Reactive Publishing
Portfolio construction is no longer a static exercise. In an era of regime shifts, liquidity shocks, and nonlinear market behavior, traditional allocation models break down. The future belongs to adaptive engines, systems that learn, rebalance, and optimize dynamically.
Portfolio Optimization Engines with AI is a comprehensive guide to building next-generation allocation frameworks using machine learning, statistical modeling, and advanced optimization techniques. Designed for quants, systematic traders, and portfolio architects, this book shows you how to engineer intelligent allocation systems that outperform conventional methods.
Inside, you’ll learn how to:
Build AI-driven allocators using supervised, unsupervised, and reinforcement learning
Design risk models that capture volatility clusters, tail events, and correlation breakdowns
Implement classical, modern, and post-modern optimization frameworks:
Mean-variance
Black-Litterman
Hierarchical Risk Parity
Entropy-based allocators
Shrinkage and Bayesian models
Construct multi-asset portfolios built on equities, options, futures, and crypto
Build stress-testing engines for inflation shocks, volatility expansions, and liquidity crises
Evaluate durability using probabilistic scenario analysis and walk-forward testing
Deploy live, self-adjusting allocation engines with strict risk controls and override logic
Each chapter blends deep theory with executable models, real-world examples, and practical engineering guidance. The result is a definitive playbook for designing allocation systems that think, adapt, and evolve with the market.
If your goal is to build portfolios that are robust, intelligent, and structurally superior to traditional models, this book gives you the architecture to do it.
This is portfolio optimization for the AI era.
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Da: Best Price, Torrance, CA, U.S.A.
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