Corey Liam Lammie, Hadjer Benmeziane, et al.
Nat. Rev. Electr. Eng.
A mixed-signal dot-product computation has growing use cases in embedded sensory systems and emerging computing platforms (such as in-memory or neuromorphic computings) for the ultra low-power implementation of machine learning (ML) algorithms. This paper proposes a compact and energy-efficient mixed-signal dot-product circuit with switched capacitors which has an analog input as one operand and a digital input as the other operand. The proposed dot product processor requires only two unit-sized capacitors per multiplication, thereby highly energy- and area- efficient. The proposed processor also supports flexible input bit-precision without any hardware overhead by simply iterating more cycles to provide higher bit precision. The simulated results for the proposed circuit designed in a 14nm CMOS show 10.5 and 7.9 improvements in energy efficiency and computation delay, respectively, compared to a conventional switched-capacitor based implementation while maintaining 9 bit output resolution.
Corey Liam Lammie, Hadjer Benmeziane, et al.
Nat. Rev. Electr. Eng.
Samuele Ruffino, Kumudu Geethan Karunaratne, et al.
DATE 2024
Sidney Tsai
MRS Fall Meeting 2023
Olivier Maher, N. Harnack, et al.
DRC 2023