A Layered Approach To Network Management Control

Author(s):  
L.H. Campbell ◽  
H.J. Everitt
1993 ◽  
Vol 1 (1) ◽  
pp. 41-55
Author(s):  
L. H. Campbell ◽  
H. J. Everitt

Author(s):  
Amina Saadaoui

Software-defined networking (SDN) allows centralizing and simplifying network management control. It brings a significant flexibility and visibility to networking, but at the same time creates new security challenges. The promise of SDN is the ability to allow networks to keep pace with the speed of change. It allows frequent modifications to the network configuration. However, these changes may introduce misconfigurations by writing inconsistent rules for single flow table or within a multiple open flow switches that need multiple FlowTables to be maintained at the same time. Misconfigurations can arise also between firewalls and FlowTables in OpenFlow-based networks. Problems arising from these misconfigurations are common and have dramatic consequences for networks operations. To avoid such scenarios, mechanisms to prevent these anomalies and inconsistencies are of paramount importance. To address these challenges, the authors present a new method that allows the automatic identification of inter and inter Flowtables anomalies. They also use the Firewall to bring out real misconfigurations.


Sensors ◽  
2021 ◽  
Vol 21 (5) ◽  
pp. 1790
Author(s):  
Angela Rodriguez-Vivas ◽  
Oscar Mauricio Caicedo ◽  
Armando Ordoñez ◽  
Jéferson Campos Nobre ◽  
Lisandro Zambenedetti Granville

Realizing autonomic management control loops is pivotal for achieving self-driving networks. Some studies have recently evidence the feasibility of using Automated Planning (AP) to carry out these loops. However, in practice, the use of AP is complicated since network administrators, who are non-experts in Artificial Intelligence, need to define network management policies as AP-goals and combine them with the network status and network management tasks to obtain AP-problems. AP planners use these problems to build up autonomic solutions formed by primitive tasks that modify the initial network state to achieve management goals. Although recent approaches have investigated transforming network management policies expressed in specific languages into low-level configuration rules, transforming these policies expressed in natural language into AP-goals and, subsequently, build up AP-based autonomic management loops remains unexplored. This paper introduces a novel approach, called NORA, to automatically generate AP-problems by translating Goal Policies expressed in natural language into AP-goals and combining them with both the network status and the network management tasks. NORA uses Natural Language Processing as the translation technique and templates as the combination technique to avoid network administrators to learn policy languages or AP-notations. We used a dataset containing Goal Policies to evaluate the NORA’s prototype. The results show that NORA achieves high precision and spends a short-time on generating AP-problems, which evinces NORA aids to overcome barriers to using AP in autonomic network management scenarios.


Author(s):  
Harald Bock ◽  
Rui Manuel Morais ◽  
Joao Pedro ◽  
Bernd Sommerkorn-Krombholz ◽  
Abhinava Sadasivarao ◽  
...  

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