Brain-X(交叉脑科学)主要聚焦与脑/神经科学有交叉融合的多学科前沿!
Evolution of Networked AI Systems: Trends, Challenges, and Opportunities
The integration of AI and networking technologies is driving the development of intelligent and autonomous systems that are capable of making decisions and performing tasks in real-time. These systems are critical for a wide range of applications, including 5G networks, IoT, and edge computing. However, designing, implementing, and deploying AI systems in networked environments presents a number of unique challenges. One of the main challenges is ensuring that AI systems can operate effectively in dynamic network environments with varying network conditions, particularly if large-scale changes happen over time. Another requirement is balancing the trade-offs between the computational and communication requirements of AI systems in networked environments. Additionally, there is a need to develop new algorithms and protocols that can effectively utilize the resources of the network to meet the needs of next-generation applications (for example, AR/VR or large language models) while ensuring robustness and security. Finally, networked AI systems will deal with the high-dimensionality and heterogeneity of the data generated by AI systems in networked environments, which requires novel data management and analytics techniques. The goal of this special issue is to invite researchers and practitioners working on the design, implementation, and deployment of AI systems in networked environments. By inviting experts from academia and industry, the special issue aims to foster collaboration and to promote the development of new ideas and research directions in this field. We invite submissions of original research papers, as well as papers describing practical experiences, case studies, and tutorials.
Key topics include (but are not limited to): Distributed AI algorithms and systems, Edge computing and fog computing for AI, AI-enabled networking architectures and protocols, AI-based network management and control, AI-based enhancement for reconfigurable wireless network design, optimization, and resource allocation, Functional decomposition and placement over RAN and edge for AI, Real-time networking protocols for Edge AI, Theoretical and/or experimental results addressing the predictability of networked AI systems from a computational and communication standpoint, Enhanced intelligent network slicing for edge AI platforms, AI-based network troubleshooting and diagnosis, AI-enabled network security and privacy, Data management, sharing, and sets for AI in networked systems, Real-world deployment and evaluation of AI in networked systems, Digital twin platforms enabled by networked AI systems, Large Langue Models (LLMs) in and for networked AI systems.
Guest editors:
Roberto Morabito, PhD
University of Helsinki, Helsinki, Finland
(networked systems, distributed AI, edge computing, Internet of Things)
Kwang Taik Kim, PhD
Purdue University, West Lafayette, Indiana, USA
(communication engineering, open RAN architecture, edge platform, large-scale distributed computing)
Kyunghan Lee, PhD
Seoul National University, Seoul, Korea
(Networked Computing, Mobile Machine Learning, Low-Latency Networking, Data/Computing/Offloading)
Jiasi Chen, PhD
University of Michigan, Ann Arbor, USA
(mobile systems, AR/VR, video, streaming, machine learning)
Manuscript submission information:
The COMPNW's submission system (
https://www.editorialmanager.com/comnet/default2.aspx
) will be open for submissions to our Special Issue from August 15th, 2023. When submitting your manuscript please select the article type
VSI: EvoNetAISys
.
All submissions deemed suitable by the editors to be sent for peer review will be reviewed by at least two independent reviewers. Once your manuscript is accepted, it will go into production to be published in the special issue.
Important Dates:
Submission Open Date:
August 15th, 2023
Final Manuscript Submission Deadline:
December 30th, 2023
Editorial Acceptance Deadline: April 15th, 2024
Keywords:
Edge computing for AI; AI-enabled networked architectures and protocols; AI-based network management and control; Security and privacy for networked AI systems; Real-world deployments of networked AI Systems
Computer Networks的CAR指数
2023年3月份科睿唯安官方一次性踢除35本SCI期刊,多数涉及学术诚信问题,让我们意识到学术期刊的“被踢”指数,也很重要。目前,对于期刊的
“被踢”指数
,这里介绍一下:
CAR指数
(关于C
AR的
详
细介绍,请关注:
www.jcarindex.com
)
,这是一种评价期刊学术诚信风险的指数,
指数
越高代表可能的风险越大。从数据看,
Computer Networks
不管是2022年度,还是2023年度实时的CAR指数,都是比较低的。
当然,
CAR指数仅供参考,期刊风险情况,需以科睿唯安或中科院预警等官方为准!