ML KPI Prediction in 5G and B5G Networks
- URL: http://arxiv.org/abs/2404.01530v1
- Date: Mon, 1 Apr 2024 23:34:28 GMT
- Title: ML KPI Prediction in 5G and B5G Networks
- Authors: Nguyen Phuc Tran, Oscar Delgado, Brigitte Jaumard, Fadi Bishay,
- Abstract summary: We introduce a machine learning (ML) model used to estimate throughput in 5G and B5G networks with end-to-end (E2E) network slices.
We combine the predicted throughput with the current network state to derive an estimate of other network evaluations.
- Score: 0.824969449883056
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Network operators are facing new challenges when meeting the needs of their customers. The challenges arise due to the rise of new services, such as HD video streaming, IoT, autonomous driving, etc., and the exponential growth of network traffic. In this context, 5G and B5G networks have been evolving to accommodate a wide range of applications and use cases. Additionally, this evolution brings new features, like the ability to create multiple end-to-end isolated virtual networks using network slicing. Nevertheless, to ensure the quality of service, operators must maintain and optimize their networks in accordance with the key performance indicators (KPIs) and the slice service-level agreements (SLAs). In this paper, we introduce a machine learning (ML) model used to estimate throughput in 5G and B5G networks with end-to-end (E2E) network slices. Then, we combine the predicted throughput with the current network state to derive an estimate of other network KPIs, which can be used to further improve service assurance. To assess the efficiency of our solution, a performance metric was proposed. Numerical evaluations demonstrate that our KPI prediction model outperforms those derived from other methods with the same or nearly the same computational time.
Related papers
- Adaptive Digital Twin and Communication-Efficient Federated Learning Network Slicing for 5G-enabled Internet of Things [8.11509914300497]
Network slicing enables industrial Internet of Things (IIoT) networks with multiservice and differentiated resource requirements to meet increasing demands through efficient use and management of network resources.
The new generation of Industry 4.0 has introduced digital twins to map physical systems to digital models for accurate decision-making.
In our approach, we first use graph-attention networks to build a digital twin environment for network slices, enabling real-time traffic analysis, monitoring, and demand forecasting.
arXiv Detail & Related papers (2024-06-22T15:33:35Z) - Optimization Guarantees of Unfolded ISTA and ADMM Networks With Smooth
Soft-Thresholding [57.71603937699949]
We study optimization guarantees, i.e., achieving near-zero training loss with the increase in the number of learning epochs.
We show that the threshold on the number of training samples increases with the increase in the network width.
arXiv Detail & Related papers (2023-09-12T13:03:47Z) - Low Complexity Adaptive Machine Learning Approaches for End-to-End
Latency Prediction [0.0]
This work is the design of efficient, low-cost adaptive algorithms for estimation, monitoring and prediction.
We focus on end-to-end latency prediction, for which we illustrate our approaches and results on data obtained from a public generator provided after the recent international challenge on GNN.
arXiv Detail & Related papers (2023-01-31T10:29:11Z) - Multi-Exit Semantic Segmentation Networks [78.44441236864057]
We propose a framework for converting state-of-the-art segmentation models to MESS networks.
specially trained CNNs that employ parametrised early exits along their depth to save during inference on easier samples.
We co-optimise the number, placement and architecture of the attached segmentation heads, along with the exit policy, to adapt to the device capabilities and application-specific requirements.
arXiv Detail & Related papers (2021-06-07T11:37:03Z) - Learnable Expansion-and-Compression Network for Few-shot
Class-Incremental Learning [87.94561000910707]
We propose a learnable expansion-and-compression network (LEC-Net) to solve catastrophic forgetting and model over-fitting problems.
LEC-Net enlarges the representation capacity of features, alleviating feature drift of old network from the perspective of model regularization.
Experiments on the CUB/CIFAR-100 datasets show that LEC-Net improves the baseline by 57% while outperforms the state-of-the-art by 56%.
arXiv Detail & Related papers (2021-04-06T04:34:21Z) - Deep-Mobility: A Deep Learning Approach for an Efficient and Reliable 5G
Handover [0.0]
5G cellular networks are being deployed all over the world and this architecture supports ultra-dense network (UDN) deployment.
Small cells have a very important role in providing 5G connectivity to the end users.
In contrast to any traditional handover improvement scheme, we develop a 'Deep-Mobility' model by implementing a deep learning neural network (DLNN) to manage network mobility.
arXiv Detail & Related papers (2021-01-17T00:31:37Z) - Long Short Term Memory Networks for Bandwidth Forecasting in Mobile
Broadband Networks under Mobility [6.112377814215607]
We introduce HINDSIGHT++, an open-source framework for bandwidth forecasting experimentation in MBB networks.
We primarily focus on bandwidth forecasting for Fifth Generation (5G) networks.
In particular, we leverage 5Gophers, the first open-source attempt to measure network performance on operational 5G networks in the US.
arXiv Detail & Related papers (2020-11-20T18:59:27Z) - Enabling certification of verification-agnostic networks via
memory-efficient semidefinite programming [97.40955121478716]
We propose a first-order dual SDP algorithm that requires memory only linear in the total number of network activations.
We significantly improve L-inf verified robust accuracy from 1% to 88% and 6% to 40% respectively.
We also demonstrate tight verification of a quadratic stability specification for the decoder of a variational autoencoder.
arXiv Detail & Related papers (2020-10-22T12:32:29Z) - Estimation of Video Streaming KQIs for Radio Access Negotiation in
Network Slicing Scenarios [0.34410212782758043]
5G introduces the concept of network slicing as a new paradigm that presents a completely different view of the network configuration and optimization.
A main challenge of this scheme is to establish which specific resources would provide the necessary quality of service for the users using the slice.
arXiv Detail & Related papers (2020-06-16T14:10:54Z) - Network Adjustment: Channel Search Guided by FLOPs Utilization Ratio [101.84651388520584]
This paper presents a new framework named network adjustment, which considers network accuracy as a function of FLOPs.
Experiments on standard image classification datasets and a wide range of base networks demonstrate the effectiveness of our approach.
arXiv Detail & Related papers (2020-04-06T15:51:00Z) - ReActNet: Towards Precise Binary Neural Network with Generalized
Activation Functions [76.05981545084738]
We propose several ideas for enhancing a binary network to close its accuracy gap from real-valued networks without incurring any additional computational cost.
We first construct a baseline network by modifying and binarizing a compact real-valued network with parameter-free shortcuts.
We show that the proposed ReActNet outperforms all the state-of-the-arts by a large margin.
arXiv Detail & Related papers (2020-03-07T02:12:02Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.