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pprachas/README.md

Peerasait Prachaseree (Jeffrey)

Hi everyone! I am Jeffrey, a current Postdoctoral Associate at the DeCoDE lab at Massachusetts Institute of Technology. I completed my PhD in the Lejeune Lab at Boston University. Originally, I am from Thailand. I completed my bachelor's degree in mechanical engineering from University of California, San Diego. Currently, I work at the intersection between applied mechanics and computational science to design and model globally emergent behavior from local geometric/material heterogeneities through a combination of physics-based models and data-driven approaches.

  • 🔭 Current Research Interests:
    • Computational/Applied mechanics
    • Scientific Computing
    • Nonlinear Solid Mechanics
    • Mechanical Metamaterials
    • Functionally Graded Composites
    • Mechanical Computing/Intelligence

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