A Deep-Reinforcement Learning Approach for Software-Defined Networking Routing Optimization

09/20/2017
by   Giorgio Stampa, et al.
0

In this paper we design and evaluate a Deep-Reinforcement Learning agent that optimizes routing. Our agent adapts automatically to current traffic conditions and proposes tailored configurations that attempt to minimize the network delay. Experiments show very promising performance. Moreover, this approach provides important operational advantages with respect to traditional optimization algorithms.

READ FULL TEXT

page 1

page 2

page 3

research
06/20/2019

A Deep Reinforcement Learning Approach for Global Routing

Global routing has been a historically challenging problem in electronic...
research
03/31/2021

Deep Reinforcement Learning for Constrained Field Development Optimization in Subsurface Two-phase Flow

We present a deep reinforcement learning-based artificial intelligence a...
research
07/31/2022

DRL-M4MR: An Intelligent Multicast Routing Approach Based on DQN Deep Reinforcement Learning in SDN

Traditional multicast routing methods have some problems in constructing...
research
05/12/2023

Intelligent multicast routing method based on multi-agent deep reinforcement learning in SDWN

Multicast communication technology is widely applied in wireless environ...
research
12/22/2020

Scalable Deep Reinforcement Learning for Routing and Spectrum Access in Physical Layer

This paper proposes a novel and scalable reinforcement learning approach...
research
01/09/2021

Robust and Scalable Routing with Multi-Agent Deep Reinforcement Learning for MANETs

Highly dynamic mobile ad-hoc networks (MANETs) are continuing to serve a...
research
05/31/2021

Deep Reinforcement Based Optimization of Function Splitting in Virtualized Radio Access Networks

Virtualized Radio Access Network (vRAN) is one of the key enablers of fu...

Please sign up or login with your details

Forgot password? Click here to reset