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Postdoctoral Appointee – Energy Economist

Postdoctoral Appointee – Energy Economist

CompanyArgonne National Laboratory
LocationWoodridge, IL, USA
Salary$70758 – $110379.55
TypeFull-Time
DegreesPhD
Experience LevelMid Level, Senior

Requirements

  • Formal education in economics, operations research, public policy, environmental science, or a related field at the PhD level with zero to five years of employment experience
  • Technical background in economics with a focus on the mineral and energy sectors
  • Proven scholarly work or industry experience in economic and supply chain analysis, computational modeling, or policy analysis
  • Excellent oral and written communication skills in scientific and engineering contexts
  • Ability to integrate diverse knowledge and perspectives to drive innovation
  • Experience working independently and collaboratively in multidisciplinary teams
  • Ability to model Argonne’s core values of impact, safety, respect, integrity, and teamwork

Responsibilities

  • Conduct and contribute to research and model development to enhance the resilience of domestic and global supply chains for clean energy technologies
  • Lead technical and policy analysis to inform decision-makers on manufacturing and energy supply chain strategies
  • Develop and apply analytical models and datasets in collaboration with DOE national laboratories and federal partners
  • Prepare detailed reports and briefings on methodologies, analyses, and findings
  • Collaborate with interdisciplinary teams across DOE National Laboratories
  • Publish impactful research in peer-reviewed journals and support related projects within the team
  • Enhance professional skills, including communication, networking, and leadership

Preferred Qualifications

  • Background in economic theories and their application to overall or specific energy, mining, and manufacturing sectors
  • Expertise in metals and materials markets, energy technology manufacturing, or supply chains
  • Proficiency in economic analysis techniques such as econometrics, input-output models, and cost modeling
  • Familiarity with techno-economic analysis
  • Experience with scientific programming languages (e.g., R, Python, Java) and statistical software (e.g., Stata)
  • Ability to create visualizations to effectively communicate analysis results