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STT-MRAM Design Technology Co-optimization for Hardware Neural Networks
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2018
Year
Unknown Venue
Embedded Stt-mram TechnologyElectrical EngineeringEngineeringVlsi DesignArray CircuitsHardware AccelerationHardware Neural NetworksNeurocomputersComputer EngineeringComputer ArchitectureHardware Neural NetworkComputer ScienceBrain-like ComputingParallel ComputingMicroelectronicsMemory ArchitectureTechnology Co-optimizationMulti-channel Memory Architecture
The potential of embedded STT-MRAM technology for designing large-scale multiply-and-accumulation (MAC) array circuits are evaluated by comprehensive and holistic design-technology co-optimizations. After careful calibrations with experimental data, post-layout circuit simulations together with GPU-enabled massively parallel Monte Carlo evaluations are conducted to guarantee the designs at rare failure rates. With all critical device and design non-idealities included, architectural emulations are performed to examine the hardware neural network (HNN)'s accuracies and estimate system-level power, performance and area specs. Results indicate the amount of process variation, parasites and error levels to control in order to achieve a feasible solution for STT-MRAM based HNNs.