Search Results for author: Urs Köster

Found 4 papers, 1 papers with code

Scalable Spatiotemporal Prediction with Bayesian Neural Fields

1 code implementation12 Mar 2024 Feras Saad, Jacob Burnim, Colin Carroll, Brian Patton, Urs Köster, Rif A. Saurous, Matthew Hoffman

Spatiotemporal datasets, which consist of spatially-referenced time series, are ubiquitous in many scientific and business-intelligence applications, such as air pollution monitoring, disease tracking, and cloud-demand forecasting.

Bayesian Inference Uncertainty Quantification

Adaptive Braking for Mitigating Gradient Delay

no code implementations2 Jul 2020 Abhinav Venigalla, Atli Kosson, Vitaliy Chiley, Urs Köster

Neural network training is commonly accelerated by using multiple synchronized workers to compute gradient updates in parallel.

Flexpoint: An Adaptive Numerical Format for Efficient Training of Deep Neural Networks

no code implementations NeurIPS 2017 Urs Köster, Tristan J. Webb, Xin Wang, Marcel Nassar, Arjun K. Bansal, William H. Constable, Oğuz H. Elibol, Scott Gray, Stewart Hall, Luke Hornof, Amir Khosrowshahi, Carey Kloss, Ruby J. Pai, Naveen Rao

Here we present the Flexpoint data format, aiming at a complete replacement of 32-bit floating point format training and inference, designed to support modern deep network topologies without modifications.

Generative Adversarial Network

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