Chess isnโ€™t an easy game, by human standards. But for an artificial intelligence powered by a formidable, almost alien mindset, the trivial diversion can be mastered in a few spare hours.

In a new paper, Google researchers detail how their latest AI evolution, AlphaZero, developed โ€œsuperhuman performanceโ€ in chess, taking just four hours to learn the rules before obliterating the world champion chess program, Stockfish.

In other words, all of humanityโ€™s chess knowledge โ€“ and beyond โ€“ was absorbed and surpassed by an AI in about as long as it takes to drive from New York City to Washington, DC.

After being programmed with only the rules of chess (no strategies), in just four hours AlphaZero had mastered the game to the extent it was able to best the highest-rated chess-playing program Stockfish.

In a series of 100 games against Stockfish, AlphaZero won 25 games while playing as white (with first mover advantage), and picked up three games playing as black. The rest of the contests were draws, with Stockfish recording no wins and AlphaZero no losses.

โ€œWe now know who our new overlord is,โ€ said chess researcher David Kramaley, the CEO of chess science website Chessable.

โ€œIt will no doubt revolutionise the game, but think about how this could be applied outside chess. This algorithm could run cities, continents, universes.โ€

Developed by Googleโ€™s DeepMind AI lab, AlphaZero is a tweaked, more generic version of AlphaGo Zero, which specialises in playing the Chinese board game, Go.

DeepMind has been refining this AI for years, in the process besting a series of human champions who fell like dominoes before the indomitable, โ€œGodlikeโ€ neural network.

That victory streak culminated in a startling success in October, in which a new fully autonomous version of the AI โ€“ which only learns by playing itself, never facing humans โ€“ bested all its former incarnations.

By contrast, AlphaGo Zeroโ€™s predecessors partly learned how to play the game by watching moves made by human players.

That effort was intended to assist the fledgling AI in learning strategy, but it seems it may have actually been a handicap, since AlphaGo Zeroโ€™s fully self-reliant learning proved devastatingly more effective in one-on-one competition.

โ€œItโ€™s like an alien civilisation inventing its own mathematics,โ€ computer scientist Nick Hynes from MIT told Gizmodo in October.

โ€œWhat weโ€™re seeing here is a model free from human bias and presuppositions. It can learn whatever it determines is optimal, which may indeed be more nuanced that our own conceptions of the same.โ€

But things are moving so fast in this field that already the October accomplishment may have been outmoded.

In their new paper, the team outlines how the very latest AlphaZero AI takes the self-playing reliance โ€“ called reinforcement learning โ€“ and applies it with a much more generalised streak that gives it a broader focus to problem solving.

That broader focus means AlphaZero doesnโ€™t just play chess. It also plays Shogi (aka Japanese chess) and Go too โ€“ and, perhaps unsurprisingly, it only took two and eight hours respectively to master those games as well.

For now, Google and DeepMindโ€™s computer scientists arenโ€™t commenting publicly on the new research, which hasnโ€™t as yet been peer-reviewed.

But from what we can tell so far, this algorithmโ€™s dizzying ascent to the pinnacle of artificial intelligence is far from over, and even chess grandmasters are bewildered by the spectacle before them.

โ€œI always wondered how it would be if a superior species landed on Earth and showed us how they played chess,โ€ grandmaster Peter Heine Nielsen told the BBC.

โ€œNow I know.โ€

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