On the Anatomy of Predictive Models for Accelerating GPU Convolution Kernels and Beyond

Author:

Labini Paolo Sylos1,Cianfriglia Marco2,Perri Damiano3,Gervasi Osvaldo3,Fursin Grigori4,Lokhmotov Anton5,Nugteren Cedric6,Carpentieri Bruno7,Zollo Fabiana8,Vella Flavio1ORCID

Affiliation:

1. Free University of Bozen-Bolzano, Bozen-Bolzano, Italy

2. National Research Council of Italy, Italy

3. University of Perugia, Italy

4. ctuning Foundation, France

5. Dividiti, United Kingdom

6. TomTom, Netherlands

7. Free University of Bozen-Bolzano,Bozen-Bolzano, Italy

8. Ca’ Foscari University of Venice, Italy

Abstract

Efficient HPC libraries often expose multiple tunable parameters, algorithmic implementations, or a combination of them, to provide optimized routines. The optimal parameters and algorithmic choices may depend on input properties such as the shapes of the matrices involved in the operation. Traditionally, these parameters are manually tuned or set by auto-tuners. In emerging applications such as deep learning, this approach is not effective across the wide range of inputs and architectures used in practice. In this work, we analyze different machine learning techniques and predictive models to accelerate the convolution operator and GEMM. Moreover, we address the problem of dataset generation, and we study the performance, accuracy, and generalization ability of the models. Our insights allow us to improve the performance of computationally expensive deep learning primitives on high-end GPUs as well as low-power embedded GPU architectures on three different libraries. Experimental results show significant improvement in the target applications from 50% up to 300% compared to auto-tuned and high-optimized vendor-based heuristics by using simple decision tree- and MLP-based models.

Funder

UNIBZ RTD call 2018

Publisher

Association for Computing Machinery (ACM)

Subject

Hardware and Architecture,Information Systems,Software

Reference77 articles.

1. OpenTuner

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3. ARM. 2018. A Software Library for Computer Vision and Machine Learning. Retrieved from https://www.arm.com/why-arm/technologies/compute-library. ARM. 2018. A Software Library for Computer Vision and Machine Learning. Retrieved from https://www.arm.com/why-arm/technologies/compute-library.

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