Postponed - EPPIcenter Seminar with Adam Sadilek, PhD

Academic,
Lecture/Seminar,
Special Event
Machine-Learned Epidemiology
-

1001 Potrero Ave
San Francisco, CA 94110
United States

View on Map

Apologies for the inconvenience, our EPPIcenter Seminar Series featuring Adam Sadlilek from Google Research on Thursday, March 26th at 12-1 PM in Carr Auditorium of Building 3 on the ZSFGH campus of UCSF has been postponed until further notice due to the COVID-19 outbreak.

Thank you for your understanding--stay safe!

 

AdamSeminarFlyerMar2020

Machine-Learned Epidemiology

Work in computational epidemiology to date has been limited by coarseness and lack of timeliness of observational data. Most existing models are based on hand-curated statistics that are often delayed, expensive to collect, and cover only limited jurisdictions. Our goal is to lift the state of the art in epidemiology to a new qualitative state, where real-time health predictions become feasible and actionable. We do this at scale by applying federated machine learning and secure aggregation to online data to infer what likely contributed to the contagion. In this talk, I will sample current projects at Google focusing on privacy-first epidemiology research and recent publications (e.g., https://www.nature.com/articles/s41467-019-12809-y, https://www.nature.com/articles/s41746-018-0045-1).

About the speaker:

Adam Sadilek focuses on large-scale machine learning applied to health and ecology at Google Research. Before that, he worked on speech understanding at Google[x]. Prior to joining Google, Adam was a co-founder of Fount.in, a machine learning startup providing automated text understanding.

About EPPIcenter:

EPPIcenter aims to advance the understanding of infectious diseases to reduce global morbidity and mortality. We believe that the greatest success in the fight against infectious diseases will come through a highly interdisciplinary, systems epidemiology approach, connecting traditionally siloed theoretical work, technology development, generation and collection of empiric data, and analysis using statistical and mathematical modeling. The monthly seminar series will reflect the diversity of disciplines we incorporate into research, training, and tool development, drawing from local and international scientists.

 

Add to Calendar 2020-03-26 12:00:00 2020-03-26 13:00:00 Postponed - EPPIcenter Seminar with Adam Sadilek, PhD Apologies for the inconvenience, our EPPIcenter Seminar Series featuring Adam Sadlilek from Google Research on Thursday, March 26th at 12-1 PM in Carr Auditorium of Building 3 on the ZSFGH campus of UCSF has been postponed until further notice due to the COVID-19 outbreak. Thank you for your understanding--stay safe!   Machine-Learned Epidemiology Work in computational epidemiology to date has been limited by coarseness and lack of timeliness of observational data. Most existing models are based on hand-curated statistics that are often delayed, expensive to collect, and cover only limited jurisdictions. Our goal is to lift the state of the art in epidemiology to a new qualitative state, where real-time health predictions become feasible and actionable. We do this at scale by applying federated machine learning and secure aggregation to online data to infer what likely contributed to the contagion. In this talk, I will sample current projects at Google focusing on privacy-first epidemiology research and recent publications (e.g., https://www.nature.com/articles/s41467-019-12809-y, https://www.nature.com/articles/s41746-018-0045-1). About the speaker: Adam Sadilek focuses on large-scale machine learning applied to health and ecology at Google Research. Before that, he worked on speech understanding at Google[x]. Prior to joining Google, Adam was a co-founder of Fount.in, a machine learning startup providing automated text understanding. About EPPIcenter: EPPIcenter aims to advance the understanding of infectious diseases to reduce global morbidity and mortality. We believe that the greatest success in the fight against infectious diseases will come through a highly interdisciplinary, systems epidemiology approach, connecting traditionally siloed theoretical work, technology development, generation and collection of empiric data, and analysis using statistical and mathematical modeling. The monthly seminar series will reflect the diversity of disciplines we incorporate into research, training, and tool development, drawing from local and international scientists.   1001 Potrero Ave San Francisco, CA 94110 United States View on Map Questions? Contact Isabel Rodriguez-Barraquer ([email protected]) or Bryan Greenhouse ([email protected]) HIV, ID & Global Medicine America/Los_Angeles public