Graduate Student Researcher

Sylvia Cheng

Epidemiology

Sylvia is a PhD student in Epidemiology at UC Berkeley, advised by Barbara Laraia and Alejandro Schuler. Her research interest lies in the intersection of precision health, causal inference and machine learning with robust uncertainty quantifications. Her work focuses on addressing and solving real-world challenges, such as evaluating causal effects of determinants of cellular aging as well as metabolic diseases. Sylvia also serves as a Data Scientist in the Division of Research at Kaiser Permanente.

Nolan Gunter

Biostatistics

Nolan Gunter is a Biostatistics PhD student at UC Berkeley, advised by Dr. Alan Hubbard, having completed the Biostatistics MA program in Spring 2023. Nolan has worked on unsupervised clustering for socioeconomic status with D-SINE. They also work as a long-term intern under Non-Clinical Biostatistics at Genentech/Roche.

Yunwen Ji

Biostatistics

Yunwen Ji is currently a second year student in Biostatistics at the University of California, Berkeley, mentored by Alan Hubbard. Her research interests primarily lie in machine learning methodologies in precision medicine.

Andy Kim

Biostatistics

Andy Kim, MA is currently a PhD candidate in Biostatistics at the University of California, Berkeley, mentored by Dr. Alan Hubbard. His research interests primarily lie at the intersection of personalized medicine and causal inference. He is currently working on an unsupervised clustering machine learning project with D-SINE.

Kirsten Landsiedel

Biostatistics

Kirsten is a PhD student in Biostatistics at UC Berkeley, mentored by Mark van der Laan and Laura Balzer. Her research interests include targeted machine learning and causal inference with applications to complex, real-world data. She is currently working on improving the efficiency of estimators in adaptive resampling designs, estimating TB incidence in children and adolescents in Uganda, and better understanding the link between alcohol use and TB infection.

Kaitlyn Lee

Biostatistics

Kaitlyn Lee is a PhD student in Biostatistics at the University of California, Berkeley mentored by Alejandro Schuler. Her research interests are broadly in causal inference, machine learning, and methods research. She is interested in developing methods to answer real-world questions about health and social policy in a statistically rigorous manner.

Yi Li

Biostatistics

Yi Li is currently a PhD student in Biostatistics at the University of California, Berkeley, mentored by Mark van der Laan. His research interests primarily lie in causal inference, semi parametric estimation and network analysis. Recent work has been in adaptive design.

Joy Zora Nakato

Biostatistics

Joy Zora Nakato is a PhD student in Biostatistics at the University of California, Berkeley mentored by Laura Balzer and Mark van Der Laan. Her research interests include using targeted machine learning and causal inference to address challenges that arise during design and analysis of clinical trials and observational studies. She is currently working on efficient estimation of causal effects in Cluster Randomized trials addressing differential measurement and mediation with an application to uptake of HIV biomedical prevention among high risk populations in rural Uganda and Kenya...

Sky Qiu

Biostatistics

Sky Qiu is a PhD student in Biostatistics at the University of California, Berkeley, mentored by Alan Hubbard and Mark van der Laan. His research interests primarily lie in causal inference and targeted learning. Recent work has been in extending the statistical method for hybrid randomized-observational data to survival outcomes, as well as developing scalable versions of highly adaptive lasso.

Seraphina Shi

Biostatistics

Seraphina Shi is currently a PhD candidate in Biostatistics at the university of California, Berkeley, working/mentored by professors Alan Hubbard and Haiyan Huang. Her research interests primarily lie in precision medicine, causal inference, and machine learning methodologies and applications. Recent work has been in causal inference, and machine learning methodologies and applications in precision medicine.