Agent skill

tradingview-mcp

AI Trading Intelligence — live prices, 30+ technical indicators, backtesting (6 strategies), walk-forward overfitting detection, trade logs, equity curves, Reddit sentiment, news, and multi-market screener. Supports stocks, crypto, ETFs, indices, Turkish (BIST), and Egyptian (EGX) markets.

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Forks 360

Install this agent skill to your Project

npx add-skill https://github.com/atilaahmettaner/tradingview-mcp/tree/main/openclaw

Metadata

Additional technical details for this skill

openclaw
{
    "emoji": "\ud83d\udcc8",
    "always": true,
    "homepage": "https://github.com/atilaahmettaner/tradingview-mcp"
}

SKILL.md

TradingView MCP — AI Trading Intelligence

You have a trading intelligence tool available via bash. NEVER use sessions_spawn or ask for an agent ID for trading tasks. Run commands directly.

Use this tool whenever users ask about:

  • Stock, crypto, ETF, or index prices
  • Technical analysis (RSI, MACD, Bollinger Bands, etc.)
  • Backtesting trading strategies
  • Market sentiment or news
  • Screening for trading opportunities

How to Run Trading Tools

Execute via bash using the wrapper script:

bash
python3 ~/.openclaw/tools/trading.py <command> [args]

Behavior Guidelines

  1. Run bash immediately. For any trading/market question → execute the command directly, don't ask for clarification.
  2. Always combine signals. For "should I buy X?" → run price + backtest + sentiment together.
  3. Qualify with timeframe. Default to 1y period and 1d interval unless specified.
  4. Explain metrics briefly. Sharpe (risk-adjusted return), Max Drawdown (worst loss), Profit Factor (wins/losses).
  5. Add a disclaimer on all backtests: "⚠️ Past performance does not guarantee future results."
  6. Be concise on Telegram. Use emoji, bullet lists — no walls of JSON.
  7. Detect language. Reply in the same language the user writes in.

Tool Quick Reference

Prices & Market

Intent Tool
"What is AAPL's price?" yahoo_price(symbol="AAPL")
"Show me BTC and ETH prices" get_prices_bulk(symbols=["BTC-USD","ETH-USD"])
"How are markets today?" market_snapshot()

Technical Analysis

Intent Tool
"Analyze AAPL technically" technical_analysis(symbol="AAPL", exchange="NASDAQ", screener="america", interval="1h")
"What is the RSI for BTC?" calculate_rsi(symbol="BTC-USD", period="14")
"Supertrend signal for AAPL?" calculate_supertrend(symbol="AAPL")

Backtesting

Intent Tool
"Backtest RSI strategy for 1 year" backtest_strategy(symbol="AAPL", strategy="rsi", period="1y")
"Show me the full trade log" backtest_strategy(symbol="BTC-USD", strategy="supertrend", period="1y", include_trade_log=True)
"Run hourly backtest" backtest_strategy(symbol="AAPL", strategy="bollinger", period="3mo", interval="1h")
"Which strategy is best?" compare_strategies(symbol="BTC-USD", period="2y")
"Is this strategy overfitted?" walk_forward_backtest_strategy(symbol="AAPL", strategy="rsi", period="2y", n_splits=3)

Sentiment & News

Intent Tool
"What is Reddit saying about BTC?" analyze_sentiment(symbol="BTC")
"Latest news on AAPL" fetch_news_summary(symbol="AAPL")
"Combine technical + sentiment" analyze_confluence(symbol="AAPL", exchange="NASDAQ")

Screener

Intent Tool
"Strong bullish stocks" screener_bullish(exchange="NASDAQ")
"Find oversold stocks" screener_oversold(exchange="NASDAQ")
"Scan Turkish BIST stocks" screener_bullish(exchange="BIST")
"Egyptian Exchange stocks" egx_stock_screen()

Example Response Formats

Price Query (Telegram-friendly)

📊 AAPL — Apple Inc.
💵 Price: $189.42
📈 Change: +1.23% (+$2.30)
📅 52w High: $199.62 | Low: $164.08
🏦 Exchange: NASDAQ | Market: REGULAR

Backtest Summary (Telegram-friendly)

🔬 AAPL — RSI Strategy (1Y daily)
────────────────────────────────
📊 Trades: 8 | Win Rate: 62.5%
💰 Return: +14.3% vs B&H: +21.2%
📉 Max Drawdown: -6.8%
⚡ Sharpe: 1.42 | Calmar: 2.10
🏆 Profit Factor: 2.31

⚠️ Past performance does not guarantee future results.

Walk-Forward (Overfitting Check)

🧪 Walk-Forward: AAPL RSI (2Y, 3 folds)
────────────────────────────────────────
Robustness Score: 0.87 → ROBUST ✅
Train avg: +12.4% | Test avg: +10.8%

Fold 1: Train +18% → Test +15% (rob: 0.83)
Fold 2: Train +8%  → Test +7%  (rob: 0.88)
Fold 3: Train +11% → Test +10% (rob: 0.91)

✅ Strategy performs well out-of-sample.

Supported Symbols

  • US Stocks: AAPL, TSLA, NVDA, MSFT, GOOGL, META, AMZN
  • Crypto: BTC-USD, ETH-USD, SOL-USD, BNB-USD, XRP-USD
  • ETFs: SPY, QQQ, GLD, VTI, IWM
  • Indices: ^GSPC (S&P500), ^IXIC (NASDAQ), ^DJI (Dow), ^VIX
  • Turkish (BIST): THYAO.IS, SASA.IS, BIMAS.IS, KCHOL.IS, EKGYO.IS
  • Egyptian (EGX): COMI.CA, HRHO.CA, EAST.CA
  • FX: EURUSD=X, GBPUSD=X, JPYUSD=X, TRYUSD=X

Strategies Available for Backtesting

Strategy Key Best For
RSI Mean Reversion rsi Ranging/sideways markets
Bollinger Band bollinger Mean reversion in volatile markets
MACD Crossover macd Trend following
EMA 20/50 Cross ema_cross Medium-term trends
Supertrend (ATR) supertrend Strong trending markets
Donchian Channel donchian Breakout / Turtle Trading

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