TY - CONF AU - Rathkopf, Charles TI - Deep learning models in science: some risks and opportunities M1 - FZJ-2024-05893 PY - 2024 AB - Deep neural networks offer striking improvements in predictive accuracy in many areas of science, and in biological sequence modeling in particular. But that predictive power comes at a steep price: we must give up on interpretability. In this talk, I argue - contrary to many voices in AI ethics calling for more interpretable models - that this is a price we should be willing to pay. T2 - Helmholtz workshop on the ethics of AI in scientific practice CY - 11 Jun 2024, Jülich/Düsseldorf (Germany) Y2 - 11 Jun 2024 M2 - Jülich/Düsseldorf, Germany LB - PUB:(DE-HGF)31 UR - https://juser.fz-juelich.de/record/1031969 ER -