# flake8: noqaq import os import subprocess import argparse from parameterisations.parameterise_magnet_kink import parameterise_magnet_kink from parameterisations.parameterise_track_model import parameterise_track_model from parameterisations.parameterise_search_window import parameterise_search_window from parameterisations.parameterise_field_integral import parameterise_field_integral from parameterisations.parameterise_hough_histogram import parameterise_hough_histogram from parameterisations.utils.preselection import preselection from parameterisations.train_forward_ghost_mlps import ( train_default_forward_ghost_mlp, train_veloUT_forward_ghost_mlp, ) from parameterisations.residual_train_matching_ghost_mlps_electron import ( res_train_matching_ghost_mlp, ) from parameterisations.train_matching_ghost_mlps_electron import ( train_matching_ghost_mlp, ) from parameterisations.utils.parse_tmva_matrix_to_array_electron import ( parse_tmva_matrix_to_array, ) parser = argparse.ArgumentParser() parser.add_argument( "--field-params", action="store_true", help="Enables determination of magnetic field parameterisations.", ) parser.add_argument( "--forward-weights", action="store_true", help="Enables determination of weights used by neural networks.", ) parser.add_argument( "--matching-weights", action="store_true", default=True, help="Enables determination of weights used by neural networks.", ) parser.add_argument( "-r", "--residuals", action="store_true", help="Trains neural network with residual tracks.", ) parser.add_argument( "-p", "--prepare", action="store_true", default=True, help="Enables preparation of data for matching.", ) parser.add_argument( "--prepare-params-data", action="store_true", help="Enables preparation of data for magnetic field parameterisations.", ) parser.add_argument( "--prepare-weights-data", action="store_true", help="Enables preparation of data for NN weight determination.", ) args = parser.parse_args() selected = "nn_electron_training/data/param_data_selected.root" if args.prepare_params_data: selection = "chi2_comb < 5 && pt > 10 && p > 1500 && p < 100000 && pid != 11" print("Run selection cuts =", selection) selected_md = preselection( cuts=selection, input_file="data/param_data_MD.root", ) selected_mu = preselection( cuts=selection, input_file="data/param_data_MU.root", ) merge_cmd = ["hadd", "-fk", selected, selected_md, selected_mu] print("Concatenate polarities ...") subprocess.run(merge_cmd, check=True) cpp_files = [] if args.field_params: print("Parameterise magnet kink position ...") cpp_files.append(parameterise_magnet_kink(input_file=selected)) print("Parameterise track model ...") cpp_files.append(parameterise_track_model(input_file=selected)) selected_all_p = "nn_electron_training/data/param_data_selected_all_p.root" if args.prepare_params_data: selection_all_momenta = "chi2_comb < 5 && pid != 11" print() print("Run selection cuts =", selection_all_momenta) selected_md_all_p = preselection( cuts=selection_all_momenta, outfile_postfix="selected_all_p", input_file="data/param_data_MD.root", ) selected_mu_all_p = preselection( cuts=selection_all_momenta, outfile_postfix="selected_all_p", input_file="data/param_data_MU.root", ) merge_cmd = ["hadd", "-fk", selected_all_p, selected_md_all_p, selected_mu_all_p] print("Concatenate polarities ...") subprocess.run(merge_cmd, check=True) if args.field_params: print("Parameterise search window ...") cpp_files.append(parameterise_search_window(input_file=selected_all_p)) print("Parameterise magnetic field integral ...") cpp_files.append(parameterise_field_integral(input_file=selected_all_p)) print("Parameterise Hough histogram binning ...") cpp_files.append(parameterise_hough_histogram(input_file=selected_all_p)) ###>>> ghost_data = "data/ghost_data.root" if args.prepare_weights_data: merge_cmd = [ "hadd", "-fk", ghost_data, "data/ghost_data_B.root", "data/ghost_data_D.root", ] print("Concatenate decays for neural network training ...") subprocess.run(merge_cmd, check=True) ###<<< if args.forward_weights: train_default_forward_ghost_mlp(prepare_data=args.prepare_weights_data) # FIXME: use env variable instead os.chdir(os.path.dirname(os.path.realpath(__file__))) train_veloUT_forward_ghost_mlp(prepare_data=args.prepare_weights_data) # this ensures that the directory is correct os.chdir(os.path.dirname(os.path.realpath(__file__))) cpp_files += parse_tmva_matrix_to_array( [ "nn_electron_training/result/GhostNNDataSet/weights/TMVAClassification_default_forward_ghost_mlp.class.C", "nn_electron_training/result/GhostNNDataSet/weights/TMVAClassification_veloUT_forward_ghost_mlp.class.C", ], ) ### ###>>> ### if args.matching_weights and args.residuals: os.chdir(os.path.dirname(os.path.realpath(__file__))) res_train_matching_ghost_mlp( prepare_data=args.prepare, input_file="data/ghost_data_B.root", tree_name="PrMatchNN_3e224c41.PrMCDebugMatchToolNN/MVAInputAndOutput", # e6feac0d, B: 3e224c41, B res: 1e13cc7e, D: 8cb154ca exclude_electrons=False, only_electrons=True, residuals="PrMatchNN_1e13cc7e.PrMCDebugMatchToolNN/MVAInputAndOutput", outdir="nn_electron_training", n_train_signal=0, n_train_bkg=20e3, n_test_signal=1e3, n_test_bkg=5e3, ) # this ensures that the directory is correct os.chdir(os.path.dirname(os.path.realpath(__file__))) cpp_files += parse_tmva_matrix_to_array( [ "nn_electron_training/result/MatchNNDataSet/weights/TMVAClassification_matching_mlp.class.C", ], simd_type=True, ) if args.matching_weights and not args.residuals: os.chdir(os.path.dirname(os.path.realpath(__file__))) train_matching_ghost_mlp( prepare_data=args.prepare, input_file="data/ghost_data_B_new_vars_default_weights.root", tree_name="PrMatchNN_3e224c41.PrMCDebugMatchToolNN/MVAInputAndOutput", # e6feac0d, B: 3e224c41, B res: 1e13cc7e, D: 8cb154ca exclude_electrons=False, only_electrons=True, outdir="nn_electron_training", n_train_signal=100e3, n_train_bkg=200e3, n_test_signal=20e3, n_test_bkg=40e3, ) # this ensures that the directory is correct os.chdir(os.path.dirname(os.path.realpath(__file__))) cpp_files += parse_tmva_matrix_to_array( [ "nn_electron_training/result/MatchNNDataSet/weights/TMVAClassification_matching_mlp.class.C", ], simd_type=True, ) ### ###<<< ### for file in cpp_files: subprocess.run( [ "clang-format", "-i", f"{file}", ], )