Siebel School Speaker Series Master Calendar

CS Compiler Seminar: Presentation by Ahan Gupta

Feb 9, 2026   4:00 - 5:00 pm  
3102 Siebel Center
Sponsor
CS 591 ACT
Speaker
Ahan Gupta
Contact
Allison Mette
E-Mail
agk@illinois.edu
Originating Calendar
Siebel School Speakers Calendar

Title: A Reinforcement Learning Environment for Automatic Code Optimization in the MLIR Compiler

Author(s): Mohammed Tirichine, Nassim Ameur, Nazim Bendib, Iheb Nassim Aouadj, Bouchama Djad, Rafik Bouloudene, Riyadh Baghdadi

Abstract: Code optimization is a crucial task that aims to enhance code performance. However, this process is often tedious and complex, highlighting the necessity for automatic code optimization techniques. Reinforcement Learning (RL) has emerged as a promising approach for tackling such complex optimization problems. In this project, we introduce MLIR RL, an RL environment for the MLIR compiler, dedicated to facilitating MLIR compiler research and enabling automatic code optimization. We propose a multi-discrete formulation of the action space where the action space is the Cartesian product of simpler action subspaces. We also propose a new method, called level pointers, to reduce the size of the action space related to the loop interchange transformation. This enables more efficient and effective learning of the policy. To demonstrate the effectiveness of MLIR RL, we train an RL agent to optimize MLIR Linalg code, targeting CPU. The code is generated from two domain-specific frameworks: deep-learning models generated from PyTorch, and LQCD (Lattice Quantum Chromodynamics) code generated from an LQCD compiler. The result of this work is a research environment that allows the community to experiment with novel ideas in RL-driven loop-nest optimization.

Note: The above talk is a student presentation and not by the author(s) of the paper being presented.

link for robots only