Stockbee Episodic Pivot Analyzer
Classify Day 1 Episodic Pivot (EP) candidates using both catalyst quality and price/volume confirmation. The skill is a candidate-quality analyzer, not an execution engine.
When to Use
- The user asks for Pradeep Bonde / Stockbee style EP candidates
- The user provides earnings, guidance, M&A, FDA, analyst, contract, product, short-squeeze, or theme/news events
- The user wants to separate
ACTIONABLE_DAY1 candidates from DELAYED_EP_WATCH names
- The user wants to hand strong earnings/guidance EPs into
pead-screener
- The user wants to combine catalyst analysis with
stockbee-momentum-burst-screener price/volume output
Prerequisites
- Python 3.10+
- Optional: FMP API key for OHLCV/profile enrichment
- One of:
- Catalyst/events JSON
earnings-trade-analyzer JSON output
- Catalyst JSON plus
stockbee-momentum-burst-screener JSON enrichment
- This skill does not fetch or discover news by itself. If the catalyst is not supplied, first gather the event/news context using the user's preferred news or research process.
Workflow
Step 1: Prepare Candidate Inputs
Use one or more of these input modes.
Mode A — Catalyst/event JSON:
{
"events": [
{
"symbol": "ABC",
"event_date": "2026-04-25",
"catalyst_type": "guidance_raise",
"headline": "ABC raises FY guidance after record demand",
"summary": "Management raised revenue and EPS guidance."
}
]
}
Mode B — Earnings pipeline:
Use the JSON produced by earnings-trade-analyzer.
Mode C — Price/volume enrichment:
Pass a stockbee-momentum-burst-screener JSON report to reuse day-gain, volume, close-location, and risk-distance fields.
Step 2: Run the Analyzer
# Catalyst JSON + offline OHLCV
python3 skills/stockbee-episodic-pivot-analyzer/scripts/analyze_ep.py \
--events-json data/catalysts.json \
--prices-json data/daily_ohlcv.json \
--output-dir reports/
# Earnings pipeline input
python3 skills/stockbee-episodic-pivot-analyzer/scripts/analyze_ep.py \
--earnings-json reports/earnings_trade_analyzer_YYYY-MM-DD_HHMMSS.json \
--output-dir reports/
# Catalyst JSON + Stockbee momentum enrichment
python3 skills/stockbee-episodic-pivot-analyzer/scripts/analyze_ep.py \
--events-json data/catalysts.json \
--momentum-json reports/stockbee_momentum_burst_YYYY-MM-DD_HHMMSS.json \
--output-dir reports/
Optional FMP enrichment:
export FMP_API_KEY=your_key
python3 skills/stockbee-episodic-pivot-analyzer/scripts/analyze_ep.py \
--events-json data/catalysts.json \
--max-api-calls 200 \
--output-dir reports/
Step 3: Review the Output
For each candidate, present:
state: ACTIONABLE_DAY1, DAY1_WATCH, DELAYED_EP_WATCH, CATALYST_WATCH, or REJECT
ep_type: EARNINGS_EP, GUIDANCE_EP, FDA_EP, M_AND_A_EP, STORY_EP, etc.
- Catalyst quality score and reasons
- Price/range expansion, volume shock, and close-location quality
- Risk to EP-day low
pead_handoff and delayed_ep_watch flags
Step 4: Handoff Rules
ACTIONABLE_DAY1: Send to technical-analyst and position-sizer before any trade decision.
DAY1_WATCH: Keep on the intraday/next-day watchlist; require chart confirmation.
DELAYED_EP_WATCH: Do not chase Day 1; monitor for a controlled pullback or new range.
CATALYST_WATCH: Catalyst may be important, but price/volume confirmation is not yet sufficient.
REJECT: Do not trade from this candidate source.
- Earnings/guidance EPs with
pead_handoff=true can be sent to pead-screener for weekly red-candle / delayed reaction monitoring.
Output
stockbee_episodic_pivot_YYYY-MM-DD_HHMMSS.json — structured EP scoring report
stockbee_episodic_pivot_YYYY-MM-DD_HHMMSS.md — human-readable candidate report
Resources
references/ep_methodology.md — Stockbee EP interpretation and setup taxonomy
references/catalyst_quality.md — catalyst classification and quality scoring
references/handoff_rules.md — downstream workflow handoffs and review rules