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A service for mining industry professionals · Tuesday, June 17, 2025 · 823,132,918 Articles · 3+ Million Readers

Torc Joins the Stanford Center for AI Safety to Conduct Joint Research on AI Safety for Level 4 Autonomous Trucking

June 17, 2025 --

Torc, a pioneer in commercializing self-driving class 8 trucks, today announced its membership with the Stanford Center for AI Safety, which conducts state-of-the-art research to help ensure the safety of AI, specifically machine learning, for use in autonomous trucking applications. This membership marks a significant milestone in Torc's ongoing commitment to ensuring the safety and reliability of its autonomous trucking solutions as the company prepares for market entry in 2027.

The membership enables Torc to sponsor, collaborate in, and coauthor research with the Stanford Center for AI Safety, enabling direct access to those research findings as they happen. Access to the center’s research symposiums, seminars, and other member benefits also help Torc apply Stanford’s extensive AI Safety research in the company’s efforts to significantly enhance the safety protocols of machine learning models within its autonomous driving systems.

"Torc is proud to join the Stanford Center for AI Safety, reinforcing our mission to deliver safe, scalable, and trustworthy autonomous solutions,” said Steve Kenner, Chief Safety Officer at Torc. "This membership aligns with our commitment to advancing rigorous safety practices in AI development and supports our goal of providing highly reliable technology to our customers."

The Stanford Center for AI Safety's research focuses on developing robust safety protocols and advanced machine learning techniques to mitigate risks in autonomous systems. As a member of the center, Torc can leverage published research to continue to address critical safety challenges in autonomous driving applications. Ultimately, Torc will work to continue to enhance the reliability and safety of its machine learning models toward the company's goal of fully commercializing autonomous trucks for long-haul applications in the U.S. in 2027.

"Collaborating with members in our affiliates program allows us to apply our research in AI safety to real-world challenges,” commented Duncan Eddy, Director of the Stanford Center for AI Safety. “Our work with Torc will include efforts to enhance the safety and reliability of autonomous driving systems, ultimately contributing to the advancement of this transformative technology."

For more information on Torc, please visit torc.ai.

About Torc

Torc, headquartered in Blacksburg, Virginia, is an independent subsidiary of Daimler Truck AG, a global leader and pioneer in trucking. Founded in 2005 at the birth of the self-driving vehicle revolution, Torc has over 20 years of experience in pioneering safety-critical, self-driving applications. Torc offers a complete self-driving vehicle software and integration solution and is currently focusing on commercializing autonomous trucks for long-haul applications in the U.S. In addition to its Blacksburg headquarters and engineering offices in Austin, Texas, and Montreal, Canada, Torc has a fleet operations facility in the Dallas-Fort Worth area in Texas, to support the company’s productization and commercialization efforts, as well as a presence in Ann Arbor, MI, to take advantage of the autonomous and automotive talent base in that region. Torc’s purpose is driving the future of freight with autonomous technology. As the world’s leading autonomous trucking solution, we empower exceptional employees, deliver a focused, hub-to-hub autonomous truck product, and provide our customers with the safest, most reliable, and cost-efficient solution to the market.

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