Autonomous Alpha: Real-Time AI Trading Systems With LLMs, Agents, and Market Memory: Design, Train, and Deploy Self-Learning Market Agents

Paperback Published on: 01/11/2025
Price: £36.49
UK delivery included
In stock
Print on demand - Usually dispatched within 7-10 days
Make and edit your lists in your account
wordery
has a fantastic rating on
In stock
Print on demand - Usually dispatched within 7-10 days
wordery
has a fantastic rating on

Synopsis

Reactive PublishingIn a world where milliseconds decide millions, Autonomous Alpha reveals the next evolution of algorithmic trading - the rise of self-learning AI agents that think, adapt, and compete in real time.

This book takes you beyond traditional quant frameworks and into the architecture of intelligent, memory-augmented market systems powered by large language models, reinforcement learning, and generative AI. You'll learn how to engineer agents that not only react to data, but remember, anticipate, and evolve.

Inside, James Preston delivers an advanced, hands-on blueprint for:

  • Building adaptive trading agents that collaborate and compete using multi-agent reinforcement learning.
  • Designing market memory systems that allow AI models to internalize patterns, recall context, and optimize long-term strategies.
  • Integrating LLMs with RL frameworks for decision modeling, reasoning, and autonomous execution.
  • Deploying low-latency inference pipelines that bring continuous learning into live market environments.
  • Synthesizing generative signals and volatility maps from deep neural networks trained on synthetic order-flow data.

Blending deep research with practical Python workflows, Autonomous Alpha bridges academic innovation and live-market application. Whether you're a quant, data scientist, or AI researcher, this book equips you with the tools to engineer the next generation of autonomous trading intelligence.

The markets are no longer ruled by humans, they're ruled by agents that learn.
This is your blueprint to join them.

Publisher information

  • Publisher: Amazon Digital Services LLC - Kdp
  • ISBN: 9798272480729
  • Number of pages: 756
  • Dimensions: 229 x 152 x 38 mm
  • Languages: English