Breaking 08:20 Trump considers second aircraft carrier if Iran talks fail 07:50 Russian oil tankers list Singapore as destination as India cuts imports 18:50 Estonia says Russia does not plan NATO attack in near term 17:30 L’UE approuve le rachat de Wiz par Google pour 32 milliards de dollars 16:50 Half of global coral reefs bleached during prolonged marine heatwave, study finds 16:20 UK police review claims Prince Andrew shared confidential material with Epstein 15:50 Ariane 64 set for maiden launch from Europe’s spaceport 15:20 Tehran excludes protest detainees from mass clemency decree 14:30 EU’s Kallas outlines conditions Russia must meet for Ukraine peace deal 14:20 Iranian security chief meets Oman’s sultan as U.S. talks continue 13:50 United States and Canada reveal Olympic hockey line combinations in Milan 13:20 Winter Olympics spectators shed coats as Cortina reaches 4°C 13:00 China pledges support for Cuba as fuel shortages worsen 11:50 TSMC posts record January revenue as US weighs tariff exemptions 11:30 Robot dogs to assist Mexican police during 2026 World Cup 11:20 Macron warns of US pressure on EU and urges Europe to resist 11:00 Transparency International warns of worrying democratic decline 10:50 Honda quarterly operating profit plunges as tariffs and EV slowdown bite 09:50 Air Canada suspends flights to Cuba as fuel crisis deepens 09:20 Mexico halts oil shipments to Cuba to avoid threatened US tariffs 09:03 US backs renewed UN-led efforts on Sahara after Madrid talks 09:00 Meta and Google face trial over alleged addiction of young users

AI-powered microscope rivals human experts in analyzing 2D materials

Tuesday 28 October 2025 - 14:20
By: Dakir Madiha
AI-powered microscope rivals human experts in analyzing 2D materials

Researchers at Duke University have developed an artificial intelligence (AI)-powered microscopy system capable of analyzing two-dimensional (2D) materials with precision comparable to that of highly trained human experts. This breakthrough, named ATOMIC (Autonomous Technology for Optical Microscopy & Intelligent Characterization), represents a significant step forward in autonomous scientific research, achieving up to 99.4% accuracy in identifying material defects and layered structures.

Revolutionary integration of foundational AI models

The system’s development, published in ACS Nano on October 2, marks the first successful integration of publicly accessible foundational AI models, such as OpenAI’s ChatGPT and Meta’s Segment Anything Model (SAM), into autonomous laboratory instruments. Haozhe "Harry" Wang, the lead researcher from Duke’s Department of Electrical and Computer Engineering, explained that ATOMIC is designed to "understand" tasks rather than simply follow instructions.

"ATOMIC can autonomously evaluate a sample, make decisions, and produce results as effectively as a human expert," Wang noted. By connecting a standard optical microscope to these AI models, the system autonomously manages sample movement, image focusing, and lighting adjustments while simultaneously analyzing microscopic features.

Addressing critical research bottlenecks

This innovation tackles a longstanding bottleneck in materials science research: the characterization of 2D materials, which consist of crystals only a few atoms thick. These materials hold immense potential for next-generation semiconductors, sensors, and quantum devices, but their exceptional electrical properties can be undermined by manufacturing defects. Traditionally, mastering the analysis of such materials requires years of specialized training.

Jingyun "Jolene" Yang, a doctoral student and lead author of the study, highlighted that ATOMIC can detect grain boundaries at scales beyond human visibility. The system maintained exceptional accuracy even under suboptimal imaging conditions, such as overexposure, poor focus, or low lighting. In some cases, it identified imperfections that human observers could not detect.

Broader transformation in scientific research

ATOMIC exemplifies a growing trend in scientific research, where AI plays an increasingly central role in discovery processes. Recent studies in ACS Nano by teams from KAIST, Drexel University, and Northwestern University demonstrate how AI now facilitates everything from initial material discovery to optimization. Similarly, other advancements include the launch of autonomous lab platforms, such as AI-driven research factories by Lila Sciences, and systems capable of managing complete experimental workflows.

As OpenAI’s Sam Altman recently predicted, AI may achieve a groundbreaking scientific discovery within two years, underscoring its accelerating role in research. Wang’s team emphasized that while AI amplifies human expertise, researchers remain critical for interpreting results and determining their broader implications.


  • Fajr
  • Sunrise
  • Dhuhr
  • Asr
  • Maghrib
  • Isha

Read more

This website, walaw.press, uses cookies to provide you with a good browsing experience and to continuously improve our services. By continuing to browse this site, you agree to the use of these cookies.