Vladimir Poroshin


2022

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Biomedical NER for the Enterprise with Distillated BERN2 and the Kazu Framework
Wonjin Yoon | Richard Jackson | Elliot Ford | Vladimir Poroshin | Jaewoo Kang
Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing: Industry Track

In order to assist the drug discovery/development process, pharmaceutical companies often apply biomedical NER and linking techniques over internal and public corpora. Decades of study of the field of BioNLP has produced a plethora of algorithms, systems and datasets. However, our experience has been that no single open source system meets all the requirements of a modern pharmaceutical company. In this work, we describe these requirements according to our experience of the industry, and present Kazu, a highly extensible, scalable open source framework designed to support BioNLP for the pharmaceutical sector. Kazu is a built around a computationally efficient version of the BERN2 NER model (TinyBERN2), and subsequently wraps several other BioNLP technologies into one coherent system.