| name | stockbee-momentum-burst-screener |
| description | Screen US stocks for Stockbee-style short-term Momentum Burst setups using 4% breakout, dollar breakout, range expansion, volume expansion, prior range contraction, close-location, failure filters, and risk-distance scoring. Use when the user asks for Stockbee, Pradeep Bonde, momentum burst, 4% breakout, range expansion, dollar breakout, short-term swing momentum candidates, or 3-5 day burst setup review. |
Stockbee Momentum Burst Screener
Screen US equities for Stockbee-style short-term Momentum Burst candidates. The skill is a candidate-generation and setup-quality workflow, not a signal service or an auto-execution system.
When to Use
- User asks for Stockbee / Pradeep Bonde style Momentum Burst screening
- User wants 4% breakout, dollar breakout, or range expansion candidates
- User asks for short-term 3-5 day swing momentum setups
- User wants to review whether a daily breakout has A/B/C setup quality
- User provides a symbol list, universe file, or historical OHLCV JSON for screening
- User wants candidate outputs to feed into
technical-analyst, position-sizer, or trader-memory-core
Prerequisites
Workflow
Step 1: Choose Input Mode
Use one of three modes:
Mode A: FMP universe scan
python3 skills/stockbee-momentum-burst-screener/scripts/screen_momentum_burst.py \
--fmp-universe \
--max-symbols 300 \
--output-dir reports/
Mode B: Explicit symbols
python3 skills/stockbee-momentum-burst-screener/scripts/screen_momentum_burst.py \
--symbols NVDA SMCI PLTR TSLA \
--output-dir reports/
Mode C: Offline OHLCV JSON
python3 skills/stockbee-momentum-burst-screener/scripts/screen_momentum_burst.py \
--prices-json data/daily_ohlcv.json \
--output-dir reports/
Step 2: Run the Screening Pass
The script detects these trigger families:
- 4% Breakout:
close / previous_close >= 1.04, volume above previous day, and volume above the liquidity floor
- Dollar Breakout:
close - open >= 0.90, volume above the liquidity floor
- Range Expansion: current daily range exceeds the prior three daily ranges while the prior day was not already extended
It then scores setup quality using:
- Trigger strength
- Volume expansion
- Prior base / range contraction quality
- Close location near the high of day
- Risk distance to the trigger-day low
- Failure filters such as prior 3-day run-up or recent 4% breakdown
- Market gate alignment
Step 3: Review Output
Read the generated JSON and Markdown reports. For each candidate, present:
- Trigger type and all matched trigger tags
- Day gain, dollar gain, volume ratio, and close-location percentage
- Prior base length and base width
- Entry reference, stop reference, and risk percentage to stop
- Setup score, rating, state, and reject reasons
- Suggested downstream action
Step 4: Send Survivors to Trade Planning
Use the output conservatively:
- A / A- candidates: send to
technical-analyst for manual chart validation, then position-sizer
- B candidates: watchlist or smaller-risk review only
- Watch-only candidates: keep in model book; do not plan a trade unless chart review upgrades the setup
- Rejected candidates: retain for post-analysis, not for execution
Output
stockbee_momentum_burst_YYYY-MM-DD_HHMMSS.json - Structured candidate list, metadata, thresholds, score components, and rejects
stockbee_momentum_burst_YYYY-MM-DD_HHMMSS.md - Human-readable report grouped by rating/state
Resources
references/momentum_burst_methodology.md - Stockbee-style method summary and implementation boundaries
references/scoring_system.md - Component weights, state thresholds, and failure filters
references/entry_exit_rules.md - Entry reference, stop, sizing handoff, and exit template