Gradient-Based Optimization for Intent Conflict Resolution

Author:

Cinemre Idris1ORCID,Mehmood Kashif2ORCID,Kralevska Katina2,Mahmoodi Toktam1ORCID

Affiliation:

1. Department of Engineering, King’s College London, London WC2R 2LS, UK

2. Department of Information Security and Communication Technology, Norwegian University of Science and Technology (NTNU), 7034 Trondheim, Norway

Abstract

The evolving landscape of network systems necessitates automated tools for streamlined management and configuration. Intent-driven networking (IDN) has emerged as a promising solution for autonomous network management by prioritizing declaratively defined desired outcomes over traditional manual configurations without specifying the implementation details. This paradigm shift towards flexibility, agility, and simplification in network management is particularly crucial in addressing inefficiencies and high costs linked to manual management, notably in the radio access part. This paper explores the concurrent operation of multiple intents, acknowledging the potential for conflicts, and proposes an innovative reformulation of these conflicts to enhance network administration effectiveness. Following the initial detection of conflicts among intents using a gradient-based approach, our work employs the Multiple Gradient Descent Algorithm (MGDA) to minimize all loss functions assigned to each intent simultaneously. In response to the challenge posed by the absence of a closed-form representation for each key performance indicator in a dynamic environment for computing gradient descent, the Stochastic Perturbation Stochastic Approximation (SPSA) is integrated into the MGDA algorithm. The proposed method undergoes initial testing using a commonly employed toy example in the literature before being simulated for conflict scenarios within a mobile network using the ns3 network simulator.

Funder

Ministry of National Education in Turkiye

Publisher

MDPI AG

Reference25 articles.

1. Clemm, A., Ciavaglia, L., Granville, L.Z., and Tantsura, J. (2024, February 01). Intent-Based Networking-Concepts and Definitions. RFC 9315. Available online: https://www.rfc-editor.org/info/rfc9315.

2. Intent-driven autonomous network and service management in future cellular networks: A structured literature review;Mehmood;Comput. Netw.,2023

3. Banerjee, A., Mwanje, S.S., and Carle, G. (2022, January 13–16). Contradiction Management in Intent-driven Cognitive Autonomous RAN. Proceedings of the 2022 IFIP Networking Conference (IFIP Networking), Catania, Italy.

4. ETSI (2024, February 01). Zero-Touch Network and Service Management (ZSM); Intent-Driven Autonomous Networks; Generic Aspects. Available online: https://www.etsi.org/committee/1431-zsm.

5. Telemanagement Forum (TMForum) (2024, February 01). Intent in Autonomous Networks. Introductory Document IG1253. TMForum. Available online: https://www.tmforum.org/resources/how-to-guide/ig1253-intent-in-autonomous-networks-v1-0-0/.

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