pead-screener

Screen post-earnings gap-up stocks for PEAD (Post-Earnings Announcement Drift) patterns. Analyzes weekly candle formation to detect red candle pullbacks and breakout signals. Supports two input modes - FMP earnings calendar (Mode A) or earnings-trade-analyzer JSON output (Mode B). Use when user asks about PEAD screening, post-earnings drift, earnings gap follow-through, red candle breakout patterns, or weekly earnings momentum setups.

Skill file

Preview skill file
---
name: pead-screener
description: Screen post-earnings gap-up stocks for PEAD (Post-Earnings Announcement Drift) patterns. Analyzes weekly candle formation to detect red candle pullbacks and breakout signals. Supports two input modes - FMP earnings calendar (Mode A) or earnings-trade-analyzer JSON output (Mode B). Use when user asks about PEAD screening, post-earnings drift, earnings gap follow-through, red candle breakout patterns, or weekly earnings momentum setups.
---

# PEAD Screener - Post-Earnings Announcement Drift

Screen post-earnings gap-up stocks for PEAD (Post-Earnings Announcement Drift) patterns using weekly candle analysis to detect red candle pullbacks and breakout signals.

## When to Use

- User asks for PEAD screening or post-earnings drift analysis
- User wants to find earnings gap-up stocks with follow-through potential
- User requests red candle breakout patterns after earnings
- User asks for weekly earnings momentum setups
- User provides earnings-trade-analyzer JSON output for further screening

## Prerequisites

- FMP API key (set `FMP_API_KEY` environment variable or pass `--api-key`)
  ```bash
  export FMP_API_KEY=your_api_key_here
  ```
- Free tier (250 calls/day) is sufficient for default screening
- For Mode B: earnings-trade-analyzer JSON output file with schema_version "1.0"

## Workflow

### Step 1: Prepare and Execute Screening

Run the PEAD screener script in one of two modes:

**Mode A (FMP earnings calendar):**
```bash
# Default: last 14 days of earnings, 5-week monitoring window
python3 skills/pead-screener/scripts/screen_pead.py --output-dir reports/

# Custom parameters
python3 skills/pead-screener/scripts/screen_pead.py \
  --lookback-days 21 \
  --watch-weeks 6 \
  --min-gap 5.0 \
  --min-market-cap 1000000000 \
  --output-dir reports/
```

**Mode B (earnings-trade-analyzer JSON input):**
```bash
# From earnings-trade-analyzer output
python3 skills/pead-screener/scripts/screen_pead.py \
  --candidates-json reports/earnings_trade_analyzer_YYYY-MM-DD_HHMMSS.json \
  --min-grade B \
  --output-dir reports/
```

### Step 2: Review Results

1. Read the generated JSON and Markdown reports
2. Load `references/pead_strategy.md` for PEAD theory and pattern context
3. Load `references/entry_exit_rules.md` for trade management rules

### Step 3: Present Analysis

For each candidate, present:
- Stage classification (MONITORING, SIGNAL_READY, BREAKOUT, EXPIRED)
- Weekly candle pattern details (red candle location, breakout status)
- Composite score and rating
- Trade setup: entry, stop-loss, target, risk/reward ratio
- Liquidity metrics (ADV20, average volume)

### Step 4: Provide Actionable Guidance

Based on stages and ratings:
- **BREAKOUT + Strong Setup (85+):** High-conviction PEAD trade, full position size
- **BREAKOUT + Good Setup (70-84):** Solid PEAD setup, standard position size
- **SIGNAL_READY:** Red candle formed, set alert for breakout above red candle high
- **MONITORING:** Post-earnings, no red candle yet, add to watchlist
- **EXPIRED:** Beyond monitoring window, remove from watchlist

## Output

- `pead_screener_YYYY-MM-DD_HHMMSS.json` - Structured results with stage classification
- `pead_screener_YYYY-MM-DD_HHMMSS.md` - Human-readable report grouped by stage

## Resources

- `references/pead_strategy.md` - PEAD theory and weekly candle approach
- `references/entry_exit_rules.md` - Entry, exit, and position sizing rules

Source

Creator's repository · tradermonty/claude-trading-skills

View on GitHub

Security

Security checks in progress
Results will appear here once audits complete
What this skill can do
Reads your filesConnects to the internetRuns code on your machine
Checked by 3 independent security firms
Does it try to trick the AI?Not yet checkedPending · Gen Agent Trust Hub
Does it sneak in hidden code?Not yet checkedPending · Socket
Does it have known bugs?Not yet checkedPending · Snyk