Low-Overhead Trace Collection and Profiling on GPU Compute Kernels

Author:

Darche Sébastien1ORCID,Dagenais Michel R.1ORCID

Affiliation:

1. Polytechnique Montréal, Montréal, Canada

Abstract

While GPUs can bring substantial speedup to compute-intensive tasks, their programming is notoriously hard. From their programming model, to microarchitectural particularities, the programmer may encounter many pitfalls which may hinder performance in obscure ways. Numerous performance analysis tools provide helpful data on the efficiency of the compute kernels, but few allow the programmer to efficiently gather runtime information directly on the device and pinpoint the sections to optimize. We propose in this article an instrumentation method to collect traces while executing the compute kernel, with a reduced overhead compared with other approaches, by exploiting the inherently parallel behavior of GPUs and compartmentalizing tracing phases. The reference implementation is freely available and induces an average overhead of 1.6 × on a popular scientific computing benchmark and 1.5 × over the kernel execution time. This represents an improvement of an order of magnitude compared with similar work, and proves useful for timing-guided optimizations. The tool generates insightful execution traces and timestamps which can be analyzed to better understand performance issues in the kernel.

Publisher

Association for Computing Machinery (ACM)

Reference40 articles.

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