Chen, Lizhong.

AI for Computer Architecture Principles, Practice, and Prospects / [electronic resource] : by Lizhong Chen, Drew Penney, Daniel Jiménez. - 1st ed. 2021. - XVII, 124 p. online resource. - Synthesis Lectures on Computer Architecture, 1935-3243 . - Synthesis Lectures on Computer Architecture, .

Preface -- Acknowledgments -- Introduction -- Basics of Machine Learning in Architecture -- Literature Review -- Case Studies -- Analysis of Current Practice -- Future Directions of AI
obreakspace

Artificial intelligence has already enabled pivotal advances in diverse fields, yet its impact on computer architecture has only just begun. In particular, recent work has explored broader application to the design, optimization, and simulation of computer architecture. Notably, machine-learning-based strategies often surpass prior state-of-the-art analytical, heuristic, and human-expert approaches. This book reviews the application of machine learning in system-wide simulation and run-time optimization, and in many individual components such as caches/memories, branch predictors, networks-on-chip, and GPUs. The book further analyzes current practice to highlight useful design strategies and identify areas for future work, based on optimized implementation strategies, opportune extensions to existing work, and ambitious long term possibilities. Taken together, these strategies and techniques present a promising future for increasingly automated computer architecture designs.

9783031017704

10.1007/978-3-031-01770-4 doi


Electronic circuits.
Microprocessors.
Computer architecture.
Electronic Circuits and Systems.
Processor Architectures.

TK7867-7867.5

621.3815