Large Language Models (LLMs) are revolutionizing the AI industry with their superior capabilities. Training these models requires large-scale GPU clusters and significant computing time, leading to frequent failures that significantly increase training costs. Despite its significance, this field lacks a metric for evaluating reliability. In this work, we introduce a novel reliability metric called \emph{Training Overhead Ratio} (TOR) to evaluate the reliability of fault-tolerant LLM training systems. TOR is defined as the ratio of optimal training time to the observed training time of a system, serving as a practical tool for users to estimate the actual time required to train an LLM on a given system. Furthermore, our investigation identifies the key factor for enhancing reliability and present TOR equations for various types of failures encountered in practice.
@article{arxiv.2408.07482,
title = {Training Overhead Ratio: A Practical Reliability Metric for Large Language Model Training Systems},
author = {Ning Lu and Qian Xie and Hao Zhang and Wenyi Fang and Yang Zheng and Zheng Hu and Jiantao Ma},
journal= {arXiv preprint arXiv:2408.07482},
year = {2024}
}
Comments
To be published in: IEEE International Symposium on Software Reliability Engineering (ISSRE2024) workshop