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Senior Data Scientist

Posted 4 months agoViewed

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💎 Seniority level: Senior, 4 years of post-degree work experience

📍 Location: United States, Canada

💸 Salary: 140000.0 - 220000.0 USD per year

🔍 Industry: Mining, Mineral Exploration

🏢 Company: KoBold Metals👥 101-250💰 $491,455,627 Series C 6 months agoArtificial Intelligence (AI)MineralMiningSoftware

⏳ Experience: 4 years of post-degree work experience

🪄 Skills: PythonData AnalysisGitMachine LearningData visualization

Requirements:
  • Technical skills, including extensive experience with Python’s data science packages and general software engineering practices.
  • Collaborative software development (git) and familiarity with software engineering best practices.
  • Building, evaluating, and interpreting predictive models and data from various physical systems.
  • Broad skills and knowledge of applied statistics and substantial understanding of machine learning algorithms.
  • An advanced degree in the physical sciences, engineering, computer science, or mathematics.
  • 4 years of post-degree work experience as a data scientist or data engineer.
Responsibilities:
  • Help develop KoBold’s proprietary software exploration tools.
  • Find and curate geophysical, geochemical, geologic, and geographic data and integrate it into KoBold’s proprietary data system.
  • Build models to make statistically valid predictions about the locations of compositional anomalies within the Earth’s crust.
  • Create effective visualizations for evaluating model performance and enabling rapid interaction with the underlying data and key features.
  • Develop and apply data processing, statistical, and physics-based techniques to geoscientific data and use the results to guide targeting efforts.
  • Present to and collaborate with external partners and stakeholders.
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