Toggle light / dark theme

This Machine Learning Research Opens up a Mathematical Perspective on the Transformers

The release of Transformers has marked a significant advancement in the field of Artificial Intelligence (AI) and neural network topologies. Understanding the workings of these complex neural network architectures requires an understanding of transformers. What distinguishes transformers from conventional architectures is the concept of self-attention, which describes a transformer model’s capacity to focus on distinct segments of the input sequence during prediction. Self-attention greatly enhances the performance of transformers in real-world applications, including computer vision and Natural Language Processing (NLP).

In a recent study, researchers have provided a mathematical model that can be used to perceive Transformers as particle systems in interaction. The mathematical framework offers a methodical way to analyze Transformers’ internal operations. In an interacting particle system, the behavior of the individual particles influences that of the other parts, resulting in a complex network of interconnected systems.

The study explores the finding that Transformers can be thought of as flow maps on the space of probability measures. In this sense, transformers generate a mean-field interacting particle system in which every particle, called a token, follows the vector field flow defined by the empirical measure of all particles. The continuity equation governs the evolution of the empirical measure, and the long-term behavior of this system, which is typified by particle clustering, becomes an object of study.

Google Reportedly Replacing Some Human Staff With AI

While it’s unclear how many humans will end up being affected, it’s a clear sign of the times. Earlier this year, Google ushered in a “new era of AI-powered ads.” As part of the initiative, Google is trying to leverage AI tech to “deliver new ad experiences,” including “automatically created assets” that scrape content from existing ads and landing pages.

Some of these ads created by the company’s Performance Max feature can even change in real-time based on click-through rates to maximize visibility, a task that’s labor-intensive for human workers.

According to the Information, a “growing number of advertisers have adopted PMax since,” which has eliminated the “need for some employees who specialized in selling ads for a particular Google service.”

No, AI cannot be named as an inventor, UK Supreme Court says

The UK’s supreme court has ruled that AI cannot be named as an inventor and secure patent rights. It follows earlier decisions from lower courts that reached the same conclusions.

On Wednesday, US computer scientist Stephen Thaler lost his attempt to register patents for inventions he says were created by his AI system, DABUS.

Thaler said DABUS autonomously created a light beacon and a container for food and drink, and entitled to rights over the inventions.

Former NASA Astronaut Explains How to Poop in Space

If you ever find yourself aboard a spaceship exploring the profound mysteries of the universe and you have the sudden urge to poop — former NASA astronaut Mike Massimino has some insights for you.

“It requires a lot of training,” Massimino told “The Daily Show” guest host Kal Penn during a recent segment. “You get rendezvous training and robotics training in space, and there would be potty training.”

Because toilets on board NASA spacecraft are unlike Earth-bound commodes, he explained, you will need practice. These space thrones don’t use water but instead use negative air presure to suck away waste like a vacuum.