English

Opara: Exploiting Operator Parallelism for Expediting DNN Inference on GPUs

Distributed, Parallel, and Cluster Computing 2024-05-31 v2 Artificial Intelligence

Abstract

GPUs have become the \emph{defacto} hardware devices for accelerating Deep Neural Network (DNN) inference workloads. However, the conventional \emph{sequential execution mode of DNN operators} in mainstream deep learning frameworks cannot fully utilize GPU resources, even with the operator fusion enabled, due to the increasing complexity of model structures and a greater diversity of operators. Moreover, the \emph{inadequate operator launch order} in parallelized execution scenarios can lead to GPU resource wastage and unexpected performance interference among operators. In this paper, we propose \emph{Opara}, a resource- and interference-aware DNN \underline{Op}erator \underline{para}llel scheduling framework to accelerate DNN inference on GPUs. Specifically, \emph{Opara} first employs \texttt{CUDA Streams} and \texttt{CUDA Graph} to \emph{parallelize} the execution of multiple operators automatically. To further expedite DNN inference, \emph{Opara} leverages the resource demands of operators to judiciously adjust the operator launch order on GPUs, overlapping the execution of compute-intensive and memory-intensive operators. We implement and open source a prototype of \emph{Opara} based on PyTorch in a \emph{non-intrusive} manner. Extensive prototype experiments with representative DNN and Transformer-based models demonstrate that \emph{Opara} outperforms the default sequential \texttt{CUDA Graph} in PyTorch and the state-of-the-art operator parallelism systems by up to 1.68×1.68\times and 1.29×1.29\times, respectively, yet with acceptable runtime overhead.

Keywords

Cite

@article{arxiv.2312.10351,
  title  = {Opara: Exploiting Operator Parallelism for Expediting DNN Inference on GPUs},
  author = {Aodong Chen and Fei Xu and Li Han and Yuan Dong and Li Chen and Zhi Zhou and Fangming Liu},
  journal= {arXiv preprint arXiv:2312.10351},
  year   = {2024}
}

Comments

9 pages,10 figures

R2 v1 2026-06-28T13:53:22.161Z