SPEAKERS
Irene Beyerlein
        Matt Challcombe
        Scott Dilliard
        Volker Eyert
        Jim Gubernatis
        Jason Johnson
        Mo Li
        Rod McCabe
        James McGuffin-Cawley
        Hariharan Naryanan
        Katherine Page
        Lakshman Prasad
        Krishna Rajan
        Cynthia Reichhardt
        Clint Scovel
        Steve Sintay
        Ingo Steinwert
        Joanne Wendelberger
        Brian Williams
      Lenka Zdeborova
November 9-10, 2009 | Los Alamos, New Mexico, USA
A powerful new framework for accelerating materials discovery and design can be developed by combining computational information science techniques, such as statistical learning, with classical computational and experimental materials science techniques.
The purpose of this workshop is to explore how to interface information science and materials science to advance knowledge discovery for materials.  The meeting will examine how to advance materials theory and design by integrating machine learning, statistical physics and data intensive experimentation. It will bring together scientists and engineers specializing in both areas, and focus on identifying areas of opportunity in both fields. Some of the topic areas to be covered include:
- Mathematics and computational foundations in statistical learning
- Statistics for materials experimentation
- Computational physics and optimization
- Informatics, modeling and materials design
The participants in the workshop will help create a roadmap for developing a robust and accessible knowledge discovery process for materials research using methods from informatics and data driven modeling. This will include identifying areas of research required in the computer science / applied mathematics community that can help to address pressing needs in materials science. The meeting will also highlight key materials discovery and design challenges that need or can be significantly advanced by this knowledge discovery process.

 
   
 