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From crypto-trading-desk
Runs a comprehensive multi-agent crypto analysis with phased execution for any cryptocurrency symbol. Useful for market, technical, and sentiment analysis.
npx claudepluginhub hugoguerrap/crypto-claude-desk --plugin crypto-trading-deskHow this skill is triggered — by the user, by Claude, or both
Slash command
/crypto-trading-desk:analyzeThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Run a comprehensive analysis of $ARGUMENTS using 5 specialized agents in 3 sequential phases. Each phase writes a report file; the next phase reads those files before starting.
Analyzes crypto market sentiment using Fear & Greed Index, news analysis, and momentum into a 0-100 score for overall mood or specific coins like BTC.
Routes crypto research and trading workflows: market regime analysis, token research memos, and perpetual funding/basis monitoring via LLMQuant Data.
Quick single-agent market check for a cryptocurrency symbol. Fetches price, sentiment, funding rate, and news. Suggests deeper analysis on anomalies.
Share bugs, ideas, or general feedback.
Run a comprehensive analysis of $ARGUMENTS using 5 specialized agents in 3 sequential phases. Each phase writes a report file; the next phase reads those files before starting.
All agents use subagent_type: general-purpose with explicit model to ensure MCP tool access. Include "Do NOT use the Edit tool" in every prompt.
data/reports/YYYY-MM-DD-{symbol}/ (use today's date)Spawn ALL 3 agents simultaneously using the Task tool. Do NOT wait for one before spawning the next — launch all 3 in a single response.
market-monitor — Task with subagent_type: general-purpose, model: haiku:
"You are the market-monitor agent. Read agents/market-monitor.md for your full analysis framework.
Gather real-time market data for $ARGUMENTS.
Use crypto-exchange MCP (get_exchange_prices, fetch_ohlcv_data, analyze_volume_patterns) for ACCURATE current prices and volume.
Use crypto-data MCP (get_fear_greed_index, get_dominance_stats, get_global_market_stats) for market metadata.
Use crypto-futures MCP (get_funding_rate, get_open_interest, get_long_short_ratio) for derivatives data.
Use WebSearch for whale alerts and breaking news.
Write your complete report to data/reports/YYYY-MM-DD-{symbol}/market-data.md.
Do NOT use the Edit tool."
technical-analyst — Task with subagent_type: general-purpose, model: sonnet:
"You are the technical-analyst agent. Read agents/technical-analyst.md for your full analysis framework.
Run full technical analysis for $ARGUMENTS.
First call get_prediction_track_record(agent='technical-analyst', symbol='{SYMBOL}/USDT') from crypto-learning-db to check your past accuracy — calibrate your analysis based on where you've been right/wrong.
Use crypto-technical MCP (calculate_rsi, calculate_macd, calculate_bollinger_bands, detect_chart_patterns, calculate_moving_averages, get_support_resistance, generate_trading_signals).
Use crypto-advanced-indicators MCP (calculate_ichimoku, calculate_vwap, calculate_adx, calculate_obv, detect_divergences).
Use crypto-exchange MCP (fetch_ohlcv_data) for price data.
Write your complete report to data/reports/YYYY-MM-DD-{symbol}/technical-analysis.md.
Do NOT use the Edit tool."
news-sentiment — Task with subagent_type: general-purpose, model: sonnet:
"You are the news-sentiment agent. Read agents/news-sentiment.md for your full analysis framework.
Analyze latest news and social sentiment for $ARGUMENTS.
First call get_prediction_track_record(agent='news-sentiment', symbol='{SYMBOL}/USDT') from crypto-learning-db to check your past accuracy.
Use WebSearch extensively: search for '{SYMBOL} crypto news today', '{SYMBOL} twitter sentiment', '{SYMBOL} reddit discussion', regulatory news.
Use WebFetch to read full articles when headlines are significant.
Cover: breaking news, regulatory updates, social media mood, FUD/FOMO detection, contrarian signals.
Write your complete report to data/reports/YYYY-MM-DD-{symbol}/news-sentiment.md.
Do NOT use the Edit tool."
After all 3 Task calls return, verify the report files exist on disk using Glob. If news-sentiment did not produce a file (timeout), proceed without it — note the gap in the Phase 2 prompt.
Only spawn AFTER Phase 1 files are confirmed on disk.
subagent_type: general-purpose, model: sonnet:
"You are the risk-specialist agent. Read agents/risk-specialist.md for your full analysis framework.
FIRST read these Phase 1 reports — they are ALREADY written on disk:
After the Task call returns, verify risk-assessment.md exists on disk.
Only spawn AFTER risk-assessment.md is confirmed on disk.
subagent_type: general-purpose, model: opus:
"You are the portfolio-manager agent. Read agents/portfolio-manager.md for your full decision framework.
FIRST read ALL files in data/reports/YYYY-MM-DD-{symbol}/ — these are ALREADY written by previous agents. Read market-data.md, technical-analysis.md, news-sentiment.md (if exists), and risk-assessment.md.
Call get_prediction_track_record(symbol='{SYMBOL}/USDT') from crypto-learning-db to check how this type of setup has performed historically — read the recent evaluations for context.
Call get_portfolio_state() from crypto-learning-db to check balances and open positions.
Verify current price with get_exchange_prices(symbol='{SYMBOL}/USDT') from crypto-exchange MCP.
Synthesize all agent findings. Make final EXECUTE/WAIT/REJECT decision with position sizing, entry/SL/TP, and R/R ratio.
If EXECUTE, call record_trade() from crypto-learning-db with all required fields including the learning JSON.
Write decision to data/reports/YYYY-MM-DD-{symbol}/decision.md.
Do NOT use the Edit tool."If the portfolio-manager's decision was EXECUTE and a trade was opened:
Delegate using Task with subagent_type: general-purpose, model: opus:
"You are the learning-agent. Read agents/learning-agent.md for your analysis framework.
Record predictions for the latest trade just opened.
Call query_trades(status='open', limit=1) from crypto-learning-db to get the trade.
Read its key_assumptions and learning fields.
Extract each testable prediction (price direction, support/resistance holds, funding expectations, risk scenarios).
Call record_prediction() from crypto-learning-db for each prediction.
Do NOT use the Edit tool."
data/reports/YYYY-MM-DD-{symbol}/data/reports/YYYY-MM-DD-{symbol}/full-report.mdPresent a consolidated report with: