The paper presents an adaptive automaton for grammar-based text compression that identifies recurring substrings to enhance data storage efficiency. This adaptive rule-driven device learns and modifies its operations in real-time, which aids in compressing sequences such as genomic data and version-controlled text. Various algorithms related to grammar-based compression techniques, alongside applications and challenges in optimizing data representation, are also discussed.
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