PRESENTATION ABSTRACT
Neurosymbolic programming (NSP) is an emerging area of computing that bridges the fields of deep learning and program synthesis. Like in classical machine learning, the goal here is to learn functions from data. However, these functions are represented as programs that use neural network modules as well as symbolic primitives and are induced using a mix of symbolic search and gradient-based optimization.
In this talk, Swarat Chaudhuri will give an elementary introduction to NSP and show how methods in this area have natural applications in accelerating scientific discovery. Specifically, using applications in behavioral neuroscience, Chaudhuri will show that NSP offers natural ways of incorporating prior knowledge into data-driven scientific discovery and interpreting discovered knowledge. Talk will conclude with a discussion of some of the open technical challenges in NSP in general and NSP-for-science in particular.
Location: Levine 307 or Zoom
Visit ASSET Seminar site for Zoom information