Alert button
Picture for Hector Yuen

Hector Yuen

Alert button

Supporting Massive DLRM Inference Through Software Defined Memory

Add code
Bookmark button
Alert button
Nov 08, 2021
Ehsan K. Ardestani, Changkyu Kim, Seung Jae Lee, Luoshang Pan, Valmiki Rampersad, Jens Axboe, Banit Agrawal, Fuxun Yu, Ansha Yu, Trung Le, Hector Yuen, Shishir Juluri, Akshat Nanda, Manoj Wodekar, Dheevatsa Mudigere, Krishnakumar Nair, Maxim Naumov, Chris Peterson, Mikhail Smelyanskiy, Vijay Rao

Figure 1 for Supporting Massive DLRM Inference Through Software Defined Memory
Figure 2 for Supporting Massive DLRM Inference Through Software Defined Memory
Figure 3 for Supporting Massive DLRM Inference Through Software Defined Memory
Figure 4 for Supporting Massive DLRM Inference Through Software Defined Memory
Viaarxiv icon

Low-Precision Hardware Architectures Meet Recommendation Model Inference at Scale

Add code
Bookmark button
Alert button
May 26, 2021
Zhaoxia, Deng, Jongsoo Park, Ping Tak Peter Tang, Haixin Liu, Jie, Yang, Hector Yuen, Jianyu Huang, Daya Khudia, Xiaohan Wei, Ellie Wen, Dhruv Choudhary, Raghuraman Krishnamoorthi, Carole-Jean Wu, Satish Nadathur, Changkyu Kim, Maxim Naumov, Sam Naghshineh, Mikhail Smelyanskiy

Figure 1 for Low-Precision Hardware Architectures Meet Recommendation Model Inference at Scale
Figure 2 for Low-Precision Hardware Architectures Meet Recommendation Model Inference at Scale
Figure 3 for Low-Precision Hardware Architectures Meet Recommendation Model Inference at Scale
Figure 4 for Low-Precision Hardware Architectures Meet Recommendation Model Inference at Scale
Viaarxiv icon

Post-Training 4-bit Quantization on Embedding Tables

Add code
Bookmark button
Alert button
Nov 05, 2019
Hui Guan, Andrey Malevich, Jiyan Yang, Jongsoo Park, Hector Yuen

Figure 1 for Post-Training 4-bit Quantization on Embedding Tables
Figure 2 for Post-Training 4-bit Quantization on Embedding Tables
Figure 3 for Post-Training 4-bit Quantization on Embedding Tables
Figure 4 for Post-Training 4-bit Quantization on Embedding Tables
Viaarxiv icon

A Study of BFLOAT16 for Deep Learning Training

Add code
Bookmark button
Alert button
Jun 13, 2019
Dhiraj Kalamkar, Dheevatsa Mudigere, Naveen Mellempudi, Dipankar Das, Kunal Banerjee, Sasikanth Avancha, Dharma Teja Vooturi, Nataraj Jammalamadaka, Jianyu Huang, Hector Yuen, Jiyan Yang, Jongsoo Park, Alexander Heinecke, Evangelos Georganas, Sudarshan Srinivasan, Abhisek Kundu, Misha Smelyanskiy, Bharat Kaul, Pradeep Dubey

Figure 1 for A Study of BFLOAT16 for Deep Learning Training
Figure 2 for A Study of BFLOAT16 for Deep Learning Training
Figure 3 for A Study of BFLOAT16 for Deep Learning Training
Figure 4 for A Study of BFLOAT16 for Deep Learning Training
Viaarxiv icon

Deep Learning Inference in Facebook Data Centers: Characterization, Performance Optimizations and Hardware Implications

Add code
Bookmark button
Alert button
Nov 29, 2018
Jongsoo Park, Maxim Naumov, Protonu Basu, Summer Deng, Aravind Kalaiah, Daya Khudia, James Law, Parth Malani, Andrey Malevich, Satish Nadathur, Juan Pino, Martin Schatz, Alexander Sidorov, Viswanath Sivakumar, Andrew Tulloch, Xiaodong Wang, Yiming Wu, Hector Yuen, Utku Diril, Dmytro Dzhulgakov, Kim Hazelwood, Bill Jia, Yangqing Jia, Lin Qiao, Vijay Rao, Nadav Rotem, Sungjoo Yoo, Mikhail Smelyanskiy

Figure 1 for Deep Learning Inference in Facebook Data Centers: Characterization, Performance Optimizations and Hardware Implications
Figure 2 for Deep Learning Inference in Facebook Data Centers: Characterization, Performance Optimizations and Hardware Implications
Figure 3 for Deep Learning Inference in Facebook Data Centers: Characterization, Performance Optimizations and Hardware Implications
Figure 4 for Deep Learning Inference in Facebook Data Centers: Characterization, Performance Optimizations and Hardware Implications
Viaarxiv icon