A survey of deep learning on mobile devices: Applications, optimizations, challenges, and research opportunities
Deep learning (DL) has demonstrated great performance in various applications on
powerful computers and servers. Recently, with the advancement of more powerful mobile …
powerful computers and servers. Recently, with the advancement of more powerful mobile …
Teachers do more than teach: Compressing image-to-image models
Abstract Generative Adversarial Networks (GANs) have achieved huge success in
generating high-fidelity images, however, they suffer from low efficiency due to tremendous …
generating high-fidelity images, however, they suffer from low efficiency due to tremendous …
Ascend: a scalable and unified architecture for ubiquitous deep neural network computing: Industry track paper
H Liao, J Tu, J Xia, H Liu, X Zhou… - … Symposium on High …, 2021 - ieeexplore.ieee.org
Deep neural networks (DNNs) have been successfully applied to a great variety of
applications, ranging from small IoT devices to large scale services in a data center. In order …
applications, ranging from small IoT devices to large scale services in a data center. In order …
[HTML][HTML] Automated muzzle detection and biometric identification via few-shot deep transfer learning of mixed breed cattle
Livestock welfare and management could be greatly enhanced by the replacement of
branding or ear tagging with less invasive visual biometric identification methods. Biometric …
branding or ear tagging with less invasive visual biometric identification methods. Biometric …
Real-time neural network inference on extremely weak devices: agile offloading with explainable AI
With the wide adoption of AI applications, there is a pressing need of enabling real-time
neural network (NN) inference on small embedded devices, but deploying NNs and …
neural network (NN) inference on small embedded devices, but deploying NNs and …
A survey of deep learning on cpus: opportunities and co-optimizations
CPU is a powerful, pervasive, and indispensable platform for running deep learning (DL)
workloads in systems ranging from mobile to extreme-end servers. In this article, we present …
workloads in systems ranging from mobile to extreme-end servers. In this article, we present …
Tiny but accurate: A pruned, quantized and optimized memristor crossbar framework for ultra efficient dnn implementation
The memristor crossbar array has emerged as an intrinsically suitable matrix computation
and low-power acceleration framework for DNN applications. Many techniques such as …
and low-power acceleration framework for DNN applications. Many techniques such as …
An ultra-efficient memristor-based DNN framework with structured weight pruning and quantization using ADMM
The high computation and memory storage of large deep neural networks (DNNs) models
pose intensive challenges to the conventional Von-Neumann architecture, incurring sub …
pose intensive challenges to the conventional Von-Neumann architecture, incurring sub …
[HTML][HTML] Imu-based fitness activity recognition using cnns for time series classification
Mobile fitness applications provide the opportunity to show users real-time feedback on their
current fitness activity. For such applications, it is essential to accurately track the user's …
current fitness activity. For such applications, it is essential to accurately track the user's …
Integrating handcrafted features with deep representations for smartphone authentication
Recent research demonstrates the potential of touch dynamics as a usable and privacy-
preserving scheme for smartphone authentication. Most existing approaches rely on …
preserving scheme for smartphone authentication. Most existing approaches rely on …