Dinesh Kushwaha, Rajat Kohli, et al.
AICAS 2023
In this manuscript, a signal margin-assisted design methodology for a current-based analog compute-in-memory (CIM) architecture is presented. Validation of the design methodology is done on the proposed analog compute-in-memory (CIM) architecture using a C-2C ladder. The effectiveness of an analog CIM architecture depends on the signal margin, scalability, throughput, energy efficiency, computation density, accuracy, and robustness. Hence, we proposed a design methodology to evaluate the effectiveness of an analog CIM architecture at the early design stage. The proposed design methodology can consider the device-level variations to estimate system-level performance and computation accuracy. An evaluation model is also developed to explore the proposed design methodology. LeNet-5 CNN is used to validate the proposed evaluation model. The signal margin of the proposed architecture is 35 mV, which is 2.5 × higher than the state-of-the-art. The energy efficiency of the proposed architecture is 1666 TOPS/W at 0.9 V supply voltage in 28 nm CMOS technology. The inference accuracy for the MNIST data set is 98.6 %.
Dinesh Kushwaha, Rajat Kohli, et al.
AICAS 2023
Dinesh Kushwaha, Ashish Joshi, et al.
VLSID 2023
Dinesh Kushwaha, Aditya Sharma, et al.
ISCAS 2022
Dinesh Kushwaha, Ashish Joshi, et al.
IEEE TCAS-II