francesco-s/document-claim-mapping
A tool using LLMs and few-shot learning for document-claim mapping and evaluation. It extracts, ranks, and assesses relevant text from documents supporting or refuting claims. Ideal for fact-checking, legal, and financial analysis, it combines prompt-based NLP with customizable ranking and evaluation modules for accurate, context-aware retrieval.
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Python
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Mar 19, 2025
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