World Wide
SeminarsConferencesWorkshopsCoursesJobsMapsFeedLibrary
TopicPhysics of Life

pattern recognition

1 Seminar
Explore Physics of LifeBrowse all domains
Explore Physics of LifeBrowse all domains

Latest

SeminarPhysics of LifeRecording

Neural network-like collective dynamics in molecules

Arvind Murugan
University of Chicago
Nov 27, 2020

Neural networks can learn and recognize subtle correlations in high dimensional inputs. However, neural networks are simply many-body systems with strong non-linearities and disordered interactions. Hence, many-body physical systems with similar interactions should be able to show neural network-like behavior. Here we show neural network-like behavior in the nucleation dynamics of promiscuously interacting molecules with multiple stable crystalline phases. Using a combination of theory and experiments, we show how the physics of the system dictates relationships between the difficulty of the pattern recognition task solved, time taken and accuracy. This work shows that high dimensional pattern recognition and learning are not special to software algorithms but can be achieved by the collective dynamics of sufficiently disordered molecular systems.

pattern recognition coverage

1 items

Seminar1
Domain spotlight

Explore how pattern recognition research is advancing inside Physics of Life.

Visit domain
January 2026
Full calendar →

Platform

  • Search
  • Seminars
  • Conferences
  • Jobs

Resources

  • Submit Content
  • About Us

© 2025 World Wide

Open knowledge for all • Started with World Wide Neuro • A 501(c)(3) Non-Profit Organization

Analytics consent required

World Wide relies on analytics signals to operate securely and keep research services available. Accept to continue, or leave the site.

Review the Privacy Policy for details about analytics processing.