"The AI Trading Edge: Finding Alpha with NLP and Alternative Data" In an era where the fastest edge is no longer just speed but information, "The AI Trading Edge" shows traders, quants, and data scientists how to turn unstructured text and alternative data into robust sources of alpha. Bridging the gap between cutting-edge NLP research and real-world trading desks, it offers a practical roadmap from raw financial news, web data, and sensor feeds to live, risk-managed strategies. Starting from quantitative and computational foundations, the book builds up through market structure, data engineering, and NLP techniques tailored to financial text. Readers learn to construct embeddings and transformer-based models, extract sentiment and events, and link entities to tradable instruments via knowledge graphs. These signals are then integrated into supervised and deep learning pipelines, rigorously validated with time-series cross-validation and bias-aware backtesting, and ultimately combined into portfolios that account for risk, capacity, and execution costs. The book assumes comfort with Python and basic statistics but is self-contained in its treatment of financial and machine learning concepts. Emphasizing compliance, governance, and production MLOps, it differentiates itself by treating alpha research as an end-to-end engineering discipline-helping readers not just prototype clever models, but deploy accountable, scalable AI trading systems.
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