ACORNS: An Easy-To-Use Code Generator for Gradients and Hessians

07/09/2020
by   Deshana Desai, et al.
0

The computation of first and second-order derivatives is a staple in many computing applications, ranging from machine learning to scientific computing. We propose an algorithm to automatically differentiate algorithms written in a subset of C99 code and its efficient implementation as a Python script. We demonstrate that our algorithm enables automatic, reliable, and efficient differentiation of common algorithms used in physical simulation and geometry processing.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset