Close Menu

    Subscribe to Updates

    Get the latest creative news from FooBar about art, design and business.

    What's Hot

    Softbank CEO reveals where he sees the next trillion-dollar opportunity

    June 1, 2026

    MGM Resorts: Barry Diller’s People to bid $18B for casino giant

    June 1, 2026

    Saudi Arabia stocks lower at close of trade; Tadawul All Share down 0.62%

    June 1, 2026
    Facebook X (Twitter) Instagram
    Addison Markets
    • Home
    • USA
    • Europe
    • Business
    • Investing
    • Tech
    • Politics
    • Contact Us
    Addison Markets
    Home»Tech»An OpenAI model solved a famous math problem that stumped humans for 80 years
    Tech

    An OpenAI model solved a famous math problem that stumped humans for 80 years

    franperez66q@protonmail.comBy franperez66q@protonmail.comJune 1, 2026No Comments2 Mins Read
    Facebook Twitter Pinterest Telegram LinkedIn Tumblr WhatsApp Email
    Share
    Facebook Twitter LinkedIn Pinterest Telegram Email



    OpenAI’s diagram is based on choosing c² = 65, which can be satisfied by either 1² + 8² = 65 or 4² + 7² = 65. This means that if the grid spacing is 1/√65, each point will be one unit away from 16 other points: (1,8), (4,7), (7,4), (8,1), (-1,8), (-4,7), and so forth. Larger values for c²—if they’re chosen carefully—enable more whole-number diagonals and hence more unit-distance pairs.

    However, if c² is too large compared to the number of points in the grid, then many of the potential one-unit-away neighbors will be outside the grid.

    In short, we want to choose a c² that’s large enough but not too large. Using insights from number theory, including Jacobi’s two-square theorem, Erdős was able to show that an optimally sized circle will enable the number of unit-distance pairs to grow faster than the number of points, but only barely.

    The question became “can you do better?” To find an upper bound, Erdős used an argument from a quite different area of mathematics called graph theory to show that you could only have so many unit distances. But his upper bound grows much, much faster than the best lower bound he was able to construct.

    Erdős’s conjecture was that the actual optimum was much closer to the lower bound than the upper one. He predicted, but couldn’t prove, that the maximum number of unit-distance pairs grows just barely faster than the number of points.

    To be more precise, Erdős conjectured that the number of unit distances would be n^(1+o(1)). In other words, for a sufficiently large n, the maximum number of unit distances would be less than n^(1+𝜖) for any 𝜖 > 0. That could end up growing a little faster than his lower-bound construction—which was n^(1 + C/(log log n)) for some constant C—but within the same general ballpark.



    Source link

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    franperez66q@protonmail.com
    • Website

    Related Posts

    Nvidia, Meta, Walmart among top companies adopting AI

    June 1, 2026

    AI revolution is ’50x bigger’ than the dotcom boom: SoftBank’s Masayoshi Son to CNBC

    June 1, 2026

    Nvidia-backed AI company tells CNBC its launching major UK expansion

    June 1, 2026

    Nvidia dives into humanoid robots with China’s Unitree ahead of IPO

    June 1, 2026

    They call it stupid hot for a reason: Heat muddles animal brains

    May 31, 2026

    Reassessing 1986’s SpaceCamp – Ars Technica

    May 31, 2026
    Leave A Reply Cancel Reply

    Top Reviews
    Editors Picks

    Softbank CEO reveals where he sees the next trillion-dollar opportunity

    June 1, 2026

    MGM Resorts: Barry Diller’s People to bid $18B for casino giant

    June 1, 2026

    Saudi Arabia stocks lower at close of trade; Tadawul All Share down 0.62%

    June 1, 2026

    Nvidia, Meta, Walmart among top companies adopting AI

    June 1, 2026
    © 2026 All right reserved
    • Privacy Policy
    • Terms & Conditions

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