DCAILGPFMay 16, 2023

Advising OpenMP Parallelization via a Graph-Based Approach with Transformers

arXiv:2305.11999v126 citationsHas Code
Originality Incremental advance
AI Analysis

This addresses the effort-intensive task of manual parallel programming for developers working with multi-core systems, though it appears incremental as it builds on existing AI/NLP techniques for code analysis.

The paper tackles the problem of automatically parallelizing serial code for multi-core architectures by proposing OMPify, a Transformer-based model that predicts OpenMP pragmas from serial code using graph-based representations. The approach achieves up to 90% accuracy on standard benchmarks like NAS, SPEC, and PolyBench, outperforming existing methods including ChatGPT and PragFormer.

There is an ever-present need for shared memory parallelization schemes to exploit the full potential of multi-core architectures. The most common parallelization API addressing this need today is OpenMP. Nevertheless, writing parallel code manually is complex and effort-intensive. Thus, many deterministic source-to-source (S2S) compilers have emerged, intending to automate the process of translating serial to parallel code. However, recent studies have shown that these compilers are impractical in many scenarios. In this work, we combine the latest advancements in the field of AI and natural language processing (NLP) with the vast amount of open-source code to address the problem of automatic parallelization. Specifically, we propose a novel approach, called OMPify, to detect and predict the OpenMP pragmas and shared-memory attributes in parallel code, given its serial version. OMPify is based on a Transformer-based model that leverages a graph-based representation of source code that exploits the inherent structure of code. We evaluated our tool by predicting the parallelization pragmas and attributes of a large corpus of (over 54,000) snippets of serial code written in C and C++ languages (Open-OMP-Plus). Our results demonstrate that OMPify outperforms existing approaches, the general-purposed and popular ChatGPT and targeted PragFormer models, in terms of F1 score and accuracy. Specifically, OMPify achieves up to 90% accuracy on commonly-used OpenMP benchmark tests such as NAS, SPEC, and PolyBench. Additionally, we performed an ablation study to assess the impact of different model components and present interesting insights derived from the study. Lastly, we also explored the potential of using data augmentation and curriculum learning techniques to improve the model's robustness and generalization capabilities.

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