Featured
- Get link
- Other Apps
AI is poised to automate today’s most
mundane manual warehouse task
Before almost any item reaches your door, it traverses the
global supply chain on a pallet. More than 2 billion pallets are in circulation
in the United States alone, and $400 billion worth of goods are exported on
them annually. However, loading boxes onto these pallets is a task stuck in the
past: Heavy loads and repetitive movements leave workers at high risk of
injury, and in the rare instances when robots are used, they take months to
program using handheld computers that have changed little since the 1980s.
Jacobi Robotics, a startup spun out of the labs of the
University of California, Berkeley, says it can vastly speed up that process
with AI command-and-control software. The researchers approached
palletizing—one of the most common warehouse tasks—as primarily an issue of
motion planning: How do you safely get a robotic arm to pick up boxes of
different shapes and stack them efficiently on a pallet without getting stuck?
And all that computation also has to be fast, because factory lines are producing
more varieties of products than ever before—which means boxes of more shapes
and sizes.
After much trial and error, Jacobi’s founders, including
roboticist Ken Goldberg, say they’ve cracked it. Their software, built upon
research from a paper they
published in Science Robotics in 2020, is designed to work
with the four leading makers of robotic palletizing arms. It uses deep learning
to generate a “first draft” of how an arm might move an item onto the pallet.
Then it uses more traditional robotics methods, like optimization, to check
whether the movement can be done safely and without glitches.
Jacobi aims to replace the legacy methods customers are
currently using to train their bots. In the conventional approach, robots are
programmed using tools called “teaching pendants,” and customers usually have
to manually guide the robot to demonstrate how to pick up each individual box
and place it on the pallet. The entire coding process can take months. Jacobi
says its AI-driven solution promises to cut that time down to a day and can
compute motions in less than a millisecond. The company says it plans to launch
its product later this month.
Billions of dollars are being poured into AI-powered
robotics, but most of the excitement is geared toward next-generation robots
that promise to be capable of many different tasks—like the humanoid robot that has
helped Figure raise $675
million from investors, including Microsoft and OpenAI, and reach a $2.6
billion evaluation in February. Against this backdrop, using AI to train a
better box-stacking robot might feel pretty basic.
Indeed, Jacobi’s seed funding round is trivial in
comparison: $5 million led by Moxxie Ventures. But amid hype around promised
robotics breakthroughs that could take years to materialize, palletizing might
be the warehouse problem AI is best poised to solve in the short term.
“We have a very pragmatic approach,” says Max Cao, Jacobi’s
co-founder and CEO. “These tasks are within reach, and we can get a lot of
adoption within a short time frame, versus some of the moon shots out there.”
Jacobi’s software product includes a virtual studio where
customers can build replicas of their setups, capturing factors like which
robot models they have, what types of boxes will come off the conveyor belt, and
which direction the labels should face. A warehouse moving sporting goods, say,
might use the program to figure out the best way to stack a mixed pallet of
tennis balls, rackets, and apparel. Then Jacobi’s algorithms will automatically
plan the many movements the robotic arm should take to stack the pallet, and
the instructions will be transmitted to the robot.
JACOBI ROBOTICS
The approach merges the benefits of fast computing provided
by AI with the accuracy of more traditional robotics techniques, says Dmitry
Berenson, a professor of robotics at the University of Michigan, who is not
involved with the company.
“They're doing something very reasonable here,” he says. A
lot of modern robotics research is betting big on AI, hoping that deep learning
can augment or replace more manual training by having the robot learn from past
examples of a given motion or task. But by making sure the predictions
generated by deep learning are checked against the results of more traditional
methods, Jacobi is developing planning algorithms that will likely be less
prone to error, Berenson says.
The planning speed that could result “is pushing this into a
new category,” he adds. “You won’t even notice the time it takes to compute a
motion. That’s really important in the industrial setting, where every pause
means delays.”
- Get link
- Other Apps
Popular Posts
- Get link
- Other Apps
- Get link
- Other Apps
Comments
Post a Comment