To apply this technique to a real materials discovery problem, we asked our algorithm to simultaneously hunt for materials which had good gas storage properties, and were also crystallized in such a way that they would be easy to observe in the lab.
In our paper, we show how we achieved this through the extension of an algorithm we previously developed, called Batch Generalized Thompson Sampling. We created it to deal with multiple objectives (in this case the gas storage property score, and the lattice energy score) and showed that it can be applied to accelerate a new computational technique known as Energy Structure Function ESF Maps “describe the possible structures and properties that are available to a candidate molecule” (for simulation).(ESF) Maps.2 These ESF Maps are powerful for computational materials design, but are far too expensive for routine use.
As our method reduces the need to perform many expensive simulations, it also cuts the cost of generating these ESF Maps by 500,000 CPUh—the equivalent to a small supercomputing grant.
There are, however, still challenges to overcome.
For example, it’s important to figure out how to work in highly complex conditions, such as with multiple constraints and objectives, without passing this complexity to the user. Another challenge is to be able to take this information into account from a variety of sources whilst performing the optimization.
These are our next steps. And we are certain to make more progress with our research and speed up material discovery process even further.
Edward O. Pyzer-Knapp, Linjiang Chen, Graeme M. Day, Andrew I. Cooper. Accelerating Computational Discovery of Porous Solids Through Improved Navigation of Energy Structure Function Maps. Science Advances. Vol. 7, no. 33, eabi4763. (2021). ↩
Pulido, A., Chen, L., Kaczorowski, T. et al. Functional materials discovery using energy–structure–function maps. Nature. 543, 657–664 (2017). ↩