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Characterization of Large Language Model Development in the Datacenter

Authors :
Hu, Qinghao
Ye, Zhisheng
Wang, Zerui
Wang, Guoteng
Zhang, Meng
Chen, Qiaoling
Sun, Peng
Lin, Dahua
Wang, Xiaolin
Luo, Yingwei
Wen, Yonggang
Zhang, Tianwei
Publication Year :
2024

Abstract

Large Language Models (LLMs) have presented impressive performance across several transformative tasks. However, it is non-trivial to efficiently utilize large-scale cluster resources to develop LLMs, often riddled with numerous challenges such as frequent hardware failures, intricate parallelization strategies, and imbalanced resource utilization. In this paper, we present an in-depth characterization study of a six-month LLM development workload trace collected from our GPU datacenter Acme. Specifically, we investigate discrepancies between LLMs and prior task-specific Deep Learning (DL) workloads, explore resource utilization patterns, and identify the impact of various job failures. Our analysis summarizes hurdles we encountered and uncovers potential opportunities to optimize systems tailored for LLMs. Furthermore, we introduce our system efforts: (1) fault-tolerant pretraining, which enhances fault tolerance through LLM-involved failure diagnosis and automatic recovery. (2) decoupled scheduling for evaluation, which achieves timely performance feedback via trial decomposition and scheduling optimization.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2403.07648
Document Type :
Working Paper