic has been a techn...
Data-driven networking is becoming more capable and widely researched, partly driven by the efficacy...
Data-driven networking is becoming more capable and widely researched, partly driven by the efficacy...
The server-centric data centre network architecture can accommodate a wide variety of network topolo...
Deep Reinforcement Learning (DRL) has shown a dramatic improvement in decision-making and automated ...
Resource-disaggregated data centre architectures promise a means of pooling resources remotely withi...
Deep Reinforcement Learning (DRL) has shown a dramatic improvement in decision-making and automated ...
Data center networks are designed with multi-rooted topologies to provide the large bisection bandwi...
The recent growth of emergent network applications (e.g., satellite networks, vehicular networks) is...
We experimentally demonstrate a traffic prediction assisted network reconfiguration method (TPANR) f...
We approach the task of network congestion control in datacenters using Reinforcement Learning (RL)....
Maintaining high-performance operation under dynamic and nonuniform network traffic has been a techn...
Maintaining high-performance operation under dynamic and nonuniform network traffic has been a techn...
Maintaining high-performance operation under dynamic and nonuniform network traffic has been a techn...
Maintaining high-performance operation under dynamic and nonuniform network traffic has been a techn...
Maintaining high-performance operation under dynamic and nonuniform network traffic has been a techn...
Data-driven networking is becoming more capable and widely researched, partly driven by the efficacy...
Data-driven networking is becoming more capable and widely researched, partly driven by the efficacy...
The server-centric data centre network architecture can accommodate a wide variety of network topolo...
Deep Reinforcement Learning (DRL) has shown a dramatic improvement in decision-making and automated ...
Resource-disaggregated data centre architectures promise a means of pooling resources remotely withi...
Deep Reinforcement Learning (DRL) has shown a dramatic improvement in decision-making and automated ...
Data center networks are designed with multi-rooted topologies to provide the large bisection bandwi...
The recent growth of emergent network applications (e.g., satellite networks, vehicular networks) is...
We experimentally demonstrate a traffic prediction assisted network reconfiguration method (TPANR) f...