OPINION

Poker-Winning Machine Is No Threat to Humans

Advertisement
By Leonid Bershidsky, Bloomberg | Updated: 2 February 2017 11:38 IST

I didn't worry too much when computers beat humans at checkers, chess, or Go. It was, after all, only a matter of time before someone built a powerful computer with a vast database of known game situations. But now that machines are beating professionals at poker - a game of imperfect information - a question must be asked: Is artificial intelligence starting to threaten people in creative jobs?

In terms of game complexity - the number of allowed positions reachable in the course of a game - no-limit Texas Hold 'em poker, isn't an AI researcher's worst nightmare. The chess game tree has 10 to the 120th degree nodes. The one for Go has 10 to the 170th degree. Two-player, no-limit Texas Hold 'em is in between with 10 to the power of 160 possible decision points. There are methods of making the game-tree complexity manageable in a real-time game, often based on disregarding what led to a particular position and reducing calculation depth for future positions, and they've been successfully implemented.

Rise of the Machines: Keep an Eye on AI, Say Experts

Advertisement

But in poker, the imperfect information creates a whole extra layer of complexity. As Matej Moravcik and his team of Canadian and Czech researchers wrote in a January 2017 paper describing DeepStack, a piece of software they developed that bests professional poker players:

Advertisement

"The correct decision at a particular moment depends upon the probability distribution over private information that the opponent holds, which is revealed through their past actions. However, how the opponent's actions reveal that information depends upon their knowledge of our private information and how our actions reveal it. This kind of recursive reasoning is why one cannot easily reason about game situations in isolation, which is at the heart of local search methods for perfect information games."

In other words, it's hard to reduce poker to a workable abstraction without compromising on the level of play. Two competing groups, however, appear to have overcome that problem lately: Moravcik's and another one, from Carnegie Mellon University, which hasn't published a description of its winning program yet. Members of that group, however, have provided pointers to what they did in their previous work.

Advertisement

The language in which DeepStack creators describe their software is disturbing to anyone worried about being edged out by machines. Moravcik and his team wrote that DeepStack had "intuition" - an ability to replace computation with a "fast approximate estimate." The machine developed it through "training" on lots of random poker situations. It worked well enough consistently to beat 33 pro players from 17 countries.

Libratus, the Carnegie Mellon team's product, is apparently based on different principles, using more precise calculations in the final part of the poker hand than in the early stage. It has beaten four top poker players, who came away in awe: The software managed to remain unpredictable and keep winning. Among other techniques, it varied the size of its bets to maximize profit in a way even the best human player finds it too taxing to imitate.

Advertisement

The good news for humans, however, is that even with all the complexity-reducing shortcuts the researchers have developed, beating a good poker player requires a huge amount of computing power. Deep Blue, the IBM machine that beat Gary Kasparov at chess, was a 32-node high performance computer. Libratus used 600 nodes of a supercomputer, the equivalent of 3,330 high-end MacBooks. It would take far more, and probably more ingenious shortcuts, to create an artificial intelligence that can win real-life, multi-player poker games at a high level.

It never pays in AI research to say that something is impossible. The field is fast developing and claiming successes that seemed unattainable a decade, even five years ago. But one can see how introducing even a little uncertainty and information asymmetry immediately makes AI developers' work far harder and resource-intensive. Poker, though it's extremely difficult to play well, is, after all, a game with well-defined rules. How much artificial brainpower, and what unfathomable shortcuts, will be required to excel in a game with few or no rules - like a business negotiation, or, at the extreme, a process like the Syria peace talks? Humans are used to situations in which rules develop in real time. No existing machine - and, judging by the state of the art, none that will be developed in a near future - can come close to our confidence in dealing with uncertainty and imperfect information.

Machines play an important role in eliminating routine jobs. What we're seeing with recent AI developments is the expansion of how we define "routine" to most processes with clear rules. Even the more complex of such processes - like multi-player poker - may turn out to be economically inefficient to automate. But processes without defined rules appear to be beyond the realm of the practical. To be safe from machines, we humans need to seek out such situations and learn to excel in them.

© 2017 Bloomberg L.P.

 

For the latest tech news and reviews, follow Gadgets 360 on X, Facebook, WhatsApp, Threads and Google News. For the latest videos on gadgets and tech, subscribe to our YouTube channel. If you want to know everything about top influencers, follow our in-house Who'sThat360 on Instagram and YouTube.

Further reading: DeepStack, Poker, Online Poker, Libratus
Advertisement
Popular Mobile Brands
  1. Biggest Offers on Smartphones During Amazon Great Indian Festival Sale
  2. Vivo, iQOO Smartphones Likely to Switch to Origin OS in India
  3. OTT Releases This Week: Mahavatar Narsimha, The Bads of Bollywood, and More
  4. iQOO 15 is All Set to Launch in China Next Month
  5. These Are the Best Smart TV Deals You Can Find at the Amazon Sale 2025
  6. Amazon Sale 2025: Top Deals on Logitech, Dell, HP, and More PC Accessories
  1. Amazon Sale 2025: Mac Mini (2024) Price Drops to an All-Time Low in India
  2. Xiaomi 17 Series Tipped to Launch on September 30
  3. Vivo, iQOO Smartphones Likely to Switch to Origin OS in India, Replacing Funtouch OS
  4. iPhone 18 Pro Models Tipped to Retain iPhone 17 Pro Design, Could Feature Transparent Back
  5. Tencent Says Sony 'Monopolising' Genre Conventions, Seeks Dismissal of Light of Motiram Lawsuit
  6. Samsung Galaxy A17 4G Launched With MediaTek Helio G99 SoC, 5,000mAh Battery: Price, Specifications
  7. Instamart Quick India Movement Sale 2025 Goes Live: Best Offers on Smartphones, Smartwatches and More
  8. Bitcoin Stabilises Near $116,900 as Altcoins Push Higher
  9. Mahavatar Narsimha Now Streaming on Netflix: Everything You Need to Know About This Animated Mythological Drama
  10. Nintendo Switch Online Adds First Third-Party Game Boy Advance Titles from Namco This September
Gadgets 360 is available in
Download Our Apps
Available in Hindi
© Copyright Red Pixels Ventures Limited 2025. All rights reserved.