Biomedical NER for the Enterprise with Distillated BERN2 and the Kazu Framework
Yoon, Wonjin, Jackson, Richard, Ford, Elliot, Poroshin, Vladimir, Kang, Jaewoo
–arXiv.org Artificial Intelligence
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. KAZU framework is open-sourced: https://github.com/AstraZeneca/KAZU
arXiv.org Artificial Intelligence
Nov-30-2022
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