Install
openclaw skills install @agentpmt/trading-signal-analysisTrading Signal Analysis: Ingest OHLCV datasets for any stock or cryptocurrency and generate. Use when an agent needs trading signal analysis, generate buy and sell trading signals from technical indicators, backtest trading strategies against historical ohlcv price data, analyze maximum adverse excursion and maximum favorable excursion for trade risk, calculate win rate and expectancy for systematic trading strategies, analyze signals, candles, symbol through AgentPMT-hosted remote tool calls.
openclaw skills install @agentpmt/trading-signal-analysisLast updated: 2026-06-24.
If the current date is more than 7 days after the last updated date, reinstall this skill from skills.sh or ClawHub before relying on endpoints, schemas, setup steps, or examples.
Analyze any stock or cryptocurrency with professional-grade trading signal diagnostics powered by multi-indicator technical analysis. Feed in OHLCV price data and get back actionable buy and sell signals, strategy backtests with historical performance metrics, and detailed risk analytics including maximum adverse excursion, maximum favorable excursion, win rate, expectancy, and drawdown analysis. Identify trend and momentum regimes, evaluate signal strength across multiple timeframes, and export publication-ready analysis charts and trade logs. Perfect for systematic traders building quantitative strategies, portfolio managers evaluating entry and exit timing, crypto analysts screening for momentum setups, and researchers backtesting technical indicators against real market data.
Advanced signal detection, backtesting, and risk analytics engine for stock and crypto OHLCV data. Computes technical indicators, detects trading signals, runs strategy backtests with MAE/MFE analysis, and generates downloadable charts and trade logs.
Detect trading signals from OHLCV candle data. Computes SMA, EMA, RSI, MACD, Bollinger Bands, ATR, breakout levels, and volume analysis. Returns signal counts, recent signal events, and current indicator values.
Required: candles (array of OHLCV objects, minimum 30 rows)
{
"candles": [
{"timestamp": "2024-01-01T00:00:00Z", "open": 42000, "high": 42500, "low": 41800, "close": 42300, "volume": 1500},
{"timestamp": "2024-01-02T00:00:00Z", "open": 42300, "high": 43000, "low": 42100, "close": 42800, "volume": 1800}
],
"symbol": "BTC-USD",
"timeframe": "1D"
}
Run a strategy backtest on OHLCV data. Returns trade log, equity curve, and metrics (win rate, Sharpe, Sortino, max drawdown, MAE/MFE, profit factor).
Required: candles
{
"candles": [{"open": 100, "high": 105, "low": 98, "close": 103, "volume": 5000}],
"symbol": "AAPL",
"strategy": "sma_cross",
"initial_capital": 10000,
"stop_loss_pct": 0.02,
"take_profit_pct": 0.05
}
Run both signal analysis and backtest, generate downloadable signal chart, performance chart, and trade log CSV.
Required: candles
{
"candles": [{"open": 100, "high": 105, "low": 98, "close": 103, "volume": 5000}],
"symbol": "ETH-USD",
"timeframe": "1H",
"strategy": "composite",
"initial_capital": 50000,
"store_charts": true,
"store_trade_log": true
}
Each candle object requires:
open (number) -- Open price (required)high (number) -- High price (required)low (number) -- Low price (required)close (number) -- Close price (required)timestamp (string) -- Optional timestampvolume (number) -- Optional volume (defaults to 0)Minimum 30 candles required; more is better for accurate indicator calculations.
| Strategy | Description |
|---|---|
| sma_cross | SMA fast/slow crossover |
| ema_cross | EMA fast/slow crossover |
| macd_cross | MACD line/signal crossover |
| rsi_reversion | Mean reversion on RSI oversold/overbought |
| breakout | Price breakout above/below rolling high/low |
| composite | Multi-indicator consensus (default, requires 3+ aligned signals) |
All have sensible defaults. Key ones:
sma_fast / sma_slow -- SMA periods (default: 20/50)ema_fast / ema_slow -- EMA periods (default: 12/26)rsi_period -- RSI period (default: 14)macd_signal_period -- MACD signal period (default: 9)bollinger_period / bollinger_stddev -- Bollinger Bands (default: 20/2.0)atr_period -- ATR period (default: 14)breakout_lookback -- Rolling high/low window (default: 20)stop_loss_pct -- Stop loss as decimal (e.g., 0.02 = 2%)take_profit_pct -- Take profit as decimal (e.g., 0.05 = 5%)trailing_stop_pct -- Trailing stop as decimalreturn_indicator_series -- Include full indicator arrays (default: false)store_charts -- Generate PNG charts (default: true, full_analysis only)store_trade_log -- Generate CSV trade log (default: true, full_analysis only)expiration_days -- File retention 1-7 days (default: 7)chart_width / chart_height -- Chart dimensions in pixelsBacktest results include:
sma_fast must be less than sma_slow; ema_fast must be less than ema_slow.rsi_oversold must be less than rsi_overbought.periods_per_year to match your data frequency (252 for daily, 8760 for hourly).Trading Signal Analysis on AgentPMT.analyze_signals, backtest_strategy, full_analysis.file-management, page: https://clawhub.ai/agentpmt/file-management; skills.sh: npx skills add AgentPMT/agent-skills --skill file-management)No categories or industry tags are published for this tool.
Complete generated action schema: ./schema.md.
Supported action count: 3.
x402 availability: not enabled for this product.
analyze_signals (action slug: analyze-signals): Detect trading signals from OHLCV data using SMA/EMA crossovers, RSI, MACD, Bollinger Bands, breakouts, and volume spikes. Returns signal counts, recent events, and latest indicator values. Price: 6 credits. Parameters: atr_period, bollinger_period, bollinger_stddev, breakout_lookback, candles, ema_fast, ema_slow, macd_signal_period, plus 10 more.backtest_strategy (action slug: backtest-strategy): Backtest a trading strategy on OHLCV data. Returns trade log, equity curve, and performance metrics (win rate, Sharpe, Sortino, drawdown, MAE/MFE). Price: 6 credits. Parameters: atr_period, bollinger_period, bollinger_stddev, breakout_lookback, candles, ema_fast, ema_slow, include_short, plus 17 more.full_analysis (action slug: full-analysis): Run both signal analysis and strategy backtest, generate downloadable charts and trade log CSV. Price: 6 credits. Parameters: atr_period, bollinger_period, bollinger_stddev, breakout_lookback, candles, chart_height, chart_width, ema_fast, plus 24 more.Use the compact schema above for ordinary calls. Before a new production integration, or whenever parameters, enum values, nested objects, outputs, or examples are unclear, fetch live details first.
agentpmt-tool-search-and-execution with action: "get_schema", and tool_id: "trading-signal-analysis".agentpmt-tool-search-and-execution with action: "get_instructions" and tool_id: "trading-signal-analysis", or call this product with action: "get_instructions" when the product tool is already selected.MCP schema lookup through the main AgentPMT MCP server:
{
"method": "tools/call",
"params": {
"name": "AgentPMT-Tool-Search-and-Execution",
"arguments": {
"action": "get_schema",
"tool_id": "trading-signal-analysis"
}
}
}
For live examples, keep the same MCP tool and use these arguments:
{
"action": "get_instructions",
"tool_id": "trading-signal-analysis"
}
Authenticated AgentPMT REST schema lookup body:
{
"name": "agentpmt-tool-search-and-execution",
"parameters": {
"action": "get_schema",
"tool_id": "trading-signal-analysis"
}
}
Authenticated AgentPMT REST live examples body:
{
"name": "agentpmt-tool-search-and-execution",
"parameters": {
"action": "get_instructions",
"tool_id": "trading-signal-analysis"
}
}
Product slug: trading-signal-analysis
Marketplace page: https://www.agentpmt.com/marketplace/trading-signal-analysis
../agentpmt-account-mcp-rest-api-setup to connect the main MCP server or REST API for an Agent Group where this tool is enabled.../what-is-agentpmt for marketplace, Agent Group, workflow, MCP, REST, and payment concepts.If those setup skills are not installed beside this product skill, use the downloads below.
Core AgentPMT setup skills:
openclaw skills install what-is-agentpmtnpx skills add AgentPMT/agent-skills --skill what-is-agentpmtopenclaw skills install agentpmt-account-mcp-rest-api-setupnpx skills add AgentPMT/agent-skills --skill agentpmt-account-mcp-rest-api-setupskills.sh install script:
npx skills add AgentPMT/agent-skills --skill what-is-agentpmt
npx skills add AgentPMT/agent-skills --skill agentpmt-account-mcp-rest-api-setup
MCP call shape after the main AgentPMT MCP server is connected:
{
"method": "tools/call",
"params": {
"name": "Trading-Signal-Analysis",
"arguments": {
"action": "analyze_signals",
"atr_period": 14,
"bollinger_period": 20,
"bollinger_stddev": 2,
"breakout_lookback": 20,
"candles": [
{
"close": 1,
"high": 1,
"low": 1,
"open": 1,
"timestamp": "example timestamp",
"volume": 1
}
],
"ema_fast": 12,
"ema_slow": 26,
"macd_signal_period": 9
}
}
}
Use the exact tool name returned by tools/list; the name above is the expected readable form.
Authenticated AgentPMT REST call body:
{
"name": "trading-signal-analysis",
"parameters": {
"action": "analyze_signals",
"atr_period": 14,
"bollinger_period": 20,
"bollinger_stddev": 2,
"breakout_lookback": 20,
"candles": [
{
"close": 1,
"high": 1,
"low": 1,
"open": 1,
"timestamp": "example timestamp",
"volume": 1
}
],
"ema_fast": 12,
"ema_slow": 26,
"macd_signal_period": 9
}
}
Use the setup skill for the account connection details before making REST calls.
passed or success-style boolean, use it as the workflow gate.get_schema or get_instructions before retrying.analyze_signals fails, preserve the request parameters and retry only after fixing schema, auth, or payment errors.what-is-agentpmt, page: https://clawhub.ai/agentpmt/what-is-agentpmt; skills.sh: npx skills add AgentPMT/agent-skills --skill what-is-agentpmt)agentpmt-account-mcp-rest-api-setup, page: https://clawhub.ai/agentpmt/agentpmt-account-mcp-rest-api-setup; skills.sh: npx skills add AgentPMT/agent-skills --skill agentpmt-account-mcp-rest-api-setup)