--- license: bsl-1.0 language: - en metrics: - accuracy --- --- # **Web3 Trade Specialist Model** ## Revolutionizing Crypto Trading with AI-Powered Predictions This repository soon has contains the code and documentation for the **Web3 Trade Specialist**, an AI-powered model designed to predict cryptocurrency market trends with recommendation scores ranging from **-10 (strong sell)** to **+10 (strong buy)**, with **0 indicating neutral market conditions**. ## WhitePaper 1. [WhitePaper Preview](https://pt.scribd.com/document/811362676/CloudQi-Innovating-Crypto-Trading-with-Artificial-Intelligence) --- ## **Table of Contents** 1. [Introduction](#introduction) 2. [Features](#features) 3. [Requirements](#requirements) 4. [Model Training](#model-training) 5. [Real-Time Execution](#real-time-execution) 6. [File Structure](#file-structure) 7. [Example Data](#example-data) 8. [Future Enhancements](#future-enhancements) 9. [Disclaimer](#disclaimer) --- ## **Introduction** The **Web3 Trade Specialist Model** leverages **Long Short-Term Memory (LSTM)** networks for time-series analysis of cryptocurrency data. It processes historical data to extract features, predict market trends, and provide actionable insights for traders. The real-time capabilities of this model enable near-instantaneous decision-making in dynamic markets. --- ## **Features** - **Predictive Recommendations**: Generates buy/sell/hold signals with scores ranging from -10 to +10. - **Historical Data Processing**: Aggregates and analyzes data such as prices, volumes, market caps, and liquidity. - **Real-Time Execution**: Processes live market data to make predictions. - **GPU Acceleration**: Utilizes GPU for faster model training and prediction. --- ## **Requirements** ### **Hardware** - GPU-enabled system for efficient training and execution. ### **Software** 1. Python (>= 3.8) 2. TensorFlow (>= 2.9) 3. Pandas, NumPy, Scikit-learn 4. Requests (for live data fetching) 5. Any CSV editor (for preparing historical data) Install dependencies using: ```bash pip install -r requirements.txt ``` --- ## **Model Training** ### **Steps to Train the Model** 1. **Prepare Historical Data**: Organize data with fields for `timestamp`, `price`, `volume`, `market_cap`, and `liquidity`. 2. **Create Indicators**: Use the training script to process data and generate features such as moving averages and targets. 3. **Train the Model**: Execute the training script to train an LSTM-based model with historical data. ### **Command** Run the training script: ```bash python train_model.py ``` - The trained model is saved as `web3_trade_specialist_v1.0.0.h5`. --- ## **Real-Time Execution** ### **Steps to Execute in Real-Time** 1. **Set API Credentials**: Configure the API endpoint (e.g., Binance) for live data. 2. **Run the Real-Time Script**: Continuously fetch live market data, preprocess it, and make predictions. ### **Command** Run the real-time script: ```bash python real_time_prediction.py ``` - The model provides real-time recommendations based on live market data. --- ## **File Structure** ``` root/ │ ├── train_model.py # Script for model training ├── real_time_prediction.py # Script for real-time execution ├── historical_data/ # Directory for historical data CSV files ├── web3_trade_specialist_v1.0.0.h5 # Trained model ├── requirements.txt # Dependencies list └── README.md # Documentation ``` --- ## **Example Data** Download a sample CSV file with simulated cryptocurrency data for training: [Download Simulated Crypto Data](sandbox:/mnt/data/simulated_crypto_data.csv) --- ## **Future Enhancements** 1. **Integration with Popular Trading Platforms**: Automate trade execution. 2. **Advanced Risk Management**: Implement dynamic stop-loss and risk assessment. 3. **Improved Accuracy**: Enhance predictive performance by integrating new data sources. 4. **User-Friendly API**: Develop an API for easier integration with trading systems. --- ## **Disclaimer** 1. The model's predictions are based on historical data and may not guarantee future performance. 2. Cryptocurrency trading carries significant financial risk. Use the model with caution and trade responsibly. ---