A company is looking for a Senior Bayesian Risk Modeler to lead the evolution of their wildfire risk assessment platform.
Key Responsibilities
Redesign annualized risk frameworks using Monte Carlo simulation and Bayesian models to quantify uncertainty in wildfire risk estimates
Develop and validate probabilistic models that propagate uncertainty from various risk factors to final risk outputs
Optimize weather day selection algorithms and apply extreme value theory to characterize tail risks from rare weather events
Required Qualifications
Ph.D. in Statistics, Biostatistics, Applied Mathematics, or related quantitative fields preferred; a master's degree with significant experience will be considered
6+ years of experience in quantitative roles requiring sophisticated statistical modeling
Proven mastery of Bayesian inference methodology and hands-on experience with MCMC samplers
Extensive experience with Monte Carlo simulation and uncertainty quantification
Advanced Python skills and proficiency with probabilistic programming frameworks
Risk Modeler • Spokane, Washington, United States