Ajou University repository

Dynamic Gradient Sparsification Exploiting Aggregated Gradients for Scalable Distributed Deep Learning
  • 윤대건
Citations

SCOPUS

0

Citation Export

Advisor
Sangyoon Oh
Affiliation
아주대학교 대학원
Department
일반대학원 인공지능학과
Publication Year
2024-02
Publisher
The Graduate School, Ajou University
Keyword
distributed deep learninggradient sparsificationscalability
Description
학위논문(박사)--인공지능학과,2024. 2
Abstract
Communication overhead is a major obstacle to scaling distributed training systems. Gradient sparsification is a potential optimization approach to reduce the communication volume without significant loss of model fidelity. However, existing gradient sparsification methods have low scalability owing to inefficient design of their algorithms, which raises the communication overhead significantly. In particular, gradient build-up and inadequate sparsity control methods degrade the sparsification performance considerably. Moreover, communication traffic increases drastically owing to workload imbalance of gradient selection between workers._x000D_ <br>_x000D_ <br>In this paper, we propose ExDyna to address above challenges. In ExDyna, the gradient tensor of the model comprises fined-grained blocks, and contiguous blocks are grouped into non-overlapping partitions. Each worker selects gradients in its exclusively allocated partition so that gradient build-up never occurs. To balance the workload of gradient selection between workers, ExDyna adjusts the topology of partitions by comparing the workloads of adjacent partitions. In addition, ExDyna supports online threshold scaling, which estimates the accurate threshold of gradient selection on-the-fly. Accordingly, ExDyna can satisfy the user-required sparsity level during a training period regardless of models and datasets. Therefore, ExDyna can enhance the scalability of distributed training systems by preserving near-optimal gradient sparsification cost. In experiments, ExDyna outperformed state-of-the-art sparsifiers in terms of training speed and sparsification performance while achieving high accuracy.
Language
eng
URI
https://aurora.ajou.ac.kr/handle/2018.oak/39216
Journal URL
https://dcoll.ajou.ac.kr/dcollection/common/orgView/000000033298
Show full item record

Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.

Total Views & Downloads

File Download

  • There are no files associated with this item.