Artificial intelligence employed by the U.S. military has piloted pint-sized surveillance drones in special operations forces’ missions and helped Ukraine in its war against Russia. It tracks soldiers’ fitness, predicts when Air Force planes need maintenance and helps keep tabs on rivals in space.
Now, the Pentagon is intent on fielding multiple thousands
of relatively inexpensive, expendable AI-enabled autonomous vehicles by 2026 to
keep pace with China. The ambitious initiative — dubbed Replicator — seeks to
“galvanize progress in the too-slow shift of U.S. military innovation to
leverage platforms that are small, smart, cheap, and many,” Deputy Secretary of
Defense Kathleen Hicks said in August.
While its funding is uncertain and details vague, Replicator
is expected to accelerate hard decisions on what AI tech is mature and
trustworthy enough to deploy - including on weaponized systems.
There is little dispute among scientists, industry experts
and Pentagon officials that the U.S. will within the next few years have fully
autonomous lethal weapons. And though officials insist humans will always be in
control, experts say advances in data-processing speed and machine-to-machine
communications will inevitably relegate people to supervisory roles.
That’s especially true if, as expected, lethal weapons are
deployed en masse in drone swarms. Many countries are working on them — and
neither China, Russia, Iran, India or Pakistan have signed a U.S.-initiated
pledge to use military AI responsibly.
It’s unclear if the Pentagon is currently formally assessing
any fully autonomous lethal weapons system for deployment, as required by a
2012 directive. A Pentagon spokeswoman would not say.
Paradigm shifts
Replicator highlights immense technological and personnel
challenges for Pentagon procurement and development as the AI revolution
promises to transform how wars are fought.
“The Department of Defense is struggling to adopt the AI
developments from the last machine-learning breakthrough,” said Gregory Allen,
a former top Pentagon AI official now at the Center for Strategic and
International Studies think tank.
The Pentagon’s portfolio boasts more than 800 AI-related
unclassified projects, much still in testing. Typically, machine-learning and
neural networks are helping humans gain insights and create efficiencies.
“The AI that we’ve got in the Department of Defense right
now is heavily leveraged and augments people,” said Missy Cummings, director of
George Mason University’s robotics center and a former Navy fighter pilot.”
“There’s no AI running around on its own. People are using it to try to
understand the fog of war better.”
Space, war’s new frontier
One domain where AI-assisted tools are tracking potential
threats is space, the latest frontier in military competition.
China envisions using AI, including on satellites, to “make
decisions on who is and isn’t an adversary,” U.S. Space Force chief technology
and innovation officer Lisa Costa, told an online conference this month.
The U.S. aims to keep pace.
An operational prototype called Machina used by Space Force
keeps tabs autonomously on more than 40,000 objects in space, orchestrating
thousands of data collections nightly with a global telescope network.
Machina’s algorithms marshal telescope sensors. Computer
vision and large language models tell them what objects to track. And AI
choreographs drawing instantly on astrodynamics and physics datasets, Col.
Wallace ‘Rhet’ Turnbull of Space Systems Command told a conference in August.
Another AI project at Space Force analyzes radar data to
detect imminent adversary missile launches, he said.
Maintaining planes and soldiers
Elsewhere, AI’s predictive powers help the Air Force keep
its fleet aloft, anticipating the maintenance needs of more than 2,600 aircraft
including B-1 bombers and Blackhawk helicopters.
Machine-learning models identify possible failures dozens of
hours before they happen, said Tom Siebel, CEO of Silicon Valley-based C3 AI,
which has the contract. C3’s tech also models the trajectories of missiles for
the the U.S. Missile Defense Agency and identifies insider threats in the
federal workforce for the Defense Counterintelligence and Security Agency.
Among health-related efforts is a pilot project tracking the
fitness of the Army’s entire Third Infantry Division — more than 13,000
soldiers. Predictive modeling and AI help reduce injuries and increase
performance, said Maj. Matt Visser.
Aiding Ukraine
In Ukraine, AI provided by the Pentagon and its NATO allies
helps thwart Russian aggression.
NATO allies share intelligence from data gathered by
satellites, drones and humans, some aggregated with software from U.S.
contractor Palantir. Some data comes from Maven, the Pentagon’s pathfinding AI
project now mostly managed by the National Geospatial-Intelligence Agency, say
officials including retired Air Force Gen. Jack Shanahan, the inaugural
Pentagon AI director,
Maven began in 2017 as an effort to process video from
drones in the Middle East – spurred by U.S. Special Operations forces fighting
ISIS and al-Qaeda — and now aggregates and analyzes a wide array of sensor- and
human-derived data.
AI has also helped the U.S.-created Security Assistance
Group-Ukraine help organize logistics for military assistance from a coalition
of 40 countries, Pentagon officials say.
All-Domain Command and Control
To survive on the battlefield these days, military units
must be small, mostly invisible and move quickly because exponentially growing
networks of sensors let anyone “see anywhere on the globe at any moment,”
then-Joint Chiefs chairman Gen. Mark Milley observed in a June speech. “And
what you can see, you can shoot.”
To more quickly connect combatants, the Pentagon has
prioritized the development of intertwined battle networks — called Joint
All-Domain Command and Control — to automate the processing of optical,
infrared, radar and other data across the armed services. But the challenge is
huge and fraught with bureaucracy.
Christian Brose, a former Senate Armed Services Committee
staff director now at the defense tech firm Anduril, is among military reform
advocates who nevertheless believe they “may be winning here to a certain
extent.”
“The argument may be less about whether this is the right
thing to do, and increasingly more about how do we actually do it -- and on the
rapid timelines required,” he said. Brose’s 2020 book, “The Kill Chain,” argues
for urgent retooling to match China in the race to develop smarter and cheaper
networked weapons systems.
To that end, the U.S. military is hard at work on
“human-machine teaming.” Dozens of uncrewed air and sea vehicles currently keep
tabs on Iranian activity. U.S. Marines and Special Forces also use Anduril’s
autonomous Ghost mini-copter, sensor towers and counter-drone tech to protect
American forces.
Industry advances in computer vision have been essential.
Shield AI lets drones operate without GPS, communications or even remote
pilots. It’s the key to its Nova, a quadcopter, which U.S. special operations
units have used in conflict areas to scout buildings.
On the horizon: The Air Force’s “loyal wingman” program
intends to pair piloted aircraft with autonomous ones. An F-16 pilot might, for
instance, send out drones to scout, draw enemy fire or attack targets. Air
Force leaders are aiming for a debut later this decade.
The race to full autonomy
The “loyal wingman” timeline doesn’t quite mesh with
Replicator’s, which many consider overly ambitious. The Pentagon’s vagueness on
Replicator, meantime, may partly intend to keep rivals guessing, though
planners may also still be feeling their way on feature and mission goals, said
Paul Scharre, a military AI expert and author of “Four Battlegrounds.”
Anduril and Shield AI, each backed by hundreds of millions
in venture capital funding, are among companies vying for contracts.
Nathan Michael, chief technology officer at Shield AI,
estimates they will have an autonomous swarm of at least three uncrewed
aircraft ready in a year using its V-BAT aerial drone. The U.S. military
currently uses the V-BAT -- without an AI mind -- on Navy ships, on
counter-drug missions and in support of Marine Expeditionary Units, the company
says.
It will take some time before larger swarms can be reliably
fielded, Michael said. “Everything is crawl, walk, run -- unless you’re setting
yourself up for failure.”
The only weapons systems that Shanahan, the inaugural
Pentagon AI chief, currently trusts to operate autonomously are wholly
defensive, like Phalanx anti-missile systems on ships. He worries less about
autonomous weapons making decisions on their own than about systems that don’t
work as advertised or kill noncombatants or friendly forces.
The department’s current chief digital and AI officer Craig
Martell is determined not to let that happen.
“Regardless of the autonomy of the system, there will always
be a responsible agent that understands the limitations of the system, has
trained well with the system, has justified confidence of when and where it’s
deployable -- and will always take the responsibility,” said Martell, who
previously headed machine-learning at LinkedIn and Lyft. “That will never not
be the case.”
As to when AI will be reliable enough for lethal autonomy,
Martell said it makes no sense to generalize. For example, Martell trusts his
car’s adaptive cruise control but not the tech that’s supposed to keep it from
changing lanes. “As the responsible agent, I would not deploy that except in
very constrained situations,” he said. “Now extrapolate that to the military.”
Martell’s office is evaluating potential generative AI use
cases – it has a special task force for that – but focuses more on testing and
evaluating AI in development.
One urgent challenge, says Jane Pinelis, chief AI engineer
at Johns Hopkins University’s Applied Physics Lab and former chief of AI
assurance in Martell’s office, is recruiting and retaining the talent needed to
test AI tech. The Pentagon can’t compete on salaries. Computer science PhDs
with AI-related skills can earn more than the military’s top-ranking generals
and admirals.
Testing and evaluation standards are also immature, a recent
National Academy of Sciences report on Air Force AI highlighted.
Might that mean the U.S. one day fielding under duress
autonomous weapons that don’t fully pass muster?
“We are still operating under the assumption that we have
time to do this as rigorously and as diligently as possible,” said Pinelis. “I
think if we’re less than ready and it’s time to take action, somebody is going
to be forced to make a decision.” -AP