# revenue-geographic-segmentation > Retrieve detailed revenue breakdown by geographic segment for public companies. Use when analyzing regional exposure, geographic concentration, international expansion, or currency risk assessment. - Author: Melvin - Repository: OctagonAI/skills - Version: 20260203123411 - Stars: 6 - Forks: 0 - Last Updated: 2026-02-06 - Source: https://github.com/OctagonAI/skills - Web: https://mule.run/skillshub/@@OctagonAI/skills~revenue-geographic-segmentation:20260203123411 --- --- name: revenue-geographic-segmentation description: Retrieve detailed revenue breakdown by geographic segment for public companies. Use when analyzing regional exposure, geographic concentration, international expansion, or currency risk assessment. --- # Revenue Geographic Segmentation Retrieve detailed revenue breakdown by geographic segment for public companies using Octagon MCP. ## Prerequisites Ensure Octagon MCP is configured in your AI agent (Cursor, Claude Desktop, Windsurf, etc.). See [references/mcp-setup.md](references/mcp-setup.md) for installation instructions. ## Query Format ``` Retrieve detailed revenue by geographic segment for , for the annual period with a flat response structure. ``` **MCP Call:** ```json { "server": "octagon-mcp", "toolName": "octagon-agent", "arguments": { "prompt": "Retrieve detailed revenue by geographic segment for AAPL, for the annual period with a flat response structure" } } ``` ## Output Format The agent returns a table with revenue by geographic segment across years: | Fiscal Year | Americas Segment | Europe Segment | Greater China Segment | Japan Segment | Rest of Asia Pacific Segment | |-------------|-----------------|----------------|----------------------|---------------|------------------------------| | 2025 | $178,353.00M | $111,032.00M | $64,377.00M | $28,703.00M | $33,696.00M | | 2024 | $167,045.00M | $101,328.00M | $66,952.00M | $25,052.00M | $30,658.00M | | 2023 | $162,560.00M | $94,294.00M | $72,559.00M | $24,257.00M | $29,615.00M | | 2022 | $169,658.00M | $95,118.00M | $74,200.00M | $25,977.00M | $29,375.00M | | 2021 | $153,306.00M | $89,307.00M | $68,366.00M | $28,482.00M | $26,356.00M | **Data Source:** octagon-financials-agent ## Key Observations Pattern After receiving data, generate observations: 1. **Regional concentration**: Identify largest revenue regions 2. **Growth trends**: Track which regions are growing fastest 3. **Currency exposure**: Assess FX risk by region 4. **Emerging markets**: Monitor developing region growth 5. **Historical evolution**: Track geographic mix changes over time ## Analysis Tips ### Regional Share Calculation ``` Region Share = Region Revenue / Total Revenue × 100 ``` Calculate for each region to understand geographic mix. ### Geographic Concentration - Americas >50% = US-centric - Single region >60% = high concentration - Well balanced = no region >40% ### Growth Rate by Region ``` Region Growth = (Current Year - Prior Year) / Prior Year × 100 ``` Identify fastest and slowest growing regions. ### Currency Implications Regional exposure implies currency risk: - Americas: USD (base currency typically) - Europe: EUR, GBP exposure - Greater China: CNY exposure - Japan: JPY exposure - Rest of Asia Pacific: Mixed currencies ### Geopolitical Risk Consider regional risks: - Trade tensions (US-China) - Regulatory environment - Economic cycles - Political stability ## Strategic Analysis ### International Expansion Track over time: - Is international share growing? - Which regions showing momentum? - New market entries? ### Market Penetration Compare to: - Regional GDP or population - Addressable market size - Competitor regional presence ### Diversification Benefits Balanced geographic mix provides: - Currency hedging (natural) - Economic cycle diversification - Regulatory risk distribution ## Segment Evolution ### Long-term Trends Observe over 10+ years: - Americas: Typically stable, large base - Europe: Steady growth - Greater China: Rapid expansion then maturation - Emerging Asia: High growth potential ### Inflection Points Note significant changes: - New market entries - Trade policy impacts - Pandemic effects - Currency devaluations ## Follow-up Queries Based on results, suggest deeper analysis: - "What factors drove the Americas Segment's revenue growth from [YEAR1] to [YEAR2]?" - "How has [COMPANY]'s product mix evolved across geographic segments?" - "What percentage of total revenue does each geographic segment represent in [YEAR]?" - "Compare [COMPANY]'s geographic revenue mix to [PEER1] and [PEER2]"