Sae Kyu Lee, Paul N. Whatmough, et al.
IEEE JSSC
Always-on classifiers for sensor data require a very wide operating range to support a variety of real-time workloads and must operate robustly at low supply voltages. We present a 16nm always-on wake-up controller with a fully-connected (FC) Deep Neural Network (DNN) accelerator that operates from 0.4-1 V. Calibration-free automatic voltage/frequency tuning is provided by tracking small non-zero Razor timing-error rates, and a novel timing-error driven sync-free fast adaptive clocking scheme provides resilience to on-chip supply voltage noise. The model access burden of neural networks is relaxed using a multicycle SRAM read, which allows memory voltage to be reduced at iso-throughput. The wide operating range allows for high performance at 1.36GHz, low-power consumption down to 750μW and state-of-the-art raw efficiency at 16-bit precision of 750 GOPS/W dense, or 1.81 TOPS/W sparse.
Sae Kyu Lee, Paul N. Whatmough, et al.
IEEE JSSC
Swagath Venkataramani, Vijayalakshmi Srinivasan, et al.
ISCA 2021
Paul N. Whatmough, Saekyu Lee, et al.
VLSI Circuits 2019
Ankur Agrawal, Saekyu Lee, et al.
ISSCC 2021