
-
Musk's SpaceX faces new Starship setback
-
Trump signs executive order establishing 'Strategic Bitcoin Reserve'
-
Australian casino firm scrambles for cash to survive
-
Musk's SpaceX faces setback with new Starship upper stage loss
-
US and European stocks gyrate on tariffs and growth
-
Deja vu on the Moon: Private US spaceship again lands awkwardly
-
Trump backs off Mexico, Canada tariffs after market blowback
-
California's Democratic governor says trans women in sports 'unfair'
-
Chunky canines: Study reveals dog obesity gene shared by humans
-
Drop in US border crossings goes deeper than Trump
-
Private US spaceship lands near Moon's south pole in uncertain condition
-
Peru farmer confident ahead of German court battle with energy giant
-
European rocket successfully carries out first commercial mission
-
SpaceX gears up for Starship launch as Musk controversy swirls
-
Trump backs off Mexico tariffs while Canada tensions simmer
-
Europe's new rocket blasts off on first commercial mission
-
SpaceX gearing up for Starship launch amid Musk controversy
-
US signals broader tariff reprieve for Canada, Mexico as trade gap grows
-
ECB chief warns of 'risks all over' as rates cut again
-
US firm hours away from Moon landing with drill, rovers, drone
-
US trade gap hits new record in January as tariff fears loomed
-
ECB lowers rates again but hints more cuts in doubt
-
World's sea ice cover hits record low in February
-
Philippines' Palawan approves 50-year ban on new mining permits
-
Prosecutors demand Rubiales forced kiss trial be re-run
-
South Africa says US withdrawing from climate finance deal
-
European rocket aims for first commercial launch after delays
-
Ukraine titanium mine hopes US deal will bring funds
-
China vows to fight US trade war 'to the end'
-
7-Eleven owner seeks to fend off takeover with buyback, US IPO
-
Rain checks spread of Japan wildfire
-
Global sea ice cover hits record low in February as world continues hot streak
-
Asian markets rally on US tariff reprieve, possible China stimulus
-
Chinese economy faces rising international 'uncertainty', official says
-
Strikes hit Lufthansa profits, Olympics dent Air France
-
Rohingya refugee food aid to be halved from next month: UN
-
Lufthansa 2024 profits dive amid strikes, rising costs
-
Asian markets rise on Trump auto tariff reprieve
-
Debate over rates pause mounts as ECB set to cut again
-
Tajik women speak out against government fashion advice
-
US firm targets Moon landing with drill, rovers, hopping drone
-
Global stocks rally on German defense push, US pause on auto tariffs
-
New faces at Tom Ford, Dries Van Noten make debuts in Paris
-
Trump tariffs reverberate through Mexico's industrial belt
-
Deluge of Trump tariffs seen hitting household budgets
-
Trump suspends tariffs for autos as Trudeau call yields no breakthrough
-
Supreme Court rejects Trump bid to freeze $2 bn in foreign aid
-
SpaceX aims for Thursday Starship test flight
-
Monkey business: Sri Lanka to count crop-raiding nuisance wildlife
-
Mind the wage gap: China's subway farmers highlight inequality

Demis Hassabis, from chess prodigy to Nobel-winning AI pioneer
Long before Demis Hassabis pioneered artificial intelligence techniques to earn a Nobel prize, he was a master of board games.
The London-born son of a Greek-Cypriot father and a Singaporean mother started playing chess when he was just four, rising to the rank of master at 13.
"That's what got me into AI in the first place, playing chess from a young age and thinking and trying to improve my own thought processes," the 48-year-old told journalists after sharing the Nobel prize in chemistry with two other scientists on Wednesday.
It was the second Nobel award in as many days involving artificial intelligence (AI), and Hassabis followed Tuesday's chemistry laureates in warning that the technology they had championed can also "be used for harm".
But rather than doom and gloom warnings of AI apocalypse, the CEO of Google's DeepMind lab described himself as a "cautious optimist".
"I've worked on this my whole life because I believe it's going to be the most beneficial technology to humanity -- but with something that powerful and that transformative, it comes with risks," he said.
- Dabbling in video games -
Hassabis finished high school in north London at the age of 16, and took a gap year to work on video games, co-designing 1994's "Theme Park".
In his 20s, Hassabis won the "pentamind" -- a London event that combines the results of bridge, chess, Go, Mastermind and Scrabble -- five times.
"I would actually encourage kids to play games, but not just to play them... the most important thing is to try and make them," Hassabis said.
He then studied neuroscience at University College London, hoping to learn more about the human brain with the aim of improving nascent AI.
In 2007, the journal Science listed his research among the top 10 breakthroughs of the year.
He co-founded the firm DeepMind in 2010, which then focused on using artificial neural networks -- which are loosely based on the human brain and underpin AI -- to beat humans at board and video games.
Google bought the company four years later.
In 2016, DeepMind became known around the world when its AI-driven computer programme AlphaZero beat the world's top player of the ancient Chinese board game Go.
A year later, AlphaZero beat the world champion chess programme Stockfish, showing it was not a one-game wonder. It also conquered some retro video games.
The point was not to have fun or win games, but to broaden out the capability of AI.
"It's those kinds of learning techniques that have ended up fuelling the modern AI renaissance," Hassabis said.
- Protein power -
Hassabis then turned the power he had been building towards proteins.
These are the building blocks of life, which take the information from DNA's blueprint and turn a cell into something specific, such as a brain cell or muscle cell -- or most anything else.
By the late 1960s, chemists knew that the sequence of 20 amino acids that make up proteins should allow them to predict the three-dimensional structure they would twist and fold into.
But for half a century, no one could accurately predict these 3D structures. There was even a biannual competition dubbed the "protein olympics" for chemists to try their hand.
In 2018, Hassabis and his AlphaFold entered the competition.
Two years later, it did so well that the 50-year-old problem was considered solved.
Around 30,000 scientific papers have now cited AlphaFold, according to DeepMind's John Jumper, who shared Wednesday's Nobel win along with US biochemist David Baker.
"AlphaFold has already been used by more than two million researchers to advance critical work, from enzyme design to drug discovery," Hassabis said.
D.Avraham--CPN