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:v1.0.0
统计:⭐ 0 · 161 · 1 current installs · 1 all-time installs
⭐ 0
安装量(当前) 1
🛡 VirusTotal :良性 · OpenClaw :可疑
Package:alirezarezvani/cs-financial-analyst
安全扫描(ClawHub)
- VirusTotal :良性
- OpenClaw :可疑
OpenClaw 评估
The skill's description, templates, and runtime instructions align with a local financial-analysis toolkit, but the Python scripts themselves were not provided for review, so hidden behavior (network calls, credential access, or data exfiltration) cannot be ruled out.
目的
Name, description, SKILL.md, templates, reference docs, and the four analysis scripts (ratio, DCF, variance, forecast) are coherent and proportional to a financial-analysis skill — nothing in the manifest asks for unrelated credentials, binaries, or system paths.
说明范围
SKILL.md limits runtime actions to running local Python scripts against user-provided JSON files and generating reports/templates. It does instruct validating input data and cross-checking outputs (appropriate). It does not mention contacting external endpoints, but the provided SKILL.md and assets do not include the actual Python source content for inspection, so we cannot verify whether the scripts themselves perform network I/O, write outsi…
安装机制
No install specification — instruction-only skill that relies on local Python. This is low-risk in terms of installation because nothing is downloaded or written during install.
证书
No required environment variables, no primary credential, and no config paths are declared. That is appropriate for a local financial-analysis tool that operates on files supplied by the user.
持久
Skill is not always-enabled and uses normal model invocation. It does not request persistent platform privileges in the registry metadata.
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「financial-analyst」。简介:Performs financial ratio analysis, DCF valuation, budget variance analysis, and…。
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/cs-financial-analyst/SKILL.md
(来源:yingzhi8.cn 技能库)
SKILL.md
---
name: "financial-analyst"
description: Performs financial ratio analysis, DCF valuation, budget variance analysis, and rolling forecast construction for strategic decision-making. Use when analyzing financial statements, building valuation models, assessing budget variances, or constructing financial projections and forecasts. Also applicable when users mention financial modeling, cash flow analysis, company valuation, financial projections, or spreadsheet analysis.
---
# Financial Analyst Skill
## Overview
Production-ready financial analysis toolkit providing ratio analysis, DCF valuation, budget variance analysis, and rolling forecast construction. Designed for financial modeling, forecasting & budgeting, management reporting, business performance analysis, and investment analysis.
## 5-Phase Workflow
### Phase 1: Scoping
- Define analysis objectives and stakeholder requirements
- Identify data sources and time periods
- Establish materiality thresholds and accuracy targets
- Select appropriate analytical frameworks
### Phase 2: Data Analysis & Modeling
- Collect and validate financial data (income statement, balance sheet, cash flow)
- **Validate input data completeness** before running ratio calculations (check for missing fields, nulls, or implausible values)
- Calculate financial ratios across 5 categories (profitability, liquidity, leverage, efficiency, valuation)
- Build DCF models with WACC and terminal value calculations; **cross-check DCF outputs against sanity bounds** (e.g., implied multiples vs. comparables)
- Construct budget variance analyses with favorable/unfavorable classification
- Develop driver-based forecasts with scenario modeling
### Phase 3: Insight Generation
- Interpret ratio trends and benchmark against industry standards
- Identify material variances and root causes
- Assess valuation ranges through sensitivity analysis
- Evaluate forecast scenarios (base/bull/bear) for decision support
### Phase 4: Reporting
- Generate executive summaries with key findings
- Produce detailed variance reports by department and category
- Deliver DCF valuation reports with sensitivity tables
- Present rolling forecasts with trend analysis
### Phase 5: Follow-up
- Track forecast accuracy (target: +/-5% revenue, +/-3% expenses)
- Monitor report delivery timeliness (target: 100% on time)
- Update models with actuals as they become available
- Refine assumptions based on variance analysis
## Tools
### 1. Ratio Calculator (`scripts/ratio_calculator.py`)
Calculate and interpret financial ratios from financial statement data.
**Ratio Categories:**
- **Profitability:** ROE, ROA, Gross Margin, Operating Margin, Net Margin
- **Liquidity:** Current Ratio, Quick Ratio, Cash Ratio
- **Leverage:** Debt-to-Equity, Interest Coverage, DSCR
- **Efficiency:** Asset Turnover, Inventory Turnover, Receivables Turnover, DSO
- **Valuation:** P/E, P/B, P/S, EV/EBITDA, PEG Ratio
```bash
python scripts/ratio_calculator.py sample_financial_data.json
python scripts/ratio_calculator.py sample_financial_data.json --format json
python scripts/ratio_calculator.py sample_financial_data.json --category profitability
```
### 2. DCF Valuation (`scripts/dcf_valuation.py`)
Discounted Cash Flow enterprise and equity valuation with sensitivity analysis.
**Features:**
- WACC calculation via CAPM
- Revenue and free cash flow projections (5-year default)
- Terminal value via perpetuity growth and exit multiple methods
- Enterprise value and equity value derivation
- Two-way sensitivity analysis (discount rate vs growth rate)
```bash
python scripts/dcf_valuation.py valuation_data.json
python scripts/dcf_valuation.py valuation_data.json --format json
python scripts/dcf_valuation.py valuation_data.json --projection-years 7
```
### 3. Budget Variance Analyzer (`scripts/budget_variance_analyzer.py`)
Analyze actual vs budget vs prior year performance with materiality filtering.
**Features:**
- Dollar and percentage variance calculation
- Materiality threshold filtering (default: 10% or $50K)
- Favorable/unfavorable classification with revenue/expense logic
- Department and category breakdown
- Executive summary generation
```bash
python scripts/budget_variance_analyzer.py budget_data.json
python scripts/budget_variance_analyzer.py budget_data.json --format json
python scripts/budget_variance_analyzer.py budget_data.json --threshold-pct 5 --threshold-amt 25000
```
### 4. Forecast Builder (`scripts/forecast_builder.py`)
Driver-based revenue forecasting with rolling cash flow projection and scenario modeling.
**Features:**
- Driver-based revenue forecast model
- 13-week rolling cash flow projection
- Scenario modeling (base/bull/bear cases)
- Trend analysis using simple linear regression (standard library)
```bash
python scripts/forecast_builder.py forecast_data.json
python scripts/forecast_builder.py forecast_data.json --format json
python scripts/forecast_builder.py forecast_data.json --scenarios base,bull,bear
```
## Knowledge Bases
| Reference | Purpose |
|-----------|---------|
| `references/financial-ratios-guide.md` | Ratio formulas, interpretation, industry benchmarks |
| `references/valuation-methodology.md` | DCF methodology, WACC, terminal value, comps |
| `references/forecasting-best-practices.md` | Driver-based forecasting, rolling forecasts, accuracy |
| `references/industry-adaptations.md` | Sector-specific metrics and considerations (SaaS, Retail, Manufacturing, Financial Services, Healthcare) |
## Templates
| Template | Purpose |
|----------|---------|
| `assets/variance_report_template.md` | Budget variance report template |
| `assets/dcf_analysis_template.md` | DCF valuation analysis template |
| `assets/forecast_report_template.md` | Revenue forecast report template |
## Key Metrics & Targets
| Metric | Target |
|--------|--------|
| Forecast accuracy (revenue) | +/-5% |
| Forecast accuracy (expenses) | +/-3% |
| Report delivery | 100% on time |
| Model documentation | Complete for all assumptions |
| Variance explanation | 100% of material variances |
## Input Data Format
All scripts accept JSON input files. See `assets/sample_financial_data.json` for the complete input schema covering all four tools.
## Dependencies
**None** - All scripts use Python standard library only (`math`, `statistics`, `json`, `argparse`, `datetime`). No numpy, pandas, or scipy required.