Search Results for author: Lingjia Tang

Found 10 papers, 4 papers with code

The Jaseci Programming Paradigm and Runtime Stack: Building Scale-out Production Applications Easy and Fast

no code implementations17 May 2023 Jason Mars, Yiping Kang, Roland Daynauth, Baichuan Li, Ashish Mahendra, Krisztian Flautner, Lingjia Tang

Today's production scale-out applications include many sub-application components, such as storage backends, logging infrastructure and AI models.

Management

Towards Personalized Intelligence at Scale

no code implementations13 Mar 2022 Yiping Kang, Ashish Mahendra, Christopher Clarke, Lingjia Tang, Jason Mars

Personalized Intelligence (PI) is the problem of providing customized AI experiences tailored to each individual user.

Rethinking Numerical Representations for Deep Neural Networks

no code implementations7 Aug 2018 Parker Hill, Babak Zamirai, Shengshuo Lu, Yu-Wei Chao, Michael Laurenzano, Mehrzad Samadi, Marios Papaefthymiou, Scott Mahlke, Thomas Wenisch, Jia Deng, Lingjia Tang, Jason Mars

With ever-increasing computational demand for deep learning, it is critical to investigate the implications of the numeric representation and precision of DNN model weights and activations on computational efficiency.

Computational Efficiency

Cannot find the paper you are looking for? You can Submit a new open access paper.