Build AI-powered trading systems with automatic feature generation, via a declarative YAML config schema, and 85+ built-in features.
--- ## Main Features ### YAML Schema (FGBLC) configuration AiDataGenByLeo uses a declarative YAML schema (**FGBLC** — *Feature Generator By Leo Config*) to define, at a single glance, which features are calculated, in what order, and how they map onto the output vector or matrix — all without touching a single line of code. #### YAML Example ```yaml name: Generador de features config: cols: 2 output: type: AIDATALEO_GEN_VECTOR contexts: - mode: custom idx: [1, 2] data: - class: News_GetValue prefix: ~ params: { event_code: "core-cpi-mm", country_code: US} - class: News_HasEventToday prefix: ~ params: { event_code: "core-cpi-mm", country_code: US} ``` > A Schema JSON file has been provided so you can validate your own YAML, or you can insert it into your code editor: > [Json Schema](./GenericData/ShemaJson/Schema.json) ### Automatic Data Generation ```mql5 // Parse yaml from TSN Ecositem YamlParserByLeo TSN::CYamlParser yml; yml.Assing(my_yaml_src); yml.CorrectPadding(); yml.Parse(); // Initialize feature generator m_generator.Init(yml.GetRoot()); // Generate feature vector on each bar m_generator.ObtenerDataEnVector(vector, curr_time); ``` ### Python Training Pipeline ```python # Load generated data df = pd.read_csv('data.csv') # Train classifier model = train_classifier(df, selected_features) # Export to ONNX export_model(model, 'model.onnx') ``` ### Real-Time AI Predictions ```mql5 // In your EA if(m_predictor.CheckOpenOrder(trade_config)) { // AI approved - execute trade OpenPosition(type, entry, sl, tp); } ``` ### EasySb - ICT EA with AI - **Production-Ready EA:** Complete trading system with AI integration, ONNX model included, and SetFile: https://forge.mql5.io/nique_372/EasySbAi --- ## Repository Structure ``` AiDataGenByLeo/ ├── GenericData/ # Classifier, DSL Parser, Feature Factory ├── Py/ # Python script for model training └── Images/ # Repo banner ``` --- ## License **[Read Full License](./LICENSE)** By downloading or using this repository, you accept the license. --- ## Requirements - For python see the `requirements.txt` - For project see the `dependencies.json` --- ## Docs - YAML Schema Estructure: [Parser README](https://forge.mql5.io/nique_372/AiDataGenByLeo/src/branch/main/GenericData/ShemaJson/README.md). - Features docs: [AiDataGenByLeoFeaturesDocs](https://forge.mql5.io/nique_372/AiDataGenByLeoFeaturesDocs). --- ## Installation ```bash cd "C:\Users\YOUR_USER\AppData\Roaming\MetaQuotes\Terminal\YOUR_ID\MQL5\Shared Projects" tsndep install "https://forge.mql5.io/nique_372/AiDataGenByLeo.git" ``` - Requires the `tsndep` package — available on [PyPI](https://pypi.org/project/tsndep). It automatically downloads and installs all declared dependencies. - If any dependency is private or paid, the install will fail for that package — check [dependencies.json](./dependencies.json) and contact me for access. --- ## Quick Start ```bash # 1. Generate training data # Run EA in training mode # Data will be saved to: TerminalPath/Files/Common/EasySbAi/data.csv # 2. Train model # Execute the Python script # 3 files will be generated in TerminalPath/Files/Common/EasySbAi/ # Copy the ONNX model and scaler file to: # AiDataGenByLeo/Examples/EAs/TTrades/EasySb/res/ # 3. Run the EA # Execute Ea.mq5 with the training parameter set to false ``` --- ## Disclaimer **Trading involves substantial risk of loss.** - This software is a technical tool, not financial advice - Past performance does not guarantee future results - You are solely responsible for your trading decisions - Always test thoroughly before deploying with real capital - Use appropriate risk management in all operations The authors assume no liability for trading losses, system failures, or any damages arising from the use of this software. --- ## Contact and Support - **Platform:** [MQL5 Community](https://www.mql5.com/es/users/nique_372) - **Profile:** https://www.mql5.com/es/users/nique_372/news - **Issues:** For bug reports or questions --- **Copyright © 2026 Nique-Leo. All rights reserved.**