Millennial Software builds mission-critical software for defense and aerospace, with a tech stack spanning Kubernetes, Python, Java, Kafka, and MATLAB—revealing a hybrid engineering culture bridging classical systems work with modern cloud-native infrastructure. The project mix (sensor automation, collision avoidance, orbital analysis) and pain-point clustering around infrastructure evolution and release friction signal an organization scaling from custom engineering toward repeatable platforms. Hiring is engineering-heavy (16 of 18 open roles) and seniority-balanced (8 mid, 8 senior, 1 lead), suggesting they're building depth rather than chasing headcount.
Millennial Software delivers software solutions, DevSecOps, and AI/ML capabilities to government agencies and defense contractors. Based in Chantilly, Virginia, and founded in 2019, the company operates in the 11–50 employee range with active hiring in the United States and United Kingdom. Their project portfolio spans sensor data automation, real-time collision avoidance systems, orbital analysis prototypes, and internal CI/CD infrastructure—indicating both customer-facing and internal modernization work. The tech stack combines enterprise Linux and Windows foundations with Kubernetes, containerization (Docker, Helm), and polyglot languages (Python, Java, Go, C++, Fortran, MATLAB), reflecting aerospace and defense's blend of legacy and contemporary engineering.
Red Hat Enterprise Linux, Windows, Kubernetes, Python, Java, Go, C#, Node.js, Kafka, RabbitMQ, Docker, Helm, React, Angular, AWS, Terraform, Ansible, MATLAB, C++, and Fortran. The mix spans containerized cloud infrastructure, classical systems languages, and real-time messaging.
Active projects include automating sensor data pipelines, real-time collision avoidance systems, orbital analyst prototypes, Kubernetes deployments, CI/CD pipeline implementation, and full-stack feature development. Internal efforts focus on design systems and developer workflow improvement.
Other companies in the same industry, closest in size