Translations:FACTS About Building Retrieval Augmented Generation-based Chatbots/31/en: Difference between revisions

    From Marovi AI
    (Importing a new version from external source)
     
    (No difference)

    Latest revision as of 09:55, 17 February 2025

    Information about message (contribute)
    This message has no documentation. If you know where or how this message is used, you can help other translators by adding documentation to this message.
    Message definition (FACTS About Building Retrieval Augmented Generation-based Chatbots)
    '''Handling multi-modal data''': Enterprise data is multi-modal. Handling structured, unstructured, and multi-modal data is crucial for a versatile RAG pipeline. From our experience, if the structure of the document is consistent and known apriori (like those found in EDGAR databases for SEC filings data in financial earnings domain that Scout bot was handling), implementing section-level splitting, using the section titles and subheadings and incorporating those in the context of chunks improves retrieval relevancy. We also found solutions like Unstructured.io, which specialize in extracting and structuring content from PDFs, helpful in parsing and chunking unstructured documents with context.

    Handling multi-modal data: Enterprise data is multi-modal. Handling structured, unstructured, and multi-modal data is crucial for a versatile RAG pipeline. From our experience, if the structure of the document is consistent and known apriori (like those found in EDGAR databases for SEC filings data in financial earnings domain that Scout bot was handling), implementing section-level splitting, using the section titles and subheadings and incorporating those in the context of chunks improves retrieval relevancy. We also found solutions like Unstructured.io, which specialize in extracting and structuring content from PDFs, helpful in parsing and chunking unstructured documents with context.