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On-the-Fly Syntax Highlighting: Generalisation and Speed-ups (2402.08754v1)

Published 13 Feb 2024 in cs.SE

Abstract: On-the-fly syntax highlighting is the task of rapidly associating visual secondary notation values with each character of a language derivation. Research in this domain is driven by the prevalence of online software development tools, which frequently display source code on screen and heavily rely on syntax highlighting mechanisms. In this context, three contrasting demands confront resolvers in this space: speed, accuracy, and development costs. Speed constraints are essential to ensure tool usability, manifesting as responsiveness for end users accessing online source code and minimising system overhead. Simultaneously, achieving precise highlighting is critical for enhancing code comprehensibility. Nevertheless, obtaining accurate results necessitates the capacity to perform grammatical analysis on the code under consideration, even in cases of varying grammatical correctness. Furthermore, addressing the development costs of such resolvers is imperative, given the multitude of programming language versions. The current state-of-the-art approach in this field leverages the original lexer and parser of programming languages to create syntax highlighting oracles, subsequently used for training base Recurrent Neural Network models. As the question of the generalisation of such a solution persists, this paper addresses this aspect by extending the original work to three additional mainstream programming languages and conducting a comprehensive review of the outcomes. Moreover, the original limitations in evaluation performance and training costs are mitigated through the introduction of a novel Convolutional based Neural Network model. This study examines the performance gains of running models on GPUs, finding that the new CNN implementation is much faster than previous methods while maintaining high accuracy.

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