Über
Data Management and Model Development: Collect, clean, and transform data from a variety of internal sources to enable high-impact analytics. Research and implement quantitative methods and machine learning models to develop, validate, and visualize robust risk and mitigation models within the organizational environment. Lead the estimation of mitigation effectiveness, calculation of benefit-cost ratios, and evaluation of model assumptions, inputs, and methodologies.
Stakeholder Collaboration: Partner with subject matter experts, risk managers, and risk owners to develop credible risk models and integrate quantitative risk assessment into core business and operational processes.
Risk Analytics Leadership: Mentor and guide junior staff and risk analysts, standardizing processes and tools across the data science function. Collaborate with analytics platform owners to prioritize and advance scalable risk and mitigation modeling capabilities. Assess and enhance existing risk modeling methodologies to drive continuous improvement.
Communication: Prepare and deliver clear, concise documentation and presentations on data sources, methodologies, analyses, results, and validations. Produce model documentation, whitepapers, formal reports, and expert testimony as required.
Qualifications Minimum: Bachelor’s Degree in Data Science, Machine Learning, Computer Science, Physics, Econometrics, or Economics, Engineering, Mathematics, Applied Sciences, Statistics, or equivalent field
8 years in data science (or 2 years, if possess Doctoral Degree or higher, as described above)
Desired: Doctoral Degree or higher in Data Science, Machine Learning, Computer Science, Physics, Econometrics, or Economics, Engineering, Mathematics, Applied Sciences, Statistics, or equivalent field
Relevant industry experience (electric or gas utility, cybersecurity, analytical consulting, etc.), 8 years
Experience in quantifying cybersecurity risk using the FAIR framework (certification preferred)
Experience in quantitative risk analysis or Probabilistic Risk Assessment
Strong understanding of the mathematical, probabilistic and statistical foundations that underpin data science and risk modeling
Proven proficiency in Monte Carlo simulation methods, Bayesian inference, and application of data science and operations research methodologies and tools
Demonstrated expertise in advanced programming, especially in Python; and proficiency in utilizing Git in a team environment
Excellent analytical, problem-solving, research and organizational abilities; attention to detail
Proficiency in synthesizing complex information into clear insights and translating those insights into decisions and actions
Proficiency in model lifecycle management
Strong data management knowledge, including governance, security, and quality best practices
Expertise in data visualization and communicating risk-related modeling results
Proven ability to work independently, proactively improve methods, and adapt to change
Effective communication and collaboration skills with diverse teams and stakeholders
Competency in project management and strong ability to manage multiple tasks under tight deadlines
Current knowledge of industry trends and issues, demonstrated through professional contributions
Ability to translate complex technical insights for various audiences and mentor others
Sprachkenntnisse
- English
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