Batch Reification Fusion Optimization (BAREFOOT) Framework

By Richard Couperthwaite

Matrials Sicence and Engineering, Texas A&M University, College Station, TX

Published on

Abstract

Run the Tool: BAREFOOT This tutorial will present the fundamentals of multi-fidelity fusion as well as Sequential and Batch Bayesian Optimization as possible optimization approaches that can be integrated with high accuracy computational models or experimental procedures to speed up the optimization or design of materials. The tutorial will also provide an overview of the BAREFOOT framework that combines these two approaches together to further improve the rate of the optimization. All these approaches are compared using the optimization of the workability of a dual-phase steel microstructure.

The nanoHUB tool "A Batch Reification/Fusion Optimization Framework for Bayesian-based Material Optimization" is used in this hands-on tutorial.

Sponsored by

Cite this work

Researchers should cite this work as follows:

  • Richard Couperthwaite (2021), "Batch Reification Fusion Optimization (BAREFOOT) Framework," https://nanohub.org/resources/35143.

    BibTex | EndNote

Time

Tags

Batch Reification Fusion Optimization (BAREFOOT) Framework
  • Batch Reification Fusion Optimization (BAREFOOT) Framework 1. Batch Reification Fusion Optim… 0
    00:00/00:00
  • Accelerated Material Design 2. Accelerated Material Design 107.67434100767434
    00:00/00:00
  • Bayesian Optimization 3. Bayesian Optimization 286.72005338672005
    00:00/00:00
  • Multi-fidelity Model Fusion 4. Multi-fidelity Model Fusion 423.95729062395731
    00:00/00:00
  • Notes on the NanoHub Tool 5. Notes on the NanoHub Tool 599.46613279946621
    00:00/00:00
  • Hands-on Demonstration 6. Hands-on Demonstration 684.95161828495168
    00:00/00:00
  • Q&A 7. Q&A 2627.3606940273608
    00:00/00:00
  • Concluding Remarks 8. Concluding Remarks 3321.7550884217553
    00:00/00:00