network management
An LLM-based Agentic Framework for Accessible Network Control
Lin, Samuel, Zhou, Jiawei, Yu, Minlan
Traditional approaches to network management have been accessible only to a handful of highly-trained network operators with significant expert knowledge. This creates barriers for lay users to easily manage their networks without resorting to experts. With recent development of powerful large language models (LLMs) for language comprehension, we design a system to make network management accessible to a broader audience of non-experts by allowing users to converse with networks in natural language. To effectively leverage advancements in LLMs, we propose an agentic framework that uses an intermediate representation to streamline configuration across diverse vendor equipment, retrieves the network state from memory in real-time, and provides an interface for external feedback. We also conduct pilot studies to collect real user data of natural language utterances for network control, and present a visualization interface to facilitate dialogue-driven user interaction and enable large-scale data collection for future development. Preliminary experiments validate the effectiveness of our proposed system components with LLM integration on both synthetic and real user utterances. Through our data collection and visualization efforts, we pave the way for more effective use of LLMs and democratize network control for everyday users.
- North America > United States > New York > New York County > New York City (0.04)
- South America > Chile > Santiago Metropolitan Region > Santiago Province > Santiago (0.04)
- South America > Brazil (0.04)
- (6 more...)
- Information Technology > Networks (0.69)
- Information Technology > Security & Privacy (0.66)
- Telecommunications > Networks (0.51)
Generative AI for Intent-Driven Network Management in 6G: A Case Study on Hierarchical Learning Approach
Habib, Md Arafat, Elsayed, Medhat, Ozcan, Yigit, Iturria-Rivera, Pedro Enrique, Bavand, Majid, Erol-Kantarci, Melike
The contents of this paper may change at any time without notice. Abstract --With the emergence of 6G, mobile networks are becoming increasingly heterogeneous and dynamic, necessitating advanced automation for efficient management. Intent-Driven Networks (IDNs) address this by translating high-level intents into optimization policies. Large Language Models (LLMs) can enhance this process by understanding complex human instructions to enable adaptive, intelligent automation. Given the rapid advancements in Generative AI (GenAI), a comprehensive survey of LLM-based IDN architectures in disaggregated Radio Access Network (RAN) environments is both timely and critical. This article provides such a survey, along with a case study on a hierarchical learning-enabled IDN architecture that integrates GenAI across three key stages: intent processing, intent validation, and intent execution. Unlike most existing approaches that apply GenAI in the form of LLMs for intent processing only, we propose a hierarchical framework that introduces GenAI across all three stages of IDN. T o demonstrate the effectiveness of the proposed IDN management architecture, we present a case study based on the latest GenAI architecture named Mamba. The case study shows how the proposed GenAI-driven architecture enhances network performance through intelligent automation, surpassing the performance of the conventional IDN architectures. Sixth-Generation (6G) networks are anticipated to support a diverse set of user requirements and have more complex deployments [1].
- Telecommunications > Networks (0.69)
- Information Technology > Networks (0.46)
Fog Intelligence for Network Anomaly Detection
Yang, Kai, Ma, Hui, Dou, Shaoyu
--Anomalies are common in network system monitoring. When manifested as network threats to be mitigated, service outages to be prevented, and security risks to be ameliorated, detecting such anomalous network behaviors becomes of great importance. However, the growing scale and complexity of the mobile communication networks, as well as the ever-increasing amount and dimensionality of the network surveillance data, make it extremely difficult to monitor a mobile network and discover abnormal network behaviors. Recent advances in machine learning allow for obtaining near-optimal solutions to complicated decision-making problems with many sources of uncertainty that cannot be accurately characterized by traditional mathematical models. However, most machine learning algorithms are centralized, which renders them inapplicable to a large-scale distributed wireless networks with tens of millions of mobile devices. In this article, we present fog intelligence, a distributed machine learning architecture that enables intelligent wireless network management. It preserves the advantage of both edge processing and centralized cloud computing. In addition, the proposed architecture is scalable, privacy-preserving, and well suited for intelligent management of a distributed wireless network. With the rapid advancements of modern communication and signal processing technologies, wireless communications are becoming ubiquitous in our everyday life.
- Asia > China > Shanghai > Shanghai (0.05)
- Asia > China > Jiangsu Province > Nanjing (0.04)
- North America > United States > Texas > Collin County > Plano (0.04)
- (4 more...)
- Telecommunications > Networks (1.00)
- Information Technology > Security & Privacy (1.00)
- Information Technology > Networks (1.00)
Towards End-to-End Network Intent Management with Large Language Models
Dinh, Lam, Cherrared, Sihem, Huang, Xiaofeng, Guillemin, Fabrice
Large Language Models (LLMs) are likely to play a key role in Intent-Based Networking (IBN) as they show remarkable performance in interpreting human language as well as code generation, enabling the translation of high-level intents expressed by humans into low-level network configurations. In this paper, we leverage closed-source language models (i.e., Google Gemini 1.5 pro, ChatGPT-4) and open-source models (i.e., LLama, Mistral) to investigate their capacity to generate E2E network configurations for radio access networks (RANs) and core networks in 5G/6G mobile networks. We introduce a novel performance metrics, known as FEACI, to quantitatively assess the format (F), explainability (E), accuracy (A), cost (C), and inference time (I) of the generated answer; existing general metrics are unable to capture these features. The results of our study demonstrate that open-source models can achieve comparable or even superior translation performance compared with the closed-source models requiring costly hardware setup and not accessible to all users.
- Telecommunications > Networks (0.56)
- Information Technology > Networks (0.56)
Towards Cognitive Service Delivery on B5G through AIaaS Architecture
Moreira, Larissa F. Rodrigues, Moreira, Rodrigo, Silva, Flávio de Oliveira, Backes, André R.
Artificial Intelligence (AI) is pivotal in advancing mobile network systems by facilitating smart capabilities and automation. The transition from 4G to 5G has substantial implications for AI in consolidating a network predominantly geared towards business verticals. In this context, 3GPP has specified and introduced the Network Data Analytics Function (NWDAF) entity at the network's core to provide insights based on AI algorithms to benefit network orchestration. This paper proposes a framework for evolving NWDAF that presents the interfaces necessary to further empower the core network with AI capabilities B5G and 6G. In addition, we identify a set of research directions for realizing a distributed e-NWDAF.
- South America > Brazil > Rio Grande do Sul > Porto Alegre (0.05)
- Europe > Switzerland (0.04)
- Europe > Portugal > Braga > Braga (0.04)
- (2 more...)
- Research Report (0.50)
- Overview (0.46)
- Information Technology > Security & Privacy (1.00)
- Telecommunications (0.91)
NetOrchLLM: Mastering Wireless Network Orchestration with Large Language Models
Abdallah, Asmaa, Albaseer, Abdullatif, Celik, Abdulkadir, Abdallah, Mohamed, Eltawil, Ahmed M.
The transition to 6G networks promises unprecedented advancements in wireless communication, with increased data rates, ultra-low latency, and enhanced capacity. However, the complexity of managing and optimizing these next-generation networks presents significant challenges. The advent of large language models (LLMs) has revolutionized various domains by leveraging their sophisticated natural language understanding capabilities. However, the practical application of LLMs in wireless network orchestration and management remains largely unexplored. Existing literature predominantly offers visionary perspectives without concrete implementations, leaving a significant gap in the field. To address this gap, this paper presents NETORCHLLM, a wireless NETwork ORCHestrator LLM framework that uses LLMs to seamlessly orchestrate diverse wireless-specific models from wireless communication communities using their language understanding and generation capabilities. A comprehensive framework is introduced, demonstrating the practical viability of our approach and showcasing how LLMs can be effectively harnessed to optimize dense network operations, manage dynamic environments, and improve overall network performance. NETORCHLLM bridges the theoretical aspirations of prior research with practical, actionable solutions, paving the way for future advancements in integrating generative AI technologies within the wireless communications sector.
- North America > United States > California > Los Angeles County > Los Angeles (0.28)
- Asia > Middle East > Lebanon > Beirut Governorate > Beirut (0.04)
- North America > United States > Maryland (0.04)
- (3 more...)
LINKs: Large Language Model Integrated Management for 6G Empowered Digital Twin NetworKs
Jiang, Shufan, Lin, Bangyan, Wu, Yue, Gao, Yuan
In the rapidly evolving landscape of digital twins (DT) and 6G networks, the integration of large language models (LLMs) presents a novel approach to network management. This paper explores the application of LLMs in managing 6G-empowered DT networks, with a focus on optimizing data retrieval and communication efficiency in smart city scenarios. The proposed framework leverages LLMs for intelligent DT problem analysis and radio resource management (RRM) in fully autonomous way without any manual intervention. Our proposed framework -- LINKs, builds up a lazy loading strategy which can minimize transmission delay by selectively retrieving the relevant data. Based on the data retrieval plan, LLMs transform the retrieval task into an numerical optimization problem and utilizing solvers to build an optimal RRM, ensuring efficient communication across the network. Simulation results demonstrate the performance improvements in data planning and network management, highlighting the potential of LLMs to enhance the integration of DT and 6G technologies.
- North America > United States > New York > New York County > New York City (0.04)
- North America > Trinidad and Tobago > Trinidad > Arima > Arima (0.04)
- Europe > Italy > Trentino-Alto Adige/Südtirol > Trentino Province (0.04)
- Asia > China > Shanghai > Shanghai (0.04)
- Telecommunications (1.00)
- Energy > Power Industry (0.68)
ResLearn: Transformer-based Residual Learning for Metaverse Network Traffic Prediction
Manjunath, Yoga Suhas Kuruba, Szymanowski, Mathew, Wissborn, Austin, Li, Mushu, Zhao, Lian, Zhang, Xiao-Ping
Our work proposes a comprehensive solution for predicting Metaverse network traffic, addressing the growing demand for intelligent resource management in eXtended Reality (XR) services. We first introduce a state-of-the-art testbed capturing a real-world dataset of virtual reality (VR), augmented reality (AR), and mixed reality (MR) traffic, made openly available for further research. To enhance prediction accuracy, we then propose a novel view-frame (VF) algorithm that accurately identifies video frames from traffic while ensuring privacy compliance, and we develop a Transformer-based progressive error-learning algorithm, referred to as ResLearn for Metaverse traffic prediction. ResLearn significantly improves time-series predictions by using fully connected neural networks to reduce errors, particularly during peak traffic, outperforming prior work by 99%. Our contributions offer Internet service providers (ISPs) robust tools for real-time network management to satisfy Quality of Service (QoS) and enhance user experience in the Metaverse.
- North America > Canada > Ontario > Toronto (0.04)
- Asia > China > Guangdong Province > Shenzhen (0.04)
- North America > United States > Pennsylvania > Northampton County > Bethlehem (0.04)
Automating IETF Insights generation with AI
This paper presents the IETF Insights project, an automated system that streamlines the generation of comprehensive reports on the activities of the Internet Engineering Task Force (IETF) Working Groups. The system collects, consolidates, and analyzes data from various IETF sources, including meeting minutes, participant lists, drafts and agendas. The core components of the system include data preprocessing code and a report generation module that produces high-quality documents in LaTeX or Markdown. By integrating large Language Models (LLMs) for summaries based on the data as ground truth, the IETF Insights project enhances the accessibility and utility of IETF records, providing a valuable overview of the IETF's activities and contributions to the community.
- North America > United States (1.00)
- Europe > Ireland > Leinster > County Dublin > Dublin (0.14)
- Asia > China (0.04)
- (10 more...)
- Telecommunications > Networks (1.00)
- Law (1.00)
- Information Technology > Security & Privacy (1.00)
- (7 more...)
AutoFlow: An Autoencoder-based Approach for IP Flow Record Compression with Minimal Impact on Traffic Classification
This paper presents a novel approach to compressing IP flow records using deep learning techniques, specifically autoencoders. Our method aims to significantly reduce data volume while maintaining the utility of the compressed data for downstream analysis tasks. We demonstrate the effectiveness of our approach through extensive experiments on a large-scale, real-world network traffic dataset. The proposed autoencoder-based compression achieves a 3.28x reduction in data size while preserving 99.20% accuracy in a multi-class traffic classification task, compared to 99.77% accuracy with uncompressed data. This marginal decrease in performance is offset by substantial gains in storage efficiency and potential improvements in processing speed. Our method shows particular promise in distinguishing between various modern application protocols, including encrypted traffic from popular services. The implications of this work extend to more efficient network monitoring, real-time analysis in resource-constrained environments, and scalable network management solutions.
- Europe > Hungary > Budapest > Budapest (0.04)
- North America > United States > Georgia > Fulton County > Atlanta (0.04)