S. R. Nandakumar, Irem Boybat, et al.
DRC 2017
In-memory computing is a promising non-von Neumann approach where certain computational tasks are performed within resistive memory units by exploiting their physical attributes. In this paper, we propose a new method for fast and robust compressed sensing (CS) of sparse signals with approximate message passing recovery using in-memory computing. The measurement matrix for CS is encoded in the conductance states of resistive memory devices organized in a crossbar array. In this way, the matrix-vector multiplications associated with both the compression and recovery tasks can be performed by the same crossbar array without intermediate data movements at potential O(1) time complexity. For a signal of size N, the proposed method achieves a potential O(N)-fold recovery complexity reduction compared with a standard software approach. We show the array-level robustness of the scheme through large-scale experimental demonstrations using more than 256k phase-change memory devices.
S. R. Nandakumar, Irem Boybat, et al.
DRC 2017
Valeria Bragaglia, Benedikt Kersting, et al.
MRS Spring/Fall Meeting 2020
Robert L. Bruce, Syed Ghazi Sarwat, et al.
IRPS 2021
Mark A. Lantz, Giovanni Cherubini, et al.
IEEE TCST