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Main Authors: Soto, Paola, Camelo, Miguel, De Vleeschauwer, Danny, De Bock, Yorick, Slamnik-Kriještorac, Nina, Chang, Chia-Yu, Gaviria, Natalia, Mannens, Erik, Botero, Juan F., Latré, Steven
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.04441
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author Soto, Paola
Camelo, Miguel
De Vleeschauwer, Danny
De Bock, Yorick
Slamnik-Kriještorac, Nina
Chang, Chia-Yu
Gaviria, Natalia
Mannens, Erik
Botero, Juan F.
Latré, Steven
author_facet Soto, Paola
Camelo, Miguel
De Vleeschauwer, Danny
De Bock, Yorick
Slamnik-Kriještorac, Nina
Chang, Chia-Yu
Gaviria, Natalia
Mannens, Erik
Botero, Juan F.
Latré, Steven
contents Automating network processes without human intervention is crucial for the complex Sixth Generation (6G) environment. Thus, 6G networks must advance beyond basic automation, relying on Artificial Intelligence (AI) and Machine Learning (ML) for self-optimizing and autonomous operation. This requires zero-touch management and orchestration, the integration of Network Intelligence (NI) into the network architecture, and the efficient lifecycle management of intelligent functions. Despite its potential, integrating NI poses challenges in model development and application. To tackle those issues, this paper presents a novel methodology to manage the complete lifecycle of Reinforcement Learning (RL) applications in networking, thereby enhancing existing Machine Learning Operations (MLOps) frameworks to accommodate RL-specific tasks. We focus on scaling computing resources in service-based architectures, modeling the problem as a Markov Decision Process (MDP). Two RL algorithms, guided by distinct Reward Functions (RFns), are proposed to autonomously determine the number of service replicas in dynamic environments. Our proposed methodology is anchored on a dual approach: firstly, it evaluates the training performance of these algorithms under varying RFns, and secondly, it validates their performance after being trained to discern the practical applicability in real-world settings. We show that, despite significant progress, the development stage of RL techniques for networking applications, particularly in scaling scenarios, still leaves room for significant improvements. This study underscores the importance of ongoing research and development to enhance the practicality and resilience of RL techniques in real-world networking environments.
format Preprint
id arxiv_https___arxiv_org_abs_2405_04441
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Designing, Developing, and Validating Network Intelligence for Scaling in Service-Based Architectures based on Deep Reinforcement Learning
Soto, Paola
Camelo, Miguel
De Vleeschauwer, Danny
De Bock, Yorick
Slamnik-Kriještorac, Nina
Chang, Chia-Yu
Gaviria, Natalia
Mannens, Erik
Botero, Juan F.
Latré, Steven
Networking and Internet Architecture
Automating network processes without human intervention is crucial for the complex Sixth Generation (6G) environment. Thus, 6G networks must advance beyond basic automation, relying on Artificial Intelligence (AI) and Machine Learning (ML) for self-optimizing and autonomous operation. This requires zero-touch management and orchestration, the integration of Network Intelligence (NI) into the network architecture, and the efficient lifecycle management of intelligent functions. Despite its potential, integrating NI poses challenges in model development and application. To tackle those issues, this paper presents a novel methodology to manage the complete lifecycle of Reinforcement Learning (RL) applications in networking, thereby enhancing existing Machine Learning Operations (MLOps) frameworks to accommodate RL-specific tasks. We focus on scaling computing resources in service-based architectures, modeling the problem as a Markov Decision Process (MDP). Two RL algorithms, guided by distinct Reward Functions (RFns), are proposed to autonomously determine the number of service replicas in dynamic environments. Our proposed methodology is anchored on a dual approach: firstly, it evaluates the training performance of these algorithms under varying RFns, and secondly, it validates their performance after being trained to discern the practical applicability in real-world settings. We show that, despite significant progress, the development stage of RL techniques for networking applications, particularly in scaling scenarios, still leaves room for significant improvements. This study underscores the importance of ongoing research and development to enhance the practicality and resilience of RL techniques in real-world networking environments.
title Designing, Developing, and Validating Network Intelligence for Scaling in Service-Based Architectures based on Deep Reinforcement Learning
topic Networking and Internet Architecture
url https://arxiv.org/abs/2405.04441