A7medElsharkawy/DocQA
This project leverages LayoutLMv2, a state-of-the-art model for document understanding, fine-tuned specifically for Document Question Answering (DQA) tasks. LayoutLMv2 is designed to effectively combine text, layout, and image information from document data, enabling advanced understanding and contextualization of structured documents
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Last pushed
Feb 07, 2026
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