AgenticAITA: A Proof-Of-Concept About Deliberative Multi-Agent Reasoning for Autonomous Trading Systems
Ivan Letteri

TL;DR
AgenticAITA introduces a novel multi-agent AI framework for autonomous trading, replacing traditional heuristics with deliberative reasoning among specialized LLM agents, validated through a live market dry-run.
Contribution
This work presents a fully autonomous, reasoning-based multi-agent trading system with novel architecture components and safety mechanisms, without relying on offline training.
Findings
Achieved 157 zero-intervention trades over five days
Demonstrated non-trivial inter-agent negotiation with an 11.5% friction rate
Validated operational correctness in live market conditions
Abstract
Conventional algorithmic trading systems are grounded in deterministic heuristics or offline-trained statistical models that cannot adapt to the semantic complexity of rapidly shifting market regimes. This paper introduces AGENTICAITA, an agentic AI framework that replaces the traditional signal then execute paradigm with a fully autonomous deliberative loop in which multiple specialized Large Language Model agents reason, negotiate, and act in concert - without any offline training or human intervention. The framework proposes four architectural contributions: (i) an Adaptive Z-Score Trigger Engine that acts as a cognitive resource allocator, gating LLM inference exclusively on statistically anomalous market conditions; (ii) a Sequential Deliberative Pipeline - the core agentic contribution - in which an Analyst agent, a Risk Manager agent, and an Executor agent form a structured…
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