Search Results for author: Ding Ding

Found 8 papers, 3 papers with code

Transferable Learned Image Compression-Resistant Adversarial Perturbations

no code implementations6 Jan 2024 Yang Sui, Zhuohang Li, Ding Ding, Xiang Pan, Xiaozhong Xu, Shan Liu, Zhenzhong Chen

Adversarial attacks can readily disrupt the image classification system, revealing the vulnerability of DNN-based recognition tasks.

Adversarial Attack Autonomous Driving +4

Venn: Resource Management Across Federated Learning Jobs

no code implementations13 Dec 2023 Jiachen Liu, Fan Lai, Ding Ding, Yiwen Zhang, Mosharaf Chowdhury

Scheduling edge resources among multiple FL jobs is different from GPU scheduling for cloud ML because of the ephemeral nature and planetary scale of participating devices as well as the overlapping resource requirements of diverse FL jobs.

Federated Learning Management +1

Corner-to-Center Long-range Context Model for Efficient Learned Image Compression

no code implementations29 Nov 2023 Yang Sui, Ding Ding, Xiang Pan, Xiaozhong Xu, Shan Liu, Bo Yuan, Zhenzhong Chen

To tackle this issue, we conduct an in-depth analysis of the performance degradation observed in existing parallel context models, focusing on two aspects: the Quantity and Quality of information utilized for context prediction and decoding.

Image Compression

Reconstruction Distortion of Learned Image Compression with Imperceptible Perturbations

no code implementations1 Jun 2023 Yang Sui, Zhuohang Li, Ding Ding, Xiang Pan, Xiaozhong Xu, Shan Liu, Zhenzhong Chen

Learned Image Compression (LIC) has recently become the trending technique for image transmission due to its notable performance.

Image Compression Image Reconstruction

BigDL 2.0: Seamless Scaling of AI Pipelines from Laptops to Distributed Cluster

1 code implementation CVPR 2022 Jason Dai, Ding Ding, Dongjie Shi, Shengsheng Huang, Jiao Wang, Xin Qiu, Kai Huang, Guoqiong Song, Yang Wang, Qiyuan Gong, Jiaming Song, Shan Yu, Le Zheng, Yina Chen, Junwei Deng, Ge Song

To address this challenge, we have open sourced BigDL 2. 0 at https://github. com/intel-analytics/BigDL/ under Apache 2. 0 license (combining the original BigDL and Analytics Zoo projects); using BigDL 2. 0, users can simply build conventional Python notebooks on their laptops (with possible AutoML support), which can then be transparently accelerated on a single node (with up-to 9. 6x speedup in our experiments), and seamlessly scaled out to a large cluster (across several hundreds servers in real-world use cases).

AutoML Distributed Computing +1

A Graph Attention Based Approach for Trajectory Prediction in Multi-agent Sports Games

no code implementations18 Dec 2020 Ding Ding, H. Howie Huang

In this paper, we propose a spatial-temporal trajectory prediction approach that is able to learn the strategy of a team with multiple coordinated agents.

Graph Attention Trajectory Prediction

Toward Detecting Violations of Differential Privacy

2 code implementations25 May 2018 Ding Ding, Yuxin Wang, Guanhong Wang, Danfeng Zhang, Daniel Kifer

The widespread acceptance of differential privacy has led to the publication of many sophisticated algorithms for protecting privacy.

Cryptography and Security

BigDL: A Distributed Deep Learning Framework for Big Data

1 code implementation16 Apr 2018 Jason Dai, Yiheng Wang, Xin Qiu, Ding Ding, Yao Zhang, Yanzhang Wang, Xianyan Jia, Cherry Zhang, Yan Wan, Zhichao Li, Jiao Wang, Shengsheng Huang, Zhongyuan Wu, Yang Wang, Yuhao Yang, Bowen She, Dongjie Shi, Qi Lu, Kai Huang, Guoqiong Song

This paper presents BigDL (a distributed deep learning framework for Apache Spark), which has been used by a variety of users in the industry for building deep learning applications on production big data platforms.

Fraud Detection Management +1

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