Job Description
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 at Combatant Commands.
You 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.
Location: In Person: Falls Church, VA | Ft. Meade, MD | Stuttgart, Baden-Württemberg, Germany | Tampa, FL | Honolulu (Camp H.M. Smith), HI | Colorado Springs, CO | Doral (Miami area), FL | Omaha (Offutt Air Force Base), NE | Scott Air Force Base, IL
Clearance: Active DoD Top Secret (or ability to obtain)
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 DevSecOps 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., SageMaker, 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.
- 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.
Education and Background
- A bachelor's degree plus 3 years of recent specialized experience, OR, an associate's degree plus 7 years of recent specialized experience, OR, a major certification plus 7 years of recent specialized experience, OR, 11 years of recent specialized experience
- Experience with data visualization and storytelling using tools such as Palantir's MSS Workshop and Slate applications
Years of Experience
Required Skills
- Experience with data visualization and storytelling using tools such as AIP & Foundry
Preferred Skills
- 4+ years of experience in applied data science, Palantir Foundry development, 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, TensorFlow, XGBoost).
- 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.
- Excellent technical communication skills, with the ability to explain complex concepts to non-technical audiences.
Working Conditions
- Must be able to work onsite in a SCIF
- Happy - Be Infectious. Happiness multiplies and creates a positive and connected environment where motivation and satisfaction have an outsized effect on everything we do.
- Helpful - Be Supportive. Being helpful is the foundation of teamwork, resulting in a supportive atmosphere where collaboration flourishes, and collective success is celebrated.
- Honest - Be Trustworthy. Honesty serves as our compass, ensuring transparent communication and ethical conduct, essential to who we are and the complex domains we support.
- Humble - Be Grounded. Success is not achieved alone, humility ensures a culture of mutual respect, encouraging open communication, and a willingness to learn from one another and take on any task.
- Hungry - Be Eager. Our hunger for excellence drives an insatiable appetite for innovation and continuous improvement, propelling us forward in the face of new and unprecedented challenges.
- Hustle - Be Driven. Hustle is reflected in our relentless work ethic, where we are each committed to going above and beyond to advance the mission and achieve success.