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
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Define analysis objectives and stakeholder requirements
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Identify data sources and time periods
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Establish materiality thresholds and accuracy targets
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Select appropriate analytical frameworks
Phase 2: Data Analysis & Modeling
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Collect and validate financial data (income statement, balance sheet, cash flow)
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Validate input data completeness before running ratio calculations (check for missing fields, nulls, or implausible values)
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Calculate financial ratios across 5 categories (profitability, liquidity, leverage, efficiency, valuation)
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Build DCF models with WACC and terminal value calculations; cross-check DCF outputs against sanity bounds (e.g., implied multiples vs. comparables)
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Construct budget variance analyses with favorable/unfavorable classification
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Develop driver-based forecasts with scenario modeling
Phase 3: Insight Generation
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Interpret ratio trends and benchmark against industry standards
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Identify material variances and root causes
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Assess valuation ranges through sensitivity analysis
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Evaluate forecast scenarios (base/bull/bear) for decision support
Phase 4: Reporting
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Generate executive summaries with key findings
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Produce detailed variance reports by department and category
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Deliver DCF valuation reports with sensitivity tables
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Present rolling forecasts with trend analysis
Phase 5: Follow-up
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Track forecast accuracy (target: +/-5% revenue, +/-3% expenses)
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Monitor report delivery timeliness (target: 100% on time)
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Update models with actuals as they become available
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Refine assumptions based on variance analysis
Tools
- Ratio Calculator (scripts/ratio_calculator.py )
Calculate and interpret financial ratios from financial statement data.
Ratio Categories:
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Profitability: ROE, ROA, Gross Margin, Operating Margin, Net Margin
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Liquidity: Current Ratio, Quick Ratio, Cash Ratio
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Leverage: Debt-to-Equity, Interest Coverage, DSCR
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Efficiency: Asset Turnover, Inventory Turnover, Receivables Turnover, DSO
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Valuation: P/E, P/B, P/S, EV/EBITDA, PEG Ratio
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
- DCF Valuation (scripts/dcf_valuation.py )
Discounted Cash Flow enterprise and equity valuation with sensitivity analysis.
Features:
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WACC calculation via CAPM
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Revenue and free cash flow projections (5-year default)
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Terminal value via perpetuity growth and exit multiple methods
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Enterprise value and equity value derivation
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Two-way sensitivity analysis (discount rate vs growth rate)
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
- Budget Variance Analyzer (scripts/budget_variance_analyzer.py )
Analyze actual vs budget vs prior year performance with materiality filtering.
Features:
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Dollar and percentage variance calculation
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Materiality threshold filtering (default: 10% or $50K)
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Favorable/unfavorable classification with revenue/expense logic
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Department and category breakdown
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Executive summary generation
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
- Forecast Builder (scripts/forecast_builder.py )
Driver-based revenue forecasting with rolling cash flow projection and scenario modeling.
Features:
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Driver-based revenue forecast model
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13-week rolling cash flow projection
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Scenario modeling (base/bull/bear cases)
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Trend analysis using simple linear regression (standard library)
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.