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CG-FedLLM: How to Compress Gradients in Federated Fune-tuning for Large
  Language Models

CG-FedLLM: How to Compress Gradients in Federated Fune-tuning for Large Language Models

22 May 2024
Huiwen Wu
Xiaohan Li
Deyi Zhang
Xiaogang Xu
Xiaogang Xu
Puning Zhao
Zhe Liu
    FedML
ArXivPDFHTML

Papers citing "CG-FedLLM: How to Compress Gradients in Federated Fune-tuning for Large Language Models"

10 / 10 papers shown
Title
On the Effectiveness of Parameter-Efficient Fine-Tuning
On the Effectiveness of Parameter-Efficient Fine-Tuning
Z. Fu
Haoran Yang
Anthony Man-Cho So
Wai Lam
Lidong Bing
Nigel Collier
49
156
0
28 Nov 2022
LoRA: Low-Rank Adaptation of Large Language Models
LoRA: Low-Rank Adaptation of Large Language Models
J. E. Hu
Yelong Shen
Phillip Wallis
Zeyuan Allen-Zhu
Yuanzhi Li
Shean Wang
Lu Wang
Weizhu Chen
OffRL
AI4TS
AI4CE
ALM
AIMat
312
10,099
0
17 Jun 2021
GLM: General Language Model Pretraining with Autoregressive Blank
  Infilling
GLM: General Language Model Pretraining with Autoregressive Blank Infilling
Zhengxiao Du
Yujie Qian
Xiao Liu
Ming Ding
J. Qiu
Zhilin Yang
Jie Tang
BDL
AI4CE
100
1,520
0
18 Mar 2021
Learned Gradient Compression for Distributed Deep Learning
Learned Gradient Compression for Distributed Deep Learning
L. Abrahamyan
Yiming Chen
Giannis Bekoulis
Nikos Deligiannis
62
46
0
16 Mar 2021
Federated Learning: Opportunities and Challenges
Federated Learning: Opportunities and Challenges
P. Mammen
FedML
84
220
0
14 Jan 2021
UVeQFed: Universal Vector Quantization for Federated Learning
UVeQFed: Universal Vector Quantization for Federated Learning
Nir Shlezinger
Mingzhe Chen
Yonina C. Eldar
H. Vincent Poor
Shuguang Cui
FedML
MQ
49
225
0
05 Jun 2020
Inverting Gradients -- How easy is it to break privacy in federated
  learning?
Inverting Gradients -- How easy is it to break privacy in federated learning?
Jonas Geiping
Hartmut Bauermeister
Hannah Dröge
Michael Moeller
FedML
82
1,217
0
31 Mar 2020
Federated Learning with Differential Privacy: Algorithms and Performance
  Analysis
Federated Learning with Differential Privacy: Algorithms and Performance Analysis
Kang Wei
Jun Li
Ming Ding
Chuan Ma
Heng Yang
Farokhi Farhad
Shi Jin
Tony Q.S. Quek
H. Vincent Poor
FedML
97
1,589
0
01 Nov 2019
Federated Learning: Strategies for Improving Communication Efficiency
Federated Learning: Strategies for Improving Communication Efficiency
Jakub Konecný
H. B. McMahan
Felix X. Yu
Peter Richtárik
A. Suresh
Dave Bacon
FedML
271
4,620
0
18 Oct 2016
Communication-Efficient Learning of Deep Networks from Decentralized
  Data
Communication-Efficient Learning of Deep Networks from Decentralized Data
H. B. McMahan
Eider Moore
Daniel Ramage
S. Hampson
Blaise Agüera y Arcas
FedML
251
17,328
0
17 Feb 2016
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