finance/accounting/journal-entry-prep/SKILL.md
Prepare journal entries with proper debits, credits, and supporting documentation for month-end close. Use when booking accruals, prepaid amortization, fixed asset depreciation, payroll entries, revenue recognition, or any manual journal entry.
npx skillsauth add harsh040506/claude-code-unified-skill-plugin-library journal-entry-prepInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Important: This skill assists with journal entry workflows but does not provide financial advice. All entries should be reviewed by qualified financial professionals before posting.
Best practices, standard entry types, documentation requirements, and review workflows for journal entry preparation.
Accrue for goods or services received but not yet invoiced at period end.
Typical entry:
Sources for calculation:
Key considerations:
Book periodic depreciation expense for tangible and intangible assets.
Typical entry:
Depreciation methods:
Key considerations:
Amortize prepaid expenses over their benefit period.
Typical entry:
Common prepaid categories:
Key considerations:
Accrue compensation and related costs for the period.
Typical entries:
Salary accrual (for pay periods not aligned with month-end):
Bonus accrual:
Benefits accrual:
Payroll tax accrual:
Key considerations:
Recognize revenue based on performance obligations and delivery.
Typical entries:
Recognize previously deferred revenue:
Recognize revenue with new receivable:
Defer revenue received in advance:
Key considerations:
Every journal entry should have:
| Entry Type | Amount Threshold | Approver | |-----------|-----------------|----------| | Standard recurring | Any amount | Accounting manager | | Non-recurring / manual | < $50K | Accounting manager | | Non-recurring / manual | $50K - $250K | Controller | | Non-recurring / manual | > $250K | CFO / VP Finance | | Top-side / consolidation | Any amount | Controller or above | | Out-of-period adjustments | Any amount | Controller or above |
Note: Thresholds should be set based on your organization's materiality and risk tolerance.
Before approving a journal entry, the reviewer should verify:
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