Könyv Transformer Models and LLMs for Quantitative Trading Vincent Bisette

Transformer Models and LLMs for Quantitative Trading

Fine-Tuning for Market Sentiment, Prediction, and Automated Strategies with Python

Nyelv: Angol
Kötés: Puha kötésű
Elérhetőség: Várható készletfeltöltés
Küldés 08. 07. 2026
14 852 Ft
Reactive PublishingDiscover how Transformer models and Large Language Models (LLMs) are transforming...

Információk a könyvről

Nyelv
Angol
Kötés
Könyv - Puha kötésű
Kiadva
2026
oldal
566
EAN
9798185518403
Enbook ID
53202173
Súly
676
Méretek
152 x 229 x 36

Teljes leírás

Reactive Publishing

Discover how Transformer models and Large Language Models (LLMs) are transforming quantitative trading. This practical guide explores the application of modern AI techniques to financial markets, with a strong emphasis on implementation using Python.

You'll learn the fundamentals of Transformer architectures and how to fine-tune LLMs for key trading tasks, including sentiment analysis from news and social data, market prediction models, and the development of systematic trading strategies. The book covers essential concepts in multimodal data handling and automated workflow design, bridging the gap between cutting-edge AI research and real-world quant applications.

What You'll Find Inside:

  • Core principles of Transformer and LLM technology tailored for finance
  • Step-by-step guidance on fine-tuning models with Python
  • Techniques for processing market sentiment and alternative data
  • Approaches to building and evaluating predictive models
  • Best practices for strategy automation and backtesting

Written for quantitative traders, data scientists, and developers with intermediate Python skills and an interest in machine learning, this book provides clear explanations, code examples, and practical considerations for working with these powerful models in live market environments.

Important Note: This book is for educational and informational purposes only. Trading financial markets involves significant risk of loss and is not suitable for all investors. Past performance does not guarantee future results. Always conduct your own due diligence and consult qualified professionals.