NASA’s Perseverance used its navigation cameras
to capture its drive along the rim of Jezero Crater on Dec. 10, 2025. The
navcam images were combined with rover data and placed into a 3D virtual
environment, resulting in this reconstruction with virtual frames inserted
about every 4 inches (0.1 meters) of drive progress.
NASA/JPL-Caltech
The team for
the six-wheeled scientist used a
vision-capable AI to create a safe route over the Red Planet’s
surface without the input of human route planners.
NASA’s Perseverance Mars rover has completed
the first drives on another world that
were planned by artificial intelligence. Executed on
Dec. 8 and 10, and led by the agency’s Jet Propulsion
Laboratory in Southern California, the demonstration used generative AI to
create waypoints for Perseverance, a complex decision-making task
typically performed manually by the mission’s human rover planners.
“This demonstration shows how far
our capabilities have advanced and broadens how we will explore other worlds,”
said NASA Administrator Jared Isaacman. “Autonomous technologies like this can
help missions to operate more efficiently, respond to challenging
terrain, and increase science return as distance from Earth
grows. It’s a strong example of teams applying new
technology carefully and responsibly in real operations.”
During the demonstration, the
team leveraged a type of generative
AI called vision-language models to analyze existing data from
JPL’s surface mission dataset. The AI used the same imagery and
data that human planners rely on to generate
waypoints — fixed locations where the rover takes up a new set of
instructions — so that Perseverance could safely navigate the challenging
Martian terrain.
The initiative was led out
of JPL’s Rover
Operations Center (ROC) in collaboration with Anthropic, using the
company’s Claude AI models.
This animation was created using data acquired
during Perseverance’s Dec. 10, 2025, drive on Jezero Crater’s rim. Pale blue
lines depict the track the rover’s wheels take. Black lines snaking out in
front of the rover show the path options the rover is considering. The white
terrain is a height map based on rover data. The blue circle that appears near
the end of the animation is a waypoint.
NASA/JPL-Caltech
Progress for Mars, beyond
Mars is on average about 140
million miles (225 million kilometers) away from
Earth. This vast distance creates a significant communication lag, making
real-time remote operation — or “joy-sticking” — of a
rover impossible. Instead, for the past 28 years, over
several missions, rover routes have been planned and
executed by human “drivers,” who analyze the terrain and
status data to sketch a route using waypoints, which are usually
spaced no more than 330 feet (100 meters) apart to avoid any
potential hazards. Then they send the plans via NASA’s Deep Space Network to the rover, which executes them.
But for Perseverance’s drives on
the 1,707 and 1,709 Martian days, or sols, of the mission, the team did
something different: Generative AI provided the analysis of the high-resolution
orbital imagery from the HiRISE (High Resolution Imaging Science Experiment)
camera aboard NASA’s Mars Reconnaissance Orbiter and terrain-slope data from
digital elevation models. After identifying critical terrain features —
bedrock, outcrops, hazardous boulder fields, sand ripples, and the like — it
generated a continuous path complete with waypoints.
To ensure the AI’s
instructions were fully compatible with the rover’s flight software, the
engineering team also processed the drive commands through
JPL’s “digital twin” (virtual replica of the rover), verifying
over 500,000 telemetry variables before sending commands to
Mars.
On Dec. 8, with generative AI
waypoints in its memory, Perseverance drove 689 feet
(210 meters). Two days later, it drove 807 feet
(246 meters).
“The fundamental elements of
generative AI are showing a lot of promise in streamlining the pillars of
autonomous navigation for off-planet driving: perception (seeing the rocks and
ripples), localization (knowing where we are), and planning and control (deciding
and executing the safest path),” said Vandi Verma, a space roboticist at JPL
and a member of the Perseverance engineering team. “We are moving towards a day
where generative AI and other smart tools will help our surface rovers handle
kilometer-scale drives while minimizing operator workload, and flag interesting
surface features for our science team by scouring huge volumes of rover
images.”
“Imagine intelligent systems not only on the ground at Earth, but also in edge applications in our rovers, helicopters, drones, and other surface elements trained with the collective wisdom of our NASA engineers, scientists, and astronauts,” said Matt Wallace, manager of JPL’s Exploration Systems Office. “That is the game-changing technology we need to establish the infrastructure and systems required for a permanent human presence on the Moon and take the U.S. to Mars and beyond.”
This annotated orbital image depicts the AI-planned
(depicted in magenta) and actual (orange) routes the Perseverance Mars rover
took during its Dec. 10, 2025, drive at Jezero Crater. The drive was the second
of two demonstrations showing that generative AI could be incorporated into
rover route planning.
NASA/JPL-Caltech/UofA
More about Perseverance
Managed for NASA by Caltech, JPL is
home to the Rover Operations Center (ROC). It also manages operations of
the Perseverance rover on behalf of the agency’s Science Mission Directorate as part of
NASA’s Mars Exploration Program portfolio.
For more information on the ROC, visit: https://www.jpl.nasa.gov/roc
Source: NASA’s Perseverance Rover Completes First AI-Planned Drive on Mars - NASA

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