miniKanren as a Tool for Symbolic Computation in Python
Programming Languages
2020-06-01 v3 Symbolic Computation
Abstract
In this article, we give a brief overview of the current state and future potential of symbolic computation within the Python statistical modeling and machine learning community. We detail the use of miniKanren as an underlying framework for term rewriting and symbolic mathematics, as well as its ability to orchestrate the use of existing Python libraries. We also discuss the relevance and potential of relational programming for implementing more robust, portable, domain-specific "math-level" optimizations--with a slight focus on Bayesian modeling. Finally, we describe the work going forward and raise some questions regarding potential cross-overs between statistical modeling and programming language theory.
Keywords
Cite
@article{arxiv.2005.11644,
title = {miniKanren as a Tool for Symbolic Computation in Python},
author = {Brandon T. Willard},
journal= {arXiv preprint arXiv:2005.11644},
year = {2020}
}