Esempio n. 1
0
    def test_chart_pr_curves(self):
        recall_axis = np.array([1, 2, 3, 4, 5, 6])
        curve_info = {
            1: {
                'recalls': recall_axis,
                'precisions': 2 * recall_axis,
                'avg_prec': 0.6,
                'best_op_pt': {
                    'threshold': 0.6,
                    'f1': 0.82,
                    'rec': 2,
                    'prec': 4,
                }
            },
            2: {
                'recalls': recall_axis,
                'precisions': 0.5 * recall_axis,
                'avg_prec': 0.8,
            }
        }

        num_classes, fig = \
            ClassificationPlotter.chart_pr_curves(curve_info)

        self.assertEqual(num_classes, 2)
        self.assertEqual(len(fig.axes), 1)
        ax = fig.axes[0]
        self.assertEqual(ax.get_xlabel(), 'recall')
        self.assertEqual(ax.get_ylabel(), 'precision')

        # Allow the fig to show
        # before asking user to
        # check it (the pause())
        fig.show()
        plt.pause(0.001)

        fig_ok = FileUtils.user_confirm(f"Fig should have 2 lines, one point, and a legend\n" +\
                                         f"Looks OK? (Y/n")
        if not fig_ok:
            self.fail("PR curve was not correct")
Esempio n. 2
0
    def create_csv_writer(self, raw_data_dir):
        '''
        Create a csv_writer that will fill a csv
        file during training/validation as follows:
        
            epoch  train_preds   train_labels  val_preds  val_labels
            
        Cols after the integer 'epoch' col will each be
        an array of ints:
        
                  train_preds    train_lbls   val_preds  val_lbls
                2,"[2,5,1,2,3]","[2,6,1,2,1]","[1,2]",    "[1,3]" 
        
        If raw_data_dir is provided as a str, it is
        taken as the directory where csv file with predictions
        and labels are to be written. The dir is created if necessary.
         
        If the arg is instead set to True, a dir 'runs_raw_results' is
        created under this script's directory if it does not
        exist. Then a subdirectory is created for this run,
        using the hparam settings to build a file name. The dir
        is created if needed. Result ex.:
        
              <script_dir>
                   runs_raw_results
                       Run_lr_0.001_br_32
                           run_2021_05_ ... _lr_0.001_br_32.csv
        
        
        Then file name is created, again from the run
        hparam settings. If this file exists, user is asked whether
        to remove or append. The inst var self.csv_writer is
        initialized to:
        
           o None if csv file exists, but is not to 
             be overwritten nor appended-to
           o A filed descriptor for a file open for either
             'write' or 'append.
        
        :param raw_data_dir: If simply True, create dir and file names
            from hparams, and create as needed. If a string, it is 
            assumed to be the directory where a .csv file is to be
            created. If None, self.csv_writer is set to None.
        :type raw_data_dir: {None | True | str|
        :return: CSV writer ready for action. Set either to
            write a fresh file, or append to an existing file.
            Unless file exists, and user decided not to overwrite
        :rtype: {None | csv.writer}
        '''

        # Ensure the csv file root dir exists if
        # we'll do a csv dir and run-file below it:

        if type(raw_data_dir) == str:
            raw_data_root = raw_data_dir
        else:
            raw_data_root = os.path.join(self.curr_dir, 'runs_raw_results')

        if not os.path.exists(raw_data_root):
            os.mkdir(raw_data_root)

        # Can rely on raw_data_root being defined and existing:

        if raw_data_dir is None:
            return None

        # Create both a raw dir sub-directory and a .csv file
        # for this run:
        csv_subdir_name = FileUtils.construct_filename(self.config.Training,
                                                       prefix='Run',
                                                       incl_date=True)
        os.makedirs(csv_subdir_name)

        # Create a csv file name:
        csv_file_nm = FileUtils.construct_filename(self.config.Training,
                                                   prefix='run',
                                                   suffix='.csv',
                                                   incl_date=True)

        csv_path = os.path.join(raw_data_root, csv_file_nm)

        # Get csv_raw_fd appropriately:

        if os.path.exists(csv_path):
            do_overwrite = FileUtils.user_confirm(
                f"File {csv_path} exists; overwrite?", default='N')
            if not do_overwrite:
                do_append = FileUtils.user_confirm(f"Append instead?",
                                                   default='N')
                if not do_append:
                    return None
                else:
                    mode = 'a'
        else:
            mode = 'w'

        csv_writer = CSVWriterCloseable(csv_path, mode=mode, delimiter=',')

        header = [
            'epoch', 'train_preds', 'train_labels', 'val_preds', 'val_labels'
        ]
        csv_writer.writerow(header)

        return csv_writer