Geothermal energy is the most abundant renewable energy source in the world. There is 2,300 times more energy in geothermal heat in the ground than in oil, gas, coal, and methane combined. However, historically itâs been hard to find and expensive to develop. At Zanskar, weâre building technology to find and develop new geothermal resources in order to make geothermal a cheap and vital contributor to a carbon-free electrical grid. To do that, we combine deep subsurface expertise with advanced AI technologiesâincluding modern machine learning, scalable scientific computing, and uncertainty-aware modelingâto dramatically improve geothermal discovery and development outcomes. We build systems that can learn from sparse and noisy data, emulate expensive physics simulations, and help teams make faster, higher-confidence decisions about where to drill and how to develop fields. You will help build the modeling and decision-making core of Zanskarâs geothermal exploration software. This role blends scientific machine learning (surrogate modeling) with sequential decision-making under uncertainty. A successful candidate will: Explore: youâre open-minded about methods and will prototype, benchmark, and iterate across approaches. Reproduce & adapt: you can implement ideas from papers and new frameworks quickly, then harden the best ones into reliable workflows. Decision-minded: you care about end-to-end outcomes (value, risk, time-to-decision), not just model accuracy. Uncertainty-first: you build models that are accurate, well-calibrated, and dependable under distribution shift and sparse data regimes. Collaborative: you work well with domain experts and can translate between geology/engineering intuition and ML systems.
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Job Type
Full-time
Career Level
Senior
Education Level
No Education Listed