AI RESEARCH

Agentic Trading: When LLM Agents Meet Financial Markets

arXiv CS.AI

ArXi:2605.19337v1 Announce Type: new A growing body of work explores how Large Language Models (LLMs) can be embedded in trading systems as agents that perceive market information, retrieve context, reason about decisions, emit tradable actions, and adapt under market feedback. This paper reframes LLM-based trading agents as expert-system decision pipelines and presents an audit-oriented evidence map of 77 included studies in a protocol-coded snapshot screened through 2026-03-09.