Capitol Trades MCP
Enables querying and analysis of US congressional stock-trade disclosures from capitoltrades.com, providing tools for filtering, ranking, and exporting trade data.
README
Capitol Trades MCP
A Model Context Protocol (MCP) server that surfaces US congressional stock-trade disclosures from capitoltrades.com — no API key required.
It exposes 23 tools for querying, filtering, ranking, and exporting politician trades, built on FastMCP.
⚠️ Not investment advice. This server reports publicly disclosed transactions for research and transparency only.
How it works
capitoltrades.com is a Next.js (App Router) site on Vercel. Instead of scraping presentational HTML — which breaks on every redesign — this server reads the structured trade records embedded in the page's React Server Component flight stream (self.__next_f.push(...) script chunks), where each trade is a clean JSON object. That keeps the parser resilient to cosmetic changes and exposes richer fields than the rendered table: per-share price, reportingGap, estimated value, owner, sector, comment, and stable ids.
Tools
Core
get_politician_trades— filtered trade list (issuer, politician, party, type, window)get_top_traded_assets— most-traded assets, ranked by trade countget_politician_stats— per-politician breakdownget_asset_stats— per-asset breakdownget_buy_momentum_assets— assets where politicians are net buyersget_party_buy_momentum— net buyers split into consensus / Democrat / Republican
Feeds & lookups
get_recent_trades— latest disclosures across all politicianssearch_politicians— resolve a name to its Capitol Trades id (+ party/state/stats)search_issuers— resolve a ticker/name to issuer id, sector and statsget_trade_detail— full record for a single transaction id
Filter dimensions
get_trades_by_sector·get_trades_by_state·get_trades_by_owner·get_trades_by_chamber
Rankings & analytics
get_largest_trades— biggest trades by estimated valueget_most_active_politicians— ranked by trade count then valueget_sector_momentum— net buy/sell flow by sectorget_politician_net_positions— per-asset net buying/selling for one member
Compliance / disclosure quality
get_late_filings— trades disclosed slower than the STOCK Act's 45-day windowget_disclosure_gap_leaderboard— members ranked by average reporting gap
Cross-referencing
get_congress_activity_for_tickers— batch summary for a watchlist of tickers
Output / convenience
export_trades_csv— filtered trades as CSV textget_trades_in_date_range— trades within an arbitraryYYYY-MM-DDrange
Requirements
- Python 3.10+
fastmcp,httpx,beautifulsoup4,lxml
Installation
git clone https://github.com/jsconiers/capitol-trades-mcp.git
cd capitol-trades-mcp
python3 -m venv .venv
source .venv/bin/activate
pip install -r requirements.txt
🍏 Apple Silicon note: install with the virtual-env's own
pip(as above), not a Rosetta/x86_64uv— otherwise native wheels such aspydantic-corecan fail to load with an "incompatible architecture" error.
It also runs dependency-free via uv thanks to inline PEP 723 metadata:
uv run capital_trades_mcp.py
Claude Desktop configuration
Add to claude_desktop_config.json (see claude_desktop_config.example.json), using absolute paths:
{
"mcpServers": {
"capitol-trades": {
"command": "/absolute/path/to/capitol-trades-mcp/.venv/bin/python",
"args": ["/absolute/path/to/capitol-trades-mcp/capital_trades_mcp.py"],
"env": {}
}
}
}
Restart Claude Desktop. No API key or credentials are required.
Usage examples
- "What are the most recent congressional trades?" →
get_recent_trades - "Show me Nancy Pelosi's trades over the last year." →
get_politician_stats - "Who in Congress has been buying NVDA?" →
get_asset_stats - "Which members filed late this quarter?" →
get_late_filings - "Cross-reference my watchlist [AAPL, MSFT, NVDA] against Congress." →
get_congress_activity_for_tickers
Testing
python test_port.py
Offline tests cover the flight-JSON parser, the issuer/politician parsers, every aggregation/filter helper, CSV export, and tool registration. No network needed.
Notes & limitations
- Filtering windows: filter/ranking tools pull up to ~500 of the most recent trades in the look-back window and filter client-side, so very rare sectors/states may be under-represented over long windows.
- Window cache: repeated analytics on the same look-back window share one fetch for ~60 seconds.
N/Atickers: some disclosed issuers (private funds, certain instruments) carry no ticker in the source data.- Be courteous: the server delays slightly between paginated requests. Respect capitoltrades.com's terms of service.
Credits
- Data: Capitol Trades (2iQ Research).
- Python/FastMCP port inspired by the Node/TypeScript project
anguslin/mcp-capitol-trades. Review the upstream project's license before redistributing.
License
MIT for this Python port — see LICENSE. Capitol Trades data and the upstream project remain under their respective terms.
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