massive-mcp
MCP server exposing Massive.com's REST Stocks API for querying stock market data via Claude Desktop/Code.
README
SwinGrade-MCPs
A collection of MCP servers and Claude skills for professional stock analysis. Built around a structured swing/long-term trading workflow that pulls live market data, technical indicators, financials, news, and chart visualizations — and turns them into actionable trade plans with explicit entry/SL/TP/R:R/sizing.
The repo contains:
- MCP servers that expose external data + chart APIs as tools
- Claude skills that orchestrate those tools into trade-grade analysis workflows
Designed for Claude Desktop and Claude Code.
Repository layout
SwinGrade-MCPs/
├── src/massive_mcp/ ← MCP #1: massive-mcp (Massive.com Stocks REST API)
├── tests/ ← tests for massive-mcp
├── pyproject.toml ← massive-mcp package
│
├── chart-img-mcp/ ← MCP #2: chart-img-mcp (TradingView chart snapshots)
│ ├── src/chart_img_mcp/
│ ├── tests/
│ └── pyproject.toml
│
└── skills/ ← Claude skills that drive the workflow
├── massive-trade-analysis/
├── market-macro-context-analysis/
├── earnings-calendar-check/
├── position-management/
└── setup-edge-validation/
Layout note:
massive-mcpis at the repo root (legacy from when the repo started as just that MCP), whilechart-img-mcplives in its own subdirectory. Future MCPs will follow the subdirectory pattern.
MCP servers
massive-mcp — Massive.com Stocks REST API
Wraps Massive.com (Polygon-style). 31 tools across:
| Group | Tools |
|---|---|
| Aggregates / bars | get_aggregates, get_previous_close, get_daily_market_summary, get_daily_ticker_summary |
| Quotes & trades | get_last_quote, get_last_trade, get_quotes, get_trades |
| Snapshots | get_snapshot, get_all_snapshots, get_top_movers |
| Tickers / reference | list_tickers, get_ticker_overview, get_related_tickers, list_ticker_types |
| Market reference | get_market_status, get_market_holidays, list_exchanges, list_condition_codes |
| News | get_news |
| Indicators | get_sma, get_ema, get_rsi, get_macd |
| Corporate actions | get_dividends, get_splits, get_ipos, get_ticker_events |
| Financials | get_financials, get_short_interest, get_short_volume |
Install:
python -m venv .venv
.venv/Scripts/python -m pip install -e . # Windows
# or .venv/bin/python -m pip install -e . # mac/linux
Then in Claude Desktop's claude_desktop_config.json:
{
"mcpServers": {
"massive": {
"command": "C:\\path\\to\\SwinGrade-MCPs\\.venv\\Scripts\\massive-mcp.exe",
"env": {
"MASSIVE_API_KEY": "your_key",
"MASSIVE_AUTH_MODE": "bearer"
}
}
}
}
chart-img-mcp — TradingView chart snapshots
Wraps chart-img.com. 5 tools: generate_chart, generate_mini_chart, generate_chart_to_storage, list_exchanges, find_symbol. Returns images inline in Claude Desktop, plus optional CDN URLs.
See chart-img-mcp/README.md for install + config.
Claude skills
The skills live in skills/ and compose into a complete trading workflow:
┌─ market-macro-context-analysis (regime score 0–10)
│
massive-trade-analysis ─┼─ earnings-calendar-check (pre-trade safety)
(ENTRY plan) │
├─ setup-edge-validation (empirical hit rates)
│
└─ chart-img: generate_chart (visual chart inline)
↓
[trade is open]
↓
position-management (TRIM / HOLD / EXIT)
| Skill | Role |
|---|---|
massive-trade-analysis |
Entry plan: HQ-tag setup, ATR-based zone, cascaded TPs, R:R-sized position |
market-macro-context-analysis |
SPY/QQQ regime score (used by trade-analysis as macro overlay) |
earnings-calendar-check |
Estimates next earnings date, flags trade-window overlap |
position-management |
Mid-trade decisions: trim/hold/trail/time-stop using MAE/MFE + R-multiple |
setup-edge-validation |
Backtests HQ tag rules empirically — replaces gut-feel probabilities |
Install: copy skills/* to ~/.claude/skills/. Full instructions in skills/README.md.
End-to-end example
After installing both MCPs and all skills, ask Claude Desktop:
"Swing trade plan for NVDA, $50k account"
The massive-trade-analysis skill will:
- Call
mcp__massive__get_market_statusand pull SPY/QQQ viamarket-macro-context-analysis→ macro overlay - Pull NVDA bars + EMAs + RSI + MACD + news + ticker overview
- Compute HQ tag, ATR, support/resistance, R:R via
compute_rr.py - (Optional) call
earnings-calendar-checkto flag earnings overlap - (Optional) call
setup-edge-validationfor empirical scenario probabilities - Render the trade-plan markdown
- Call
mcp__chart-img__generate_chartto attach a daily candle chart with EMA10/20/50/200 + RSI + MACD inline
You get a structured plan and the actual chart, side by side.
Prerequisites
- Python 3.10+ on
PATH - API keys:
- Massive.com: https://massive.com/docs
- chart-img.com: https://chart-img.com/dashboard
Why a single repo?
These pieces are designed to compose. Splitting them across repos forces users to clone N projects to get one workflow. Keeping them together means one git clone gets you the full toolchain — and the skills can reference the MCPs directly because they're co-located.
License
MIT — see individual MCP pyproject.toml files.
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