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FedRolex: Model-Heterogeneous Federated Learning with Rolling Sub-Model
  Extraction

FedRolex: Model-Heterogeneous Federated Learning with Rolling Sub-Model Extraction

3 December 2022
Samiul Alam
Luyang Liu
Ming Yan
Mi Zhang
ArXivPDFHTML

Papers citing "FedRolex: Model-Heterogeneous Federated Learning with Rolling Sub-Model Extraction"

19 / 19 papers shown
Title
FedConv: A Learning-on-Model Paradigm for Heterogeneous Federated Clients
FedConv: A Learning-on-Model Paradigm for Heterogeneous Federated Clients
Leming Shen
Qiang Yang
Kaiyan Cui
Yuanqing Zheng
Xiao-Yong Wei
Jianwei Liu
Jinsong Han
FedML
64
11
0
28 Feb 2025
Orthogonal Calibration for Asynchronous Federated Learning
Jiayun Zhang
Shuheng Li
Haiyu Huang
Xiaofan Yu
Rajesh K. Gupta
Jingbo Shang
FedML
60
0
0
21 Feb 2025
Efficient Zero-Order Federated Finetuning of Language Models for Resource-Constrained Devices
Efficient Zero-Order Federated Finetuning of Language Models for Resource-Constrained Devices
Mohamed Aboelenien Ahmed
Kilian Pfeiffer
R. Khalili
Heba Khdr
J. Henkel
FedML
89
0
0
17 Feb 2025
Beyond Model Scale Limits: End-Edge-Cloud Federated Learning with Self-Rectified Knowledge Agglomeration
Zhiyuan Wu
Sheng Sun
Yuwei Wang
Min Liu
Ke Xu
Quyang Pan
Bo Gao
Tian Wen
FedML
30
0
0
03 Jan 2025
Efficient Federated Finetuning of Tiny Transformers with Resource-Constrained Devices
Efficient Federated Finetuning of Tiny Transformers with Resource-Constrained Devices
Kilian Pfeiffer
Mohamed Aboelenien Ahmed
R. Khalili
J. Henkel
30
0
0
12 Nov 2024
FedPeWS: Personalized Warmup via Subnetworks for Enhanced Heterogeneous Federated Learning
FedPeWS: Personalized Warmup via Subnetworks for Enhanced Heterogeneous Federated Learning
Nurbek Tastan
Samuel Horváth
Martin Takáč
Karthik Nandakumar
FedML
57
0
0
03 Oct 2024
FedEx: Expediting Federated Learning over Heterogeneous Mobile Devices
  by Overlapping and Participant Selection
FedEx: Expediting Federated Learning over Heterogeneous Mobile Devices by Overlapping and Participant Selection
Jiaxiang Geng
Boyu Li
Xiaoqi Qin
Yixuan Li
Liang Li
Yanzhao Hou
Miao Pan
FedML
38
0
0
01 Jul 2024
WHALE-FL: Wireless and Heterogeneity Aware Latency Efficient Federated Learning over Mobile Devices via Adaptive Subnetwork Scheduling
WHALE-FL: Wireless and Heterogeneity Aware Latency Efficient Federated Learning over Mobile Devices via Adaptive Subnetwork Scheduling
Huai-an Su
Jiaxiang Geng
Liang Li
Xiaoqi Qin
Yanzhao Hou
Xin Fu
Miao Pan
Miao Pan
40
1
0
01 May 2024
Straggler-resilient Federated Learning: Tackling Computation
  Heterogeneity with Layer-wise Partial Model Training in Mobile Edge Network
Straggler-resilient Federated Learning: Tackling Computation Heterogeneity with Layer-wise Partial Model Training in Mobile Edge Network
Student Member Ieee Hongda Wu
F. I. C. V. Ping Wang
Aswartha Narayana
FedML
44
1
0
16 Nov 2023
Distributed Personalized Empirical Risk Minimization
Distributed Personalized Empirical Risk Minimization
Yuyang Deng
Mohammad Mahdi Kamani
Pouria Mahdavinia
M. Mahdavi
21
4
0
26 Oct 2023
Multimodal Federated Learning in Healthcare: a Review
Multimodal Federated Learning in Healthcare: a Review
Jacob Thrasher
Alina Devkota
Prasiddha Siwakotai
Rohit Chivukula
Pranav Poudel
Chaunbo Hu
Binod Bhattarai
P. Gyawali
28
7
0
14 Oct 2023
Maestro: Uncovering Low-Rank Structures via Trainable Decomposition
Maestro: Uncovering Low-Rank Structures via Trainable Decomposition
Samuel Horváth
Stefanos Laskaridis
Shashank Rajput
Hongyi Wang
BDL
32
4
0
28 Aug 2023
A Survey for Federated Learning Evaluations: Goals and Measures
A Survey for Federated Learning Evaluations: Goals and Measures
Di Chai
Leye Wang
Liu Yang
Junxue Zhang
Kai Chen
Qian Yang
ELM
FedML
17
21
0
23 Aug 2023
Aggregating Capacity in FL through Successive Layer Training for
  Computationally-Constrained Devices
Aggregating Capacity in FL through Successive Layer Training for Computationally-Constrained Devices
Kilian Pfeiffer
R. Khalili
J. Henkel
FedML
37
5
0
26 May 2023
Is Aggregation the Only Choice? Federated Learning via Layer-wise Model
  Recombination
Is Aggregation the Only Choice? Federated Learning via Layer-wise Model Recombination
Ming Hu
Zhihao Yue
Zhiwei Ling
Cheng Chen
Yihao Huang
Xian Wei
Xiang Lian
Yang Liu
Mingsong Chen
FedML
19
8
0
18 May 2023
TimelyFL: Heterogeneity-aware Asynchronous Federated Learning with
  Adaptive Partial Training
TimelyFL: Heterogeneity-aware Asynchronous Federated Learning with Adaptive Partial Training
Tuo Zhang
Lei Gao
Sunwoo Lee
Mi Zhang
Salman Avestimehr
FedML
26
28
0
14 Apr 2023
FedTune: Automatic Tuning of Federated Learning Hyper-Parameters from
  System Perspective
FedTune: Automatic Tuning of Federated Learning Hyper-Parameters from System Perspective
Huan Zhang
Mi Zhang
Xin Liu
P. Mohapatra
Michael DeLucia
FedML
23
18
0
06 Oct 2021
A Field Guide to Federated Optimization
A Field Guide to Federated Optimization
Jianyu Wang
Zachary B. Charles
Zheng Xu
Gauri Joshi
H. B. McMahan
...
Mi Zhang
Tong Zhang
Chunxiang Zheng
Chen Zhu
Wennan Zhu
FedML
178
411
0
14 Jul 2021
FjORD: Fair and Accurate Federated Learning under heterogeneous targets
  with Ordered Dropout
FjORD: Fair and Accurate Federated Learning under heterogeneous targets with Ordered Dropout
Samuel Horváth
Stefanos Laskaridis
Mario Almeida
Ilias Leondiadis
Stylianos I. Venieris
Nicholas D. Lane
178
267
0
26 Feb 2021
1