AI/ML Software Engineer
Role details
Job location
Tech stack
Job description
Software Design & Development
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Design and implement APIs, data pipelines, and simulation runtime logic that connect and enable mission applications.
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Develop software using modern programming languages such as Java, Python, C++, or TypeScript/Angular.
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Write clean, testable, and maintainable code following secure coding and software engineering best practices.
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Build and integrate modular microservices to improve scalability, maintainability, and interoperability.
Cloud & Containerized Environments
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Build and deploy containerized, cloud-native services using Docker, Kubernetes, and CI/CD pipelines (GitLab, Jenkins, or equivalent).
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Implement Infrastructure-as-Code and automation scripts to accelerate deployment and configuration management.
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Contribute to secure deployments across hybrid or disconnected environments (IL4-IL6, AWS GovCloud, or on-prem).
Systems Integration & Distributed Computing
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Develop distributed systems and data integration frameworks using message buses such as Kafka or Redis.
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Engineer data flow between analytic, AI, and simulation components to support real-time mission use cases.
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Collaborate with system engineers and architects to ensure interoperability across software ecosystems.
Data & Analytics Integration
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Build and manage databases (PostgreSQL, MongoDB, graph DBs) and model complex data relationships.
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Develop data services that feed analytics pipelines or integrate AI/ML outputs into runtime systems.
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Work with serialization and exchange formats such as JSON, Protobuf, GeoJSON, or KML.
Security, Testing & Sustainment
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Write, test, and deploy software within secure or classified environments.
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Automate testing and monitoring to ensure performance, reliability, and repeatable deployments.
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Support the transition of prototypes to operational systems, focusing on maintainability and observability.
Requirements
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Must be a U.S. citizen and be willing to obtain and maintain a secruity clearance, as needed.
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6-10+ years of professional software engineering experience.
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3+ years of professional experience with DevSecOps, Zero-Trust, or ATO/RMF processes in Department of Defense (DoD/DoW) environments.
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Strong full-stack or systems engineering background.
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Proficiency in one or more of the following languages: Java, Python, C++, or TypeScript/Angular.
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Experience building containerized, cloud-native solutions using Docker, Kubernetes, and CI/CD pipelines.
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Complete understanding of distributed systems and message buses (Kafka, Redis, etc.).
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Experience developing or integrating analytics and AI models into production systems.
Preferred Qualifications:
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Experience deploying code in IL4-IL6 or edge/disconnected environments.
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Familiarity with databases such as PostgreSQL, MongoDB, or graph databases.
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Knowledge of Infrastructure-as-Code (Terraform, CloudFormation, or CDK).
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Bachelor's degree in Computer Science, Software Engineering, or a related technical field.
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Active Secret clearance preferred; ability to obtain one isrequired.