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Reservoir Engineer (Data Science)

LinkedIn Fervo Energy Golden, CO
Not Applicable Posted April 5, 2026 Job link
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Requirements
  • 2+ years of experience in reservoir engineering, data science, or a related technical field; a PhD may be considered in lieu of industry experience.
  • Strong fundamentals in reservoir engineering, including fluid flow in porous media, pressure transient analysis, material balance, and production/injection performance analysis.
  • Experience with reservoir modeling and simulation (numerical simulators, decline analysis, forecasting tools).
  • Proficiency in analyzing subsurface datasets, including pressure, rate, temperature, and geologic data.
  • Working knowledge of Python and scientific libraries (NumPy, Pandas, SciPy) or similar analytical environments.
  • Experience applying statistical analysis, data-driven modeling, or machine learning techniques to subsurface or production data.
  • Ability to manage and integrate large, multi-disciplinary datasets.
  • Strong problem-solving skills with the ability to translate technical findings into actionable insights.
  • Excellent written and verbal communication skills.
Preferred Skills
  • Experience applying machine learning or AI techniques to engineering or geoscience problems
  • Experience in geothermal reservoir engineering, enhanced geothermal systems (EGS), or unconventional resource development.
  • Hands-on experience building and calibrating numerical reservoir simulation models for thermal or multiphase systems.
  • Proficiency in advanced Python-based data workflows, version control (Git), and reproducible modeling practices.
  • Experience working in cloud or high-performance computing environments for large-scale simulations or data processing.
  • Exposure to real-time data systems, digital twins, or automated performance monitoring frameworks.
  • Experience in fast-paced, cross-functional environments with a strong bias toward execution and continuous improvement.
Education
  • (Not required) – B.S. in Engineering (Petroleum, Mechanical, Chemical, or related discipline).
  • (Not required) – 2+ years of experience in reservoir engineering, data science, or a related technical field; a PhD may be considered in lieu of industry experience.