Toggle light / dark theme

Do you want your gadgets to be faster? What if your phone can cut the time it takes to.
complete tasks? Or your computer can compute way faster? Most of us do, but with the.
state of current technology, the truth is, they aren’t likely to get much faster than they.
are! For the past decade and a half, the clock rate of single processor cores has stalled.
at a few Gigahertz, and it is getting harder to push the boundaries of the famous.
Moore’s law! However, a new invention by IBM may change all of that! What are optical.
circuits, how do they work, and how will they make your devices faster? Join us as we.
dive into the new optical circuit that surpasses every CPU known to humans!

Disclaimer.
• Our channel is not associated with Elon Musk in ANY way and is purely made for entertainment purposes, based on facts, rumors and fiction. Enjoy Watching.

Would start with scanning and reverse engineering brains of rats, crows, pigs, chimps, and end on the human brain. Aim for completion by 12/31/2025. Set up teams to run brain scans 24÷7÷365 if we need to, and partner w/ every major neuroscience lab in the world.


If artificial intelligence is intended to resemble a brain, with networks of artificial neurons substituting for real cells, then what would happen if you compared the activities in deep learning algorithms to those in a human brain? Last week, researchers from Meta AI announced that they would be partnering with neuroimaging center Neurospin (CEA) and INRIA to try to do just that.

Through this collaboration, they’re planning to analyze human brain activity and deep learning algorithms trained on language or speech tasks in response to the same written or spoken texts. In theory, it could decode both how human brains —and artificial brains—find meaning in language.

By comparing scans of human brains while a person is actively reading, speaking, or listening with deep learning algorithms given the same set of words and sentences to decipher, researchers hope to find similarities as well as key structural and behavioral differences between brain biology and artificial networks. The research could help explain why humans process language much more efficiently than machines.

AI researchers are creating novel “benchmarks” to help models avoid real-world stumbles.


Trained on billions of words from books, news articles, and Wikipedia, artificial intelligence (AI) language models can produce uncannily human prose. They can generate tweets, summarize emails, and translate dozens of languages. They can even write tolerable poetry. And like overachieving students, they quickly master the tests, called benchmarks, that computer scientists devise for them.

That was Sam Bowman’s sobering experience when he and his colleagues created a tough new benchmark for language models called GLUE (General Language Understanding Evaluation). GLUE gives AI models the chance to train on data sets containing thousands of sentences and confronts them with nine tasks, such as deciding whether a test sentence is grammatical, assessing its sentiment, or judging whether one sentence logically entails another. After completing the tasks, each model is given an average score.

At first, Bowman, a computer scientist at New York University, thought he had stumped the models. The best ones scored less than 70 out of 100 points (a D+). But in less than 1 year, new and better models were scoring close to 90, outperforming humans. “We were really surprised with the surge,” Bowman says. So in 2019 the researchers made the benchmark even harder, calling it SuperGLUE. Some of the tasks required the AI models to answer reading comprehension questions after digesting not just sentences, but paragraphs drawn from Wikipedia or news sites. Again, humans had an initial 20-point lead. “It wasn’t that shocking what happened next,” Bowman says. By early 2021, computers were again beating people.

Performed by Moxie — the Mars Oxygen In-Situ Resource Utilization Experiment — the strategy definitely incited hope for extraterrestrial survival. Future human missions could take versions of Moxie to Mars instead of carrying oxygen from Earth to sustain them.

But, Moxie is powered by a nuclear battery onboard.

“In the near future, we will see the crewed spaceflight industry developing rapidly,” said Yingfang Yao, a material scientist at Nanjing University.

SpaceX’s Crew Dragon will streak through Earth’s atmosphere

“Teams from @NASA & @SpaceX now are targeting #Crew3 undocking at 1:05 am Thurs, May 5 from @Space_Station. Splashdown off of Florida’s coast is planned about 12:37 am Fri, May 6. The new undocking time allows for shorter phasing & more time to review the latest forecast info,” said Lueders, in the Wednesday tweet.

SpaceX’s Crew-3 was lofted to space atop a Falcon 9 rocket on November 11, 2021, and then docked with the International Space Station (ISS) the same day. Aboard the vehicle are three NASA astronauts — Kayla Barron, Thomas Marshburn, and Raja Chari — and a single astronaut from the European Space Agency (ESA) — Matthias Maurer.

The U.S. Department of Treasury today sanctioned cryptocurrency mixer Blender.io used last month by the North Korean-backed Lazarus hacking group to launder funds stolen from Axie Infinity’s Ronin bridge.

In the wake of the attack, Sky Mavis (the bridge’s creator) revealed that hackers breached the Ronin bridge on March 23 to steal 173,600 Ethereum and 25.5M USDC tokens in two transactions worth $617 million at the time, the largest cryptocurrency hack in history.

The previous most significant theft of cryptocurrency was the $611 million Poly Network hack in August 2021.

In recent years, developers have created a wide range of sophisticated robots that can operate in specific environments in increasingly efficient ways. The body structure of many among these systems is inspired by nature, animals, and humans.

Although many existing robots have bodies that resemble those of humans or other animal species, programming them so that they also move like the animal they are inspired by is not always an easy task. Doing this typically entails the development of advanced locomotion controllers, which can require considerable resources and development efforts.

Researchers at DeepMind have recently created a new technique that can be used to efficiently train robots to replicate the movements of humans or animals. This new tool, introduced in a paper pre-published on arXiv, is inspired from previous work that leveraged data representing real-world human and animal movements, collected using technology.