Menu

Blog

Archive for the ‘robotics/AI’ category: Page 1802

Jul 16, 2019

Elon Musk unveils Neuralink’s plans for brain-reading ‘threads’ and a robot to insert them

Posted by in categories: biotech/medical, Elon Musk, mobile phones, robotics/AI

Elon Musk’s Neuralink, the secretive company developing brain-machine interfaces, showed off some of the technology it has been developing to the public for the first time. The goal is to eventually begin implanting devices in paralyzed humans, allowing them to control phones or computers.

Jul 16, 2019

AI solves Rubik’s Cube in one second

Posted by in category: robotics/AI

An AI system teaches itself to solve the Rubik’s Cube more quickly than any human.

Jul 16, 2019

Intel’s neuromorphic system surfs next wave in brain-inspired research

Posted by in categories: biological, robotics/AI

A neuromorphic computer that can simulate 8 million neurons is in the news. The term “neuromorphic” suggests a design that can mimic the human brain. And neuromorphic computing? It is described as using very large scale integration systems with electric analog circuits imitating neuro-biological architectures in our system.

This is where Intel steps in, and significantly so. The Loihi chip applies the principles found in biological brains to computer architectures. The payoff for users is that they can process information up to 1,000 times faster and 10,000 times more efficiently than CPUs for specialized applications, e.g., sparse coding, graph search and constraint-satisfaction problems.

Its news release on Monday read “Intel’s Pohoiki Beach, a 64-Chip Neuromorphic System, Delivers Breakthrough Results in Research Tests.” Pohoiki Beach is Intel’s latest neuromorphic system.

Jul 16, 2019

Artificial intelligence designs metamaterials used in the invisibility cloak

Posted by in categories: engineering, particle physics, robotics/AI

Metamaterials are artificial materials engineered to have properties not found in naturally occurring materials, and they are best known as materials for invisibility cloaks often featured in sci-fi novels or games. By precisely designing artificial atoms smaller than the wavelength of light, and by controlling the polarization and spin of light, researchers achieve new optical properties that are not found in nature. However, the current process requires much trial and error to find the right material. Such efforts are time-consuming and inefficient; artificial intelligence (AI) could provide a solution for this problem.

The research group of Prof. Junsuk Rho, Sunae So and Jungho Mun of Department of Mechanical Engineering and Department of Chemical Engineering at POSTECH have developed a design with a higher degree of freedom that allows researchers to choose materials and design photonic structures arbitrarily by using deep learning. Their findings are published in several journals including Applied Materials and Interfaces, Nanophotonics, Microsystems & Nanoengineering, Optics Express, and Scientific Reports.

AI can be trained with a vast amount of data, and it can learn designs of various and the correlation between photonic structures and their optical properties. Using this training process, it can provide a that makes a photonic structure with desired optical properties. Once trained, it can provide a desired design promptly and efficiently. This has already been researched at various institutions in the U.S. such as MIT, Stanford University and Georgia Institute of Technology. However, the previous studies require inputs of materials and structural parameters beforehand, and adjusting photonic structures afterwards.

Jul 16, 2019

Facebook and CMU’s ‘superhuman’ poker AI beats human pros

Posted by in category: robotics/AI

It can bluff better than any human.

Jul 16, 2019

AI Drug Hunters Could Give Big Pharma a Run for Its Money

Posted by in categories: biotech/medical, economics, health, robotics/AI

But a less-noticed win for DeepMind, the artificial-intelligence arm of Google’s parent Alphabet Inc., at a biennial biology conference could upend how drugmakers find and develop new medicines. It could also dial up pressure on the world’s largest pharmaceutical companies to prepare for a technological arms race. Already, a new breed of upstarts are jumping into the fray.


Alphabet’s DeepMind cracked a problem that long vexed biologists, heating up a technological arms race in health care.

Jul 15, 2019

Britain makes Alan Turing, the father of AI, the face of its 50-pound note

Posted by in categories: government, robotics/AI

Decades after his chemical castration by the British government and subsequent suicide, Alan Turing, the wartime codebreaker, pioneering computer scientist, and founder of artificial intelligence, will appear on the nation’s 50 pound note.

Jul 15, 2019

Game-theory research better allocates military resources, fight cancer

Posted by in categories: biotech/medical, cybercrime/malcode, military, robotics/AI

U.S. Army game-theory research using artificial intelligence may help treat cancer and other diseases, improve cybersecurity, deploy Soldiers and assets more efficiently and even win a poker game.

New research, published in Science, and conducted by scientists at Carnegie Mellon University, developed an artificial intelligence program called Pluribus that defeated leading professionals in six-player no-limit Texas hold’em poker.

The Army and National Science Foundation funded the mathematics modeling portion of the research, while funding from Facebook was specific to the poker.

Jul 15, 2019

The US Army will test armored robotic vehicles in 2020

Posted by in categories: robotics/AI, transportation

The tests are designed to see how soldiers will operate robots in the field.

Jul 15, 2019

Researchers’ deep learning algorithm solves Rubik’s Cube faster than any human

Posted by in categories: information science, mathematics, robotics/AI

Since its invention by a Hungarian architect in 1974, the Rubik’s Cube has furrowed the brows of many who have tried to solve it, but the 3D logic puzzle is no match for an artificial intelligence system created by researchers at the University of California, Irvine.

DeepCubeA, a learning algorithm programmed by UCI scientists and mathematicians, can find the solution in a fraction of a second, without any specific domain knowledge or in-game coaching from humans. This is no simple task considering that the cube has completion paths numbering in the billions but only one goal state—each of six sides displaying a solid color—which apparently can’t be found through random moves.

For a study published today in Nature Machine Intelligence, the researchers demonstrated that DeepCubeA solved 100 percent of all test configurations, finding the to the goal state about 60 percent of the time. The algorithm also works on other combinatorial games such as the sliding tile , Lights Out and Sokoban.