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Machine-learning-assisted low dielectric constant polymer discovery

机译:Machine-learning-assisted低介电常数聚合物的发现

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Machine learning (ML) has excellent potential for molecular property prediction and new molecule discovery. However, real-world synthesis is the most vital part of determining a polymer’s value. This paper demonstrates automatic polymer discovery through ML and an intelligent cloud lab to find new environmentally friendly polymers with low dielectric constants that have potential applications in highspeed communication networks. In the machine learning discovery, we use ML on SMILES from databases to identify ideal functional groups with reasonable solutions. Moreover, the solutions are sent to the cloud and synthesized via our intelligent system. A few of them can be successfully synthesized and two of them have excellent performance in low-dielectric-constant applications. This autonomous system enables reliable and efficient combinations of data-driven research and synthesis, reduces both the time and cost of polymer-discovery experiments, and accelerates the overall process for low-dielectric-constant polymer discovery.
机译:机器学习(ML)具有良好的潜力分子性质的预测和新分子发现。最重要的一部分,确定聚合物的价值。本文演示了自动聚合物发现通过ML和智能云实验室寻找新的环保聚合物较低介电常数有潜力在高速通信网络中的应用。机器学习中发现,我们使用毫升数据库来确定理想的微笑官能团提供合理的解决方案。此外,被发送到云计算和解决方案通过我们的智能系统合成。他们可以成功地合成和两个他们有很出色的表现low-dielectric-constant应用程序。自治系统能够可靠和有效的数据驱动的研究和组合合成、减少的时间和成本polymer-discovery实验,加速low-dielectric-constant的整个过程聚合物的发现。

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