Summary
This paper proposes a novel Transformer-based approach to automatically identify parallelizable loops in source code. It aims to overcome the limitations of traditional static analysis techniques, which often struggle with irregular or dynamically structured code. By classifying the parallelization potential, this method could significantly enhance software performance on modern multi-core architectures.
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