scanning-market-movers
Detect significant price movements and unusual volume across crypto markets. Calculates significance scores combining price change, volume ratio, and market cap. Use when tracking market movers, finding gainers/losers, or detecting volume spikes. Trigger with phrases like "scan market movers", "top gainers", "biggest losers", "volume spikes", "what's moving", "find pumps", or "market scan".
What this skill does
# Scanning Market Movers
## Overview
Real-time detection of significant price movements and unusual volume patterns across 1,000+ cryptocurrencies, ranked by composite significance score.
## Prerequisites
1. **Python 3.8+** installed
2. **Dependencies**: `pip install requests pandas`
3. **market-price-tracker** plugin installed with `tracking-crypto-prices` skill configured
## Instructions
1. **Run a default scan** for top gainers and losers (top 20 each by 24h change with volume confirmation):
```bash
python ${CLAUDE_SKILL_DIR}/scripts/scanner.py
```
2. **Set custom thresholds** for minimum change and volume spike:
```bash
python ${CLAUDE_SKILL_DIR}/scripts/scanner.py --min-change 10 --volume-spike 3
python ${CLAUDE_SKILL_DIR}/scripts/scanner.py --min-cap 100000000 --max-cap 1000000000 # 100000000 = $100M min cap, 1000000000 = $1B max cap
```
3. **Filter by category** (defi, layer2, nft, gaming, meme):
```bash
python ${CLAUDE_SKILL_DIR}/scripts/scanner.py --category defi
```
4. **Scan different timeframes** (1h, 24h, 7d):
```bash
python ${CLAUDE_SKILL_DIR}/scripts/scanner.py --timeframe 1h
```
5. **Export results** to JSON or CSV:
```bash
python ${CLAUDE_SKILL_DIR}/scripts/scanner.py --format json --output movers.json
python ${CLAUDE_SKILL_DIR}/scripts/scanner.py --format csv --output movers.csv
```
6. **Use named presets** for predefined threshold sets:
```bash
python ${CLAUDE_SKILL_DIR}/scripts/scanner.py --preset aggressive
```
## Output
Default table shows top gainers and losers ranked by significance score (0-100), combining price change (40%), volume ratio (40%), and market cap (20%):
```
================================================================================
MARKET MOVERS Updated: 2025-01-14 15:30:00 # 2025 timestamp
================================================================================
TOP GAINERS (24h)
--------------------------------------------------------------------------------
Rank Symbol Price Change Vol Ratio Market Cap Score
--------------------------------------------------------------------------------
1 XYZ $1.234 +45.67% 5.2x $123.4M 89.3
2 ABC $0.567 +32.10% 3.8x $45.6M 76.5
3 DEF $2.890 +28.45% 2.9x $234.5M 71.2
--------------------------------------------------------------------------------
TOP LOSERS (24h)
--------------------------------------------------------------------------------
Rank Symbol Price Change Vol Ratio Market Cap Score
--------------------------------------------------------------------------------
1 GHI $3.456 -28.90% 4.1x $89.1M 72.1
2 JKL $0.123 -22.34% 2.5x $12.3M 58.9
--------------------------------------------------------------------------------
Summary: 42 movers found | Scanned: 1000 assets # 1000 assets in scan universe
================================================================================
```
## Error Handling
| Error | Cause | Solution |
|-------|-------|----------|
| `Dependency not found` | tracking-crypto-prices unavailable | Install market-price-tracker plugin |
| `No movers found` | Thresholds too strict | Relax thresholds with lower values |
| `Rate limit exceeded` | Too many API calls | Wait or use cached data |
| `Partial results` | Some assets unavailable | Normal, proceed with available data |
See `${CLAUDE_SKILL_DIR}/references/errors.md` for comprehensive error handling.
## Examples
Common scanning patterns for different market analysis scenarios:
```bash
# Daily scan - top 20 gainers/losers
python ${CLAUDE_SKILL_DIR}/scripts/scanner.py --timeframe 24h --top 20
# Volume spike hunt (5x+ volume, $1M+ daily volume)
python ${CLAUDE_SKILL_DIR}/scripts/scanner.py --volume-spike 5 --min-volume 1000000 # 1000000 = $1M min volume
# DeFi movers exported to CSV
python ${CLAUDE_SKILL_DIR}/scripts/scanner.py --category defi --format csv --output defi_movers.csv
# High-cap gainers only (>$1B market cap)
python ${CLAUDE_SKILL_DIR}/scripts/scanner.py --min-cap 1000000000 --gainers-only --top 10 # 1000000000 = $1B cap
```
## Resources
- `${CLAUDE_SKILL_DIR}/references/implementation.md` - Configuration, presets, JSON format, scoring details
- `${CLAUDE_SKILL_DIR}/references/errors.md` - Comprehensive error handling
- `${CLAUDE_SKILL_DIR}/references/examples.md` - Detailed usage examples
- Depends on: tracking-crypto-prices skill
- CoinGecko API: https://www.coingecko.com/en/api
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