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Bayesian Modeling Jobs in California (NOW HIRING)

Lead deployment of advanced AI/ML solutions (multimodal transformers, graph or sequence models, Bayesian/probabilistic approaches) for toxicity prediction and translational safety applications.

Design and experiment with methods in online learning, reinforcement learning, multi-armed bandits, forecasting, game theory, and Bayesian modeling-in non-stationary, adversarial environments.

Design and experiment with methods in online learning, reinforcement learning, multi-armed bandits, forecasting, game theory, and Bayesian modeling--in non-stationary, adversarial environments.

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Design and experiment with methods in online learning, reinforcement learning, multi-armed bandits, forecasting, game theory, and Bayesian modeling-in non-stationary, adversarial environments.

Methodological breadth across comp-bio modeling spectrum - classical and hierarchical statistics, causal inference, Bayesian modeling, network-based and mechanistic approaches, and modern deep ...

Apply your expertise in designing, implementing and validating unsupervised deep learning, reinforcement learning and bayesian models. * Present exploratory findings to both, technical and management ...

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Bayesian Modeling information

What is the difference between Bayesian Modeling vs Data Scientist?

AspectBayesian ModelingData Scientist
Required CredentialsStatistics, Mathematics, Data AnalysisStatistics, Computer Science, Data Analysis
Work EnvironmentResearch-focused, statistical modelingCross-functional, data analysis, visualization
Industry UsageResearch, academia, specialized analyticsBusiness, tech, finance, healthcare
Common Search/ComparisonYesYes

Bayesian Modeling and Data Scientists often overlap in skills like statistics and data analysis. Bayesian Modeling specializes in probabilistic models and statistical inference, while Data Scientists have broader roles including data cleaning, visualization, and machine learning. Both roles are essential in data-driven industries, but Bayesian Modeling is more focused on advanced statistical techniques.

What are the key skills and qualifications needed to thrive as a Bayesian Modeler, and why are they important?

To thrive as a Bayesian Modeler, you need a solid background in statistics, probability theory, and mathematical modeling, often supported by an advanced degree in statistics, mathematics, or a related field. Proficiency with programming languages such as R, Python, or Stan, and experience with statistical software and Bayesian inference tools are essential. Strong analytical thinking, attention to detail, and effective communication skills help in interpreting results and collaborating with multidisciplinary teams. These skills ensure accurate model development, reliable data-driven insights, and clear communication of complex findings to stakeholders.

How does a Bayesian Modeling specialist typically collaborate with cross-functional teams in a workplace setting?

Bayesian Modeling specialists often work closely with data scientists, software engineers, and domain experts to integrate probabilistic models into larger analytical or production systems. They are involved in translating complex statistical concepts into actionable insights and recommendations tailored to business needs. Effective communication is key, as they must present findings to both technical and non-technical stakeholders, ensuring that model assumptions and results are clearly understood. Collaboration may also include contributing to code reviews, sharing best practices for model validation, and mentoring colleagues on Bayesian methodologies.

What is Bayesian modeling?

Bayesian modeling is a statistical approach that uses Bayes' Theorem to update the probability of a hypothesis as more data becomes available. It incorporates prior beliefs or knowledge, combines them with observed data, and produces a posterior probability distribution to guide inference and decision-making. This approach is widely used in various fields such as machine learning, data science, and scientific research for tasks like parameter estimation, prediction, and model selection.
Senior Staff Scienitst-Quantitative Modeling, AI & Pharmacometrics

Senior Staff Scienitst-Quantitative Modeling, AI & Pharmacometrics

University of California San Francisco

San Francisco, CA

Full-time

Posted yesterday


Job description

Job Function Summary:

Applies advanced computational, computer science, data science, statistical, and quantitative modeling principles, together with domain expertise in pharmacology, drug development, and translational science, to perform research and technology development supporting model-informed drug development (MIDD). Responsibilities include the design, development, implementation, validation, and application of computational models, machine learning approaches, simulation frameworks, and quantitative decision-support tools used to advance drug regimen development and clinical translation. The position integrates diverse preclinical, clinical, and real-world datasets to develop predictive models that support regimen optimization, dose selection, trial design, and translational decision-making. Research activities may include pharmacometric modeling, quantitative systems pharmacology (QSP), mechanistic and Bayesian modeling, artificial intelligence and machine learning methods, statistical analyses, and development of computational workflows and scientific software. This specialty exists for positions whose primary responsibility is to conduct independent quantitative research and use computational and data science technologies to advance biomedical and translational research.

Generic Scope

Technical leader with a high degree of knowledge in the overall field and recognized expertise in specific areas; problem-solving frequently requires analysis of unique issues / problems without precedent and / or structure. May manage programs that include formulating strategies and administering policies, processes, and resources; functions with a high degree of autonomy.

Custom Scope

The Savic Integrated Pharmacology Laboratory at UCSF seeks a senior quantitative scientist to lead the development and application of advanced computational, statistical, pharmacometric, and machine learning methodologies to support model-informed drug development (MIDD) within the PReDiCTR-TB Consortium. The incumbent will apply expertise in pharmacometrics, quantitative systems pharmacology, AI/ML, computational biology, and translational modeling to develop predictive frameworks that inform regimen optimization, dose selection, clinical trial design, and translational decision-making for infectious disease drug development. The position requires scientific leadership across multiple complex projects and collaboration with academic, industry, and regulatory stakeholders. The incumbent will independently design, develop, validate, and deploy quantitative models and computational tools that integrate preclinical, clinical, and real-world datasets, and will contribute to publications, grant applications, and strategic scientific initiatives across the consortium.

Required Qualifications

  • Bachelor's degree in Computer / Computational / Data Science, or Domain Sciences with computer / computational / data specialization or equivalent experience.
  • Minimum 5 years relevant experience
  • Advanced knowledge of pharmacometrics, quantitative pharmacology, statistical modeling, and computational science
  • Demonstrated expertise in model-informed drug development (MIDD)
  • Experience developing mechanistic, PK/PD, Bayesian, or machine learning models
  • Advanced programming skills in Python and/or R
  • Ability to integrate large-scale biological, clinical, and translational datasets
  • Demonstrated scientific leadership and independent research capability
  • Ability to communicate complex quantitative concepts to scientific and non-scientific audiences
  • Experience managing multiple concurrent research projects

Preferred Qualifications

  • Master's degree in Computer / Computational / Data Science, or Domain Sciences with computer / computational / data specialization preferred.
  • Postdoctoral or industry experience in quantitative drug development
  • QSP, AI/ML
  • Pharmacogenomics, Toxicokinetics
  • Clinical trial simulation, Infectious disease modeling
  • TB experience, Regulatory interactions
  • Grant writing experience

DUTIES & ESSENTIAL JOB FUNCTIONS

Identify the functions or tasks that employees in the job perform. The essential functions should state the purpose of the work and the results to be accomplished, rather than how the function is performed. Of the tasks listed, what percentage of time is devoted to each? The more time employees spend on a function, the more likely it is that the function is essential. Generally, include those functions that account for 10% or more of the work, i.e., key items that contribute significantly to the achievement of the job.  The functions should add up to 100%.

%  

of time

Essential Function (Yes/No)

Key Responsibilities

(To be completed by Supervisor)

30

Yes

Quantitative Modeling & Simulation

Lead development of PK/PD, mechanistic, Bayesian, QSP, and AI-enabled models 

Design predictive frameworks for TB regimen optimization 

Develop translational strategies linking preclinical and clinical data

25

Yes

Computational Research & Data Integration

Integrate multi-source datasets 

Develop computational workflows 

Apply machine learning and statistical methods

15

Yes

Scientific Leadership

Guide modeling strategy 

Collaborate with external investigators 

Influence scientific decision making

15

Yes

Publications, Grants & Scientific Communication

Manuscripts 

Conference presentations 

Grant development

15

Yes

Mentoring & Technical Leadership

Mentor trainees 

Lead interdisciplinary project teams 

Establish best practices

0

 

0

 

0

 

0

 

0

 

0

  

100%

 

(To update total %, enter the amount of time in whole numbers (without the % symbol - e.g., 15, 20) then highlight the total sum (e.g., 1%) at the bottom of the column and press F9. The total sum should add up to 100%.)