• Home
  • Motorcycles
  • Electric Motorcycles
  • 3 wheelers
  • FUV Electric 3 wheeler
  • Shop
  • Listings

Subscribe to Updates

Get the latest creative news from CycleNews about two, three wheelers and Electric vehicles.

What's Hot

2026 Seattle Supercross Results, Video, Standings: Tomac Wins

11 Fast Facts From Cyprus

Understanding Motorcycle Depreciation: What Kills Resale Value?

Facebook Twitter Instagram
  • Home
  • Motorcycles
  • Electric Motorcycles
  • 3 wheelers
  • FUV Electric 3 wheeler
  • Shop
  • Listings
Facebook Twitter Instagram Pinterest
Cycle News
Submit Your Ad
Cycle News
You are at:Home » The Hidden Ingredients Behind AI’s Creativity
Electric Motorcycles

The Hidden Ingredients Behind AI’s Creativity

cycleBy cycleAugust 24, 202503 Mins Read
Share Facebook Twitter Pinterest LinkedIn Tumblr Email
Share
Facebook Twitter LinkedIn Pinterest Email


The original version of this story appeared in Quanta Magazine.

We were once promised self-driving cars and robot maids. Instead, we’ve seen the rise of artificial intelligence systems that can beat us in chess, analyze huge reams of text, and compose sonnets. This has been one of the great surprises of the modern era: physical tasks that are easy for humans turn out to be very difficult for robots, while algorithms are increasingly able to mimic our intellect.

Another surprise that has long perplexed researchers is those algorithms’ knack for their own, strange kind of creativity.

Diffusion models, the backbone of image-generating tools such as DALL·E, Imagen, and Stable Diffusion, are designed to generate carbon copies of the images on which they’ve been trained. In practice, however, they seem to improvise, blending elements within images to create something new—not just nonsensical blobs of color, but coherent images with semantic meaning. This is the “paradox” behind diffusion models, said Giulio Biroli, an AI researcher and physicist at the École Normale Supérieure in Paris: “If they worked perfectly, they should just memorize,” he said. “But they don’t—they’re actually able to produce new samples.”

To generate images, diffusion models use a process known as denoising. They convert an image into digital noise (an incoherent collection of pixels), then reassemble it. It’s like repeatedly putting a painting through a shredder until all you have left is a pile of fine dust, then patching the pieces back together. For years, researchers have wondered: If the models are just reassembling, then how does novelty come into the picture? It’s like reassembling your shredded painting into a completely new work of art.

Now two physicists have made a startling claim: It’s the technical imperfections in the denoising process itself that leads to the creativity of diffusion models. In a paper presented at the International Conference on Machine Learning 2025, the duo developed a mathematical model of trained diffusion models to show that their so-called creativity is in fact a deterministic process—a direct, inevitable consequence of their architecture.

By illuminating the black box of diffusion models, the new research could have big implications for future AI research—and perhaps even for our understanding of human creativity. “The real strength of the paper is that it makes very accurate predictions of something very nontrivial,” said Luca Ambrogioni, a computer scientist at Radboud University in the Netherlands.

Bottoms Up

Mason Kamb, a graduate student studying applied physics at Stanford University and the lead author of the new paper, has long been fascinated by morphogenesis: the processes by which living systems self-assemble.

One way to understand the development of embryos in humans and other animals is through what’s known as a Turing pattern, named after the 20th-century mathematician Alan Turing. Turing patterns explain how groups of cells can organize themselves into distinct organs and limbs. Crucially, this coordination all takes place at a local level. There’s no CEO overseeing the trillions of cells to make sure they all conform to a final body plan. Individual cells, in other words, don’t have some finished blueprint of a body on which to base their work. They’re just taking action and making corrections in response to signals from their neighbors. This bottom-up system usually runs smoothly, but every now and then it goes awry—producing hands with extra fingers, for example.



Source link

Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
Previous Article8BitDo 64 Bluetooth Controller Review: For Human Hands
Next Article Is It Ever Legal—or Ethical—to Remove DRM?
cycle
  • Website

Related Posts

Understanding Motorcycle Depreciation: What Kills Resale Value?

February 13, 2026

Bikers Fight to Lift Nürburgring Ban, New D from Kawasaki and Bimota

February 11, 2026

The one company that sells 70% of all electric motorcycles

February 11, 2026
Add A Comment

Leave A Reply Cancel Reply

You must be logged in to post a comment.

Demo
Top Posts

The urban electric commuter FUELL Fllow designed by Erik Buell is now opening orders | thepack.news | THE PACK

July 29, 2023

2024 Yamaha Ténéré 700 First Look [6 Fast Facts For ADV Riding]

July 29, 2023

MD Ride Review « MotorcycleDaily.com – Motorcycle News, Editorials, Product Reviews and Bike Reviews

July 29, 2023
Stay In Touch
  • Facebook
  • YouTube
  • TikTok
  • WhatsApp
  • Twitter
  • Instagram
Latest Reviews

Subscribe to Updates

Get the latest tech news from FooBar about tech, design and biz.

Demo
Most Popular

The urban electric commuter FUELL Fllow designed by Erik Buell is now opening orders | thepack.news | THE PACK

July 29, 2023

2024 Yamaha Ténéré 700 First Look [6 Fast Facts For ADV Riding]

July 29, 2023

MD Ride Review « MotorcycleDaily.com – Motorcycle News, Editorials, Product Reviews and Bike Reviews

July 29, 2023
Our Picks

2021 Central Florida International Auto Show – Orlando Sentinel

MOTORTREND REACTS: Tesla Model 3 vs Hyundai IONIQ 6 vs Polestar 2

A Powerful Tool US Spies Misused to Stalk Women Faces Its Potential Demise

Subscribe to Updates

Get the latest news from CycleNews about two, three wheelers and Electric vehicles.

© 2026 cyclenews.blog
  • Home
  • About us
  • Get In Touch
  • Shop
  • Listings
  • My Account
  • Submit Your Ad
  • Terms & Conditions
  • Stock Ticker

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