Reinforcement Learning for Trading: Build Intelligent Agents with Python and AI – A Comprehensive Guide for 2025 by James Preston, Reactive Publishing, Alice Schwartz
English | April 14, 2025 | ISBN: N/A | ASIN: B0F51C5ZPK | 512 pages | EPUB | 0.73 Mb
English | April 14, 2025 | ISBN: N/A | ASIN: B0F51C5ZPK | 512 pages | EPUB | 0.73 Mb
Reactive Publishing
Step beyond traditional algorithmic trading—into the realm of true machine intelligence.
In this groundbreaking guide, James Preston empowers you to build trading agents that learn, adapt, and thrive in dynamic markets using Reinforcement Learning (RL). Whether you're a quant, data scientist, or ambitious retail trader, this book gives you the tools to implement cutting-edge AI that thinks like a trader—and evolves like one.Inside, you’ll master:
- The foundations of RL: Q-learning, Policy Gradients, and Actor-Critic methods
- Designing trading environments with OpenAI Gym-style simulations
- Building and training deep RL agents using TensorFlow & PyTorch
- Real-world market applications: position sizing, momentum strategies, and risk-aware decision-making
- Backtesting RL agents vs. traditional algos for performance benchmarks
- Online learning loops that adapt to changing volatility and macro regimes
Whether you're developing institutional-grade systems or pioneering the frontier of retail automation—this book is your launchpad.
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