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APOLLO: An automated power modeling framework for runtime power introspection in high-volume commercial microprocessors

Publication ,  Conference
Xie, Z; Xu, X; Walker, M; Knebel, J; Palaniswamy, K; Hebert, N; Hu, J; Yang, H; Chen, Y; Das, S
Published in: Proceedings of the Annual International Symposium on Microarchitecture, MICRO
October 18, 2021

Accurate power modeling is crucial for energy-efficient CPU design and runtime management. An ideal power modeling framework needs to be accurate yet fast, achieve high temporal resolution (ideally cycle-accurate) yet with low runtime computational overheads, and easily extensible to diverse designs through automation. Simultaneously satisfying such conflicting objectives is challenging and largely unattained despite significant prior research. In this paper, we propose APOLLO, an automated per-cycle power modeling framework that serves as the basis for both a design-time power estimator and a low-overhead runtime on-chip power meter (OPM). APOLLO uses the minimax concave penalty (MCP)-based feature selection algorithm to automatically select less than 0.05% of RTL signals as power proxies. The power estimation achieves R2 > 0.95 on Arm Neoverse N1 [3] and R2 > 0.94 on Arm Cortex-A77 [2] microprocessors, respectively. When integrated with an emulator-assisted flow, APOLLO finishes per-cycle power estimation on millions-of-cycles benchmark in minutes for million-gate industrial CPU designs. Furthermore, the power model is synthesized and integrated into the microprocessor implementation as a runtime OPM. APOLLO's accuracy further improves when coarse-grained temporal resolution is preferred. To our best knowledge, this is the first runtime OPM that simultaneously achieves percycle temporal resolution and < 1% area/power overhead without compromising accuracy, which is validated on high-performance, out-of-order industrial CPU designs.

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Published In

Proceedings of the Annual International Symposium on Microarchitecture, MICRO

DOI

ISSN

1072-4451

ISBN

9781450385572

Publication Date

October 18, 2021

Start / End Page

1 / 14
 

Citation

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Xie, Z., Xu, X., Walker, M., Knebel, J., Palaniswamy, K., Hebert, N., … Das, S. (2021). APOLLO: An automated power modeling framework for runtime power introspection in high-volume commercial microprocessors. In Proceedings of the Annual International Symposium on Microarchitecture, MICRO (pp. 1–14). https://doi.org/10.1145/3466752.3480064
Xie, Z., X. Xu, M. Walker, J. Knebel, K. Palaniswamy, N. Hebert, J. Hu, H. Yang, Y. Chen, and S. Das. “APOLLO: An automated power modeling framework for runtime power introspection in high-volume commercial microprocessors.” In Proceedings of the Annual International Symposium on Microarchitecture, MICRO, 1–14, 2021. https://doi.org/10.1145/3466752.3480064.
Xie Z, Xu X, Walker M, Knebel J, Palaniswamy K, Hebert N, et al. APOLLO: An automated power modeling framework for runtime power introspection in high-volume commercial microprocessors. In: Proceedings of the Annual International Symposium on Microarchitecture, MICRO. 2021. p. 1–14.
Xie, Z., et al. “APOLLO: An automated power modeling framework for runtime power introspection in high-volume commercial microprocessors.” Proceedings of the Annual International Symposium on Microarchitecture, MICRO, 2021, pp. 1–14. Scopus, doi:10.1145/3466752.3480064.
Xie Z, Xu X, Walker M, Knebel J, Palaniswamy K, Hebert N, Hu J, Yang H, Chen Y, Das S. APOLLO: An automated power modeling framework for runtime power introspection in high-volume commercial microprocessors. Proceedings of the Annual International Symposium on Microarchitecture, MICRO. 2021. p. 1–14.

Published In

Proceedings of the Annual International Symposium on Microarchitecture, MICRO

DOI

ISSN

1072-4451

ISBN

9781450385572

Publication Date

October 18, 2021

Start / End Page

1 / 14