Mercurial > repos > bgruening > sklearn_numeric_clustering
view search_model_validation.py @ 43:03105463db24 draft
"planemo upload for repository https://github.com/bgruening/galaxytools/tree/master/tools/sklearn commit d970dae980fbe349414fc0889f719d875d999c5b"
author | bgruening |
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date | Fri, 27 Aug 2021 09:28:31 +0000 |
parents | 156835c25f62 |
children | 0e4066f5751d |
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import argparse import collections import json import os import pickle import sys import warnings import imblearn import joblib import numpy as np import pandas as pd import skrebate from galaxy_ml.utils import (clean_params, get_cv, get_main_estimator, get_module, get_scoring, load_model, read_columns, SafeEval, try_get_attr) from scipy.io import mmread from sklearn import (cluster, decomposition, feature_selection, kernel_approximation, model_selection, preprocessing) from sklearn.exceptions import FitFailedWarning from sklearn.model_selection import _search, _validation from sklearn.model_selection._validation import _score, cross_validate _fit_and_score = try_get_attr("galaxy_ml.model_validations", "_fit_and_score") setattr(_search, "_fit_and_score", _fit_and_score) setattr(_validation, "_fit_and_score", _fit_and_score) N_JOBS = int(os.environ.get("GALAXY_SLOTS", 1)) # handle disk cache CACHE_DIR = os.path.join(os.getcwd(), "cached") del os NON_SEARCHABLE = ("n_jobs", "pre_dispatch", "memory", "_path", "nthread", "callbacks") def _eval_search_params(params_builder): search_params = {} for p in params_builder["param_set"]: search_list = p["sp_list"].strip() if search_list == "": continue param_name = p["sp_name"] if param_name.lower().endswith(NON_SEARCHABLE): print( "Warning: `%s` is not eligible for search and was " "omitted!" % param_name ) continue if not search_list.startswith(":"): safe_eval = SafeEval(load_scipy=True, load_numpy=True) ev = safe_eval(search_list) search_params[param_name] = ev else: # Have `:` before search list, asks for estimator evaluatio safe_eval_es = SafeEval(load_estimators=True) search_list = search_list[1:].strip() # TODO maybe add regular express check ev = safe_eval_es(search_list) preprocessings = ( preprocessing.StandardScaler(), preprocessing.Binarizer(), preprocessing.MaxAbsScaler(), preprocessing.Normalizer(), preprocessing.MinMaxScaler(), preprocessing.PolynomialFeatures(), preprocessing.RobustScaler(), feature_selection.SelectKBest(), feature_selection.GenericUnivariateSelect(), feature_selection.SelectPercentile(), feature_selection.SelectFpr(), feature_selection.SelectFdr(), feature_selection.SelectFwe(), feature_selection.VarianceThreshold(), decomposition.FactorAnalysis(random_state=0), decomposition.FastICA(random_state=0), decomposition.IncrementalPCA(), decomposition.KernelPCA(random_state=0, n_jobs=N_JOBS), decomposition.LatentDirichletAllocation(random_state=0, n_jobs=N_JOBS), decomposition.MiniBatchDictionaryLearning( random_state=0, n_jobs=N_JOBS ), decomposition.MiniBatchSparsePCA(random_state=0, n_jobs=N_JOBS), decomposition.NMF(random_state=0), decomposition.PCA(random_state=0), decomposition.SparsePCA(random_state=0, n_jobs=N_JOBS), decomposition.TruncatedSVD(random_state=0), kernel_approximation.Nystroem(random_state=0), kernel_approximation.RBFSampler(random_state=0), kernel_approximation.AdditiveChi2Sampler(), kernel_approximation.SkewedChi2Sampler(random_state=0), cluster.FeatureAgglomeration(), skrebate.ReliefF(n_jobs=N_JOBS), skrebate.SURF(n_jobs=N_JOBS), skrebate.SURFstar(n_jobs=N_JOBS), skrebate.MultiSURF(n_jobs=N_JOBS), skrebate.MultiSURFstar(n_jobs=N_JOBS), imblearn.under_sampling.ClusterCentroids(random_state=0, n_jobs=N_JOBS), imblearn.under_sampling.CondensedNearestNeighbour( random_state=0, n_jobs=N_JOBS ), imblearn.under_sampling.EditedNearestNeighbours( random_state=0, n_jobs=N_JOBS ), imblearn.under_sampling.RepeatedEditedNearestNeighbours( random_state=0, n_jobs=N_JOBS ), imblearn.under_sampling.AllKNN(random_state=0, n_jobs=N_JOBS), imblearn.under_sampling.InstanceHardnessThreshold( random_state=0, n_jobs=N_JOBS ), imblearn.under_sampling.NearMiss(random_state=0, n_jobs=N_JOBS), imblearn.under_sampling.NeighbourhoodCleaningRule( random_state=0, n_jobs=N_JOBS ), imblearn.under_sampling.OneSidedSelection( random_state=0, n_jobs=N_JOBS ), imblearn.under_sampling.RandomUnderSampler(random_state=0), imblearn.under_sampling.TomekLinks(random_state=0, n_jobs=N_JOBS), imblearn.over_sampling.ADASYN(random_state=0, n_jobs=N_JOBS), imblearn.over_sampling.RandomOverSampler(random_state=0), imblearn.over_sampling.SMOTE(random_state=0, n_jobs=N_JOBS), imblearn.over_sampling.SVMSMOTE(random_state=0, n_jobs=N_JOBS), imblearn.over_sampling.BorderlineSMOTE(random_state=0, n_jobs=N_JOBS), imblearn.over_sampling.SMOTENC( categorical_features=[], random_state=0, n_jobs=N_JOBS ), imblearn.combine.SMOTEENN(random_state=0), imblearn.combine.SMOTETomek(random_state=0), ) newlist = [] for obj in ev: if obj is None: newlist.append(None) elif obj == "all_0": newlist.extend(preprocessings[0:35]) elif obj == "sk_prep_all": # no KernalCenter() newlist.extend(preprocessings[0:7]) elif obj == "fs_all": newlist.extend(preprocessings[7:14]) elif obj == "decomp_all": newlist.extend(preprocessings[14:25]) elif obj == "k_appr_all": newlist.extend(preprocessings[25:29]) elif obj == "reb_all": newlist.extend(preprocessings[30:35]) elif obj == "imb_all": newlist.extend(preprocessings[35:54]) elif type(obj) is int and -1 < obj < len(preprocessings): newlist.append(preprocessings[obj]) elif hasattr(obj, "get_params"): # user uploaded object if "n_jobs" in obj.get_params(): newlist.append(obj.set_params(n_jobs=N_JOBS)) else: newlist.append(obj) else: sys.exit("Unsupported estimator type: %r" % (obj)) search_params[param_name] = newlist return search_params def _handle_X_y( estimator, params, infile1, infile2, loaded_df={}, ref_seq=None, intervals=None, targets=None, fasta_path=None, ): """read inputs Params ------- estimator : estimator object params : dict Galaxy tool parameter inputs infile1 : str File path to dataset containing features infile2 : str File path to dataset containing target values loaded_df : dict Contains loaded DataFrame objects with file path as keys ref_seq : str File path to dataset containing genome sequence file interval : str File path to dataset containing interval file targets : str File path to dataset compressed target bed file fasta_path : str File path to dataset containing fasta file Returns ------- estimator : estimator object after setting new attributes X : numpy array y : numpy array """ estimator_params = estimator.get_params() input_type = params["input_options"]["selected_input"] # tabular input if input_type == "tabular": header = "infer" if params["input_options"]["header1"] else None column_option = params["input_options"]["column_selector_options_1"][ "selected_column_selector_option" ] if column_option in [ "by_index_number", "all_but_by_index_number", "by_header_name", "all_but_by_header_name", ]: c = params["input_options"]["column_selector_options_1"]["col1"] else: c = None df_key = infile1 + repr(header) if df_key in loaded_df: infile1 = loaded_df[df_key] df = pd.read_csv(infile1, sep="\t", header=header, parse_dates=True) loaded_df[df_key] = df X = read_columns(df, c=c, c_option=column_option).astype(float) # sparse input elif input_type == "sparse": X = mmread(open(infile1, "r")) # fasta_file input elif input_type == "seq_fasta": pyfaidx = get_module("pyfaidx") sequences = pyfaidx.Fasta(fasta_path) n_seqs = len(sequences.keys()) X = np.arange(n_seqs)[:, np.newaxis] for param in estimator_params.keys(): if param.endswith("fasta_path"): estimator.set_params(**{param: fasta_path}) break else: raise ValueError( "The selected estimator doesn't support " "fasta file input! Please consider using " "KerasGBatchClassifier with " "FastaDNABatchGenerator/FastaProteinBatchGenerator " "or having GenomeOneHotEncoder/ProteinOneHotEncoder " "in pipeline!" ) elif input_type == "refseq_and_interval": path_params = { "data_batch_generator__ref_genome_path": ref_seq, "data_batch_generator__intervals_path": intervals, "data_batch_generator__target_path": targets, } estimator.set_params(**path_params) n_intervals = sum(1 for line in open(intervals)) X = np.arange(n_intervals)[:, np.newaxis] # Get target y header = "infer" if params["input_options"]["header2"] else None column_option = params["input_options"]["column_selector_options_2"][ "selected_column_selector_option2" ] if column_option in [ "by_index_number", "all_but_by_index_number", "by_header_name", "all_but_by_header_name", ]: c = params["input_options"]["column_selector_options_2"]["col2"] else: c = None df_key = infile2 + repr(header) if df_key in loaded_df: infile2 = loaded_df[df_key] else: infile2 = pd.read_csv(infile2, sep="\t", header=header, parse_dates=True) loaded_df[df_key] = infile2 y = read_columns( infile2, c=c, c_option=column_option, sep="\t", header=header, parse_dates=True ) if len(y.shape) == 2 and y.shape[1] == 1: y = y.ravel() if input_type == "refseq_and_interval": estimator.set_params(data_batch_generator__features=y.ravel().tolist()) y = None # end y return estimator, X, y def _do_outer_cv(searcher, X, y, outer_cv, scoring, error_score="raise", outfile=None): """Do outer cross-validation for nested CV Parameters ---------- searcher : object SearchCV object X : numpy array Containing features y : numpy array Target values or labels outer_cv : int or CV splitter Control the cv splitting scoring : object Scorer error_score: str, float or numpy float Whether to raise fit error or return an value outfile : str File path to store the restuls """ if error_score == "raise": rval = cross_validate( searcher, X, y, scoring=scoring, cv=outer_cv, n_jobs=N_JOBS, verbose=0, error_score=error_score, ) else: warnings.simplefilter("always", FitFailedWarning) with warnings.catch_warnings(record=True) as w: try: rval = cross_validate( searcher, X, y, scoring=scoring, cv=outer_cv, n_jobs=N_JOBS, verbose=0, error_score=error_score, ) except ValueError: pass for warning in w: print(repr(warning.message)) keys = list(rval.keys()) for k in keys: if k.startswith("test"): rval["mean_" + k] = np.mean(rval[k]) rval["std_" + k] = np.std(rval[k]) if k.endswith("time"): rval.pop(k) rval = pd.DataFrame(rval) rval = rval[sorted(rval.columns)] rval.to_csv(path_or_buf=outfile, sep="\t", header=True, index=False) def _do_train_test_split_val( searcher, X, y, params, error_score="raise", primary_scoring=None, groups=None, outfile=None, ): """do train test split, searchCV validates on the train and then use the best_estimator_ to evaluate on the test Returns -------- Fitted SearchCV object """ train_test_split = try_get_attr("galaxy_ml.model_validations", "train_test_split") split_options = params["outer_split"] # splits if split_options["shuffle"] == "stratified": split_options["labels"] = y X, X_test, y, y_test = train_test_split(X, y, **split_options) elif split_options["shuffle"] == "group": if groups is None: raise ValueError( "No group based CV option was choosen for " "group shuffle!" ) split_options["labels"] = groups if y is None: X, X_test, groups, _ = train_test_split(X, groups, **split_options) else: X, X_test, y, y_test, groups, _ = train_test_split( X, y, groups, **split_options ) else: if split_options["shuffle"] == "None": split_options["shuffle"] = None X, X_test, y, y_test = train_test_split(X, y, **split_options) if error_score == "raise": searcher.fit(X, y, groups=groups) else: warnings.simplefilter("always", FitFailedWarning) with warnings.catch_warnings(record=True) as w: try: searcher.fit(X, y, groups=groups) except ValueError: pass for warning in w: print(repr(warning.message)) scorer_ = searcher.scorer_ if isinstance(scorer_, collections.Mapping): is_multimetric = True else: is_multimetric = False best_estimator_ = getattr(searcher, "best_estimator_") # TODO Solve deep learning models in pipeline if best_estimator_.__class__.__name__ == "KerasGBatchClassifier": test_score = best_estimator_.evaluate( X_test, scorer=scorer_, is_multimetric=is_multimetric ) else: test_score = _score( best_estimator_, X_test, y_test, scorer_, is_multimetric=is_multimetric ) if not is_multimetric: test_score = {primary_scoring: test_score} for key, value in test_score.items(): test_score[key] = [value] result_df = pd.DataFrame(test_score) result_df.to_csv(path_or_buf=outfile, sep="\t", header=True, index=False) return searcher def main( inputs, infile_estimator, infile1, infile2, outfile_result, outfile_object=None, outfile_weights=None, groups=None, ref_seq=None, intervals=None, targets=None, fasta_path=None, ): """ Parameter --------- inputs : str File path to galaxy tool parameter infile_estimator : str File path to estimator infile1 : str File path to dataset containing features infile2 : str File path to dataset containing target values outfile_result : str File path to save the results, either cv_results or test result outfile_object : str, optional File path to save searchCV object outfile_weights : str, optional File path to save model weights groups : str File path to dataset containing groups labels ref_seq : str File path to dataset containing genome sequence file intervals : str File path to dataset containing interval file targets : str File path to dataset compressed target bed file fasta_path : str File path to dataset containing fasta file """ warnings.simplefilter("ignore") # store read dataframe object loaded_df = {} with open(inputs, "r") as param_handler: params = json.load(param_handler) # Override the refit parameter params["search_schemes"]["options"]["refit"] = ( True if params["save"] != "nope" else False ) with open(infile_estimator, "rb") as estimator_handler: estimator = load_model(estimator_handler) optimizer = params["search_schemes"]["selected_search_scheme"] optimizer = getattr(model_selection, optimizer) # handle gridsearchcv options options = params["search_schemes"]["options"] if groups: header = ( "infer" if (options["cv_selector"]["groups_selector"]["header_g"]) else None ) column_option = options["cv_selector"]["groups_selector"][ "column_selector_options_g" ]["selected_column_selector_option_g"] if column_option in [ "by_index_number", "all_but_by_index_number", "by_header_name", "all_but_by_header_name", ]: c = options["cv_selector"]["groups_selector"]["column_selector_options_g"][ "col_g" ] else: c = None df_key = groups + repr(header) groups = pd.read_csv(groups, sep="\t", header=header, parse_dates=True) loaded_df[df_key] = groups groups = read_columns( groups, c=c, c_option=column_option, sep="\t", header=header, parse_dates=True, ) groups = groups.ravel() options["cv_selector"]["groups_selector"] = groups splitter, groups = get_cv(options.pop("cv_selector")) options["cv"] = splitter primary_scoring = options["scoring"]["primary_scoring"] # get_scoring() expects secondary_scoring to be a comma separated string (not a list) # Check if secondary_scoring is specified secondary_scoring = options["scoring"].get("secondary_scoring", None) if secondary_scoring is not None: # If secondary_scoring is specified, convert the list into comman separated string options["scoring"]["secondary_scoring"] = ",".join( options["scoring"]["secondary_scoring"] ) options["scoring"] = get_scoring(options["scoring"]) if options["error_score"]: options["error_score"] = "raise" else: options["error_score"] = np.nan if options["refit"] and isinstance(options["scoring"], dict): options["refit"] = primary_scoring if "pre_dispatch" in options and options["pre_dispatch"] == "": options["pre_dispatch"] = None params_builder = params["search_schemes"]["search_params_builder"] param_grid = _eval_search_params(params_builder) estimator = clean_params(estimator) # save the SearchCV object without fit if params["save"] == "save_no_fit": searcher = optimizer(estimator, param_grid, **options) print(searcher) with open(outfile_object, "wb") as output_handler: pickle.dump(searcher, output_handler, pickle.HIGHEST_PROTOCOL) return 0 # read inputs and loads new attributes, like paths estimator, X, y = _handle_X_y( estimator, params, infile1, infile2, loaded_df=loaded_df, ref_seq=ref_seq, intervals=intervals, targets=targets, fasta_path=fasta_path, ) # cache iraps_core fits could increase search speed significantly memory = joblib.Memory(location=CACHE_DIR, verbose=0) main_est = get_main_estimator(estimator) if main_est.__class__.__name__ == "IRAPSClassifier": main_est.set_params(memory=memory) searcher = optimizer(estimator, param_grid, **options) split_mode = params["outer_split"].pop("split_mode") if split_mode == "nested_cv": # make sure refit is choosen # this could be True for sklearn models, but not the case for # deep learning models if not options["refit"] and not all( hasattr(estimator, attr) for attr in ("config", "model_type") ): warnings.warn("Refit is change to `True` for nested validation!") setattr(searcher, "refit", True) outer_cv, _ = get_cv(params["outer_split"]["cv_selector"]) # nested CV, outer cv using cross_validate if options["error_score"] == "raise": rval = cross_validate( searcher, X, y, scoring=options["scoring"], cv=outer_cv, n_jobs=N_JOBS, verbose=options["verbose"], return_estimator=(params["save"] == "save_estimator"), error_score=options["error_score"], return_train_score=True, ) else: warnings.simplefilter("always", FitFailedWarning) with warnings.catch_warnings(record=True) as w: try: rval = cross_validate( searcher, X, y, scoring=options["scoring"], cv=outer_cv, n_jobs=N_JOBS, verbose=options["verbose"], return_estimator=(params["save"] == "save_estimator"), error_score=options["error_score"], return_train_score=True, ) except ValueError: pass for warning in w: print(repr(warning.message)) fitted_searchers = rval.pop("estimator", []) if fitted_searchers: import os pwd = os.getcwd() save_dir = os.path.join(pwd, "cv_results_in_folds") try: os.mkdir(save_dir) for idx, obj in enumerate(fitted_searchers): target_name = "cv_results_" + "_" + "split%d" % idx target_path = os.path.join(pwd, save_dir, target_name) cv_results_ = getattr(obj, "cv_results_", None) if not cv_results_: print("%s is not available" % target_name) continue cv_results_ = pd.DataFrame(cv_results_) cv_results_ = cv_results_[sorted(cv_results_.columns)] cv_results_.to_csv(target_path, sep="\t", header=True, index=False) except Exception as e: print(e) finally: del os keys = list(rval.keys()) for k in keys: if k.startswith("test"): rval["mean_" + k] = np.mean(rval[k]) rval["std_" + k] = np.std(rval[k]) if k.endswith("time"): rval.pop(k) rval = pd.DataFrame(rval) rval = rval[sorted(rval.columns)] rval.to_csv(path_or_buf=outfile_result, sep="\t", header=True, index=False) # deprecate train test split mode """searcher = _do_train_test_split_val( searcher, X, y, params, primary_scoring=primary_scoring, error_score=options['error_score'], groups=groups, outfile=outfile_result)""" return 0 # no outer split else: searcher.set_params(n_jobs=N_JOBS) if options["error_score"] == "raise": searcher.fit(X, y, groups=groups) else: warnings.simplefilter("always", FitFailedWarning) with warnings.catch_warnings(record=True) as w: try: searcher.fit(X, y, groups=groups) except ValueError: pass for warning in w: print(repr(warning.message)) cv_results = pd.DataFrame(searcher.cv_results_) cv_results = cv_results[sorted(cv_results.columns)] cv_results.to_csv( path_or_buf=outfile_result, sep="\t", header=True, index=False ) memory.clear(warn=False) # output best estimator, and weights if applicable if outfile_object: best_estimator_ = getattr(searcher, "best_estimator_", None) if not best_estimator_: warnings.warn( "GridSearchCV object has no attribute " "'best_estimator_', because either it's " "nested gridsearch or `refit` is False!" ) return # clean prams best_estimator_ = clean_params(best_estimator_) main_est = get_main_estimator(best_estimator_) if hasattr(main_est, "model_") and hasattr(main_est, "save_weights"): if outfile_weights: main_est.save_weights(outfile_weights) del main_est.model_ del main_est.fit_params del main_est.model_class_ del main_est.validation_data if getattr(main_est, "data_generator_", None): del main_est.data_generator_ with open(outfile_object, "wb") as output_handler: print("Best estimator is saved: %s " % repr(best_estimator_)) pickle.dump(best_estimator_, output_handler, pickle.HIGHEST_PROTOCOL) if __name__ == "__main__": aparser = argparse.ArgumentParser() aparser.add_argument("-i", "--inputs", dest="inputs", required=True) aparser.add_argument("-e", "--estimator", dest="infile_estimator") aparser.add_argument("-X", "--infile1", dest="infile1") aparser.add_argument("-y", "--infile2", dest="infile2") aparser.add_argument("-O", "--outfile_result", dest="outfile_result") aparser.add_argument("-o", "--outfile_object", dest="outfile_object") aparser.add_argument("-w", "--outfile_weights", dest="outfile_weights") aparser.add_argument("-g", "--groups", dest="groups") aparser.add_argument("-r", "--ref_seq", dest="ref_seq") aparser.add_argument("-b", "--intervals", dest="intervals") aparser.add_argument("-t", "--targets", dest="targets") aparser.add_argument("-f", "--fasta_path", dest="fasta_path") args = aparser.parse_args() main( args.inputs, args.infile_estimator, args.infile1, args.infile2, args.outfile_result, outfile_object=args.outfile_object, outfile_weights=args.outfile_weights, groups=args.groups, ref_seq=args.ref_seq, intervals=args.intervals, targets=args.targets, fasta_path=args.fasta_path, )