Search Results for author: Yu-Hsin Chen

Found 9 papers, 4 papers with code

Deep denoising autoencoder-based non-invasive blood flow detection for arteriovenous fistula

no code implementations12 Jun 2023 Li-Chin Chen, Yi-Heng Lin, Li-Ning Peng, Feng-Ming Wang, Yu-Hsin Chen, Po-Hsun Huang, Shang-Feng Yang, Yu Tsao

Clinical guidelines underscore the importance of regularly monitoring and surveilling arteriovenous fistula (AVF) access in hemodialysis patients to promptly detect any dysfunction.

Denoising Dimensionality Reduction +1

DREAM: A Dynamic Scheduler for Dynamic Real-time Multi-model ML Workloads

no code implementations7 Dec 2022 Seah Kim, Hyoukjun Kwon, Jinook Song, Jihyuck Jo, Yu-Hsin Chen, Liangzhen Lai, Vikas Chandra

Such dynamic behaviors introduce new challenges to the system software in an ML system since the overall system load is not completely predictable, unlike traditional ML workloads.

Scheduling

Multi-Scale High-Resolution Vision Transformer for Semantic Segmentation

1 code implementation CVPR 2022 Jiaqi Gu, Hyoukjun Kwon, Dilin Wang, Wei Ye, Meng Li, Yu-Hsin Chen, Liangzhen Lai, Vikas Chandra, David Z. Pan

Therefore, we propose HRViT, which enhances ViTs to learn semantically-rich and spatially-precise multi-scale representations by integrating high-resolution multi-branch architectures with ViTs.

Image Classification Representation Learning +3

Eyeriss v2: A Flexible Accelerator for Emerging Deep Neural Networks on Mobile Devices

1 code implementation10 Jul 2018 Yu-Hsin Chen, Tien-Ju Yang, Joel Emer, Vivienne Sze

In this work, we present Eyeriss v2, a DNN accelerator architecture designed for running compact and sparse DNNs.

Efficient Processing of Deep Neural Networks: A Tutorial and Survey

no code implementations27 Mar 2017 Vivienne Sze, Yu-Hsin Chen, Tien-Ju Yang, Joel Emer

The reader will take away the following concepts from this article: understand the key design considerations for DNNs; be able to evaluate different DNN hardware implementations with benchmarks and comparison metrics; understand the trade-offs between various hardware architectures and platforms; be able to evaluate the utility of various DNN design techniques for efficient processing; and understand recent implementation trends and opportunities.

Benchmarking speech-recognition +1

Towards Closing the Energy Gap Between HOG and CNN Features for Embedded Vision

no code implementations17 Mar 2017 Amr Suleiman, Yu-Hsin Chen, Joel Emer, Vivienne Sze

Computer vision enables a wide range of applications in robotics/drones, self-driving cars, smart Internet of Things, and portable/wearable electronics.

Self-Driving Cars

Hardware for Machine Learning: Challenges and Opportunities

1 code implementation22 Dec 2016 Vivienne Sze, Yu-Hsin Chen, Joel Emer, Amr Suleiman, Zhengdong Zhang

Machine learning plays a critical role in extracting meaningful information out of the zetabytes of sensor data collected every day.

BIG-bench Machine Learning Self-Driving Cars

Designing Energy-Efficient Convolutional Neural Networks using Energy-Aware Pruning

no code implementations CVPR 2017 Tien-Ju Yang, Yu-Hsin Chen, Vivienne Sze

With the proposed pruning method, the energy consumption of AlexNet and GoogLeNet are reduced by 3. 7x and 1. 6x, respectively, with less than 1% top-5 accuracy loss.

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