Ouroboros: On Accelerating Training of Transformer-Based Language Models (1909.06695v1)
Abstract: LLMs are essential for NLP tasks, such as machine translation and text summarization. Remarkable performance has been demonstrated recently across many NLP domains via a Transformer-based LLM with over a billion parameters, verifying the benefits of model size. Model parallelism is required if a model is too large to fit in a single computing device. Current methods for model parallelism either suffer from backward locking in backpropagation or are not applicable to LLMs. We propose the first model-parallel algorithm that speeds the training of Transformer-based LLMs. We also prove that our proposed algorithm is guaranteed to converge to critical points for non-convex problems. Extensive experiments on Transformer and Transformer-XL LLMs demonstrate that the proposed algorithm obtains a much faster speedup beyond data parallelism, with comparable or better accuracy. Code to reproduce experiments is to be found at \url{https://github.com/LaraQianYang/Ouroboros}.
- Qian Yang (146 papers)
- Zhouyuan Huo (29 papers)
- Wenlin Wang (27 papers)
- Heng Huang (189 papers)
- Lawrence Carin (203 papers)