14-year-old Vaibhav Suryavanshi creates history, shatters Suresh Raina's massive record
Viral video: Coldplay's Chris Martin sings with Indian couple onstage after 'Kiss Cam' moment, WATCH
Israel, Syria agree on ceasefire, announces US envoy
Indian IT worker says WFH request rejected after father’s death, triggers online backlash
Los Angeles: At least 28 injured as vehicle drives into crowd in East Hollywood
Newlyweds Neeraj Chopra, Himani Mor steal the show at Wimbledon final, fans gush over viral pics
NTA UGC NET June result 2025 date announced, know when and where to check
Shah Rukh Khan suffers injury while shooting for King, flies to US for treatment, insiders reveal...
DU Admission 2025: Delhi University to release 1st seat allocation list today
Asia Cup faces grave danger as BCCI threatens to boycott resolutions if ACC..., asks for...
After stuntman SM Raju’s death, Akshay Kumar provides safety cover worth Rs... for 650 stunt artists
CM Chandrababu Naidu's wife gains Rs 788011646 in just 1 day from this FMCG stock, it's...
Meet woman, who cracked UPSC exam in first attempt, left IPS to become..., her AIR was...
Shocking! Sangeeta Bijlani’s Pune farmhouse looted: 'Beds smashed, CCTV broken’
Who was Felix Baumgartner? Man who jumped from space dies in paragliding crash
Big blow to Pakistan as China backs US move against TRF, condemns Pahalgam terror attack, says...
This company dominates Japan, Germany, UAE, China, France, name is..., it manufactures...
Rakesh Roshan rushed to hospital in Mumbai, details inside
This famous Delhi market, bustling with customers for over a decade, may shutdown soon due to...
Telugu actor Fish Venkat passes away in Hyderabad
'We got it solved through trade': Donald Trump again claims to have stopped India-Pak conflict
Donald Trump signs landmark GENIUS Act, jokes ‘They named it after...’
Jan Suraaj founder Prashant Kishor suffers injury during rally in Bihar, here's what happened
Eknath Shinde makes BIG remark on Uddhav Thackeray, says, 'Maharashtra has never seen...'
DNA TV Show: Big blow to Pakistan as US labels TRF as global terror outfit
India star ruled of England tour due to thumb injury, flies back home for treatment
India's BIG statement on EU sanctions against Russia, says, 'There should be no double standards...'
Isha Ambani-led Reliance Retail's profit rises 28% to Rs...; revenue stands at Rs...
Renowned Tamil actor-director Velu Prabhakaran dies at 68 after prolonged illness
Employee quits with just one line, internet calls it ‘too honest to handle’
Gurgaon couple earns Rs 60 LPA, splits bills equally like flatmates: 'It shows mutual respect'
Watch: Virat Kohli's nephew Aryaveer ready for DPL debut, coach says no 'famous surname' baggage
Time to drop 'Sir Jadeja'? Ajinkya Rahane's big suggestion ahead of Manchester Test
REVEALED: Indian billionaire Sunil Mittal, who runs Bharti Airtel, gets whopping salary of Rs...
EU imposes fresh sanctions on Russia, how will it impact India? New Delhi may benefit as...
Israel-Hamas War: Israeli strikes in Gaza kill 30, here's what we know so far
Viral video: Man performs bhangra on London underground escalator, Internet can’t stop watching
Days after Air India plane crash, Tata Group sets up Rs 500 crore....
TECHNOLOGY
Scientists have developed new algorithms that enable robots to learn motor tasks through trial and error - much like humans learn new tasks, marking a major milestone in artificial intelligence.
Scientists have developed new algorithms that enable robots to learn motor tasks through trial and error - much like humans learn new tasks, marking a major milestone in artificial intelligence.
Researchers demonstrated their technique, a type of reinforcement learning, by having a robot complete various tasks - putting a clothes hanger on a rack, assembling a toy plane, screwing a cap on a water bottle, and more - without preprogrammed details about its surroundings.
"What we're reporting on here is a new approach to empowering a robot to learn," said Professor Pieter Abbeel of University of California, Berkeley's Department of Electrical Engineering and Computer Sciences. "The key is that when a robot is faced with something new, we won't have to reprogramme it. The exact same software, which encodes how the robot can learn, was used to allow the robot to learn all the different tasks we gave it," said Abbeel.
The researchers turned to a new branch of artificial intelligence known as deep learning, which is loosely inspired by the neural circuitry of the human brain when it perceives and interacts with the world.
In the experiments, the researchers worked with a Willow Garage Personal Robot 2 (PR2), which they nicknamed BRETT, or Berkeley Robot for the Elimination of Tedious Tasks. They presented BRETT with a series of motor tasks, such as placing blocks into matching openings or stacking Lego blocks.
The algorithm controlling BRETT's learning included a reward function that provided a score based upon how well the robot was doing with the task. BRETT takes in the scene, including the position of its own arms and hands, as viewed by the camera. The algorithm provides real-time feedback via the score based upon the robot's movements. Movements that bring the robot closer to completing the task will score higher than those that do not. The score feeds back through the neural net, so the robot can learn which movements are better for the task at hand.
BRETT learns to screw the cap on a bottle:
This end-to-end training process underlies the robot's ability to learn on its own. As the PR2 moves its joints and manipulates objects, the algorithm calculates good values for the 92,000 parameters of the neural net it needs to learn. With this approach, when given the relevant coordinates for the beginning and end of the task, the PR2 could master a typical assignment in about 10 minutes. When the robot is not given the location for the objects in the scene and needs to learn vision and control together, the learning process takes about three hours.
Watch: BRETT the Robot learns to put things together on his own