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NODA AINODA AI is the defense software company that built and fielded the original vendor-agnostic autonomy orchestrator. Founded in 2024 and headquartered in Austin, Texas, NODA builds the software layer that enables heterogeneous uncrewed systems to coordinate, adapt, and execute complex missions using human intent across contested multi-domain environments. NODA’s orchestration software is operationally deployed, hardware- and software-agnostic, and purpose-built for the complexity of modern autonomous warfare.
The demand for NODA's capabilities are growing rapidly. We're looking for engineers motivated by the opportunity to see their work applied in the real world. Our team's work goes from concept to field test in days, not months. With numerous positions currently open, you will gain access to solving real world challenges with unlimited capabilities, such as autonomous behaviors and path planning, agentic AI/LLM orchestration, distributed systems, interoperable UI and simulations, CJADC2, and edge deployment across mixed fleets.
U.S. Citizenship required due to ITAR regulations & the ability to obtain and maintain a Department of Defense (DoD) security clearance. Open engineering roles are all Austin-based unless otherwise noted. We welcome candidates who are local or open to relocating; relocation assistance is available and may be included in the offer package where appropriate.
- Senior Full Stack Engineer
- Autonomy Engineer (AI)
- AI/ML Engineer
- Senior Platform Engineer
- UI Engineer
- Senior Integration Engineer
- Senior Quality Software Engineer
- Developer Experience Engineer
- Senior Solution Engineer / Solution Architect
- Senior Engineering Manager, Solutions Engineering
- Forward-Deployed Solution Engineer, International — ONSITE (Bahrain, Kuwait, Qatar, or UAE)
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