Human-AI Co-Creation Approach to Find Forever Chemicals Replacements
- URL: http://arxiv.org/abs/2304.05389v1
- Date: Tue, 11 Apr 2023 17:58:19 GMT
- Title: Human-AI Co-Creation Approach to Find Forever Chemicals Replacements
- Authors: Juliana Jansen Ferreira, Vin\'icius Segura, Joana G. R. Souza, Gabriel
D. J. Barbosa, Jo\~ao Gallas, Renato Cerqueira, Dmitry Zubarev
- Abstract summary: We are designing a software framework that supports a human-AI co-creation process.
Our approach combines AI capabilities with the domain-specific knowledge of subject matter experts to accelerate the material discovery.
- Score: 3.122672716129844
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Generative models are a powerful tool in AI for material discovery. We are
designing a software framework that supports a human-AI co-creation process to
accelerate finding replacements for the ``forever chemicals''-- chemicals that
enable our modern lives, but are harmful to the environment and the human
health. Our approach combines AI capabilities with the domain-specific tacit
knowledge of subject matter experts to accelerate the material discovery. Our
co-creation process starts with the interaction between the subject matter
experts and a generative model that can generate new molecule designs. In this
position paper, we discuss our hypothesis that these subject matter experts can
benefit from a more iterative interaction with the generative model, asking for
smaller samples and ``guiding'' the exploration of the discovery space with
their knowledge.
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