Generative AI for the CFO office — grounded in your chart of accounts, accounting policies, variance history, and the financial context that generic AI doesn't have. RAG agents for FP&A commentary drafting, accounting policy questions, and the audit preparation that consumes weeks of controller time.
RAG agents grounded in variance data, known items, and historical commentary — drafting the monthly variance explanations, board pack narratives, and the qualitative commentary that FP&A assembles every close. With cited data sources so the analyst can verify before submission.
Agent grounded in the company's accounting policy manual, ASC/IFRS standards, and historical audit positions — answering accounting research questions with cited sources. For the questions accountants ask during close that today require digging through the policy manual.
Agents that help assemble PBC (Prepared by Client) items for external audit — identifying the relevant support, locating prior-year workpapers, and drafting the response narratives that auditors request.
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It can draft the first version — grounded in actual variance data, known items, and historical patterns. The FP&A analyst reviews, edits, and takes ownership. The AI saves 3-5 hours per close of commentary writing; the analyst's judgment on what to emphasize and how to frame it remains essential.
Through grounded retrieval against actual financial data (not training data), cited sources on every statement, and explicit refusal when the data doesn't explain the variance. The agent says 'revenue missed by $2M; the known items account for $1.5M; $500K is unexplained' rather than inventing an explanation.
Yes. Pre-qualified AI engineers with corporate finance domain experience — FP&A workflow, accounting policy, financial data grounding, and the accuracy discipline finance AI requires. 4-stage consulting-led matching, 92% first-match acceptance.
FP&A commentary, accounting policy, audit prep — generative AI grounded in your company's actual financial context.
Tell us what you need. We will send curated profiles within 4 days.