2 research outputs found
Optimizations for a Current-Controlled Memristor-based Neuromorphic Synapse Design
The synapse is a key element of neuromorphic computing in terms of efficiency
and accuracy. In this paper, an optimized current-controlled memristive synapse
circuit is proposed. Our proposed synapse demonstrates reliability in the face
of process variation and the inherent stochastic behavior of memristors. Up to
an 82% energy optimization can be seen during the SET operation over prior
work. In addition, the READ process shows up to 54% energy savings. Our
current-controlled approach also provides more reliable programming over
traditional programming methods. This design is demonstrated with a 4-bit
memory precision configuration. Using a spiking neural network (SNN), a
neuromorphic application analysis was performed with this precision
configuration. Our optimized design showed up to 82% improvement in control
applications and a 2.7x improvement in classification applications compared
with other design cases
Embracing Visual Experience and Data Knowledge: Efficient Embedded Memory Design for Big Videos and Deep Learning
Energy efficient memory designs are becoming increasingly important, especially for applications related to mobile video technology and machine learning. The growing popularity of smart phones, tablets and other mobile devices has created an exponential demand for video applications in today?s society. When mobile devices display video, the embedded video memory within the device consumes a large amount of the total system power. This issue has created the need to introduce power-quality tradeoff techniques for enabling good quality video output, while simultaneously enabling power consumption reduction. Similarly, power efficiency issues have arisen within the area of machine learning, especially with applications requiring large and fast computation, such as neural networks. Using the accumulated data knowledge from various machine learning applications, there is now the potential to create more intelligent memory with the capability for optimized trade-off between energy efficiency, area overhead, and classification accuracy on the learning systems. In this dissertation, a review of recently completed works involving video and machine learning memories will be covered. Based on the collected results from a variety of different methods, including: subjective trials, discovered data-mining patterns, software simulations, and hardware power and performance tests, the presented memories provide novel ways to significantly enhance power efficiency for future memory devices. An overview of related works, especially the relevant state-of-the-art research, will be referenced for comparison in order to produce memory design methodologies that exhibit optimal quality, low implementation overhead, and maximum power efficiency.National Science FoundationND EPSCoRCenter for Computationally Assisted Science and Technology (CCAST