Autonomous vehicle companies use simulators to train their self-driving systems and teach them how to react to “agents” — things like pedestrians, cyclists, traffic signals and other cars. To have a truly advanced AV system, those agents need to behave and react realistically to the AV and to each other.
Creating and training intelligent agents is one of the problems Waymo is trying to solve, and it’s a common challenge in the world of AV research. To that end, Waymo
“Traditional simulators have predefined agents often, so someone wrote the script on how the agent is supposed to behave, but that’s not necessarily how they behave,” Drago Anguelov, head of research at Waymo, told TechCrunch during a video interview.
“In our case, what this simulator is paired with is a large dataset of our vehicles observing how everyone in environments behave. By observing how everyone behaves, how much can we learn about how we should behave? We call this a stronger imitative component, and it’s the key to developing robust, scalable AV systems.”
Waymo says the simulator, dubbed Waymax
Waymo says it can’t view the work that researchers create using Waymax, but that doesn’t mean the Alphabet-owned AV company doesn’t stand to gain from sharing its tools and data.
Waymo regularly hosts challenges for researchers to help solve problems relevant to AVs. In 2022, the company organized one such challenge called “Simulated Agents.” Waymo populated a simulator with agents and tasked researchers with training them to behave realistically in relation to its test vehicle. While the challenge was underway, Waymo realized it didn’t have a robust enough environment set up in which to train the agents. So Waymo collaborated with Google Research to jointly develop a more suitable environment that can run in a closed-loop fashion, or one in which the behavior of the system is continually monitored and tweaked to create meaningful outcomes.