Jan. 1, 2024, midnight | Alexander Terenin, David R. Burt, Artem Artemev, Seth Flaxman, Mark van der Wilk, Carl Edward Rasmussen, Hong Ge

JMLR www.jmlr.org

Gaussian processes are frequently deployed as part of larger machine learning and decision-making systems, for instance in geospatial modeling, Bayesian optimization, or in latent Gaussian models. Within a system, the Gaussian process model needs to perform in a stable and reliable manner to ensure it interacts correctly with other parts of the system. In this work, we study the numerical stability of scalable sparse approximations based on inducing points. To do so, we first review numerical stability, and illustrate typical …

bayesian decision decision-making systems gaussian processes geospatial instance machine machine learning making modeling optimization part process processes systems trees via

Data Scientist

@ Ford Motor Company | Chennai, Tamil Nadu, India

Systems Software Engineer, Graphics

@ Parallelz | Vancouver, British Columbia, Canada - Remote

Engineering Manager - Geo Engineering Team (F/H/X)

@ AVIV Group | Paris, France

Data Analyst

@ Microsoft | San Antonio, Texas, United States

Azure Data Engineer

@ TechVedika | Hyderabad, India

Senior Data & AI Threat Detection Researcher (Cortex)

@ Palo Alto Networks | Tel Aviv-Yafo, Israel