mirror of
https://github.com/triqs/dft_tools
synced 2024-11-01 11:43:47 +01:00
123 lines
5.5 KiB
C++
123 lines
5.5 KiB
C++
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/*******************************************************************************
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*
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* TRIQS: a Toolbox for Research in Interacting Quantum Systems
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*
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* Copyright (C) 2011 by O. Parcollet
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*
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* TRIQS is free software: you can redistribute it and/or modify it under the
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* terms of the GNU General Public License as published by the Free Software
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* Foundation, either version 3 of the License, or (at your option) any later
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* version.
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*
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* TRIQS is distributed in the hope that it will be useful, but WITHOUT ANY
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* WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
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* FOR A PARTICULAR PURPOSE. See the GNU General Public License for more
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* details.
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*
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* You should have received a copy of the GNU General Public License along with
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* TRIQS. If not, see <http://www.gnu.org/licenses/>.
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*
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******************************************************************************/
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#include "../impl/common.hpp"
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#include "../impl/traits.hpp"
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#include "../impl/flags.hpp"
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#include "../../utility/mini_vector.hpp"
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#include "./numpy_extractor.hpp"
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#ifdef TRIQS_WITH_PYTHON_SUPPORT
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namespace triqs { namespace arrays { namespace numpy_interface {
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PyObject * numpy_extractor_impl ( PyObject * X, bool allow_copy, std::string type_name,
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int elementsType, int rank, size_t * lengths, std::ptrdiff_t * strides, size_t size_of_ValueType) {
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PyObject * numpy_obj;
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if (X==NULL) TRIQS_RUNTIME_ERROR<<"numpy interface : the python object is NULL !";
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if (_import_array()!=0) TRIQS_RUNTIME_ERROR <<"Internal Error in importing numpy";
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static const char * error_msg = " A deep copy of the object would be necessary while views are supposed to guarantee to present a *view* of the python data.\n";
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if (!allow_copy) {
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if (!PyArray_Check(X)) throw copy_exception () << error_msg<<" Indeed the object was not even an array !\n";
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if ( elementsType != PyArray_TYPE((PyArrayObject*)X))
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throw copy_exception () << error_msg<<" The deep copy is caused by a type mismatch of the elements. Expected "<< type_name<< " and found XXX \n";
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PyArrayObject *arr = (PyArrayObject *)X;
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#ifdef TRIQS_NUMPY_VERSION_LT_17
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if ( arr->nd != rank) throw copy_exception () << error_msg<<" Rank mismatch . numpy array is of rank "<< arr->nd << "while you ask for rank "<< rank<<". \n";
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#else
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if ( PyArray_NDIM(arr) != rank) throw copy_exception () << error_msg<<" Rank mismatch . numpy array is of rank "<< PyArray_NDIM(arr) << "while you ask for rank "<< rank<<". \n";
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#endif
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numpy_obj = X; Py_INCREF(X);
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}
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else {
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// From X, we ask the numpy library to make a numpy, and of the correct type.
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// This handles automatically the cases where :
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// - we have list, or list of list/tuple
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// - the numpy type is not the one we want.
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// - adjust the dimension if needed
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// If X is an array :
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// - if Order is same, don't change it
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// - else impose it (may provoque a copy).
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// if X is not array :
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// - Order = FortranOrder or SameOrder - > Fortran order otherwise C
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//bool ForceCast = false;// Unless FORCECAST is present in flags, this call will generate an error if the data type cannot be safely obtained from the object.
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int flags = 0; //(ForceCast ? NPY_FORCECAST : 0) ;// do NOT force a copy | (make_copy ? NPY_ENSURECOPY : 0);
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if (!(PyArray_Check(X) ))
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//flags |= ( IndexMapType::traversal_order == indexmaps::mem_layout::c_order(rank) ? NPY_C_CONTIGUOUS : NPY_F_CONTIGUOUS); //impose mem order
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#ifdef TRIQS_NUMPY_VERSION_LT_17
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flags |= (NPY_C_CONTIGUOUS); //impose mem order
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#else
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flags |= (NPY_ARRAY_C_CONTIGUOUS); //impose mem order
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#endif
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numpy_obj= PyArray_FromAny(X,PyArray_DescrFromType(elementsType), rank,rank, flags , NULL );
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// do several checks
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if (!numpy_obj) {// The convertion of X to a numpy has failed !
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if (PyErr_Occurred()) {
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//PyErr_Print();
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PyErr_Clear();
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}
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TRIQS_RUNTIME_ERROR<<"numpy interface : the python object is not convertible to a numpy. ";
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}
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assert (PyArray_Check(numpy_obj)); assert((numpy_obj->ob_refcnt==1) || ((numpy_obj ==X)));
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PyArrayObject *arr_obj;
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arr_obj = (PyArrayObject *)numpy_obj;
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try {
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#ifdef TRIQS_NUMPY_VERSION_LT_17
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if (arr_obj->nd!=rank) TRIQS_RUNTIME_ERROR<<"numpy interface : internal error : dimensions do not match";
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if (arr_obj->descr->type_num != elementsType)
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TRIQS_RUNTIME_ERROR<<"numpy interface : internal error : incorrect type of element :" <<arr_obj->descr->type_num <<" vs "<<elementsType;
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#else
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if ( PyArray_NDIM(arr_obj) !=rank) TRIQS_RUNTIME_ERROR<<"numpy interface : internal error : dimensions do not match";
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if ( PyArray_DESCR(arr_obj)->type_num != elementsType)
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TRIQS_RUNTIME_ERROR<<"numpy interface : internal error : incorrect type of element :" <<PyArray_DESCR(arr_obj)->type_num <<" vs "<<elementsType;
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#endif
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}
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catch(...) { Py_DECREF(numpy_obj); throw;} // make sure that in case of problem, the reference counting of python is still ok...
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}
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// extract strides and lengths
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PyArrayObject *arr_obj;
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arr_obj = (PyArrayObject *)numpy_obj;
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#ifdef TRIQS_NUMPY_VERSION_LT_17
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const size_t dim =arr_obj->nd; // we know that dim == rank
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for (size_t i=0; i< dim ; ++i) {
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lengths[i] = size_t(arr_obj-> dimensions[i]);
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strides[i] = std::ptrdiff_t(arr_obj-> strides[i])/ size_of_ValueType;
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}
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#else
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const size_t dim = PyArray_NDIM(arr_obj); // we know that dim == rank
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for (size_t i=0; i< dim ; ++i) {
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lengths[i] = size_t( PyArray_DIMS(arr_obj)[i]);
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strides[i] = std::ptrdiff_t( PyArray_STRIDES(arr_obj)[i])/ size_of_ValueType;
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}
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#endif
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return numpy_obj;
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}
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}}}
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#endif
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