Abstract
In this paper, we extend the mathematical framework of **non-commutative scalar fields** and numerical
techniques discussed previously to build a foundation for **AI-based reasoning systems**. The goal is to
enable AI to operate over **symbolic hierarchies, semantic transformations**, and **large-scale infinite
or non-commutative domains**. Inspired by quantum tensor field operations, we integrate reasoning over
symbolic, numeric, and approximate representations into machine learning pipelines.
This work leverages concepts from numerical techniques for non-commutative mixed derivatives, recur-
sive tensor calculus, and symbolic transformation logic to build **deep learning architectures** capable of
representing and reasoning with structured, hierarchical complexity.