The discovery of novel Ionic Liquids (ILs) is hindered by critical challenges in property prediction, including limited data, poor model accuracy, and fragmented workflows. Leveraging the power of Large Language Models (LLMs), we introduce AIonopedia, to the best of our knowledge, the first LLM agent for IL discovery. Powered by an LLM-augmented multimodal domain foundation model for ILs, AIonopedia enables accurate property predictions and incorporates a hierarchical search architecture for molecular screening and design. Trained and evaluated on a newly curated and comprehensive IL dataset, our model delivers superior performance. Complementing these results, evaluations on literature-reported systems indicate that the agent can perform effective IL modification. Moving beyond offline tests, the practical efficacy was further confirmed through real-world wet-lab validation, in which the agent demonstrated exceptional generalization capabilities on challenging out-of-distribution tasks, underscoring its ability to accelerate real-world IL discovery.
翻译:新型离子液体的发现受限于性质预测中的关键挑战,包括数据有限、模型精度不足以及工作流程碎片化。利用大语言模型的能力,我们提出了AIonopedia,据我们所知,这是首个用于离子液体发现的LLM智能体。该智能体基于一个LLM增强的离子液体多模态领域基础模型,能够实现精确的性质预测,并整合了用于分子筛选与设计的层次化搜索架构。在新构建的全面离子液体数据集上进行训练和评估后,我们的模型展现出卓越的性能。作为补充,对文献报道体系的评估表明,该智能体能够有效执行离子液体修饰。超越离线测试,其实际效能通过真实湿实验室验证得到进一步确认,智能体在具有挑战性的分布外任务中表现出优异的泛化能力,凸显了其加速真实世界离子液体发现的潜力。