Efficient Semantic Analysis for Text Editors
نویسنده
چکیده
Meddle is a programmer’s text editor designed to provide as-you-type semantic information to the user. This is accomplished by using algorithms for tracking changes to the editor’s text buffer, incremental scanning and incremental parsing. These algorithms are presented and ex-
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