MOTOR Ai Secures $20 Million for Explainable Autonomous Driving Technology

Berlin-based MOTOR Ai has raised $20 million in seed funding to advance its neuroscience-driven autonomous driving technology, focusing on transparency and compliance with European regulations.

MOTOR Ai, a Berlin-based company, has announced the successful acquisition of $20 million in seed funding. The funding aims to support the deployment of its neuroscience-driven autonomous driving technology on German public roads. This technology is designed to meet European regulatory requirements for transparency and traceability in autonomous driving decisions.

The seed round was led by Segenia Capital and eCapital, with contributions from mobility-focused angel investors. The funds will be used to expand the company's workforce, facilitate commercial rollouts, and support further expansion efforts.

MOTOR Ai's technology is distinguished by its cognitive architecture, which is rooted in active inference—a model from neuroscience. This allows the system to make structured and transparent decisions, even in complex traffic scenarios, setting it apart from other systems that rely solely on pre-trained data.

The company's approach ensures compliance with stringent European and international safety standards, including UNECE approval standards, ISO 26262 (ASIL-D), and the EU AI Act. The technology is expected to begin operations in several German districts this year, with plans for further expansion across Europe.

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