Robots made by Nomagic automate the packing of customer orders inside a logistics warehouse. The company recently started an AI lab headed by ex-Google DeepMindRobots made by Nomagic automate the packing of customer orders inside a logistics warehouse. The company recently started an AI lab headed by ex-Google DeepMind

Nomagic’s new AI lab headed by former Google DeepMind researcher claims success in early deployment of ‘AI brain’ for warehouse robots

2026/07/08 15:00
6분 읽기
이 콘텐츠에 대한 의견이나 우려 사항이 있으시면 crypto.news@mexc.com으로 연락주시기 바랍니다

“Embodied AI” and “physical intelligence” are all the rage with Silicon Valley investors these days. The idea is that AI’s next frontier will be systems that don’t just use software but can take action in the real world through robotic devices, from self-driving cars to humanoid robots.
Many startups are chasing AI models that can serve as general-purpose “robot brains,” able to be dropped into any kind of robot and told to do almost anything. This is a shift from the kinds of systems that traditionally controlled industrial and warehouse robots. This control software often required weeks or months of on-site programming to perform even one task well.
Still, most of these general purpose AI models perform significantly below human-level accuracy on each task, at least right out of the box. The hope is that with just a little bit of additional on-site, task-specific training, these robots will eventually be able to master that task—reducing the barriers to deploying robots in many sectors.
Nomagic, a company with European headquarters in Warsaw, Poland, and U.S. headquarters in Sandy Springs, Georgia, is pursuing a different approach: rather than going from generality to task-specific mastery, it is creating AI robot brains that are extremely accurate at specific tasks right out of the box, and then hoping to eventually build from mastery of these individual tasks towards a general purpose system.
To pursue this goal, earlier this year Nomagic created an AI research lab led by Markus Wulfmeier, a former Google DeepMind robotics researcher, who now serves as Nomagic’s chief scientist. Now Nomagic has announced that it has deployed its first vision-language-action (VLA) model—a type of AI model that can perceive objects in the world, receive and understand text-based instructions from people, and then take actions in the world—to paying customers. The company says it is among the first companies in the world to run VLAs in a live production environment, rather than in lab experiments or staged demos. 
The early results, according to the company, are tangible if unglamorous: by aiming the VLA at the most common “edge cases” for its warehouse robots—somewhat uncommon situations where a robot gets stuck and has to call for human assistance—Nomagic says it has roughly halved the rate of these robot-caused interventions in live operations.

Nomagic’s first VLA deployment is with Brack.Alltron, Switzerland’s second-largest e-commerce platform, which has been using robots from Nomagic to automate order picking and packing in its warehouses. Roland Brack, the company’s founder and owner, said the addition of Nomagic’s VLA systems marked a step change.

“In the past, our goal was simply to minimize manual intervention. Today, we are seeing robots that truly understand their environment,” he said. “This intelligence allows us to run autonomous shifts through nights and Sundays, ensuring we stay ahead of peak demand without increasing the pressure on our human workforce.”

Nomagic’s concedes though that its VLA system is not perfect, even at the specific box picking tasks the company is targeting. “Our VLAs aren’t at 99.9% success on their own yet — no one’s customer-deployed VLAs are there yet,” the company said. But it says it has created a system around the VLA: Nomagic’s older “classical” robotics software acts as a “harness,” catching errors and enforcing safety, so the entire system can be trusted in a customer’s warehouses.

“The bar in the physical world is high: 99.9% [reliability] isn’t a marketing number, it’s the cost of being allowed in the building,” Kacper Nowicki, Nomagic’s cofounder and CEO, said. “So we built a harness that clears it from day one, while the AI inside keeps getting better.” Over time, both Nowicki and Wulfmeier said they expect stronger models to gradually make parts of that harness unnecessary, just as has begun to happen with digital AI.

Nomagic recently won the 2026 International Intralogistics and Forklift Truck of the Year (IFOY) Award for Shoebox Picker, which goes to the company whose sorting and picking device can master a notoriously difficult challenge in warehouse automation: handling two-piece shoeboxes without the lids falling off.

A former core member of the Gemini Robotics team at DeepMind, Wulfmeier frames Nomagic’s approach as a deliberate contrast with the prevailing strategy of competing embodied AI labs.

“Most of our community is racing to build the most general robot brain,” he told Fortune. “We’re betting that the harder part is actual mastery and that it has to be earned in real deployments first.”

Wulfmeier said that the physical world is dominated by a very long tail of rare situations. This is the same problem that has caused the roll-out of autonomous vehicles to be much slower than many anticipated a decade ago. The AI models running those vehicles have to be trained for an endless array of edge cases.

Today, most companies working on the AI models for robotics train either in simulation and then transfer those skills to real world settings (which roboticists call “sim-to-real” training), or by having humans initially operate the robots by remote control, creating examples that the robot learns to imitate. Some combination of those two methods can get an AI model to 80% performance accuracy on a fairly wide array of tasks, Wulfmeier said. But, working in a real warehouse, 80% is basically useless, he said. If a robot needs a human to step in even once an hour, the economics of automation often collapse.
Wulfmeier did extensive “sim-to-real” work at DeepMind and said he still believes in simulation and uses it in parts of Nomagic’s own pipeline. But he said he doubts either simulation or human teleoperation can economically close the remaining gap to the level of reliability the physical world demands.

Nomagic said that one major advantage it has over pure research labs is that it is able to gather tons of real world data from the fleet of robots the company already has deployed with customers. That existing fleet generates millions of successful package picks every month (two million with the fashion platform Zalando alone, the company says), and that stream grows as more robots are deployed. Rather than relying primarily on teleoperation or simulated environments, Nomagic trains its VLAs on this deployment data, which Wulfmeier describes as unusually rich and diverse.

Tristan d’Orgeval, Nomagic’s co-founder and chief strategy officer, said deploying robots to the real world first is a key differentiator between Nomagic and competing companies building AI systems for robots. “We didn’t build a lab and then go hunting for a problem,” he said. “We started in real operations, with customers who need our robot, and capable AI emerges out of that. The order matters — it’s what separates a demo from a business.” 

This story was originally featured on Fortune.com

시장 기회
Gensyn 로고
Gensyn 가격(AI)
$0.02645
$0.02645$0.02645
+1.22%
USD
Gensyn (AI) 실시간 가격 차트

World Cup Combo: Aim for 200x

World Cup Combo: Aim for 200xWorld Cup Combo: Aim for 200x

Combine up to 20 World Cup matches in one order

면책 조항: 본 사이트에 재게시된 글들은 공개 플랫폼에서 가져온 것으로 정보 제공 목적으로만 제공됩니다. 이는 반드시 MEXC의 견해를 반영하는 것은 아닙니다. 모든 권리는 원저자에게 있습니다. 제3자의 권리를 침해하는 콘텐츠가 있다고 판단될 경우, crypto.news@mexc.com으로 연락하여 삭제 요청을 해주시기 바랍니다. MEXC는 콘텐츠의 정확성, 완전성 또는 시의적절성에 대해 어떠한 보증도 하지 않으며, 제공된 정보에 기반하여 취해진 어떠한 조치에 대해서도 책임을 지지 않습니다. 본 콘텐츠는 금융, 법률 또는 기타 전문적인 조언을 구성하지 않으며, MEXC의 추천이나 보증으로 간주되어서는 안 됩니다.

추천 콘텐츠

Who Will Win the World Cup 2026? Quarter-Final Power Rankings and Updated Predictions

Who Will Win the World Cup 2026? Quarter-Final Power Rankings and Updated Predictions

The World Cup 2026 has reached the quarter-final stage, and only eight teams remain in the race for the trophy: France, Morocco, Spain, Belgium, Norway, England, Argentina and Switzerland. At this point, the tournament is no longer about long-term potential. It is about knockout football, tactical discipline, squad depth, emotional control and the ability to survive pressure. One bad defensive mistake, one red card, one penalty shootout or one moment from a superstar can change everything.
공유하기
MEXC NEWS2026/07/09 14:51
Can Switzerland Shock Argentina in the World Cup Quarter-Final?

Can Switzerland Shock Argentina in the World Cup Quarter-Final?

Argentina VS Switzerland is one of the most intriguing quarter-finals of the World Cup 2026. Argentina enter the match as defending champions, led by Lionel Messi, tournament experience and a squad that knows how to survive pressure. Switzerland arrive as disciplined underdogs after beating Colombia on penalties to reach the last eight.
공유하기
MEXC NEWS2026/07/09 15:05
Will the US Confirm That Aliens Exist Before 2027? UAP Disclosure Prediction, Evidence and Key Scenarios

Will the US Confirm That Aliens Exist Before 2027? UAP Disclosure Prediction, Evidence and Key Scenarios

The US government has become more open about Unidentified Anomalous Phenomena, or UAP. Agencies such as NASA, the Pentagon and the All-Domain Anomaly Resolution Office have acknowledged that some sightings remain unexplained. However, “unexplained” does not mean “alien.” So far, official US sources have not confirmed that any UAP case proves extraterrestrial life, alien technology or non-human intelligence.
공유하기
MEXC NEWS2026/07/09 15:10

$5M in SPCX Positions for Free

$5M in SPCX Positions for Free$5M in SPCX Positions for Free

0 fees, 100x leverage, daily prizes, 7K+ stocks/ETFs