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Investment funds rely on manual processes and siloed data managed by fund admins. Hanover builds a central ERP to ingest all data (decks, emails, accounting). This allows partners to make critical decisions by directly querying their portfolio data via an LLM, bypassing slow, human-in-the-loop email requests to an admin.

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Hanover's AI Replaces Fund Admin "Human Duct Tape" by Unifying Data for Real-Time LLM Queries | RiffOn