source_code
stringlengths
45
7.24k
function_name
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111
messages
list
def x(self, net_type, filename, indent='no-indent'): export_data.write_json_to_file(self, net_type, filename, indent)
write_json_to_file
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, net_type, filename, indent='no-indent'):\n export_data.write_json_to_file(self, net_type, filename, indent)\n", "role": "user" }, { "content": "write_json_to_file", "role": "assistant" } ]
def x(self, inst_rc, threshold, take_abs=True): inst_df = self.dat_to_df() if inst_rc == 'row': inst_df = run_filter.df_filter_row_sum(inst_df, threshold, take_abs) elif inst_rc == 'col': inst_df = run_filter.df_filter_col_sum(inst_df, threshold, take_abs) self.df_to_dat(inst_df)
filter_sum
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, inst_rc, threshold, take_abs=True):\n inst_df = self.dat_to_df()\n if inst_rc == 'row':\n inst_df = run_filter.df_filter_row_sum(inst_df, threshold, take_abs)\n elif inst_rc == 'col':\n inst_df = run_filter.df_filter_col_sum(inst_df, threshold, take_abs)\n self.df_to_dat(inst_df)\n", "role": "user" }, { "content": "filter_sum", "role": "assistant" } ]
def x(self, inst_rc, N_top, rank_type='sum'): inst_df = self.dat_to_df() inst_df = run_filter.filter_N_top(inst_rc, inst_df, N_top, rank_type) self.df_to_dat(inst_df)
filter_N_top
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, inst_rc, N_top, rank_type='sum'):\n inst_df = self.dat_to_df()\n inst_df = run_filter.filter_N_top(inst_rc, inst_df, N_top, rank_type)\n self.df_to_dat(inst_df)\n", "role": "user" }, { "content": "filter_N_top", "role": "assistant" } ]
def x(self, inst_rc, threshold, num_occur=1): inst_df = self.dat_to_df() inst_df = run_filter.filter_threshold(inst_df, inst_rc, threshold, num_occur) self.df_to_dat(inst_df)
filter_threshold
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, inst_rc, threshold, num_occur=1):\n inst_df = self.dat_to_df()\n inst_df = run_filter.filter_threshold(inst_df, inst_rc, threshold,\n num_occur)\n self.df_to_dat(inst_df)\n", "role": "user" }, { "content": "filter_threshold", "role": "assistant" } ]
def x(self, axis, cat_index, cat_name): run_filter.filter_cat(self, axis, cat_index, cat_name)
filter_cat
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, axis, cat_index, cat_name):\n run_filter.filter_cat(self, axis, cat_index, cat_name)\n", "role": "user" }, { "content": "filter_cat", "role": "assistant" } ]
def x(self, lower=None, upper=None): df = self.export_df() df = df.clip(lower=lower, upper=upper) self.load_df(df)
clip
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, lower=None, upper=None):\n df = self.export_df()\n df = df.clip(lower=lower, upper=upper)\n self.load_df(df)\n", "role": "user" }, { "content": "clip", "role": "assistant" } ]
def x(self, df=None, norm_type='zscore', axis='row', keep_orig=False): normalize_fun.run_norm(self, df, norm_type, axis, keep_orig)
normalize
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, df=None, norm_type='zscore', axis='row', keep_orig=False):\n normalize_fun.run_norm(self, df, norm_type, axis, keep_orig)\n", "role": "user" }, { "content": "normalize", "role": "assistant" } ]
def x(self, df=None, ds_type='kmeans', axis='row', num_samples=100, random_state=1000): return downsample_fun.main(self, df, ds_type, axis, num_samples, random_state)
downsample
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, df=None, ds_type='kmeans', axis='row', num_samples=100,\n random_state=1000):\n return downsample_fun.main(self, df, ds_type, axis, num_samples,\n random_state)\n", "role": "user" }, { "content": "downsample", "role": "assistant" } ]
def x(self, num_samples, df=None, replace=False, weights=None, random_state =100, axis='row'): if df is None: df = self.dat_to_df() if axis == 'row': axis = 0 if axis == 'col': axis = 1 df = self.export_df() df = df.sample(n=num_samples, replace=replace, weights=weights, random_state=random_state, axis=axis) self.load_df(df)
random_sample
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, num_samples, df=None, replace=False, weights=None, random_state\n =100, axis='row'):\n if df is None:\n df = self.dat_to_df()\n if axis == 'row':\n axis = 0\n if axis == 'col':\n axis = 1\n df = self.export_df()\n df = df.sample(n=num_samples, replace=replace, weights=weights,\n random_state=random_state, axis=axis)\n self.load_df(df)\n", "role": "user" }, { "content": "random_sample", "role": "assistant" } ]
def x(self, axis, cat_data): for inst_data in cat_data: categories.add_cats(self, axis, inst_data)
add_cats
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, axis, cat_data):\n for inst_data in cat_data:\n categories.add_cats(self, axis, inst_data)\n", "role": "user" }, { "content": "add_cats", "role": "assistant" } ]
def x(self, lib, axis='row'): df = self.export_df() df, bar_info = enr_fun.add_enrichr_cats(df, axis, lib) self.load_df(df) self.dat['enrichrgram_lib'] = lib self.dat['row_cat_bars'] = bar_info
enrichrgram
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, lib, axis='row'):\n df = self.export_df()\n df, bar_info = enr_fun.add_enrichr_cats(df, axis, lib)\n self.load_df(df)\n self.dat['enrichrgram_lib'] = lib\n self.dat['row_cat_bars'] = bar_info\n", "role": "user" }, { "content": "enrichrgram", "role": "assistant" } ]
def x(inst_path): import pandas as pd from scipy import io from scipy import sparse from ast import literal_eval as make_tuple Matrix = io.mmread(inst_path + 'matrix.mtx') mat = Matrix.todense() filename = inst_path + 'genes.tsv' f = open(filename, 'r') lines = f.readlines() f.close() ini_genes = [] for inst_line in lines: inst_line = inst_line.strip().split() if len(inst_line) > 1: inst_gene = inst_line[1] else: inst_gene = inst_line[0] ini_genes.append(inst_gene) gene_name_count = pd.Series(ini_genes).value_counts() duplicate_genes = gene_name_count[gene_name_count > 1].index.tolist() dup_index = {} genes = [] for inst_row in ini_genes: if inst_row in duplicate_genes: if inst_row not in dup_index: dup_index[inst_row] = 1 else: dup_index[inst_row] = dup_index[inst_row] + 1 new_row = inst_row + '_' + str(dup_index[inst_row]) else: new_row = inst_row genes.append(new_row) filename = inst_path + 'barcodes.tsv' f = open(filename, 'r') lines = f.readlines() f.close() cell_barcodes = [] for inst_bc in lines: inst_bc = inst_bc.strip().split('\t') if '-' in inst_bc[0]: inst_bc[0] = inst_bc[0].split('-')[0] cell_barcodes.append(inst_bc[0]) try: cell_barcodes = [make_tuple(x) for x in cell_barcodes] except: pass try: genes = [make_tuple(x) for x in genes] except: pass df = pd.DataFrame(mat, index=genes, columns=cell_barcodes) return df
load_gene_exp_to_df
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(inst_path):\n import pandas as pd\n from scipy import io\n from scipy import sparse\n from ast import literal_eval as make_tuple\n Matrix = io.mmread(inst_path + 'matrix.mtx')\n mat = Matrix.todense()\n filename = inst_path + 'genes.tsv'\n f = open(filename, 'r')\n lines = f.readlines()\n f.close()\n ini_genes = []\n for inst_line in lines:\n inst_line = inst_line.strip().split()\n if len(inst_line) > 1:\n inst_gene = inst_line[1]\n else:\n inst_gene = inst_line[0]\n ini_genes.append(inst_gene)\n gene_name_count = pd.Series(ini_genes).value_counts()\n duplicate_genes = gene_name_count[gene_name_count > 1].index.tolist()\n dup_index = {}\n genes = []\n for inst_row in ini_genes:\n if inst_row in duplicate_genes:\n if inst_row not in dup_index:\n dup_index[inst_row] = 1\n else:\n dup_index[inst_row] = dup_index[inst_row] + 1\n new_row = inst_row + '_' + str(dup_index[inst_row])\n else:\n new_row = inst_row\n genes.append(new_row)\n filename = inst_path + 'barcodes.tsv'\n f = open(filename, 'r')\n lines = f.readlines()\n f.close()\n cell_barcodes = []\n for inst_bc in lines:\n inst_bc = inst_bc.strip().split('\\t')\n if '-' in inst_bc[0]:\n inst_bc[0] = inst_bc[0].split('-')[0]\n cell_barcodes.append(inst_bc[0])\n try:\n cell_barcodes = [make_tuple(x) for x in cell_barcodes]\n except:\n pass\n try:\n genes = [make_tuple(x) for x in genes]\n except:\n pass\n df = pd.DataFrame(mat, index=genes, columns=cell_barcodes)\n return df\n", "role": "user" }, { "content": "load_gene_exp_to_df", "role": "assistant" } ]
def x(self, df, cat_index=1, dist_type='cosine', equal_var=False, plot_roc= True, precalc_dist=False, calc_roc=True): cols = df.columns.tolist() if type(precalc_dist) == bool: dist_arr = 1 - pdist(df.transpose(), metric=dist_type) else: dist_arr = precalc_dist sample_combos = list(combinations(range(df.shape[1]), 2)) sample_names = [(str(ind) + '_same' if cols[x[0]][cat_index] == cols[x[ 1]][cat_index] else str(ind) + '_different') for ind, x in enumerate(sample_combos)] ser_dist = pd.Series(data=dist_arr, index=sample_names) same_cat = [x for x in sample_names if x.split('_')[1] == 'same'] diff_cat = [x for x in sample_names if x.split('_')[1] == 'different'] ser_same = ser_dist[same_cat] ser_same.name = 'Same Category' ser_diff = ser_dist[diff_cat] ser_diff.name = 'Different Category' sim_dict = {} roc_data = {} sim_data = {} sim_dict['same'] = ser_same sim_dict['diff'] = ser_diff pval_dict = {} ttest_stat, pval_dict['ttest'] = ttest_ind(ser_diff, ser_same, equal_var=equal_var) ttest_stat, pval_dict['mannwhitney'] = mannwhitneyu(ser_diff, ser_same) if calc_roc: true_index = list(np.ones(sim_dict['same'].shape[0])) false_index = list(np.zeros(sim_dict['diff'].shape[0])) y_true = true_index + false_index true_val = list(sim_dict['same'].get_values()) false_val = list(sim_dict['diff'].get_values()) y_score = true_val + false_val fpr, tpr, thresholds = roc_curve(y_true, y_score) inst_auc = auc(fpr, tpr) if plot_roc: plt.figure() plt.plot(fpr, tpr) plt.plot([0, 1], [0, 1], color='navy', linestyle='--') plt.figure(figsize=(10, 10)) print('AUC', inst_auc) roc_data['true'] = y_true roc_data['score'] = y_score roc_data['fpr'] = fpr roc_data['tpr'] = tpr roc_data['thresholds'] = thresholds roc_data['auc'] = inst_auc sim_data['sim_dict'] = sim_dict sim_data['pval_dict'] = pval_dict sim_data['roc_data'] = roc_data return sim_data
sim_same_and_diff_category_samples
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, df, cat_index=1, dist_type='cosine', equal_var=False, plot_roc=\n True, precalc_dist=False, calc_roc=True):\n cols = df.columns.tolist()\n if type(precalc_dist) == bool:\n dist_arr = 1 - pdist(df.transpose(), metric=dist_type)\n else:\n dist_arr = precalc_dist\n sample_combos = list(combinations(range(df.shape[1]), 2))\n sample_names = [(str(ind) + '_same' if cols[x[0]][cat_index] == cols[x[\n 1]][cat_index] else str(ind) + '_different') for ind, x in\n enumerate(sample_combos)]\n ser_dist = pd.Series(data=dist_arr, index=sample_names)\n same_cat = [x for x in sample_names if x.split('_')[1] == 'same']\n diff_cat = [x for x in sample_names if x.split('_')[1] == 'different']\n ser_same = ser_dist[same_cat]\n ser_same.name = 'Same Category'\n ser_diff = ser_dist[diff_cat]\n ser_diff.name = 'Different Category'\n sim_dict = {}\n roc_data = {}\n sim_data = {}\n sim_dict['same'] = ser_same\n sim_dict['diff'] = ser_diff\n pval_dict = {}\n ttest_stat, pval_dict['ttest'] = ttest_ind(ser_diff, ser_same,\n equal_var=equal_var)\n ttest_stat, pval_dict['mannwhitney'] = mannwhitneyu(ser_diff, ser_same)\n if calc_roc:\n true_index = list(np.ones(sim_dict['same'].shape[0]))\n false_index = list(np.zeros(sim_dict['diff'].shape[0]))\n y_true = true_index + false_index\n true_val = list(sim_dict['same'].get_values())\n false_val = list(sim_dict['diff'].get_values())\n y_score = true_val + false_val\n fpr, tpr, thresholds = roc_curve(y_true, y_score)\n inst_auc = auc(fpr, tpr)\n if plot_roc:\n plt.figure()\n plt.plot(fpr, tpr)\n plt.plot([0, 1], [0, 1], color='navy', linestyle='--')\n plt.figure(figsize=(10, 10))\n print('AUC', inst_auc)\n roc_data['true'] = y_true\n roc_data['score'] = y_score\n roc_data['fpr'] = fpr\n roc_data['tpr'] = tpr\n roc_data['thresholds'] = thresholds\n roc_data['auc'] = inst_auc\n sim_data['sim_dict'] = sim_dict\n sim_data['pval_dict'] = pval_dict\n sim_data['roc_data'] = roc_data\n return sim_data\n", "role": "user" }, { "content": "sim_same_and_diff_category_samples", "role": "assistant" } ]
def x(self, df_ini, category_level, pval_cutoff=0.05, num_top_dims=False, verbose=True, equal_var=False): df_t = df_ini.transpose() df_t = df_t.loc[:, (df_t != df_t.iloc[0]).any()] df = self.row_tuple_to_multiindex(df_t) cell_types = sorted(list(set(df.index.get_level_values(category_level). tolist()))) keep_genes = [] keep_genes_dict = {} gene_pval_dict = {} all_fold_info = {} for inst_ct in cell_types: inst_ct_mat = df.xs(key=inst_ct, level=category_level) inst_other_mat = df.drop(inst_ct, level=category_level) fold_info = {} fold_info['cluster_mean'] = inst_ct_mat.mean() fold_info['other_mean'] = inst_other_mat.mean() fold_info['log2_fold'] = fold_info['cluster_mean'] / fold_info[ 'other_mean'] fold_info['log2_fold'] = fold_info['log2_fold'].apply(np.log2) all_fold_info[inst_ct] = fold_info inst_stats, inst_pvals = ttest_ind(inst_ct_mat, inst_other_mat, axis=0, equal_var=equal_var) ser_pval = pd.Series(data=inst_pvals, index=df.columns.tolist() ).sort_values() if num_top_dims == False: ser_pval_keep = ser_pval[ser_pval < pval_cutoff] else: ser_pval_keep = ser_pval[:num_top_dims] gene_pval_dict[inst_ct] = ser_pval_keep inst_keep = ser_pval_keep.index.tolist() keep_genes.extend(inst_keep) keep_genes_dict[inst_ct] = inst_keep keep_genes = sorted(list(set(keep_genes))) df_gbm = df.groupby(level=category_level).mean().transpose() cols = df_gbm.columns.tolist() new_cols = [] for inst_col in cols: new_col = inst_col, category_level + ': ' + inst_col new_cols.append(new_col) df_gbm.columns = new_cols df_sig = df_gbm.ix[keep_genes] if len(keep_genes) == 0 and verbose: print('found no informative dimensions') df_gene_pval = pd.concat(gene_pval_dict, axis=1, sort=False) return df_sig, keep_genes_dict, df_gene_pval, all_fold_info
generate_signatures
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, df_ini, category_level, pval_cutoff=0.05, num_top_dims=False,\n verbose=True, equal_var=False):\n df_t = df_ini.transpose()\n df_t = df_t.loc[:, (df_t != df_t.iloc[0]).any()]\n df = self.row_tuple_to_multiindex(df_t)\n cell_types = sorted(list(set(df.index.get_level_values(category_level).\n tolist())))\n keep_genes = []\n keep_genes_dict = {}\n gene_pval_dict = {}\n all_fold_info = {}\n for inst_ct in cell_types:\n inst_ct_mat = df.xs(key=inst_ct, level=category_level)\n inst_other_mat = df.drop(inst_ct, level=category_level)\n fold_info = {}\n fold_info['cluster_mean'] = inst_ct_mat.mean()\n fold_info['other_mean'] = inst_other_mat.mean()\n fold_info['log2_fold'] = fold_info['cluster_mean'] / fold_info[\n 'other_mean']\n fold_info['log2_fold'] = fold_info['log2_fold'].apply(np.log2)\n all_fold_info[inst_ct] = fold_info\n inst_stats, inst_pvals = ttest_ind(inst_ct_mat, inst_other_mat,\n axis=0, equal_var=equal_var)\n ser_pval = pd.Series(data=inst_pvals, index=df.columns.tolist()\n ).sort_values()\n if num_top_dims == False:\n ser_pval_keep = ser_pval[ser_pval < pval_cutoff]\n else:\n ser_pval_keep = ser_pval[:num_top_dims]\n gene_pval_dict[inst_ct] = ser_pval_keep\n inst_keep = ser_pval_keep.index.tolist()\n keep_genes.extend(inst_keep)\n keep_genes_dict[inst_ct] = inst_keep\n keep_genes = sorted(list(set(keep_genes)))\n df_gbm = df.groupby(level=category_level).mean().transpose()\n cols = df_gbm.columns.tolist()\n new_cols = []\n for inst_col in cols:\n new_col = inst_col, category_level + ': ' + inst_col\n new_cols.append(new_col)\n df_gbm.columns = new_cols\n df_sig = df_gbm.ix[keep_genes]\n if len(keep_genes) == 0 and verbose:\n print('found no informative dimensions')\n df_gene_pval = pd.concat(gene_pval_dict, axis=1, sort=False)\n return df_sig, keep_genes_dict, df_gene_pval, all_fold_info\n", "role": "user" }, { "content": "generate_signatures", "role": "assistant" } ]
def x(self, df_data_ini, df_sig_ini, dist_type='cosine', predict_level= 'Predict Category', truth_level=1, unknown_thresh=-1): keep_rows = df_sig_ini.index.tolist() data_rows = df_data_ini.index.tolist() common_rows = list(set(data_rows).intersection(keep_rows)) df_data = deepcopy(df_data_ini.ix[common_rows]) df_sig = deepcopy(df_sig_ini.ix[common_rows]) cell_types = df_sig.columns.tolist() barcodes = df_data.columns.tolist() sim_mat = 1 - pairwise_distances(df_sig.transpose(), df_data.transpose( ), metric=dist_type) df_sim = pd.DataFrame(data=sim_mat, index=cell_types, columns=barcodes ).transpose() df_sim_top = df_sim.idxmax(axis=1) max_sim = df_sim.max(axis=1) unknown_cells = max_sim[max_sim < unknown_thresh].index.tolist() df_sim_top[unknown_cells] = 'Unknown' top_list = df_sim_top.get_values() top_list = [(predict_level + ': ' + x[0] if type(x) is tuple else predict_level + ': ' + x) for x in top_list] df_cat = deepcopy(df_data) cols = df_cat.columns.tolist() new_cols = [] has_truth = False if type(cols[0]) is tuple: has_truth = True if has_truth: new_cols = [tuple(list(a) + [b]) for a, b in zip(cols, top_list)] else: new_cols = [tuple([a] + [b]) for a, b in zip(cols, top_list)] df_cat.columns = new_cols y_info = {} y_info['true'] = [] y_info['pred'] = [] if has_truth: y_info['true'] = [x[truth_level].split(': ')[1] for x in cols] y_info['pred'] = [x.split(': ')[1] for x in top_list] return df_cat, df_sim.transpose(), y_info
predict_cats_from_sigs
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, df_data_ini, df_sig_ini, dist_type='cosine', predict_level=\n 'Predict Category', truth_level=1, unknown_thresh=-1):\n keep_rows = df_sig_ini.index.tolist()\n data_rows = df_data_ini.index.tolist()\n common_rows = list(set(data_rows).intersection(keep_rows))\n df_data = deepcopy(df_data_ini.ix[common_rows])\n df_sig = deepcopy(df_sig_ini.ix[common_rows])\n cell_types = df_sig.columns.tolist()\n barcodes = df_data.columns.tolist()\n sim_mat = 1 - pairwise_distances(df_sig.transpose(), df_data.transpose(\n ), metric=dist_type)\n df_sim = pd.DataFrame(data=sim_mat, index=cell_types, columns=barcodes\n ).transpose()\n df_sim_top = df_sim.idxmax(axis=1)\n max_sim = df_sim.max(axis=1)\n unknown_cells = max_sim[max_sim < unknown_thresh].index.tolist()\n df_sim_top[unknown_cells] = 'Unknown'\n top_list = df_sim_top.get_values()\n top_list = [(predict_level + ': ' + x[0] if type(x) is tuple else \n predict_level + ': ' + x) for x in top_list]\n df_cat = deepcopy(df_data)\n cols = df_cat.columns.tolist()\n new_cols = []\n has_truth = False\n if type(cols[0]) is tuple:\n has_truth = True\n if has_truth:\n new_cols = [tuple(list(a) + [b]) for a, b in zip(cols, top_list)]\n else:\n new_cols = [tuple([a] + [b]) for a, b in zip(cols, top_list)]\n df_cat.columns = new_cols\n y_info = {}\n y_info['true'] = []\n y_info['pred'] = []\n if has_truth:\n y_info['true'] = [x[truth_level].split(': ')[1] for x in cols]\n y_info['pred'] = [x.split(': ')[1] for x in top_list]\n return df_cat, df_sim.transpose(), y_info\n", "role": "user" }, { "content": "predict_cats_from_sigs", "role": "assistant" } ]
def x(self, y_info): a = deepcopy(y_info['true']) true_count = dict((i, a.count(i)) for i in set(a)) a = deepcopy(y_info['pred']) pred_count = dict((i, a.count(i)) for i in set(a)) sorted_cats = sorted(list(set(y_info['true'] + y_info['pred']))) conf_mat = confusion_matrix(y_info['true'], y_info['pred'], sorted_cats) df_conf = pd.DataFrame(conf_mat, index=sorted_cats, columns=sorted_cats) total_correct = np.trace(df_conf) total_pred = df_conf.sum().sum() fraction_correct = total_correct / float(total_pred) correct_list = [] cat_counts = df_conf.sum(axis=1) all_cols = df_conf.columns.tolist() for inst_cat in all_cols: inst_correct = df_conf[inst_cat].loc[inst_cat] / cat_counts[inst_cat] correct_list.append(inst_correct) ser_correct = pd.Series(data=correct_list, index=all_cols) populations = {} populations['true'] = true_count populations['pred'] = pred_count return df_conf, populations, ser_correct, fraction_correct
confusion_matrix_and_correct_series
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, y_info):\n a = deepcopy(y_info['true'])\n true_count = dict((i, a.count(i)) for i in set(a))\n a = deepcopy(y_info['pred'])\n pred_count = dict((i, a.count(i)) for i in set(a))\n sorted_cats = sorted(list(set(y_info['true'] + y_info['pred'])))\n conf_mat = confusion_matrix(y_info['true'], y_info['pred'], sorted_cats)\n df_conf = pd.DataFrame(conf_mat, index=sorted_cats, columns=sorted_cats)\n total_correct = np.trace(df_conf)\n total_pred = df_conf.sum().sum()\n fraction_correct = total_correct / float(total_pred)\n correct_list = []\n cat_counts = df_conf.sum(axis=1)\n all_cols = df_conf.columns.tolist()\n for inst_cat in all_cols:\n inst_correct = df_conf[inst_cat].loc[inst_cat] / cat_counts[inst_cat]\n correct_list.append(inst_correct)\n ser_correct = pd.Series(data=correct_list, index=all_cols)\n populations = {}\n populations['true'] = true_count\n populations['pred'] = pred_count\n return df_conf, populations, ser_correct, fraction_correct\n", "role": "user" }, { "content": "confusion_matrix_and_correct_series", "role": "assistant" } ]
def x(net, inst_net): net.dat['nodes'] = inst_net['nodes'] net.dat['mat'] = inst_net['mat'] data_formats.mat_to_numpy_arr(net)
load_data_to_net
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(net, inst_net):\n net.dat['nodes'] = inst_net['nodes']\n net.dat['mat'] = inst_net['mat']\n data_formats.mat_to_numpy_arr(net)\n", "role": "user" }, { "content": "load_data_to_net", "role": "assistant" } ]
def x(net, net_type, indent='no-indent'): import json from copy import deepcopy if net_type == 'dat': exp_dict = deepcopy(net.dat) if type(exp_dict['mat']) is not list: exp_dict['mat'] = exp_dict['mat'].tolist() if 'mat_orig' in exp_dict: exp_dict['mat_orig'] = exp_dict['mat_orig'].tolist() elif net_type == 'viz': exp_dict = net.viz elif net_type == 'sim_row': exp_dict = net.sim['row'] elif net_type == 'sim_col': exp_dict = net.sim['col'] if indent == 'indent': exp_json = json.dumps(exp_dict, indent=2) else: exp_json = json.dumps(exp_dict) return exp_json
export_net_json
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(net, net_type, indent='no-indent'):\n import json\n from copy import deepcopy\n if net_type == 'dat':\n exp_dict = deepcopy(net.dat)\n if type(exp_dict['mat']) is not list:\n exp_dict['mat'] = exp_dict['mat'].tolist()\n if 'mat_orig' in exp_dict:\n exp_dict['mat_orig'] = exp_dict['mat_orig'].tolist()\n elif net_type == 'viz':\n exp_dict = net.viz\n elif net_type == 'sim_row':\n exp_dict = net.sim['row']\n elif net_type == 'sim_col':\n exp_dict = net.sim['col']\n if indent == 'indent':\n exp_json = json.dumps(exp_dict, indent=2)\n else:\n exp_json = json.dumps(exp_dict)\n return exp_json\n", "role": "user" }, { "content": "export_net_json", "role": "assistant" } ]
def x(net, filename=None, df=None): import pandas as pd if df is None: df = net.dat_to_df() return df['mat'].to_csv(filename, sep='\t')
write_matrix_to_tsv
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(net, filename=None, df=None):\n import pandas as pd\n if df is None:\n df = net.dat_to_df()\n return df['mat'].to_csv(filename, sep='\\t')\n", "role": "user" }, { "content": "write_matrix_to_tsv", "role": "assistant" } ]
def x(net, df=None): if df is None: df = net.export_df() rows = df.index.tolist() if type(rows[0]) is str: if len(rows) != len(list(set(rows))): new_rows = add_index_list(rows) df.index = new_rows elif type(rows[0]) is tuple: row_names = [] for inst_row in rows: row_names.append(inst_row[0]) if len(row_names) != len(list(set(row_names))): row_names = add_index_list(row_names) new_rows = [] for inst_index in range(len(rows)): inst_row = rows[inst_index] new_row = list(inst_row) new_row[0] = row_names[inst_index] new_row = tuple(new_row) new_rows.append(new_row) df.index = new_rows cols = df.columns.tolist() if type(cols[0]) is str: if len(cols) != len(list(set(cols))): new_cols = add_index_list(cols) df.columns = new_cols elif type(cols[0]) is tuple: col_names = [] for inst_col in cols: col_names.append(inst_col[0]) if len(col_names) != len(list(set(col_names))): col_names = add_index_list(col_names) new_cols = [] for inst_index in range(len(cols)): inst_col = cols[inst_index] new_col = list(inst_col) new_col[0] = col_names[inst_index] new_col = tuple(new_col) new_cols.append(new_col) df.columns = new_cols return df
main
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(net, df=None):\n if df is None:\n df = net.export_df()\n rows = df.index.tolist()\n if type(rows[0]) is str:\n if len(rows) != len(list(set(rows))):\n new_rows = add_index_list(rows)\n df.index = new_rows\n elif type(rows[0]) is tuple:\n row_names = []\n for inst_row in rows:\n row_names.append(inst_row[0])\n if len(row_names) != len(list(set(row_names))):\n row_names = add_index_list(row_names)\n new_rows = []\n for inst_index in range(len(rows)):\n inst_row = rows[inst_index]\n new_row = list(inst_row)\n new_row[0] = row_names[inst_index]\n new_row = tuple(new_row)\n new_rows.append(new_row)\n df.index = new_rows\n cols = df.columns.tolist()\n if type(cols[0]) is str:\n if len(cols) != len(list(set(cols))):\n new_cols = add_index_list(cols)\n df.columns = new_cols\n elif type(cols[0]) is tuple:\n col_names = []\n for inst_col in cols:\n col_names.append(inst_col[0])\n if len(col_names) != len(list(set(col_names))):\n col_names = add_index_list(col_names)\n new_cols = []\n for inst_index in range(len(cols)):\n inst_col = cols[inst_index]\n new_col = list(inst_col)\n new_col[0] = col_names[inst_index]\n new_col = tuple(new_col)\n new_cols.append(new_col)\n df.columns = new_cols\n return df\n", "role": "user" }, { "content": "main", "role": "assistant" } ]
def x(net, dendro=True, links=False): from . import calc_clust import numpy as np all_dist = calc_clust.group_cutoffs() for inst_rc in net.dat['nodes']: inst_keys = net.dat['node_info'][inst_rc] all_cats = [x for x in inst_keys if 'cat-' in x] for i in range(len(net.dat['nodes'][inst_rc])): inst_dict = {} inst_dict['name'] = net.dat['nodes'][inst_rc][i] inst_dict['ini'] = net.dat['node_info'][inst_rc]['ini'][i] inst_dict['clust'] = net.dat['node_info'][inst_rc]['clust'].index(i ) inst_dict['rank'] = net.dat['node_info'][inst_rc]['rank'][i] if 'rankvar' in inst_keys: inst_dict['rankvar'] = net.dat['node_info'][inst_rc]['rankvar' ][i] if len(all_cats) > 0: for inst_name_cat in all_cats: actual_cat_name = net.dat['node_info'][inst_rc][ inst_name_cat][i] inst_dict[inst_name_cat] = actual_cat_name check_pval = 'pval_' + inst_name_cat.replace('-', '_') if check_pval in net.dat['node_info'][inst_rc]: tmp_pval_name = inst_name_cat.replace('-', '_' ) + '_pval' inst_dict[tmp_pval_name] = net.dat['node_info'][inst_rc ][check_pval][actual_cat_name] tmp_index_name = inst_name_cat.replace('-', '_') + '_index' inst_dict[tmp_index_name] = net.dat['node_info'][inst_rc][ tmp_index_name][i] if len(net.dat['node_info'][inst_rc]['value']) > 0: inst_dict['value'] = net.dat['node_info'][inst_rc]['value'][i] if len(net.dat['node_info'][inst_rc]['info']) > 0: inst_dict['info'] = net.dat['node_info'][inst_rc]['info'][i] if dendro is True: inst_dict['group'] = [] for tmp_dist in all_dist: tmp_dist = str(tmp_dist).replace('.', '') tmp_append = float(net.dat['node_info'][inst_rc][ 'group'][tmp_dist][i]) inst_dict['group'].append(tmp_append) net.viz[inst_rc + '_nodes'].append(inst_dict) mat_types = ['mat', 'mat_orig', 'mat_info', 'mat_hl', 'mat_up', 'mat_dn'] if links is True: for i in range(len(net.dat['nodes']['row'])): for j in range(len(net.dat['nodes']['col'])): inst_dict = {} inst_dict['source'] = i inst_dict['target'] = j inst_dict['value'] = float(net.dat['mat'][i, j]) if 'mat_up' in net.dat: inst_dict['value_up'] = net.dat['mat_up'][i, j] inst_dict['value_dn'] = net.dat['mat_dn'][i, j] if 'mat_orig' in net.dat: inst_dict['value_orig'] = net.dat['mat_orig'][i, j] if np.isnan(inst_dict['value_orig']): inst_dict['value_orig'] = 'NaN' if 'mat_info' in net.dat: inst_dict['info'] = net.dat['mat_info'][str((i, j))] if 'mat_hl' in net.dat: inst_dict['highlight'] = net.dat['mat_hl'][i, j] net.viz['links'].append(inst_dict) else: for inst_mat in mat_types: if inst_mat in net.dat: net.viz[inst_mat] = net.dat[inst_mat].tolist()
viz_json
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(net, dendro=True, links=False):\n from . import calc_clust\n import numpy as np\n all_dist = calc_clust.group_cutoffs()\n for inst_rc in net.dat['nodes']:\n inst_keys = net.dat['node_info'][inst_rc]\n all_cats = [x for x in inst_keys if 'cat-' in x]\n for i in range(len(net.dat['nodes'][inst_rc])):\n inst_dict = {}\n inst_dict['name'] = net.dat['nodes'][inst_rc][i]\n inst_dict['ini'] = net.dat['node_info'][inst_rc]['ini'][i]\n inst_dict['clust'] = net.dat['node_info'][inst_rc]['clust'].index(i\n )\n inst_dict['rank'] = net.dat['node_info'][inst_rc]['rank'][i]\n if 'rankvar' in inst_keys:\n inst_dict['rankvar'] = net.dat['node_info'][inst_rc]['rankvar'\n ][i]\n if len(all_cats) > 0:\n for inst_name_cat in all_cats:\n actual_cat_name = net.dat['node_info'][inst_rc][\n inst_name_cat][i]\n inst_dict[inst_name_cat] = actual_cat_name\n check_pval = 'pval_' + inst_name_cat.replace('-', '_')\n if check_pval in net.dat['node_info'][inst_rc]:\n tmp_pval_name = inst_name_cat.replace('-', '_'\n ) + '_pval'\n inst_dict[tmp_pval_name] = net.dat['node_info'][inst_rc\n ][check_pval][actual_cat_name]\n tmp_index_name = inst_name_cat.replace('-', '_') + '_index'\n inst_dict[tmp_index_name] = net.dat['node_info'][inst_rc][\n tmp_index_name][i]\n if len(net.dat['node_info'][inst_rc]['value']) > 0:\n inst_dict['value'] = net.dat['node_info'][inst_rc]['value'][i]\n if len(net.dat['node_info'][inst_rc]['info']) > 0:\n inst_dict['info'] = net.dat['node_info'][inst_rc]['info'][i]\n if dendro is True:\n inst_dict['group'] = []\n for tmp_dist in all_dist:\n tmp_dist = str(tmp_dist).replace('.', '')\n tmp_append = float(net.dat['node_info'][inst_rc][\n 'group'][tmp_dist][i])\n inst_dict['group'].append(tmp_append)\n net.viz[inst_rc + '_nodes'].append(inst_dict)\n mat_types = ['mat', 'mat_orig', 'mat_info', 'mat_hl', 'mat_up', 'mat_dn']\n if links is True:\n for i in range(len(net.dat['nodes']['row'])):\n for j in range(len(net.dat['nodes']['col'])):\n inst_dict = {}\n inst_dict['source'] = i\n inst_dict['target'] = j\n inst_dict['value'] = float(net.dat['mat'][i, j])\n if 'mat_up' in net.dat:\n inst_dict['value_up'] = net.dat['mat_up'][i, j]\n inst_dict['value_dn'] = net.dat['mat_dn'][i, j]\n if 'mat_orig' in net.dat:\n inst_dict['value_orig'] = net.dat['mat_orig'][i, j]\n if np.isnan(inst_dict['value_orig']):\n inst_dict['value_orig'] = 'NaN'\n if 'mat_info' in net.dat:\n inst_dict['info'] = net.dat['mat_info'][str((i, j))]\n if 'mat_hl' in net.dat:\n inst_dict['highlight'] = net.dat['mat_hl'][i, j]\n net.viz['links'].append(inst_dict)\n else:\n for inst_mat in mat_types:\n if inst_mat in net.dat:\n net.viz[inst_mat] = net.dat[inst_mat].tolist()\n", "role": "user" }, { "content": "viz_json", "role": "assistant" } ]
def x(path=None, build_dir=None, source_dir=None, build_cmd='build', force= False, npm=None): class NPM(BaseCommand): description = 'install package.json dependencies using npm' def x(self): if skip_npm: log.info('Skipping npm-installation') return node_package = path or HERE node_modules = pjoin(node_package, 'node_modules') is_yarn = os.path.exists(pjoin(node_package, 'yarn.lock')) npm_cmd = npm if npm is None: if is_yarn: npm_cmd = ['yarn'] else: npm_cmd = ['npm'] if not which(npm_cmd[0]): log.error( "`{0}` unavailable. If you're running this command using sudo, make sure `{0}` is availble to sudo" .format(npm_cmd[0])) return if force or is_stale(node_modules, pjoin(node_package, 'package.json')): log.info( 'Installing build dependencies with npm. This may take a while...' ) run(npm_cmd + ['install'], cwd=node_package) if build_dir and source_dir and not force: should_build = is_stale(build_dir, source_dir) else: should_build = True if should_build: run(npm_cmd + ['run', build_cmd], cwd=node_package) return NPM
install_npm
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(path=None, build_dir=None, source_dir=None, build_cmd='build', force=\n False, npm=None):\n\n\n class NPM(BaseCommand):\n description = 'install package.json dependencies using npm'\n\n def x(self):\n if skip_npm:\n log.info('Skipping npm-installation')\n return\n node_package = path or HERE\n node_modules = pjoin(node_package, 'node_modules')\n is_yarn = os.path.exists(pjoin(node_package, 'yarn.lock'))\n npm_cmd = npm\n if npm is None:\n if is_yarn:\n npm_cmd = ['yarn']\n else:\n npm_cmd = ['npm']\n if not which(npm_cmd[0]):\n log.error(\n \"`{0}` unavailable. If you're running this command using sudo, make sure `{0}` is availble to sudo\"\n .format(npm_cmd[0]))\n return\n if force or is_stale(node_modules, pjoin(node_package,\n 'package.json')):\n log.info(\n 'Installing build dependencies with npm. This may take a while...'\n )\n run(npm_cmd + ['install'], cwd=node_package)\n if build_dir and source_dir and not force:\n should_build = is_stale(build_dir, source_dir)\n else:\n should_build = True\n if should_build:\n run(npm_cmd + ['run', build_cmd], cwd=node_package)\n return NPM\n", "role": "user" }, { "content": "install_npm", "role": "assistant" } ]
def x(*parts): if parts[0] in ('.', ''): parts = parts[1:] return pjoin(*parts).replace(os.sep, '/')
glob_pjoin
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(*parts):\n if parts[0] in ('.', ''):\n parts = parts[1:]\n return pjoin(*parts).replace(os.sep, '/')\n", "role": "user" }, { "content": "glob_pjoin", "role": "assistant" } ]
def x(data_specs, existing, top=HERE): file_data = defaultdict(list) for path, files in (existing or []): file_data[path] = files for path, dname, pattern in (data_specs or []): if os.path.isabs(dname): dname = os.path.relpath(dname, top) dname = dname.replace(os.sep, '/') offset = 0 if dname in ('.', '') else len(dname) + 1 files = _get_files(_glob_pjoin(dname, pattern), top=top) for fname in files: root = os.path.dirname(fname) full_path = _glob_pjoin(path, root[offset:]) print(dname, root, full_path, offset) if full_path.endswith('/'): full_path = full_path[:-1] file_data[full_path].append(fname) data_files = [] for path, files in file_data.items(): data_files.append((path, files)) return data_files
get_data_files
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(data_specs, existing, top=HERE):\n file_data = defaultdict(list)\n for path, files in (existing or []):\n file_data[path] = files\n for path, dname, pattern in (data_specs or []):\n if os.path.isabs(dname):\n dname = os.path.relpath(dname, top)\n dname = dname.replace(os.sep, '/')\n offset = 0 if dname in ('.', '') else len(dname) + 1\n files = _get_files(_glob_pjoin(dname, pattern), top=top)\n for fname in files:\n root = os.path.dirname(fname)\n full_path = _glob_pjoin(path, root[offset:])\n print(dname, root, full_path, offset)\n if full_path.endswith('/'):\n full_path = full_path[:-1]\n file_data[full_path].append(fname)\n data_files = []\n for path, files in file_data.items():\n data_files.append((path, files))\n return data_files\n", "role": "user" }, { "content": "get_data_files", "role": "assistant" } ]
def x(file_patterns, top=HERE): if not isinstance(file_patterns, (list, tuple)): file_patterns = [file_patterns] for i, p in enumerate(file_patterns): if os.path.isabs(p): file_patterns[i] = os.path.relpath(p, top) matchers = [_compile_pattern(p) for p in file_patterns] files = set() for root, dirnames, filenames in os.walk(top): if 'node_modules' in dirnames: dirnames.remove('node_modules') for m in matchers: for filename in filenames: fn = os.path.relpath(_glob_pjoin(root, filename), top) fn = fn.replace(os.sep, '/') if m(fn): files.add(fn.replace(os.sep, '/')) return list(files)
get_files
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(file_patterns, top=HERE):\n if not isinstance(file_patterns, (list, tuple)):\n file_patterns = [file_patterns]\n for i, p in enumerate(file_patterns):\n if os.path.isabs(p):\n file_patterns[i] = os.path.relpath(p, top)\n matchers = [_compile_pattern(p) for p in file_patterns]\n files = set()\n for root, dirnames, filenames in os.walk(top):\n if 'node_modules' in dirnames:\n dirnames.remove('node_modules')\n for m in matchers:\n for filename in filenames:\n fn = os.path.relpath(_glob_pjoin(root, filename), top)\n fn = fn.replace(os.sep, '/')\n if m(fn):\n files.add(fn.replace(os.sep, '/'))\n return list(files)\n", "role": "user" }, { "content": "get_files", "role": "assistant" } ]
def x(root, file_patterns=None): if file_patterns is None: file_patterns = ['*'] return _get_files(file_patterns, _glob_pjoin(HERE, root))
get_package_data
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(root, file_patterns=None):\n if file_patterns is None:\n file_patterns = ['*']\n return _get_files(file_patterns, _glob_pjoin(HERE, root))\n", "role": "user" }, { "content": "get_package_data", "role": "assistant" } ]
def x(df, threshold, take_abs=True): from copy import deepcopy from .__init__ import Network net = Network() if take_abs is True: df_copy = deepcopy(df['mat'].abs()) else: df_copy = deepcopy(df['mat']) ini_rows = df_copy.index.values.tolist() df_copy = df_copy.transpose() tmp_sum = df_copy.sum(axis=0) tmp_sum = tmp_sum.abs() tmp_sum.sort_values(inplace=True, ascending=False) tmp_sum = tmp_sum[tmp_sum > threshold] keep_rows = sorted(tmp_sum.index.values.tolist()) if len(keep_rows) < len(ini_rows): df['mat'] = grab_df_subset(df['mat'], keep_rows=keep_rows) if 'mat_up' in df: df['mat_up'] = grab_df_subset(df['mat_up'], keep_rows=keep_rows) df['mat_dn'] = grab_df_subset(df['mat_dn'], keep_rows=keep_rows) if 'mat_orig' in df: df['mat_orig'] = grab_df_subset(df['mat_orig'], keep_rows=keep_rows ) return df
df_filter_row_sum
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(df, threshold, take_abs=True):\n from copy import deepcopy\n from .__init__ import Network\n net = Network()\n if take_abs is True:\n df_copy = deepcopy(df['mat'].abs())\n else:\n df_copy = deepcopy(df['mat'])\n ini_rows = df_copy.index.values.tolist()\n df_copy = df_copy.transpose()\n tmp_sum = df_copy.sum(axis=0)\n tmp_sum = tmp_sum.abs()\n tmp_sum.sort_values(inplace=True, ascending=False)\n tmp_sum = tmp_sum[tmp_sum > threshold]\n keep_rows = sorted(tmp_sum.index.values.tolist())\n if len(keep_rows) < len(ini_rows):\n df['mat'] = grab_df_subset(df['mat'], keep_rows=keep_rows)\n if 'mat_up' in df:\n df['mat_up'] = grab_df_subset(df['mat_up'], keep_rows=keep_rows)\n df['mat_dn'] = grab_df_subset(df['mat_dn'], keep_rows=keep_rows)\n if 'mat_orig' in df:\n df['mat_orig'] = grab_df_subset(df['mat_orig'], keep_rows=keep_rows\n )\n return df\n", "role": "user" }, { "content": "df_filter_row_sum", "role": "assistant" } ]
def x(df, threshold, take_abs=True): from copy import deepcopy from .__init__ import Network net = Network() if take_abs is True: df_copy = deepcopy(df['mat'].abs()) else: df_copy = deepcopy(df['mat']) df_copy = df_copy.transpose() df_copy = df_copy[df_copy.sum(axis=1) > threshold] df_copy = df_copy.transpose() df_copy = df_copy[df_copy.sum(axis=1) > 0] if take_abs is True: inst_rows = df_copy.index.tolist() inst_cols = df_copy.columns.tolist() df['mat'] = grab_df_subset(df['mat'], inst_rows, inst_cols) if 'mat_up' in df: df['mat_up'] = grab_df_subset(df['mat_up'], inst_rows, inst_cols) df['mat_dn'] = grab_df_subset(df['mat_dn'], inst_rows, inst_cols) if 'mat_orig' in df: df['mat_orig'] = grab_df_subset(df['mat_orig'], inst_rows, inst_cols) else: df['mat'] = df_copy return df
df_filter_col_sum
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(df, threshold, take_abs=True):\n from copy import deepcopy\n from .__init__ import Network\n net = Network()\n if take_abs is True:\n df_copy = deepcopy(df['mat'].abs())\n else:\n df_copy = deepcopy(df['mat'])\n df_copy = df_copy.transpose()\n df_copy = df_copy[df_copy.sum(axis=1) > threshold]\n df_copy = df_copy.transpose()\n df_copy = df_copy[df_copy.sum(axis=1) > 0]\n if take_abs is True:\n inst_rows = df_copy.index.tolist()\n inst_cols = df_copy.columns.tolist()\n df['mat'] = grab_df_subset(df['mat'], inst_rows, inst_cols)\n if 'mat_up' in df:\n df['mat_up'] = grab_df_subset(df['mat_up'], inst_rows, inst_cols)\n df['mat_dn'] = grab_df_subset(df['mat_dn'], inst_rows, inst_cols)\n if 'mat_orig' in df:\n df['mat_orig'] = grab_df_subset(df['mat_orig'], inst_rows,\n inst_cols)\n else:\n df['mat'] = df_copy\n return df\n", "role": "user" }, { "content": "df_filter_col_sum", "role": "assistant" } ]
def x(df, inst_rc, threshold, num_occur=1): from copy import deepcopy inst_df = deepcopy(df['mat']) if inst_rc == 'col': inst_df = inst_df.transpose() inst_df = inst_df.abs() ini_rows = inst_df.index.values.tolist() inst_df[inst_df < threshold] = 0 inst_df[inst_df >= threshold] = 1 tmp_sum = inst_df.sum(axis=1) tmp_sum = tmp_sum[tmp_sum >= num_occur] keep_names = tmp_sum.index.values.tolist() if inst_rc == 'row': if len(keep_names) < len(ini_rows): df['mat'] = grab_df_subset(df['mat'], keep_rows=keep_names) if 'mat_up' in df: df['mat_up'] = grab_df_subset(df['mat_up'], keep_rows= keep_names) df['mat_dn'] = grab_df_subset(df['mat_dn'], keep_rows= keep_names) if 'mat_orig' in df: df['mat_orig'] = grab_df_subset(df['mat_orig'], keep_rows= keep_names) elif inst_rc == 'col': inst_df = inst_df.transpose() inst_rows = inst_df.index.values.tolist() inst_cols = keep_names df['mat'] = grab_df_subset(df['mat'], inst_rows, inst_cols) if 'mat_up' in df: df['mat_up'] = grab_df_subset(df['mat_up'], inst_rows, inst_cols) df['mat_dn'] = grab_df_subset(df['mat_dn'], inst_rows, inst_cols) if 'mat_orig' in df: df['mat_orig'] = grab_df_subset(df['mat_orig'], inst_rows, inst_cols) return df
filter_threshold
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(df, inst_rc, threshold, num_occur=1):\n from copy import deepcopy\n inst_df = deepcopy(df['mat'])\n if inst_rc == 'col':\n inst_df = inst_df.transpose()\n inst_df = inst_df.abs()\n ini_rows = inst_df.index.values.tolist()\n inst_df[inst_df < threshold] = 0\n inst_df[inst_df >= threshold] = 1\n tmp_sum = inst_df.sum(axis=1)\n tmp_sum = tmp_sum[tmp_sum >= num_occur]\n keep_names = tmp_sum.index.values.tolist()\n if inst_rc == 'row':\n if len(keep_names) < len(ini_rows):\n df['mat'] = grab_df_subset(df['mat'], keep_rows=keep_names)\n if 'mat_up' in df:\n df['mat_up'] = grab_df_subset(df['mat_up'], keep_rows=\n keep_names)\n df['mat_dn'] = grab_df_subset(df['mat_dn'], keep_rows=\n keep_names)\n if 'mat_orig' in df:\n df['mat_orig'] = grab_df_subset(df['mat_orig'], keep_rows=\n keep_names)\n elif inst_rc == 'col':\n inst_df = inst_df.transpose()\n inst_rows = inst_df.index.values.tolist()\n inst_cols = keep_names\n df['mat'] = grab_df_subset(df['mat'], inst_rows, inst_cols)\n if 'mat_up' in df:\n df['mat_up'] = grab_df_subset(df['mat_up'], inst_rows, inst_cols)\n df['mat_dn'] = grab_df_subset(df['mat_dn'], inst_rows, inst_cols)\n if 'mat_orig' in df:\n df['mat_orig'] = grab_df_subset(df['mat_orig'], inst_rows,\n inst_cols)\n return df\n", "role": "user" }, { "content": "filter_threshold", "role": "assistant" } ]
def x(net, dist_type='cosine', run_clustering=True, dendro=True, requested_views=['pct_row_sum', 'N_row_sum'], linkage_type='average', sim_mat=False, filter_sim=0.1, calc_cat_pval=False, sim_mat_views=[ 'N_row_sum'], run_enrichr=None, enrichrgram=None): from copy import deepcopy import scipy from . import calc_clust, run_filter, make_views, make_sim_mat, cat_pval from . import enrichr_functions as enr_fun df = net.dat_to_df() threshold = 0.0001 df = run_filter.df_filter_row_sum(df, threshold) df = run_filter.df_filter_col_sum(df, threshold) define_cat_colors = False if run_enrichr is not None: df = enr_fun.add_enrichr_cats(df, 'row', run_enrichr) define_cat_colors = True net.df_to_dat(df, define_cat_colors=True) inst_dm = calc_clust.cluster_row_and_col(net, dist_type=dist_type, linkage_type=linkage_type, run_clustering=run_clustering, dendro= dendro, ignore_cat=False, calc_cat_pval=calc_cat_pval) all_views = [] send_df = deepcopy(df) if 'N_row_sum' in requested_views: all_views = make_views.N_rows(net, send_df, all_views, dist_type= dist_type, rank_type='sum') if 'N_row_var' in requested_views: all_views = make_views.N_rows(net, send_df, all_views, dist_type= dist_type, rank_type='var') if 'pct_row_sum' in requested_views: all_views = make_views.pct_rows(net, send_df, all_views, dist_type= dist_type, rank_type='sum') if 'pct_row_var' in requested_views: all_views = make_views.pct_rows(net, send_df, all_views, dist_type= dist_type, rank_type='var') which_sim = [] if sim_mat == True: which_sim = ['row', 'col'] elif sim_mat == 'row': which_sim = ['row'] elif sim_mat == 'col': which_sim = ['col'] if sim_mat is not False: sim_net = make_sim_mat.main(net, inst_dm, which_sim, filter_sim, sim_mat_views) net.sim = {} for inst_rc in which_sim: net.sim[inst_rc] = sim_net[inst_rc].viz if inst_rc == 'row': other_rc = 'col' elif inst_rc == 'col': other_rc = 'row' net.sim[inst_rc]['cat_colors'][inst_rc] = net.viz['cat_colors'][ inst_rc] net.sim[inst_rc]['cat_colors'][other_rc] = net.viz['cat_colors'][ inst_rc] else: net.sim = {} net.viz['views'] = all_views if enrichrgram != None: net.viz['enrichrgram'] = enrichrgram if 'enrichrgram_lib' in net.dat: net.viz['enrichrgram'] = True net.viz['enrichrgram_lib'] = net.dat['enrichrgram_lib'] if 'row_cat_bars' in net.dat: net.viz['row_cat_bars'] = net.dat['row_cat_bars']
make_clust
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(net, dist_type='cosine', run_clustering=True, dendro=True,\n requested_views=['pct_row_sum', 'N_row_sum'], linkage_type='average',\n sim_mat=False, filter_sim=0.1, calc_cat_pval=False, sim_mat_views=[\n 'N_row_sum'], run_enrichr=None, enrichrgram=None):\n from copy import deepcopy\n import scipy\n from . import calc_clust, run_filter, make_views, make_sim_mat, cat_pval\n from . import enrichr_functions as enr_fun\n df = net.dat_to_df()\n threshold = 0.0001\n df = run_filter.df_filter_row_sum(df, threshold)\n df = run_filter.df_filter_col_sum(df, threshold)\n define_cat_colors = False\n if run_enrichr is not None:\n df = enr_fun.add_enrichr_cats(df, 'row', run_enrichr)\n define_cat_colors = True\n net.df_to_dat(df, define_cat_colors=True)\n inst_dm = calc_clust.cluster_row_and_col(net, dist_type=dist_type,\n linkage_type=linkage_type, run_clustering=run_clustering, dendro=\n dendro, ignore_cat=False, calc_cat_pval=calc_cat_pval)\n all_views = []\n send_df = deepcopy(df)\n if 'N_row_sum' in requested_views:\n all_views = make_views.N_rows(net, send_df, all_views, dist_type=\n dist_type, rank_type='sum')\n if 'N_row_var' in requested_views:\n all_views = make_views.N_rows(net, send_df, all_views, dist_type=\n dist_type, rank_type='var')\n if 'pct_row_sum' in requested_views:\n all_views = make_views.pct_rows(net, send_df, all_views, dist_type=\n dist_type, rank_type='sum')\n if 'pct_row_var' in requested_views:\n all_views = make_views.pct_rows(net, send_df, all_views, dist_type=\n dist_type, rank_type='var')\n which_sim = []\n if sim_mat == True:\n which_sim = ['row', 'col']\n elif sim_mat == 'row':\n which_sim = ['row']\n elif sim_mat == 'col':\n which_sim = ['col']\n if sim_mat is not False:\n sim_net = make_sim_mat.main(net, inst_dm, which_sim, filter_sim,\n sim_mat_views)\n net.sim = {}\n for inst_rc in which_sim:\n net.sim[inst_rc] = sim_net[inst_rc].viz\n if inst_rc == 'row':\n other_rc = 'col'\n elif inst_rc == 'col':\n other_rc = 'row'\n net.sim[inst_rc]['cat_colors'][inst_rc] = net.viz['cat_colors'][\n inst_rc]\n net.sim[inst_rc]['cat_colors'][other_rc] = net.viz['cat_colors'][\n inst_rc]\n else:\n net.sim = {}\n net.viz['views'] = all_views\n if enrichrgram != None:\n net.viz['enrichrgram'] = enrichrgram\n if 'enrichrgram_lib' in net.dat:\n net.viz['enrichrgram'] = True\n net.viz['enrichrgram_lib'] = net.dat['enrichrgram_lib']\n if 'row_cat_bars' in net.dat:\n net.viz['row_cat_bars'] = net.dat['row_cat_bars']\n", "role": "user" }, { "content": "make_clust", "role": "assistant" } ]
def x(bytecode, is_async=False): flags = CompilerFlags(0) if not isinstance(bytecode, (_bytecode.Bytecode, _bytecode. ConcreteBytecode, _bytecode.ControlFlowGraph)): msg = ( 'Expected a Bytecode, ConcreteBytecode or ControlFlowGraph instance not %s' ) raise ValueError(msg % bytecode) instructions = bytecode.get_instructions() if isinstance(bytecode, _bytecode.ControlFlowGraph) else bytecode instr_names = {i.name for i in instructions if not isinstance(i, ( _bytecode.SetLineno, _bytecode.Label))} if not instr_names & {'STORE_NAME', 'LOAD_NAME', 'DELETE_NAME'}: flags |= CompilerFlags.OPTIMIZED flags |= bytecode.flags & (CompilerFlags.NEWLOCALS | CompilerFlags. VARARGS | CompilerFlags.VARKEYWORDS | CompilerFlags.NESTED) if instr_names & {'YIELD_VALUE', 'YIELD_FROM'}: if not is_async and not bytecode.flags & CompilerFlags.ASYNC_GENERATOR: flags |= CompilerFlags.GENERATOR else: flags |= CompilerFlags.ASYNC_GENERATOR if not instr_names & {'LOAD_CLOSURE', 'LOAD_DEREF', 'STORE_DEREF', 'DELETE_DEREF', 'LOAD_CLASSDEREF'}: flags |= CompilerFlags.NOFREE if not (bytecode.flags & CompilerFlags.ITERABLE_COROUTINE or flags & CompilerFlags.ASYNC_GENERATOR) and (instr_names & {'GET_AWAITABLE', 'GET_AITER', 'GET_ANEXT', 'BEFORE_ASYNC_WITH', 'SETUP_ASYNC_WITH'} or bytecode.flags & CompilerFlags.COROUTINE): flags |= CompilerFlags.COROUTINE flags |= bytecode.flags & CompilerFlags.ITERABLE_COROUTINE flags |= bytecode.flags & CompilerFlags.FUTURE_GENERATOR_STOP if [bool(flags & getattr(CompilerFlags, k)) for k in ('COROUTINE', 'ITERABLE_COROUTINE', 'GENERATOR', 'ASYNC_GENERATOR')].count(True) > 1: raise ValueError( 'Code should not have more than one of the following flag set : generator, coroutine, iterable coroutine and async generator, got:%s' % flags) return flags
infer_flags
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(bytecode, is_async=False):\n flags = CompilerFlags(0)\n if not isinstance(bytecode, (_bytecode.Bytecode, _bytecode.\n ConcreteBytecode, _bytecode.ControlFlowGraph)):\n msg = (\n 'Expected a Bytecode, ConcreteBytecode or ControlFlowGraph instance not %s'\n )\n raise ValueError(msg % bytecode)\n instructions = bytecode.get_instructions() if isinstance(bytecode,\n _bytecode.ControlFlowGraph) else bytecode\n instr_names = {i.name for i in instructions if not isinstance(i, (\n _bytecode.SetLineno, _bytecode.Label))}\n if not instr_names & {'STORE_NAME', 'LOAD_NAME', 'DELETE_NAME'}:\n flags |= CompilerFlags.OPTIMIZED\n flags |= bytecode.flags & (CompilerFlags.NEWLOCALS | CompilerFlags.\n VARARGS | CompilerFlags.VARKEYWORDS | CompilerFlags.NESTED)\n if instr_names & {'YIELD_VALUE', 'YIELD_FROM'}:\n if not is_async and not bytecode.flags & CompilerFlags.ASYNC_GENERATOR:\n flags |= CompilerFlags.GENERATOR\n else:\n flags |= CompilerFlags.ASYNC_GENERATOR\n if not instr_names & {'LOAD_CLOSURE', 'LOAD_DEREF', 'STORE_DEREF',\n 'DELETE_DEREF', 'LOAD_CLASSDEREF'}:\n flags |= CompilerFlags.NOFREE\n if not (bytecode.flags & CompilerFlags.ITERABLE_COROUTINE or flags &\n CompilerFlags.ASYNC_GENERATOR) and (instr_names & {'GET_AWAITABLE',\n 'GET_AITER', 'GET_ANEXT', 'BEFORE_ASYNC_WITH', 'SETUP_ASYNC_WITH'} or\n bytecode.flags & CompilerFlags.COROUTINE):\n flags |= CompilerFlags.COROUTINE\n flags |= bytecode.flags & CompilerFlags.ITERABLE_COROUTINE\n flags |= bytecode.flags & CompilerFlags.FUTURE_GENERATOR_STOP\n if [bool(flags & getattr(CompilerFlags, k)) for k in ('COROUTINE',\n 'ITERABLE_COROUTINE', 'GENERATOR', 'ASYNC_GENERATOR')].count(True) > 1:\n raise ValueError(\n 'Code should not have more than one of the following flag set : generator, coroutine, iterable coroutine and async generator, got:%s'\n % flags)\n return flags\n", "role": "user" }, { "content": "infer_flags", "role": "assistant" } ]
def x(self): used_blocks = set() for block in self: target_block = block.get_jump() if target_block is not None: used_blocks.add(id(target_block)) labels = {} jumps = [] instructions = [] for block in self: if id(block) in used_blocks: new_label = Label() labels[id(block)] = new_label instructions.append(new_label) for instr in block: if isinstance(instr, (Instr, ConcreteInstr)): instr = instr.copy() if isinstance(instr.arg, BasicBlock): jumps.append(instr) instructions.append(instr) for instr in jumps: instr.arg = labels[id(instr.arg)] bytecode = _bytecode.Bytecode() bytecode._copy_attr_from(self) bytecode.argnames = list(self.argnames) bytecode[:] = instructions return bytecode
to_bytecode
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n used_blocks = set()\n for block in self:\n target_block = block.get_jump()\n if target_block is not None:\n used_blocks.add(id(target_block))\n labels = {}\n jumps = []\n instructions = []\n for block in self:\n if id(block) in used_blocks:\n new_label = Label()\n labels[id(block)] = new_label\n instructions.append(new_label)\n for instr in block:\n if isinstance(instr, (Instr, ConcreteInstr)):\n instr = instr.copy()\n if isinstance(instr.arg, BasicBlock):\n jumps.append(instr)\n instructions.append(instr)\n for instr in jumps:\n instr.arg = labels[id(instr.arg)]\n bytecode = _bytecode.Bytecode()\n bytecode._copy_attr_from(self)\n bytecode.argnames = list(self.argnames)\n bytecode[:] = instructions\n return bytecode\n", "role": "user" }, { "content": "to_bytecode", "role": "assistant" } ]
def x(self, stacksize=None): if stacksize is None: stacksize = self.compute_stacksize() bc = self.to_bytecode() return bc.to_code(stacksize=stacksize)
to_code
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, stacksize=None):\n if stacksize is None:\n stacksize = self.compute_stacksize()\n bc = self.to_bytecode()\n return bc.to_code(stacksize=stacksize)\n", "role": "user" }, { "content": "to_code", "role": "assistant" } ]
def x(self, name, arg=UNSET): self._set(name, arg, self._lineno)
set
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, name, arg=UNSET):\n self._set(name, arg, self._lineno)\n", "role": "user" }, { "content": "set", "role": "assistant" } ]
def x(tf, order=None): global _tf_version_string, _tf_version _tf_version_string = tf.__version__ _tf_version = _parse_tf_version(_tf_version_string) if order is not None: optimize(order)
setup
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(tf, order=None):\n global _tf_version_string, _tf_version\n _tf_version_string = tf.__version__\n _tf_version = _parse_tf_version(_tf_version_string)\n if order is not None:\n optimize(order)\n", "role": "user" }, { "content": "setup", "role": "assistant" } ]
def x(order): if not isinstance(order, (list, tuple)): order = [order] for op in Operation.__subclasses__(): for impl in order: if impl in op.impls: op.use_impl(impl) break
optimize
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(order):\n if not isinstance(order, (list, tuple)):\n order = [order]\n for op in Operation.__subclasses__():\n for impl in order:\n if impl in op.impls:\n op.use_impl(impl)\n break\n", "role": "user" }, { "content": "optimize", "role": "assistant" } ]
def x(td_tensor, indent='| ', max_depth=-1, depth=0): offset = depth * indent line = 'td tensor: %s' % td_tensor.name if td_tensor.value is not None: line += ' (%s)' % (','.join(str(i) for i in td_tensor.value.shape),) print(offset + line) if td_tensor.op and (max_depth < 0 or max_depth > depth): print_op(td_tensor.op, indent=indent, max_depth=max_depth, depth= depth + 1)
print_tensor
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(td_tensor, indent='| ', max_depth=-1, depth=0):\n offset = depth * indent\n line = 'td tensor: %s' % td_tensor.name\n if td_tensor.value is not None:\n line += ' (%s)' % (','.join(str(i) for i in td_tensor.value.shape),)\n print(offset + line)\n if td_tensor.op and (max_depth < 0 or max_depth > depth):\n print_op(td_tensor.op, indent=indent, max_depth=max_depth, depth=\n depth + 1)\n", "role": "user" }, { "content": "print_tensor", "role": "assistant" } ]
def x(td_op, indent='| ', max_depth=-1, depth=0): offset = depth * indent line = 'td op: %s (%s)' % (td_op.name, ','.join(td_op.types)) print(offset + line) if max_depth < 0 or max_depth > depth: for td_tensor in td_op.inputs: print_tensor(td_tensor, indent=indent, max_depth=max_depth, depth=depth + 1)
print_op
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(td_op, indent='| ', max_depth=-1, depth=0):\n offset = depth * indent\n line = 'td op: %s (%s)' % (td_op.name, ','.join(td_op.types))\n print(offset + line)\n if max_depth < 0 or max_depth > depth:\n for td_tensor in td_op.inputs:\n print_tensor(td_tensor, indent=indent, max_depth=max_depth,\n depth=depth + 1)\n", "role": "user" }, { "content": "print_op", "role": "assistant" } ]
def x(tf_tensor, indent='| ', max_depth=-1, depth=0): offset = depth * indent shape = tuple(int(i) for i in tf_tensor.get_shape()) line = 'tf tensor: %s (%s)' % (tf_tensor.name, ','.join(str(i) for i in shape)) print(offset + line) if tf_tensor.op and (max_depth < 0 or max_depth > depth): print_tf_op(tf_tensor.op, indent=indent, max_depth=max_depth, depth =depth + 1)
print_tf_tensor
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(tf_tensor, indent='| ', max_depth=-1, depth=0):\n offset = depth * indent\n shape = tuple(int(i) for i in tf_tensor.get_shape())\n line = 'tf tensor: %s (%s)' % (tf_tensor.name, ','.join(str(i) for i in\n shape))\n print(offset + line)\n if tf_tensor.op and (max_depth < 0 or max_depth > depth):\n print_tf_op(tf_tensor.op, indent=indent, max_depth=max_depth, depth\n =depth + 1)\n", "role": "user" }, { "content": "print_tf_tensor", "role": "assistant" } ]
def x(tf_op, indent='| ', max_depth=-1, depth=0): offset = depth * indent line = 'tf op: %s (%s)' % (tf_op.name, tf_op.type) print(offset + line) if max_depth < 0 or max_depth > depth: for tf_tensor in tf_op.inputs: print_tf_tensor(tf_tensor, indent=indent, max_depth=max_depth, depth=depth + 1)
print_tf_op
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(tf_op, indent='| ', max_depth=-1, depth=0):\n offset = depth * indent\n line = 'tf op: %s (%s)' % (tf_op.name, tf_op.type)\n print(offset + line)\n if max_depth < 0 or max_depth > depth:\n for tf_tensor in tf_op.inputs:\n print_tf_tensor(tf_tensor, indent=indent, max_depth=max_depth,\n depth=depth + 1)\n", "role": "user" }, { "content": "print_tf_op", "role": "assistant" } ]
def x(start, stop, num): return np.linspace(start, stop, num=num, dtype=np.float32),
LinSpace
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(start, stop, num):\n return np.linspace(start, stop, num=num, dtype=np.float32),\n", "role": "user" }, { "content": "LinSpace", "role": "assistant" } ]
def x(start, limit, delta): return np.arange(start, limit, delta, dtype=np.int32),
Range
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(start, limit, delta):\n return np.arange(start, limit, delta, dtype=np.int32),\n", "role": "user" }, { "content": "Range", "role": "assistant" } ]
def x(shape, dtype, seed): if seed: np.random.seed(seed) return np.random.normal(size=reduce(mul, shape)).reshape(shape).astype( dtype_map[dtype]),
RandomStandardNormal
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(shape, dtype, seed):\n if seed:\n np.random.seed(seed)\n return np.random.normal(size=reduce(mul, shape)).reshape(shape).astype(\n dtype_map[dtype]),\n", "role": "user" }, { "content": "RandomStandardNormal", "role": "assistant" } ]
def x(shape, dtype, seed): if seed: np.random.seed(seed) n = reduce(mul, shape) r = np.empty(n, dtype=dtype_map[dtype]) idxs = np.ones(n, dtype=np.bool) while n: r[idxs] = np.random.normal(size=n) idxs = np.abs(r) > 2 n = np.sum(idxs) return r.reshape(shape),
TruncatedNormal
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(shape, dtype, seed):\n if seed:\n np.random.seed(seed)\n n = reduce(mul, shape)\n r = np.empty(n, dtype=dtype_map[dtype])\n idxs = np.ones(n, dtype=np.bool)\n while n:\n r[idxs] = np.random.normal(size=n)\n idxs = np.abs(r) > 2\n n = np.sum(idxs)\n return r.reshape(shape),\n", "role": "user" }, { "content": "TruncatedNormal", "role": "assistant" } ]
def x(shape, dtype, seed): if seed: np.random.seed(seed) return np.random.uniform(size=shape).astype(dtype_map[dtype]),
RandomUniform
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(shape, dtype, seed):\n if seed:\n np.random.seed(seed)\n return np.random.uniform(size=shape).astype(dtype_map[dtype]),\n", "role": "user" }, { "content": "RandomUniform", "role": "assistant" } ]
def x(shape, minval, maxval, seed): if seed: np.random.seed(seed) return np.random.randint(minval, maxval, size=shape),
RandomUniformInt
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(shape, minval, maxval, seed):\n if seed:\n np.random.seed(seed)\n return np.random.randint(minval, maxval, size=shape),\n", "role": "user" }, { "content": "RandomUniformInt", "role": "assistant" } ]
def x(a, seed): if seed: np.random.seed(seed) r = a.copy() np.random.shuffle(r) return r,
RandomShuffle
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, seed):\n if seed:\n np.random.seed(seed)\n r = a.copy()\n np.random.shuffle(r)\n return r,\n", "role": "user" }, { "content": "RandomShuffle", "role": "assistant" } ]
def x(a): return np.array([len(a.shape)], dtype=np.int32),
Rank
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a):\n return np.array([len(a.shape)], dtype=np.int32),\n", "role": "user" }, { "content": "Rank", "role": "assistant" } ]
def x(a, squeeze_dims): if not squeeze_dims: squeeze_dims = list(range(len(a.shape))) slices = [(0 if dim == 1 and i in squeeze_dims else slice(None)) for i, dim in enumerate(a.shape)] return np.copy(a)[slices],
Squeeze
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, squeeze_dims):\n if not squeeze_dims:\n squeeze_dims = list(range(len(a.shape)))\n slices = [(0 if dim == 1 and i in squeeze_dims else slice(None)) for i,\n dim in enumerate(a.shape)]\n return np.copy(a)[slices],\n", "role": "user" }, { "content": "Squeeze", "role": "assistant" } ]
def x(a, dim): shape = list(a.shape) if dim >= 0: shape.insert(dim, 1) else: shape.insert(len(shape) + dim + 1, 1) return np.copy(a).reshape(*shape),
ExpandDims
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, dim):\n shape = list(a.shape)\n if dim >= 0:\n shape.insert(dim, 1)\n else:\n shape.insert(len(shape) + dim + 1, 1)\n return np.copy(a).reshape(*shape),\n", "role": "user" }, { "content": "ExpandDims", "role": "assistant" } ]
def x(a, begin, size): return np.copy(a)[[slice(*tpl) for tpl in zip(begin, begin + size)]],
Slice
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, begin, size):\n return np.copy(a)[[slice(*tpl) for tpl in zip(begin, begin + size)]],\n", "role": "user" }, { "content": "Slice", "role": "assistant" } ]
def x(axis, a, n): return tuple(np.split(np.copy(a), n, axis=axis))
Split
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(axis, a, n):\n return tuple(np.split(np.copy(a), n, axis=axis))\n", "role": "user" }, { "content": "Split", "role": "assistant" } ]
def x(a, splits, axis): return tuple(np.split(np.copy(a), np.cumsum(splits), axis=axis))
SplitV
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, splits, axis):\n return tuple(np.split(np.copy(a), np.cumsum(splits), axis=axis))\n", "role": "user" }, { "content": "SplitV", "role": "assistant" } ]
def x(inputs): axis = inputs.pop() return np.concatenate(inputs, axis=axis),
ConcatV2
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(inputs):\n axis = inputs.pop()\n return np.concatenate(inputs, axis=axis),\n", "role": "user" }, { "content": "ConcatV2", "role": "assistant" } ]
def x(a, num, axis): return tuple(np.squeeze(b, axis=axis) for b in np.split(a, num, axis=axis))
Unpack
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, num, axis):\n return tuple(np.squeeze(b, axis=axis) for b in np.split(a, num, axis=axis))\n", "role": "user" }, { "content": "Unpack", "role": "assistant" } ]
def x(a, seq_lengths, seq_dim, batch_dim): r = np.copy(a) invidxs = (len(r.shape) - 1) * [slice(None)] if seq_dim < batch_dim: invidxs[seq_dim] = slice(None, None, -1) else: invidxs[seq_dim - 1] = slice(None, None, -1) _invidxs = tuple(invidxs) selidxs = len(r.shape) * [slice(None)] for i, l in enumerate(seq_lengths): if not l: continue selidxs[batch_dim] = i selidxs[seq_dim] = slice(0, l) _selidxs = tuple(selidxs) r[_selidxs] = a[_selidxs][_invidxs] return r,
ReverseSequence
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, seq_lengths, seq_dim, batch_dim):\n r = np.copy(a)\n invidxs = (len(r.shape) - 1) * [slice(None)]\n if seq_dim < batch_dim:\n invidxs[seq_dim] = slice(None, None, -1)\n else:\n invidxs[seq_dim - 1] = slice(None, None, -1)\n _invidxs = tuple(invidxs)\n selidxs = len(r.shape) * [slice(None)]\n for i, l in enumerate(seq_lengths):\n if not l:\n continue\n selidxs[batch_dim] = i\n selidxs[seq_dim] = slice(0, l)\n _selidxs = tuple(selidxs)\n r[_selidxs] = a[_selidxs][_invidxs]\n return r,\n", "role": "user" }, { "content": "ReverseSequence", "role": "assistant" } ]
def x(a, axes): idxs = tuple(slice(None, None, 2 * int(i not in axes) - 1) for i in range(len(a.shape))) return np.copy(a[idxs]),
ReverseV2
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, axes):\n idxs = tuple(slice(None, None, 2 * int(i not in axes) - 1) for i in\n range(len(a.shape)))\n return np.copy(a[idxs]),\n", "role": "user" }, { "content": "ReverseV2", "role": "assistant" } ]
def x(a, b, x): return sp.special.betainc(a, b, x),
Betainc
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, b, x):\n return sp.special.betainc(a, b, x),\n", "role": "user" }, { "content": "Betainc", "role": "assistant" } ]
def x(a): r = np.zeros(2 * a.shape, dtype=a.dtype) for idx, v in np.ndenumerate(a): r[2 * idx] = v return r,
Diag
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a):\n r = np.zeros(2 * a.shape, dtype=a.dtype)\n for idx, v in np.ndenumerate(a):\n r[2 * idx] = v\n return r,\n", "role": "user" }, { "content": "Diag", "role": "assistant" } ]
def x(a): r = np.zeros(a.shape[:-2] + (min(a.shape[-2:]),)) for coord in np.ndindex(a.shape[:-2]): pos = coord + (Ellipsis,) r[pos] = np.diagonal(a[pos]) return r,
MatrixDiagPart
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a):\n r = np.zeros(a.shape[:-2] + (min(a.shape[-2:]),))\n for coord in np.ndindex(a.shape[:-2]):\n pos = coord + (Ellipsis,)\n r[pos] = np.diagonal(a[pos])\n return r,\n", "role": "user" }, { "content": "MatrixDiagPart", "role": "assistant" } ]
def x(a, b, transpose_a, transpose_b): return np.dot(a if not transpose_a else np.transpose(a), b if not transpose_b else np.transpose(b)),
MatMul
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, b, transpose_a, transpose_b):\n return np.dot(a if not transpose_a else np.transpose(a), b if not\n transpose_b else np.transpose(b)),\n", "role": "user" }, { "content": "MatMul", "role": "assistant" } ]
def x(a, adj): return np.linalg.inv(a if not adj else _adjoint(a)),
MatrixInverse
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, adj):\n return np.linalg.inv(a if not adj else _adjoint(a)),\n", "role": "user" }, { "content": "MatrixInverse", "role": "assistant" } ]
def x(a, rhs, adj): return np.linalg.solve(a if not adj else _adjoint(a), rhs),
MatrixSolve
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, rhs, adj):\n return np.linalg.solve(a if not adj else _adjoint(a), rhs),\n", "role": "user" }, { "content": "MatrixSolve", "role": "assistant" } ]
def x(a, rhs, lower, adj): trans = 0 if not adj else 2 r = np.empty(rhs.shape).astype(a.dtype) for coord in np.ndindex(a.shape[:-2]): pos = coord + (Ellipsis,) r[pos] = sp.linalg.solve_triangular(a[pos] if not adj else np.conj( a[pos]), rhs[pos], trans=trans, lower=lower) return r,
MatrixTriangularSolve
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, rhs, lower, adj):\n trans = 0 if not adj else 2\n r = np.empty(rhs.shape).astype(a.dtype)\n for coord in np.ndindex(a.shape[:-2]):\n pos = coord + (Ellipsis,)\n r[pos] = sp.linalg.solve_triangular(a[pos] if not adj else np.conj(\n a[pos]), rhs[pos], trans=trans, lower=lower)\n return r,\n", "role": "user" }, { "content": "MatrixTriangularSolve", "role": "assistant" } ]
def x(a, rhs, l2_reg): r = np.empty(rhs.shape).astype(a.dtype) for coord in np.ndindex(a.shape[:-2]): pos = coord + (Ellipsis,) r[pos] = np.linalg.lstsq(a[pos], rhs[pos])[0] return r,
MatrixSolveLs
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, rhs, l2_reg):\n r = np.empty(rhs.shape).astype(a.dtype)\n for coord in np.ndindex(a.shape[:-2]):\n pos = coord + (Ellipsis,)\n r[pos] = np.linalg.lstsq(a[pos], rhs[pos])[0]\n return r,\n", "role": "user" }, { "content": "MatrixSolveLs", "role": "assistant" } ]
def x(a): shape = list(a.shape) shape[-2] += 1 return np.append(*np.linalg.eig(a)).reshape(*shape),
SelfAdjointEig
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a):\n shape = list(a.shape)\n shape[-2] += 1\n return np.append(*np.linalg.eig(a)).reshape(*shape),\n", "role": "user" }, { "content": "SelfAdjointEig", "role": "assistant" } ]
def x(a, uv, full): u, s, v = np.linalg.svd(a, full_matrices=full, compute_uv=uv) return s, u, v
Svd
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, uv, full):\n u, s, v = np.linalg.svd(a, full_matrices=full, compute_uv=uv)\n return s, u, v\n", "role": "user" }, { "content": "Svd", "role": "assistant" } ]
def x(a, axis, keep_dims): return np.sum(a, axis=axis if not isinstance(axis, np.ndarray) else tuple(axis), keepdims=keep_dims),
Sum
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, axis, keep_dims):\n return np.sum(a, axis=axis if not isinstance(axis, np.ndarray) else\n tuple(axis), keepdims=keep_dims),\n", "role": "user" }, { "content": "Sum", "role": "assistant" } ]
def x(a, axis, keep_dims): return np.prod(a, axis=axis if not isinstance(axis, np.ndarray) else tuple(axis), keepdims=keep_dims),
Prod
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, axis, keep_dims):\n return np.prod(a, axis=axis if not isinstance(axis, np.ndarray) else\n tuple(axis), keepdims=keep_dims),\n", "role": "user" }, { "content": "Prod", "role": "assistant" } ]
def x(a, axis, keep_dims): return np.amin(a, axis=axis if not isinstance(axis, np.ndarray) else tuple(axis), keepdims=keep_dims),
Min
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, axis, keep_dims):\n return np.amin(a, axis=axis if not isinstance(axis, np.ndarray) else\n tuple(axis), keepdims=keep_dims),\n", "role": "user" }, { "content": "Min", "role": "assistant" } ]
def x(a, axis, keep_dims): return np.amax(a, axis=axis if not isinstance(axis, np.ndarray) else tuple(axis), keepdims=keep_dims),
Max
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, axis, keep_dims):\n return np.amax(a, axis=axis if not isinstance(axis, np.ndarray) else\n tuple(axis), keepdims=keep_dims),\n", "role": "user" }, { "content": "Max", "role": "assistant" } ]
def x(a, axis, keep_dims): return np.mean(a, axis=axis if not isinstance(axis, np.ndarray) else tuple(axis), keepdims=keep_dims),
Mean
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, axis, keep_dims):\n return np.mean(a, axis=axis if not isinstance(axis, np.ndarray) else\n tuple(axis), keepdims=keep_dims),\n", "role": "user" }, { "content": "Mean", "role": "assistant" } ]
def x(a, axis, keep_dims): return np.all(a, axis=axis if not isinstance(axis, np.ndarray) else tuple(axis), keepdims=keep_dims),
All
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, axis, keep_dims):\n return np.all(a, axis=axis if not isinstance(axis, np.ndarray) else\n tuple(axis), keepdims=keep_dims),\n", "role": "user" }, { "content": "All", "role": "assistant" } ]
def x(a, axis, keep_dims): return np.any(a, axis=axis if not isinstance(axis, np.ndarray) else tuple(axis), keepdims=keep_dims),
Any
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, axis, keep_dims):\n return np.any(a, axis=axis if not isinstance(axis, np.ndarray) else\n tuple(axis), keepdims=keep_dims),\n", "role": "user" }, { "content": "Any", "role": "assistant" } ]
def x(a, ids, *args): func = lambda idxs: reduce(np.add, a[idxs]) return seg_map(func, a, ids),
SegmentSum
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, ids, *args):\n func = lambda idxs: reduce(np.add, a[idxs])\n return seg_map(func, a, ids),\n", "role": "user" }, { "content": "SegmentSum", "role": "assistant" } ]
def x(a, ids): func = lambda idxs: reduce(np.multiply, a[idxs]) return seg_map(func, a, ids),
SegmentProd
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, ids):\n func = lambda idxs: reduce(np.multiply, a[idxs])\n return seg_map(func, a, ids),\n", "role": "user" }, { "content": "SegmentProd", "role": "assistant" } ]
def x(a, ids): func = lambda idxs: np.amin(a[idxs], axis=0) return seg_map(func, a, ids),
SegmentMin
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, ids):\n func = lambda idxs: np.amin(a[idxs], axis=0)\n return seg_map(func, a, ids),\n", "role": "user" }, { "content": "SegmentMin", "role": "assistant" } ]
def x(a, ids): func = lambda idxs: np.amax(a[idxs], axis=0) return seg_map(func, a, ids),
SegmentMax
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, ids):\n func = lambda idxs: np.amax(a[idxs], axis=0)\n return seg_map(func, a, ids),\n", "role": "user" }, { "content": "SegmentMax", "role": "assistant" } ]
def x(a, ids): func = lambda idxs: np.mean(a[idxs], axis=0) return seg_map(func, a, ids),
SegmentMean
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, ids):\n func = lambda idxs: np.mean(a[idxs], axis=0)\n return seg_map(func, a, ids),\n", "role": "user" }, { "content": "SegmentMean", "role": "assistant" } ]
def x(a, idxs, ids): func = lambda _idxs: np.divide(reduce(np.add, a[idxs][_idxs]), np.math. sqrt(len(_idxs))) return seg_map(func, a, ids),
SparseSegmentSqrtN
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, idxs, ids):\n func = lambda _idxs: np.divide(reduce(np.add, a[idxs][_idxs]), np.math.\n sqrt(len(_idxs)))\n return seg_map(func, a, ids),\n", "role": "user" }, { "content": "SparseSegmentSqrtN", "role": "assistant" } ]
def x(a, b): d = np.setdiff1d(a, b) return d, np.searchsorted(a, d).astype(np.int32)
ListDiff
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, b):\n d = np.setdiff1d(a, b)\n return d, np.searchsorted(a, d).astype(np.int32)\n", "role": "user" }, { "content": "ListDiff", "role": "assistant" } ]
def x(a, t): _, idxs, inv = np.unique(a, return_index=True, return_inverse=True) return np.copy(a)[np.sort(idxs)], idxs[inv].astype(dtype_map[t])
Unique
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, t):\n _, idxs, inv = np.unique(a, return_index=True, return_inverse=True)\n return np.copy(a)[np.sort(idxs)], idxs[inv].astype(dtype_map[t])\n", "role": "user" }, { "content": "Unique", "role": "assistant" } ]
def x(a): return np.where(a < 0, np.subtract(np.exp(a), 1), a),
Elu
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a):\n return np.where(a < 0, np.subtract(np.exp(a), 1), a),\n", "role": "user" }, { "content": "Elu", "role": "assistant" } ]
def x(a): return np.divide(a, np.add(np.abs(a), 1)),
Softsign
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a):\n return np.divide(a, np.add(np.abs(a), 1)),\n", "role": "user" }, { "content": "Softsign", "role": "assistant" } ]
def x(a): e = np.exp(a) return np.divide(e, np.sum(e, axis=-1, keepdims=True)),
Softmax
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a):\n e = np.exp(a)\n return np.divide(e, np.sum(e, axis=-1, keepdims=True)),\n", "role": "user" }, { "content": "Softmax", "role": "assistant" } ]
def x(a, f, strides, padding, data_format): if data_format.decode('ascii') == 'NCHW': a = np.rollaxis(a, 1, -1), patches = _conv_patches(a, f, 3 * [strides], padding.decode('ascii')) conv = np.sum(patches, axis=tuple(range(-f.ndim, -1))) if data_format.decode('ascii') == 'NCHW': conv = np.rollaxis(conv, -1, 1) return conv,
Conv1D
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, f, strides, padding, data_format):\n if data_format.decode('ascii') == 'NCHW':\n a = np.rollaxis(a, 1, -1),\n patches = _conv_patches(a, f, 3 * [strides], padding.decode('ascii'))\n conv = np.sum(patches, axis=tuple(range(-f.ndim, -1)))\n if data_format.decode('ascii') == 'NCHW':\n conv = np.rollaxis(conv, -1, 1)\n return conv,\n", "role": "user" }, { "content": "Conv1D", "role": "assistant" } ]
def x(a, f, strides, padding): patches = _conv_patches(a, f, strides, padding.decode('ascii')) return np.sum(patches, axis=tuple(range(-f.ndim, -1))),
Conv3D
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, f, strides, padding):\n patches = _conv_patches(a, f, strides, padding.decode('ascii'))\n return np.sum(patches, axis=tuple(range(-f.ndim, -1))),\n", "role": "user" }, { "content": "Conv3D", "role": "assistant" } ]
def x(a, k, strides, padding, data_format): if data_format.decode('ascii') == 'NCHW': a = np.rollaxis(a, 1, -1), patches = _pool_patches(a, k, strides, padding.decode('ascii')) pool = np.average(patches, axis=tuple(range(-len(k), 0))) if data_format.decode('ascii') == 'NCHW': pool = np.rollaxis(pool, -1, 1) return pool,
AvgPool
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, k, strides, padding, data_format):\n if data_format.decode('ascii') == 'NCHW':\n a = np.rollaxis(a, 1, -1),\n patches = _pool_patches(a, k, strides, padding.decode('ascii'))\n pool = np.average(patches, axis=tuple(range(-len(k), 0)))\n if data_format.decode('ascii') == 'NCHW':\n pool = np.rollaxis(pool, -1, 1)\n return pool,\n", "role": "user" }, { "content": "AvgPool", "role": "assistant" } ]
def x(a, k, strides, padding, data_format): if data_format.decode('ascii') == 'NCHW': a = np.rollaxis(a, 1, -1), patches = _pool_patches(a, k, strides, padding.decode('ascii')) pool = np.amax(patches, axis=tuple(range(-len(k), 0))) if data_format.decode('ascii') == 'NCHW': pool = np.rollaxis(pool, -1, 1) return pool,
MaxPool
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, k, strides, padding, data_format):\n if data_format.decode('ascii') == 'NCHW':\n a = np.rollaxis(a, 1, -1),\n patches = _pool_patches(a, k, strides, padding.decode('ascii'))\n pool = np.amax(patches, axis=tuple(range(-len(k), 0)))\n if data_format.decode('ascii') == 'NCHW':\n pool = np.rollaxis(pool, -1, 1)\n return pool,\n", "role": "user" }, { "content": "MaxPool", "role": "assistant" } ]
def x(a, k, strides, padding): patches = _pool_patches(a, k, strides, padding.decode('ascii')) return np.average(patches, axis=tuple(range(-len(k), 0))),
AvgPool3D
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, k, strides, padding):\n patches = _pool_patches(a, k, strides, padding.decode('ascii'))\n return np.average(patches, axis=tuple(range(-len(k), 0))),\n", "role": "user" }, { "content": "AvgPool3D", "role": "assistant" } ]
def x(a, k, strides, padding): patches = _pool_patches(a, k, strides, padding.decode('ascii')) return np.amax(patches, axis=tuple(range(-len(k), 0))),
MaxPool3D
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, k, strides, padding):\n patches = _pool_patches(a, k, strides, padding.decode('ascii'))\n return np.amax(patches, axis=tuple(range(-len(k), 0))),\n", "role": "user" }, { "content": "MaxPool3D", "role": "assistant" } ]
def x(self, *names, **kwargs): tensors = tuple(self._get(name, **kwargs) for name in names) return tensors[0] if len(names) == 1 else tensors
get
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, *names, **kwargs):\n tensors = tuple(self._get(name, **kwargs) for name in names)\n return tensors[0] if len(names) == 1 else tensors\n", "role": "user" }, { "content": "get", "role": "assistant" } ]
def x(self, tensor, tf_sess=None, key=None, **kwargs): if not isinstance(tensor, Tensor): tensor = Tensor(tensor, tf_sess, **kwargs) if key is None: if len(self.roots) == 0: key = 0 else: key = max(self.roots.keys()) + 1 self.roots[key] = tensor
add
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, tensor, tf_sess=None, key=None, **kwargs):\n if not isinstance(tensor, Tensor):\n tensor = Tensor(tensor, tf_sess, **kwargs)\n if key is None:\n if len(self.roots) == 0:\n key = 0\n else:\n key = max(self.roots.keys()) + 1\n self.roots[key] = tensor\n", "role": "user" }, { "content": "add", "role": "assistant" } ]
def x(self, path): path = os.path.expandvars(os.path.expanduser(path)) with open(path, 'rb') as f: roots = pickle.load(f) for key, tensor in roots.items(): self.add(tensor, key=key)
load
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, path):\n path = os.path.expandvars(os.path.expanduser(path))\n with open(path, 'rb') as f:\n roots = pickle.load(f)\n for key, tensor in roots.items():\n self.add(tensor, key=key)\n", "role": "user" }, { "content": "load", "role": "assistant" } ]
def x(self, path): path = os.path.expandvars(os.path.expanduser(path)) with open(path, 'wb') as f: pickle.dump(self.roots, f)
save
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, path):\n path = os.path.expandvars(os.path.expanduser(path))\n with open(path, 'wb') as f:\n pickle.dump(self.roots, f)\n", "role": "user" }, { "content": "save", "role": "assistant" } ]
def x(self, *names, **kwargs): tensor_ensembles = [TensorEnsemble([], self.method) for name in names] for model in self.models: tensors = model.get(*names, **kwargs) if not isinstance(tensors, tuple): tensors = tensors, for i, t in enumerate(tensors if isinstance(tensors, tuple) else ( tensors,)): tensor_ensembles[i].tensors.append(t) return tensor_ensembles[0] if len(names) == 1 else tuple(tensor_ensembles)
get
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, *names, **kwargs):\n tensor_ensembles = [TensorEnsemble([], self.method) for name in names]\n for model in self.models:\n tensors = model.get(*names, **kwargs)\n if not isinstance(tensors, tuple):\n tensors = tensors,\n for i, t in enumerate(tensors if isinstance(tensors, tuple) else (\n tensors,)):\n tensor_ensembles[i].tensors.append(t)\n return tensor_ensembles[0] if len(names) == 1 else tuple(tensor_ensembles)\n", "role": "user" }, { "content": "get", "role": "assistant" } ]
def x(self, paths): for path in paths: self.models.append(Model(path))
load
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, paths):\n for path in paths:\n self.models.append(Model(path))\n", "role": "user" }, { "content": "load", "role": "assistant" } ]
def x(self, feed_dict=None): for tensor_ensemble in feed_dict: if len(tensor_ensemble.tensors) != len(self.tensors): raise EnsembleMismatchException( 'incompatible lengths of tensors: %d, %d' % (len(self. tensors), len(tensor_ensemble.tensors))) _uuid = uuid4() feed_dicts = [{} for _ in range(len(self.tensors))] for tensor_ensemble, value in feed_dict.items(): for i, tensor in enumerate(tensor_ensemble.tensors): if tensor is not None: feed_dicts[i][tensor] = value[i] if isinstance(value, (list, tuple)) else value values = [t.eval(feed_dict=d, _uuid=_uuid) for t, d in zip(self.tensors, feed_dicts)] return self.func(values)
eval
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, feed_dict=None):\n for tensor_ensemble in feed_dict:\n if len(tensor_ensemble.tensors) != len(self.tensors):\n raise EnsembleMismatchException(\n 'incompatible lengths of tensors: %d, %d' % (len(self.\n tensors), len(tensor_ensemble.tensors)))\n _uuid = uuid4()\n feed_dicts = [{} for _ in range(len(self.tensors))]\n for tensor_ensemble, value in feed_dict.items():\n for i, tensor in enumerate(tensor_ensemble.tensors):\n if tensor is not None:\n feed_dicts[i][tensor] = value[i] if isinstance(value, (list,\n tuple)) else value\n values = [t.eval(feed_dict=d, _uuid=_uuid) for t, d in zip(self.tensors,\n feed_dicts)]\n return self.func(values)\n", "role": "user" }, { "content": "eval", "role": "assistant" } ]
def x(self, values): if self.method == METHOD_MEAN: return self.func_mean(values) elif self.method == METHOD_MAX: return self.func_max(values) elif self.method == METHOD_MIN: return self.func_min(values) elif self.method == METHOD_CUSTOM: return self.func_custom(values) else: raise UnknownEnsembleMethodException(self.method)
func
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, values):\n if self.method == METHOD_MEAN:\n return self.func_mean(values)\n elif self.method == METHOD_MAX:\n return self.func_max(values)\n elif self.method == METHOD_MIN:\n return self.func_min(values)\n elif self.method == METHOD_CUSTOM:\n return self.func_custom(values)\n else:\n raise UnknownEnsembleMethodException(self.method)\n", "role": "user" }, { "content": "func", "role": "assistant" } ]
def x(self): pressed = [] for pin in (self.row_pins + self.col_pins): pin.direction = Direction.INPUT pin.pull = Pull.UP for row in range(len(self.row_pins)): self.row_pins[row].direction = Direction.OUTPUT self.row_pins[row].value = False for col in range(len(self.col_pins)): if not self.col_pins[col].value: pressed.append(self.keys[row][col]) self.row_pins[row].direction = Direction.INPUT self.row_pins[row].pull = Pull.UP return pressed
pressed_keys
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n pressed = []\n for pin in (self.row_pins + self.col_pins):\n pin.direction = Direction.INPUT\n pin.pull = Pull.UP\n for row in range(len(self.row_pins)):\n self.row_pins[row].direction = Direction.OUTPUT\n self.row_pins[row].value = False\n for col in range(len(self.col_pins)):\n if not self.col_pins[col].value:\n pressed.append(self.keys[row][col])\n self.row_pins[row].direction = Direction.INPUT\n self.row_pins[row].pull = Pull.UP\n return pressed\n", "role": "user" }, { "content": "pressed_keys", "role": "assistant" } ]