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210 lines
5.2 KiB
ReStructuredText
210 lines
5.2 KiB
ReStructuredText
TRIQS in a nutshell
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===================
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TRIQS is a toolbox containing **ready-to-use applications**, **python modules** as well as **C++ libraries** aimed at physicists in the field of quantum interacting systems.
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Applications
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------------
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Interface to Wien2k for LDA+DMFT calculation
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^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
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TRIQS allows you to turn band-structure calculations obtained from the Wien2k package to inputs to full-fledged LDA+DMFT calculations in a few lines!
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[example here]
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To learn more, see <link>
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Solvers for impurity models
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^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
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TRIQS comes with powerful numerical solvers for quantum impurity models.
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[example here]
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To learn more, see <link>
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Python modules
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--------------
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Green's functions
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^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
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With TRIQS, the manipulation of Green's functions is made easy: construction of Green's functions in frequency and time domains (imaginary and real), Fourier transforms, visualization, tail computation...
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.. runblock:: python
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# Import the Green's functions
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from pytriqs.gf.local import GfImFreq, iOmega_n, inverse
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# Create the Matsubara-frequency Green's function and initialize it
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gw = GfImFreq(indices = [1], beta = 50, n_points = 1000, name = "imp")
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gw <<= inverse( iOmega_n + 0.5 )
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# Create an imaginary-time Green's function and plot it
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gt = GFBloc_ImTime(Indices = [1], Beta = 50)
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gt <<= InverseFourier(gw)
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#from pytriqs.plot.mpl_interface import oplot
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#oplot(g, '-o', x_window = (0,10))
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print gt(0.5)
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To learn more, see <link>
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Lattice tools
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^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
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With TRIQS, build a tight-binding model on any lattice in a few lines, and extract its density of states, dispersion...
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[example here]
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.. runblock:: python
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print 2+2 # this will give output
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To learn more, see <link>
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C++ libraries
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-------------
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Monte-Carlo library
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^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
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Set up a Monte-Carlo simulation in a few lines: you write the configuration, moves and measures, while TRIQS takes care of the Metropolis algorithm and parallelization of the code.
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.. compileblock::
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#include <iostream>
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#include <triqs/utility/callbacks.hpp>
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#include <triqs/mc_tools/mc_generic.hpp>
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// the configuration: a spin, the inverse temperature, the external field
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struct configuration {
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int spin; double beta, h;
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configuration(double beta_, double h_) : spin(-1), beta(beta_), h(h_) {}
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};
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// a move: flip the spin
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struct flip {
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configuration & config;
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flip(configuration & config_) : config(config_) {}
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double attempt() { return std::exp(-2*config.spin*config.h*config.beta); }
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double accept() { config.spin*= -1; return 1.0; }
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void reject() {}
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};
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// a measurement: the magnetization
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struct compute_m {
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configuration & config;
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double Z, M;
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compute_m(configuration & config_) : config(config_), Z(0), M(0) {}
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void accumulate(double sign) { Z += sign; M += sign * config.spin; }
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void collect_results(boost::mpi::communicator const &c) {
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double sum_Z, sum_M;
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boost::mpi::reduce(c, Z, sum_Z, std::plus<double>(), 0);
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boost::mpi::reduce(c, M, sum_M, std::plus<double>(), 0);
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if (c.rank() == 0) {
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std::cout << "Magnetization: " << sum_M / sum_Z << std::endl << std::endl;
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}
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}
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};
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int main(int argc, char* argv[]) {
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// initialize mpi
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boost::mpi::environment env(argc, argv);
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boost::mpi::communicator world;
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// greeting
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if (world.rank() == 0) std::cout << "Isolated spin" << std::endl;
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// prepare the MC parameters
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int N_Cycles = 500000;
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int Length_Cycle = 10;
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int N_Warmup_Cycles = 1000;
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std::string Random_Name = "";
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int Random_Seed = 374982 + world.rank() * 273894;
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int Verbosity = (world.rank() == 0 ? 2 : 0);
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// construct a Monte Carlo loop
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triqs::mc_tools::mc_generic<double> SpinMC(N_Cycles, Length_Cycle, N_Warmup_Cycles,
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Random_Name, Random_Seed, Verbosity);
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// parameters of the model
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double beta = 0.3;
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double field = 0.5;
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// construct configuration
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configuration config(beta, field);
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// add moves and measures
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SpinMC.add_move(flip(config), "flip move");
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SpinMC.add_measure(compute_m(config), "magnetization measure");
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// Run and collect results
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SpinMC.start(1.0, triqs::utility::clock_callback(600));
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SpinMC.collect_results(world);
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return 0;
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}
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To learn more, see <link>
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Array library
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^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
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Create, manipulate and store powerful multi-dimensional arrays:
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.. highlight:: c
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.. compileblock::
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#include <triqs/arrays.hpp>
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using triqs::arrays::array;
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int main(){
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array<double,1> A(20);
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}
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To learn more, see <link>
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Expression library: CLEF
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^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
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Write mathematical expressions in a seamless and computationally efficient way:
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.. compileblock::
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#include <triqs/clef.hpp>
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int main () {
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triqs::clef::placeholder <1> x_;
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auto e1 = cos(2*x_+1);
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auto e2 = abs(2*x_-1);
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auto e3 = floor(2*x_-1);
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auto e4 = pow(2*x_+1,2);
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}
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To learn more, see <link>
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