2005 Materials Computation Center External Board Meeting The Materials Computation Center Duane D. Johnson and Richard M. Martin (PIs) Funded by NSF DMR.

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2005 Materials Computation Center External Board Meeting The Materials Computation Center Duane D. Johnson and Richard M. Martin (PIs) Funded by NSF DMR Jeongnim Kim, D. M. Ceperley, and R. M. Martin Students: J. Vincent and D. Das National Center for Supercomputing Applications and the Departments of Physics, University of Illinois at Urbana-Champaign Quantum Monte Carlo Simulation Tools: qmcPlusPlus Motivations and goals Quantum Monte Carlo (QMC) methods can, in principle, calculate exact properties of many- body systems. With recent developments in QMC algorithms and ever-growing computing powers, QMC methods have become powerful and practical tools to study a wide range of problems with direct connections to high pressure physics, materials science, surface science, the theory of strongly correlated electrons and low-temperature physics. We are developing comprehensive computational frameworks for QMC simulations built upon the innovative algorithms and numerical methods for the advanced computing environments of today and future. One of the components of the tools is qmcPlusPlus, an object-oriented QMC code, the focus of this presentation. qmcPlusPlus is the computational core of our tools and is the building block for future tool development. Open-source library and application package to perform Quantum Monte Carlo Simulations Developed at MCC and NCSA, at UIUC A new C++ code modeled after QMC codes developed by D. Ceperley and his collaborators Implements various QMC algorithms: Variational, Diffusion and Reptation Monte Carlo methods and optimizations Utilize standard open-source libraries and utilities for development and executions Collaborative developments Contributing developers at UIUC: J. Kim, J. Vincent, Dyutiman Das, S. Chiesa, K. DeLaney, K. Esler Interactions with external developers and external projects: NRLMOL (Peterson et al. at Naval Research Laborary), GEMSTONE (Baldridge et al. at San Diego Supercomputing Center) and other Density Funtional Theory and Quantum Chemistry developers Release at MCC Software Archive scheduled in November 2005 What is qmcPlusPlus? Vision for Quantum Monte Carlo Toolkits and beyond Flexible computational frameworks for Quantum Monte Carlo simulations that accelerate developments of new algorithms. Easy-to-use user interfaces for a wide range of users Deployment as portal applications at NSF HPC centers Integration with data mining and visualization portals simulations. Combine ever-better hardware with new software engineering technology Use of standard, open-source software for dynamic, maintainable and adaptable scientific code. Use of standard IO for communication between diverse applications. Use of standard tools ­Compilers: C/C++, OpenMP ­Documentation: deoxygen, docbook ­Development environment: Cmake and GNU automake/libtool). Tools portals qmcPlusPlus, PIMC++ Visualization, Data mining Numerical, HPC, IO Libraries Toward open standards of quantum materials simulations Our development promote open I/O standards for quantum simulations and provide tools to facilitate communications between the materials applications in general. XML driven IO Job management and project descriptions Setting up complex simulations Human-readable and easily transformed to various formats. Solution for the complex problems of analyzing, mining, storing, and accessing vast stores of data HDF5-driven IO HDF5, a general purpose library and file format for storing scientific data Efficient IO on serial and parallel computers. Facilitate scientific data exchange, access, analysis, archiving and discovery. Generic design of qmcPlusPlus VMC and DMC moves –walker-by-walker : evaluate from scratch –particle-by-particle : update using ratio Optimization and RMC are based on walker-by-walker moves Optimizations of trial wave functions with energy, variation and minimizations Energy-difference methods –VMC and RMC –Correlated sampling over multiple wave functions and Hamiltonians –Examples: energy barrier of H2 dissociation, optical gaps QMC algorithms and implementation details Optical properties of Ge clusters (poster by J. Vincent) Electronic properties of coupled quantum dots (poster by D. Dyutiman) Energetic materials (S. Chiesa) Super-molecules based on H 2 O (J Kim in collaborations with B. Militzer) Applications of qmcPlusPlus Total energy calculations of periodic systems (K. Delaney*) Improvement of energy-difference methods (S. Chiesa*) Improvement of optimization methods Interfaces to various Quantum Chemistry and DFT programs GUI/Web interfaces * Leading developers for the projects Works in progress Evaluations of the trial wave function and local energies with –A trial wave function is a collection of many-body orbitals –Each Orbital implements evaluation of –The sign of each Orbital and their total sign is evaluated separately Typical Slater-Jastrow wave function for electrons takes Many-body wave functions multi determinants A many-body Hamiltonian consists of operators as The operators which evaluate make up a total energy operator. A generic Hamiltonian for the electronic structure calculations Kinetic operator Coulomb potentials: el-e, ion-el,ion-ion Pseudo-potentials Core-polarization potential Valence/conduction band offsets Many-body Hamiltonian