Nimble: Lightweight and Parallel GPU Task Scheduling for Deep Learning
December 04, 2020 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Woosuk Kwon, Gyeong-In Yu, Eunji Jeong, Byung-Gon Chun
arXiv ID
2012.02732
Category
cs.LG: Machine Learning
Cross-listed
cs.DC
Citations
83
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
Deep learning (DL) frameworks take advantage of GPUs to improve the speed of DL inference and training. Ideally, DL frameworks should be able to fully utilize the computation power of GPUs such that the running time depends on the amount of computation assigned to GPUs. Yet, we observe that in scheduling GPU tasks, existing DL frameworks suffer from inefficiencies such as large scheduling overhead and unnecessary serial execution. To this end, we propose Nimble, a DL execution engine that runs GPU tasks in parallel with minimal scheduling overhead. Nimble introduces a novel technique called ahead-of-time (AoT) scheduling. Here, the scheduling procedure finishes before executing the GPU kernel, thereby removing most of the scheduling overhead during run time. Furthermore, Nimble automatically parallelizes the execution of GPU tasks by exploiting multiple GPU streams in a single GPU. Evaluation on a variety of neural networks shows that compared to PyTorch, Nimble speeds up inference and training by up to 22.34$\times$ and 3.61$\times$, respectively. Moreover, Nimble outperforms state-of-the-art inference systems, TensorRT and TVM, by up to 2.81$\times$ and 1.70$\times$, respectively.
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