Lantronix delivers the compute intelligence behind today’s most advanced drones. Built on Qualcomm® Snapdragon processors, our Open-Q™ System-on-Module (SOM) platforms give OEMs the AI-driven speed, security and performance capabilities to design, build and deploy next-gen drones or Unmanned Autonomous Vehicles (UAVs) faster and more efficiently.
Lantronix is the only North America-based Qualcomm partner that provides NDAA/TAA-compliant SOM solutions.





Lantronix’s Open-Q™ 5165N SOM was selected by Teal Drones, a Red Cat Holdings Inc. (NASDAQ: RCAT) company, for production of its Black Widow™ drones under the U.S. Army’s Short-Range Reconnaissance (SRR) Program. Lantronix’s Open-Q was chosen for its:
Next-gen UAV performance depends on tight integration between flight systems, payloads and onboard AI. Lantronix provides the unified Edge AI foundation that ties them together to deliver pre-integrated, validated solutions that help drone OEMs bring products to market faster.
Lantronix SOMs process sensor data locally at the edge, reducing power and bandwidth requirements, delivering:




Perfect for search and rescue, perimeter security, reconnaissance and critical infrastructure inspection, the same compute and AI models powering military drones enable new commercial and industrial applications, including:

Engineered for both commercial and defense-focused OEMs, Lantronix’s Drone Reference Platform provides a clear path toward NDAA/TAA-aligned compute and sensor architectures. At its core is the Lantronix Open-Q™ 8550 series micro-SOM, paired with an Ubuntu-based development environment, validated sensor and flight-control integrations, and complete reference documentation, all in an ultra-compact footprint optimized for airborne AI workloads.
“By delivering cutting-edge compute, sensing, and flight-control technologies in a single, ready-to-deploy solution, we’re enabling OEMs to build NDAA/TAA-compliant prototypes faster, with lower risk and greater scalability.”




By continuing to use the site, you agree to the use of cookies. more information
The cookie settings on this website are set to "allow cookies" to give you the best browsing experience possible. If you continue to use this website without changing your cookie settings or you click "Accept" below then you are consenting to this.