Senior Machine Learning Scientist

Posted 3 Days Ago
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Salt Lake City, UT, USA
Hybrid
Senior level
Artificial Intelligence • Greentech • Energy • Renewable Energy
The Role
Develop and productionize scientific ML surrogate models and decision systems for geothermal exploration. Prototype, benchmark, and harden ML approaches (e.g., physics-informed, transformers, diffusion, operator learning) and build multi-step POMDP-style planning and RL-based policies. Collaborate with geoscientists and engineers to integrate models into production software and decision workflows.
Summary Generated by Built In
Role Overview 
Title: Senior Machine Learning Scientist (Surrogate modeling & decision science in the earth sciences)
Hours: Full-Time, Salaried
Location: Salt Lake City, UT, Hybrid (3 days in office, 2 days can be remote)
Benefits Eligible: Yes
Manager: Head of Reservoir R&D
 
Why we exist
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 it’s been hard to find and expensive to develop. At Zanskar, we’re 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 technologies—including modern machine learning, scalable scientific computing, and uncertainty-aware modeling—to 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.
 
Who you are
You will help build the modeling and decision-making core of Zanskar’s geothermal exploration software. This role blends scientific machine learning (surrogate modeling) with sequential decision-making under uncertainty. A successful candidate will:
Explore: you’re 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.
 
What you’ll do
Build fast, reliable models that emulate or augment computationally expensive physics-based simulations (e.g., reservoir, wellbore, and coupled multi-physics workflows).
Evaluate and compare multiple modeling approaches (physics-informed, operator learning, transformers, diffusion models, etc.), establishing strong baselines and selecting methods based on evidence.
Build multi-step decision systems for exploration and appraisal: POMDP-style planning and belief-space decision making to recommend exploration steps.
Translate scientific and engineering questions into well-defined learning and decision problems: inputs/outputs, constraints, boundary/initial conditions, reward/cost structure, and success metrics (e.g., expected NPV, probability of success, downside risk).
Prototype, benchmark, and iterate across approaches (POMDP solvers, RL methods, VOI-style baselines, MPC-style replanning), then harden the best ones into reliable workflows and APIs.
Collaborate deeply with geoscientists, reservoir engineers, and software engineers to integrate these models and policies into production software.
 
What we’re looking for
3+ years of applied ML experience, ideally in scientific ML, decision-making under uncertainty, surrogate modeling, robotics/control, or related engineering/science domains.
Expertise in python and modern ML tooling (PyTorch preferred).
Track record of taking models from prototype → rigorous evaluation → adoption by technical stakeholders.
Strong fundamentals in probability/statistics and comfort with messy, real-world scientific datasets.
Experience building or using surrogate models for expensive simulators (PDE-driven systems, multi-physics, or similar).
Relevant technical strengths
Surrogate modeling. 
Sequential decision-making under uncertainty and reinforcement learning. 
Software engineering: Git, code review, reproducibility, CI basics, Docker/container workflows.
Experience with diffusion models.
Exposure to subsurface modeling domains: geothermal, oil & gas, CCS, hydrogeology, geoscience, or related.
Familiarity with cloud infrastructure and data systems (SQL, object storage, orchestration).
 
Location and Benefits
This position is based out of our headquarters in Salt Lake City, Utah, and is hybrid.
Benefits include:
Paid holidays
15 days PTO + PTO accrual increase based on tenure
Medical, dental and vision coverage
401k 
Stock options
Growth opportunities at a company with a direct impact in displacing carbon emissions

Equal Opportunity Employer 
 
Zanskar is an equal-opportunity employer and complies with all applicable federal, state, and local fair employment practice laws.

Skills Required

  • 3+ years of applied machine learning experience
  • Expertise in Python
  • Experience with PyTorch
  • Track record of taking models from prototype to rigorous evaluation and stakeholder adoption
  • Strong fundamentals in probability and statistics
  • Experience building or using surrogate models for expensive simulators (PDE-driven, multi-physics)
  • Experience with sequential decision-making under uncertainty and reinforcement learning (POMDP, planning, RL, MPC)
  • Software engineering best practices: Git, code review, reproducibility, CI basics, Docker/container workflows
  • Experience with diffusion models
  • Exposure to subsurface modeling domains (geothermal, oil & gas, CCS, hydrogeology)
  • Familiarity with cloud infrastructure and data systems (SQL, object storage, orchestration)
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The Company
0 Employees
Year Founded: 2021

What We Do

Zanskar is the first AI-native geothermal energy company. It utilizes artificial intelligence, machine learning, and advanced geoscience to precisely pinpoint and develop utility-scale geothermal resources. By transforming exploration into a repeatable, data-driven process, Zanskar aims to unlock vast amounts of clean, firm baseload power, making geothermal energy a cornerstone of the future power grid and a major player in the U.S. energy mix.

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