Lanner releases Jetson Thor edge AI device

Lanner releases Jetson Thor edge AI device

Lanner unveils industrial edge AI appliance for autonomous systems. The EAI-I351, centred on NVIDIA’s Jetson Thor modules, focuses on local processing for autonomous robots and industrial vehicles. It promises high-speed networking, robust environmental tolerance, and aligns with NVIDIA’s software stack to expedite deployment.


Lanner Electronics has introduced the EAI-I351, a cutting-edge industrial edge AI appliance designed for autonomous systems where real-time local processing is crucial. Built around NVIDIA’s innovative Jetson Thor modules, this platform is specifically aimed at applications such as autonomous mobile robots and heavy-duty industrial vehicles, demanding robust AI capabilities beyond the cloud. The appliance features configurations utilising NVIDIA’s Jetson T5000 and T4000 modules, offering scalable memory capacities suitable for complex sensor fusion and large AI models.

Engineered for challenging environments, the EAI-I351 includes high-speed networking options like a QSFP28 port and a 5 GbE RJ45 connection, as well as GMSL2 deserialisers for direct camera connectivity. Its environmental resilience, from -25°C to 70°C, and support for Wi-Fi and 5G/LTE modules make it ideal for diverse industrial settings. By leveraging NVIDIA’s robotics and sensor-processing software, Lanner aims to streamline deployment, underscoring the industry’s shift towards sophisticated edge computing solutions.

Read the full article on IN Electronics & Design.


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