NEW FILES: ========== 📄 CUSTOMIZATION_CHECKLIST.md - Complete list of everything that needs customization - Organized by priority: Critical, Important, Optional - Covers .env, Ansible, Gitea secrets, email, etc. - Quick action checklist for deployment 📄 ANSIBLE_HANDOFF.md - Guide for integrating POTE with existing Ansible system - Explains what Ansible needs to know - Variable reference and secrets management - Multi-environment deployment strategy - Example playbook and testing instructions 📄 MOVE_ANSIBLE_TO_SEPARATE_REPO.md - Explains why ansible/ should be in infrastructure repo - Step-by-step migration guide - Final directory structure for both repos - Benefits and workflow after migration KEY INSIGHT: ============ The ansible/ directory doesn't belong in the POTE app repo because: - Ansible runs BEFORE the app exists (creates container, deploys app) - Creates circular dependency (Ansible clones repo that contains Ansible) - Should live in centralized infrastructure repository NEXT STEPS: =========== 1. Review CUSTOMIZATION_CHECKLIST.md for deployment config 2. Copy ansible/ to infrastructure repo 3. Remove ansible/ from POTE repo (keep handoff docs) 4. Deploy via centralized Ansible system
POTE – Public Officials Trading Explorer
Research-only tool for tracking and analyzing public stock trades by government officials.
⚠️ Important: This project is for personal research and transparency analysis only. It is NOT for investment advice or live trading.
What is this?
POTE tracks stock trading activity of government officials (starting with U.S. Congress) using lawfully available public data sources. It computes research metrics, descriptive signals, and risk/ethics flags to help understand trading patterns.
Key constraints
- Public data only: House Stock Watcher (free!), yfinance (free!), QuiverQuant/FMP (optional)
- Research framing: All outputs are descriptive analytics, not trading recommendations
- No inside information claims: We use public disclosures that may be delayed or incomplete
Current Status
✅ PR1 Complete: Project scaffold, DB models, price loader
✅ PR2 Complete: Congressional trade ingestion (House Stock Watcher)
✅ PR3 Complete: Security enrichment + deployment infrastructure
✅ PR4 Complete: Phase 2 analytics - returns, benchmarks, performance metrics
45+ passing tests, 88%+ coverage
Quick start
🚀 Already deployed? See QUICKSTART.md for full usage guide!
📦 Deploying? See PROXMOX_QUICKSTART.md for Proxmox LXC deployment (recommended).
📧 Want automated reports? See AUTOMATION_QUICKSTART.md for email reporting setup!
Local Development
# Install
git clone <your-repo>
cd pote
make install
source venv/bin/activate
# Run migrations
make migrate
# Ingest sample data (offline, for testing)
python scripts/ingest_from_fixtures.py
# Enrich securities with company info
python scripts/enrich_securities.py
# With internet:
python scripts/fetch_congressional_trades.py
python scripts/fetch_sample_prices.py
# Run tests
make test
# Lint & format
make lint format
Production Deployment
# Proxmox LXC (Recommended - 5 minutes)
bash scripts/proxmox_setup.sh
# Docker
docker-compose up -d
Tech stack
- Language: Python 3.10+
- Database: PostgreSQL or SQLite (dev)
- Data: House Stock Watcher (free!), yfinance (free!), QuiverQuant/FMP (optional)
- Libraries: SQLAlchemy, Alembic, pandas, numpy, httpx, yfinance, scikit-learn
- Testing: pytest (28 tests, 87%+ coverage)
Documentation
Getting Started:
README.md– This fileQUICKSTART.md– ⭐ How to use your deployed POTE instanceSTATUS.md– Current project statusFREE_TESTING_QUICKSTART.md– Test for $0OFFLINE_DEMO.md– Works without internet!
Deployment:
PROXMOX_QUICKSTART.md– ⭐ Proxmox quick deployment (5 min)AUTOMATION_QUICKSTART.md– ⭐ Automated reporting setup (5 min)docs/07_deployment.md– Full deployment guide (all platforms)docs/08_proxmox_deployment.md– Proxmox detailed guidedocs/12_automation_and_reporting.md– Automation & CI/CD guideDockerfile+docker-compose.yml– Docker setup
Technical:
docs/00_mvp.md– MVP roadmapdocs/01_architecture.md– Architecturedocs/02_data_model.md– Database schemadocs/03_data_sources.md– Data sourcesdocs/04_safety_ethics.md– Research-only guardrailsdocs/05_dev_setup.md– Dev conventionsdocs/06_free_testing_data.md– Testing strategies
PR Summaries:
docs/PR1_SUMMARY.md– Scaffold + price loaderdocs/PR2_SUMMARY.md– Congressional tradesdocs/PR3_SUMMARY.md– Enrichment + deploymentdocs/PR4_SUMMARY.md– ⭐ Analytics foundation (returns, benchmarks, metrics)
What's Working Now
- ✅ SQLAlchemy models for officials, securities, trades, prices
- ✅ Alembic migrations
- ✅ Price loader with yfinance (idempotent, upsert)
- ✅ Congressional trade ingestion from House Stock Watcher (FREE!)
- ✅ Security enrichment (company names, sectors, industries)
- ✅ ETL to populate officials & trades tables
- ✅ Docker + deployment infrastructure
- ✅ 93 passing tests with 88%+ coverage
- ✅ Linting (ruff + mypy) all green
- ✅ Works 100% offline with fixtures
- ✅ Real-time market monitoring & alert system
- ✅ Disclosure timing correlation engine
- ✅ Pattern detection & comparative analysis
- ✅ Automated email reporting (daily/weekly)
- ✅ CI/CD pipeline (GitHub/Gitea Actions)
What You Can Do Now
Analyze Performance
# Analyze specific official
python scripts/analyze_official.py "Nancy Pelosi" --window 90
# System-wide analysis
python scripts/calculate_all_returns.py
Market Monitoring
# Run market scan
python scripts/monitor_market.py --scan
# Analyze timing of recent disclosures
python scripts/analyze_disclosure_timing.py --recent 7
# Generate pattern report
python scripts/generate_pattern_report.py --days 365
Automated Reporting
# Set up daily/weekly email reports (5 minutes!)
./scripts/setup_cron.sh
# Send manual report
python scripts/send_daily_report.py --to your@email.com
Add More Data
# Manual entry
python scripts/add_custom_trades.py
# CSV import
python scripts/scrape_alternative_sources.py import trades.csv
System Architecture
POTE now includes a complete 3-phase monitoring system:
Phase 1: Real-Time Market Monitoring
- Tracks ~50 most-traded congressional stocks
- Detects unusual volume, price spikes, volatility
- Logs all alerts with timestamps and severity
Phase 2: Disclosure Correlation
- Matches trades with prior market alerts (30-45 day lookback)
- Calculates "timing advantage score" (0-100)
- Identifies suspicious timing patterns
Phase 3: Pattern Detection
- Ranks officials by consistent suspicious timing
- Analyzes by ticker, sector, and political party
- Generates comprehensive reports
Full Documentation: See MONITORING_SYSTEM_COMPLETE.md
Next Steps
- Signals: "follow_research", "avoid_risk", "watch" with confidence scores
- Clustering: group officials by trading behavior patterns
- API: FastAPI backend for queries
- Dashboard: React/Streamlit visualization
See docs/00_mvp.md for the full roadmap.
License: MIT (for research/educational use only)
Disclaimer: Not investment advice. Use public data only. No claims about inside information.