LGDCDMPFApr 28, 2021

A Reinforcement Learning Environment for Polyhedral Optimizations

arXiv:2104.13732v210 citations
Originality Highly original
AI Analysis

This addresses the challenge of automating compiler optimizations for polyhedral loops, enabling more powerful machine learning techniques in this domain.

The paper tackles the problem of finding optimal polyhedral loop transformations by proposing PolyGym, a shape-agnostic Markov Decision Process formulation that enables reinforcement learning approaches. The method achieved a 3.39x speedup over LLVM O3 on the Polybench benchmark suite, outperforming the ISL heuristic by 1.83x.

The polyhedral model allows a structured way of defining semantics-preserving transformations to improve the performance of a large class of loops. Finding profitable points in this space is a hard problem which is usually approached by heuristics that generalize from domain-expert knowledge. Existing problem formulations in state-of-the-art heuristics depend on the shape of particular loops, making it hard to leverage generic and more powerful optimization techniques from the machine learning domain. In this paper, we propose PolyGym, a shape-agnostic formulation for the space of legal transformations in the polyhedral model as a Markov Decision Process (MDP). Instead of using transformations, the formulation is based on an abstract space of possible schedules. In this formulation, states model partial schedules, which are constructed by actions that are reusable across different loops. With a simple heuristic to traverse the space, we demonstrate that our formulation is powerful enough to match and outperform state-of-the-art heuristics. On the Polybench benchmark suite, we found transformations that led to a speedup of 3.39x over LLVM O3, which is 1.83x better than the speedup achieved by ISL. Our generic MDP formulation enables using reinforcement learning to learn optimization policies over a wide range of loops. This also contributes to the emerging field of machine learning in compilers, as it exposes a novel problem formulation that can push the limits of existing methods.

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