LLMs Cannot Handle Complex Office Docs for Deep Research
LLMs struggle with complex office documents (pptx, docx, excel, eml) for deep cross-team research. Need agent-native knowledge bases for real enterprise use.
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Problem descriptions, scores, analysis, and solution blueprints may be updated as new community data becomes available.