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Convergence Analysis of Distributed Stochastic Gradient Descent with
  Shuffling

Convergence Analysis of Distributed Stochastic Gradient Descent with Shuffling

29 September 2017
Qi Meng
Wei-neng Chen
Yue Wang
Zhi-Ming Ma
Tie-Yan Liu
    FedML
ArXivPDFHTML

Papers citing "Convergence Analysis of Distributed Stochastic Gradient Descent with Shuffling"

32 / 32 papers shown
Title
Graph Learning at Scale: Characterizing and Optimizing Pre-Propagation GNNs
Graph Learning at Scale: Characterizing and Optimizing Pre-Propagation GNNs
Zichao Yue
Chenhui Deng
Zhiru Zhang
AI4CE
39
0
0
17 Apr 2025
Shuffling Gradient-Based Methods for Nonconvex-Concave Minimax
  Optimization
Shuffling Gradient-Based Methods for Nonconvex-Concave Minimax Optimization
Quoc Tran-Dinh
Trang H. Tran
Lam M. Nguyen
42
0
0
29 Oct 2024
Expansive Supervision for Neural Radiance Field
Expansive Supervision for Neural Radiance Field
Weixiang Zhang
Shuzhao Xie
Shijia Ge
Wei Yao
Chen Tang
Zhi Wang
43
1
0
12 Sep 2024
I/O in Machine Learning Applications on HPC Systems: A 360-degree Survey
I/O in Machine Learning Applications on HPC Systems: A 360-degree Survey
Noah Lewis
J. L. Bez
Suren Byna
62
0
0
16 Apr 2024
SignSGD with Federated Voting
SignSGD with Federated Voting
Chanho Park
H. Vincent Poor
Namyoon Lee
FedML
42
1
0
25 Mar 2024
On the Last-Iterate Convergence of Shuffling Gradient Methods
On the Last-Iterate Convergence of Shuffling Gradient Methods
Zijian Liu
Zhengyuan Zhou
42
2
0
12 Mar 2024
Convergence of Sign-based Random Reshuffling Algorithms for Nonconvex
  Optimization
Convergence of Sign-based Random Reshuffling Algorithms for Nonconvex Optimization
Zhen Qin
Zhishuai Liu
Pan Xu
31
1
0
24 Oct 2023
KAKURENBO: Adaptively Hiding Samples in Deep Neural Network Training
KAKURENBO: Adaptively Hiding Samples in Deep Neural Network Training
Truong Thao Nguyen
Balazs Gerofi
Edgar Josafat Martinez-Noriega
Franccois Trahay
Mohamed Wahib
32
1
0
16 Oct 2023
On Batching Variable Size Inputs for Training End-to-End Speech
  Enhancement Systems
On Batching Variable Size Inputs for Training End-to-End Speech Enhancement Systems
Philippe Gonzalez
T. S. Alstrøm
Tobias May
24
9
0
25 Jan 2023
Data-driven and machine-learning based prediction of wave propagation
  behavior in dam-break flood
Data-driven and machine-learning based prediction of wave propagation behavior in dam-break flood
Changli Li
Zheng Han
Yan-ge Li
Ming Li
Wei-dong Wang
16
2
0
19 Sep 2022
Exoshuffle: An Extensible Shuffle Architecture
Exoshuffle: An Extensible Shuffle Architecture
Frank Sifei Luan
Stephanie Wang
Samyukta Yagati
Sean Kim
Kenneth Lien
Isaac Ong
Tony Hong
S. Cho
Eric Liang
Ion Stoica
19
6
0
09 Mar 2022
Distributed Random Reshuffling over Networks
Distributed Random Reshuffling over Networks
Kun-Yen Huang
Xiao Li
Andre Milzarek
Shi Pu
Junwen Qiu
41
11
0
31 Dec 2021
BGL: GPU-Efficient GNN Training by Optimizing Graph Data I/O and
  Preprocessing
BGL: GPU-Efficient GNN Training by Optimizing Graph Data I/O and Preprocessing
Tianfeng Liu
Yangrui Chen
Dan Li
Chuan Wu
Yibo Zhu
Jun He
Size Zheng
Hongzheng Chen
Hongzhi Chen
Chuanxiong Guo
GNN
34
77
0
16 Dec 2021
Distributed stochastic proximal algorithm with random reshuffling for
  non-smooth finite-sum optimization
Distributed stochastic proximal algorithm with random reshuffling for non-smooth finite-sum optimization
Xia Jiang
Xianlin Zeng
Jian Sun
Jie Chen
Lihua Xie
25
6
0
06 Nov 2021
The challenge of reproducible ML: an empirical study on the impact of
  bugs
The challenge of reproducible ML: an empirical study on the impact of bugs
Emilio Rivera-Landos
Foutse Khomh
Amin Nikanjam
10
5
0
09 Sep 2021
Optimizing Deep Neural Networks through Neuroevolution with Stochastic
  Gradient Descent
Optimizing Deep Neural Networks through Neuroevolution with Stochastic Gradient Descent
Haichao Zhang
K. Hao
Lei Gao
Bing Wei
Xue-song Tang
21
12
0
21 Dec 2020
SMG: A Shuffling Gradient-Based Method with Momentum
SMG: A Shuffling Gradient-Based Method with Momentum
Trang H. Tran
Lam M. Nguyen
Quoc Tran-Dinh
28
21
0
24 Nov 2020
Evaluation of Federated Learning in Phishing Email Detection
Evaluation of Federated Learning in Phishing Email Detection
Chandra Thapa
Jun Tang
A. Abuadbba
Yansong Gao
S. Çamtepe
Surya Nepal
Mahathir Almashor
Yifeng Zheng
FedML
25
16
0
27 Jul 2020
Distributed Reinforcement Learning of Targeted Grasping with Active
  Vision for Mobile Manipulators
Distributed Reinforcement Learning of Targeted Grasping with Active Vision for Mobile Manipulators
Yasuhiro Fujita
Kota Uenishi
Avinash Ummadisingu
P. Nagarajan
Shimpei Masuda
M. Castro
32
18
0
16 Jul 2020
Analyzing and Mitigating Data Stalls in DNN Training
Analyzing and Mitigating Data Stalls in DNN Training
Jayashree Mohan
Amar Phanishayee
Ashish Raniwala
Vijay Chidambaram
36
105
0
14 Jul 2020
A Hybrid-Order Distributed SGD Method for Non-Convex Optimization to
  Balance Communication Overhead, Computational Complexity, and Convergence
  Rate
A Hybrid-Order Distributed SGD Method for Non-Convex Optimization to Balance Communication Overhead, Computational Complexity, and Convergence Rate
Naeimeh Omidvar
M. Maddah-ali
Hamed Mahdavi
ODL
27
3
0
27 Mar 2020
Closing the convergence gap of SGD without replacement
Closing the convergence gap of SGD without replacement
Shashank Rajput
Anant Gupta
Dimitris Papailiopoulos
16
61
0
24 Feb 2020
A Unified Convergence Analysis for Shuffling-Type Gradient Methods
A Unified Convergence Analysis for Shuffling-Type Gradient Methods
Lam M. Nguyen
Quoc Tran-Dinh
Dzung Phan
Phuong Ha Nguyen
Marten van Dijk
44
78
0
19 Feb 2020
Seizure Prediction Using Bidirectional LSTM
Seizure Prediction Using Bidirectional LSTM
Hazrat Ali
Feroz Karim
Junaid Javed Qureshi
Adnan O. M. Abuassba
Mohammad Farhad Bulbul
OOD
18
8
0
13 Dec 2019
Progressive Compressed Records: Taking a Byte out of Deep Learning Data
Progressive Compressed Records: Taking a Byte out of Deep Learning Data
Michael Kuchnik
George Amvrosiadis
Virginia Smith
22
9
0
01 Nov 2019
Data-driven prediction of a multi-scale Lorenz 96 chaotic system using
  deep learning methods: Reservoir computing, ANN, and RNN-LSTM
Data-driven prediction of a multi-scale Lorenz 96 chaotic system using deep learning methods: Reservoir computing, ANN, and RNN-LSTM
Ashesh Chattopadhyay
Pedram Hassanzadeh
D. Subramanian
AI4CE
24
40
0
20 Jun 2019
Sequenced-Replacement Sampling for Deep Learning
Sequenced-Replacement Sampling for Deep Learning
C. Ho
Dae Hoon Park
Wei Yang
Yi Chang
24
0
0
19 Oct 2018
LIRS: Enabling efficient machine learning on NVM-based storage via a
  lightweight implementation of random shuffling
LIRS: Enabling efficient machine learning on NVM-based storage via a lightweight implementation of random shuffling
Zhi-Lin Ke
Hsiang-Yun Cheng
Chia-Lin Yang
27
9
0
10 Oct 2018
Decentralized Differentially Private Without-Replacement Stochastic
  Gradient Descent
Decentralized Differentially Private Without-Replacement Stochastic Gradient Descent
Richeng Jin
Xiaofan He
H. Dai
FedML
25
2
0
08 Sep 2018
On the Fundamental Limits of Coded Data Shuffling for Distributed
  Machine Learning
On the Fundamental Limits of Coded Data Shuffling for Distributed Machine Learning
Adel M. Elmahdy
S. Mohajer
FedML
21
15
0
11 Jul 2018
Federated Learning with Non-IID Data
Federated Learning with Non-IID Data
Yue Zhao
Meng Li
Liangzhen Lai
Naveen Suda
Damon Civin
Vikas Chandra
FedML
78
2,530
0
02 Jun 2018
Optimal Distributed Online Prediction using Mini-Batches
Optimal Distributed Online Prediction using Mini-Batches
O. Dekel
Ran Gilad-Bachrach
Ohad Shamir
Lin Xiao
186
683
0
07 Dec 2010
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