How Path Robotics uses AI to optimize robotic welding

In Episode 252  of The Robot Report Podcast, we connect with Andy Lonsberry, co-founder and CEO of Path Robotics. He discusses the difficulties in setting up and using robots for welding applications.

Path Robotics has applied AI to identify the path of a torch and then move the robot through the welding operation, using real-time vision guidance to maintain an optimal path.

headshot of Andy Lonsberry.

Andy Lonsberry, CEO of Path Robotics.

As CEO of Path Robotics, Lonsberry leads the company’s strategy and operations with a focus on applying physical AI to longstanding challenges in manufacturing.

His work centers on building adaptive, AI-driven robotic systems designed for real-world production environments.

The Columbus, Ohio-based company is also deploying Boston Dynamics’ Spot quadruped robots into mobile welding applications in shipbuilding.


headshot of professor michael yip.

Michael Yip, professor at UC San Diego.

Our other interviewee this week is Michael Yip, an assistant professor of electrical and computer engineering at the University of California San Diego, an IEEE RAS distinguished lecturer, a Hellman Fellow, and the director of the Advanced Robotics and Controls Laboratory (ARCLab).

His group currently focuses on solving problems in data-efficient and computationally efficient robot control and motion planning through the use of various forms of learning representations, including deep learning and reinforcement learning strategies. Yip’s lab applies these ideas to surgical robotics and the automation of surgical procedures.


Show timeline

  • 7:15 –News of the week
  • 10:15 – Michael Yip, assistant professor of electrical and computer engineering at UC San Diego
  • 35:27 – Andy Lonsberry, co-founder and CEO of Path Robotics

News of the week


Sponsors

Thanks to our sponsors who make this content possible.

Every growing Postgres database eventually hits a wall. Queries slow down, dashboards lag, and teams consider adding a second database.

Tiger Data, creators of TimescaleDB, extend Postgres with time-series primitives, columnar storage, and automatic partitioning so your queries stay fast on live data. No pipelines, no migration, no second system. Just Postgres, built for the workload you actually have.

Learn more at: tigerdata.com/go/trial


To learn how you can sponsor a future episode of The Robot Report Podcast, contact: Jami Brownlee at [email protected]

Would you like to be a guest on a future episode? Contact Mike Oitzman at [email protected]

Similar Posts

Leave a Reply

Your email address will not be published. Required fields are marked *