Towards Multi-Agent Autonomous Reasoning in Hydrodynamics
Jinpai Zhao, Albert Cerrone, Joannes Westerink, Clint Dawson

TL;DR
This paper introduces a multi-agent system for hydrodynamics that uses specialized agents coordinated via a Layer Execution Graph, improving reliability and factual accuracy over single-agent systems in complex scientific workflows.
Contribution
It presents a novel multi-agent architecture with a planner and specialist agents that enhances factual accuracy and robustness in hydrodynamics reasoning tasks.
Findings
Achieves 93.6% factual precision on 37 queries
Maintains over 90% accuracy across different parallel configurations
Degrades gracefully under loss of data sources
Abstract
Single-agent systems (SAS) have become the default pattern for LLM-driven scientific workflows, but routing planning, tool use, and synthesis through a single context window comes with a well-known cost: as tool specifications and observational traces accumulate, the effective context available for each decision shrinks, and end-to-end reliability suffers. We present a multi-agent system (MAS) prototype for hydrodynamics in which specialized agents are coordinated through a Layer Execution Graph (LEG). A planner agent constructs query-specific execution topologies from natural-language routing heuristics that capture domain knowledge without hard-coding it as rigid control logic; specialist agents operate under strict tool allowlists and occupy complementary data-class roles. Between layers, consolidator agents fuse parallel outputs into concise briefs, and a reporter agent synthesizes…
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