Seong-Min KimYousung JungJoshua Schrier
We evaluate the effectiveness of pretrained and fine-tuned large language models (LLMs) for predicting the synthesizability of inorganic compounds and the selection of precursors needed to perform inorganic synthesis. The predictions of fine-tuned LLMs are comparable to─and sometimes better than─recent bespoke machine learning models for these tasks but require only minimal user expertise, cost, and time to develop. Therefore, this strategy can serve both as an effective and strong baseline for future machine learning studies of various chemical applications and as a practical tool for experimental chemists.
Zhaomin XiaoZhelu MaiZhuoer XuYachen CuiJiancheng Li
Bowen GuRishi DesaiKueiyu Joshua LinJie Yang
Sonakshi GuptaAkhlak MahmoodShivank ShuklaRampi Ramprasad
Alexandra ZytekSara PidòSarah AlnegheimishLaure Berti‐ÉquilleKalyan Veeramachaneni
Nguyen Dang HoiDuc Quynh TranNgoc Thanh PhamQuang Thuan Nguyen