0.12%
1.06%
1.38%
BTC
$64,148.97
0.34%
2.31%
7.44%
ETH
$1,877.71
0.28%
0.75%
1.07%
BNB
$576.16
0.06%
1.71%
0.12%
XRP
$1.10
0.28%
2.00%
2.82%
SOL
$75.93
0.00%
0.44%
2.76%
TRX
$0.32300138
0.19%
1.08%
0.03%
DOGE
$0.07319380
0.54%
1.04%
2.22%
ADA
$0.16327382
0.41%
1.32%
8.86%
LINK
$8.44
0.41%
0.52%
2.98%
LTC
$45.27
0.12%
1.06%
1.38%
BTC
$64,148.97
0.34%
2.31%
7.44%
ETH
$1,877.71
0.28%
0.75%
1.07%
BNB
$576.16
0.06%
1.71%
0.12%
XRP
$1.10
0.28%
2.00%
2.82%
SOL
$75.93
0.00%
0.44%
2.76%
TRX
$0.32300138
0.19%
1.08%
0.03%
DOGE
$0.07319380
0.54%
1.04%
2.22%
ADA
$0.16327382
0.41%
1.32%
8.86%
LINK
$8.44
0.41%
0.52%
2.98%
LTC
$45.27
   /       /       /    Alibaba unveils AI models for controlling robots

Alibaba unveils AI models for controlling robots

Alibaba представила ИИ-модели для управления роботами

Alibaba has unveiled Qwen-Robot Suite — a set of AI models for robots and tasks in the physical environment: Qwen-RobotNav for navigation, Qwen-RobotManip for actions with objects, and Qwen-RobotWorld for predicting how a scene will unfold. The team described the project as a «full stack for embodied artificial intelligence».

These are software models meant to help physical agents perceive their surroundings, plan actions, and carry out commands in natural language. Qwen-Robot Suite is already undergoing pilot trials with select Alibaba Cloud enterprise clients in the robotics field.

Why Alibaba is bringing Qwen into the physical world

Large language and multimodal models can already work with text, images, video, and speech, but that is not enough for robots. Physical agents need not only to understand a command but also to translate it into motion, account for space, the properties of objects, sensor limitations, and the consequences of actions.

Alibaba calls this the field of physical AI, or «embodied AI». In this approach, a model must work not only with digital data but also with the physical environment: moving around, finding objects, controlling manipulators, and predicting what will happen after an action.

Qwen-RobotNav: five navigation tasks in one model

Qwen-RobotNav is responsible for navigation. The model combines five groups of tasks:

  • following instructions;
  • moving to a specified point;
  • searching for objects;
  • tracking a target;
  • autonomous driving.

According to Alibaba, Qwen-RobotNav is built on Qwen3-VL and trained on 15.6 million samples related to route planning and visual-language reasoning.

The company claimed 76.5% success on VLN-CE RxR and 90% on EVT-Bench. Alibaba also specified that the model can operate as a tool for larger agentic systems: a higher-level model plans the task, while Qwen-RobotNav handles the movement.

In its demonstrations, Alibaba describes scenarios such as searching for a lost item in a room or checking whether a specific object in a building is open. In such tasks, a robot must not merely move but gather visual evidence and return an answer to the user.

Qwen-RobotManip: actions with objects

Qwen-RobotManip is designed for physical actions with objects. The model is meant to help robots pick up, move, and place items, as well as transfer skills between different types of devices.

One of the key challenges of robotics is that robots describe actions differently. A manipulator, a two-armed platform, a robot with a hand, or a mobile system use different coordinates, joints, and command formats. Qwen-RobotManip attempts to bring this data into a common representation so that training on one type of robot helps another.

For training, Alibaba used more than 38,100 hours of data. This volume included 11,320 hours of open robotics data, 1,933 hours of first-person human action video, and 24,808 hours of synthetic robotic demonstrations created on the basis of such videos.

The company stated that the model took first place in RoboChallenge Table30 v1 in the general-purpose models track. According to Alibaba, Qwen-RobotManip also showed robustness to new instructions, unfamiliar objects, and the transfer of skills between different robots.

Qwen-RobotWorld: a world model for robots

Qwen-RobotWorld is a video world model controlled by natural language. It is meant to predict how a scene will unfold after a given action.

For example, the model receives a current observation and a text command, and then generates a likely future state of the environment. This approach can be used for manipulation, autonomous driving, navigation, planning, and the creation of synthetic training data for robots.

To train Qwen-RobotWorld, the team assembled the Embodied World Knowledge corpus. It includes 8.6 million «video-text» pairs and more than 200 million frames, covers more than 20 types of robotic platforms and over 500 categories of actions.

Alibaba stated that Qwen-RobotWorld took first place in EWMBench and DreamGen Bench, and also outperformed all open models in WorldModelBench and PBench. The technical description also claims that the model shows high consistency with basic physical regularities — motion, conservation of mass, fluids, and gravity.

Mass-market robots are still a long way off

Despite the claimed results, Qwen-Robot Suite for now remains a set of models rather than a finished consumer robotics platform. Real-world deployment runs into sensor noise, actuator wear, non-standard situations, perception errors, and an enormous number of rare scenarios. Many of the benchmarks on which such systems are compared are run in simulation or under limited experimental conditions.

Alibaba also did not disclose the cost of access, the timeline for a public launch, or the list of clients who are already testing Qwen-Robot Suite.

As a reminder, in April Alibaba Cloud unveiled the agentic model Qwen3.6-Plus with a context window of 1 million tokens and support for external tools.

Source: ForkLog

17-06-2026
Cryptocurrencies / Cryptocurrency News

Cryptocurrency News

IplanRIO unveils open AI model Rio 3.5IplanRIO unveils open AI model Rio 3.5Tether Releases an Update to Its QVAC AI PlatformTether Releases an Update to Its QVAC AI PlatformExpansion of the TRON development teamExpansion of the TRON development team

Random quote about money

"Время и деньги - самое тяжкое бремя в жизни, поэтому самые несчастные из смертных - это те, у кого и того, и другого в избытке."

Сэмюэл Джонсон

Interesting posts in other sections of the blog

Information

Users of Guests are not allowed to comment this publication.

Latest articles

all articles →
Trump’s Teleprompter Operator Made $100,000 Betting on a President Who Ignores the ScriptCryptocurrency NewsTrump’s Teleprompter Operator Made $100,000 Betting on a President Who Ignores the ScriptCFTC probes a Kalshi insider trading case where Trump's teleprompter operator allegedly made over $100,000 on speech bets.16-07-2026Crypto Gambler Lost $1.5 Million After Argentina Beat England in the World Cup: DetailsCryptocurrency NewsCrypto Gambler Lost $1.5 Million After Argentina Beat England in the World Cup: DetailsLionel Messi will play in his second consecutive World Cup final, yet that wasn't good news for one trader.16-07-2026Gold Bear Market Confirmed? First Red Weekly Signal Since 2023Cryptocurrency NewsGold Bear Market Confirmed? First Red Weekly Signal Since 2023Gold bear market signals mount as the first red weekly Gaussian channel bar since 2023 puts $3,550 support in play.16-07-2026T. Rowe Price Debuts New ETF With Bitcoin and Crypto ExposureCryptocurrency NewsT. Rowe Price Debuts New ETF With Bitcoin and Crypto ExposureBitcoin Magazine T. Rowe Price Debuts New ETF With Bitcoin and Crypto Exposure Asset manager T. Rowe Price has debuted a crypto fund giving investors exposure16-07-2026Polygon Layoffs and 1inch Founder Exit Expose Crypto’s Costly Pivot to RevenueCryptocurrency NewsPolygon Layoffs and 1inch Founder Exit Expose Crypto’s Costly Pivot to RevenuePolygon Labs cuts staff and 1inch's co-founder says he was fired, as crypto firms restructure around revenue.16-07-2026CRO Surges as Crypto.com Secures $400M in Citadel Securities-Led FundingCryptocurrency NewsCRO Surges as Crypto.com Secures $400M in Citadel Securities-Led FundingThis was the exchange's first-ever institutional funding round. As a result, CRO skyrocketed by 25% in minutes.16-07-2026Fed Chair Warsh: No Bailout for Crypto Industry in CrisisCryptocurrency NewsFed Chair Warsh: No Bailout for Crypto Industry in CrisisBitcoin Magazine Fed Chair Warsh: No Bailout for Crypto Industry in Crisis Federal Reserve Chair Kevin Warsh said the Fed will not bail out failing crypto16-07-2026Forget Bitcoin Bottom: Analyst Says These Altcoins Could Move FirstCryptocurrency NewsForget Bitcoin Bottom: Analyst Says These Altcoins Could Move FirstAccording to the analyst, waiting for universal confirmation of a market bottom could mean missing the strongest early opportunities.16-07-2026Grayscale Highlights a 22% Bitcoin Yield Opportunity as Early Bottom Signals EmergeCryptocurrency NewsGrayscale Highlights a 22% Bitcoin Yield Opportunity as Early Bottom Signals EmergeGrayscale is pitching covered calls as a way for Bitcoin holders to earn yield during a range-bound market, even as Glassnode detects early signals of a bear16-07-2026
Sign inMasterInvest
RUENUK