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A survey on compiler autotuning using machine learning
Since the mid-1990s, researchers have been trying to use machine-learning-based
approaches to solve a number of different compiler optimization problems. These …
approaches to solve a number of different compiler optimization problems. These …
Full stack optimization of transformer inference: a survey
Recent advances in state-of-the-art DNN architecture design have been moving toward
Transformer models. These models achieve superior accuracy across a wide range of …
Transformer models. These models achieve superior accuracy across a wide range of …
Cosa: Scheduling by constrained optimization for spatial accelerators
Recent advances in Deep Neural Networks (DNNs) have led to active development of
specialized DNN accelerators, many of which feature a large number of processing …
specialized DNN accelerators, many of which feature a large number of processing …
Opentuner: An extensible framework for program autotuning
Program autotuning has been shown to achieve better or more portable performance in a
number of domains. However, autotuners themselves are rarely portable between projects …
number of domains. However, autotuners themselves are rarely portable between projects …
Machine learning in compiler optimization
In the last decade, machine-learning-based compilation has moved from an obscure
research niche to a mainstream activity. In this paper, we describe the relationship between …
research niche to a mainstream activity. In this paper, we describe the relationship between …
Language models for code optimization: Survey, challenges and future directions
Language models (LMs) built upon deep neural networks (DNNs) have recently
demonstrated breakthrough effectiveness in software engineering tasks like code …
demonstrated breakthrough effectiveness in software engineering tasks like code …
Bridging the gap between deep learning and sparse matrix format selection
This work presents a systematic exploration on the promise and special challenges of deep
learning for sparse matrix format selection---a problem of determining the best storage …
learning for sparse matrix format selection---a problem of determining the best storage …
Micomp: Mitigating the compiler phase-ordering problem using optimization sub-sequences and machine learning
Recent compilers offer a vast number of multilayered optimizations targeting different code
segments of an application. Choosing among these optimizations can significantly impact …
segments of an application. Choosing among these optimizations can significantly impact …
Efficient compiler autotuning via bayesian optimization
A typical compiler such as GCC supports hundreds of optimizations controlled by
compilation flags for improving the runtime performance of the compiled program. Due to the …
compilation flags for improving the runtime performance of the compiled program. Due to the …
Machine learning in compilers: Past, present and future
Writing optimising compilers is difficult. The range of programs that may be presented to the
compiler is huge and the systems on which they run are complex, heterogeneous, non …
compiler is huge and the systems on which they run are complex, heterogeneous, non …