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arxiv: 2402.02018 · v3 · pith:VYABQQQVnew · submitted 2024-02-03 · 💻 cs.LG

The Landscape and Challenges of HPC Research and LLMs

classification 💻 cs.LG
keywords languagemodelstaskscomputinghigh-performancellmsresearchtechniques
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Recently, language models (LMs), especially large language models (LLMs), have revolutionized the field of deep learning. Both encoder-decoder models and prompt-based techniques have shown immense potential for natural language processing and code-based tasks. Over the past several years, many research labs and institutions have invested heavily in high-performance computing, approaching or breaching exascale performance levels. In this paper, we posit that adapting and utilizing such language model-based techniques for tasks in high-performance computing (HPC) would be very beneficial. This study presents our reasoning behind the aforementioned position and highlights how existing ideas can be improved and adapted for HPC tasks.

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