ai node
Towards AI-Native RAN: An Operator's Perspective of 6G Day 1 Standardization
Li, Nan, Sun, Qi, Wang, Lehan, Xu, Xiaofei, Huang, Jinri, Liu, Chunhui, Gao, Jing, Huang, Yuhong, I, Chih-Lin
Artificial Intelligence/Machine Learning (AI/ML) has become the most certain and prominent feature of 6G mobile networks. Unlike 5G, where AI/ML was not natively integrated but rather an add-on feature over existing architecture, 6G shall incorporate AI from the onset to address its complexity and support ubiquitous AI applications. Based on our extensive mobile network operation and standardization experience from 2G to 5G, this paper explores the design and standardization principles of AI-Native radio access networks (RAN) for 6G, with a particular focus on its critical Day 1 architecture, functionalities and capabilities. We investigate the framework of AI-Native RAN and present its three essential capabilities to shed some light on the standardization direction; namely, AI-driven RAN processing/optimization/automation, reliable AI lifecycle management (LCM), and AI-as-a-Service (AIaaS) provisioning. The standardization of AI-Native RAN, in particular the Day 1 features, including an AI-Native 6G RAN architecture, were proposed. For validation, a large-scale field trial with over 5000 5G-A base stations have been built and delivered significant improvements in average air interface latency, root cause identification, and network energy consumption with the proposed architecture and the supporting AI functions. This paper aims to provide a Day 1 framework for 6G AI-Native RAN standardization design, balancing technical innovation with practical deployment.
- Energy (1.00)
- Information Technology > Security & Privacy (0.93)
- Telecommunications > Networks (0.68)
- Information Technology > Networks (0.68)
Human-Centric Community Detection in Hybrid Metaverse Networks with Integrated AI Entities
Chiu, Shih-Hsuan, Teng, Ya-Wen, Yang, De-Nian, Chen, Ming-Syan
Community detection is a cornerstone problem in social network analysis (SNA), aimed at identifying cohesive communities with minimal external links. However, the rise of generative AI and Metaverse introduce complexities by creating hybrid human-AI social networks (denoted by HASNs), where traditional methods fall short, especially in human-centric settings. This paper introduces a novel community detection problem in HASNs (denoted by MetaCD), which seeks to enhance human connectivity within communities while reducing the presence of AI nodes. Effective processing of MetaCD poses challenges due to the delicate trade-off between excluding certain AI nodes and maintaining community structure. To address this, we propose CUSA, an innovative framework incorporating AI-aware clustering techniques that navigate this trade-off by selectively retaining AI nodes that contribute to community integrity. Furthermore, given the scarcity of real-world HASNs, we devise four strategies for synthesizing these networks under various hypothetical scenarios. Empirical evaluations on real social networks, reconfigured as HASNs, demonstrate the effectiveness and practicality of our approach compared to traditional non-deep learning and graph neural network (GNN)-based methods.
- Oceania > Australia > New South Wales > Sydney (0.05)
- Asia > Taiwan > Taiwan Province > Taipei (0.04)
- North America > United States > New York (0.04)
- (2 more...)
- Information Technology > Data Science > Data Mining (1.00)
- Information Technology > Communications (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning > Clustering (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning > Generative AI (0.34)
New Auterion AI Node for Drones & Robotics
Auterion has developed a new onboard AI Node for drones and other mobile robots that adds supercomputer performance to the company's Skynode avionics and connectivity platform. AI Node is equipped with the NVIDIA Jetson Xavier NX, the world's smallest AI supercomputer for embedded and edge systems, which enables the direct processing of high bandwidth sensor data for better decision-making during operations. Compute-heavy AI and ML algorithms for object recognition, tracking and counting can be used, on mission, in advanced applications for public safety, security, and wildlife conservation, and across industry use cases. Immediate development and prototyping – Teams can plug and play with a wide range of interfaces to connect various payloads and sensors. By flexibly integrating into customer ecosystems and running Auterion OS with established developer workloads, users can easily develop applications on AI Node.