Search Results for author: Miao Jiang

Found 8 papers, 0 papers with code

Multi-user Co-inference with Batch Processing Capable Edge Server

no code implementations3 Jun 2022 Wenqi Shi, Sheng Zhou, Zhisheng Niu, Miao Jiang, Lu Geng

To deal with the coupled offloading and scheduling introduced by concurrent batch processing, we first consider an offline problem with a constant edge inference latency and the same latency constraint.

Scheduling

Joint Device Scheduling and Resource Allocation for Latency Constrained Wireless Federated Learning

no code implementations14 Jul 2020 Wenqi Shi, Sheng Zhou, Zhisheng Niu, Miao Jiang, Lu Geng

Then, a greedy device scheduling algorithm is introduced, which in each step selects the device consuming the least updating time obtained by the optimal bandwidth allocation, until the lower bound begins to increase, meaning that scheduling more devices will degrade the model accuracy.

Federated Learning Scheduling

Adaptive Data Augmentation with Deep Parallel Generative Models

no code implementations25 Sep 2019 Boli Fang, Miao Jiang, Abhirag Nagpure, Jerry Shen

Data augmentation(DA) is a useful technique to enlarge the size of the training set and prevent overfitting for different machine learning tasks when training data is scarce.

BIG-bench Machine Learning Data Augmentation +2

Achieving Fairness in Determining Medicaid Eligibility through Fairgroup Construction

no code implementations1 Jun 2019 Boli Fang, Miao Jiang, Jerry Shen

Effective complements to human judgment, artificial intelligence techniques have started to aid human decisions in complicated social problems across the world.

Classification Decision Making +2

Deli-Fisher GAN: Stable and Efficient Image Generation With Structured Latent Generative Space

no code implementations ICLR 2019 Boli Fang, Chuck Jia, Miao Jiang, Dhawal Chaturvedi

In this paper we propose the Deli-Fisher GAN, a GAN that generates photo-realistic images by enforcing structure on the latent generative space using similar approaches in \cite{deligan}.

Image Generation

Parallel Recurrent Data Augmentation for GAN training with Limited and Diverse Data

no code implementations25 Mar 2019 Boli Fang, Miao Jiang

The need for large amounts of training image data with clearly defined features is a major obstacle to applying generative adversarial networks(GAN) on image generation where training data is limited but diverse, since insufficient latent feature representation in the already scarce data often leads to instability and mode collapse during GAN training.

Data Augmentation Image Generation

Deep Generative Inpainting with Comparative Sample Augmentation

no code implementations25 Mar 2019 Boli Fang, Miao Jiang, Jerry Shen, Bjord Stenger

Recent advancements in deep learning techniques such as Convolutional Neural Networks(CNN) and Generative Adversarial Networks(GAN) have achieved breakthroughs in the problem of semantic image inpainting, the task of reconstructing missing pixels in given images.

Image Inpainting

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