stockbee-setup-fluency-trainer
Build a Stockbee-style setup model book from momentum-burst screener candidates, then update 3-day and 5-day forward outcomes with MFE/MAE, stop-hit status, outcome tags, and cohort statistics. Use when the user wants to study Stockbee Momentum Burst examples, track failed candidates, build setup fluency, review A/B setup quality, or convert screener outputs into a learning loop rather than immediate trade signals.
How do I install this agent skill?
npx skills add https://github.com/tradermonty/claude-trading-skills --skill stockbee-setup-fluency-trainerIs this agent skill safe to install?
- Gen Agent Trust Hubpass
The skill is a local analytical tool for stock traders to track the performance of momentum-burst setups. It provides functionality to ingest screener reports, update outcomes using historical price data (either locally or via a well-known financial API), and summarize results. No security risks were identified.
- Socketpass
No alerts
- Snykpass
Risk: LOW · No issues
What does this agent skill do?
Stockbee Setup Fluency Trainer
Build and maintain a model book for Stockbee-style Momentum Burst setups. This skill turns daily screener candidates into structured study records, updates them after the 3-day and 5-day windows mature, and summarizes which setup features are working or failing.
When to Use
- User wants to study Stockbee Momentum Burst setups systematically
- User asks to build a model book from
stockbee-momentum-burst-screeneroutput - User wants to review failed candidates, missed trades, or A/B setup quality
- User wants 3-day / 5-day forward returns, MFE, MAE, and stop-hit outcomes
- User wants to improve setup recognition before increasing position size
- User asks which Stockbee tags should be promoted, downgraded, or filtered
Prerequisites
- Python 3.10+
- A
stockbee-momentum-burst-screenerJSON report, or compatible candidate JSON - Optional: FMP API key for outcome updates when offline OHLCV JSON is not supplied
- Recommended local state path:
state/stockbee/model_book.jsonl
Workflow
Step 1: Ingest Momentum Burst Candidates
Run after the Stockbee Momentum Burst screener has produced a JSON report.
python3 skills/stockbee-setup-fluency-trainer/scripts/build_model_book.py ingest \
--screener-json reports/stockbee_momentum_burst_YYYY-MM-DD_HHMMSS.json \
--model-book state/stockbee/model_book.jsonl \
--output-dir reports/
Use --include-rejects when intentionally building a negative-example set. Otherwise rejected candidates are skipped.
Step 2: Update 3-Day and 5-Day Outcomes
Use FMP:
python3 skills/stockbee-setup-fluency-trainer/scripts/build_model_book.py update \
--model-book state/stockbee/model_book.jsonl \
--horizons 3,5 \
--output-dir reports/
Use offline OHLCV JSON:
python3 skills/stockbee-setup-fluency-trainer/scripts/build_model_book.py update \
--model-book state/stockbee/model_book.jsonl \
--prices-json data/daily_ohlcv.json \
--horizons 3,5 \
--output-dir reports/
The update step records:
- Forward close return for each horizon
- MFE and MAE over each horizon
- Stop-hit status and first stop-hit date
- Outcome tags such as
STRONG_WINNER,WORKED,FAILED_STOP,FAILED_FADE,CHOPPY_FAILURE, orNEUTRAL
Step 3: Summarize Cohorts
python3 skills/stockbee-setup-fluency-trainer/scripts/build_model_book.py summarize \
--model-book state/stockbee/model_book.jsonl \
--group-by rating,primary_trigger,setup_tags \
--min-sample 5 \
--output-dir reports/
Review the generated Markdown and JSON reports. Treat rule_candidates as evidence prompts, not automatic rule changes.
Step 4: Convert Evidence Into Practice
For cohorts with enough examples:
- Promote tags with high win rate, positive 5-day expectancy, and acceptable average MAE
- Downgrade or filter tags with weak 5-day expectancy, frequent stop hits, or repeated fade failures
- Inspect representative charts manually before changing trade rules
- Log accepted lessons in
trader-memory-coreor the monthly review process
Model Book Fields
Each JSONL record includes:
record_id,symbol,setup_date,primary_triggerrating,setup_score,setup_tagsentry_reference,stop_reference,risk_pct_to_stophuman_label,human_decision,human_notesoutcomes.3dandoutcomes.5doverall_outcome,matured,raw_candidate
Interpretation Rules
STRONG_WINNER: 5-day close return >= 8% or MFE >= 12%, with no stop hitWORKED: 5-day close return >= 4% or MFE >= 6%, with no stop hitFAILED_STOP: Stop was touched within the horizonFAILED_FADE: Forward return <= -2% without a recorded stop hitCHOPPY_FAILURE: Adverse excursion was large and forward progress was poorNEUTRAL: No decisive follow-through or failurePENDING: Not enough future bars yet
Output
state/stockbee/model_book.jsonl- Durable setup model bookstockbee_setup_fluency_ingest_YYYY-MM-DD_HHMMSS.json/mdstockbee_setup_fluency_update_YYYY-MM-DD_HHMMSS.json/mdstockbee_setup_fluency_summary_YYYY-MM-DD_HHMMSS.json/md
Resources
references/model_book_schema.md- JSONL schema and lifecycle statesreferences/outcome_tags.md- Outcome classification and tag definitionsreferences/review_workflow.md- Daily, 3-day, 5-day, and monthly review routine
How can the creator link this skill?
Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.
<a href="https://skillzs.dev/skills/tradermonty/claude-trading-skills/stockbee-setup-fluency-trainer">View stockbee-setup-fluency-trainer on skillZs</a>