Sensor visualization of street

Deploying a Machine-Learned Planner for Autonomous Vehicles in San Francisco

Visualized data of roads, objects, and vehicles collected from an autonomous vehicle
Comparison between Autonomy 1.0 and Autonomy 2.0
The schematic of the current iteration of the machine learning-first planner, where the ML Planner — a single neural network — is the primary trajectory generation module.
Our early models (BEFORE) crosses the inner lane boundary and leaves the road. After adding more turning data, the car stays centered in its lane (AFTER).
Typical workflow for our ML Planning engineers
The ML Planner is reacting to a cut-in ahead of it. The green vehicle represents how the vehicle performed on the road, while the white vehicle shows how the vehicle controlled by our ML Planner reacted in simulation.