OpenMP并行环路的源到源自动分化

J. Hückelheim, L. Hascoët
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引用次数: 2

摘要

本文介绍了我们在正向和反向模式下对OpenMP并行工作共享循环进行正确和有效的自动区分的工作。自动微分是一种求数值程序梯度的方法,在优化、不确定性量化和机器学习等领域具有重要意义。计算梯度的计算成本是实际应用中常见的瓶颈。对于使用OpenMP为多核cpu或gpu并行化的应用程序,也希望并行计算梯度。我们提出了一个框架来推断生成的衍生代码的正确性,并以此证明我们的OpenMP扩展到分化模型是正确的。我们在自动区分工具Tapenade中实现这个模型,并根据我们扩展的区分过程给出区分的测试用例。在正向和反向模式下生成的导数程序的性能优于顺序,尽管我们的反向模式通常比输入程序更差。
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Source-to-Source Automatic Differentiation of OpenMP Parallel Loops
This article presents our work toward correct and efficient automatic differentiation of OpenMP parallel worksharing loops in forward and reverse mode. Automatic differentiation is a method to obtain gradients of numerical programs, which are crucial in optimization, uncertainty quantification, and machine learning. The computational cost to compute gradients is a common bottleneck in practice. For applications that are parallelized for multicore CPUs or GPUs using OpenMP, one also wishes to compute the gradients in parallel. We propose a framework to reason about the correctness of the generated derivative code, from which we justify our OpenMP extension to the differentiation model. We implement this model in the automatic differentiation tool Tapenade and present test cases that are differentiated following our extended differentiation procedure. Performance of the generated derivative programs in forward and reverse mode is better than sequential, although our reverse mode often scales worse than the input programs.
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