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Liang Luo

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Wukong: Towards a Scaling Law for Large-Scale Recommendation

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Mar 08, 2024
Buyun Zhang, Liang Luo, Yuxin Chen, Jade Nie, Xi Liu, Daifeng Guo, Yanli Zhao, Shen Li, Yuchen Hao, Yantao Yao, Guna Lakshminarayanan, Ellie Dingqiao Wen, Jongsoo Park, Maxim Naumov, Wenlin Chen

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Disaggregated Multi-Tower: Topology-aware Modeling Technique for Efficient Large-Scale Recommendation

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Mar 07, 2024
Liang Luo, Buyun Zhang, Michael Tsang, Yinbin Ma, Ching-Hsiang Chu, Yuxin Chen, Shen Li, Yuchen Hao, Yanli Zhao, Guna Lakshminarayanan, Ellie Dingqiao Wen, Jongsoo Park, Dheevatsa Mudigere, Maxim Naumov

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Pre-train and Search: Efficient Embedding Table Sharding with Pre-trained Neural Cost Models

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May 03, 2023
Daochen Zha, Louis Feng, Liang Luo, Bhargav Bhushanam, Zirui Liu, Yusuo Hu, Jade Nie, Yuzhen Huang, Yuandong Tian, Arun Kejariwal, Xia Hu

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Self-discipline on multiple channels

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Apr 27, 2023
Jiutian Zhao, Liang Luo, Hao Wang

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PyTorch FSDP: Experiences on Scaling Fully Sharded Data Parallel

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Apr 21, 2023
Yanli Zhao, Andrew Gu, Rohan Varma, Liang Luo, Chien-Chin Huang, Min Xu, Less Wright, Hamid Shojanazeri, Myle Ott, Sam Shleifer, Alban Desmaison, Can Balioglu, Bernard Nguyen, Geeta Chauhan, Yuchen Hao, Shen Li

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DHEN: A Deep and Hierarchical Ensemble Network for Large-Scale Click-Through Rate Prediction

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Mar 11, 2022
Buyun Zhang, Liang Luo, Xi Liu, Jay Li, Zeliang Chen, Weilin Zhang, Xiaohan Wei, Yuchen Hao, Michael Tsang, Wenjun Wang, Yang Liu, Huayu Li, Yasmine Badr, Jongsoo Park, Jiyan Yang, Dheevatsa Mudigere, Ellie Wen

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Characterizing and Taming Resolution in Convolutional Neural Networks

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Oct 28, 2021
Eddie Yan, Liang Luo, Luis Ceze

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Cloud Collectives: Towards Cloud-aware Collectives forML Workloads with Rank Reordering

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May 28, 2021
Liang Luo, Jacob Nelson, Arvind Krishnamurthy, Luis Ceze

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Accelerating SpMM Kernel with Cache-First Edge Sampling for Graph Neural Networks

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Apr 23, 2021
Chien-Yu Lin, Liang Luo, Luis Ceze

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High-performance, Distributed Training of Large-scale Deep Learning Recommendation Models

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Apr 15, 2021
Dheevatsa Mudigere, Yuchen Hao, Jianyu Huang, Andrew Tulloch, Srinivas Sridharan, Xing Liu, Mustafa Ozdal, Jade Nie, Jongsoo Park, Liang Luo, Jie Amy Yang, Leon Gao, Dmytro Ivchenko, Aarti Basant, Yuxi Hu, Jiyan Yang, Ehsan K. Ardestani, Xiaodong Wang, Rakesh Komuravelli, Ching-Hsiang Chu, Serhat Yilmaz, Huayu Li, Jiyuan Qian, Zhuobo Feng, Yinbin Ma, Junjie Yang, Ellie Wen, Hong Li, Lin Yang, Chonglin Sun, Whitney Zhao, Dimitry Melts, Krishna Dhulipala, KR Kishore, Tyler Graf, Assaf Eisenman, Kiran Kumar Matam, Adi Gangidi, Guoqiang Jerry Chen, Manoj Krishnan, Avinash Nayak, Krishnakumar Nair, Bharath Muthiah, Mahmoud khorashadi, Pallab Bhattacharya, Petr Lapukhov, Maxim Naumov, Lin Qiao, Mikhail Smelyanskiy, Bill Jia, Vijay Rao

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