OpenQlaw: An Agentic AI Assistant for Analysis of 2D Quantum Materials
Sankalp Pandey, Xuan-Bac Nguyen, Hoang-Quan Nguyen, Tim Faltermeier, Nicholas Borys, Hugh Churchill, and Khoa Luu

TL;DR
OpenQlaw is an agentic AI system designed to assist researchers in analyzing 2D quantum materials by orchestrating multimodal models, enabling dynamic reasoning, visual identification, and real-time interaction to accelerate device fabrication.
Contribution
The paper introduces OpenQlaw, a novel agentic architecture that integrates domain-specific multimodal models for real-time analysis and reasoning in quantum material research.
Findings
Decouples visual identification from reasoning processes.
Enables dynamic, scale-aware physical computations.
Stores persistent physical and procedural data for improved analysis.
Abstract
The transition from optical identification of 2D quantum materials to practical device fabrication requires dynamic reasoning beyond the detection accuracy. While recent domain-specific Multimodal Large Language Models (MLLMs) successfully ground visual features using physics-informed reasoning, their outputs are optimized for step-by-step cognitive transparency. This yields verbose candidate enumerations followed by dense reasoning that, while accurate, may induce cognitive overload and lack immediate utility for real-world interaction with researchers. To address this challenge, we introduce OpenQlaw, an agentic orchestration system for analyzing 2D materials. The architecture is built upon NanoBot, a lightweight agentic framework inspired by OpenClaw, and QuPAINT, one of the first Physics-Aware Instruction Multi-modal platforms for Quantum Material Discovery. This allows…
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Taxonomy
TopicsMachine Learning in Materials Science · Multimodal Machine Learning Applications · Quantum many-body systems
