S&P Global Commodity Insights

LeadDataScientistStochasticModeling

CA$100–120k Calgary, Alberta, Canada FULL TIME
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Lead candidates.

The Brief

“Lead Data Scientist Stochastic Modeling at S&P Global Commodity Insights. Skills: Stochastic modeling, Machine learning, Cloud platforms, Probabilistic modeling. Lead model design, development, validation. Solve complex real-world problems”

What You'll Achieve.

uncertainty quantification; risk analysis; scenario simulation; production deployment; scalable architecture; reproducible workflows; seamless transition from research to production; robust, efficient, and maintainable solutions

Industry & Context.

Problems you'll solve

Solving complex, cross-disciplinary problems; Translate ambiguity into structured, practical solutions; problem-solving mindset

Eligibility Requirements

indefinite right to work within Canada

What They're Looking For.

Must Have

Advanced degree (MSc or PhD preferred) in a highly quantitative discipline such as Statistics, Mathematics, Computer Science, Physics, Engineering, or Operations Research, experience in stochastic modeling, optimization, or statistical inference, Deep expertise in probabilistic modeling, uncertainty quantification, Monte Carlo methods, and modern machine learning techniques, programming skills in Python (and/or R), experience with scientific computing libraries that are similar to NumPy, pandas, SciPy, scikit-learn, experience with modern ML frameworks that are similar to PyTorch or TensorFlow, Experience building scalable, production-oriented solutions using cloud platforms that are similar to AWS, GCP, or Azure, containerization tools, collaborative development workflows that are similar to Git, CI/CD, problem-solving mindset, ability to quickly understand new domains, translate ambiguity into structured, actionable solutions, Clear and effective communicator, explaining complex technical concepts to both technical and non-technical stakeholders, High level of ownership and accountability, ability to move independently from concept through validation and deployment, Collaborative team player, contributes to a culture of rigor, curiosity, continuous learning, and mentorship

Nice to Have

Experience with quantum computing applications, including quantum machine learning or quantum optimization methodologies, Familiarity with generative AI, synthetic data generation, and advanced simulation techniques for complex system modeling, Domain knowledge in energy markets, commodity analytics, or related industrial sectors, Demonstrated record of research impact, such as publications in peer-reviewed journals or presentations at leading academic or industry conferences, Experience working with large-scale data ecosystems that are similar to Spark, Hadoop, understanding of data governance, privacy, and security best practices

What You'll Do.

Solve complex real-world problems

Translate business challenges into analytical frameworks

Rapidly prototype solutions

production-ready tools

Conduct applied research

Integrate statistical techniques with ML frameworks

Collaborate with software engineers

Leverage cloud platforms

Communicate complex technical insights

Mentor junior team members

How You'll Work.

Team & Collaboration

Collaborate closely with software engineers, domain experts, and deployment teams; Collaborative team player

Communication Scope

Clear communication; Communicate complex technical insights clearly to diverse stakeholders; Clear and effective communicator

Process & Methodology

Ownership throughout the project lifecycle, move independently from concept through validation and deployment

Full Job Description

# **About the Role:** **Grade Level (for internal use):** 12 **S &P Global Commodity Insights ** **The role: Lead Data Scientist Stochastic Modeling** **The Team:** The team is a highly analytical and solution-oriented group focused on solving complex, cross-disciplinary problems using machine learning, physics-based modeling, optimization, and data/UI engineering. We translate ambiguity into structured, practical solutions and move efficiently from concept through validated prototype to production deployment. We value intellectual curiosity, rigorous thinking, clear communication, rapid domain learning, and strong ownership throughout the project lifecycle. **Responsibilities and Impact:** * Lead the design, development, and validation of stochastic, physics-based, and optimization models to solve complex real-world problems in the energy sector, with strong focus on uncertainty quantification, risk analysis, and scenario simulation. * Translate ambiguous business challenges into structured analytical frameworks, rapidly prototype solutions (machine learning models, optimization engines, interactive dashboards), and deliver validated, production-ready tools. * Conduct applied research to advance modeling methodologies, integrating advanced statistical techniques (e.g., Bayesian inference, Monte Carlo simulation, Markov and Gaussian processes) with modern machine learning frameworks. * Collaborate closely with software engineers, domain experts, and deployment teams to ensure scalable architecture, reproducible workflows, and seamless transition from research to production. * Leverage cloud platforms (AWS, GCP, Azure), data engineering best practices, and emerging technologies including generative AI to build robust, efficient, and maintainable solutions. * Communicate complex technical insights clearly to diverse stakeholders and mentor junior team members, fostering a culture of rigor, curiosity, ownership, and continuous learning. ** _What We’re Looking For:_** *

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