Collaborative Research: CCSS: Hierarchical Federated Learning over Highly-Dense and Overlapping NextG Wireless Deployments: Orchestrating Resources for Performance
协作研究:CCSS:高密度和重叠的 NextG 无线部署的分层联合学习:编排资源以提高性能
基本信息
- 批准号:2319781
- 负责人:
- 金额:$ 22.5万
- 依托单位:
- 依托单位国家:美国
- 项目类别:Standard Grant
- 财政年份:2023
- 资助国家:美国
- 起止时间:2023-10-01 至 2026-09-30
- 项目状态:未结题
- 来源:
- 关键词:
项目摘要
Federated learning (FL) is a distributed framework proposed for training machine learning (ML) models on mobile devices in Next Generation (NextG) wireless communication systems. Hierarchical federated learning (HFL) is an architecture that shows promise in enabling FL over wireless networks. However, existing research on HFL falls short in effectively addressing the challenges posed by the NextG communication environment, such as high user and edge server density, diverse edge server deployments, and overlapping wireless coverage. To tackle these challenges, this project aims to investigate resource allocation problems in HFL, focusing on selecting mobile clients to participate in HFL, associating them with edge servers, and allocating sufficient bandwidth under these demanding conditions. The successful completion of the proposed framework has the potential in transforming the deployment and operation of NextG systems and will provide support for a wide range of ML-powered applications and services. The primary objective in designing the performance of HFL over wireless networks is to optimize the overall training time required for convergence. This can be achieved by minimizing the time duration of each HFL round through efficient allocation of wireless bandwidth to each client (the bandwidth allocation problem). However, due to high client density, limited wireless spectrum, and mobility, not all clients may be able to participate in every round. This leads to the need to determine which clients should participate in each round (the client selection problem) and which clients should be associated with which edge server given the overlapping wireless coverage and presence of multiple providers (the client association problem). To address these challenges, the project focuses on three key research areas: (i) designing short-term bandwidth allocation for HFL under highly dense and heterogeneous deployments, (ii) developing a long-term optimization framework to solve user selection and association for HFL, and (iii) improving HFL under the emerging scenario in which a mobile client can be associated with multiple edge servers.This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.
联合学习(FL)是在下一代(NextG)无线通信系统中的移动设备上提出的用于培训机器学习(ML)模型的分布式框架。分层联合学习(HFL)是一种体系结构,它显示出使FL超过无线网络的希望。但是,对HFL的现有研究有效地解决了NextG通信环境所带来的挑战,例如高用户和边缘服务器密度,各种边缘服务器部署以及重叠的无线覆盖范围。为了应对这些挑战,该项目旨在调查HFL中的资源分配问题,专注于选择移动客户参与HFL,将其与边缘服务器相关联,并在这些苛刻的条件下分配足够的带宽。所提出的框架的成功完成有可能改变NextG系统的部署和操作,并将为各种ML供电的应用程序和服务提供支持。设计HFL在无线网络上的性能的主要目的是优化收敛所需的整体训练时间。通过将无线带宽分配给每个客户端(带宽分配问题),可以通过将每个HFL的时间持续时间最小化来实现。但是,由于客户密度较高,无线频谱有限和机动性,并非所有客户都可以参与每个回合。这导致需要确定哪些客户应参与每个回合(客户选择问题),以及哪些客户应与哪个Edge Server相关联,给出了重叠的无线覆盖范围和多个提供商的存在(客户关联问题)。为了应对这些挑战,该项目着重于三个关键研究领域:(i)在高度密集和异质部署下设计HFL的短期带宽分配,(ii)开发一个长期优化框架,以解决HFL的用户选择和(III)在新兴客户群体下与多个Edders的统计相关联的HFL的使用者,并将其与多个移动客户的统计相关联。认为值得通过基金会的智力优点和更广泛影响的评论标准来评估值得支持。
项目成果
期刊论文数量(0)
专著数量(0)
科研奖励数量(0)
会议论文数量(0)
专利数量(0)

暂无数据
数据更新时间:2024-06-01
Zhuo Lu其他文献
Arbuscular mycorrhizal fungi: potential biocontrol agents against the damaging root hemiparasite Pedicularis kansuensis?
丛枝菌根真菌:对抗破坏性根部半寄生虫甘肃马先蒿的潜在生物防治剂?
- DOI:10.1007/s00572-013-0528-510.1007/s00572-013-0528-5
- 发表时间:2013-092013-09
- 期刊:
- 影响因子:3.9
- 作者:Sui Xiao-Lin;Li Ai-Rong;Chen Yan;Guan Kai-Yun;Zhuo Lu;Liu Yan-YanSui Xiao-Lin;Li Ai-Rong;Chen Yan;Guan Kai-Yun;Zhuo Lu;Liu Yan-Yan
- 通讯作者:Liu Yan-YanLiu Yan-Yan
Research on Stock History Data Mining and Prediction Algorithm Based on Long Short-Term Memory Network
- DOI:10.1109/icmnwc60182.2023.1043579410.1109/icmnwc60182.2023.10435794
- 发表时间:2023-122023-12
- 期刊:
- 影响因子:0
- 作者:Zhuo LuZhuo Lu
- 通讯作者:Zhuo LuZhuo Lu
Research on Recommendation System Based on Neural Network and Data Mining
基于神经网络和数据挖掘的推荐系统研究
- DOI:10.1109/icmnwc60182.2023.1043566410.1109/icmnwc60182.2023.10435664
- 发表时间:20232023
- 期刊:
- 影响因子:0
- 作者:Zhuo LuZhuo Lu
- 通讯作者:Zhuo LuZhuo Lu
Most Cited Computer Networks Articles
被引用最多的计算机网络文章
- DOI:
- 发表时间:20172017
- 期刊:
- 影响因子:0
- 作者:Luigi Atzori;Antonio Iera;Giacomo Morabito;Michele Nitti;Wenye Wang;Zhuo Lu;M. Berman;Jeffrey S. Chase;Lawrence Landweber;Akihiro Nakao;Max Ott;Dipankar Raychaudhuri;Robert Ricci;I. Seskar;S. Sicari;A. Rizzardi;L. Grieco;A. CoenLuigi Atzori;Antonio Iera;Giacomo Morabito;Michele Nitti;Wenye Wang;Zhuo Lu;M. Berman;Jeffrey S. Chase;Lawrence Landweber;Akihiro Nakao;Max Ott;Dipankar Raychaudhuri;Robert Ricci;I. Seskar;S. Sicari;A. Rizzardi;L. Grieco;A. Coen
- 通讯作者:A. CoenA. Coen
A Proactive and Deceptive Perspective for Role Detection and Concealment in Wireless Networks
无线网络中角色检测和隐藏的主动和欺骗视角
- DOI:
- 发表时间:20162016
- 期刊:
- 影响因子:0
- 作者:Zhuo Lu;Cliff X. Wang;Mingkui WeiZhuo Lu;Cliff X. Wang;Mingkui Wei
- 通讯作者:Mingkui WeiMingkui Wei
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Zhuo Lu的其他基金
Collaborative Research: Implementation: Medium: Secure, Resilient Cyber-Physical Energy System Workforce Pathways via Data-Centric, Hardware-in-the-Loop Training
协作研究:实施:中:通过以数据为中心的硬件在环培训实现安全、有弹性的网络物理能源系统劳动力路径
- 批准号:23209732320973
- 财政年份:2023
- 资助金额:$ 22.5万$ 22.5万
- 项目类别:Standard GrantStandard Grant
Collaborative Research: SaTC: CORE: Small: Understanding the Limitations of Wireless Network Security Designs Leveraging Wireless Properties: New Threats and Defenses in Practice
协作研究:SaTC:核心:小型:了解利用无线特性的无线网络安全设计的局限性:实践中的新威胁和防御
- 批准号:23167192316719
- 财政年份:2023
- 资助金额:$ 22.5万$ 22.5万
- 项目类别:Standard GrantStandard Grant
Collaborative Research: SaTC: EDU: A Comprehensive Training Program of AI for 5G and NextG Wireless Network Security
合作研究:SaTC:EDU:5G 和 NextG 无线网络安全人工智能综合培训项目
- 批准号:23212702321270
- 财政年份:2023
- 资助金额:$ 22.5万$ 22.5万
- 项目类别:Standard GrantStandard Grant
CAREER: Data-Driven Wireless Networking Designs for Efficiency and Security
职业:数据驱动的无线网络设计以提高效率和安全性
- 批准号:20445162044516
- 财政年份:2021
- 资助金额:$ 22.5万$ 22.5万
- 项目类别:Continuing GrantContinuing Grant
Collaborative Research: CyberTraining: Pilot: Interdisciplinary Training of Data-Centric Security and Resilience of Cyber-Physical Energy Infrastructures
合作研究:网络培训:试点:以数据为中心的网络物理能源基础设施安全性和弹性的跨学科培训
- 批准号:20171942017194
- 财政年份:2020
- 资助金额:$ 22.5万$ 22.5万
- 项目类别:Standard GrantStandard Grant
Collaborative Research: SWIFT: SMALL: Understanding and Combating Adversarial Spectrum Learning towards Spectrum-Efficient Wireless Networking
合作研究:SWIFT:SMALL:理解和对抗对抗性频谱学习以实现频谱高效的无线网络
- 批准号:20298752029875
- 财政年份:2020
- 资助金额:$ 22.5万$ 22.5万
- 项目类别:Standard GrantStandard Grant
SaTC: CORE: Small: Towards Secure and Reliable Network Tomography in Wireline and Wireless Networks
SaTC:核心:小型:在有线和无线网络中实现安全可靠的网络层析成像
- 批准号:17179691717969
- 财政年份:2017
- 资助金额:$ 22.5万$ 22.5万
- 项目类别:Standard GrantStandard Grant
CRII: NeTS: A Proactive Perspective on Preventing Network Inference: Shifting from Optimized to Dynamic Wireless Network Design
CRII:NeTS:防止网络推理的主动视角:从优化到动态无线网络设计的转变
- 批准号:17013941701394
- 财政年份:2016
- 资助金额:$ 22.5万$ 22.5万
- 项目类别:Continuing GrantContinuing Grant
CRII: NeTS: A Proactive Perspective on Preventing Network Inference: Shifting from Optimized to Dynamic Wireless Network Design
CRII:NeTS:防止网络推理的主动视角:从优化到动态无线网络设计的转变
- 批准号:14641141464114
- 财政年份:2015
- 资助金额:$ 22.5万$ 22.5万
- 项目类别:Continuing GrantContinuing Grant
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Collaborative Research: ECCS-CCSS Core: Resonant-Beam based Optical-Wireless Communication
合作研究:ECCS-CCSS核心:基于谐振光束的光无线通信
- 批准号:23321722332172
- 财政年份:2024
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- 批准号:23321732332173
- 财政年份:2024
- 资助金额:$ 22.5万$ 22.5万
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Collaborative Research: CCSS: Continuous Facial Sensing and 3D Reconstruction via Single-ear Wearable Biosensors
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- 批准号:24014152401415
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Collaborative Research: CCSS: Hierarchical Federated Learning over Highly-Dense and Overlapping NextG Wireless Deployments: Orchestrating Resources for Performance
协作研究:CCSS:高密度和重叠的 NextG 无线部署的分层联合学习:编排资源以提高性能
- 批准号:23197802319780
- 财政年份:2023
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