[ECCV'24]Cheng Gong, Yao Chen, Qiuyang Luo, Ye Lu, Tao Li, Yuzhi Zhang,
Yufei Sun, and Le Zhang. Deep Feature Surgery: Towards Accurate and Efficient Multi-Exit Networks.
[Code][Paper]
[CAAI AIR'24]Cheng Gong, Haoshuai Zheng, Mengting Hu, Zheng Lin, Deng-Ping
Fan, Yuzhi Zhang, and Tao Li. Minimize Quantization Output Error with Bias Compensation.
(Accepted)
[Code][Paper]
[JCST'24]Cheng Gong, Ye Lu, Su-Rong Dai, Qian Deng, Cheng-Kun Du, and Tao
Li. AutoQNN: An End-to-End Framework for Automatically Quantizing Neural Networks.
[Code]
[Paper]
[TPDS'22]Cheng Gong, Ye Lu, Kunpeng Xie, Zongming Jin, Tao Li, and Yanzhi
Wang. Elastic Significant Bit Quantization and Acceleration for Deep Neural Networks.
[Code]
[Paper]
[TC'21]Cheng Gong, Yao Chen, Ye Lu, Tao Li, Cong Hao, and Deming Chen.
VecQ:
Minimal Loss DNN Model Compression with Vectorized Weight Quantization.
[Code]
[Paper]
[Journal of Software'21]Cheng Gong, Ye Lu, Surong Dai, Fangxin Liu, Xinwei
Chen, and Tao Li. Ultra-Low Loss Quantization Method for Deep Neural Network Compression.
[Code]
[Paper]
[Information Science'21]Cheng Gong, Ye Lu, Chunying Song, Tao Li, and Kai
Wang. OSN: Onion-Ring Support Neighbors for Correspondence Selection.
[Code]
[Paper]
[Communications of the CCF'21] Ye Lu, Cheng Gong, and Tao Li. Challenges
and
Opportunities in Automatic Compression of Deep Neural Networks.
[Paper]
[IJCNN'19]Cheng Gong, Tao Li, Ye Lu, Cong Hao, Xiaofan Zhang, Deming Chen,
and Yao Chen. $\mu$L2Q: An Ultra-Low Loss Quantization Method for DNN Compression.
[Code]
[Paper]
[ISVLSI'19] Yao Chen, Kai Zhang, Cheng Gong, Cong Hao, Xiaofan Zhang, Tao
Li,
and Deming Chen. T-DLA: An Open-Source Deep Learning Accelerator for Ternarized DNN Models on
Embedded FPGA.
[Code]
[Paper]
[ICPADS'19] Fangxin Liu, Kunpeng Xie, Cheng Gong, Shusheng Liu, Ye Lu, and
Tao Li. LHC: A Low-Power Heterogeneous Computing Method on Neural Network Accelerator.
[Paper]
[IJCAI'18] Deng-Ping Fan, Cheng Gong, Yang Cao, Bo Ren, Ming-Ming Cheng,
and
Ali Borji. Enhanced-alignment Measure for Binary Foreground Map Evaluation.
[Code]
[Paper]
Invited Talks
Quantization Methods for Deep Neural Networks. CCF Chips Conference - Session of Outstanding
Young
Scholars in Computer Architecture, Nanjing, China, 2022.
An Ultra Low-Loss Deep Neural Network Quantization Method. The 18th China Computer Federation
Embedded System Technology Conference, CCF ESTC 2020, Chengdu, China, 2020.
μl2Q: An Ultra Low Loss Quantization Method for DNN Compression. The 2019 International Joint
Conference on Neural Networks, IJCNN. Budapest, Hungary, 2019.
Patents
Multi-Classifier Neural NetworkOptimization via Feature Rerouting. Cheng Gong, Tao Li, and Ye L.
patent No. CN202210507772.9.
Elastic Significant Bit Quantiza-tion and Acceleration for Deep Neural Networks. Cheng Gong, Ye
Lu, and Tao Li. patent No. ZL202010661226.1.
Major Projects & Funding
As Principle Investigator (Pl)
Adaptive Nonlinear Quantization and Acceleration for Deep Neural Networks.
China Postdoctoral Science Foundation. RMB ¥80,000: 2023 - 2025.
As Collaborator
High-Performance Virtual Execution Engine for Smart Contracts and Trustworthy Heterogeneous
Acceleration.
National Natural Science Foundation of China. 2024 - 2027.
Automatic DNN Quantization and Deployment for Domestic Intelligent Processors.
Open Project Fund of State Key Laboratory of Computer Architecture, ICT, CAS. 2020 - 2022.
Small Object Detection based on Deep Learning and Its Heterogeneous Acceleration.
National Natural Science Foundation of China. 2019 - 2022.
DNN Compression, Deployment, and Acceleration on Edge Devices and Cambrian Neural
Processor.
Open Project Fund of State Key Laboratory of Computer Architecture, ICT, CAS. 2019 - 2021.
DNN Model Compression and Acceleration for Edge Intelligence.
Tianjin Natural Science Youth Fund. 2019 - 2021.
Heterogeneous Internet of Things Application Service Collaborative Technology for Deep
Integration.
National Key Research and Development Program of China. 2019 - 2023.
High-Level Language C++ Programming for Undergraduate Students. College of Software, Nankai
University, Tianjin, China.
Deep Learning for Graduate Students and International Students. College of Software, Nankai
University, Tianjin, China.
Professional Services
Conference Review
Qeios 2025
ACMMM Workshop UAVs in Multimedia (UAVM) 2024
Chinese Conference on Pattern Recognition and Computer Vision (PRCV) 2024
News
[07/2024] Our paper entitled "Deep Feature Surgery: Towards Accurate and Efficient Multi-Exit
Networks" has been accepted by ECCV 2024.
[06/2024] Our paper entitled "Minimize Quantization Output Error with Bias Compensation" has
been
accepted by CAAI AIR 2024.