Example Output: Finance Strategy Agent System Blueprint
Inputs used
- Project context: a burn multiple and runway analysis for a Series B AI company
- Target audience: FP&A teams, founders, investors, strategy leads
- Success metric: activation, quality, and risk reduction
- Available tools and data: spreadsheet model, accounting export, CRM forecast, BI dashboard
- Desired depth: Production-ready
- Output tone: Clear operator memo
Generated Result
agent architecture, tool contract, memory policy, eval plan, and launch guardrails
Use case framing
The immediate decision is whether a burn multiple and runway analysis for a Series B AI company is mature enough for a controlled pilot. The strongest evidence should come from P&L exports and headcount plan; if either source is missing, mark the recommendation as provisional rather than filling the gap with assumptions.
Agent responsibilities
The AI system may draft driver model narrative, scenario table, and board-ready recommendation, summarize headcount plan, and propose next actions. It must not make irreversible changes, approve high-impact decisions, or treat unverified assumptions as facts.
Tools and permissions
Use CRM forecast as the primary working surface. Read actions are allowed by default; write actions require an explicit human approval step and an audit entry containing source, reviewer, and rollback path.
Memory and context
Persist only durable preferences, approved terminology, and stable project constraints. Do not store private user data, transient metrics, or unresolved claims from board questions.
Evals and guardrails
Create at least 12 golden tasks: 6 normal cases, 3 edge cases, and 3 adversarial cases targeting false precision. A passing result must cite the evidence source and state confidence.
Rollout plan
Release in three gates: internal dry run, limited pilot, then measured expansion. Each gate must show evidence that show sensitivity ranges is true in practice, not only in documentation.
Recommended Decision
Proceed with a narrow pilot focused on P&L exports and headcount plan. Treat false precision as the primary launch blocker. The first milestone should prove that the workflow produces a usable driver model narrative, scenario table, and board-ready recommendation with clear evidence, named owners, and a review path for ambiguous cases.
Expected quality checks
- The result is specific to AI-assisted financial planning, scenario analysis, investor memos, and board reporting.
- It includes the required sections: Use case framing, Agent responsibilities, Tools and permissions, Memory and context, Evals and guardrails, Rollout plan.
- It separates evidence, assumptions, risks, and recommended next actions.
- It includes practical verification steps, not only generic advice.
- It names the most important failure mode for this domain: false precision.
Reuse note
Before copying the output into production work, replace all default variables with your real data and run a human review for high-impact decisions.