Subject: Experienced PKPD Modelers for scientific research in the Savic 
Laboratory at the University of California, San Francisco (UCSF)

The Savic Lab is seeking experienced pharmacokinetic-pharmacodynamic (PKPD) 
modelers with expertise in advanced complex methodologies such as data 
analytics, machine learning (ML) and mechanistic modeling with a background in 
statistics, data science, applied mathematics, pharmacometrics or related 
fields (e.g., pharmacokinetics, pharmacodynamics, quantitative pharmacology, 
systemic pharmacology, computational biology) for scientific research and 
scientific mentoring of junior scientists.

Background: The research laboratory of Prof. Rada Savic in the Department of 
Bioengineering and Therapeutic Sciences of the University of California, San 
Francisco (UCSF) is engaged in groundbreaking drug development projects for 
Global Health including infectious diseases such as tuberculosis, HIV, and 
malaria, as well as pain management and autoimmune disease with a focus on 
identifying optimal treatment regimens. We develop and apply disease models, 
perform pharmacokinetic and pharmacodynamic evaluations, build physiology-based 
pharmacokinetic models, conduct exposure-response analyses, and utilize 
model-based simulations with the ultimate goal to optimize treatment in adult, 
pediatric, and special patient populations. To this aim, the Savic Lab 
collaborates with clinical and preclinical leaders within the field, as well as 
with federal an international global health partners, private foundations, and 
with pharmaceutical and biotech companies. The Savic Lab has a strong collegial 
character where passionate scientist, with different backgrounds, collaborate 
and share their knowledge within focused teams that enable the miracle of 
scientific research to make a difference.

Required skills: In addition to passion for scientific research, enthusiasm, 
motivation and independent thinking, candidates must have knowledge of 
pharmacokinetic-pharmacodynamic modeling and simulation, including some 
advanced statistical principles (nonlinear mixed effects modelling, Bayesian 
statistics, clinical trial simulations) and a Ph.D. in Pharmacometrics, 
Biopharmaceutics, Pharmaceutical Sciences, Mathematics, Statistics, Data 
Science, Computational Biology, Computer Science, or related discipline with at 
least 3 years of experience with increasing responsibility and independence. 
Strong programming skills in R, Matlab or Python and extensive experience in 
modeling and simulation software such as NONMEM, Monolix, Phoenix NLME, PKsim, 
and/or SimCYP is essential. Knowledge of drug development, high-performance 
computing, and dynamic modeling are preferred. Personal skills such as 
teamwork, accurate listening, strategic thinking, along with very good oral and 
written English language skills is expected and will be critical for the 
successful candidates.

Salary and benefits is commensurate with experience. Submit E-mail a curriculum 
vitae, a letter stating research interests and contact information for three 
references to the link: 
https://jobs.brassring.com/TGnewUI/Search/home/HomeWithPreLoad?PageType=JobDetails&partnerid=6495&siteid=5861&Areq=77706BR

Feel free to submit any question to: 
craig.shaf...@ucsf.edu<mailto:craig.shaf...@ucsf.edu>.

UC San Francisco seeks candidates whose experience, teaching, research, or 
community service that has prepared them to contribute to our commitment to 
diversity and excellence. The University of California is an Equal 
Opportunity/Affirmative Action Employer. All qualified applicants will receive 
consideration for employment without regard to race, color, religion, sex, 
sexual orientation, gender identity, national origin, disability, age or 
protected veteran status.

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