Distributed, Parallel, and Cluster Computing · Computer Science
Towards Universal Performance Modeling for Machine Learning Training on Multi-GPU Platforms
Zhongyi Lin, Ning Sun, Pallab Bhattacharya, Xizhou Feng +2
2024-11-27
Distributed, Parallel, and Cluster Computing · Computer Science
ResiHP: Taming LLM Training Failures with Dynamic Hybrid Parallelism
Tenghui Ma, Jihu Guo, Wei Gao, Sitian Lu +3
2026-05-12
Distributed, Parallel, and Cluster Computing · Computer Science
Training LLMs with Fault Tolerant HSDP on 100,000 GPUs
Omkar Salpekar, Rohan Varma, Kenny Yu, Vladimir Ivanov +19
2026-02-03
Machine Learning · Computer Science
Breaking MLPerf Training: A Case Study on Optimizing BERT
Yongdeok Kim, Jaehyung Ahn, Myeongwoo Kim, Changin Choi +10
2024-02-06
Machine Learning · Computer Science
Exploring the limits of Concurrency in ML Training on Google TPUs
Sameer Kumar, James Bradbury, Cliff Young, Yu Emma Wang +15
2021-03-17
Machine Learning · Computer Science
Hardware Scaling Trends and Diminishing Returns in Large-Scale Distributed Training
Jared Fernandez, Luca Wehrstedt, Leonid Shamis, Mostafa Elhoushi +4
2025-04-15
Machine Learning · Computer Science
Parallel training of linear models without compromising convergence
Nikolas Ioannou, Celestine Dünner, Kornilios Kourtis, Thomas Parnell
2018-12-20
Machine Learning · Computer Science
Optimizing Multi-GPU Parallelization Strategies for Deep Learning Training
Saptadeep Pal, Eiman Ebrahimi, Arslan Zulfiqar, Yaosheng Fu +4
2022-11-08
Machine Learning · Computer Science
A Transferable Approach for Partitioning Machine Learning Models on Multi-Chip-Modules
Xinfeng Xie, Prakash Prabhu, Ulysse Beaugnon, Phitchaya Mangpo Phothilimthana +5
2021-12-09
Hardware Architecture · Computer Science
Failure Tolerant Training with Persistent Memory Disaggregation over CXL
Miryeong Kwon, Junhyeok Jang, Hanjin Choi, Sangwon Lee +1
2023-01-23
Machine Learning · Computer Science
Training Data Efficiency in Multimodal Process Reward Models
Jinyuan Li, Chengsong Huang, Langlin Huang, Shaoyang Xu +3
2026-02-06
Distributed, Parallel, and Cluster Computing · Computer Science
DHP: Efficient Scaling of MLLM Training with Dynamic Hybrid Parallelism
Yifan Niu, Han Xiao, Dongyi Liu, Wei Zhou +1
2026-02-26
Distributed, Parallel, and Cluster Computing · Computer Science
Characterizing the Efficiency of Distributed Training: A Power, Performance, and Thermal Perspective
Seokjin Go, Joongun Park, Spandan More, Hanjiang Wu +4
2025-09-22
Distributed, Parallel, and Cluster Computing · Computer Science
HetRL: Efficient Reinforcement Learning for LLMs in Heterogeneous Environments
Yongjun He, Shuai Zhang, Jiading Gai, Xiyuan Zhang +4
2026-04-14
Distributed, Parallel, and Cluster Computing · Computer Science
Scaling Distributed Machine Learning with In-Network Aggregation
Amedeo Sapio, Marco Canini, Chen-Yu Ho, Jacob Nelson +6
2020-10-01
Networking and Internet Architecture · Computer Science
Rail-only: A Low-Cost High-Performance Network for Training LLMs with Trillion Parameters
Weiyang Wang, Manya Ghobadi, Kayvon Shakeri, Ying Zhang +1
2024-09-17
Distributed, Parallel, and Cluster Computing · Computer Science
Boosting Distributed Machine Learning Training Through Loss-tolerant Transmission Protocol
Zixuan Chen, Lei Shi, Xuandong Liu, Xin Ai +2
2023-08-15
Machine Learning · Computer Science
PMRT: A Training Recipe for Fast, 3D High-Resolution Aerodynamic Prediction
Sam Jacob Jacob, Markus Mrosek, Carsten Othmer, Harald Köstler
2025-09-23
Distributed, Parallel, and Cluster Computing · Computer Science
Fault-tolerant parallel scheduling of arbitrary length jobs on a shared channel
Marek Klonowski, Dariusz R. Kowalski, Jarosław Mirek, Prudence W. H. Wong
2018-07-26
Distributed, Parallel, and Cluster Computing · Computer Science
Optimizing Network Performance for Distributed DNN Training on GPU Clusters: ImageNet/AlexNet Training in 1.5 Minutes
Peng Sun, Wansen Feng, Ruobing Han, Shengen Yan +1
2019-10-23
Distributed, Parallel, and Cluster Computing · Computer Science
Memory and Bandwidth are All You Need for Fully Sharded Data Parallel
Jiangtao Wang, Jan Ebert, Oleg Filatov, Stefan Kesselheim
2025-04-08
Distributed, Parallel, and Cluster Computing · Computer Science
Scaling Studies for Efficient Parameter Search and Parallelism for Large Language Model Pre-training
Michael Benington, Leo Phan, Chris Pierre Paul, Evan Shoemaker +4
2023-10-12