论文标题
闭环框架可以加速计算材料发现多少?
By how much can closed-loop frameworks accelerate computational materials discovery?
论文作者
论文摘要
闭环计算工作流程中自动化和机器学习替代化的实施是一种加速材料发现的越来越流行的方法。但是,与这种范式转移相关的加速度的规模仍然是一个悬而未决的问题。在这项工作中,我们通过识别四个不同的速度来源来严格量化闭环框架中每个组件的加速度,以进行物质假设评估:(1)任务自动化,(2)计算运行时改进,(3)连续学习驱动的设计空间搜索,以及(4)与机器学习模型的昂贵模拟的昂贵模拟。这是使用计时分类帐完成的,以记录自动化软件的运行,并在电催化的背景下进行相应的手动计算实验。从前三个加速来源的结合来看,我们估计总体假设评估时间可以减少90%以上,即达到$ \ sim $$ 10 \ times $的加速。此外,通过将代孕引入循环中,我们估计设计时间可以减少95%以上,即实现$ \ sim $$ 15 $ 15 $ -20 \ $ 20 \ times $。我们的发现提出了一个明确的价值主张,用于利用闭环方法加速材料发现。
The implementation of automation and machine learning surrogatization within closed-loop computational workflows is an increasingly popular approach to accelerate materials discovery. However, the scale of the speedup associated with this paradigm shift from traditional manual approaches remains an open question. In this work, we rigorously quantify the acceleration from each of the components within a closed-loop framework for material hypothesis evaluation by identifying four distinct sources of speedup: (1) task automation, (2) calculation runtime improvements, (3) sequential learning-driven design space search, and (4) surrogatization of expensive simulations with machine learning models. This is done using a time-keeping ledger to record runs of automated software and corresponding manual computational experiments within the context of electrocatalysis. From a combination of the first three sources of acceleration, we estimate that overall hypothesis evaluation time can be reduced by over 90%, i.e., achieving a speedup of $\sim$$10\times$. Further, by introducing surrogatization into the loop, we estimate that the design time can be reduced by over 95%, i.e., achieving a speedup of $\sim$$15$-$20\times$. Our findings present a clear value proposition for utilizing closed-loop approaches for accelerating materials discovery.