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Data Scientist​/Engineer Security Clearance

Job in Fort Meade, Anne Arundel County, Maryland, USA
Listing for: Anonymous Employer
Full Time position
Listed on 2026-06-24
Job specializations:
  • IT/Tech
    Machine Learning/ ML Engineer, Data Scientist, AI Engineer (Applied/Software), Data Engineering
Salary/Wage Range or Industry Benchmark: 125000 - 145000 USD Yearly USD 125000.00 145000.00 YEAR
Job Description & How to Apply Below
Position: Data Scientist / Engineer with Security Clearance
Title:

Data Scientist / Engineer
Clearance:
Top Secret with ability to obtain SCI and CI Poly

Location:

Ft. Meade, MD Role Summary Agile Defense is seeking a Data Scientist / Engineer to support the design, development, and operational deployment of scalable, AI-enabled data solutions within the Department of Defense’s CDAO ADA IR program. This role is part of a multidisciplinary team integrating advanced analytics, machine learning, and engineering practices into mission-critical environments  will help shape and deploy data pipelines, pre-processing workflows, feature engineering strategies, and machine learning services within secure, containerized environments.

The ideal candidate brings a hybrid of statistical modeling fluency and hands-on software engineering expertise. You will collaborate closely with product managers, full-stack developers, platform engineers, and mission stakeholders to transform raw data into meaningful insights and decision-support tools.
This role requires strong technical communication skills, a collaborative mindset, and experience working in agile environments that value reproducibility, testing, and continuous delivery. Familiarity with cloud-based data platforms such as Databricks, Palantir, or AWS-native data services is highly preferred. Key Objectives Objective 1:
Design and Maintain Scalable Data Science Services

· Plan, develop, and maintain reusable services for data ingestion, transformation, and feature engineering that support AI/ML workflows.

· Implement core data science capabilities, such as entity resolution, classification, clustering, or prediction, within containerized environments that adhere to CI/CD, version control, and testing standards.

· Collaborate with Dev Sec Ops  engineers to integrate services into secure production environments using tools like Databricks, Docker, and Terraform.

· Ensure services meet performance, reliability, and security requirements consistent with DoD enterprise and cloud-native architecture.
Objective 2:
Build and Operationalize AI/ML Solutions

· Develop and deploy standalone or embedded ML models for tasks such as decision support, automation, anomaly detection, and pattern recognition.

· Select and implement appropriate modeling techniques using Python, Spark, or cloud-native ML frameworks (e.g., Sage Maker, MLflow).

· Maintain reproducibility and interpretability of model outputs to meet mission transparency and audit requirements.

· Package model inference services with well-documented APIs for integration into end-user applications and operational dashboards.
Objective 3:
Perform Exploratory Data Analysis and Communicate Insights

· Conduct exploratory data analysis (EDA) to identify trends, gaps, and opportunities within structured and unstructured datasets.

· Develop data visualizations and interpretive summaries that support stakeholder understanding and product team decision-making.

· Translate analytical findings into actionable recommendations using a mix of visual, narrative, and quantitative communication strategies.

· Contribute to the team’s shared library of analysis templates, reusable queries, and analytic workflows to accelerate future delivery.
Objective 4:
Collaborate Across Teams to Deliver Mission Impact

· Engage with product managers and mission users to define data and model requirements aligned with operational goals.

· Work closely with engineers to ensure data science components align with technical constraints and deployment patterns.

· Participate in agile sprint planning, retrospectives, and demos, sharing progress and adjusting priorities based on feedback.

· Maintain strong documentation practices that enable handoff, reproducibility, and technical accountability. Preferred Skills and Experience
· 4+ years of experience in applied data science, machine learning engineering, or data pipeline development.

· Proficient in Python, SQL, and distributed data frameworks (e.g., Spark, Databricks, PySpark).

· Experience developing ML models from training to deployment using industry-standard tools and libraries (e.g., scikit-learn, Tensor Flow, XGBoost, MLflow).

· Familiarity with MLOps, API development, and secure cloud-based environments (e.g., AWS, Azure, Palantir Foundry).

· Strong understanding of data validation, model testing, and performance evaluation techniques.

· Experience with data visualization and storytelling using tools such as Tableau, Plotly, or Matplotlib.

· Excellent technical communication skills, with the ability to explain complex concepts to non-technical audiences. $125,000 - $145,000 a year
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