A survey of accelerator architectures for deep neural networks
Recently, due to the availability of big data and the rapid growth of computing power,
artificial intelligence (AI) has regained tremendous attention and investment. Machine …
artificial intelligence (AI) has regained tremendous attention and investment. Machine …
Research progress on memristor: From synapses to computing systems
As the limits of transistor technology are approached, feature size in integrated circuit
transistors has been reduced very near to the minimum physically-realizable channel length …
transistors has been reduced very near to the minimum physically-realizable channel length …
In-memory learning with analog resistive switching memory: A review and perspective
In this article, we review the existing analog resistive switching memory (RSM) devices and
their hardware technologies for in-memory learning, as well as their challenges and …
their hardware technologies for in-memory learning, as well as their challenges and …
Rescuing memristor-based neuromorphic design with high defects
Memristor-based synaptic network has been widely investigated and applied to
neuromorphic computing systems for the fast computation and low design cost. As …
neuromorphic computing systems for the fast computation and low design cost. As …
An overview of efficient interconnection networks for deep neural network accelerators
Deep Neural Networks (DNNs) have shown significant advantages in many domains, such
as pattern recognition, prediction, and control optimization. The edge computing demand in …
as pattern recognition, prediction, and control optimization. The edge computing demand in …
DeepN-JPEG: A deep neural network favorable JPEG-based image compression framework
As one of most fascinating machine learning techniques, deep neural network (DNN) has
demonstrated excellent performance in various intelligent tasks such as image classification …
demonstrated excellent performance in various intelligent tasks such as image classification …
Neuroinspired unsupervised learning and pruning with subquantum CBRAM arrays
Resistive RAM crossbar arrays offer an attractive solution to minimize off-chip data transfer
and parallelize on-chip computations for neural networks. Here, we report a …
and parallelize on-chip computations for neural networks. Here, we report a …
A study of complex deep learning networks on high-performance, neuromorphic, and quantum computers
Current deep learning approaches have been very successful using convolutional neural
networks trained on large graphical-processing-unit-based computers. Three limitations of …
networks trained on large graphical-processing-unit-based computers. Three limitations of …
Technology aware training in memristive neuromorphic systems for nonideal synaptic crossbars
The advances in the field of machine learning using neuromorphic systems have paved the
pathway for extensive research on possibilities of hardware implementations of neural …
pathway for extensive research on possibilities of hardware implementations of neural …
Application of the quasi-static memdiode model in cross-point arrays for large dataset pattern recognition
We investigate the use and performance of the quasi-static memdiode model (QMM) when
incorporated into large cross-point arrays intended for pattern classification tasks. Following …
incorporated into large cross-point arrays intended for pattern classification tasks. Following …