Tags: machine learning

All Categories (1-20 of 248)

  1. Accelerating Radiation Damage Simulation Through Machine Learning

    Online Presentations | 21 May 2024 | Contributor(s):: Vinay Gupta, Shrienidhi Gopalakrishnan, Brian Hyun-jong Lee, Alejandro Strachan

    This study explores the challenge of material degradation from radiation exposure, a phenomenon that significantly impacts fields ranging from materials science to nuclear engineering and space exploration. As of today, the primary solution of conventional simulation techniques are...

  2. Unlocking the Power of Large Language Models for Research Innovation

    Online Presentations | 21 May 2024 | Contributor(s):: Juan Carlos Verduzco Gastelum

    In this hands-on workshop, Dr. Juan C. Verduzco will showcase the transformative potential of large language models (LLMs) and their applications to research tasks. First, this presentation explores the essential building blocks of LLMs, such as embeddings, attention mechanisms, and transformer...

  3. SCALE RH Machine-learning Based Optimization of Materials for Microelectronics

    Online Presentations | 16 May 2024 | Contributor(s):: Shrienidhi Gopalakrishnan

    The purpose of this research is to explore the topic of radiation damage and its effect on material degradation. The effects of radiation damage can be seen in many places, from nuclear systems to space. Current simulation techniques are both expensive and difficult to use. This project aims to...

  4. May 09 2024

    Simplifying Computational Simulations: Using Large Language Models for Automated Research in Materials Science

    Simplifying Computational Simulations: Using Large Language Models for Automated Research in Materials ScienceDate and timeThursday, May 9, 2024; 12:00 - 1:00 PM EDTPresenterEthan...

    https://nanohub.org/events/details/2420

  5. May 02 2024

    Unlocking the Power of Large Language Models for Research Innovation

    Unlocking the Power of Large Language Models for Research InnovationDate and timeThursday, May 2, 2024; 12:00 - 1:00 PM EDTPresenterJuan C. Verduzco, Ph.D., Network for Computational...

    https://nanohub.org/events/details/2419

  6. The Ultimate SuperComputer-on-a-Chip for Massive Big Data and Highly Iterative Algorithms

    Online Presentations | 10 Apr 2024 | Contributor(s):: Veljko M. Milutinovic

    ECE 606: Solid State Devices I - Guest LectureThis presentation analyses the essence of DataFlow SuperComputing, defines its advantages and sheds lighton the related programming model.DataFlow computers, compared to ControlFlow computers, offer speedups of 20 to 200 (even 2000 for some...

  7. Supplementary Data for "An unsupervised machine learning based approach to identify efficient spin-orbit torque materials"

    Downloads | 18 Feb 2024 | Contributor(s):: Shehrin Sayed, Hannah Kleidermacher, Giulianna Hashemi-Asasi, Cheng-Hsiang Hsu, Sayeef Salahuddin

    Introduction:There has been a growing interest in materials with large spin-orbit torques (SOT) for many novel applications, and in our article [1], which is currently under review, we have shown that a machine-learning-based approach using a word embedding model can predict...

  8. nanoHUB: AI, Data, and Simulations for Students, Researchers and Instructors

    Online Presentations | 11 Jan 2024 | Contributor(s):: Alejandro Strachan, The Micro Nano Technology - Education Center

    This talk will introduce nanoHUB resources for physics-based simulations, machine learning, and collaboration that can be used by students and instructors in research and education.

  9. Resources and Cyberinfrastructure for Laser Powder Bed Fusion – Tools to enable 3D Additive Metals Manufacturing

    Online Presentations | 11 Jan 2024 | Contributor(s):: Elif Ertekin, The Micro Nano Technology - Education Center

    We will describe laser powder bed fusion, how machine learning and modeling/simulation tools can help optimize the process, and opportunities to engage students in the work.

  10. Data-Driven Materials Innovation: where Machine Learning Meets Physics

    Online Presentations | 29 Nov 2023 | Contributor(s):: Anand Chandrasekaran

    Learn how Schrödinger’s tools can address common issues by using a combination of physics-based simulation data, enterprise informatics, and chemistry-aware ML.

  11. Hands-On Workshop in nanoHUB: Machine Learning Models for Ionic Conductivity with Schrödinger's AutoQSAR

    Online Presentations | 29 Nov 2023 | Contributor(s):: Michael Rauch

    In this workshop, we will demonstrate the hands-on use of Schrödinger's MS Maestro graphical user interface within nanoHUB to perform machine learning model creation and implementation.

  12. Nov 07 2023

    Hands-On Workshop in nanoHUB: Machine Learning Models for Ionic Conductivity with Schrödinger's AutoQSAR

    Hands-On Workshop in nanoHUB: Machine Learning Models for Ionic Conductivity with Schrödinger's AutoQSARSpeaker: Michael Rauch, Principal Scientist, SchrödingerDate: Nov. 7,...

    https://nanohub.org/events/details/2397

  13. Scientific Text-Based Machine Learning

    Downloads | 02 Nov 2023 | Contributor(s):: Shehrin Sayed

    Please note that this page is under development and information provided may change. Introduction: Machine learning is undoubtedly a useful tool and is gradually changing how we function in everyday life. The application of this powerful tool in materials and devices research may have...

  14. Oct 31 2023

    Machine Learning for Materials Science with Schrödinger

    Machine Learning for Materials Science with SchrödingerSpeaker: Anand Chandrasekaran, Principal Scientist, SchrödingerDate: Oct 31, 2023 1:00 PM EST Click here to...

    https://nanohub.org/events/details/2396

  15. Schrödinger Materials Science AutoQSAR for Machine Learning

    Tools | 11 Sep 2023

    Build quantitative structure-activity relationships (QSAR) automatically for molecular systems with Schrödinger's AutoQSAR tool

  16. Olusegun Odunayo Felix

    https://nanohub.org/members/410227

  17. ANN-based friction factor and Nusselt number models for developing flow across square pin fins

    Tools | 30 May 2023 | Contributor(s):: Saeel Shrivallabh Pai, Justin A. Weibel

    ANN-based correlations which provide friction factor and Nusselt number values for developing flows across square pin fins of different pitch.

  18. Eugenio Culurciello

    https://culurciello.github.iohttps://euge-blog.github.io

    https://nanohub.org/members/403223

  19. How to predict band gap of other compounds ?

    Q&A|Open | Responses: 1

    How will I predict the band gap of any compound other than Si, SiO2, NaCl, Sn and Diamond ? What is the code for doing so? Also if i want to predict the bandgap of the polymer can I do so? and...

    https://nanohub.org/answers/question/2663

  20. Abdu-Jabbar Bozdar

    I graduated majoring in electronics and currently working as a Computer Programmer. My keen interest in electronics engineering, semiconductor materials and devices brought me here.

    https://nanohub.org/members/387719