Duke ai uncovers simple rules in complex systems

Researchers at Duke University have developed an artificial intelligence framework that reveals straightforward rules underlying highly complex systems in nature and technology. Published on December 17 in npj Complexity, the tool analyzes time-series data to produce compact equations that capture essential behaviors. This approach could bridge gaps in scientific understanding where traditional methods fall short.

The new AI, created by a team led by Boyuan Chen, director of the General Robotics Lab at Duke University, draws inspiration from historical figures like Isaac Newton, who formulated equations for changing systems. It processes data on how complex dynamics evolve, distilling thousands of variables into simpler, linear-like models that remain accurate to real-world observations.

Building on mathematician Bernard Koopman's 1930s theory, which posits that nonlinear systems can be represented linearly, the framework addresses a key challenge: the sheer volume of equations needed for such representations. By integrating deep learning with physics-based constraints, it identifies pivotal patterns in experimental data, resulting in models up to 10 times smaller than those from prior machine-learning techniques.

Tests across diverse applications—such as pendulum swings, electrical circuits, climate models, and neural signals—demonstrated the AI's ability to uncover a handful of governing variables for reliable long-term predictions. "What stands out is not just the accuracy, but the interpretability," Chen noted. "When a linear model is compact, the scientific discovery process can be naturally connected to existing theories and methods that human scientists have developed over millennia."

Beyond predictions, the system detects stable states, or attractors, helping scientists gauge system health and impending changes. Lead author Sam Moore, a PhD candidate in Chen's lab, explained: "For a dynamicist, finding these structures is like finding the landmarks of a new landscape." He added, "This is not about replacing physics. It's about extending our ability to reason using data when the physics is unknown, hidden, or too cumbersome to write down."

Chen emphasized the broader impact: "Scientific discovery has always depended on finding simplified representations of complicated processes. We increasingly have the raw data needed to understand complex systems, but not the tools to turn that information into the kinds of simplified rules scientists rely on. Bridging that gap is essential."

Funded by the National Science Foundation, Army Research Office, and DARPA, the work advances toward "machine scientists" for automated discovery. Future plans include optimizing data collection for experiments and extending to multimedia like video and audio from biological systems.

관련 기사

Realistic depiction of a rhesus macaque in a Princeton lab with brain overlay showing prefrontal cortex assembling reusable cognitive 'Lego' modules for flexible learning.
AI에 의해 생성된 이미지

Princeton study reveals brain’s reusable ‘cognitive Legos’ for flexible learning

AI에 의해 보고됨 AI에 의해 생성된 이미지 사실 확인됨

Neuroscientists at Princeton University report that the brain achieves flexible learning by reusing modular cognitive components across tasks. In experiments with rhesus macaques, researchers found that the prefrontal cortex assembles these reusable “cognitive Legos” to adapt behaviors quickly. The findings, published November 26 in Nature, underscore differences from current AI systems and could eventually inform treatments for disorders that impair flexible thinking.

Researchers from Purdue University and the Georgia Institute of Technology have proposed a new computer architecture for AI models inspired by the human brain. This approach aims to address the energy-intensive 'memory wall' problem in current systems. The study, published in Frontiers in Science, highlights potential for more efficient AI in everyday devices.

AI에 의해 보고됨

A new AI math startup called Axiom has reportedly cracked four long-standing mathematical problems, demonstrating advances in artificial intelligence reasoning. The company's AI addressed challenges in areas like algebraic geometry and number theory that had puzzled mathematicians for years. This development highlights the growing capabilities of AI in tackling complex academic puzzles.

미국-이스라엘의 최근 이란 공격에서 인공지능(AI)이 작전 지원 역할을 수행하며 현대 전쟁의 중심으로 부상했다. Anthropic의 Claude와 Palantir의 Gotham이 정보 분석과 목표 식별에 활용됐다. 전문가들은 AI의 군사 적용이 확대될 것으로 전망한다.

AI에 의해 보고됨

A Cornell University study reveals that AI tools like ChatGPT have increased researchers' paper output by up to 50%, particularly benefiting non-native English speakers. However, this surge in polished manuscripts is complicating peer review and funding decisions, as many lack substantial scientific value. The findings highlight a shift in global research dynamics and call for updated policies on AI use in academia.

고려대학교 연구팀이 멀티태스킹 AI 시스템의 에너지 효율성을 높이기 위해 이중 출력 인공 시냅스를 개발했다고 대학이 밝혔다. 이 장치는 전기 및 광학 신호를 동시에 발산해 병렬 처리 능력을 강화한다. 연구 결과, 기존 GPU 기반 하드웨어 대비 계산 속도가 최대 47% 향상되고 에너지 소비가 32배 줄었다.

AI에 의해 보고됨

Experts argue that physical AI, involving robots and autonomous machines interacting with the real world, may provide a direct path to artificial general intelligence. Elon Musk's comments on Tesla's Optimus robots highlight this potential, amid growing investments in related technologies. The year 2026 is seen as a key inflection point for the field.

 

 

 

이 웹사이트는 쿠키를 사용합니다

사이트를 개선하기 위해 분석을 위한 쿠키를 사용합니다. 자세한 내용은 개인정보 보호 정책을 읽으세요.
거부