Toolstem MCP Server
Agent-ready financial intelligence tools for AI agents. Two curated tools — get_stock_snapshot and get_company_metrics — that combine multiple data sources, derive signals (UNDERVALUED, STRONG, ACCELERATING), and pre-compute the math. One call, one agent-friendly response.
README
Toolstem MCP Server
Agent-ready financial intelligence tools — curated, not raw.
Toolstem is an MCP (Model Context Protocol) server that turns raw financial market data into curated, synthesized intelligence for AI agents. Unlike passthrough wrappers that just expose a vendor's REST API, every Toolstem tool combines multiple data sources, derives signals, and pre-computes the math an agent would otherwise have to do itself.
One call. One agent-friendly JSON response. No nested arrays to parse, no cross-endpoint stitching, no null-checking boilerplate.
Why Toolstem?
Most financial MCP servers expose one tool per API endpoint — forcing your agent to make 4–5 sequential calls, write glue code, and reason about raw data shapes. Toolstem is built differently:
- Parallel data fetching — every tool fans out to multiple sources concurrently.
- Derived signals — human-readable recommendations like
UNDERVALUED,STRONG,ACCELERATINGcomputed from raw numbers. - Pre-computed math — CAGRs, YoY growth, margin trends, distance from 52-week high/low, FCF yield, and more are already in the response.
- Flat, predictable schema — no deeply nested vendor quirks leaking into agent prompts.
- Graceful degradation — if one upstream endpoint fails, the rest of the response still comes through with nulls in place.
Tools
get_stock_snapshot
Comprehensive stock overview combining quote, profile, DCF valuation, and rating into a single response.
Input:
{
"symbol": "AAPL"
}
Example output (truncated):
{
"symbol": "AAPL",
"company_name": "Apple Inc.",
"sector": "Technology",
"industry": "Consumer Electronics",
"exchange": "NASDAQ",
"price": {
"current": 178.52,
"change": 2.34,
"change_percent": 1.33,
"day_high": 179.80,
"day_low": 175.10,
"year_high": 199.62,
"year_low": 130.20,
"distance_from_52w_high_percent": -10.57,
"distance_from_52w_low_percent": 37.11
},
"valuation": {
"market_cap": 2780000000000,
"market_cap_readable": "$2.78T",
"pe_ratio": 29.5,
"dcf_value": 195.20,
"dcf_upside_percent": 9.35,
"dcf_signal": "FAIRLY VALUED"
},
"rating": {
"score": 4,
"recommendation": "Buy",
"dcf_score": 5,
"roe_score": 4,
"roa_score": 4,
"de_score": 5,
"pe_score": 3
},
"fundamentals_summary": {
"beta": 1.28,
"avg_volume": 55000000,
"employees": 164000,
"ipo_date": "1980-12-12",
"description": "Apple Inc. designs, manufactures..."
},
"meta": {
"source": "Toolstem via Financial Modeling Prep",
"timestamp": "2026-04-17T18:30:00Z",
"data_delay": "End of day"
}
}
Derived fields (not in raw APIs):
dcf_signal—UNDERVALUEDif DCF upside > 10%,OVERVALUEDif < -10%, elseFAIRLY VALUED.market_cap_readable— human-friendly$2.78T,$450.2B,$12.5Mformat.distance_from_52w_high_percent/distance_from_52w_low_percent— pre-computed range position.
get_company_metrics
Deep fundamentals analysis — profitability, financial health, cash flow, growth, and per-share metrics — synthesized from 5 financial statements endpoints.
Input:
{
"symbol": "AAPL",
"period": "annual"
}
period accepts annual (default) or quarter.
Example output (truncated):
{
"symbol": "AAPL",
"period": "annual",
"latest_period_date": "2025-09-30",
"profitability": {
"revenue": 394328000000,
"revenue_readable": "$394.3B",
"revenue_growth_yoy": 7.8,
"net_income": 96995000000,
"net_income_readable": "$97.0B",
"gross_margin": 46.2,
"operating_margin": 31.5,
"net_margin": 24.6,
"roe": 160.5,
"roa": 28.3,
"roic": 56.2,
"margin_trend": "EXPANDING"
},
"financial_health": {
"total_debt": 111000000000,
"total_cash": 65000000000,
"net_debt": 46000000000,
"debt_to_equity": 1.87,
"current_ratio": 1.07,
"interest_coverage": 41.2,
"health_signal": "STRONG"
},
"cash_flow": {
"operating_cash_flow": 118000000000,
"free_cash_flow": 104000000000,
"free_cash_flow_readable": "$104.0B",
"fcf_margin": 26.4,
"capex": 14000000000,
"dividends_paid": 15000000000,
"buybacks": 89000000000,
"fcf_yield": 3.7
},
"growth_3yr": {
"revenue_cagr": 8.2,
"net_income_cagr": 10.1,
"fcf_cagr": 9.5,
"growth_signal": "ACCELERATING"
},
"per_share": {
"eps": 6.42,
"book_value_per_share": 3.99,
"fcf_per_share": 6.89,
"dividend_per_share": 0.96,
"payout_ratio": 14.9
},
"meta": {
"source": "Toolstem via Financial Modeling Prep",
"timestamp": "2026-04-17T18:30:00Z",
"periods_analyzed": 3,
"data_delay": "End of day"
}
}
Derived fields:
margin_trend—EXPANDING,STABLE, orCONTRACTINGbased on net margin series direction.health_signal—STRONG,ADEQUATE, orWEAKfrom debt-to-equity, current ratio, and interest coverage.growth_signal—ACCELERATING,STEADY, orDECELERATINGbased on YoY growth trajectory.revenue_cagr,net_income_cagr,fcf_cagr— compound annual growth rates over the analyzed window.fcf_margin,fcf_yield— pre-computed from cash flow + revenue + market cap.
screen_stocks — temporarily disabled (returning in v1.3)
screen_stocks is not exposed in v1.2.2. FMP's /stable/batch-quote endpoint, which powered the previous implementation, now requires a paid subscription (HTTP 402 on free tier). A refactored version built on the free-tier-available /api/v3/stock-screener endpoint will ship in v1.3 with better filter coverage (industry, beta, dividend, country) and 10× lower FMP quota usage.
compare_companies
Side-by-side comparison of 2–5 companies across price, valuation, profitability, financial health, growth, dividends, and analyst ratings.
Input:
{
"symbols": ["AAPL", "MSFT", "GOOGL"]
}
Example output (truncated):
{
"symbols_compared": ["AAPL", "MSFT", "GOOGL"],
"comparison_date": "2026-04-20T18:30:00Z",
"companies": [
{
"symbol": "AAPL",
"company_name": "Apple Inc.",
"sector": "Technology",
"price": { "current": 178.52, "change_percent": 1.33 },
"valuation": { "pe_ratio": 29.5, "dcf_upside_percent": 9.35 },
"profitability": { "net_margin": 24.6, "roe": 160.5, "roic": 56.2 },
"financial_health": { "debt_to_equity": 1.87, "current_ratio": 1.07 },
"growth": { "revenue_growth_yoy": 7.8, "earnings_growth_yoy": 10.1 },
"dividend": { "dividend_yield": 0.5, "payout_ratio": 14.9 },
"rating": { "score": 4, "recommendation": "Buy" }
}
],
"rankings": {
"lowest_pe": "GOOGL",
"highest_margin": "AAPL",
"strongest_balance_sheet": "GOOGL",
"best_growth": "MSFT",
"most_undervalued": "GOOGL",
"highest_rated": "MSFT"
},
"meta": {
"source": "Toolstem via Financial Modeling Prep",
"timestamp": "2026-04-20T18:30:00Z",
"data_delay": "Real-time during market hours",
"api_calls_made": 19
}
}
Derived fields:
rankings— automatically computed:lowest_pe,highest_margin,strongest_balance_sheet,best_growth,most_undervalued,highest_rated.- All valuation, profitability, health, and growth metrics pre-computed per company.
- Uses batch quote for efficient multi-symbol price retrieval.
Installation
npm
npm install -g toolstem-mcp-server
Run as stdio server:
FMP_API_KEY=your_key_here toolstem-mcp-server
Run as HTTP (Streamable HTTP transport) server:
FMP_API_KEY=your_key_here PORT=3000 toolstem-mcp-server --http
Claude Desktop
Add to your claude_desktop_config.json:
{
"mcpServers": {
"toolstem": {
"command": "npx",
"args": ["-y", "toolstem-mcp-server"],
"env": {
"FMP_API_KEY": "your_fmp_api_key"
}
}
}
}
Apify
Available on the Apify Store as the toolstem-financial-data Actor. Call it from your Apify workflow with input:
{
"tool": "get_stock_snapshot",
"symbol": "AAPL"
}
or
{
"tool": "compare_companies",
"symbols": ["AAPL", "MSFT", "GOOGL"]
}
Results are pushed to the default dataset. The actor monetizes per tool call via Apify's Pay-Per-Event model.
Self-hosting (Cloudflare Workers / any Node runtime)
Build and run the HTTP transport:
npm install
npm run build
FMP_API_KEY=your_key npm run start:http
Your MCP client can then connect to POST http://your-host:3000/mcp.
Environment Variables
| Variable | Required | Description |
|---|---|---|
FMP_API_KEY |
Yes | Financial Modeling Prep API key. Get one at financialmodelingprep.com. |
PORT |
No | Port for HTTP transport. Defaults to 3000. |
Development
npm install
npm run dev # stdio, hot reload via tsx
npm run build # TypeScript -> dist/
npm start # run built stdio server
npm run start:http # run built HTTP server
Architecture
src/
├── index.ts # MCP server entry (stdio + Streamable HTTP)
├── actor.ts # Apify Actor entry
├── services/
│ └── fmp.ts # Financial Modeling Prep API client
├── tools/
│ ├── get-stock-snapshot.ts
│ ├── get-company-metrics.ts
│ ├── screen-stocks.ts # disabled in v1.2.2, returning in v1.3
│ └── compare-companies.ts
├── data/
│ └── universe.ts # Russell 1000 universe (for the v1.3 screener refactor)
└── utils/
└── formatting.ts # Market cap formatting, CAGR, trend signals
All FMP endpoints are wrapped in a single FmpClient class. Tool implementations fan out to multiple client methods in parallel via Promise.all, then synthesize the merged result.
License
MIT — see LICENSE.
Toolstem — curated financial intelligence for the agent-native economy.
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