Algorized Raises $13M Series A to Scale Predictive Safety Engine for Physical AI
In a press release, Algorized announced it has raised $13 million in Series A funding to expand its edge-AI platform for industrial automation. The round was led by Run Ventures, with participation from the Amazon Industrial Innovation Fund and Acrobator Ventures.
The funding will accelerate deployment of Algorized’s Predictive Safety Engine, which enables machines to perceive human presence, interpret intent, and adapt in real time. The company said the technology moves beyond traditional “detect-and-stop” systems, allowing robots to operate safely at full speed in shared environments.
Algorized’s approach uses wireless sensors such as Ultra-Wideband, mmWave, and Wi-Fi to analyze motion and vital signs directly at the edge, enabling low-latency human awareness even in obstructed or low-visibility conditions. The company plans to expand its engineering and support operations in Switzerland and Silicon Valley to meet increasing demand from manufacturing partners in Europe and the U.S.
Following collaborations with KUKA and ASUS at CES 2026, Algorized is now scaling commercial deliveries of its technology to major industrial and automotive clients.
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