/* * Copyright (C) 2003-2017 Dynare Team * * This file is part of Dynare. * * Dynare is free software: you can redistribute it and/or modify * it under the terms of the GNU General Public License as published by * the Free Software Foundation, either version 3 of the License, or * (at your option) any later version. * * Dynare is distributed in the hope that it will be useful, * but WITHOUT ANY WARRANTY; without even the implied warranty of * MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the * GNU General Public License for more details. * * You should have received a copy of the GNU General Public License * along with Dynare. If not, see . */ #include #include #include #include #include #include #include #include "StaticModel.hh" // For mkdir() and chdir() #ifdef _WIN32 # include #else # include # include # include #endif StaticModel::StaticModel(SymbolTable &symbol_table_arg, NumericalConstants &num_constants_arg, ExternalFunctionsTable &external_functions_table_arg) : ModelTree(symbol_table_arg, num_constants_arg, external_functions_table_arg), global_temporary_terms(true) { } void StaticModel::compileDerivative(ofstream &code_file, unsigned int &instruction_number, int eq, int symb_id, map_idx_t &map_idx, temporary_terms_t temporary_terms) const { first_derivatives_t::const_iterator it = first_derivatives.find(make_pair(eq, getDerivID(symbol_table.getID(eEndogenous, symb_id), 0))); if (it != first_derivatives.end()) (it->second)->compile(code_file, instruction_number, false, temporary_terms, map_idx, false, false); else { FLDZ_ fldz; fldz.write(code_file, instruction_number); } } void StaticModel::compileChainRuleDerivative(ofstream &code_file, unsigned int &instruction_number, int eqr, int varr, int lag, map_idx_t &map_idx, temporary_terms_t temporary_terms) const { map >, expr_t>::const_iterator it = first_chain_rule_derivatives.find(make_pair(eqr, make_pair(varr, lag))); if (it != first_chain_rule_derivatives.end()) (it->second)->compile(code_file, instruction_number, false, temporary_terms, map_idx, false, false); else { FLDZ_ fldz; fldz.write(code_file, instruction_number); } } void StaticModel::computeTemporaryTermsOrdered() { map > first_occurence; map reference_count; BinaryOpNode *eq_node; first_derivatives_t::const_iterator it; first_chain_rule_derivatives_t::const_iterator it_chr; ostringstream tmp_s; v_temporary_terms.clear(); map_idx.clear(); unsigned int nb_blocks = getNbBlocks(); v_temporary_terms = vector< vector >(nb_blocks); v_temporary_terms_local = vector< vector >(nb_blocks); v_temporary_terms_inuse = vector(nb_blocks); map_idx2 = vector(nb_blocks); temporary_terms.clear(); //local temporay terms for (unsigned int block = 0; block < nb_blocks; block++) { map reference_count_local; reference_count_local.clear(); map > first_occurence_local; first_occurence_local.clear(); temporary_terms_t temporary_terms_l; temporary_terms_l.clear(); unsigned int block_size = getBlockSize(block); unsigned int block_nb_mfs = getBlockMfs(block); unsigned int block_nb_recursives = block_size - block_nb_mfs; v_temporary_terms_local[block] = vector(block_size); for (unsigned int i = 0; i < block_size; i++) { if (i < block_nb_recursives && isBlockEquationRenormalized(block, i)) getBlockEquationRenormalizedExpr(block, i)->computeTemporaryTerms(reference_count_local, temporary_terms_l, first_occurence_local, block, v_temporary_terms_local, i); else { eq_node = (BinaryOpNode *) getBlockEquationExpr(block, i); eq_node->computeTemporaryTerms(reference_count_local, temporary_terms_l, first_occurence_local, block, v_temporary_terms_local, i); } } for (block_derivatives_equation_variable_laglead_nodeid_t::const_iterator it = blocks_derivatives[block].begin(); it != (blocks_derivatives[block]).end(); it++) { expr_t id = it->second.second; id->computeTemporaryTerms(reference_count_local, temporary_terms_l, first_occurence_local, block, v_temporary_terms_local, block_size-1); } set temporary_terms_in_use; temporary_terms_in_use.clear(); v_temporary_terms_inuse[block] = temporary_terms_in_use; computeTemporaryTermsMapping(temporary_terms_l, map_idx2[block]); } // global temporay terms for (unsigned int block = 0; block < nb_blocks; block++) { // Compute the temporary terms reordered unsigned int block_size = getBlockSize(block); unsigned int block_nb_mfs = getBlockMfs(block); unsigned int block_nb_recursives = block_size - block_nb_mfs; v_temporary_terms[block] = vector(block_size); for (unsigned int i = 0; i < block_size; i++) { if (i < block_nb_recursives && isBlockEquationRenormalized(block, i)) getBlockEquationRenormalizedExpr(block, i)->computeTemporaryTerms(reference_count, temporary_terms, first_occurence, block, v_temporary_terms, i); else { eq_node = (BinaryOpNode *) getBlockEquationExpr(block, i); eq_node->computeTemporaryTerms(reference_count, temporary_terms, first_occurence, block, v_temporary_terms, i); } } for (block_derivatives_equation_variable_laglead_nodeid_t::const_iterator it = blocks_derivatives[block].begin(); it != (blocks_derivatives[block]).end(); it++) { expr_t id = it->second.second; id->computeTemporaryTerms(reference_count, temporary_terms, first_occurence, block, v_temporary_terms, block_size-1); } } for (unsigned int block = 0; block < nb_blocks; block++) { // Collecte the temporary terms reordered unsigned int block_size = getBlockSize(block); unsigned int block_nb_mfs = getBlockMfs(block); unsigned int block_nb_recursives = block_size - block_nb_mfs; set temporary_terms_in_use; for (unsigned int i = 0; i < block_size; i++) { if (i < block_nb_recursives && isBlockEquationRenormalized(block, i)) getBlockEquationRenormalizedExpr(block, i)->collectTemporary_terms(temporary_terms, temporary_terms_in_use, block); else { eq_node = (BinaryOpNode *) getBlockEquationExpr(block, i); eq_node->collectTemporary_terms(temporary_terms, temporary_terms_in_use, block); } } for (block_derivatives_equation_variable_laglead_nodeid_t::const_iterator it = blocks_derivatives[block].begin(); it != (blocks_derivatives[block]).end(); it++) { expr_t id = it->second.second; id->collectTemporary_terms(temporary_terms, temporary_terms_in_use, block); } for (int i = 0; i < (int) getBlockSize(block); i++) for (temporary_terms_t::const_iterator it = v_temporary_terms[block][i].begin(); it != v_temporary_terms[block][i].end(); it++) (*it)->collectTemporary_terms(temporary_terms, temporary_terms_in_use, block); v_temporary_terms_inuse[block] = temporary_terms_in_use; } computeTemporaryTermsMapping(temporary_terms, map_idx); } void StaticModel::computeTemporaryTermsMapping(temporary_terms_t &temporary_terms, map_idx_t &map_idx) { // Add a mapping form node ID to temporary terms order int j = 0; for (temporary_terms_t::const_iterator it = temporary_terms.begin(); it != temporary_terms.end(); it++) map_idx[(*it)->idx] = j++; } void StaticModel::writeModelEquationsOrdered_M(const string &static_basename) const { string tmp_s, sps; ostringstream tmp_output, tmp1_output, global_output; expr_t lhs = NULL, rhs = NULL; BinaryOpNode *eq_node; map reference_count; temporary_terms_t local_temporary_terms; ofstream output; vector feedback_variables; deriv_node_temp_terms_t tef_terms; ExprNodeOutputType local_output_type; local_output_type = oMatlabStaticModelSparse; if (global_temporary_terms) local_temporary_terms = temporary_terms; //---------------------------------------------------------------------- //For each block for (unsigned int block = 0; block < getNbBlocks(); block++) { //recursive_variables.clear(); feedback_variables.clear(); //For a block composed of a single equation determines wether we have to evaluate or to solve the equation BlockSimulationType simulation_type = getBlockSimulationType(block); unsigned int block_size = getBlockSize(block); unsigned int block_mfs = getBlockMfs(block); unsigned int block_recursive = block_size - block_mfs; tmp1_output.str(""); tmp1_output << static_basename << "_" << block+1 << ".m"; output.open(tmp1_output.str().c_str(), ios::out | ios::binary); output << "%\n"; output << "% " << tmp1_output.str() << " : Computes static model for Dynare\n"; output << "%\n"; output << "% Warning : this file is generated automatically by Dynare\n"; output << "% from model file (.mod)\n\n"; output << "%/\n"; if (simulation_type == EVALUATE_BACKWARD || simulation_type == EVALUATE_FORWARD) output << "function y = " << static_basename << "_" << block+1 << "(y, x, params)\n"; else output << "function [residual, y, g1] = " << static_basename << "_" << block+1 << "(y, x, params)\n"; BlockType block_type; if (simulation_type == SOLVE_FORWARD_COMPLETE || simulation_type == SOLVE_BACKWARD_COMPLETE) block_type = SIMULTANS; else if ((simulation_type == SOLVE_FORWARD_SIMPLE || simulation_type == SOLVE_BACKWARD_SIMPLE || simulation_type == EVALUATE_BACKWARD || simulation_type == EVALUATE_FORWARD) && getBlockFirstEquation(block) < prologue) block_type = PROLOGUE; else if ((simulation_type == SOLVE_FORWARD_SIMPLE || simulation_type == SOLVE_BACKWARD_SIMPLE || simulation_type == EVALUATE_BACKWARD || simulation_type == EVALUATE_FORWARD) && getBlockFirstEquation(block) >= equations.size() - epilogue) block_type = EPILOGUE; else block_type = SIMULTANS; output << " % ////////////////////////////////////////////////////////////////////////" << endl << " % //" << string(" Block ").substr(int (log10(block + 1))) << block + 1 << " " << BlockType0(block_type) << " //" << endl << " % // Simulation type " << BlockSim(simulation_type) << " //" << endl << " % ////////////////////////////////////////////////////////////////////////" << endl; output << " global options_;" << endl; //The Temporary terms if (simulation_type != EVALUATE_BACKWARD && simulation_type != EVALUATE_FORWARD) output << " g1 = spalloc(" << block_mfs << ", " << block_mfs << ", " << derivative_endo[block].size() << ");" << endl; if (v_temporary_terms_inuse[block].size()) { tmp_output.str(""); for (temporary_terms_inuse_t::const_iterator it = v_temporary_terms_inuse[block].begin(); it != v_temporary_terms_inuse[block].end(); it++) tmp_output << " T" << *it; output << " global" << tmp_output.str() << ";\n"; } if (simulation_type != EVALUATE_BACKWARD && simulation_type != EVALUATE_FORWARD) output << " residual=zeros(" << block_mfs << ",1);\n"; // The equations for (unsigned int i = 0; i < block_size; i++) { if (!global_temporary_terms) local_temporary_terms = v_temporary_terms[block][i]; temporary_terms_t tt2; tt2.clear(); if (v_temporary_terms[block].size()) { output << " " << "% //Temporary variables" << endl; for (temporary_terms_t::const_iterator it = v_temporary_terms[block][i].begin(); it != v_temporary_terms[block][i].end(); it++) { if (dynamic_cast(*it) != NULL) (*it)->writeExternalFunctionOutput(output, local_output_type, tt2, tef_terms); output << " " << sps; (*it)->writeOutput(output, local_output_type, local_temporary_terms, tef_terms); output << " = "; (*it)->writeOutput(output, local_output_type, tt2, tef_terms); // Insert current node into tt2 tt2.insert(*it); output << ";" << endl; } } int variable_ID = getBlockVariableID(block, i); int equation_ID = getBlockEquationID(block, i); EquationType equ_type = getBlockEquationType(block, i); string sModel = symbol_table.getName(symbol_table.getID(eEndogenous, variable_ID)); eq_node = (BinaryOpNode *) getBlockEquationExpr(block, i); lhs = eq_node->get_arg1(); rhs = eq_node->get_arg2(); tmp_output.str(""); lhs->writeOutput(tmp_output, local_output_type, local_temporary_terms); switch (simulation_type) { case EVALUATE_BACKWARD: case EVALUATE_FORWARD: evaluation: output << " % equation " << getBlockEquationID(block, i)+1 << " variable : " << sModel << " (" << variable_ID+1 << ") " << c_Equation_Type(equ_type) << endl; output << " "; if (equ_type == E_EVALUATE) { output << tmp_output.str(); output << " = "; rhs->writeOutput(output, local_output_type, local_temporary_terms); } else if (equ_type == E_EVALUATE_S) { output << "%" << tmp_output.str(); output << " = "; if (isBlockEquationRenormalized(block, i)) { rhs->writeOutput(output, local_output_type, local_temporary_terms); output << "\n "; tmp_output.str(""); eq_node = (BinaryOpNode *) getBlockEquationRenormalizedExpr(block, i); lhs = eq_node->get_arg1(); rhs = eq_node->get_arg2(); lhs->writeOutput(output, local_output_type, local_temporary_terms); output << " = "; rhs->writeOutput(output, local_output_type, local_temporary_terms); } } else { cerr << "Type mismatch for equation " << equation_ID+1 << "\n"; exit(EXIT_FAILURE); } output << ";\n"; break; case SOLVE_BACKWARD_SIMPLE: case SOLVE_FORWARD_SIMPLE: case SOLVE_BACKWARD_COMPLETE: case SOLVE_FORWARD_COMPLETE: if (i < block_recursive) goto evaluation; feedback_variables.push_back(variable_ID); output << " % equation " << equation_ID+1 << " variable : " << sModel << " (" << variable_ID+1 << ") " << c_Equation_Type(equ_type) << endl; output << " " << "residual(" << i+1-block_recursive << ") = ("; goto end; default: end: output << tmp_output.str(); output << ") - ("; rhs->writeOutput(output, local_output_type, local_temporary_terms); output << ");\n"; } } // The Jacobian if we have to solve the block if (simulation_type == SOLVE_BACKWARD_SIMPLE || simulation_type == SOLVE_FORWARD_SIMPLE || simulation_type == SOLVE_BACKWARD_COMPLETE || simulation_type == SOLVE_FORWARD_COMPLETE) output << " " << sps << "% Jacobian " << endl; switch (simulation_type) { case SOLVE_BACKWARD_SIMPLE: case SOLVE_FORWARD_SIMPLE: case SOLVE_BACKWARD_COMPLETE: case SOLVE_FORWARD_COMPLETE: for (block_derivatives_equation_variable_laglead_nodeid_t::const_iterator it = blocks_derivatives[block].begin(); it != (blocks_derivatives[block]).end(); it++) { unsigned int eq = it->first.first; unsigned int var = it->first.second; unsigned int eqr = getBlockEquationID(block, eq); unsigned int varr = getBlockVariableID(block, var); expr_t id = it->second.second; output << " g1(" << eq+1-block_recursive << ", " << var+1-block_recursive << ") = "; id->writeOutput(output, local_output_type, local_temporary_terms); output << "; % variable=" << symbol_table.getName(symbol_table.getID(eEndogenous, varr)) << "(" << 0 << ") " << varr+1 << ", equation=" << eqr+1 << endl; } break; default: break; } output << "end" << endl; output.close(); } } void StaticModel::writeModelEquationsCode(const string file_name, const string bin_basename, map_idx_t map_idx) const { ostringstream tmp_output; ofstream code_file; unsigned int instruction_number = 0; bool file_open = false; string main_name = file_name; main_name += ".cod"; code_file.open(main_name.c_str(), ios::out | ios::binary | ios::ate); if (!code_file.is_open()) { cerr << "Error : Can't open file \"" << main_name << "\" for writing" << endl; exit(EXIT_FAILURE); } int count_u; int u_count_int = 0; Write_Inf_To_Bin_File(file_name, u_count_int, file_open, false, symbol_table.endo_nbr()); file_open = true; //Temporary variables declaration FDIMST_ fdimst(temporary_terms.size()); fdimst.write(code_file, instruction_number); FBEGINBLOCK_ fbeginblock(symbol_table.endo_nbr(), SOLVE_FORWARD_COMPLETE, 0, symbol_table.endo_nbr(), variable_reordered, equation_reordered, false, symbol_table.endo_nbr(), 0, 0, u_count_int, symbol_table.endo_nbr() ); fbeginblock.write(code_file, instruction_number); // Add a mapping form node ID to temporary terms order int j = 0; for (temporary_terms_t::const_iterator it = temporary_terms.begin(); it != temporary_terms.end(); it++) map_idx[(*it)->idx] = j++; compileTemporaryTerms(code_file, instruction_number, temporary_terms, map_idx, false, false); compileModelEquations(code_file, instruction_number, temporary_terms, map_idx, false, false); FENDEQU_ fendequ; fendequ.write(code_file, instruction_number); // Get the current code_file position and jump if eval = true streampos pos1 = code_file.tellp(); FJMPIFEVAL_ fjmp_if_eval(0); fjmp_if_eval.write(code_file, instruction_number); int prev_instruction_number = instruction_number; vector > > derivatives; derivatives.resize(symbol_table.endo_nbr()); count_u = symbol_table.endo_nbr(); for (first_derivatives_t::const_iterator it = first_derivatives.begin(); it != first_derivatives.end(); it++) { int deriv_id = it->first.second; if (getTypeByDerivID(deriv_id) == eEndogenous) { expr_t d1 = it->second; unsigned int eq = it->first.first; int symb = getSymbIDByDerivID(deriv_id); unsigned int var = symbol_table.getTypeSpecificID(symb); FNUMEXPR_ fnumexpr(FirstEndoDerivative, eq, var); fnumexpr.write(code_file, instruction_number); if (!derivatives[eq].size()) derivatives[eq].clear(); derivatives[eq].push_back(make_pair(var, count_u)); d1->compile(code_file, instruction_number, false, temporary_terms, map_idx, false, false); FSTPSU_ fstpsu(count_u); fstpsu.write(code_file, instruction_number); count_u++; } } for (int i = 0; i < symbol_table.endo_nbr(); i++) { FLDR_ fldr(i); fldr.write(code_file, instruction_number); if (derivatives[i].size()) { for (vector >::const_iterator it = derivatives[i].begin(); it != derivatives[i].end(); it++) { FLDSU_ fldsu(it->second); fldsu.write(code_file, instruction_number); FLDSV_ fldsv(eEndogenous, it->first); fldsv.write(code_file, instruction_number); FBINARY_ fbinary(oTimes); fbinary.write(code_file, instruction_number); if (it != derivatives[i].begin()) { FBINARY_ fbinary(oPlus); fbinary.write(code_file, instruction_number); } } FBINARY_ fbinary(oMinus); fbinary.write(code_file, instruction_number); } FSTPSU_ fstpsu(i); fstpsu.write(code_file, instruction_number); } // Get the current code_file position and jump = true streampos pos2 = code_file.tellp(); FJMP_ fjmp(0); fjmp.write(code_file, instruction_number); // Set code_file position to previous JMPIFEVAL_ and set the number of instructions to jump streampos pos3 = code_file.tellp(); code_file.seekp(pos1); FJMPIFEVAL_ fjmp_if_eval1(instruction_number - prev_instruction_number); fjmp_if_eval1.write(code_file, instruction_number); code_file.seekp(pos3); prev_instruction_number = instruction_number; temporary_terms_t tt2; tt2.clear(); temporary_terms_t tt3; tt3.clear(); // The Jacobian if we have to solve the block determinsitic bloc for (first_derivatives_t::const_iterator it = first_derivatives.begin(); it != first_derivatives.end(); it++) { int deriv_id = it->first.second; if (getTypeByDerivID(deriv_id) == eEndogenous) { expr_t d1 = it->second; unsigned int eq = it->first.first; int symb = getSymbIDByDerivID(deriv_id); unsigned int var = symbol_table.getTypeSpecificID(symb); FNUMEXPR_ fnumexpr(FirstEndoDerivative, eq, var); fnumexpr.write(code_file, instruction_number); if (!derivatives[eq].size()) derivatives[eq].clear(); derivatives[eq].push_back(make_pair(var, count_u)); d1->compile(code_file, instruction_number, false, temporary_terms, map_idx, false, false); FSTPG2_ fstpg2(eq, var); fstpg2.write(code_file, instruction_number); } } // Set codefile position to previous JMP_ and set the number of instructions to jump pos1 = code_file.tellp(); code_file.seekp(pos2); FJMP_ fjmp1(instruction_number - prev_instruction_number); fjmp1.write(code_file, instruction_number); code_file.seekp(pos1); FENDBLOCK_ fendblock; fendblock.write(code_file, instruction_number); FEND_ fend; fend.write(code_file, instruction_number); code_file.close(); } void StaticModel::writeModelEquationsCode_Block(const string file_name, const string bin_basename, map_idx_t map_idx, vector map_idx2) const { struct Uff_l { int u, var, lag; Uff_l *pNext; }; struct Uff { Uff_l *Ufl, *Ufl_First; }; int i, v; string tmp_s; ostringstream tmp_output; ofstream code_file; unsigned int instruction_number = 0; expr_t lhs = NULL, rhs = NULL; BinaryOpNode *eq_node; Uff Uf[symbol_table.endo_nbr()]; map reference_count; vector feedback_variables; deriv_node_temp_terms_t tef_terms; bool file_open = false; string main_name = file_name; main_name += ".cod"; code_file.open(main_name.c_str(), ios::out | ios::binary | ios::ate); if (!code_file.is_open()) { cerr << "Error : Can't open file \"" << main_name << "\" for writing" << endl; exit(EXIT_FAILURE); } //Temporary variables declaration FDIMST_ fdimst(temporary_terms.size()); fdimst.write(code_file, instruction_number); for (unsigned int block = 0; block < getNbBlocks(); block++) { feedback_variables.clear(); if (block > 0) { FENDBLOCK_ fendblock; fendblock.write(code_file, instruction_number); } int count_u; int u_count_int = 0; BlockSimulationType simulation_type = getBlockSimulationType(block); unsigned int block_size = getBlockSize(block); unsigned int block_mfs = getBlockMfs(block); unsigned int block_recursive = block_size - block_mfs; if (simulation_type == SOLVE_TWO_BOUNDARIES_SIMPLE || simulation_type == SOLVE_TWO_BOUNDARIES_COMPLETE || simulation_type == SOLVE_BACKWARD_COMPLETE || simulation_type == SOLVE_FORWARD_COMPLETE) { Write_Inf_To_Bin_File_Block(file_name, bin_basename, block, u_count_int, file_open); file_open = true; } FBEGINBLOCK_ fbeginblock(block_mfs, simulation_type, getBlockFirstEquation(block), block_size, variable_reordered, equation_reordered, blocks_linear[block], symbol_table.endo_nbr(), 0, 0, u_count_int, /*symbol_table.endo_nbr()*/ block_size ); fbeginblock.write(code_file, instruction_number); // Get the current code_file position and jump if eval = true streampos pos1 = code_file.tellp(); FJMPIFEVAL_ fjmp_if_eval(0); fjmp_if_eval.write(code_file, instruction_number); int prev_instruction_number = instruction_number; for (i = 0; i < (int) block_size; i++) { //The Temporary terms temporary_terms_t tt2; tt2.clear(); if (v_temporary_terms[block].size()) { for (temporary_terms_t::const_iterator it = v_temporary_terms[block][i].begin(); it != v_temporary_terms[block][i].end(); it++) { if (dynamic_cast(*it) != NULL) (*it)->compileExternalFunctionOutput(code_file, instruction_number, false, tt2, map_idx, false, false, tef_terms); FNUMEXPR_ fnumexpr(TemporaryTerm, (int)(map_idx.find((*it)->idx)->second)); fnumexpr.write(code_file, instruction_number); (*it)->compile(code_file, instruction_number, false, tt2, map_idx, false, false, tef_terms); FSTPST_ fstpst((int)(map_idx.find((*it)->idx)->second)); fstpst.write(code_file, instruction_number); // Insert current node into tt2 tt2.insert(*it); } } // The equations int variable_ID, equation_ID; EquationType equ_type; switch (simulation_type) { evaluation: case EVALUATE_BACKWARD: case EVALUATE_FORWARD: equ_type = getBlockEquationType(block, i); { FNUMEXPR_ fnumexpr(ModelEquation, getBlockEquationID(block, i)); fnumexpr.write(code_file, instruction_number); } if (equ_type == E_EVALUATE) { eq_node = (BinaryOpNode *) getBlockEquationExpr(block, i); lhs = eq_node->get_arg1(); rhs = eq_node->get_arg2(); rhs->compile(code_file, instruction_number, false, temporary_terms, map_idx, false, false); lhs->compile(code_file, instruction_number, true, temporary_terms, map_idx, false, false); } else if (equ_type == E_EVALUATE_S) { eq_node = (BinaryOpNode *) getBlockEquationRenormalizedExpr(block, i); lhs = eq_node->get_arg1(); rhs = eq_node->get_arg2(); rhs->compile(code_file, instruction_number, false, temporary_terms, map_idx, false, false); lhs->compile(code_file, instruction_number, true, temporary_terms, map_idx, false, false); } break; case SOLVE_BACKWARD_COMPLETE: case SOLVE_FORWARD_COMPLETE: if (i < (int) block_recursive) goto evaluation; variable_ID = getBlockVariableID(block, i); equation_ID = getBlockEquationID(block, i); feedback_variables.push_back(variable_ID); Uf[equation_ID].Ufl = NULL; goto end; default: end: FNUMEXPR_ fnumexpr(ModelEquation, getBlockEquationID(block, i)); fnumexpr.write(code_file, instruction_number); eq_node = (BinaryOpNode *) getBlockEquationExpr(block, i); lhs = eq_node->get_arg1(); rhs = eq_node->get_arg2(); lhs->compile(code_file, instruction_number, false, temporary_terms, map_idx, false, false); rhs->compile(code_file, instruction_number, false, temporary_terms, map_idx, false, false); FBINARY_ fbinary(oMinus); fbinary.write(code_file, instruction_number); FSTPR_ fstpr(i - block_recursive); fstpr.write(code_file, instruction_number); } } FENDEQU_ fendequ; fendequ.write(code_file, instruction_number); // The Jacobian if we have to solve the block if (simulation_type != EVALUATE_BACKWARD && simulation_type != EVALUATE_FORWARD) { switch (simulation_type) { case SOLVE_BACKWARD_SIMPLE: case SOLVE_FORWARD_SIMPLE: { FNUMEXPR_ fnumexpr(FirstEndoDerivative, 0, 0); fnumexpr.write(code_file, instruction_number); } compileDerivative(code_file, instruction_number, getBlockEquationID(block, 0), getBlockVariableID(block, 0), map_idx, temporary_terms); { FSTPG_ fstpg(0); fstpg.write(code_file, instruction_number); } break; case SOLVE_BACKWARD_COMPLETE: case SOLVE_FORWARD_COMPLETE: count_u = feedback_variables.size(); for (block_derivatives_equation_variable_laglead_nodeid_t::const_iterator it = blocks_derivatives[block].begin(); it != (blocks_derivatives[block]).end(); it++) { unsigned int eq = it->first.first; unsigned int var = it->first.second; unsigned int eqr = getBlockEquationID(block, eq); unsigned int varr = getBlockVariableID(block, var); if (eq >= block_recursive && var >= block_recursive) { if (!Uf[eqr].Ufl) { Uf[eqr].Ufl = (Uff_l *) malloc(sizeof(Uff_l)); Uf[eqr].Ufl_First = Uf[eqr].Ufl; } else { Uf[eqr].Ufl->pNext = (Uff_l *) malloc(sizeof(Uff_l)); Uf[eqr].Ufl = Uf[eqr].Ufl->pNext; } Uf[eqr].Ufl->pNext = NULL; Uf[eqr].Ufl->u = count_u; Uf[eqr].Ufl->var = varr; FNUMEXPR_ fnumexpr(FirstEndoDerivative, eqr, varr); fnumexpr.write(code_file, instruction_number); compileChainRuleDerivative(code_file, instruction_number, eqr, varr, 0, map_idx, temporary_terms); FSTPSU_ fstpsu(count_u); fstpsu.write(code_file, instruction_number); count_u++; } } for (i = 0; i < (int) block_size; i++) { if (i >= (int) block_recursive) { FLDR_ fldr(i-block_recursive); fldr.write(code_file, instruction_number); FLDZ_ fldz; fldz.write(code_file, instruction_number); v = getBlockEquationID(block, i); for (Uf[v].Ufl = Uf[v].Ufl_First; Uf[v].Ufl; Uf[v].Ufl = Uf[v].Ufl->pNext) { FLDSU_ fldsu(Uf[v].Ufl->u); fldsu.write(code_file, instruction_number); FLDSV_ fldsv(eEndogenous, Uf[v].Ufl->var); fldsv.write(code_file, instruction_number); FBINARY_ fbinary(oTimes); fbinary.write(code_file, instruction_number); FCUML_ fcuml; fcuml.write(code_file, instruction_number); } Uf[v].Ufl = Uf[v].Ufl_First; while (Uf[v].Ufl) { Uf[v].Ufl_First = Uf[v].Ufl->pNext; free(Uf[v].Ufl); Uf[v].Ufl = Uf[v].Ufl_First; } FBINARY_ fbinary(oMinus); fbinary.write(code_file, instruction_number); FSTPSU_ fstpsu(i - block_recursive); fstpsu.write(code_file, instruction_number); } } break; default: break; } } // Get the current code_file position and jump = true streampos pos2 = code_file.tellp(); FJMP_ fjmp(0); fjmp.write(code_file, instruction_number); // Set code_file position to previous JMPIFEVAL_ and set the number of instructions to jump streampos pos3 = code_file.tellp(); code_file.seekp(pos1); FJMPIFEVAL_ fjmp_if_eval1(instruction_number - prev_instruction_number); fjmp_if_eval1.write(code_file, instruction_number); code_file.seekp(pos3); prev_instruction_number = instruction_number; temporary_terms_t tt2; tt2.clear(); temporary_terms_t tt3; tt3.clear(); deriv_node_temp_terms_t tef_terms2; for (i = 0; i < (int) block_size; i++) { if (v_temporary_terms_local[block].size()) { for (temporary_terms_t::const_iterator it = v_temporary_terms_local[block][i].begin(); it != v_temporary_terms_local[block][i].end(); it++) { if (dynamic_cast(*it) != NULL) (*it)->compileExternalFunctionOutput(code_file, instruction_number, false, tt3, map_idx2[block], false, false, tef_terms2); FNUMEXPR_ fnumexpr(TemporaryTerm, (int)(map_idx2[block].find((*it)->idx)->second)); fnumexpr.write(code_file, instruction_number); (*it)->compile(code_file, instruction_number, false, tt3, map_idx2[block], false, false, tef_terms); FSTPST_ fstpst((int)(map_idx2[block].find((*it)->idx)->second)); fstpst.write(code_file, instruction_number); // Insert current node into tt2 tt3.insert(*it); tt2.insert(*it); } } // The equations int variable_ID, equation_ID; EquationType equ_type; switch (simulation_type) { evaluation_l: case EVALUATE_BACKWARD: case EVALUATE_FORWARD: equ_type = getBlockEquationType(block, i); { FNUMEXPR_ fnumexpr(ModelEquation, getBlockEquationID(block, i)); fnumexpr.write(code_file, instruction_number); } if (equ_type == E_EVALUATE) { eq_node = (BinaryOpNode *) getBlockEquationExpr(block, i); lhs = eq_node->get_arg1(); rhs = eq_node->get_arg2(); rhs->compile(code_file, instruction_number, false, tt2, map_idx2[block], false, false); lhs->compile(code_file, instruction_number, true, tt2, map_idx2[block], false, false); } else if (equ_type == E_EVALUATE_S) { eq_node = (BinaryOpNode *) getBlockEquationRenormalizedExpr(block, i); lhs = eq_node->get_arg1(); rhs = eq_node->get_arg2(); rhs->compile(code_file, instruction_number, false, tt2, map_idx2[block], false, false); lhs->compile(code_file, instruction_number, true, tt2, map_idx2[block], false, false); } break; case SOLVE_BACKWARD_COMPLETE: case SOLVE_FORWARD_COMPLETE: if (i < (int) block_recursive) goto evaluation_l; variable_ID = getBlockVariableID(block, i); equation_ID = getBlockEquationID(block, i); feedback_variables.push_back(variable_ID); Uf[equation_ID].Ufl = NULL; goto end_l; default: end_l: FNUMEXPR_ fnumexpr(ModelEquation, getBlockEquationID(block, i)); fnumexpr.write(code_file, instruction_number); eq_node = (BinaryOpNode *) getBlockEquationExpr(block, i); lhs = eq_node->get_arg1(); rhs = eq_node->get_arg2(); lhs->compile(code_file, instruction_number, false, tt2, map_idx2[block], false, false); rhs->compile(code_file, instruction_number, false, tt2, map_idx2[block], false, false); FBINARY_ fbinary(oMinus); fbinary.write(code_file, instruction_number); FSTPR_ fstpr(i - block_recursive); fstpr.write(code_file, instruction_number); } } FENDEQU_ fendequ_l; fendequ_l.write(code_file, instruction_number); // The Jacobian if we have to solve the block determinsitic bloc switch (simulation_type) { case SOLVE_BACKWARD_SIMPLE: case SOLVE_FORWARD_SIMPLE: { FNUMEXPR_ fnumexpr(FirstEndoDerivative, 0, 0); fnumexpr.write(code_file, instruction_number); } compileDerivative(code_file, instruction_number, getBlockEquationID(block, 0), getBlockVariableID(block, 0), map_idx2[block], tt2 /*temporary_terms*/); { FSTPG2_ fstpg2(0, 0); fstpg2.write(code_file, instruction_number); } break; case EVALUATE_BACKWARD: case EVALUATE_FORWARD: case SOLVE_BACKWARD_COMPLETE: case SOLVE_FORWARD_COMPLETE: count_u = feedback_variables.size(); for (block_derivatives_equation_variable_laglead_nodeid_t::const_iterator it = blocks_derivatives[block].begin(); it != (blocks_derivatives[block]).end(); it++) { unsigned int eq = it->first.first; unsigned int var = it->first.second; unsigned int eqr = getBlockEquationID(block, eq); unsigned int varr = getBlockVariableID(block, var); FNUMEXPR_ fnumexpr(FirstEndoDerivative, eqr, varr, 0); fnumexpr.write(code_file, instruction_number); compileChainRuleDerivative(code_file, instruction_number, eqr, varr, 0, map_idx2[block], tt2 /*temporary_terms*/); FSTPG2_ fstpg2(eq, var); fstpg2.write(code_file, instruction_number); } break; default: break; } // Set codefile position to previous JMP_ and set the number of instructions to jump pos1 = code_file.tellp(); code_file.seekp(pos2); FJMP_ fjmp1(instruction_number - prev_instruction_number); fjmp1.write(code_file, instruction_number); code_file.seekp(pos1); } FENDBLOCK_ fendblock; fendblock.write(code_file, instruction_number); FEND_ fend; fend.write(code_file, instruction_number); code_file.close(); } void StaticModel::Write_Inf_To_Bin_File_Block(const string &static_basename, const string &bin_basename, const int &num, int &u_count_int, bool &file_open) const { int j; std::ofstream SaveCode; if (file_open) SaveCode.open((bin_basename + "_static.bin").c_str(), ios::out | ios::in | ios::binary | ios::ate); else SaveCode.open((bin_basename + "_static.bin").c_str(), ios::out | ios::binary); if (!SaveCode.is_open()) { cerr << "Error : Can't open file \"" << bin_basename << "_static.bin\" for writing" << endl; exit(EXIT_FAILURE); } u_count_int = 0; unsigned int block_size = getBlockSize(num); unsigned int block_mfs = getBlockMfs(num); unsigned int block_recursive = block_size - block_mfs; for (block_derivatives_equation_variable_laglead_nodeid_t::const_iterator it = blocks_derivatives[num].begin(); it != (blocks_derivatives[num]).end(); it++) { unsigned int eq = it->first.first; unsigned int var = it->first.second; int lag = 0; if (eq >= block_recursive && var >= block_recursive) { int v = eq - block_recursive; SaveCode.write(reinterpret_cast(&v), sizeof(v)); int varr = var - block_recursive; SaveCode.write(reinterpret_cast(&varr), sizeof(varr)); SaveCode.write(reinterpret_cast(&lag), sizeof(lag)); int u = u_count_int + block_mfs; SaveCode.write(reinterpret_cast(&u), sizeof(u)); u_count_int++; } } for (j = block_recursive; j < (int) block_size; j++) { unsigned int varr = getBlockVariableID(num, j); SaveCode.write(reinterpret_cast(&varr), sizeof(varr)); } for (j = block_recursive; j < (int) block_size; j++) { unsigned int eqr = getBlockEquationID(num, j); SaveCode.write(reinterpret_cast(&eqr), sizeof(eqr)); } SaveCode.close(); } map >, expr_t> StaticModel::collect_first_order_derivatives_endogenous() { map >, expr_t> endo_derivatives; for (first_derivatives_t::iterator it2 = first_derivatives.begin(); it2 != first_derivatives.end(); it2++) { if (getTypeByDerivID(it2->first.second) == eEndogenous) { int eq = it2->first.first; int var = symbol_table.getTypeSpecificID(getSymbIDByDerivID(it2->first.second)); int lag = 0; endo_derivatives[make_pair(eq, make_pair(var, lag))] = it2->second; } } return endo_derivatives; } void StaticModel::computingPass(const eval_context_t &eval_context, bool no_tmp_terms, bool hessian, bool thirdDerivatives, int paramsDerivsOrder, bool block, bool bytecode, const bool nopreprocessoroutput) { initializeVariablesAndEquations(); vector neweqs; for (unsigned int eq = 0; eq < equations.size() - aux_equations.size(); eq++) { expr_t eq_tmp = equations[eq]->substituteStaticAuxiliaryVariable(); neweqs.push_back(dynamic_cast(eq_tmp->toStatic(*this))); } for (unsigned int eq = 0; eq < aux_equations.size(); eq++) { expr_t eq_tmp = aux_equations[eq]->substituteStaticAuxiliaryDefinition(); neweqs.push_back(dynamic_cast(eq_tmp->toStatic(*this))); } equations.clear(); copy(neweqs.begin(), neweqs.end(), back_inserter(equations)); // Compute derivatives w.r. to all endogenous, and possibly exogenous and exogenous deterministic set vars; for (int i = 0; i < symbol_table.endo_nbr(); i++) { int id = symbol_table.getID(eEndogenous, i); // if (!symbol_table.isAuxiliaryVariableButNotMultiplier(id)) vars.insert(getDerivID(id, 0)); } // Launch computations if (!nopreprocessoroutput) cout << "Computing static model derivatives:" << endl << " - order 1" << endl; first_derivatives.clear(); computeJacobian(vars); if (hessian) { if (!nopreprocessoroutput) cout << " - order 2" << endl; computeHessian(vars); } if (thirdDerivatives) { if (!nopreprocessoroutput) cout << " - order 3" << endl; computeThirdDerivatives(vars); } if (paramsDerivsOrder > 0) { if (!nopreprocessoroutput) cout << " - derivatives of Jacobian/Hessian w.r. to parameters" << endl; computeParamsDerivatives(paramsDerivsOrder); if (!no_tmp_terms) computeParamsDerivativesTemporaryTerms(); } if (block) { jacob_map_t contemporaneous_jacobian, static_jacobian; vector n_static, n_forward, n_backward, n_mixed; // for each block contains pair vector > blocks; evaluateAndReduceJacobian(eval_context, contemporaneous_jacobian, static_jacobian, dynamic_jacobian, cutoff, false); computeNonSingularNormalization(contemporaneous_jacobian, cutoff, static_jacobian, dynamic_jacobian); computePrologueAndEpilogue(static_jacobian, equation_reordered, variable_reordered); map >, expr_t> first_order_endo_derivatives = collect_first_order_derivatives_endogenous(); equation_type_and_normalized_equation = equationTypeDetermination(first_order_endo_derivatives, variable_reordered, equation_reordered, mfs); if (!nopreprocessoroutput) cout << "Finding the optimal block decomposition of the model ...\n"; lag_lead_vector_t equation_lag_lead, variable_lag_lead; computeBlockDecompositionAndFeedbackVariablesForEachBlock(static_jacobian, dynamic_jacobian, equation_reordered, variable_reordered, blocks, equation_type_and_normalized_equation, false, false, mfs, inv_equation_reordered, inv_variable_reordered, equation_lag_lead, variable_lag_lead, n_static, n_forward, n_backward, n_mixed); block_type_firstequation_size_mfs = reduceBlocksAndTypeDetermination(dynamic_jacobian, blocks, equation_type_and_normalized_equation, variable_reordered, equation_reordered, n_static, n_forward, n_backward, n_mixed, block_col_type); printBlockDecomposition(blocks); computeChainRuleJacobian(blocks_derivatives); blocks_linear = BlockLinear(blocks_derivatives, variable_reordered); collect_block_first_order_derivatives(); global_temporary_terms = true; if (!no_tmp_terms) computeTemporaryTermsOrdered(); } else { if (!no_tmp_terms) { computeTemporaryTerms(true); if (bytecode) computeTemporaryTermsMapping(temporary_terms, map_idx); } } } void StaticModel::writeStaticMFile(const string &func_name) const { // Writing comments and function definition command string filename = func_name + "_static.m"; ofstream output; output.open(filename.c_str(), ios::out | ios::binary); if (!output.is_open()) { cerr << "ERROR: Can't open file " << filename << " for writing" << endl; exit(EXIT_FAILURE); } output << "function [residual, g1, g2, g3] = " << func_name + "_static(y, x, params)" << endl << "%" << endl << "% Status : Computes static model for Dynare" << endl << "%" << endl << "% Inputs : " << endl << "% y [M_.endo_nbr by 1] double vector of endogenous variables in declaration order" << endl << "% x [M_.exo_nbr by 1] double vector of exogenous variables in declaration order" << endl << "% params [M_.param_nbr by 1] double vector of parameter values in declaration order" << endl << "%" << endl << "% Outputs:" << endl << "% residual [M_.endo_nbr by 1] double vector of residuals of the static model equations " << endl << "% in order of declaration of the equations." << endl << "% Dynare may prepend or append auxiliary equations, see M_.aux_vars" << endl << "% g1 [M_.endo_nbr by M_.endo_nbr] double Jacobian matrix of the static model equations;" << endl << "% columns: variables in declaration order" << endl << "% rows: equations in order of declaration" << endl << "% g2 [M_.endo_nbr by (M_.endo_nbr)^2] double Hessian matrix of the static model equations;" << endl << "% columns: variables in declaration order" << endl << "% rows: equations in order of declaration" << endl << "% g3 [M_.endo_nbr by (M_.endo_nbr)^3] double Third derivatives matrix of the static model equations;" << endl << "% columns: variables in declaration order" << endl << "% rows: equations in order of declaration" << endl << "%" << endl << "%" << endl << "% Warning : this file is generated automatically by Dynare" << endl << "% from model file (.mod)" << endl << endl; writeStaticModel(output, false, false); output << "end" << endl; output.close(); } void StaticModel::writeStaticModel(ostream &StaticOutput, bool use_dll, bool julia) const { ostringstream model_local_vars_output; // Used for storing model local vars ostringstream model_output; // Used for storing model ostringstream jacobian_output; // Used for storing jacobian equations ostringstream hessian_output; // Used for storing Hessian equations ostringstream third_derivatives_output; // Used for storing third order derivatives equations ostringstream for_sym; ExprNodeOutputType output_type = (use_dll ? oCStaticModel : julia ? oJuliaStaticModel : oMatlabStaticModel); deriv_node_temp_terms_t tef_terms; temporary_terms_t temp_term_empty; temporary_terms_t temp_term_union = temporary_terms_res; temporary_terms_t temp_term_union_m_1; writeModelLocalVariables(model_local_vars_output, output_type, tef_terms); writeTemporaryTerms(temporary_terms_res, temp_term_union_m_1, model_output, output_type, tef_terms); writeModelEquations(model_output, output_type); int nrows = equations.size(); int JacobianColsNbr = symbol_table.endo_nbr(); int hessianColsNbr = JacobianColsNbr*JacobianColsNbr; // Write Jacobian w.r. to endogenous only temp_term_union_m_1 = temp_term_union; temp_term_union.insert(temporary_terms_g1.begin(), temporary_terms_g1.end()); if (!first_derivatives.empty()) if (julia) writeTemporaryTerms(temp_term_union, temp_term_empty, jacobian_output, output_type, tef_terms); else writeTemporaryTerms(temp_term_union, temp_term_union_m_1, jacobian_output, output_type, tef_terms); for (first_derivatives_t::const_iterator it = first_derivatives.begin(); it != first_derivatives.end(); it++) { int eq = it->first.first; int symb_id = getSymbIDByDerivID(it->first.second); expr_t d1 = it->second; jacobianHelper(jacobian_output, eq, symbol_table.getTypeSpecificID(symb_id), output_type); jacobian_output << "="; d1->writeOutput(jacobian_output, output_type, temp_term_union, tef_terms); jacobian_output << ";" << endl; } int g2ncols = symbol_table.endo_nbr() * symbol_table.endo_nbr(); // Write Hessian w.r. to endogenous only (only if 2nd order derivatives have been computed) temp_term_union_m_1 = temp_term_union; temp_term_union.insert(temporary_terms_g2.begin(), temporary_terms_g2.end()); if (!second_derivatives.empty()) if (julia) writeTemporaryTerms(temp_term_union, temp_term_empty, hessian_output, output_type, tef_terms); else writeTemporaryTerms(temp_term_union, temp_term_union_m_1, hessian_output, output_type, tef_terms); int k = 0; // Keep the line of a 2nd derivative in v2 for (second_derivatives_t::const_iterator it = second_derivatives.begin(); it != second_derivatives.end(); it++) { int eq = it->first.first; int symb_id1 = getSymbIDByDerivID(it->first.second.first); int symb_id2 = getSymbIDByDerivID(it->first.second.second); expr_t d2 = it->second; int tsid1 = symbol_table.getTypeSpecificID(symb_id1); int tsid2 = symbol_table.getTypeSpecificID(symb_id2); int col_nb = tsid1*symbol_table.endo_nbr()+tsid2; int col_nb_sym = tsid2*symbol_table.endo_nbr()+tsid1; if (output_type == oJuliaDynamicModel) { for_sym << "g2[" << eq + 1 << "," << col_nb + 1 << "]"; hessian_output << " @inbounds " << for_sym.str() << " = "; d2->writeOutput(hessian_output, output_type, temp_term_union, tef_terms); hessian_output << endl; } else { sparseHelper(2, hessian_output, k, 0, output_type); hessian_output << "=" << eq + 1 << ";" << endl; sparseHelper(2, hessian_output, k, 1, output_type); hessian_output << "=" << col_nb + 1 << ";" << endl; sparseHelper(2, hessian_output, k, 2, output_type); hessian_output << "="; d2->writeOutput(hessian_output, output_type, temp_term_union, tef_terms); hessian_output << ";" << endl; k++; } // Treating symetric elements if (symb_id1 != symb_id2) if (output_type == oJuliaDynamicModel) hessian_output << " @inbounds g2[" << eq + 1 << "," << col_nb_sym + 1 << "] = " << for_sym.str() << endl; else { sparseHelper(2, hessian_output, k, 0, output_type); hessian_output << "=" << eq + 1 << ";" << endl; sparseHelper(2, hessian_output, k, 1, output_type); hessian_output << "=" << col_nb_sym + 1 << ";" << endl; sparseHelper(2, hessian_output, k, 2, output_type); hessian_output << "="; sparseHelper(2, hessian_output, k-1, 2, output_type); hessian_output << ";" << endl; k++; } } // Writing third derivatives temp_term_union_m_1 = temp_term_union; temp_term_union.insert(temporary_terms_g3.begin(), temporary_terms_g3.end()); if (!third_derivatives.empty()) if (julia) writeTemporaryTerms(temp_term_union, temp_term_empty, third_derivatives_output, output_type, tef_terms); else writeTemporaryTerms(temp_term_union, temp_term_union_m_1, third_derivatives_output, output_type, tef_terms); k = 0; // Keep the line of a 3rd derivative in v3 for (third_derivatives_t::const_iterator it = third_derivatives.begin(); it != third_derivatives.end(); it++) { int eq = it->first.first; int var1 = it->first.second.first; int var2 = it->first.second.second.first; int var3 = it->first.second.second.second; expr_t d3 = it->second; int id1 = getSymbIDByDerivID(var1); int id2 = getSymbIDByDerivID(var2); int id3 = getSymbIDByDerivID(var3); // Reference column number for the g3 matrix int ref_col = id1 * hessianColsNbr + id2 * JacobianColsNbr + id3; if (output_type == oJuliaDynamicModel) { for_sym << "g3[" << eq + 1 << "," << ref_col + 1 << "]"; third_derivatives_output << " @inbounds " << for_sym.str() << " = "; d3->writeOutput(third_derivatives_output, output_type, temp_term_union, tef_terms); third_derivatives_output << endl; } else { sparseHelper(3, third_derivatives_output, k, 0, output_type); third_derivatives_output << "=" << eq + 1 << ";" << endl; sparseHelper(3, third_derivatives_output, k, 1, output_type); third_derivatives_output << "=" << ref_col + 1 << ";" << endl; sparseHelper(3, third_derivatives_output, k, 2, output_type); third_derivatives_output << "="; d3->writeOutput(third_derivatives_output, output_type, temp_term_union, tef_terms); third_derivatives_output << ";" << endl; } // Compute the column numbers for the 5 other permutations of (id1,id2,id3) // and store them in a set (to avoid duplicates if two indexes are equal) set cols; cols.insert(id1 * hessianColsNbr + id3 * JacobianColsNbr + id2); cols.insert(id2 * hessianColsNbr + id1 * JacobianColsNbr + id3); cols.insert(id2 * hessianColsNbr + id3 * JacobianColsNbr + id1); cols.insert(id3 * hessianColsNbr + id1 * JacobianColsNbr + id2); cols.insert(id3 * hessianColsNbr + id2 * JacobianColsNbr + id1); int k2 = 1; // Keeps the offset of the permutation relative to k for (set::iterator it2 = cols.begin(); it2 != cols.end(); it2++) if (*it2 != ref_col) if (output_type == oJuliaDynamicModel) third_derivatives_output << " @inbounds g3[" << eq + 1 << "," << *it2 + 1 << "] = " << for_sym.str() << endl; else { sparseHelper(3, third_derivatives_output, k+k2, 0, output_type); third_derivatives_output << "=" << eq + 1 << ";" << endl; sparseHelper(3, third_derivatives_output, k+k2, 1, output_type); third_derivatives_output << "=" << *it2 + 1 << ";" << endl; sparseHelper(3, third_derivatives_output, k+k2, 2, output_type); third_derivatives_output << "="; sparseHelper(3, third_derivatives_output, k, 2, output_type); third_derivatives_output << ";" << endl; k2++; } k += k2; } if (output_type == oMatlabStaticModel) { // Check that we don't have more than 32 nested parenthesis because Matlab does not suppor this. See Issue #1201 map tmp_paren_vars; bool message_printed = false; fixNestedParenthesis(model_output, tmp_paren_vars, message_printed); fixNestedParenthesis(model_local_vars_output, tmp_paren_vars, message_printed); fixNestedParenthesis(jacobian_output, tmp_paren_vars, message_printed); fixNestedParenthesis(hessian_output, tmp_paren_vars, message_printed); fixNestedParenthesis(third_derivatives_output, tmp_paren_vars, message_printed); StaticOutput << "residual = zeros( " << equations.size() << ", 1);" << endl << endl << "%" << endl << "% Model equations" << endl << "%" << endl << endl << model_local_vars_output.str() << model_output.str() << "if ~isreal(residual)" << endl << " residual = real(residual)+imag(residual).^2;" << endl << "end" << endl << "if nargout >= 2," << endl << " g1 = zeros(" << equations.size() << ", " << symbol_table.endo_nbr() << ");" << endl << endl << " %" << endl << " % Jacobian matrix" << endl << " %" << endl << endl << jacobian_output.str() << " if ~isreal(g1)" << endl << " g1 = real(g1)+2*imag(g1);" << endl << " end" << endl << "if nargout >= 3," << endl << " %" << endl << " % Hessian matrix" << endl << " %" << endl << endl; if (second_derivatives.size()) StaticOutput << " v2 = zeros(" << NNZDerivatives[1] << ",3);" << endl << hessian_output.str() << " g2 = sparse(v2(:,1),v2(:,2),v2(:,3)," << equations.size() << "," << g2ncols << ");" << endl; else StaticOutput << " g2 = sparse([],[],[]," << equations.size() << "," << g2ncols << ");" << endl; // Initialize g3 matrix StaticOutput << "if nargout >= 4," << endl << " %" << endl << " % Third order derivatives" << endl << " %" << endl << endl; int ncols = hessianColsNbr * JacobianColsNbr; if (third_derivatives.size()) StaticOutput << " v3 = zeros(" << NNZDerivatives[2] << ",3);" << endl << third_derivatives_output.str() << " g3 = sparse(v3(:,1),v3(:,2),v3(:,3)," << nrows << "," << ncols << ");" << endl; else // Either 3rd derivatives is all zero, or we didn't compute it StaticOutput << " g3 = sparse([],[],[]," << nrows << "," << ncols << ");" << endl; StaticOutput << "end" << endl << "end" << endl << "end" << endl; } else if (output_type == oCStaticModel) { StaticOutput << "void Static(double *y, double *x, int nb_row_x, double *params, double *residual, double *g1, double *v2)" << endl << "{" << endl << " double lhs, rhs;" << endl << endl << " /* Residual equations */" << endl << model_local_vars_output.str() << model_output.str() << " /* Jacobian */" << endl << " if (g1 == NULL)" << endl << " return;" << endl << endl << jacobian_output.str() << endl; if (second_derivatives.size()) StaticOutput << " /* Hessian for endogenous and exogenous variables */" << endl << " if (v2 == NULL)" << endl << " return;" << endl << endl << hessian_output.str() << endl; if (third_derivatives.size()) StaticOutput << " /* Third derivatives for endogenous and exogenous variables */" << endl << " if (v3 == NULL)" << endl << " return;" << endl << endl << third_derivatives_output.str() << endl; } else { ostringstream comments; comments << "## Function Arguments" << endl << endl << "## Input" << endl << " 1 y: Array{Float64, length(model.endo), 1} Vector of endogenous variables in declaration order" << endl << " 2 x: Array{Float64, length(model.exo), 1} Vector of exogenous variables in declaration order" << endl << " 3 params: Array{Float64, length(model.param), 1} Vector of parameter values in declaration order" << endl << endl << "## Output" << endl << " 4 residual: Array(Float64, model.eq_nbr, 1) Vector of residuals of the static model equations" << endl << " in order of declaration of the equations." << endl << " Dynare may prepend auxiliary equations, see model.aux_vars" << endl; StaticOutput << "function static!(y::Vector{Float64}, x::Vector{Float64}, " << "params::Vector{Float64}," << endl << " residual::Vector{Float64})" << endl << "#=" << endl << comments.str() << "=#" << endl << " @assert length(y) == " << symbol_table.endo_nbr() << endl << " @assert length(x) == " << symbol_table.exo_nbr() << endl << " @assert length(params) == " << symbol_table.param_nbr() << endl << " @assert length(residual) == " << equations.size() << endl << " #" << endl << " # Model equations" << endl << " #" << endl << model_local_vars_output.str() << model_output.str() << "if ~isreal(residual)" << endl << " residual = real(residual)+imag(residual).^2;" << endl << "end" << endl << "end" << endl << endl << "function static!(y::Vector{Float64}, x::Vector{Float64}, " << "params::Vector{Float64}," << endl << " residual::Vector{Float64}, g1::Matrix{Float64})" << endl; comments << " 5 g1: Array(Float64, model.eq_nbr, length(model.endo)) Jacobian matrix of the static model equations;" << endl << " columns: variables in declaration order" << endl << " rows: equations in order of declaration" << endl; StaticOutput << "#=" << endl << comments.str() << "=#" << endl << " @assert size(g1) == (" << equations.size() << ", " << symbol_table.endo_nbr() << ")" << endl << " fill!(g1, 0.0)" << endl << " static!(y, x, params, residual)" << endl << model_local_vars_output.str() << " #" << endl << " # Jacobian matrix" << endl << " #" << endl << jacobian_output.str() << " if ~isreal(g1)" << endl << " g1 = real(g1)+2*imag(g1);" << endl << " end" << endl << "end" << endl << endl << "function static!(y::Vector{Float64}, x::Vector{Float64}, " << "params::Vector{Float64}," << endl << " residual::Vector{Float64}, g1::Matrix{Float64}, " << "g2::Matrix{Float64})" << endl; comments << " 6 g2: spzeros(model.eq_nbr, length(model.endo)^2) Hessian matrix of the static model equations;" << endl << " columns: variables in declaration order" << endl << " rows: equations in order of declaration" << endl; StaticOutput << "#=" << endl << comments.str() << "=#" << endl << " @assert size(g2) == (" << equations.size() << ", " << g2ncols << ")" << endl << " fill!(g2, 0.0)" << endl << " static!(y, x, params, residual, g1)" << endl; if (second_derivatives.size()) StaticOutput << model_local_vars_output.str() << " #" << endl << " # Hessian matrix" << endl << " #" << endl << hessian_output.str(); // Initialize g3 matrix int ncols = hessianColsNbr * JacobianColsNbr; StaticOutput << "end" << endl << endl << "function static!(y::Vector{Float64}, x::Vector{Float64}, " << "params::Vector{Float64}," << endl << " residual::Vector{Float64}, g1::Matrix{Float64}, " << "g2::Matrix{Float64}," << endl << " g3::Matrix{Float64})" << endl; comments << " 7 g3: spzeros(model.eq_nbr, length(model.endo)^3) Third derivatives matrix of the static model equations;" << endl << " columns: variables in declaration order" << endl << " rows: equations in order of declaration" << endl; StaticOutput << "#=" << endl << comments.str() << "=#" << endl << " @assert size(g3) == (" << nrows << ", " << ncols << ")" << endl << " fill!(g3, 0.0)" << endl << " static!(y, x, params, residual, g1, g2)" << endl; if (third_derivatives.size()) StaticOutput << model_local_vars_output.str() << " #" << endl << " # Third order derivatives" << endl << " #" << endl << third_derivatives_output.str(); StaticOutput << "end" << endl; } } void StaticModel::writeStaticCFile(const string &func_name) const { // Writing comments and function definition command string filename = func_name + "_static.c"; string filename_mex = func_name + "_static_mex.c"; ofstream output; output.open(filename.c_str(), ios::out | ios::binary); if (!output.is_open()) { cerr << "ERROR: Can't open file " << filename << " for writing" << endl; exit(EXIT_FAILURE); } output << "/*" << endl << " * " << filename << " : Computes static model for Dynare" << endl << " *" << endl << " * Warning : this file is generated automatically by Dynare" << endl << " * from model file (.mod)" << endl << endl << " */" << endl #if defined(_WIN32) || defined(__CYGWIN32__) || defined(__MINGW32__) << "#ifdef _MSC_VER" << endl << "#define _USE_MATH_DEFINES" << endl << "#endif" << endl #endif << "#include " << endl; if (external_functions_table.get_total_number_of_unique_model_block_external_functions()) // External Matlab function, implies Static function will call mex output << "#include \"mex.h\"" << endl; else output << "#include " << endl; output << "#define max(a, b) (((a) > (b)) ? (a) : (b))" << endl << "#define min(a, b) (((a) > (b)) ? (b) : (a))" << endl; // Write function definition if oPowerDeriv is used writePowerDerivCHeader(output); writeNormcdfCHeader(output); // Writing the function body writeStaticModel(output, true, false); output << "}" << endl << endl; writePowerDeriv(output); writeNormcdf(output); output.close(); output.open(filename_mex.c_str(), ios::out | ios::binary); if (!output.is_open()) { cerr << "ERROR: Can't open file " << filename_mex << " for writing" << endl; exit(EXIT_FAILURE); } // Writing the gateway routine output << "/*" << endl << " * " << filename_mex << " : The gateway routine used to call the Static function " << "located in " << filename << endl << " *" << endl << " * Warning : this file is generated automatically by Dynare" << endl << " * from model file (.mod)" << endl << endl << " */" << endl << endl << "#include \"mex.h\"" << endl << endl << "void Static(double *y, double *x, int nb_row_x, double *params, double *residual, double *g1, double *v2);" << endl << "void mexFunction(int nlhs, mxArray *plhs[], int nrhs, const mxArray *prhs[])" << endl << "{" << endl << " double *y, *x, *params;" << endl << " double *residual, *g1, *v2;" << endl << " int nb_row_x;" << endl << endl << " /* Create a pointer to the input matrix y. */" << endl << " y = mxGetPr(prhs[0]);" << endl << endl << " /* Create a pointer to the input matrix x. */" << endl << " x = mxGetPr(prhs[1]);" << endl << endl << " /* Create a pointer to the input matrix params. */" << endl << " params = mxGetPr(prhs[2]);" << endl << endl << " /* Gets number of rows of matrix x. */" << endl << " nb_row_x = mxGetM(prhs[1]);" << endl << endl << " residual = NULL;" << endl << " if (nlhs >= 1)" << endl << " {" << endl << " /* Set the output pointer to the output matrix residual. */" << endl << " plhs[0] = mxCreateDoubleMatrix(" << equations.size() << ",1, mxREAL);" << endl << " /* Create a C pointer to a copy of the output matrix residual. */" << endl << " residual = mxGetPr(plhs[0]);" << endl << " }" << endl << endl << " g1 = NULL;" << endl << " if (nlhs >= 2)" << endl << " {" << endl << " /* Set the output pointer to the output matrix g1. */" << endl << " plhs[1] = mxCreateDoubleMatrix(" << equations.size() << ", " << symbol_table.endo_nbr() << ", mxREAL);" << endl << " /* Create a C pointer to a copy of the output matrix g1. */" << endl << " g1 = mxGetPr(plhs[1]);" << endl << " }" << endl << endl << " v2 = NULL;" << endl << " if (nlhs >= 3)" << endl << " {" << endl << " /* Set the output pointer to the output matrix v2. */" << endl << " plhs[2] = mxCreateDoubleMatrix(" << NNZDerivatives[1] << ", " << 3 << ", mxREAL);" << endl << " v2 = mxGetPr(plhs[2]);" << endl << " }" << endl << endl << " /* Call the C subroutines. */" << endl << " Static(y, x, nb_row_x, params, residual, g1, v2);" << endl << "}" << endl << endl; output.close(); } void StaticModel::writeStaticJuliaFile(const string &basename) const { string filename = basename + "Static.jl"; ofstream output; output.open(filename.c_str(), ios::out | ios::binary); if (!output.is_open()) { cerr << "ERROR: Can't open file " << filename << " for writing" << endl; exit(EXIT_FAILURE); } output << "module " << basename << "Static" << endl << "#" << endl << "# NB: this file was automatically generated by Dynare" << endl << "# from " << basename << ".mod" << endl << "#" << endl << "using Utils" << endl << endl << "export static!" << endl << endl; writeStaticModel(output, false, true); output << "end" << endl; } void StaticModel::writeStaticFile(const string &basename, bool block, bool bytecode, bool use_dll, bool julia) const { int r; //assert(block); #ifdef _WIN32 r = mkdir(basename.c_str()); #else r = mkdir(basename.c_str(), 0777); #endif if (r < 0 && errno != EEXIST) { perror("ERROR"); exit(EXIT_FAILURE); } if (block && bytecode) writeModelEquationsCode_Block(basename + "_static", basename, map_idx, map_idx2); else if (!block && bytecode) writeModelEquationsCode(basename + "_static", basename, map_idx); else if (block && !bytecode) { chdir(basename.c_str()); writeModelEquationsOrdered_M(basename + "_static"); chdir(".."); writeStaticBlockMFSFile(basename); } else if (use_dll) writeStaticCFile(basename); else if (julia) writeStaticJuliaFile(basename); else writeStaticMFile(basename); writeSetAuxiliaryVariables(basename, julia); } bool StaticModel::exoPresentInEqs() const { for (int i = 0; i < (int) equations.size(); i++) if (equations[i]->containsExogenous()) return true; return false; } void StaticModel::writeStaticBlockMFSFile(const string &basename) const { string filename = basename + "_static.m"; ofstream output; output.open(filename.c_str(), ios::out | ios::binary); if (!output.is_open()) { cerr << "ERROR: Can't open file " << filename << " for writing" << endl; exit(EXIT_FAILURE); } string func_name = basename + "_static"; output << "function [residual, g1, y, var_index] = " << func_name << "(nblock, y, x, params)" << endl << " residual = [];" << endl << " g1 = [];" << endl << " var_index = [];\n" << endl << " switch nblock" << endl; unsigned int nb_blocks = getNbBlocks(); for (int b = 0; b < (int) nb_blocks; b++) { set local_var; output << " case " << b+1 << endl; BlockSimulationType simulation_type = getBlockSimulationType(b); if (simulation_type == EVALUATE_BACKWARD || simulation_type == EVALUATE_FORWARD) { output << " y_tmp = " << func_name << "_" << b+1 << "(y, x, params);\n"; ostringstream tmp; for (int i = 0; i < (int) getBlockSize(b); i++) tmp << " " << getBlockVariableID(b, i)+1; output << " var_index = [" << tmp.str() << "];\n"; output << " residual = y(var_index) - y_tmp(var_index);\n"; output << " y = y_tmp;\n"; } else output << " [residual, y, g1] = " << func_name << "_" << b+1 << "(y, x, params);\n"; } output << " end" << endl << "end" << endl; output.close(); } void StaticModel::writeOutput(ostream &output, bool block) const { if (!block) return; unsigned int nb_blocks = getNbBlocks(); for (int b = 0; b < (int) nb_blocks; b++) { BlockSimulationType simulation_type = getBlockSimulationType(b); unsigned int block_size = getBlockSize(b); ostringstream tmp_s, tmp_s_eq; tmp_s.str(""); tmp_s_eq.str(""); for (unsigned int i = 0; i < block_size; i++) { tmp_s << " " << getBlockVariableID(b, i)+1; tmp_s_eq << " " << getBlockEquationID(b, i)+1; } output << "block_structure_stat.block(" << b+1 << ").Simulation_Type = " << simulation_type << ";\n"; output << "block_structure_stat.block(" << b+1 << ").endo_nbr = " << block_size << ";\n"; output << "block_structure_stat.block(" << b+1 << ").mfs = " << getBlockMfs(block) << ";\n"; output << "block_structure_stat.block(" << b+1 << ").equation = [" << tmp_s_eq.str() << "];\n"; output << "block_structure_stat.block(" << b+1 << ").variable = [" << tmp_s.str() << "];\n"; } output << "M_.block_structure_stat.block = block_structure_stat.block;\n"; string cst_s; int nb_endo = symbol_table.endo_nbr(); output << "M_.block_structure_stat.variable_reordered = ["; for (int i = 0; i < nb_endo; i++) output << " " << variable_reordered[i]+1; output << "];\n"; output << "M_.block_structure_stat.equation_reordered = ["; for (int i = 0; i < nb_endo; i++) output << " " << equation_reordered[i]+1; output << "];\n"; map, int> row_incidence; for (first_derivatives_t::const_iterator it = first_derivatives.begin(); it != first_derivatives.end(); it++) { int deriv_id = it->first.second; if (getTypeByDerivID(deriv_id) == eEndogenous) { int eq = it->first.first; int symb = getSymbIDByDerivID(deriv_id); int var = symbol_table.getTypeSpecificID(symb); //int lag = getLagByDerivID(deriv_id); row_incidence[make_pair(eq, var)] = 1; } } output << "M_.block_structure_stat.incidence.sparse_IM = ["; for (map, int>::const_iterator it = row_incidence.begin(); it != row_incidence.end(); it++) { output << it->first.first+1 << " " << it->first.second+1 << ";\n"; } output << "];\n"; } SymbolType StaticModel::getTypeByDerivID(int deriv_id) const throw (UnknownDerivIDException) { if (deriv_id < symbol_table.endo_nbr()) return eEndogenous; else if (deriv_id < symbol_table.endo_nbr() + symbol_table.param_nbr()) return eParameter; else throw UnknownDerivIDException(); } int StaticModel::getLagByDerivID(int deriv_id) const throw (UnknownDerivIDException) { return 0; } int StaticModel::getSymbIDByDerivID(int deriv_id) const throw (UnknownDerivIDException) { if (deriv_id < symbol_table.endo_nbr()) return symbol_table.getID(eEndogenous, deriv_id); else if (deriv_id < symbol_table.endo_nbr() + symbol_table.param_nbr()) return symbol_table.getID(eParameter, deriv_id - symbol_table.endo_nbr()); else throw UnknownDerivIDException(); } int StaticModel::getDerivID(int symb_id, int lag) const throw (UnknownDerivIDException) { if (symbol_table.getType(symb_id) == eEndogenous) return symbol_table.getTypeSpecificID(symb_id); else if (symbol_table.getType(symb_id) == eParameter) return symbol_table.getTypeSpecificID(symb_id) + symbol_table.endo_nbr(); else return -1; } void StaticModel::addAllParamDerivId(set &deriv_id_set) { for (int i = 0; i < symbol_table.param_nbr(); i++) deriv_id_set.insert(i + symbol_table.endo_nbr()); } map >, pair >, int> StaticModel::get_Derivatives(int block) { map >, pair >, int> Derivatives; Derivatives.clear(); int block_size = getBlockSize(block); int block_nb_recursive = block_size - getBlockMfs(block); int lag = 0; for (int eq = 0; eq < block_size; eq++) { int eqr = getBlockEquationID(block, eq); for (int var = 0; var < block_size; var++) { int varr = getBlockVariableID(block, var); if (dynamic_jacobian.find(make_pair(lag, make_pair(eqr, varr))) != dynamic_jacobian.end()) { bool OK = true; map >, pair >, int>::const_iterator its = Derivatives.find(make_pair(make_pair(lag, make_pair(eq, var)), make_pair(eqr, varr))); if (its != Derivatives.end()) { if (its->second == 2) OK = false; } if (OK) { if (getBlockEquationType(block, eq) == E_EVALUATE_S && eq < block_nb_recursive) //It's a normalized equation, we have to recompute the derivative using chain rule derivative function Derivatives[make_pair(make_pair(lag, make_pair(eq, var)), make_pair(eqr, varr))] = 1; else //It's a feedback equation we can use the derivatives Derivatives[make_pair(make_pair(lag, make_pair(eq, var)), make_pair(eqr, varr))] = 0; } if (var < block_nb_recursive) { int eqs = getBlockEquationID(block, var); for (int vars = block_nb_recursive; vars < block_size; vars++) { int varrs = getBlockVariableID(block, vars); //A new derivative needs to be computed using the chain rule derivative function (a feedback variable appears in a recursive equation) if (Derivatives.find(make_pair(make_pair(lag, make_pair(var, vars)), make_pair(eqs, varrs))) != Derivatives.end()) Derivatives[make_pair(make_pair(lag, make_pair(eq, vars)), make_pair(eqr, varrs))] = 2; } } } } } return (Derivatives); } void StaticModel::computeChainRuleJacobian(blocks_derivatives_t &blocks_derivatives) { map recursive_variables; unsigned int nb_blocks = getNbBlocks(); blocks_derivatives = blocks_derivatives_t(nb_blocks); for (unsigned int block = 0; block < nb_blocks; block++) { block_derivatives_equation_variable_laglead_nodeid_t tmp_derivatives; recursive_variables.clear(); BlockSimulationType simulation_type = getBlockSimulationType(block); int block_size = getBlockSize(block); int block_nb_mfs = getBlockMfs(block); int block_nb_recursives = block_size - block_nb_mfs; if (simulation_type == SOLVE_TWO_BOUNDARIES_COMPLETE || simulation_type == SOLVE_TWO_BOUNDARIES_SIMPLE) { blocks_derivatives.push_back(block_derivatives_equation_variable_laglead_nodeid_t(0)); for (int i = 0; i < block_nb_recursives; i++) { if (getBlockEquationType(block, i) == E_EVALUATE_S) recursive_variables[getDerivID(symbol_table.getID(eEndogenous, getBlockVariableID(block, i)), 0)] = getBlockEquationRenormalizedExpr(block, i); else recursive_variables[getDerivID(symbol_table.getID(eEndogenous, getBlockVariableID(block, i)), 0)] = getBlockEquationExpr(block, i); } map >, pair >, int> Derivatives = get_Derivatives(block); map >, pair >, int>::const_iterator it = Derivatives.begin(); for (int i = 0; i < (int) Derivatives.size(); i++) { int Deriv_type = it->second; pair >, pair > it_l(it->first); it++; int lag = it_l.first.first; int eq = it_l.first.second.first; int var = it_l.first.second.second; int eqr = it_l.second.first; int varr = it_l.second.second; if (Deriv_type == 0) first_chain_rule_derivatives[make_pair(eqr, make_pair(varr, lag))] = first_derivatives[make_pair(eqr, getDerivID(symbol_table.getID(eEndogenous, varr), lag))]; else if (Deriv_type == 1) first_chain_rule_derivatives[make_pair(eqr, make_pair(varr, lag))] = (equation_type_and_normalized_equation[eqr].second)->getChainRuleDerivative(getDerivID(symbol_table.getID(eEndogenous, varr), lag), recursive_variables); else if (Deriv_type == 2) { if (getBlockEquationType(block, eq) == E_EVALUATE_S && eq < block_nb_recursives) first_chain_rule_derivatives[make_pair(eqr, make_pair(varr, lag))] = (equation_type_and_normalized_equation[eqr].second)->getChainRuleDerivative(getDerivID(symbol_table.getID(eEndogenous, varr), lag), recursive_variables); else first_chain_rule_derivatives[make_pair(eqr, make_pair(varr, lag))] = equations[eqr]->getChainRuleDerivative(getDerivID(symbol_table.getID(eEndogenous, varr), lag), recursive_variables); } tmp_derivatives.push_back(make_pair(make_pair(eq, var), make_pair(lag, first_chain_rule_derivatives[make_pair(eqr, make_pair(varr, lag))]))); } } else { blocks_derivatives.push_back(block_derivatives_equation_variable_laglead_nodeid_t(0)); for (int i = 0; i < block_nb_recursives; i++) { if (getBlockEquationType(block, i) == E_EVALUATE_S) recursive_variables[getDerivID(symbol_table.getID(eEndogenous, getBlockVariableID(block, i)), 0)] = getBlockEquationRenormalizedExpr(block, i); else recursive_variables[getDerivID(symbol_table.getID(eEndogenous, getBlockVariableID(block, i)), 0)] = getBlockEquationExpr(block, i); } for (int eq = block_nb_recursives; eq < block_size; eq++) { int eqr = getBlockEquationID(block, eq); for (int var = block_nb_recursives; var < block_size; var++) { int varr = getBlockVariableID(block, var); expr_t d1 = equations[eqr]->getChainRuleDerivative(getDerivID(symbol_table.getID(eEndogenous, varr), 0), recursive_variables); if (d1 == Zero) continue; first_chain_rule_derivatives[make_pair(eqr, make_pair(varr, 0))] = d1; tmp_derivatives.push_back( make_pair(make_pair(eq, var), make_pair(0, first_chain_rule_derivatives[make_pair(eqr, make_pair(varr, 0))]))); } } } blocks_derivatives[block] = tmp_derivatives; } } void StaticModel::collect_block_first_order_derivatives() { //! vector for an equation or a variable indicates the block number vector equation_2_block, variable_2_block; unsigned int nb_blocks = getNbBlocks(); equation_2_block = vector(equation_reordered.size()); variable_2_block = vector(variable_reordered.size()); for (unsigned int block = 0; block < nb_blocks; block++) { unsigned int block_size = getBlockSize(block); for (unsigned int i = 0; i < block_size; i++) { equation_2_block[getBlockEquationID(block, i)] = block; variable_2_block[getBlockVariableID(block, i)] = block; } } derivative_endo = vector(nb_blocks); endo_max_leadlag_block = vector >(nb_blocks, make_pair(0, 0)); max_leadlag_block = vector >(nb_blocks, make_pair(0, 0)); for (first_derivatives_t::iterator it2 = first_derivatives.begin(); it2 != first_derivatives.end(); it2++) { int eq = it2->first.first; int var = symbol_table.getTypeSpecificID(getSymbIDByDerivID(it2->first.second)); int lag = 0; int block_eq = equation_2_block[eq]; int block_var = variable_2_block[var]; max_leadlag_block[block_eq] = make_pair(0, 0); max_leadlag_block[block_eq] = make_pair(0, 0); endo_max_leadlag_block[block_eq] = make_pair(0, 0); endo_max_leadlag_block[block_eq] = make_pair(0, 0); derivative_t tmp_derivative; lag_var_t lag_var; if (getTypeByDerivID(it2->first.second) == eEndogenous && block_eq == block_var) { tmp_derivative = derivative_endo[block_eq]; tmp_derivative[make_pair(lag, make_pair(eq, var))] = first_derivatives[make_pair(eq, getDerivID(symbol_table.getID(eEndogenous, var), lag))]; derivative_endo[block_eq] = tmp_derivative; } } } void StaticModel::writeChainRuleDerivative(ostream &output, int eqr, int varr, int lag, ExprNodeOutputType output_type, const temporary_terms_t &temporary_terms) const { map >, expr_t>::const_iterator it = first_chain_rule_derivatives.find(make_pair(eqr, make_pair(varr, lag))); if (it != first_chain_rule_derivatives.end()) (it->second)->writeOutput(output, output_type, temporary_terms); else output << 0; } void StaticModel::writeLatexFile(const string &basename, bool write_equation_tags) const { writeLatexModelFile(basename + "_static", oLatexStaticModel, write_equation_tags); } void StaticModel::writeAuxVarInitval(ostream &output, ExprNodeOutputType output_type) const { for (int i = 0; i < (int) aux_equations.size(); i++) { dynamic_cast(aux_equations[i])->writeOutput(output, output_type); output << ";" << endl; } } void StaticModel::writeSetAuxiliaryVariables(const string &basename, const bool julia) const { ostringstream output_func_body; writeAuxVarRecursiveDefinitions(output_func_body, oMatlabStaticModel); if (output_func_body.str().empty()) return; string func_name = basename + "_set_auxiliary_variables"; string filename = julia ? func_name + ".jl" : func_name + ".m"; string comment = julia ? "#" : "%"; ofstream output; output.open(filename.c_str(), ios::out | ios::binary); if (!output.is_open()) { cerr << "ERROR: Can't open file " << filename << " for writing" << endl; exit(EXIT_FAILURE); } output << "function y = " << func_name + "(y, x, params)" << endl << comment << endl << comment << " Status : Computes static model for Dynare" << endl << comment << endl << comment << " Warning : this file is generated automatically by Dynare" << endl << comment << " from model file (.mod)" << endl << endl << output_func_body.str(); } void StaticModel::writeAuxVarRecursiveDefinitions(ostream &output, ExprNodeOutputType output_type) const { deriv_node_temp_terms_t tef_terms; temporary_terms_t temporary_terms; for (int i = 0; i < (int) aux_equations.size(); i++) if (dynamic_cast(aux_equations[i])->containsExternalFunction()) dynamic_cast(aux_equations[i])->writeExternalFunctionOutput(output, oMatlabStaticModel, temporary_terms, tef_terms); for (int i = 0; i < (int) aux_equations.size(); i++) { dynamic_cast(aux_equations[i]->substituteStaticAuxiliaryDefinition())->writeOutput(output, output_type, temporary_terms, tef_terms); output << ";" << endl; } } void StaticModel::writeLatexAuxVarRecursiveDefinitions(ostream &output) const { deriv_node_temp_terms_t tef_terms; temporary_terms_t temporary_terms; for (int i = 0; i < (int) aux_equations.size(); i++) if (dynamic_cast(aux_equations[i])->containsExternalFunction()) dynamic_cast(aux_equations[i])->writeExternalFunctionOutput(output, oLatexStaticModel, temporary_terms, tef_terms); for (int i = 0; i < (int) aux_equations.size(); i++) { output << "\\begin{dmath}" << endl; dynamic_cast(aux_equations[i]->substituteStaticAuxiliaryDefinition())->writeOutput(output, oLatexStaticModel); output << endl << "\\end{dmath}" << endl; } } void StaticModel::writeJsonAuxVarRecursiveDefinitions(ostream &output) const { deriv_node_temp_terms_t tef_terms; temporary_terms_t temporary_terms; for (int i = 0; i < (int) aux_equations.size(); i++) if (dynamic_cast(aux_equations[i])->containsExternalFunction()) { vector efout; dynamic_cast(aux_equations[i])->writeJsonExternalFunctionOutput(efout, temporary_terms, tef_terms, false); for (vector::const_iterator it = efout.begin(); it != efout.end(); it++) { if (it != efout.begin()) output << ", "; output << *it; } } for (int i = 0; i < (int) aux_equations.size(); i++) { output << ", {\"lhs\": \""; aux_equations[i]->get_arg1()->writeJsonOutput(output, temporary_terms, tef_terms, false); output << "\", \"rhs\": \""; dynamic_cast(aux_equations[i]->substituteStaticAuxiliaryDefinition())->get_arg2()->writeJsonOutput(output, temporary_terms, tef_terms, false); output << "\"}"; } } void StaticModel::writeParamsDerivativesFile(const string &basename, bool julia) const { if (!residuals_params_derivatives.size() && !residuals_params_second_derivatives.size() && !jacobian_params_derivatives.size() && !jacobian_params_second_derivatives.size() && !hessian_params_derivatives.size()) return; ExprNodeOutputType output_type = (julia ? oJuliaStaticModel : oMatlabStaticModel); ostringstream model_local_vars_output; // Used for storing model local vars ostringstream model_output; // Used for storing model ostringstream jacobian_output; // Used for storing jacobian equations ostringstream hessian_output; // Used for storing Hessian equations ostringstream hessian1_output; // Used for storing Hessian equations ostringstream third_derivs_output; // Used for storing third order derivatives equations ostringstream third_derivs1_output; // Used for storing third order derivatives equations deriv_node_temp_terms_t tef_terms; writeModelLocalVariables(model_local_vars_output, output_type, tef_terms); temporary_terms_t temp_terms_empty; writeTemporaryTerms(params_derivs_temporary_terms, temp_terms_empty, model_output, output_type, tef_terms); for (first_derivatives_t::const_iterator it = residuals_params_derivatives.begin(); it != residuals_params_derivatives.end(); it++) { int eq = it->first.first; int param = it->first.second; expr_t d1 = it->second; int param_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(param)) + 1; jacobian_output << "rp" << LEFT_ARRAY_SUBSCRIPT(output_type) << eq+1 << ", " << param_col << RIGHT_ARRAY_SUBSCRIPT(output_type) << " = "; d1->writeOutput(jacobian_output, output_type, params_derivs_temporary_terms, tef_terms); jacobian_output << ";" << endl; } for (second_derivatives_t::const_iterator it = jacobian_params_derivatives.begin(); it != jacobian_params_derivatives.end(); it++) { int eq = it->first.first; int var = it->first.second.first; int param = it->first.second.second; expr_t d2 = it->second; int var_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(var)) + 1; int param_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(param)) + 1; hessian_output << "gp" << LEFT_ARRAY_SUBSCRIPT(output_type) << eq+1 << ", " << var_col << ", " << param_col << RIGHT_ARRAY_SUBSCRIPT(output_type) << " = "; d2->writeOutput(hessian_output, output_type, params_derivs_temporary_terms, tef_terms); hessian_output << ";" << endl; } int i = 1; for (second_derivatives_t::const_iterator it = residuals_params_second_derivatives.begin(); it != residuals_params_second_derivatives.end(); ++it, i++) { int eq = it->first.first; int param1 = it->first.second.first; int param2 = it->first.second.second; expr_t d2 = it->second; int param1_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(param1)) + 1; int param2_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(param2)) + 1; hessian1_output << "rpp" << LEFT_ARRAY_SUBSCRIPT(output_type) << i << ",1" << RIGHT_ARRAY_SUBSCRIPT(output_type) << "=" << eq+1 << ";" << endl << "rpp" << LEFT_ARRAY_SUBSCRIPT(output_type) << i << ",2" << RIGHT_ARRAY_SUBSCRIPT(output_type) << "=" << param1_col << ";" << endl << "rpp" << LEFT_ARRAY_SUBSCRIPT(output_type) << i << ",3" << RIGHT_ARRAY_SUBSCRIPT(output_type) << "=" << param2_col << ";" << endl << "rpp" << LEFT_ARRAY_SUBSCRIPT(output_type) << i << ",4" << RIGHT_ARRAY_SUBSCRIPT(output_type) << "="; d2->writeOutput(hessian1_output, output_type, params_derivs_temporary_terms, tef_terms); hessian1_output << ";" << endl; } i = 1; for (third_derivatives_t::const_iterator it = jacobian_params_second_derivatives.begin(); it != jacobian_params_second_derivatives.end(); ++it, i++) { int eq = it->first.first; int var = it->first.second.first; int param1 = it->first.second.second.first; int param2 = it->first.second.second.second; expr_t d2 = it->second; int var_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(var)) + 1; int param1_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(param1)) + 1; int param2_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(param2)) + 1; third_derivs_output << "gpp" << LEFT_ARRAY_SUBSCRIPT(output_type) << i << ",1" << RIGHT_ARRAY_SUBSCRIPT(output_type) << "=" << eq+1 << ";" << endl << "gpp" << LEFT_ARRAY_SUBSCRIPT(output_type) << i << ",2" << RIGHT_ARRAY_SUBSCRIPT(output_type) << "=" << var_col << ";" << endl << "gpp" << LEFT_ARRAY_SUBSCRIPT(output_type) << i << ",3" << RIGHT_ARRAY_SUBSCRIPT(output_type) << "=" << param1_col << ";" << endl << "gpp" << LEFT_ARRAY_SUBSCRIPT(output_type) << i << ",4" << RIGHT_ARRAY_SUBSCRIPT(output_type) << "=" << param2_col << ";" << endl << "gpp" << LEFT_ARRAY_SUBSCRIPT(output_type) << i << ",5" << RIGHT_ARRAY_SUBSCRIPT(output_type) << "="; d2->writeOutput(third_derivs_output, output_type, params_derivs_temporary_terms, tef_terms); third_derivs_output << ";" << endl; } i = 1; for (third_derivatives_t::const_iterator it = hessian_params_derivatives.begin(); it != hessian_params_derivatives.end(); ++it, i++) { int eq = it->first.first; int var1 = it->first.second.first; int var2 = it->first.second.second.first; int param = it->first.second.second.second; expr_t d2 = it->second; int var1_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(var1)) + 1; int var2_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(var2)) + 1; int param_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(param)) + 1; third_derivs1_output << "hp" << LEFT_ARRAY_SUBSCRIPT(output_type) << i << ",1" << RIGHT_ARRAY_SUBSCRIPT(output_type) << "=" << eq+1 << ";" << endl << "hp" << LEFT_ARRAY_SUBSCRIPT(output_type) << i << ",2" << RIGHT_ARRAY_SUBSCRIPT(output_type) << "=" << var1_col << ";" << endl << "hp" << LEFT_ARRAY_SUBSCRIPT(output_type) << i << ",3" << RIGHT_ARRAY_SUBSCRIPT(output_type) << "=" << var2_col << ";" << endl << "hp" << LEFT_ARRAY_SUBSCRIPT(output_type) << i << ",4" << RIGHT_ARRAY_SUBSCRIPT(output_type) << "=" << param_col << ";" << endl << "hp" << LEFT_ARRAY_SUBSCRIPT(output_type) << i << ",5" << RIGHT_ARRAY_SUBSCRIPT(output_type) << "="; d2->writeOutput(third_derivs1_output, output_type, params_derivs_temporary_terms, tef_terms); third_derivs1_output << ";" << endl; } ofstream paramsDerivsFile; string filename = julia ? basename + "StaticParamsDerivs.jl" : basename + "_static_params_derivs.m"; paramsDerivsFile.open(filename.c_str(), ios::out | ios::binary); if (!paramsDerivsFile.is_open()) { cerr << "ERROR: Can't open file " << filename << " for writing" << endl; exit(EXIT_FAILURE); } if (!julia) { // Check that we don't have more than 32 nested parenthesis because Matlab does not suppor this. See Issue #1201 map tmp_paren_vars; bool message_printed = false; fixNestedParenthesis(model_output, tmp_paren_vars, message_printed); fixNestedParenthesis(model_local_vars_output, tmp_paren_vars, message_printed); fixNestedParenthesis(jacobian_output, tmp_paren_vars, message_printed); fixNestedParenthesis(hessian_output, tmp_paren_vars, message_printed); fixNestedParenthesis(hessian1_output, tmp_paren_vars, message_printed); fixNestedParenthesis(third_derivs_output, tmp_paren_vars, message_printed); fixNestedParenthesis(third_derivs1_output, tmp_paren_vars, message_printed); paramsDerivsFile << "function [rp, gp, rpp, gpp, hp] = " << basename << "_static_params_derivs(y, x, params)" << endl << "%" << endl << "% Status : Computes derivatives of the static model with respect to the parameters" << endl << "%" << endl << "% Inputs : " << endl << "% y [M_.endo_nbr by 1] double vector of endogenous variables in declaration order" << endl << "% x [M_.exo_nbr by 1] double vector of exogenous variables in declaration order" << endl << "% params [M_.param_nbr by 1] double vector of parameter values in declaration order" << endl << "%" << endl << "% Outputs:" << endl << "% rp [M_.eq_nbr by #params] double Jacobian matrix of static model equations with respect to parameters " << endl << "% Dynare may prepend or append auxiliary equations, see M_.aux_vars" << endl << "% gp [M_.endo_nbr by M_.endo_nbr by #params] double Derivative of the Jacobian matrix of the static model equations with respect to the parameters" << endl << "% rows: variables in declaration order" << endl << "% rows: equations in order of declaration" << endl << "% rpp [#second_order_residual_terms by 4] double Hessian matrix of second derivatives of residuals with respect to parameters;" << endl << "% rows: respective derivative term" << endl << "% 1st column: equation number of the term appearing" << endl << "% 2nd column: number of the first parameter in derivative" << endl << "% 3rd column: number of the second parameter in derivative" << endl << "% 4th column: value of the Hessian term" << endl << "% gpp [#second_order_Jacobian_terms by 5] double Hessian matrix of second derivatives of the Jacobian with respect to the parameters;" << endl << "% rows: respective derivative term" << endl << "% 1st column: equation number of the term appearing" << endl << "% 2nd column: column number of variable in Jacobian of the static model" << endl << "% 3rd column: number of the first parameter in derivative" << endl << "% 4th column: number of the second parameter in derivative" << endl << "% 5th column: value of the Hessian term" << endl << "%" << endl << "%" << endl << "% Warning : this file is generated automatically by Dynare" << endl << "% from model file (.mod)" << endl << endl << model_local_vars_output.str() << model_output.str() << "rp = zeros(" << equations.size() << ", " << symbol_table.param_nbr() << ");" << endl << jacobian_output.str() << "gp = zeros(" << equations.size() << ", " << symbol_table.endo_nbr() << ", " << symbol_table.param_nbr() << ");" << endl << hessian_output.str() << "if nargout >= 3" << endl << "rpp = zeros(" << residuals_params_second_derivatives.size() << ",4);" << endl << hessian1_output.str() << "gpp = zeros(" << jacobian_params_second_derivatives.size() << ",5);" << endl << third_derivs_output.str() << "end" << endl << "if nargout >= 5" << endl << "hp = zeros(" << hessian_params_derivatives.size() << ",5);" << endl << third_derivs1_output.str() << "end" << endl << "end" << endl; } else paramsDerivsFile << "module " << basename << "StaticParamsDerivs" << endl << "#" << endl << "# NB: this file was automatically generated by Dynare" << endl << "# from " << basename << ".mod" << endl << "#" << endl << "export params_derivs" << endl << endl << "function params_derivs(y, x, params)" << endl << model_local_vars_output.str() << model_output.str() << "rp = zeros(" << equations.size() << ", " << symbol_table.param_nbr() << ");" << endl << jacobian_output.str() << "gp = zeros(" << equations.size() << ", " << symbol_table.endo_nbr() << ", " << symbol_table.param_nbr() << ");" << endl << hessian_output.str() << "rpp = zeros(" << residuals_params_second_derivatives.size() << ",4);" << endl << hessian1_output.str() << "gpp = zeros(" << jacobian_params_second_derivatives.size() << ",5);" << endl << third_derivs_output.str() << "hp = zeros(" << hessian_params_derivatives.size() << ",5);" << endl << third_derivs1_output.str() << "(rp, gp, rpp, gpp, hp)" << endl << "end" << endl << "end" << endl; paramsDerivsFile.close(); } void StaticModel::writeJsonOutput(ostream &output) const { writeJsonModelEquations(output, false); } void StaticModel::writeJsonComputingPassOutput(ostream &output, bool writeDetails) const { ostringstream model_local_vars_output; // Used for storing model local vars ostringstream model_output; // Used for storing model ostringstream jacobian_output; // Used for storing jacobian equations ostringstream hessian_output; // Used for storing Hessian equations ostringstream third_derivatives_output; // Used for storing third order derivatives equations deriv_node_temp_terms_t tef_terms; temporary_terms_t temp_term_empty; temporary_terms_t temp_term_union = temporary_terms_res; temporary_terms_t temp_term_union_m_1; string concat = ""; writeJsonModelLocalVariables(model_local_vars_output, tef_terms); writeJsonTemporaryTerms(temporary_terms_res, temp_term_union_m_1, model_output, tef_terms, concat); model_output << ", "; writeJsonModelEquations(model_output, true); int nrows = equations.size(); int JacobianColsNbr = symbol_table.endo_nbr(); int hessianColsNbr = JacobianColsNbr*JacobianColsNbr; // Write Jacobian w.r. to endogenous only temp_term_union_m_1 = temp_term_union; temp_term_union.insert(temporary_terms_g1.begin(), temporary_terms_g1.end()); concat = "jacobian"; writeJsonTemporaryTerms(temp_term_union, temp_term_union_m_1, jacobian_output, tef_terms, concat); jacobian_output << ", \"jacobian\": {" << " \"nrows\": " << nrows << ", \"ncols\": " << JacobianColsNbr << ", \"entries\": ["; for (first_derivatives_t::const_iterator it = first_derivatives.begin(); it != first_derivatives.end(); it++) { if (it != first_derivatives.begin()) jacobian_output << ", "; int eq = it->first.first; int var = it->first.second; int symb_id = getSymbIDByDerivID(var); int col = symbol_table.getTypeSpecificID(symb_id); expr_t d1 = it->second; if (writeDetails) jacobian_output << "{\"eq\": " << eq + 1; else jacobian_output << "{\"row\": " << eq + 1; jacobian_output << ", \"col\": " << col + 1; if (writeDetails) jacobian_output << ", \"var\": \"" << symbol_table.getName(symb_id) << "\""; jacobian_output << ", \"val\": \""; d1->writeJsonOutput(jacobian_output, temp_term_union, tef_terms); jacobian_output << "\"}" << endl; } jacobian_output << "]}"; int g2ncols = symbol_table.endo_nbr() * symbol_table.endo_nbr(); // Write Hessian w.r. to endogenous only (only if 2nd order derivatives have been computed) temp_term_union_m_1 = temp_term_union; temp_term_union.insert(temporary_terms_g2.begin(), temporary_terms_g2.end()); concat = "hessian"; writeJsonTemporaryTerms(temp_term_union, temp_term_union_m_1, hessian_output, tef_terms, concat); hessian_output << ", \"hessian\": {" << " \"nrows\": " << equations.size() << ", \"ncols\": " << g2ncols << ", \"entries\": ["; for (second_derivatives_t::const_iterator it = second_derivatives.begin(); it != second_derivatives.end(); it++) { if (it != second_derivatives.begin()) hessian_output << ", "; int eq = it->first.first; int symb_id1 = getSymbIDByDerivID(it->first.second.first); int symb_id2 = getSymbIDByDerivID(it->first.second.second); expr_t d2 = it->second; int tsid1 = symbol_table.getTypeSpecificID(symb_id1); int tsid2 = symbol_table.getTypeSpecificID(symb_id2); int col = tsid1*symbol_table.endo_nbr()+tsid2; int col_sym = tsid2*symbol_table.endo_nbr()+tsid1; if (writeDetails) hessian_output << "{\"eq\": " << eq + 1; else hessian_output << "{\"row\": " << eq + 1; hessian_output << ", \"col\": [" << col + 1; if (writeDetails) hessian_output << ", \"var1\": \"" << symbol_table.getName(symb_id1) << "\"" << ", \"var2\": \"" << symbol_table.getName(symb_id2) << "\""; if (symb_id1 != symb_id2) hessian_output << ", " << col_sym + 1; hessian_output << "]" << ", \"val\": \""; d2->writeJsonOutput(hessian_output, temp_term_union, tef_terms); hessian_output << "\"}" << endl; } hessian_output << "]}"; // Writing third derivatives temp_term_union_m_1 = temp_term_union; temp_term_union.insert(temporary_terms_g3.begin(), temporary_terms_g3.end()); concat = "third_derivatives"; writeJsonTemporaryTerms(temp_term_union, temp_term_union_m_1, third_derivatives_output, tef_terms, concat); third_derivatives_output << ", \"third_derivative\": {" << " \"nrows\": " << equations.size() << ", \"ncols\": " << hessianColsNbr * JacobianColsNbr << ", \"entries\": ["; for (third_derivatives_t::const_iterator it = third_derivatives.begin(); it != third_derivatives.end(); it++) { if (it != third_derivatives.begin()) third_derivatives_output << ", "; int eq = it->first.first; int var1 = it->first.second.first; int var2 = it->first.second.second.first; int var3 = it->first.second.second.second; expr_t d3 = it->second; if (writeDetails) third_derivatives_output << "{\"eq\": " << eq + 1; else third_derivatives_output << "{\"row\": " << eq + 1; int id1 = getSymbIDByDerivID(var1); int id2 = getSymbIDByDerivID(var2); int id3 = getSymbIDByDerivID(var3); set cols; cols.insert(id1 * hessianColsNbr + id2 * JacobianColsNbr + id3); cols.insert(id1 * hessianColsNbr + id3 * JacobianColsNbr + id2); cols.insert(id2 * hessianColsNbr + id1 * JacobianColsNbr + id3); cols.insert(id2 * hessianColsNbr + id3 * JacobianColsNbr + id1); cols.insert(id3 * hessianColsNbr + id1 * JacobianColsNbr + id2); cols.insert(id3 * hessianColsNbr + id2 * JacobianColsNbr + id1); third_derivatives_output << ", \"col\": ["; for (set::iterator it2 = cols.begin(); it2 != cols.end(); it2++) { if (it2 != cols.begin()) third_derivatives_output << ", "; third_derivatives_output << *it2 + 1; } third_derivatives_output << "]"; if (writeDetails) third_derivatives_output << ", \"var1\": \"" << symbol_table.getName(getSymbIDByDerivID(var1)) << "\"" << ", \"var2\": \"" << symbol_table.getName(getSymbIDByDerivID(var2)) << "\"" << ", \"var3\": \"" << symbol_table.getName(getSymbIDByDerivID(var3)) << "\""; third_derivatives_output << ", \"val\": \""; d3->writeJsonOutput(third_derivatives_output, temp_term_union, tef_terms); third_derivatives_output << "\"}" << endl; } third_derivatives_output << "]}"; if (writeDetails) output << "\"static_model\": {"; else output << "\"static_model_simple\": {"; output << model_local_vars_output.str() << ", " << model_output.str() << ", " << jacobian_output.str() << ", " << hessian_output.str() << ", " << third_derivatives_output.str() << "}"; } void StaticModel::writeJsonParamsDerivativesFile(ostream &output, bool writeDetails) const { if (!residuals_params_derivatives.size() && !residuals_params_second_derivatives.size() && !jacobian_params_derivatives.size() && !jacobian_params_second_derivatives.size() && !hessian_params_derivatives.size()) return; ostringstream model_local_vars_output; // Used for storing model local vars ostringstream model_output; // Used for storing model temp vars and equations ostringstream jacobian_output; // Used for storing jacobian equations ostringstream hessian_output; // Used for storing Hessian equations ostringstream hessian1_output; // Used for storing Hessian equations ostringstream third_derivs_output; // Used for storing third order derivatives equations ostringstream third_derivs1_output; // Used for storing third order derivatives equations deriv_node_temp_terms_t tef_terms; writeJsonModelLocalVariables(model_local_vars_output, tef_terms); temporary_terms_t temp_terms_empty; string concat = "all"; writeJsonTemporaryTerms(params_derivs_temporary_terms, temp_terms_empty, model_output, tef_terms, concat); jacobian_output << "\"deriv_wrt_params\": {" << " \"neqs\": " << equations.size() << ", \"nparamcols\": " << symbol_table.param_nbr() << ", \"entries\": ["; for (first_derivatives_t::const_iterator it = residuals_params_derivatives.begin(); it != residuals_params_derivatives.end(); it++) { if (it != residuals_params_derivatives.begin()) jacobian_output << ", "; int eq = it->first.first; int param = it->first.second; expr_t d1 = it->second; int param_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(param)) + 1; if (writeDetails) jacobian_output << "{\"eq\": " << eq + 1; else jacobian_output << "{\"row\": " << eq + 1; if (writeDetails) jacobian_output << ", \"param_col\": " << param_col; jacobian_output << ", \"param\": \"" << symbol_table.getName(getSymbIDByDerivID(param)) << "\""; jacobian_output << ", \"val\": \""; d1->writeJsonOutput(jacobian_output, params_derivs_temporary_terms, tef_terms); jacobian_output << "\"}" << endl; } jacobian_output << "]}"; hessian_output << "\"deriv_jacobian_wrt_params\": {" << " \"neqs\": " << equations.size() << ", \"nvarcols\": " << symbol_table.endo_nbr() << ", \"nparamcols\": " << symbol_table.param_nbr() << ", \"entries\": ["; for (second_derivatives_t::const_iterator it = jacobian_params_derivatives.begin(); it != jacobian_params_derivatives.end(); it++) { if (it != jacobian_params_derivatives.begin()) hessian_output << ", "; int eq = it->first.first; int var = it->first.second.first; int param = it->first.second.second; expr_t d2 = it->second; int var_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(var)) + 1; int param_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(param)) + 1; if (writeDetails) hessian_output << "{\"eq\": " << eq + 1; else hessian_output << "{\"row\": " << eq + 1; if (writeDetails) hessian_output << ", \"var\": \"" << symbol_table.getName(getSymbIDByDerivID(var)) << "\"" << ", \"param\": \"" << symbol_table.getName(getSymbIDByDerivID(param)) << "\""; hessian_output << ", \"var_col\": " << var_col << ", \"param_col\": " << param_col << ", \"val\": \""; d2->writeJsonOutput(hessian_output, params_derivs_temporary_terms, tef_terms); hessian_output << "\"}" << endl; } hessian_output << "]}"; hessian1_output << "\"second_deriv_residuals_wrt_params\": {" << " \"nrows\": " << equations.size() << ", \"nparam1cols\": " << symbol_table.param_nbr() << ", \"nparam2cols\": " << symbol_table.param_nbr() << ", \"entries\": ["; for (second_derivatives_t::const_iterator it = residuals_params_second_derivatives.begin(); it != residuals_params_second_derivatives.end(); ++it) { if (it != residuals_params_second_derivatives.begin()) hessian1_output << ", "; int eq = it->first.first; int param1 = it->first.second.first; int param2 = it->first.second.second; expr_t d2 = it->second; int param1_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(param1)) + 1; int param2_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(param2)) + 1; if (writeDetails) hessian1_output << "{\"eq\": " << eq + 1; else hessian1_output << "{\"row\": " << eq + 1; hessian1_output << ", \"param1_col\": " << param1_col << ", \"param2_col\": " << param2_col; if (writeDetails) hessian1_output << ", \"param1\": \"" << symbol_table.getName(getSymbIDByDerivID(param1)) << "\"" << ", \"param2\": \"" << symbol_table.getName(getSymbIDByDerivID(param2)) << "\""; hessian1_output << ", \"val\": \""; d2->writeJsonOutput(hessian1_output, params_derivs_temporary_terms, tef_terms); hessian1_output << "\"}" << endl; } hessian1_output << "]}"; third_derivs_output << "\"second_deriv_jacobian_wrt_params\": {" << " \"neqs\": " << equations.size() << ", \"nvarcols\": " << symbol_table.endo_nbr() << ", \"nparam1cols\": " << symbol_table.param_nbr() << ", \"nparam2cols\": " << symbol_table.param_nbr() << ", \"entries\": ["; for (third_derivatives_t::const_iterator it = jacobian_params_second_derivatives.begin(); it != jacobian_params_second_derivatives.end(); ++it) { if (it != jacobian_params_second_derivatives.begin()) third_derivs_output << ", "; int eq = it->first.first; int var = it->first.second.first; int param1 = it->first.second.second.first; int param2 = it->first.second.second.second; expr_t d2 = it->second; int var_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(var)) + 1; int param1_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(param1)) + 1; int param2_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(param2)) + 1; if (writeDetails) third_derivs_output << "{\"eq\": " << eq + 1; else third_derivs_output << "{\"row\": " << eq + 1; third_derivs_output << ", \"var_col\": " << var_col << ", \"param1_col\": " << param1_col << ", \"param2_col\": " << param2_col; if (writeDetails) third_derivs_output << ", \"var\": \"" << symbol_table.getName(var) << "\"" << ", \"param1\": \"" << symbol_table.getName(getSymbIDByDerivID(param1)) << "\"" << ", \"param2\": \"" << symbol_table.getName(getSymbIDByDerivID(param2)) << "\""; third_derivs_output << ", \"val\": \""; d2->writeJsonOutput(third_derivs_output, params_derivs_temporary_terms, tef_terms); third_derivs_output << "\"}" << endl; } third_derivs_output << "]}" << endl; third_derivs1_output << "\"derivative_hessian_wrt_params\": {" << " \"neqs\": " << equations.size() << ", \"nvar1cols\": " << symbol_table.endo_nbr() << ", \"nvar2cols\": " << symbol_table.endo_nbr() << ", \"nparamcols\": " << symbol_table.param_nbr() << ", \"entries\": ["; for (third_derivatives_t::const_iterator it = hessian_params_derivatives.begin(); it != hessian_params_derivatives.end(); ++it) { if (it != hessian_params_derivatives.begin()) third_derivs1_output << ", "; int eq = it->first.first; int var1 = it->first.second.first; int var2 = it->first.second.second.first; int param = it->first.second.second.second; expr_t d2 = it->second; int var1_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(var1)) + 1; int var2_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(var2)) + 1; int param_col = symbol_table.getTypeSpecificID(getSymbIDByDerivID(param)) + 1; if (writeDetails) third_derivs1_output << "{\"eq\": " << eq + 1; else third_derivs1_output << "{\"row\": " << eq + 1; third_derivs1_output << ", \"var1_col\": " << var1_col << ", \"var2_col\": " << var2_col << ", \"param_col\": " << param_col; if (writeDetails) third_derivs1_output << ", \"var1\": \"" << symbol_table.getName(getSymbIDByDerivID(var1)) << "\"" << ", \"var2\": \"" << symbol_table.getName(getSymbIDByDerivID(var2)) << "\"" << ", \"param1\": \"" << symbol_table.getName(getSymbIDByDerivID(param)) << "\""; third_derivs1_output << ", \"val\": \""; d2->writeJsonOutput(third_derivs1_output, params_derivs_temporary_terms, tef_terms); third_derivs1_output << "\"}" << endl; } third_derivs1_output << "]}" << endl; if (writeDetails) output << "\"static_model_params_derivative\": {"; else output << "\"static_model_params_derivatives_simple\": {"; output << model_local_vars_output.str() << ", " << model_output.str() << ", " << jacobian_output.str() << ", " << hessian_output.str() << ", " << hessian1_output.str() << ", " << third_derivs_output.str() << ", " << third_derivs1_output.str() << "}"; }