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Optimal Client Sampling for Federated Learning

Optimal Client Sampling for Federated Learning

26 October 2020
Wenlin Chen
Samuel Horváth
Peter Richtárik
    FedML
ArXivPDFHTML

Papers citing "Optimal Client Sampling for Federated Learning"

50 / 102 papers shown
Title
Heterogeneity-Aware Client Sampling: A Unified Solution for Consistent Federated Learning
Heterogeneity-Aware Client Sampling: A Unified Solution for Consistent Federated Learning
Shudi Weng
Chao Ren
Ming Xiao
Mikael Skoglund
FedML
19
0
0
16 May 2025
Diffusion Learning with Partial Agent Participation and Local Updates
Diffusion Learning with Partial Agent Participation and Local Updates
Elsa Rizk
Kun Yuan
Ali H. Sayed
12
0
0
16 May 2025
Energy-Efficient Federated Learning for AIoT using Clustering Methods
Energy-Efficient Federated Learning for AIoT using Clustering Methods
Roberto Pereira
Fernanda Famá
Charalampos Kalalas
Paolo Dini
19
0
0
14 May 2025
FedFetch: Faster Federated Learning with Adaptive Downstream Prefetching
FedFetch: Faster Federated Learning with Adaptive Downstream Prefetching
Qifan Yan
Andrew Liu
Shiqi He
Mathias Lécuyer
Ivan Beschastnikh
FedML
36
0
0
21 Apr 2025
Client Selection in Federated Learning with Data Heterogeneity and Network Latencies
Client Selection in Federated Learning with Data Heterogeneity and Network Latencies
Harsh Vardhan
Xiaofan Yu
Tajana Rosing
A. Mazumdar
FedML
41
0
0
02 Apr 2025
Communication-Efficient and Personalized Federated Foundation Model Fine-Tuning via Tri-Matrix Adaptation
Communication-Efficient and Personalized Federated Foundation Model Fine-Tuning via Tri-Matrix Adaptation
Yongqian Li
Bo Liu
Sheng Huang
Zhe Zhang
Xiaotong Yuan
Richang Hong
46
0
0
31 Mar 2025
Biased Federated Learning under Wireless Heterogeneity
Muhammad Faraz Ul Abrar
Nicolò Michelusi
FedML
46
0
0
08 Mar 2025
Scalable Decentralized Learning with Teleportation
Scalable Decentralized Learning with Teleportation
Yuki Takezawa
Sebastian U. Stich
64
1
0
25 Jan 2025
A Unified Analysis of Federated Learning with Arbitrary Client Participation
A Unified Analysis of Federated Learning with Arbitrary Client Participation
Shiqiang Wang
Mingyue Ji
FedML
44
55
0
31 Dec 2024
Federated Learning and RAG Integration: A Scalable Approach for Medical Large Language Models
Federated Learning and RAG Integration: A Scalable Approach for Medical Large Language Models
Jincheol Jung
Hongju Jeong
Eui-Nam Huh
91
0
0
18 Dec 2024
Attribute Inference Attacks for Federated Regression Tasks
Attribute Inference Attacks for Federated Regression Tasks
Francesco Diana
Othmane Marfoq
Chuan Xu
Giovanni Neglia
F. Giroire
Eoin Thomas
AAML
183
1
0
19 Nov 2024
Debiasing Federated Learning with Correlated Client Participation
Debiasing Federated Learning with Correlated Client Participation
Zhenyu Sun
Ziyang Zhang
Zheng Xu
Gauri Joshi
Pranay Sharma
Ermin Wei
FedML
29
0
0
02 Oct 2024
Online Client Scheduling and Resource Allocation for Efficient Federated
  Edge Learning
Online Client Scheduling and Resource Allocation for Efficient Federated Edge Learning
Zhidong Gao
Zhenxiao Zhang
Yu Zhang
Tongnian Wang
Yanmin Gong
Yuanxiong Guo
35
0
0
29 Sep 2024
Does Worst-Performing Agent Lead the Pack? Analyzing Agent Dynamics in
  Unified Distributed SGD
Does Worst-Performing Agent Lead the Pack? Analyzing Agent Dynamics in Unified Distributed SGD
Jie Hu
Yi-Ting Ma
Do Young Eun
FedML
27
0
0
26 Sep 2024
Efficient Federated Learning against Heterogeneous and Non-stationary
  Client Unavailability
Efficient Federated Learning against Heterogeneous and Non-stationary Client Unavailability
Ming Xiang
Stratis Ioannidis
Edmund Yeh
Carlee Joe-Wong
Lili Su
FedML
37
5
0
26 Sep 2024
Green Federated Learning: A new era of Green Aware AI
Green Federated Learning: A new era of Green Aware AI
Dipanwita Thakur
Antonella Guzzo
Giancarlo Fortino
Francesco Piccialli
AI4CE
48
4
0
19 Sep 2024
EncCluster: Scalable Functional Encryption in Federated Learning through
  Weight Clustering and Probabilistic Filters
EncCluster: Scalable Functional Encryption in Federated Learning through Weight Clustering and Probabilistic Filters
Vasileios Tsouvalas
Samaneh Mohammadi
Ali Balador
T. Ozcelebi
Francesco Flammini
N. Meratnia
FedML
38
0
0
13 Jun 2024
Exploring the Practicality of Federated Learning: A Survey Towards the
  Communication Perspective
Exploring the Practicality of Federated Learning: A Survey Towards the Communication Perspective
Khiem H. Le
Nhan Luong-Ha
Manh Nguyen-Duc
Danh Le-Phuoc
Cuong D. Do
Kok-Seng Wong
FedML
34
1
0
30 May 2024
FedStale: leveraging stale client updates in federated learning
FedStale: leveraging stale client updates in federated learning
Angelo Rodio
Giovanni Neglia
FedML
40
4
0
07 May 2024
Understanding Server-Assisted Federated Learning in the Presence of
  Incomplete Client Participation
Understanding Server-Assisted Federated Learning in the Presence of Incomplete Client Participation
Haibo Yang
Pei-Yuan Qiu
Prashant Khanduri
Minghong Fang
Jia Liu
FedML
40
1
0
04 May 2024
Towards Fairness in Provably Communication-Efficient Federated
  Recommender Systems
Towards Fairness in Provably Communication-Efficient Federated Recommender Systems
Kirandeep Kaur
Sujit Gujar
Shweta Jain
FedML
48
0
0
03 May 2024
Adaptive Heterogeneous Client Sampling for Federated Learning over
  Wireless Networks
Adaptive Heterogeneous Client Sampling for Federated Learning over Wireless Networks
Bing Luo
Wenli Xiao
Shiqiang Wang
Jianwei Huang
Leandros Tassiulas
FedML
38
4
0
22 Apr 2024
Empowering Federated Learning with Implicit Gossiping: Mitigating
  Connection Unreliability Amidst Unknown and Arbitrary Dynamics
Empowering Federated Learning with Implicit Gossiping: Mitigating Connection Unreliability Amidst Unknown and Arbitrary Dynamics
Ming Xiang
Stratis Ioannidis
Edmund Yeh
Carlee Joe-Wong
Lili Su
FedML
31
2
0
15 Apr 2024
Efficient Unbiased Sparsification
Efficient Unbiased Sparsification
Leighton Barnes
Timothy Chow
Emma Cohen
Keith Frankston
Benjamin Howard
Fred Kochman
Daniel Scheinerman
Jeffrey VanderKam
OT
34
1
0
22 Feb 2024
Adaptive Federated Learning in Heterogeneous Wireless Networks with
  Independent Sampling
Adaptive Federated Learning in Heterogeneous Wireless Networks with Independent Sampling
Jiaxiang Geng
Yanzhao Hou
Xiaofeng Tao
Juncheng Wang
Bing Luo
FedML
24
0
0
15 Feb 2024
Federated Learning Can Find Friends That Are Advantageous
Federated Learning Can Find Friends That Are Advantageous
N. Tupitsa
Samuel Horváth
Martin Takávc
Eduard A. Gorbunov
FedML
49
2
0
07 Feb 2024
Resource-Aware Hierarchical Federated Learning in Wireless Video Caching
  Networks
Resource-Aware Hierarchical Federated Learning in Wireless Video Caching Networks
Md Ferdous Pervej
A. Molisch
41
3
0
06 Feb 2024
Decomposable Submodular Maximization in Federated Setting
Decomposable Submodular Maximization in Federated Setting
Akbar Rafiey
FedML
30
1
0
31 Jan 2024
Federated Hyperdimensional Computing
Federated Hyperdimensional Computing
Kazim Ergun
Rishikanth Chandrasekaran
Tajana Simunic
FedML
17
0
0
26 Dec 2023
On the Role of Server Momentum in Federated Learning
On the Role of Server Momentum in Federated Learning
Jianhui Sun
Xidong Wu
Heng-Chiao Huang
Aidong Zhang
FedML
60
11
0
19 Dec 2023
Multi-Criteria Client Selection and Scheduling with Fairness Guarantee
  for Federated Learning Service
Multi-Criteria Client Selection and Scheduling with Fairness Guarantee for Federated Learning Service
Meiying Zhang
Huan Zhao
Sheldon C Ebron
Ruitao Xie
Kan Yang
16
1
0
05 Dec 2023
Federated Fine-Tuning of Foundation Models via Probabilistic Masking
Federated Fine-Tuning of Foundation Models via Probabilistic Masking
Vasileios Tsouvalas
Yuki M. Asano
Aaqib Saeed
FedML
84
3
0
29 Nov 2023
SoK: Memorisation in machine learning
SoK: Memorisation in machine learning
Dmitrii Usynin
Moritz Knolle
Georgios Kaissis
22
1
0
06 Nov 2023
EcoLearn: Optimizing the Carbon Footprint of Federated Learning
EcoLearn: Optimizing the Carbon Footprint of Federated Learning
Talha Mehboob
Noman Bashir
Jesus Omana Iglesias
Michael Zink
David Irwin
22
0
0
27 Oct 2023
Utilizing Free Clients in Federated Learning for Focused Model
  Enhancement
Utilizing Free Clients in Federated Learning for Focused Model Enhancement
Aditya Narayan Ravi
Ilan Shomorony
FedML
38
0
0
06 Oct 2023
Enhanced Federated Optimization: Adaptive Unbiased Sampling with Reduced
  Variance
Enhanced Federated Optimization: Adaptive Unbiased Sampling with Reduced Variance
Dun Zeng
Zenglin Xu
Yu Pan
Xu Luo
Qifan Wang
Xiaoying Tang
FedML
17
1
0
04 Oct 2023
Accelerating Non-IID Federated Learning via Heterogeneity-Guided Client
  Sampling
Accelerating Non-IID Federated Learning via Heterogeneity-Guided Client Sampling
Huancheng Chen
H. Vikalo
FedML
8
2
0
30 Sep 2023
Federated Learning Under Restricted User Availability
Federated Learning Under Restricted User Availability
Periklis Theodoropoulos
Konstantinos E. Nikolakakis
Dionysios S. Kalogerias
FedML
26
1
0
25 Sep 2023
Stochastic Controlled Averaging for Federated Learning with
  Communication Compression
Stochastic Controlled Averaging for Federated Learning with Communication Compression
Xinmeng Huang
Ping Li
Xiaoyun Li
37
195
0
16 Aug 2023
Tackling Computational Heterogeneity in FL: A Few Theoretical Insights
Tackling Computational Heterogeneity in FL: A Few Theoretical Insights
Adnane Mansour
Gaia Carenini
Alexandre Duplessis
FedML
26
0
0
12 Jul 2023
Towards a Better Theoretical Understanding of Independent Subnetwork
  Training
Towards a Better Theoretical Understanding of Independent Subnetwork Training
Egor Shulgin
Peter Richtárik
AI4CE
28
6
0
28 Jun 2023
A Lightweight Method for Tackling Unknown Participation Statistics in
  Federated Averaging
A Lightweight Method for Tackling Unknown Participation Statistics in Federated Averaging
Shiqiang Wang
Mingyue Ji
FedML
32
0
0
06 Jun 2023
Improving Accelerated Federated Learning with Compression and Importance
  Sampling
Improving Accelerated Federated Learning with Compression and Importance Sampling
Michal Grudzieñ
Grigory Malinovsky
Peter Richtárik
FedML
35
8
0
05 Jun 2023
A Framework for Incentivized Collaborative Learning
A Framework for Incentivized Collaborative Learning
Xinran Wang
Qi Le
Ahmad Faraz Khan
Jie Ding
A. Anwar
FedML
37
4
0
26 May 2023
Client Selection for Federated Policy Optimization with Environment
  Heterogeneity
Client Selection for Federated Policy Optimization with Environment Heterogeneity
Zhijie Xie
S. H. Song
27
3
0
18 May 2023
Incentive Mechanism Design for Unbiased Federated Learning with
  Randomized Client Participation
Incentive Mechanism Design for Unbiased Federated Learning with Randomized Client Participation
Bing Luo
Yutong Feng
Shiqiang Wang
Jianwei Huang
Leandros Tassiulas
FedML
26
10
0
17 Apr 2023
LOKI: Large-scale Data Reconstruction Attack against Federated Learning
  through Model Manipulation
LOKI: Large-scale Data Reconstruction Attack against Federated Learning through Model Manipulation
Joshua C. Zhao
Atul Sharma
A. Elkordy
Yahya H. Ezzeldin
Salman Avestimehr
S. Bagchi
AAML
FedML
38
28
0
21 Mar 2023
A Privacy Preserving System for Movie Recommendations Using Federated
  Learning
A Privacy Preserving System for Movie Recommendations Using Federated Learning
David Neumann
Andreas Lutz
Karsten Müller
Wojciech Samek
23
10
0
07 Mar 2023
Federated Gradient Matching Pursuit
Federated Gradient Matching Pursuit
Halyun Jeong
Deanna Needell
Jing Qin
FedML
37
1
0
20 Feb 2023
FilFL: Client Filtering for Optimized Client Participation in Federated
  Learning
FilFL: Client Filtering for Optimized Client Participation in Federated Learning
Fares Fourati
Salma Kharrat
Vaneet Aggarwal
Mohamed-Slim Alouini
Marco Canini
FedML
18
4
0
13 Feb 2023
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