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Duckhwan Kim

Researcher at Georgia Institute of Technology

Publications -  21
Citations -  677

Duckhwan Kim is an academic researcher from Georgia Institute of Technology. The author has contributed to research in topics: Artificial neural network & Multilayer perceptron. The author has an hindex of 10, co-authored 21 publications receiving 502 citations. Previous affiliations of Duckhwan Kim include KAIST.

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Journal ArticleDOI

Neurocube: a programmable digital neuromorphic architecture with high-density 3D memory

TL;DR: The basic architecture of the Neurocube is presented and an analysis of the logic tier synthesized in 28nm and 15nm process technologies are presented and the performance is evaluated through the mapping of a Convolutional Neural Network and estimating the subsequent power and performance for both training and inference.
Proceedings ArticleDOI

A power-aware digital feedforward neural network platform with backpropagation driven approximate synapses

TL;DR: A power-aware digital feedforward neural network platform that utilizes the backpropagation algorithm during training to enable energy-quality trade-off and reduces system power by ~38% with 0.4% lower recognition accuracy in a classification problem.
Journal ArticleDOI

A Power-Aware Digital Multilayer Perceptron Accelerator with On-Chip Training Based on Approximate Computing

TL;DR: This paper proposes that approximation by reducing bit-precision and using inexact multiplier can save power consumption of digital multilayer perceptron accelerator during the classification of MNIST (inference) with negligible accuracy degradation.
Proceedings ArticleDOI

Adaptive weight compression for memory-efficient neural networks

TL;DR: An application of JPEG image encoding to compress the weights by exploiting the spatial locality and smoothness of the weight matrix by adapting the quantization factor of the JPEG algorithm depending on the error-sensitivity (gradient) of each weight is presented.
Journal ArticleDOI

3-D Stacked Image Sensor With Deep Neural Network Computation

TL;DR: The paper presents the design of Neurosensor–a CMOS image sensor with 3-D stacking of pixel array, read-out circuits, memory, and computing logic for DNN, and shows integrating DNN reduces transmit latency, but at the expense of processing and memory access latency.