2024
DOI: 10.1609/aaai.v38i21.30342
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End-to-End Phase Field Model Discovery Combining Experimentation, Crowdsourcing, Simulation and Learning

Md Nasim,
Xinghang Zhang,
Anter El-Azab
et al.

Abstract: The availability of tera-byte scale experiment data calls for AI driven approaches which automatically discover scientific models from data. Nonetheless, significant challenges present in AI-driven scientific discovery: (i) The annotation of large scale datasets requires fundamental re-thinking in developing scalable crowdsourcing tools. (ii) The learning of scientific models from data calls for innovations beyond black-box neural nets. (iii) Novel visualization & diagnosis tools are needed for the collabo… Show more

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