Hands-On AI Trading with Python, QuantConnect and AWS

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Author :
Publisher : Wiley
ISBN 13 : 9781394268436
Total Pages : 0 pages
Book Rating : 4.2/5 (684 download)

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Book Synopsis Hands-On AI Trading with Python, QuantConnect and AWS by : Jiri Pik

Download or read book Hands-On AI Trading with Python, QuantConnect and AWS written by Jiri Pik and published by Wiley. This book was released on 2025-01-29 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt: Master the art of AI-driven algorithmic trading strategies through hands-on examples, in-depth insights, and step-by-step guidance Hands-On AI Trading with Python, QuantConnect, and AWS explores real-world applications of AI technologies in algorithmic trading. It provides practical examples with complete code, allowing readers to understand and expand their AI toolbelt. Unlike other books, this one focuses on designing actual trading strategies rather than setting up backtesting infrastructure. It utilizes QuantConnect, providing access to key market data from Algoseek and others. Examples are available on the book's GitHub repository, written in Python, and include performance tearsheets or research Jupyter notebooks. The book starts with an overview of financial trading and QuantConnect's platform, organized by AI technology used: Alpha by Regression: Examples include constructing portfolios with regression models, predicting dividend yields, and safeguarding against market volatility using machine learning packages like SKLearn and MLFinLab. Alpha by PCA: Use principal component analysis to reduce model features, identify pairs for trading, and run statistical arbitrage with packages like LightGBM. Alpha by Hidden Markov Models: Predict market volatility regimes and allocate funds accordingly. Alpha by Gaussian Naive Bayes: Predict daily returns of tech stocks using classifiers. Alpha by Support Vector Machine Regression: Forecast Forex pairs' future prices using Support Vector Machines and wavelets. Alpha by Essential Neural Networks: Predict trading day momentum or reversion risk using TensorFlow and temporal CNNs. Alpha by GenAI for Trading: Apply large language models (LLMs) for stock research analysis, including prompt engineering and building RAG applications. LLM Real-Trading: Perform sentiment analysis on real-time news feeds and train time-series forecasting models for portfolio optimization. Better Hedging by Reinforcement Learning and AI: Implement reinforcement learning models for hedging options and derivatives with PyTorch. AI for Risk Management and Optimization: Use corrective AI and conditional portfolio optimization techniques for risk management and capital allocation. Written by domain experts, including Jiri Pik, Ernest Chan, Philip Sun, Vivek Singh, and Jared Broad, this book is essential for hedge fund professionals, traders, asset managers, and finance students. Integrate AI into your next algorithmic trading strategy with Hands-On AI Trading with Python, QuantConnect, and AWS.