Description
This book is a practitioner’s blueprint for building production-grade ML trading systems from scratch. It goes far beyond basic return-sign classification tasks, which often fail in live markets, and delivers field-tested techniques used inside elite quant desks. It covers everything from the fundamentals of systematic trading and ML”s role in detecting patterns to data preparation, backtesting, and model lifecycle management using Python libraries. You will learn to implement supervised learning for advanced feature engineering and sophisticated ML models. You will also learn to use unsupervised learning for pnews and financial reports. Finally, you will be able to implement anomaly detection and association rules for comprehensive insights.attern detection, apply ultra-fast pattern matching to chartist strategies, and extract crucial trading signals from unstructured






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