expense-report
Organize, categorize, and summarize business expenses for reimbursement and tax preparation. Use when a user asks to create an expense report, organize receipts, categorize expenses, summarize spending, prepare expenses for reimbursement, or compile business expenses for tax filing. Handles receipts, CSV data, and manual entries.
Usage
Getting Started
- Install the skill using the command above
- Open your AI coding agent (Claude Code, Codex, Gemini CLI, or Cursor)
- Reference the skill in your prompt
- The AI will use the skill's capabilities automatically
Example Prompts
- "Generate a professional invoice for the consulting work done in January"
- "Draft an NDA for our upcoming partnership with Acme Corp"
Documentation
Overview
Organize, categorize, and summarize business expenses into professional reports. This skill processes expense data from receipts, CSV files, or manual entries, categorizes them by type, calculates totals, and generates formatted reports suitable for reimbursement submissions or tax preparation.
Instructions
When a user asks to create an expense report or organize their expenses, follow these steps:
Step 1: Collect expense data
Gather expenses from the available sources:
From a CSV or spreadsheet:
import pandas as pd
def load_expenses_csv(file_path):
df = pd.read_csv(file_path)
# Normalize column names
df.columns = [col.strip().lower() for col in df.columns]
return df
From manual entries: Prompt the user for each expense or accept a list:
- Date
- Description / Vendor
- Amount
- Category (assign automatically if not provided)
- Payment method (credit card, cash, reimbursable)
From receipt images or PDFs: Extract data using OCR or text extraction, then structure into the same format.
Step 2: Categorize expenses
Assign each expense to a standard category. Auto-categorize based on vendor name and description:
CATEGORY_RULES = {
"Travel": ["airline", "hotel", "uber", "lyft", "taxi", "flight", "airbnb", "rental car"],
"Meals & Entertainment": ["restaurant", "cafe", "coffee", "lunch", "dinner", "doordash", "grubhub"],
"Office Supplies": ["staples", "office depot", "amazon", "supplies"],
"Software & Subscriptions": ["github", "aws", "google cloud", "slack", "zoom", "adobe", "saas"],
"Transportation": ["gas", "parking", "toll", "metro", "transit"],
"Professional Services": ["consulting", "legal", "accounting", "freelance"],
"Communication": ["phone", "internet", "verizon", "att", "tmobile"],
"Training & Education": ["course", "conference", "workshop", "udemy", "training"],
}
def categorize_expense(description):
desc_lower = description.lower()
for category, keywords in CATEGORY_RULES.items():
if any(keyword in desc_lower for keyword in keywords):
return category
return "Other"
Step 3: Calculate totals and summaries
def summarize_expenses(df):
summary = {
"total": df['amount'].sum(),
"by_category": df.groupby('category')['amount'].sum().to_dict(),
"by_month": df.groupby(df['date'].dt.to_period('M'))['amount'].sum().to_dict(),
"count": len(df),
"date_range": f"{df['date'].min()} to {df['date'].max()}",
"avg_per_expense": df['amount'].mean(),
"largest_expense": df.loc[df['amount'].idxmax()].to_dict()
}
return summary
Step 4: Generate the report
Excel report with multiple sheets:
def generate_excel_report(df, summary, output_path="expense_report.xlsx"):
with pd.ExcelWriter(output_path, engine='openpyxl') as writer:
# Summary sheet
summary_df = pd.DataFrame([
{"Metric": "Total Expenses", "Value": f"${summary['total']:.2f}"},
{"Metric": "Number of Expenses", "Value": summary['count']},
{"Metric": "Date Range", "Value": summary['date_range']},
{"Metric": "Average per Expense", "Value": f"${summary['avg_per_expense']:.2f}"},
])
summary_df.to_excel(writer, sheet_name='Summary', index=False)
# Category breakdown
cat_df = pd.DataFrame([
{"Category": cat, "Total": f"${amt:.2f}"}
for cat, amt in sorted(summary['by_category'].items(), key=lambda x: -x[1])
])
cat_df.to_excel(writer, sheet_name='By Category', index=False)
# All expenses detail
df.to_excel(writer, sheet_name='All Expenses', index=False)
return output_path
Markdown summary for quick review:
def generate_markdown_summary(summary):
lines = [
"# Expense Report Summary",
f"**Period:** {summary['date_range']}",
f"**Total Expenses:** ${summary['total']:.2f}",
f"**Number of Items:** {summary['count']}",
"",
"## By Category",
]
for cat, amt in sorted(summary['by_category'].items(), key=lambda x: -x[1]):
pct = (amt / summary['total']) * 100
lines.append(f"- **{cat}:** ${amt:.2f} ({pct:.1f}%)")
return "\n".join(lines)
Step 5: Present results and flag issues
Display the summary and flag any potential issues:
- Expenses missing receipts
- Unusually large individual expenses
- Expenses outside the reporting period
- Duplicate entries (same vendor, amount, and date)
Examples
Example 1: Monthly expense report from CSV
User request: "Create an expense report from my expenses.csv file for January"
Actions taken:
- Load and parse expenses.csv
- Filter to January entries
- Auto-categorize 34 expenses
- Generate summary and Excel report
Output:
Expense Report: January 2025
=============================
Total Expenses: $4,287.50
Number of Items: 34
Average per Expense: $126.10
By Category:
Travel: $1,850.00 (43.1%)
Software & Subscriptions: $680.00 (15.9%)
Meals & Entertainment: $542.30 (12.7%)
Office Supplies: $418.20 (9.8%)
Transportation: $365.00 (8.5%)
Professional Services: $320.00 (7.5%)
Other: $112.00 (2.6%)
Top 3 Expenses:
1. $890.00 - Delta Airlines (Jan 15)
2. $520.00 - Marriott Hotel (Jan 15-16)
3. $320.00 - Legal consultation (Jan 22)
Flags:
- 2 potential duplicates found (review recommended)
- 3 expenses over $200 may require manager approval
Report saved: expense_report_jan_2025.xlsx
Example 2: Annual tax expense summary
User request: "Summarize all my business expenses from 2024 for tax filing"
Actions taken:
- Load expense data for full year
- Categorize using IRS Schedule C categories
- Generate annual summary with monthly breakdown
Output:
Annual Expense Summary: 2024
============================
Total Business Expenses: $48,320.75
IRS Schedule C Categories:
Advertising: $3,200.00
Car & Truck Expenses: $4,850.00
Contract Labor: $8,400.00
Insurance: $2,160.00
Office Expenses: $5,680.00
Supplies: $2,340.00
Travel: $12,450.00
Meals (50% deductible): $4,280.75
Utilities: $1,920.00
Other: $3,040.00
Monthly Trend:
Highest month: November ($6,420)
Lowest month: August ($2,180)
Report saved: annual_expenses_2024.xlsx
Example 3: Organize receipts from a business trip
User request: "I just got back from a conference in Chicago. Organize these receipts: flights $450, hotel 3 nights $180/night, Uber rides $85, meals $220, conference ticket $399"
Output:
Business Trip Expense Report: Chicago Conference
=================================================
Total: $1,694.00
Expenses:
Date | Category | Description | Amount
---------- | ------------- | --------------------- | --------
[Trip] | Travel | Round-trip flights | $450.00
[Trip] | Travel | Hotel (3 nights) | $540.00
[Trip] | Transportation| Uber rides | $85.00
[Trip] | Meals | Meals during trip | $220.00
[Trip] | Training | Conference registration| $399.00
Summary:
Travel & Lodging: $990.00 (58.4%)
Meals: $220.00 (13.0%)
Training: $399.00 (23.6%)
Transportation: $85.00 (5.0%)
Note: Fill in specific dates for each expense before submitting.
Report saved: trip_expense_chicago.xlsx
Guidelines
- Auto-categorize expenses by default but allow the user to override categories.
- Always flag potential duplicates (same vendor, amount, and date within 1 day).
- Use standard business expense categories that align with common reimbursement policies and IRS Schedule C.
- For tax reports, note which categories have special deduction rules (e.g., meals at 50%).
- Format all currency amounts consistently with two decimal places.
- When generating Excel reports, include a summary sheet, category breakdown, and full detail sheet.
- Date formats should be consistent. Parse and normalize dates from various input formats.
- Never assume tax rates or reimbursement policies. Present the data and let the user or their accountant make tax decisions.
- Install pandas and openpyxl with
pip install pandas openpyxlif not available.
Information
- Version
- 1.0.0
- Author
- terminal-skills
- Category
- Business
- License
- Apache-2.0