Reporting
by wangzitian0
Financial report generation including balance sheet, income statement, and cash flow. Use this skill when working with financial reports, multi-currency consolidation, or report calculations.
Skill Details
Repository Files
1 file in this skill directory
name: reporting description: Financial report generation including balance sheet, income statement, and cash flow. Use this skill when working with financial reports, multi-currency consolidation, or report calculations.
Financial Reporting
Core Definition: Financial report generation logic, report types, and calculation rules.
Report Types
Balance Sheet
Shows assets, liabilities, and equity at a point in time.
- Validation:
Total Assets = Total Liabilities + Total Equity
Income Statement (P&L)
Shows income and expenses over a period.
- Calculation:
Net Income = Total Income - Total Expenses
Cash Flow Statement
Shows cash movements by category:
- Operating Activities
- Investing Activities
- Financing Activities
Multi-Currency Consolidation
- Base Currency: User configurable (default: SGD)
- Balance Sheet: Use period-end FX rate
- Income Statement: Use average FX rate
- Record unrealized FX gains/losses separately
def consolidate_amount(amount: Decimal, currency: str, target: str, date: date) -> Decimal:
if currency == target:
return amount
rate = get_fx_rate(currency, target, date)
return (amount * rate).quantize(Decimal("0.01"))
Design Constraints
Recommended Patterns
- Report generation is read-only, never modifies ledger
- Always validate accounting equation before rendering
- Cache report results with date-based invalidation
- Pre-fetch all FX rates in bulk to avoid N+1 queries
- Cap trend data points at 366 to prevent memory issues
Prohibited Patterns
- NEVER hardcode account codes in report logic
- NEVER generate reports without FX rate data
Source Files
- Logic:
apps/backend/src/services/reporting.py - Templates:
apps/frontend/src/app/reports/ - Charts:
apps/frontend/src/components/charts/
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