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Spark Trader

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Bridges Spark ASX trading platform with Claude Desktop via MCP, enabling natural language queries for live quotes, positions, P&L, and market analytics.

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Описание

Bridges Spark ASX trading platform with Claude Desktop via MCP, enabling natural language queries for live quotes, positions, P&L, and market analytics.

README

Ask Claude "What is my unrealized P&L?" and get a live, data-driven answer sourced directly from Spark — in under two seconds.


What Is This?

Ran-Vain bridges Spark (a professional ASX trading platform) with Claude Desktop using Anthropic's Model Context Protocol (MCP). Spark delivers live market data via Dynamic Data Exchange (DDE) — a Windows-native protocol that Excel understands but AI systems don't. This project builds a four-layer translation stack so Claude can answer natural language trading questions using live ASX data.


Architecture

Spark (live ASX feed via DDE)
        │
        ▼
dde_client.py       ← polls 6 stocks every 2 seconds
        │
   ┌────┴────┐
   ▼         ▼
Redis      SQLite    ← real-time snapshots + historical data
   └────┬────┘
        ▼
api/main.py          ← 15 authenticated REST endpoints (FastAPI)
        │
        ▼
spark_mcp.py         ← 18 Claude tools (MCP server over stdio)
        │
        ▼
Claude Desktop       ← natural language query interface
Layer Component Responsibility
1 — DDE Listener dde_client.py Subscribes to Spark DDE feeds; writes to Redis & SQLite
2 — Data Store Redis + SQLite Redis for real-time snapshots; SQLite for historical data
3 — API Layer api/main.py 15 authenticated REST endpoints
4 — MCP Server spark_mcp.py 18 Claude tools registered with Claude Desktop

Prerequisites


Installation

Step 1 — Virtual environment

cd D:\spark-dde-bot
python -m venv venv
venv\Scripts\Activate.ps1

Step 2 — Dependencies

pip install pywin32 redis loguru python-dotenv fastapi uvicorn httpx mcp

Step 3 — Configure .env

REDIS_URL=redis://localhost:6379/0
SQLITE_PATH=dde_listener/spark_data.db
API_BASE=http://localhost:8000
API_KEY=your-strong-api-key-here
DDE_POLL_MS=2000

Step 4 — Start Redis

docker-compose up -d

Step 5 — Seed dummy data (first run only)

python seed_dummy_data.py

Step 6 — Start the DDE listener (open Spark first)

python dde_listener\dde_client.py

Step 7 — Start the API

uvicorn api.main:app --port 8000 --reload

Step 8 — Register MCP with Claude Desktop

Edit claude_desktop_config.json:

{
  "mcpServers": {
    "spark-trader": {
      "command": "D:\\spark-dde-bot\\venv\\Scripts\\python.exe",
      "args": ["D:\\spark-dde-bot\\mcp_server\\spark_mcp.py"],
      "env": {
        "API_BASE": "http://localhost:8000",
        "API_KEY": "your-strong-api-key-here"
      }
    }
  }
}

Step 9 — Restart Claude Desktop

Fully close and reopen Claude Desktop. The hammer icon in the toolbar confirms the MCP server is connected.


Startup Checklist

# Action Verification
1 Start Spark and log in Live market data visible in watchlist
2 Start Redis via Docker docker ps shows redis container running
3 Activate venv Terminal prompt shows (venv)
4 Run dde_client.py Logs show: Snapshot updated — 6 stocks
5 Run uvicorn http://localhost:8000 returns {status: ok}
6 Open Claude Desktop Hammer icon visible in toolbar
7 Test: "Show my positions" Claude returns 6 stocks with live P&L

Project Structure

D:\spark-dde-bot\
├── .env                          # Secrets and config (never commit this)
├── claude_desktop_config.json    # Claude Desktop MCP registration
├── docker-compose.yml            # Redis container
├── seed_dummy_data.py            # One-time dummy data seeder
│
├── dde_listener/
│   ├── dde_client.py             # DDE → Redis/SQLite listener
│   ├── spark_data.db             # SQLite database
│   └── logs/                     # Rotating logs (7-day retention)
│
├── api/
│   └── main.py                   # FastAPI — all 15 endpoints
│
├── mcp_server/
│   └── spark_mcp.py              # MCP server — 18 Claude tools
│
└── venv/                         # Python 3.11 virtual environment

API Endpoints

All endpoints require the X-API-Key header. Full docs at http://localhost:8000/docs.

Endpoint Source Description
GET /quotes Redis All stocks — live prices, bid, ask, change, volume
GET /quotes/{symbol} Redis Single stock live quote
GET /movers/up?n=5 Redis Top N gainers by % change
GET /movers/down?n=5 Redis Top N losers by % change
GET /movers/volume Redis Stocks ranked by volume
GET /summary Redis Count of stocks up / down / flat
GET /historical/{symbol} SQLite Price history over last N hours
GET /historical/{symbol}/range SQLite High / low / avg / peak volume
GET /positions SQLite + Redis All positions with live P&L
GET /positions/{symbol} SQLite + Redis Single position with live P&L
GET /pnl/today SQLite Today's P&L snapshot
GET /pnl/history?days=30 SQLite Daily P&L history with win rate
GET /orders SQLite Order history — filterable
GET /orders/{symbol} SQLite All orders for a specific stock
GET /analytics/exposure SQLite + Redis Portfolio exposure % breakdown
GET /analytics/best-performer SQLite Highest unrealized P&L position
GET /analytics/worst-performer SQLite Lowest unrealized P&L position
GET /analytics/drawdown?days=7 SQLite Max drawdown from peak P&L

Claude Tools (18)

Category Tools
Live Quotes get_all_quotes, get_quote, get_top_gainers, get_top_losers, get_by_volume, get_market_summary
Historical get_historical, get_price_range
Positions get_positions, get_position
P&L get_today_pnl, get_pnl_history
Orders get_orders, get_orders_by_symbol
Analytics get_portfolio_exposure, get_best_performer, get_worst_performer, get_drawdown

Example Queries

"Show my open positions"
"What is my P&L today?"
"Which stocks are up today?"
"Show my BHP orders this month"
"What is my portfolio exposure?"
"What was my best trading day?"
"What is my drawdown this week?"
"Which stock has the most volume?"
"Summarise my month and tell me my biggest risk"

Security

  • API key authentication on every endpoint via X-API-Key header
  • FastAPI binds to localhost:8000 only — not network-exposed by default
  • All secrets stored in .env — nothing hardcoded
  • All endpoints are read-only GET — no write operations

Before production: change the API key to a strong random value (32+ characters), add .env to .gitignore, enable Redis password auth, and add HTTPS via nginx if exposing beyond localhost.


Known Limitations

Limitation Detail
Windows only DDE is Windows-exclusive — the listener cannot run on macOS or Linux
Dummy data Positions, orders, and P&L use seeded synthetic data pending broker API integration
Fixed watchlist Hardcoded to 6 symbols (BHP, FMG, CBA, NAB, PLS, WOW)
Pull-only Claude queries are on-demand — no price alerts or real-time push
Read-only Cannot place, modify, or cancel orders

Troubleshooting

Symptom Resolution
DDE connect failed on all symbols Open Spark and log in before running dde_client.py
Redis connection refused Run docker-compose up -d and check REDIS_URL in .env
FastAPI returns 503 DDE listener isn't running or hasn't completed first poll — wait 2 seconds
No hammer icon in Claude Desktop Check paths in claude_desktop_config.json and fully restart Claude Desktop
FastAPI returns 403 API_KEY in .env must match the key in claude_desktop_config.json
P&L shows dummy values Expected — replace seeded data with real broker data when ready

Tech Stack

Technology Version Purpose
Python 3.11.9 Primary runtime
pywin32 306 Windows DDE client
Redis 7.x Real-time price snapshots
SQLite Built-in Historical data store
FastAPI 0.110+ REST API framework
uvicorn 0.29+ ASGI server
httpx 0.27+ Async HTTP client
MCP SDK Latest Anthropic Model Context Protocol
loguru 0.7+ Structured logging
Docker Latest Containerised Redis

Roadmap

  • Replace dummy positions/P&L with live broker API or CSV export
  • Register dde_client.py as a Windows Service for auto-start and crash recovery
  • Read watchlist symbols from a config file or database table
  • Use Spark's Watchlist DDE topic to query all symbols in a single DDE call
  • Add price alert monitoring that Claude can query
  • Expand beyond 6 ASX symbols

Ran-Vain is a read-only analytics and query tool. It does not place, modify, or cancel orders.

from github.com/shivamrawat2002/spark-mcp-bridge

Установка Spark Trader

У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.

▸ github.com/shivamrawat2002/spark-mcp-bridge

FAQ

Spark Trader MCP бесплатный?

Да, Spark Trader MCP бесплатный — установка в пару кликов через Unyly без оплаты.

Нужен ли API-ключ для Spark Trader?

Нет, Spark Trader работает без API-ключей и переменных окружения.

Spark Trader — hosted или self-hosted?

Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.

Как установить Spark Trader в Claude Desktop, Claude Code или Cursor?

Открой Spark Trader на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.

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