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BrainPay – AI-Powered Blockchain Fraud Detection

BrainPay is a next-generation, AI-driven security platform designed to protect digital assets across multiple blockchains in real-time. Our system delivers advanced fraud detection, risk analysis, alerting, and visual analytics – all at scale.

🚀 Features

  • Real-Time Blockchain Monitoring (BTC, ETH, soon Solana & Polygon)
  • AI-Based Risk Scoring (XGBoost + LSTM)
  • Mempool & Transaction Surveillance
  • Discord/Telegram Alert Integration
  • Webhook-Driven Notification Engine
  • Historical Fraud Database Logging
  • Live Grafana Dashboards via TimescaleDB
  • Continuous AI Model Retraining

🧠 Architecture

  • Flask API – Risk analysis & prediction engine
  • Node.js – Mempool monitoring and alert triggers
  • PostgreSQL + TimescaleDB – Log storage & fraud training data
  • GitHub Actions – CI/CD for model updates and alert workflows

🔐 Security Highlights

  • End-to-End TLS Encryption
  • Rate Limiting & API Tokens
  • GDPR/CCPA Compliant Data Handling
  • Chainalysis & CipherTrace Integration

⚙️ Getting Started

  1. Clone the repo: git clone https://github.com/your-org/brainpay.git

  2. Install Python dependencies: pip install -r requirements.txt

  3. Set environment variables in .env

  4. Start Flask API: flask run

  5. Launch monitoring client: node monitor.js

📊 Dashboards

Live Grafana Dashboards:
brainpay.live/analytics

🌍 Website Links

📌 Roadmap

  • AI-Based Fraud Model
  • Webhooks for Alerting
  • Dashboard Monitoring
  • Solana & BNB Chain Support
  • Threat Intel Aggregator
  • Community Dashboard & APIs

🤝 Contributing

Contributions are welcome! Please open issues and submit PRs.

🛡️ License

MIT © BrainPay Inc.


# BrainPay – AI-Powered Blockchain Fraud Detection

BrainPay is a next-generation, AI-driven security platform designed to protect digital assets across multiple blockchains in real-time. Our system delivers advanced fraud detection, risk analysis, alerting, and visual analytics – all at scale.

## 🚀 Features

- **Real-Time Blockchain Monitoring** (BTC, ETH, soon Solana & Polygon)
- **AI-Based Risk Scoring** (XGBoost + LSTM)
- **Mempool & Transaction Surveillance**
- **Discord/Telegram Alert Integration**
- **Webhook-Driven Notification Engine**
- **Historical Fraud Database Logging**
- **Live Grafana Dashboards via TimescaleDB**
- **Continuous AI Model Retraining**

## 🧠 Architecture

- **Flask API** – Risk analysis & prediction engine
- **Node.js** – Mempool monitoring and alert triggers
- **PostgreSQL + TimescaleDB** – Log storage & fraud training data
- **GitHub Actions** – CI/CD for model updates and alert workflows

## 🔐 Security Highlights

- End-to-End TLS Encryption
- Rate Limiting & API Tokens
- GDPR/CCPA Compliant Data Handling
- Chainalysis & CipherTrace Integration

## ⚙️ Getting Started

1. Clone the repo:  
   `git clone https://github.com/your-org/brainpay.git`

2. Install Python dependencies:  
   `pip install -r requirements.txt`

3. Set environment variables in `.env`

4. Start Flask API:  
   `flask run`

5. Launch monitoring client:  
   `node monitor.js`

## 📊 Dashboards

Live Grafana Dashboards:  
[brainpay.live/analytics](https://brainpay.live/analytics)

## 🌍 Website Links

- [Main Website](https://brainpay.com)
- [Live App](https://brainpay-firebase-ai-app.web.app)
- [GitBook Docs](https://hobbit-2.gitbook.io/brainpay/)
- [GitHub Repo](https://github.com/Horlabrainmoore/brainpay)
- [Telegram](https://t.me/brainpay) | [Discord](https://discord.gg/brainpay)

## 📌 Roadmap

- [x] AI-Based Fraud Model
- [x] Webhooks for Alerting
- [x] Dashboard Monitoring
- [ ] Solana & BNB Chain Support
- [ ] Threat Intel Aggregator
- [ ] Community Dashboard & APIs

## 🤝 Contributing

Contributions are welcome! Please open issues and submit PRs.

## 🛡️ License

MIT © BrainPay Inc.

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@feder-cr feder-cr closed this May 12, 2025
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