“∇-Prox: Differentiable Proximal Algorithm Modeling for Large-scale Optimization” by Lai, Wei, Fu, Härtel and Heide – ACM SIGGRAPH HISTORY ARCHIVES

“∇-Prox: Differentiable Proximal Algorithm Modeling for Large-scale Optimization” by Lai, Wei, Fu, Härtel and Heide

  • ©

Conference:


Type(s):


Title:

    ∇-Prox: Differentiable Proximal Algorithm Modeling for Large-scale Optimization

Session/Category Title:   Surfaces, Strips, Lights


Presenter(s)/Author(s):


Moderator(s):



Abstract:


    ∇-Prox is a domain-specific language and compiler for large-scale optimization that transforms optimization problems into differentiable proximal solvers. With a few lines of code, ∇-Prox makes it easier to prototype different learning-based, bi-level optimization algorithms based on user requirements with regard to memory constraints or training budget for a diverse range of applications.


Additional Images:

©

ACM Digital Library Publication:



Overview Page:



Submit a story:

If you would like to submit a story about this presentation, please contact us: historyarchives@siggraph.org