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Must read research papers and links to tools and datasets that are related to using machine learning for compilers and systems optimisation

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zwang4/awesome-machine-learning-in-compilers

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Awesome machine learning for compilers and program optimisation

Awesome Maintenance

A curated list of awesome research papers, datasets, and tools for applying machine learning techniques to compilers and program optimisation.

Contents

Papers

Survey

Iterative Compilation and Compiler Option Tuning

Instruction-level Optimisation

Auto-tuning and Design Space Exploration

Parallelism Mapping and Task Scheduling

Domain-specific Optimisation

Languages and Compilation

Code Size Reduction

Cost and Performance Models

Learning Program Representation

Enabling ML in Compilers and Systems Optimisation

Memory/Cache Modeling/Analysis

Books

Talks and Tutorials

Software

  • PROM - A Python Toolkit to help identify ML model misprediction after deployment (paper).
  • ML-Compiler-Bridge - Library to interface Compilers and ML models for ML-Enabled Compiler Optimizations (paper).
  • Supersonic - Automate reinforcement learning architecture design (paper).
  • CompilerGym - Reinforcement learning environments for compiler optimizations (paper).
  • CodeBert - pre-trained DNN models for programming languages (paper).
  • IR2Vec - LLVM IR based program embeddings for machine learning (paper).
  • programl - LLVM and XLA IR program representation for machine learning (paper).
  • NeuroVectorizer - Using deep reinforcement learning (RL) to predict optimal vectorization compiler pragmas (paper).
  • TVM - Open Deep Learning Compiler Stack for CPU, GPU and specialized accelerators (paper; slides).
  • MLC-LLM - A machine learning compiler and high-performance deployment engine for large language models (Reference techniques: paper, paper and TVM).
  • clgen - Benchmark generator using LSTMs (paper; slides).
  • COBAYN - Compiler Autotuning using BNs (paper).
  • OpenTuner - Framework for building domain-specific multi-objective program autotuners (paper; slides)
  • ONNX-MLIR - Representation and Reference Lowering of ONNX Models in MLIR Compiler Infrastructure (paper).
  • IREE - A retargetable MLIR-based machine learning compiler and runtime toolkit.

Benchmarks and Datasets

Conferences

Journals

How to Contribute

See Contribution Guidelines. TL;DR: send one of the maintainers a pull request.

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