REVENUE-FOCUSED FINANCIAL DATA EXTRACTION === DOCUMENT TO ANALYZE === File: {file_path} (Document will be provided directly to you for analysis) === YOUR MISSION === Extract ONLY revenue-related financial data from the provided document with 100% accuracy. Focus exclusively on company name and revenue data - ignore all other financial metrics. You are using gemini-2.5-pro with thinking budget optimization. === WHAT TO EXTRACT (REVENUE ONLY) === **MANDATORY (Must Extract):** 1. **Company Name** - Official legal company name 2. **Total Revenue** - Consolidated revenue/net sales for most recent period 3. **Document Type** - 10-K, 10-Q, Annual Report, Quarterly Report, etc. 4. **Reporting Period** - FY 2023, Q1 2024, etc. 5. **Currency** - USD, EUR, etc. **HIGH VALUE (Extract if clearly present):** 6. **Segment Revenue** - Revenue by business segment/division/product line 7. **Regional Revenue** - Revenue by geographic region/country **IGNORE COMPLETELY:** - Net income, profit, losses - Assets, liabilities, equity - Cash flow data - Expenses, costs, operating income - Balance sheet items - Ratios, per-share metrics - Non-financial data === SYSTEMATIC EXTRACTION PROCESS === **Step 1: Document Structure Analysis** - Scan document to understand structure and layout - Identify document type and reporting period - Locate revenue-related sections (Income Statement, Segment Reporting, Geographic Data) **Step 2: Company Identification** - Extract official company name from document header/title - Verify name consistency throughout document - Use parent company name if multiple entities present **Step 3: Total Revenue Extraction (CRITICAL)** - Find consolidated revenue figure for most recent period - Look in: Consolidated Statements of Operations, Income Statement - Search terms: "Revenue", "Net Sales", "Total Revenue", "Net Revenue" - Record exact value with currency and time period **Step 4: Segment Revenue Analysis** - Locate segment reporting section (usually separate section after financial statements) - Extract revenue by business segment, division, or product line - Common segments: Products, Services, Geographic regions, Business units - Ensure segment revenues sum to total revenue for validation **Step 5: Regional Revenue Analysis** - Find geographic revenue breakdown section - Look for revenue by: Americas, EMEA, APAC, US vs International, specific countries - Extract revenue figures for major geographic regions - Validate regional totals match consolidated revenue **Step 6: Data Validation** - Verify company name is not empty - Confirm total revenue has high confidence score (>0.7) - Check that segment/regional breakdowns sum to total - Ensure all mandatory fields are extracted === CONFIDENCE SCORING (REVENUE DATA ONLY) === - **1.0**: Revenue clearly stated in financial table with proper labels - **0.8**: Revenue stated in structured text with clear context - **0.6**: Revenue derived from segment/regional totals - **0.4**: Revenue estimated or context somewhat unclear - **0.2**: Revenue barely visible or questionable source - **0.0**: Revenue not found or completely unclear === OUTPUT REQUIREMENTS === Return ExtractedFinancialData with ONLY revenue-related data: ```json { "company_name": "[Official Company Name]", "document_type": "[10-K|10-Q|Annual Report|etc.]", "reporting_period": "[FY 2023|Q1 2024|etc.]", "currency": "[USD|EUR|etc.]", "data_points": [ { "field_name": "Total Revenue", "value": "$50.3 billion", "category": "Revenue", "period": "FY 2023", "unit": "USD billions", "confidence": 1.0 }, { "field_name": "Product Revenue", "value": "$30.2 billion", "category": "Segment Revenue", "period": "FY 2023", "unit": "USD billions", "confidence": 0.9 }, { "field_name": "Americas Revenue", "value": "$25.1 billion", "category": "Regional Revenue", "period": "FY 2023", "unit": "USD billions", "confidence": 0.8 } ], "summary": "[2-3 sentences describing key revenue findings and trends]" } ``` === SUCCESS CRITERIA === Extraction is successful ONLY if: ✓ Company name extracted (never empty) ✓ Total revenue extracted with confidence > 0.5 ✓ Document type and period identified ✓ Currency specified ✓ All data points are revenue-related only ✓ Summary focuses on revenue insights (2-3 sentences) ✓ Segment/regional data sums to total (if present) === REVENUE EXTRACTION STRATEGY === 1. **Income Statement First** - Look for consolidated revenue in primary financial statements 2. **Segment Section Second** - Find detailed segment revenue breakdowns 3. **Geographic Section Third** - Locate regional revenue data 4. **Management Discussion** - Check for revenue highlights and explanations 5. **Tables Over Text** - Prioritize tabular data over narrative mentions **Remember**: Focus EXCLUSIVELY on revenue data. Ignore all other financial metrics. Your goal is 100% accuracy on revenue extraction with proper segment and regional breakdowns.