Challenge Accepted
Data Scientist
Location
Oregon
Posted
86 days ago
Salary
0
Seniority
Lead
Job Description
Data Scientist
SOSi
• Develop and refine predictive models • Conduct exploratory data analysis • Generate AI-driven insights to enhance intelligence and operational planning • Integrate customer feedback into model iteration cycles • Leverage Agile development methodologies to maintain responsiveness to mission requirements • Submit Predictive Model Performance Report documenting key findings, model accuracy metrics, and operational impact assessments • Implement sprint-based Agile methodologies • Provide Rough Order of Magnitude (ROM) Estimate Report before each analytics project • Conduct quarterly reviews to track cost efficiency, assess system performance, and optimize analytic workflows
Job Requirements
- Bachelor’s degree in Data Science, Statistics, Computer Science, or a related field, or; seven (7) years of equivalent experience in machine learning and predictive modeling.
- Knowledge and capability to develop and refine predictive models, analyze large-scale datasets, and document analytic processes.
- Proficient in data mining, statistical modeling, and AI-driven forecasting techniques, with experience in working with structured and unstructured data sources.
- Knowledge of data visualization, feature selection, and geospatial analytics is required.
- Capable of integrating data from multiple sources, ensuring model accuracy, and working within an Agile sprint cycle to deliver iterative improvements.
- Demonstrated experience in exploratory data analysis, feature engineering, and statistical testing.
- Experience with Python, R, SQL, and data science libraries (e.g., Pandas, NumPy, SciPy) is required.
- Experience in cloud-based AI/ML tools, such as AWS SageMaker or Azure Machine Learning, and in implementing models into operational workflows.
- Desirable but not required certifications include AWS Certified Data Analytics – Specialty, Microsoft Certified: Azure AI Fundamentals, or Certified Data Scientist (CDS).
Benefits
- Full remote flexibility
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