학술논문

BSSE: Design Space Exploration on the BOOM With Semi-Supervised Learning
Document Type
Periodical
Source
IEEE Transactions on Very Large Scale Integration (VLSI) Systems IEEE Trans. VLSI Syst. Very Large Scale Integration (VLSI) Systems, IEEE Transactions on. 32(5):860-869 May, 2024
Subject
Components, Circuits, Devices and Systems
Computing and Processing
Microarchitecture
Measurement
Computer architecture
Training
Semisupervised learning
Data models
Space exploration
Berkeley Out-of-Order Machine (BOOM)
design space exploration (DSE)
microarchitecture
Pareto set
RISC-V
Language
ISSN
1063-8210
1557-9999
Abstract
With the rising prominence of RISC-V-based microprocessors in processor design, the challenge of exploring the vast and complex RISC-V microarchitecture design space has become increasingly apparent. We propose the Berkeley Out-of-Order Machine Semi-Supervised Explorer (BSSE)—a novel framework leveraging the semi-supervised learning method and parallel emulation to speed up and make tradeoffs on the RISC-V microarchitecture design space exploration (DSE). BSSE constructs the initial training dataset with the microarchitecture experimental design sampling (MEDS) method and then employs the cotraining-style k-nearest neighbors (Co-KNN) model to fit the microarchitecture features to the architectural metric value space. The trained Co-KNN model assists in searching a Pareto-optimal set with parallel emulation. Finally, a distance-based method is proposed to select a designer-preferred microarchitecture from the identified Pareto-optimal set. Extensive experiments on the Berkeley Out-of-Order Machine (BOOM) show that our proposed BSSE method can search for a better Pareto-optimal set with less time consumption compared to the state-of-the-art methods and can find microarchitectures that are equivalent to or even better than the existing manually designed BOOM microarchitectures.