PIR is a physics-constrained symbolic discovery framework that combines dimensional filtering, residual refinement, sparse model selection, and a hybrid MSE + Optimal Transport loss to recover typed, interpretable physical laws from data with 100% success on core benchmark tasks.
Muhammad Hanif (Fri,) studied this question.