Close Menu
    Trending
    • Featured video: Coding for underwater robotics | MIT News
    • Coding the Pong Game from Scratch in Python
    • Stop Asking if a Model Is Interpretable
    • Generative AI, Discriminative Human | Towards Data Science
    • The Gap Between Junior and Senior Data Scientists Isn’t Code
    • What It Can and Can’t Do Today
    • AI is rewiring how the world’s best Go players think
    • Designing Data and AI Systems That Hold Up in Production
    ProfitlyAI
    • Home
    • Latest News
    • AI Technology
    • Latest AI Innovations
    • AI Tools & Technologies
    • Artificial Intelligence
    ProfitlyAI
    Home » AI is rewiring how the world’s best Go players think
    AI Technology

    AI is rewiring how the world’s best Go players think

    ProfitlyAIBy ProfitlyAIFebruary 27, 2026No Comments3 Mins Read
    Share Facebook Twitter Pinterest LinkedIn Tumblr Reddit Telegram Email
    Share
    Facebook Twitter LinkedIn Pinterest Email


    Ten years in the past AlphaGo, Google DeepMind’s AI program, shocked the world by defeating the South Korean Go participant Lee Sedol. And within the years since, AI has upended the sport. It’s overturned centuries-old ideas about the most effective strikes and launched fully new ones. Gamers now prepare to copy AI’s strikes as carefully as they will relatively than inventing their very own, even when the machine’s considering stays mysterious to them. As we speak, it’s basically not possible to compete professionally with out utilizing AI. Some say the expertise has drained the sport of its creativity, whereas others assume there’s nonetheless room for human invention. In the meantime, AI is democratizing entry to coaching, and extra feminine gamers are climbing the ranks in consequence. 

    For Shin Jin-seo, the top-ranked Go participant on the planet, AI is a useful coaching associate. Each morning, he sits at his laptop and opens a program referred to as KataGo. Nicknamed “Shintelligence” for a way carefully his strikes mimic AI’s, he traces the glowing “blue spot” that represents this system’s suggestion for the most effective subsequent transfer, rearranging the stones on the digital grid to attempt to perceive the machine’s considering. “I continually take into consideration why AI selected a transfer,” he says.

    When coaching for a match, Shin spends most of his waking hours poring over KataGo. “It’s virtually like an ascetic follow,” he says. In accordance with a examine in 2022 by the Korean Baduk League, Shin’s strikes match AI’s 37.5% of the time, properly above the 28.5% common the examine discovered amongst all gamers.

    “My recreation has modified so much,” says Shin, “as a result of I’ve to comply with the instructions prompt by AI to some extent.” The Korea Baduk Affiliation says it has reached out to Google DeepMind within the hopes of arranging a match between Shin and AlphaGo, to commemorate the tenth anniversary of its victory over Lee. A spokesperson for Google DeepMind stated the corporate couldn’t present info at the moment. But when a brand new match does occur, Shin, who has educated on extra superior AI packages, is optimistic that he’d win. “AlphaGo nonetheless had some flaws then, so I feel I may beat it if I goal these weaknesses,” he says.

    AI rewrites the Go playbook

    Go is an summary technique board recreation invented in China greater than 2,500 years in the past. Two gamers take turns putting black and white stones on a 19×19 grid, aiming to overcome territory by surrounding their opponent’s stones. It’s a recreation of placing mathematical complexity. The variety of attainable board configurations—roughly 10170—dwarfs the variety of atoms within the universe. If chess is a battle, Go is a warfare. You suffocate your enemy in a single nook whereas keeping off an invasion in one other.

    To coach AI to play Go, an enormous trove of human Go strikes are fed right into a neural community, a computing system that mimics the online of neurons within the human mind. AlphaGo, which was later christened AlphaGo Lee after its victory over Lee Sedol, was educated on 30 million Go strikes and refined by enjoying hundreds of thousands of video games towards itself. In 2017, its successor, AlphaGo Zero, picked up Go from scratch. With out finding out any human video games, it discovered by enjoying towards itself, with strikes primarily based solely on the foundations of the sport. The blank-slate strategy proved extra highly effective, unconstrained by the bounds of human data. After three days of coaching, it beat AlphaGo Lee 100 video games to zero. 



    Source link

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    Previous ArticleDesigning Data and AI Systems That Hold Up in Production
    Next Article What It Can and Can’t Do Today
    ProfitlyAI
    • Website

    Related Posts

    AI Technology

    What It Can and Can’t Do Today

    February 27, 2026
    AI Technology

    Finding value with AI and Industry 5.0 transformation

    February 26, 2026
    AI Technology

    The human work behind humanoid robots is being hidden

    February 23, 2026
    Add A Comment
    Leave A Reply Cancel Reply

    Top Posts

    TDS Newsletter: How to Make Smarter Business Decisions with AI

    September 19, 2025

    New algorithms enable efficient machine learning with symmetric data | MIT News

    July 30, 2025

    Yupp AI betalar användare upp till $50/mån för att betygsätta AI-svar

    June 26, 2025

    Physics-Informed Neural Networks for Inverse PDE Problems

    July 29, 2025

    Microsoft lanserar ”Hey Copilot” röstassistent

    October 19, 2025
    Categories
    • AI Technology
    • AI Tools & Technologies
    • Artificial Intelligence
    • Latest AI Innovations
    • Latest News
    Most Popular

    Generating Consistent Imagery with Gemini

    September 23, 2025

    22 Free and Open Medical Datasets for AI Development in 2025

    February 12, 2026

    How Not to Write an MCP Server

    May 9, 2025
    Our Picks

    Featured video: Coding for underwater robotics | MIT News

    February 27, 2026

    Coding the Pong Game from Scratch in Python

    February 27, 2026

    Stop Asking if a Model Is Interpretable

    February 27, 2026
    Categories
    • AI Technology
    • AI Tools & Technologies
    • Artificial Intelligence
    • Latest AI Innovations
    • Latest News
    • Privacy Policy
    • Disclaimer
    • Terms and Conditions
    • About us
    • Contact us
    Copyright © 2025 ProfitlyAI All Rights Reserved.

    Type above and press Enter to search. Press Esc to cancel.