AMR Parsing with Action-Pointer Transformer
Jiawei Zhou, Tahira Naseem, et al.
NAACL 2021
The experimental execution of chemical reactions is a context-dependent and time-consuming process, often solved using the experience collected over multiple decades of laboratory work or searching similar, already executed, experimental protocols. Although data-driven schemes, such as retrosynthetic models, are becoming established technologies in synthetic organic chemistry, the conversion of proposed synthetic routes to experimental procedures remains a burden on the shoulder of domain experts. In this work, we present data-driven models for predicting the entire sequence of synthesis steps starting from a textual representation of a chemical equation, for application in batch organic chemistry. We generated a data set of 693,517 chemical equations and associated action sequences by extracting and processing experimental procedure text from patents, using state-of-the-art natural language models. We used the attained data set to train three different models: a nearest-neighbor model based on recently-introduced reaction fingerprints, and two deep-learning sequence-to-sequence models based on the Transformer and BART architectures. An analysis by a trained chemist revealed that the predicted action sequences are adequate for execution without human intervention in more than 50% of the cases.
Jiawei Zhou, Tahira Naseem, et al.
NAACL 2021
Gosia Lazuka, Andreea Simona Anghel, et al.
SC 2024
Oscar Sainz, Iker García-ferrero, et al.
ACL 2024
Bo Zhao, Nima Dehmamy, et al.
ICML 2025