search
HomeTechnology peripheralsAIScientists use GenAI to discover new insights in physics

Scientists use GenAI to discover new insights in physics

Jun 13, 2024 am 10:32 AM
AImachine learninggenerative artificial intelligence

With the help of

, researchers from MIT and the University of Basel in Switzerland have developed a new machine learning (ML) framework that can help discover new insights about materials science. The results of this study are published in Physical Review Letters. This research uses a neural network-based approach to quickly predict and optimize material properties and characteristics by analyzing large amounts of material data. This GenAI framework is highly automated and efficient and can help accelerate the progress of materials research. The researchers say their framework can be applied to a variety of

Scientists use GenAI to discover new insights in physics

#When water transforms from a liquid to a solid, it undergoes important transformation properties, Such as volume and density. Phase changes in water are so common that we don't even think about them seriously, but it's a complex physical system. Predicting the behavior of materials during phase transitions at the molecular level is very complex and challenging.

Researchers at MIT and the University of Basel have harnessed the power of GenAI to create a new framework that can automatically draw phase diagrams of new physical systems and detect interactions between them. Convert. This innovation will bring huge potential to fields such as materials science and chemistry. The framework is based on machine learning algorithms and is able to predict the properties of new materials by learning from known physical models and experimental data. Scientists have long been interested in the understanding of phase transitions at the molecular level. Confused by suddenness and unpredictability. The diversity of materials and their properties, coupled with scarce scientific data, adds to the challenge. That's all set to change with the development of this new framework, which marks a major leap forward in the discovery of new materials and the understanding of their thermodynamic properties. This framework leverages techniques from machine learning and big data analytics to transform our discovery of new materials and significant leaps in our understanding of their thermodynamic properties.

"If you have a new system with completely unknown properties, how do you choose which observable to study? We hope that, at least with data-driven tools, scanning can be done in an automated way Large new systems, and it will point you to important changes in the system. This could be a tool for automated scientific discovery of new, exotic phase properties," says Frank Schäfer, a postdoc in the Julia lab at CSAIL. Co-author of the methods paper.

Julian Arnold, a graduate student at the University of Basel, was responsible for the first project related to the research; also included Alan Edelman, head of the laboratory of Julia, Professor of Applied Mathematics at the Department of Mathematics; and Physics at the University of Basel Department professor and senior author Christoph Bruder.

This research breakthrough makes it possible for scientists to discover unknown phases of matter. The transition of water from liquid to solid is the most obvious example of a phase change. There are other more complex and complicated material transitions, such as when a material's conductivity changes from state to state.

Traditional scientific methods rely on theoretical explanations of physical states while requiring scientists to manually construct phase diagrams. These methods have serious limitations, including the inability to produce phase diagrams for highly complex systems, the risk of human bias, and being limited to theoretical assumptions about which parameters are important. However, as computer technology advances, new scientific methods are being developed. One of them is a machine learning-based approach that leverages computing power and big data analytics to infer the phase diagram of a physical system. This method no longer relies on artificial assumptions and is capable of handling complex systems because it can handle large amounts of experimental data and variables. The development of these new methods is important to the scientific community. A research team from MIT and the University of Basel used a physics-informed GenAI model to analyze "order parameters", This is a measurable quantity that indicates the ratio of total phase modulators to disordered phase modulators. For example, an order parameter can be used to define the ratio of water molecules in an ordered state to those in a disordered state.

The Julia programming language, known for its excellence in scientific and technical computing, plays an important role in building new ML models. The method published in the paper reportedly outperforms other ML techniques in terms of computational efficiency.

This research has the potential to transform the fields of materials science and quantum physics. Not only can the new framework be used to solve classification tasks in physical systems, but it can also play a key role in improving large language models (LLMs) by determining how to fine-tune certain parameters to get better output.

The above is the detailed content of Scientists use GenAI to discover new insights in physics. For more information, please follow other related articles on the PHP Chinese website!

Statement
The content of this article is voluntarily contributed by netizens, and the copyright belongs to the original author. This site does not assume corresponding legal responsibility. If you find any content suspected of plagiarism or infringement, please contact admin@php.cn
An AI Space Company Is BornAn AI Space Company Is BornMay 12, 2025 am 11:07 AM

This article showcases how AI is revolutionizing the space industry, using Tomorrow.io as a prime example. Unlike established space companies like SpaceX, which weren't built with AI at their core, Tomorrow.io is an AI-native company. Let's explore

10 Machine Learning Internships in India (2025)10 Machine Learning Internships in India (2025)May 12, 2025 am 10:47 AM

Land Your Dream Machine Learning Internship in India (2025)! For students and early-career professionals, a machine learning internship is the perfect launchpad for a rewarding career. Indian companies across diverse sectors – from cutting-edge GenA

Try Fellou AI and Say Goodbye to Google and ChatGPTTry Fellou AI and Say Goodbye to Google and ChatGPTMay 12, 2025 am 10:26 AM

The landscape of online browsing has undergone a significant transformation in the past year. This shift began with enhanced, personalized search results from platforms like Perplexity and Copilot, and accelerated with ChatGPT's integration of web s

Personal Hacking Will Be A Pretty Fierce BearPersonal Hacking Will Be A Pretty Fierce BearMay 11, 2025 am 11:09 AM

Cyberattacks are evolving. Gone are the days of generic phishing emails. The future of cybercrime is hyper-personalized, leveraging readily available online data and AI to craft highly targeted attacks. Imagine a scammer who knows your job, your f

Pope Leo XIV Reveals How AI Influenced His Name ChoicePope Leo XIV Reveals How AI Influenced His Name ChoiceMay 11, 2025 am 11:07 AM

In his inaugural address to the College of Cardinals, Chicago-born Robert Francis Prevost, the newly elected Pope Leo XIV, discussed the influence of his namesake, Pope Leo XIII, whose papacy (1878-1903) coincided with the dawn of the automobile and

FastAPI-MCP Tutorial for Beginners and Experts - Analytics VidhyaFastAPI-MCP Tutorial for Beginners and Experts - Analytics VidhyaMay 11, 2025 am 10:56 AM

This tutorial demonstrates how to integrate your Large Language Model (LLM) with external tools using the Model Context Protocol (MCP) and FastAPI. We'll build a simple web application using FastAPI and convert it into an MCP server, enabling your L

Dia-1.6B TTS : Best Text-to-Dialogue Generation Model - Analytics VidhyaDia-1.6B TTS : Best Text-to-Dialogue Generation Model - Analytics VidhyaMay 11, 2025 am 10:27 AM

Explore Dia-1.6B: A groundbreaking text-to-speech model developed by two undergraduates with zero funding! This 1.6 billion parameter model generates remarkably realistic speech, including nonverbal cues like laughter and sneezes. This article guide

3 Ways AI Can Make Mentorship More Meaningful Than Ever3 Ways AI Can Make Mentorship More Meaningful Than EverMay 10, 2025 am 11:17 AM

I wholeheartedly agree. My success is inextricably linked to the guidance of my mentors. Their insights, particularly regarding business management, formed the bedrock of my beliefs and practices. This experience underscores my commitment to mentor

See all articles

Hot AI Tools

Undresser.AI Undress

Undresser.AI Undress

AI-powered app for creating realistic nude photos

AI Clothes Remover

AI Clothes Remover

Online AI tool for removing clothes from photos.

Undress AI Tool

Undress AI Tool

Undress images for free

Clothoff.io

Clothoff.io

AI clothes remover

Video Face Swap

Video Face Swap

Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Article

Hot Tools

SublimeText3 English version

SublimeText3 English version

Recommended: Win version, supports code prompts!

EditPlus Chinese cracked version

EditPlus Chinese cracked version

Small size, syntax highlighting, does not support code prompt function

ZendStudio 13.5.1 Mac

ZendStudio 13.5.1 Mac

Powerful PHP integrated development environment

Safe Exam Browser

Safe Exam Browser

Safe Exam Browser is a secure browser environment for taking online exams securely. This software turns any computer into a secure workstation. It controls access to any utility and prevents students from using unauthorized resources.

VSCode Windows 64-bit Download

VSCode Windows 64-bit Download

A free and powerful IDE editor launched by Microsoft