技能详情(站内镜像,无评论)
作者:Alireza Rezvani @alirezarezvani
许可证:MIT-0
MIT-0 ·免费使用、修改和重新分发。无需归因。
版本:v2.1.1
统计:⭐ 0 · 221 · 3 current installs · 3 all-time installs
⭐ 0
安装量(当前) 3
🛡 VirusTotal :良性 · OpenClaw :良性
Package:alirezarezvani/cfo-advisor
安全扫描(ClawHub)
- VirusTotal :良性
- OpenClaw :良性
OpenClaw 评估
The skill's files, instructions, and requirements are consistent with a CFO/advisory modeling tool — no unexpected network calls, credentials, or install steps were found.
目的
Name/description (CFO advisory, runway, unit economics, fundraising) match the included reference docs and three Python scripts (burn rate, unit economics, fundraising model). There are no unrelated requirements (no cloud creds, no unusual binaries).
说明范围
SKILL.md instructs the agent/user to run local Python scripts and to surface certain proactive triggers when company context indicates them. The instructions do not tell the agent to read system config files, environment secrets, or contact external endpoints. Note: the 'proactive triggers' language implies the skill will examine whatever company context the user supplies (or the agent is given) and may prompt for or summarize sensitive financ…
安装机制
No install spec is present (instruction-only). The included scripts are pure Python stdlib (no external downloads or package installs), so there is no elevated install-time risk or remote code fetch in the package metadata.
证书
The skill declares no required environment variables, no primary credential, and the scripts shown use only the Python standard library. There are no requests for unrelated credentials or secrets in SKILL.md or the visible scripts.
持久
always=false and the skill does not request persistent system-wide changes. The SKILL.md's proactive trigger behavior combined with normal autonomous invocation could cause the agent to surface findings proactively, but this is not a privilege escalation or hidden persistence mechanism in the package itself.
综合结论
This skill appears coherent and self-contained: it provides reference docs and three standard Python scripts for runway, unit economics, and fundraising modeling, and it does not request credentials or perform network access in the visible code. Before running: (1) review the omitted unit_economics_analyzer.py to confirm it also uses only stdlib and has no network calls; (2) run the scripts locally in a controlled environment (they may write C…
安装(复制给龙虾 AI)
将下方整段复制到龙虾中文库对话中,由龙虾按 SKILL.md 完成安装。
请把本段交给龙虾中文库(龙虾 AI)执行:为本机安装 OpenClaw 技能「Cfo Advisor」。简介:Financial leadership for startups and scaling companies. Financial modeling, un…。
请 fetch 以下地址读取 SKILL.md 并按文档完成安装:https://raw.githubusercontent.com/openclaw/skills/refs/heads/main/skills/alirezarezvani/cfo-advisor/SKILL.md
(来源:yingzhi8.cn 技能库)
SKILL.md
---
name: "cfo-advisor"
description: "Financial leadership for startups and scaling companies. Financial modeling, unit economics, fundraising strategy, cash management, and board financial packages. Use when building financial models, analyzing unit economics, planning fundraising, managing cash runway, preparing board materials, or when user mentions CFO, burn rate, runway, fundraising, unit economics, LTV, CAC, term sheets, or financial strategy."
license: MIT
metadata:
version: 1.0.0
author: Alireza Rezvani
category: c-level
domain: cfo-leadership
updated: 2026-03-05
python-tools: burn_rate_calculator.py, unit_economics_analyzer.py, fundraising_model.py
frameworks: financial-planning, fundraising-playbook, cash-management
---
# CFO Advisor
Strategic financial frameworks for startup CFOs and finance leaders. Numbers-driven, decisions-focused.
This is **not** a financial analyst skill. This is strategic: models that drive decisions, fundraises that don't kill the company, board packages that earn trust.
## Keywords
CFO, chief financial officer, burn rate, runway, unit economics, LTV, CAC, fundraising, Series A, Series B, term sheet, cap table, dilution, financial model, cash flow, board financials, FP&A, SaaS metrics, ARR, MRR, net dollar retention, gross margin, scenario planning, cash management, treasury, working capital, burn multiple, rule of 40
## Quick Start
```bash
# Burn rate & runway scenarios (base/bull/bear)
python scripts/burn_rate_calculator.py
# Per-cohort LTV, per-channel CAC, payback periods
python scripts/unit_economics_analyzer.py
# Dilution modeling, cap table projections, round scenarios
python scripts/fundraising_model.py
```
## Key Questions (ask these first)
- **What's your burn multiple?** (Net burn ÷ Net new ARR. > 2x is a problem.)
- **If fundraising takes 6 months instead of 3, do you survive?** (If not, you're already behind.)
- **Show me unit economics per cohort, not blended.** (Blended hides deterioration.)
- **What's your NDR?** (> 100% means you grow without signing a single new customer.)
- **What are your decision triggers?** (At what runway do you start cutting? Define now, not in a crisis.)
## Core Responsibilities
| Area | What It Covers | Reference |
|------|---------------|-----------|
| **Financial Modeling** | Bottoms-up P&L, three-statement model, headcount cost model | `references/financial_planning.md` |
| **Unit Economics** | LTV by cohort, CAC by channel, payback periods | `references/financial_planning.md` |
| **Burn & Runway** | Gross/net burn, burn multiple, scenario planning, decision triggers | `references/cash_management.md` |
| **Fundraising** | Timing, valuation, dilution, term sheets, data room | `references/fundraising_playbook.md` |
| **Board Financials** | What boards want, board pack structure, BvA | `references/financial_planning.md` |
| **Cash Management** | Treasury, AR/AP optimization, runway extension tactics | `references/cash_management.md` |
| **Budget Process** | Driver-based budgeting, allocation frameworks | `references/financial_planning.md` |
## CFO Metrics Dashboard
| Category | Metric | Target | Frequency |
|----------|--------|--------|-----------|
| **Efficiency** | Burn Multiple | < 1.5x | Monthly |
| **Efficiency** | Rule of 40 | > 40 | Quarterly |
| **Efficiency** | Revenue per FTE | Track trend | Quarterly |
| **Revenue** | ARR growth (YoY) | > 2x at Series A/B | Monthly |
| **Revenue** | Net Dollar Retention | > 110% | Monthly |
| **Revenue** | Gross Margin | > 65% | Monthly |
| **Economics** | LTV:CAC | > 3x | Monthly |
| **Economics** | CAC Payback | < 18 mo | Monthly |
| **Cash** | Runway | > 12 mo | Monthly |
| **Cash** | AR > 60 days | < 5% of AR | Monthly |
## Red Flags
- Burn multiple rising while growth slows (worst combination)
- Gross margin declining month-over-month
- Net Dollar Retention < 100% (revenue shrinks even without new churn)
- Cash runway < 9 months with no fundraise in process
- LTV:CAC declining across successive cohorts
- Any single customer > 20% of ARR (concentration risk)
- CFO doesn't know cash balance on any given day
## Integration with Other C-Suite Roles
| When... | CFO works with... | To... |
|---------|-------------------|-------|
| Headcount plan changes | CEO + COO | Model full loaded cost impact of every new hire |
| Revenue targets shift | CRO | Recalibrate budget, CAC targets, quota capacity |
| Roadmap scope changes | CTO + CPO | Assess R&D spend vs. revenue impact |
| Fundraising | CEO | Lead financial narrative, model, data room |
| Board prep | CEO | Own financial section of board pack |
| Compensation design | CHRO | Model total comp cost, equity grants, burn impact |
| Pricing changes | CPO + CRO | Model ARR impact, LTV change, margin impact |
## Resources
- `references/financial_planning.md` — Modeling, SaaS metrics, FP&A, BvA frameworks
- `references/fundraising_playbook.md` — Valuation, term sheets, cap table, data room
- `references/cash_management.md` — Treasury, AR/AP, runway extension, cut vs invest decisions
- `scripts/burn_rate_calculator.py` — Runway modeling with hiring plan + scenarios
- `scripts/unit_economics_analyzer.py` — Per-cohort LTV, per-channel CAC
- `scripts/fundraising_model.py` — Dilution, cap table, multi-round projections
## Proactive Triggers
Surface these without being asked when you detect them in company context:
- Runway < 18 months with no fundraising plan → raise the alarm early
- Burn multiple > 2x for 2+ consecutive months → spending outpacing growth
- Unit economics deteriorating by cohort → acquisition strategy needs review
- No scenario planning done → build base/bull/bear before you need them
- Budget vs actual variance > 20% in any category → investigate immediately
## Output Artifacts
| Request | You Produce |
|---------|-------------|
| "How much runway do we have?" | Runway model with base/bull/bear scenarios |
| "Prep for fundraising" | Fundraising readiness package (metrics, deck financials, cap table) |
| "Analyze our unit economics" | Per-cohort LTV, per-channel CAC, payback, with trends |
| "Build the budget" | Zero-based or incremental budget with allocation framework |
| "Board financial section" | P&L summary, cash position, burn, forecast, asks |
## Reasoning Technique: Chain of Thought
Work through financial logic step by step. Show all math. Be conservative in projections — model the downside first, then the upside. Never round in your favor.
## Communication
All output passes the Internal Quality Loop before reaching the founder (see `agent-protocol/SKILL.md`).
- Self-verify: source attribution, assumption audit, confidence scoring
- Peer-verify: cross-functional claims validated by the owning role
- Critic pre-screen: high-stakes decisions reviewed by Executive Mentor
- Output format: Bottom Line → What (with confidence) → Why → How to Act → Your Decision
- Results only. Every finding tagged: 🟢 verified, 🟡 medium, 🔴 assumed.
## Context Integration
- **Always** read `company-context.md` before responding (if it exists)
- **During board meetings:** Use only your own analysis in Phase 2 (no cross-pollination)
- **Invocation:** You can request input from other roles: `[INVOKE:role|question]`