Putra, R. V. W., Hanif, M. A., & Shafique, M. (2022). EnforceSNN: Enabling resilient and energy-efficient spiking neural network inference considering approximate DRAMs for embedded systems. Frontiers in Neuroscience, 16. https://doi.org/10.3389/fnins.2022.937782
E191-02 - Forschungsbereich Embedded Computing Systems
-
Journal:
Frontiers in Neuroscience
-
ISSN:
1662-453X
-
Date (published):
2022
-
Number of Pages:
20
-
Publisher:
FRONTIERS MEDIA SA
-
Peer reviewed:
Yes
-
Keywords:
DRAM errors; approximate DRAM; approximate computing; energy efficiency; error tolerance; high performance; resilience; spiking neural networks
en
Abstract:
Spiking Neural Networks (SNNs) have shown capabilities of achieving high accuracy under unsupervised settings and low operational power/energy due to their bio-plausible computations. Previous studies identified that DRAM-based off-chip memory accesses dominate the energy consumption of SNN processing. However, state-of-the-art works do not optimize the DRAM energy-per-access, thereby hindering the SNN-based systems from achieving further energy efficiency gains. To substantially reduce the DRAM energy-per-access, an effective solution is to decrease the DRAM supply voltage, but it may lead to errors in DRAM cells (i.e., so-called approximate DRAM). Toward this, we propose EnforceSNN, a novel design framework that provides a solution for resilient and energy-efficient SNN inference using reduced-voltage DRAM for embedded systems. The key mechanisms of our EnforceSNN are: (1) employing quantized weights to reduce the DRAM access energy; (2) devising an efficient DRAM mapping policy to minimize the DRAM energy-per-access; (3) analyzing the SNN error tolerance to understand its accuracy profile considering different bit error rate (BER) values; (4) leveraging the information for developing an efficient fault-aware training (FAT) that considers different BER values and bit error locations in DRAM to improve the SNN error tolerance; and (5) developing an algorithm to select the SNN model that offers good trade-offs among accuracy, memory, and energy consumption. The experimental results show that our EnforceSNN maintains the accuracy (i.e., no accuracy loss for BER ≤ 10-3) as compared to the baseline SNN with accurate DRAM while achieving up to 84.9% of DRAM energy saving and up to 4.1x speed-up of DRAM data throughput across different network sizes.
en
Research Areas:
Computer Engineering and Software-Intensive Systems: 100%