<p>Generative AI for Finance: Building Agents for Research and Trading<br /><br />Generative AI is rapidly reshaping how financial institutions research markets build strategies and execute trades. This book is written for quantitative researchers data scientists technologists and forward-looking portfolio managers who want to move beyond toy demos and build robust agentic systems for real-world finance. Blending practical engineering with rigorous quantitative thinking it shows how to turn large language models into reliable collaborators for idea generation analysis and decision support.<br /><br />You will learn how to construct end-to-end pipelines that feed high-quality market and textual data into transformers retrieval systems and agent frameworks. Core topics include prompt design for financial tasks retrieval-augmented generation over filings and news and orchestration patterns that let agents reason plan and call tools such as risk engines databases and execution venues. The book also develops skills in evaluation backtesting and MLOps so that research and trading agents are measurable debuggable and governable rather than opaque black boxes.<br /><br />The text assumes comfort with Python and basic statistics but reviews the essentials of quantitative finance machine learning and reinforcement learning as needed. Examples emphasize production-grade design—covering performance engineering compliance security and model risk—making this a practical guide for building agentic AI systems that can survive contact with real markets and real regulators.</p>
Piracy-free
Assured Quality
Secure Transactions
Delivery Options
Please enter pincode to check delivery time.
*COD & Shipping Charges may apply on certain items.