Junior Data Scientist

CALIBRE Systems, Inc.
Bishops Castle
1 day ago
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CALIBRE Systems, Inc., an employee‑owned mission focused solutions and digital transformation company, is looking for a highly motivated Junior Data Scientist to join our dynamic team supporting a federal client. This role requires an innovative and collaborative mindset, with the ability to work closely with designers, back‑end engineers, and business stakeholders to deliver high‑quality, scalable digital solutions.


Responsibilities

  • Assist in collecting and analyzing data from multiple sources to identify trends and provide actionable insights.
  • Support the development of reports and visualizations to communicate findings to business and IT stakeholders.
  • Help strategize and explore new data sources under guidance from senior team members.
  • Participate in building and maintaining datasets and data pipelines for scalable research solutions.
  • Contribute to statistical modeling, experiment design, and validation of predictive models.
  • Develop basic data visualizations and dashboards to present insights clearly.
  • Collaborate with database engineers and senior data scientists to refine data workflows and best practices.
  • Assist in implementing software tools for efficient data access and handling.
  • Document processes and support training initiatives for data management teams.
  • Support ML feature development, model training, and evaluation under senior guidance.
  • Validate datasets and flag data quality issues impacting analysis or models.
  • Assist with model deployment preparation and monitoring analysis.

Required Skills

  • Proficiency in data visualization tools (e.g., Tableau, Power BI).
  • Basic knowledge of statistical analysis and predictive modeling.
  • Understanding of data governance principles and compliance standards.
  • Ability to communicate technical insights to non‑technical audiences.
  • Strong collaboration skills and willingness to learn in a team environment.
  • Ability to properly handle and mask sensitive healthcare data to meet Federal data compliance standards.

Required Experience

  • Bachelor’s degree in Data Science, Statistics, Computer Science, or a related field (Master’s preferred).
  • 1–3 years of experience in data analysis, visualization, or related roles.
  • 1+ years’ experience working with a Federal agency (preferably a healthcare agency).
  • Experience working in an AWS environment (AWS certification preferred).
  • Familiarity with quantitative research and statistical modeling techniques.
  • Active Secret Clearance at the Department of Defense (or eligibility to obtain a clearance).
  • Ability to work east coast business hours (8 am–5 pm).
  • Active Security+ certification.

CALIBRE and its subsidiaries are an Equal Opportunity Employer and supports transitioning service members, veterans, and individuals with disabilities. We offer a competitive salary and full benefits package. To be considered, please apply via our website at www.calibresys.com. Come join our dynamic team. #CALIBRECareers


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