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|
| import argparse |
| import base64 |
| import csv |
| import datetime |
| import difflib |
| import io |
| import json |
| import logging |
| import math |
| import operator |
| import os |
| import pickle |
| from collections import defaultdict |
| from os.path import expanduser |
| from pathlib import Path |
|
|
| import dash |
| import dash_bootstrap_components as dbc |
| import diff_match_patch |
| import editdistance |
| import jiwer |
| import librosa |
| import numpy as np |
| import pandas as pd |
| import soundfile as sf |
| import tqdm |
| from dash import dash_table, dcc, html |
| from dash.dependencies import Input, Output, State |
| from dash.exceptions import PreventUpdate |
| from plotly import express as px |
| from plotly import graph_objects as go |
| from plotly.subplots import make_subplots |
|
|
| |
| DATA_PAGE_SIZE = 10 |
|
|
| |
| filter_operators = { |
| '>=': 'ge', |
| '<=': 'le', |
| '<': 'lt', |
| '>': 'gt', |
| '!=': 'ne', |
| '=': 'eq', |
| 'contains ': 'contains', |
| } |
| comparison_mode = False |
|
|
|
|
| |
| def split_filter_part(filter_part): |
| for op in filter_operators: |
| if op in filter_part: |
| name_part, value_part = filter_part.split(op, 1) |
| name = name_part[name_part.find('{') + 1 : name_part.rfind('}')] |
| value_part = value_part.strip() |
| v0 = value_part[0] |
| if v0 == value_part[-1] and v0 in ("'", '"', '`'): |
| value = value_part[1:-1].replace('\\' + v0, v0) |
| else: |
| try: |
| value = float(value_part) |
| except ValueError: |
| value = value_part |
| return name, filter_operators[op], value |
| return [None] * 3 |
|
|
|
|
| |
| def parse_args(): |
| parser = argparse.ArgumentParser(description='Speech Data Explorer') |
| parser.add_argument( |
| 'manifest', |
| help='path to JSON manifest file', |
| ) |
| parser.add_argument('--vocab', help='optional vocabulary to highlight OOV words') |
| parser.add_argument('--port', default='8050', help='serving port for establishing connection') |
| parser.add_argument( |
| '--disable-caching-metrics', action='store_true', help='disable caching metrics for errors analysis' |
| ) |
| parser.add_argument( |
| '--estimate-audio-metrics', |
| '-a', |
| action='store_true', |
| help='estimate frequency bandwidth and signal level of audio recordings', |
| ) |
| parser.add_argument( |
| '--audio-base-path', |
| default=None, |
| type=str, |
| help='A base path for the relative paths in manifest. It defaults to manifest path.', |
| ) |
| parser.add_argument('--debug', '-d', action='store_true', help='enable debug mode') |
|
|
| parser.add_argument( |
| '--names_compared', |
| '-nc', |
| nargs=2, |
| type=str, |
| help='names of the two fields that will be compared, example: pred_text_contextnet pred_text_conformer. "pred_text_" prefix IS IMPORTANT!', |
| ) |
| parser.add_argument( |
| '--show_statistics', |
| '-shst', |
| type=str, |
| help='field name for which you want to see statistics (optional). Example: pred_text_contextnet.', |
| ) |
| args = parser.parse_args() |
|
|
| |
| if args.audio_base_path is None: |
| args.audio_base_path = os.path.dirname(args.manifest) |
|
|
| |
| if args.names_compared is not None: |
| comparison_mode = True |
| logging.info("comparison mod set to true") |
| else: |
| comparison_mode = False |
|
|
| print(args, comparison_mode) |
| return args, comparison_mode |
|
|
|
|
| |
| def eval_bandwidth(signal, sr, threshold=-50): |
| time_stride = 0.01 |
| hop_length = int(sr * time_stride) |
| n_fft = 512 |
| spectrogram = np.mean( |
| np.abs(librosa.stft(y=signal, n_fft=n_fft, hop_length=hop_length, window='blackmanharris')) ** 2, axis=1 |
| ) |
| power_spectrum = librosa.power_to_db(S=spectrogram, ref=np.max, top_db=100) |
| freqband = 0 |
| for idx in range(len(power_spectrum) - 1, -1, -1): |
| if power_spectrum[idx] > threshold: |
| freqband = idx / n_fft * sr |
| break |
| return freqband |
|
|
|
|
| |
| def load_data( |
| data_filename, |
| disable_caching=False, |
| estimate_audio=False, |
| vocab=None, |
| audio_base_path=None, |
| comparison_mode=False, |
| names=None, |
| ): |
| if comparison_mode: |
| if names is None: |
| logging.error(f'Please, specify names of compared models') |
| name_1, name_2 = names |
|
|
| if not comparison_mode: |
| if vocab is not None: |
| |
| vocabulary_ext = {} |
| with open(vocab, 'r') as f: |
| for line in f: |
| if '\t' in line: |
| |
| word = line.split('\t')[0] |
| else: |
| |
| word = line.strip() |
| vocabulary_ext[word] = 1 |
|
|
| if not disable_caching: |
| pickle_filename = data_filename.split('.json')[0] |
| json_mtime = datetime.datetime.fromtimestamp(os.path.getmtime(data_filename)) |
| timestamp = json_mtime.strftime('%Y%m%d_%H%M') |
| pickle_filename += '_' + timestamp + '.pkl' |
| if os.path.exists(pickle_filename): |
| with open(pickle_filename, 'rb') as f: |
| data, wer, cer, wmr, mwa, num_hours, vocabulary_data, alphabet, metrics_available = pickle.load(f) |
| if vocab is not None: |
| for item in vocabulary_data: |
| item['OOV'] = item['word'] not in vocabulary_ext |
| if estimate_audio: |
| for item in data: |
| filepath = absolute_audio_filepath(item['audio_filepath'], audio_base_path) |
| signal, sr = librosa.load(path=filepath, sr=None) |
| bw = eval_bandwidth(signal, sr) |
| item['freq_bandwidth'] = int(bw) |
| item['level_db'] = 20 * np.log10(np.max(np.abs(signal))) |
| with open(pickle_filename, 'wb') as f: |
| pickle.dump( |
| [data, wer, cer, wmr, mwa, num_hours, vocabulary_data, alphabet, metrics_available], |
| f, |
| pickle.HIGHEST_PROTOCOL, |
| ) |
| return data, wer, cer, wmr, mwa, num_hours, vocabulary_data, alphabet, metrics_available |
|
|
| data = [] |
| wer_count = 0 |
| cer_count = 0 |
| wmr_count = 0 |
| wer = 0 |
| cer = 0 |
| wmr = 0 |
| mwa = 0 |
| num_hours = 0 |
| match_vocab_1 = defaultdict(lambda: 0) |
| match_vocab_2 = defaultdict(lambda: 0) |
|
|
| def append_data( |
| data_filename, |
| estimate_audio, |
| field_name='pred_text', |
| ): |
| data = [] |
| wer_dist = 0.0 |
| wer_count = 0 |
| cer_dist = 0.0 |
| cer_count = 0 |
| wmr_count = 0 |
| wer = 0 |
| cer = 0 |
| wmr = 0 |
| mwa = 0 |
| num_hours = 0 |
| vocabulary = defaultdict(lambda: 0) |
| alphabet = set() |
| match_vocab = defaultdict(lambda: 0) |
|
|
| sm = difflib.SequenceMatcher() |
| metrics_available = False |
| with open(data_filename, 'r', encoding='utf8') as f: |
| for line in tqdm.tqdm(f): |
| item = json.loads(line) |
| if not isinstance(item['text'], str): |
| item['text'] = '' |
| num_chars = len(item['text']) |
| orig = item['text'].split() |
| num_words = len(orig) |
| for word in orig: |
| vocabulary[word] += 1 |
| for char in item['text']: |
| alphabet.add(char) |
| num_hours += item['duration'] |
|
|
| if field_name in item: |
| metrics_available = True |
| pred = item[field_name].split() |
| measures = jiwer.compute_measures(item['text'], item[field_name]) |
| word_dist = measures['substitutions'] + measures['insertions'] + measures['deletions'] |
| char_dist = editdistance.eval(item['text'], item[field_name]) |
| wer_dist += word_dist |
| cer_dist += char_dist |
| wer_count += num_words |
| cer_count += num_chars |
|
|
| sm.set_seqs(orig, pred) |
| for m in sm.get_matching_blocks(): |
| for word_idx in range(m[0], m[0] + m[2]): |
| match_vocab[orig[word_idx]] += 1 |
| wmr_count += measures['hits'] |
| else: |
| if comparison_mode: |
| if field_name != 'pred_text': |
| if field_name == name_1: |
| logging.error(f"The .json file has no field with name: {name_1}") |
| exit() |
| if field_name == name_2: |
| logging.error(f"The .json file has no field with name: {name_2}") |
| exit() |
| data.append( |
| { |
| 'audio_filepath': item['audio_filepath'], |
| 'duration': round(item['duration'], 2), |
| 'num_words': num_words, |
| 'num_chars': num_chars, |
| 'word_rate': round(num_words / item['duration'], 2), |
| 'char_rate': round(num_chars / item['duration'], 2), |
| 'text': item['text'], |
| } |
| ) |
| if metrics_available: |
| data[-1][field_name] = item[field_name] |
| if num_words == 0: |
| num_words = 1e-9 |
| if num_chars == 0: |
| num_chars = 1e-9 |
| data[-1]['WER'] = round(word_dist / num_words * 100.0, 2) |
| data[-1]['CER'] = round(char_dist / num_chars * 100.0, 2) |
| data[-1]['WMR'] = round(measures['hits'] / num_words * 100.0, 2) |
| data[-1]['I'] = measures['insertions'] |
| data[-1]['D'] = measures['deletions'] |
| data[-1]['D-I'] = measures['deletions'] - measures['insertions'] |
| if estimate_audio: |
| filepath = absolute_audio_filepath(item['audio_filepath'], data_filename) |
| signal, sr = librosa.load(path=filepath, sr=None) |
| bw = eval_bandwidth(signal, sr) |
| item['freq_bandwidth'] = int(bw) |
| item['level_db'] = 20 * np.log10(np.max(np.abs(signal))) |
| for k in item: |
| if k not in data[-1]: |
| data[-1][k] = item[k] |
|
|
| vocabulary_data = [{'word': word, 'count': vocabulary[word]} for word in vocabulary] |
| return ( |
| vocabulary_data, |
| metrics_available, |
| data, |
| wer_dist, |
| wer_count, |
| cer_dist, |
| cer_count, |
| wmr_count, |
| wer, |
| cer, |
| wmr, |
| mwa, |
| num_hours, |
| vocabulary, |
| alphabet, |
| match_vocab, |
| ) |
|
|
| ( |
| vocabulary_data, |
| metrics_available, |
| data, |
| wer_dist, |
| wer_count, |
| cer_dist, |
| cer_count, |
| wmr_count, |
| wer, |
| cer, |
| wmr, |
| mwa, |
| num_hours, |
| vocabulary, |
| alphabet, |
| match_vocab, |
| ) = append_data(data_filename, estimate_audio, field_name=fld_nm) |
| if comparison_mode: |
| ( |
| vocabulary_data_1, |
| metrics_available_1, |
| data_1, |
| wer_dist_1, |
| wer_count_1, |
| cer_dist_1, |
| cer_count_1, |
| wmr_count_1, |
| wer_1, |
| cer_1, |
| wmr_1, |
| mwa_1, |
| num_hours_1, |
| vocabulary_1, |
| alphabet_1, |
| match_vocab_1, |
| ) = append_data(data_filename, estimate_audio, field_name=name_1) |
| ( |
| vocabulary_data_2, |
| metrics_available_2, |
| data_2, |
| wer_dist_2, |
| wer_count_2, |
| cer_dist_2, |
| cer_count_2, |
| wmr_count_2, |
| wer_2, |
| cer_2, |
| wmr_2, |
| mwa_2, |
| num_hours_2, |
| vocabulary_2, |
| alphabet_2, |
| match_vocab_2, |
| ) = append_data(data_filename, estimate_audio, field_name=name_2) |
|
|
| if not comparison_mode: |
| if vocab is not None: |
| for item in vocabulary_data: |
| item['OOV'] = item['word'] not in vocabulary_ext |
|
|
| if metrics_available or comparison_mode: |
| if metrics_available: |
| wer = wer_dist / wer_count * 100.0 |
| cer = cer_dist / cer_count * 100.0 |
| wmr = wmr_count / wer_count * 100.0 |
| if comparison_mode: |
| if metrics_available_1 and metrics_available_2: |
| wer_1 = wer_dist_1 / wer_count_1 * 100.0 |
| cer_1 = cer_dist_1 / cer_count_1 * 100.0 |
| wmr_1 = wmr_count_1 / wer_count_1 * 100.0 |
|
|
| wer = wer_dist_2 / wer_count_2 * 100.0 |
| cer = cer_dist_2 / cer_count_2 * 100.0 |
| wmr = wmr_count_2 / wer_count_2 * 100.0 |
|
|
| acc_sum_1 = 0 |
| acc_sum_2 = 0 |
|
|
| for item in vocabulary_data_1: |
| w = item['word'] |
| word_accuracy_1 = match_vocab_1[w] / vocabulary_1[w] * 100.0 |
| acc_sum_1 += word_accuracy_1 |
| item['accuracy_1'] = round(word_accuracy_1, 1) |
| mwa_1 = acc_sum_1 / len(vocabulary_data_1) |
|
|
| for item in vocabulary_data_2: |
| w = item['word'] |
| word_accuracy_2 = match_vocab_2[w] / vocabulary_2[w] * 100.0 |
| acc_sum_2 += word_accuracy_2 |
| item['accuracy_2'] = round(word_accuracy_2, 1) |
| mwa_2 = acc_sum_2 / len(vocabulary_data_2) |
|
|
| acc_sum = 0 |
| for item in vocabulary_data: |
| w = item['word'] |
| word_accuracy = match_vocab[w] / vocabulary[w] * 100.0 |
| acc_sum += word_accuracy |
| item['accuracy'] = round(word_accuracy, 1) |
| mwa = acc_sum / len(vocabulary_data) |
|
|
| num_hours /= 3600.0 |
|
|
| if not comparison_mode: |
| if not disable_caching: |
| with open(pickle_filename, 'wb') as f: |
| pickle.dump( |
| [data, wer, cer, wmr, mwa, num_hours, vocabulary_data, alphabet, metrics_available], |
| f, |
| pickle.HIGHEST_PROTOCOL, |
| ) |
| if comparison_mode: |
| return ( |
| data, |
| wer, |
| cer, |
| wmr, |
| mwa, |
| num_hours, |
| vocabulary_data, |
| alphabet, |
| metrics_available, |
| data_1, |
| wer_1, |
| cer_1, |
| wmr_1, |
| mwa_1, |
| num_hours_1, |
| vocabulary_data_1, |
| alphabet_1, |
| metrics_available_1, |
| data_2, |
| wer_2, |
| cer_2, |
| wmr_2, |
| mwa_2, |
| num_hours_2, |
| vocabulary_data_2, |
| alphabet_2, |
| metrics_available_2, |
| ) |
|
|
| return data, wer, cer, wmr, mwa, num_hours, vocabulary_data, alphabet, metrics_available |
|
|
|
|
| |
| def plot_histogram(data, key, label): |
| fig = px.histogram( |
| data_frame=[item[key] for item in data], |
| nbins=50, |
| log_y=True, |
| labels={'value': label}, |
| opacity=0.5, |
| color_discrete_sequence=['green'], |
| height=200, |
| ) |
| fig.update_layout(showlegend=False, margin=dict(l=0, r=0, t=0, b=0, pad=0)) |
| return fig |
|
|
|
|
| def plot_word_accuracy(vocabulary_data): |
| labels = ['Unrecognized', 'Sometimes recognized', 'Always recognized'] |
| counts = [0, 0, 0] |
| for word in vocabulary_data: |
| if word['accuracy'] == 0: |
| counts[0] += 1 |
| elif word['accuracy'] < 100: |
| counts[1] += 1 |
| else: |
| counts[2] += 1 |
| colors = ['red', 'orange', 'green'] |
|
|
| fig = go.Figure( |
| data=[ |
| go.Bar( |
| x=labels, |
| y=counts, |
| marker_color=colors, |
| text=['{:.2%}'.format(count / sum(counts)) for count in counts], |
| textposition='auto', |
| ) |
| ] |
| ) |
| fig.update_layout( |
| showlegend=False, margin=dict(l=0, r=0, t=0, b=0, pad=0), height=200, yaxis={'title_text': '#words'} |
| ) |
|
|
| return fig |
|
|
|
|
| def absolute_audio_filepath(audio_filepath, audio_base_path): |
| """Return absolute path to an audio file. |
| |
| Check if a file existst at audio_filepath. |
| If not, assume that the path is relative to audio_base_path. |
| """ |
| audio_filepath = Path(audio_filepath) |
|
|
| if not audio_filepath.is_file() and not audio_filepath.is_absolute(): |
| audio_filepath = audio_base_path / audio_filepath |
| if audio_filepath.is_file(): |
| filename = str(audio_filepath) |
| else: |
| filename = expanduser(audio_filepath) |
| else: |
| filename = expanduser(audio_filepath) |
|
|
| return filename |
|
|
|
|
| |
| args, comparison_mode = parse_args() |
| if args.show_statistics is not None: |
| fld_nm = args.show_statistics |
| else: |
| fld_nm = 'pred_text' |
| |
| if comparison_mode: |
| name_1, name_2 = args.names_compared |
| print(name_1, name_2) |
|
|
|
|
| print('Loading data...') |
| if not comparison_mode: |
| data, wer, cer, wmr, mwa, num_hours, vocabulary, alphabet, metrics_available = load_data( |
| args.manifest, |
| args.disable_caching_metrics, |
| args.estimate_audio_metrics, |
| args.vocab, |
| args.audio_base_path, |
| comparison_mode, |
| args.names_compared, |
| ) |
| else: |
| ( |
| data, |
| wer, |
| cer, |
| wmr, |
| mwa, |
| num_hours, |
| vocabulary, |
| alphabet, |
| metrics_available, |
| data_1, |
| wer_1, |
| cer_1, |
| wmr_1, |
| mwa_1, |
| num_hours_1, |
| vocabulary_1, |
| alphabet_1, |
| metrics_available_1, |
| data_2, |
| wer_2, |
| cer_2, |
| wmr_2, |
| mwa_2, |
| num_hours_2, |
| vocabulary_2, |
| alphabet_2, |
| metrics_available_2, |
| ) = load_data( |
| args.manifest, |
| args.disable_caching_metrics, |
| args.estimate_audio_metrics, |
| args.vocab, |
| args.audio_base_path, |
| comparison_mode, |
| args.names_compared, |
| ) |
|
|
| print('Starting server...') |
| app = dash.Dash( |
| __name__, |
| suppress_callback_exceptions=True, |
| external_stylesheets=[dbc.themes.BOOTSTRAP], |
| title=os.path.basename(args.manifest), |
| ) |
|
|
| figures_labels = { |
| 'duration': ['Duration', 'Duration, sec'], |
| 'num_words': ['Number of Words', '#words'], |
| 'num_chars': ['Number of Characters', '#chars'], |
| 'word_rate': ['Word Rate', '#words/sec'], |
| 'char_rate': ['Character Rate', '#chars/sec'], |
| 'WER': ['Word Error Rate', 'WER, %'], |
| 'CER': ['Character Error Rate', 'CER, %'], |
| 'WMR': ['Word Match Rate', 'WMR, %'], |
| 'I': ['# Insertions (I)', '#words'], |
| 'D': ['# Deletions (D)', '#words'], |
| 'D-I': ['# Deletions - # Insertions (D-I)', '#words'], |
| 'freq_bandwidth': ['Frequency Bandwidth', 'Bandwidth, Hz'], |
| 'level_db': ['Peak Level', 'Level, dB'], |
| } |
| figures_hist = {} |
| for k in data[0]: |
| val = data[0][k] |
| if isinstance(val, (int, float)) and not isinstance(val, bool): |
| if k in figures_labels: |
| ylabel = figures_labels[k][0] |
| xlabel = figures_labels[k][1] |
| else: |
| title = k.replace('_', ' ') |
| title = title[0].upper() + title[1:].lower() |
| ylabel = title |
| xlabel = title |
| figures_hist[k] = [ylabel + ' (per utterance)', plot_histogram(data, k, xlabel)] |
|
|
| if metrics_available: |
| figure_word_acc = plot_word_accuracy(vocabulary) |
|
|
| stats_layout = [ |
| dbc.Row(dbc.Col(html.H5(children='Global Statistics'), class_name='text-secondary'), class_name='mt-3'), |
| dbc.Row( |
| [ |
| dbc.Col(html.Div('Number of hours', className='text-secondary'), width=3, class_name='border-end'), |
| dbc.Col(html.Div('Number of utterances', className='text-secondary'), width=3, class_name='border-end'), |
| dbc.Col(html.Div('Vocabulary size', className='text-secondary'), width=3, class_name='border-end'), |
| dbc.Col(html.Div('Alphabet size', className='text-secondary'), width=3), |
| ], |
| class_name='bg-light mt-2 rounded-top border-top border-start border-end', |
| ), |
| dbc.Row( |
| [ |
| dbc.Col( |
| html.H5( |
| '{:.2f} hours'.format(num_hours), |
| className='text-center p-1', |
| style={'color': 'green', 'opacity': 0.7}, |
| ), |
| width=3, |
| class_name='border-end', |
| ), |
| dbc.Col( |
| html.H5(len(data), className='text-center p-1', style={'color': 'green', 'opacity': 0.7}), |
| width=3, |
| class_name='border-end', |
| ), |
| dbc.Col( |
| html.H5( |
| '{} words'.format(len(vocabulary)), |
| className='text-center p-1', |
| style={'color': 'green', 'opacity': 0.7}, |
| ), |
| width=3, |
| class_name='border-end', |
| ), |
| dbc.Col( |
| html.H5( |
| '{} chars'.format(len(alphabet)), |
| className='text-center p-1', |
| style={'color': 'green', 'opacity': 0.7}, |
| ), |
| width=3, |
| ), |
| ], |
| class_name='bg-light rounded-bottom border-bottom border-start border-end', |
| ), |
| ] |
| if metrics_available: |
| stats_layout += [ |
| dbc.Row( |
| [ |
| dbc.Col( |
| html.Div('Word Error Rate (WER), %', className='text-secondary'), width=3, class_name='border-end' |
| ), |
| dbc.Col( |
| html.Div('Character Error Rate (CER), %', className='text-secondary'), |
| width=3, |
| class_name='border-end', |
| ), |
| dbc.Col( |
| html.Div('Word Match Rate (WMR), %', className='text-secondary'), |
| width=3, |
| class_name='border-end', |
| ), |
| dbc.Col(html.Div('Mean Word Accuracy, %', className='text-secondary'), width=3), |
| ], |
| class_name='bg-light mt-2 rounded-top border-top border-start border-end', |
| ), |
| dbc.Row( |
| [ |
| dbc.Col( |
| html.H5( |
| '{:.2f}'.format(wer), |
| className='text-center p-1', |
| style={'color': 'green', 'opacity': 0.7}, |
| ), |
| width=3, |
| class_name='border-end', |
| ), |
| dbc.Col( |
| html.H5( |
| '{:.2f}'.format(cer), className='text-center p-1', style={'color': 'green', 'opacity': 0.7} |
| ), |
| width=3, |
| class_name='border-end', |
| ), |
| dbc.Col( |
| html.H5( |
| '{:.2f}'.format(wmr), |
| className='text-center p-1', |
| style={'color': 'green', 'opacity': 0.7}, |
| ), |
| width=3, |
| class_name='border-end', |
| ), |
| dbc.Col( |
| html.H5( |
| '{:.2f}'.format(mwa), |
| className='text-center p-1', |
| style={'color': 'green', 'opacity': 0.7}, |
| ), |
| width=3, |
| ), |
| ], |
| class_name='bg-light rounded-bottom border-bottom border-start border-end', |
| ), |
| ] |
| stats_layout += [ |
| dbc.Row(dbc.Col(html.H5(children='Alphabet'), class_name='text-secondary'), class_name='mt-3'), |
| dbc.Row( |
| dbc.Col( |
| html.Div('{}'.format(sorted(alphabet))), |
| ), |
| class_name='mt-2 bg-light font-monospace rounded border', |
| ), |
| ] |
| for k in figures_hist: |
| stats_layout += [ |
| dbc.Row(dbc.Col(html.H5(figures_hist[k][0]), class_name='text-secondary'), class_name='mt-3'), |
| dbc.Row( |
| dbc.Col( |
| dcc.Graph(id='duration-graph', figure=figures_hist[k][1]), |
| ), |
| ), |
| ] |
|
|
| if metrics_available: |
| stats_layout += [ |
| dbc.Row(dbc.Col(html.H5('Word accuracy distribution'), class_name='text-secondary'), class_name='mt-3'), |
| dbc.Row( |
| dbc.Col( |
| dcc.Graph(id='word-acc-graph', figure=figure_word_acc), |
| ), |
| ), |
| ] |
|
|
| wordstable_columns = [{'name': 'Word', 'id': 'word'}, {'name': 'Count', 'id': 'count'}] |
| if 'OOV' in vocabulary[0]: |
| wordstable_columns.append({'name': 'OOV', 'id': 'OOV'}) |
| if metrics_available: |
| wordstable_columns.append({'name': 'Accuracy, %', 'id': 'accuracy'}) |
|
|
|
|
| stats_layout += [ |
| dbc.Row(dbc.Col(html.H5('Vocabulary'), class_name='text-secondary'), class_name='mt-3'), |
| dbc.Row( |
| dbc.Col( |
| dash_table.DataTable( |
| id='wordstable', |
| columns=wordstable_columns, |
| filter_action='custom', |
| filter_query='', |
| sort_action='custom', |
| sort_mode='single', |
| page_action='custom', |
| page_current=0, |
| page_size=DATA_PAGE_SIZE, |
| cell_selectable=False, |
| page_count=math.ceil(len(vocabulary) / DATA_PAGE_SIZE), |
| sort_by=[{'column_id': 'word', 'direction': 'asc'}], |
| style_cell={'maxWidth': 0, 'textAlign': 'left'}, |
| style_header={'color': 'text-primary'}, |
| css=[ |
| {'selector': '.dash-filter--case', 'rule': 'display: none'}, |
| ], |
| ), |
| ), |
| class_name='m-2', |
| ), |
| dbc.Row( |
| dbc.Col( |
| [ |
| html.Button('Download Vocabulary', id='btn_csv'), |
| dcc.Download(id='download-vocab-csv'), |
| ] |
| ), |
| ), |
| ] |
|
|
|
|
| @app.callback( |
| Output('download-vocab-csv', 'data'), |
| [Input('btn_csv', 'n_clicks'), State('wordstable', 'sort_by'), State('wordstable', 'filter_query')], |
| prevent_initial_call=True, |
| ) |
| def download_vocabulary(n_clicks, sort_by, filter_query): |
| vocabulary_view = vocabulary |
| filtering_expressions = filter_query.split(' && ') |
| for filter_part in filtering_expressions: |
| col_name, op, filter_value = split_filter_part(filter_part) |
|
|
| if op in ('eq', 'ne', 'lt', 'le', 'gt', 'ge'): |
| vocabulary_view = [x for x in vocabulary_view if getattr(operator, op)(x[col_name], filter_value)] |
| elif op == 'contains': |
| vocabulary_view = [x for x in vocabulary_view if filter_value in str(x[col_name])] |
|
|
| if len(sort_by): |
| col = sort_by[0]['column_id'] |
| descending = sort_by[0]['direction'] == 'desc' |
| vocabulary_view = sorted(vocabulary_view, key=lambda x: x[col], reverse=descending) |
|
|
| with open('sde_vocab.csv', encoding='utf-8', mode='w', newline='') as fo: |
| writer = csv.writer(fo) |
| writer.writerow(vocabulary_view[0].keys()) |
| for item in vocabulary_view: |
| writer.writerow([str(item[k]) for k in item]) |
| return dcc.send_file("sde_vocab.csv") |
|
|
|
|
| @app.callback( |
| [Output('wordstable', 'data'), Output('wordstable', 'page_count')], |
| [Input('wordstable', 'page_current'), Input('wordstable', 'sort_by'), Input('wordstable', 'filter_query')], |
| ) |
| def update_wordstable(page_current, sort_by, filter_query): |
| vocabulary_view = vocabulary |
| filtering_expressions = filter_query.split(' && ') |
| for filter_part in filtering_expressions: |
| col_name, op, filter_value = split_filter_part(filter_part) |
|
|
| if op in ('eq', 'ne', 'lt', 'le', 'gt', 'ge'): |
| vocabulary_view = [x for x in vocabulary_view if getattr(operator, op)(x[col_name], filter_value)] |
| elif op == 'contains': |
| vocabulary_view = [x for x in vocabulary_view if filter_value in str(x[col_name])] |
|
|
| if len(sort_by): |
| col = sort_by[0]['column_id'] |
| descending = sort_by[0]['direction'] == 'desc' |
| vocabulary_view = sorted(vocabulary_view, key=lambda x: x[col], reverse=descending) |
| if page_current * DATA_PAGE_SIZE >= len(vocabulary_view): |
| page_current = len(vocabulary_view) // DATA_PAGE_SIZE |
| return [ |
| vocabulary_view[page_current * DATA_PAGE_SIZE : (page_current + 1) * DATA_PAGE_SIZE], |
| math.ceil(len(vocabulary_view) / DATA_PAGE_SIZE), |
| ] |
|
|
|
|
| samples_layout = [ |
| dbc.Row(dbc.Col(html.H5('Data'), class_name='text-secondary'), class_name='mt-3'), |
| html.Hr(), |
| dbc.Row( |
| dbc.Col( |
| dash_table.DataTable( |
| id='datatable', |
| columns=[{'name': k.replace('_', ' '), 'id': k, 'hideable': True} for k in data[0]], |
| filter_action='custom', |
| filter_query='', |
| sort_action='custom', |
| sort_mode='single', |
| sort_by=[], |
| row_selectable='single', |
| selected_rows=[0], |
| page_action='custom', |
| page_current=0, |
| page_size=DATA_PAGE_SIZE, |
| page_count=math.ceil(len(data) / DATA_PAGE_SIZE), |
| style_cell={'overflow': 'hidden', 'textOverflow': 'ellipsis', 'maxWidth': 0, 'textAlign': 'center'}, |
| style_header={ |
| 'color': 'text-primary', |
| 'text_align': 'center', |
| 'height': 'auto', |
| 'whiteSpace': 'normal', |
| }, |
| css=[ |
| {'selector': '.dash-spreadsheet-menu', 'rule': 'position:absolute; bottom: 8px'}, |
| {'selector': '.dash-filter--case', 'rule': 'display: none'}, |
| {'selector': '.column-header--hide', 'rule': 'display: none'}, |
| ], |
| ), |
| ) |
| ), |
| ] + [ |
| dbc.Row( |
| [ |
| dbc.Col( |
| html.Div(children=k.replace('_', ' ')), |
| width=2, |
| class_name='mt-1 bg-light font-monospace text-break small rounded border', |
| ), |
| dbc.Col(html.Div(id='_' + k), class_name='mt-1 bg-light font-monospace text-break small rounded border'), |
| ] |
| ) |
| for k in data[0] |
| ] |
|
|
| if metrics_available: |
| samples_layout += [ |
| dbc.Row( |
| [ |
| dbc.Col( |
| html.Div(children='text diff'), |
| width=2, |
| class_name='mt-1 bg-light font-monospace text-break small rounded border', |
| ), |
| dbc.Col( |
| html.Iframe( |
| id='_diff', |
| sandbox='', |
| srcDoc='', |
| style={'border': 'none', 'width': '100%', 'height': '100%'}, |
| className='bg-light font-monospace text-break small', |
| ), |
| class_name='mt-1 bg-light font-monospace text-break small rounded border', |
| ), |
| ] |
| ) |
| ] |
| samples_layout += [ |
| dbc.Row( |
| dbc.Col( |
| html.Audio(id='player', controls=True), |
| ), |
| class_name='mt-3 ', |
| ), |
| dbc.Row(dbc.Col(dcc.Graph(id='signal-graph')), class_name='mt-3'), |
| ] |
|
|
|
|
| |
|
|
|
|
| wordstable_columns_tool = [{'name': 'Word', 'id': 'word'}, {'name': 'Count', 'id': 'count'}] |
| wordstable_columns_tool.append({'name': 'Accuracy_1, %', 'id': 'accuracy_1'}) |
| wordstable_columns_tool.append({'name': 'Accuracy_2, %', 'id': 'accuracy_2'}) |
|
|
|
|
| if comparison_mode: |
| model_name_1, model_name_2 = name_1, name_2 |
|
|
| for i in range(len(vocabulary_1)): |
| vocabulary_1[i].update(vocabulary_2[i]) |
|
|
| def _wer_(grnd, pred): |
| grnd_words = grnd.split() |
| pred_words = pred.split() |
| edit_distance = editdistance.eval(grnd_words, pred_words) |
| wer = edit_distance / len(grnd_words) |
| return wer |
|
|
| def metric(a, b, met=None): |
| cer = editdistance.distance(a, b) / len(a) |
| wer = _wer_(a, b) |
| return round(float(wer) * 100, 2), round(float(cer) * 100, 2) |
|
|
| def write_metrics(data, Ox, Oy): |
| da = pd.DataFrame.from_records(data) |
| gt = da['text'] |
| tt_1 = da[Ox] |
| tt_2 = da[Oy] |
|
|
| wer_tt1_c, cer_tt1_c = [], [] |
| wer_tt2_c, cer_tt2_c = [], [] |
|
|
| for j in range(len(gt)): |
| wer_tt1, cer_tt1 = metric(gt[j], tt_1[j]) |
| wer_tt2, cer_tt2 = metric(gt[j], tt_2[j]) |
| wer_tt1_c.append(wer_tt1) |
| cer_tt1_c.append(cer_tt1) |
| wer_tt2_c.append(wer_tt2) |
| cer_tt2_c.append(cer_tt2) |
|
|
| da['wer_' + Ox] = pd.Series(wer_tt1_c, index=da.index) |
| da['wer_' + Oy] = pd.Series(wer_tt2_c, index=da.index) |
| da['cer_' + Ox] = pd.Series(cer_tt1_c, index=da.index) |
| da['cer_' + Oy] = pd.Series(cer_tt2_c, index=da.index) |
| return da.to_dict('records') |
|
|
| data_with_metrics = write_metrics(data, model_name_1, model_name_2) |
| if args.show_statistics is not None: |
| textdiffstyle = {'border': 'none', 'width': '100%', 'height': '100%'} |
| else: |
| textdiffstyle = {'border': 'none', 'width': '1%', 'height': '1%', 'display': 'none'} |
|
|
| def prepare_data(df, name1=model_name_1, name2=model_name_2): |
| res = pd.DataFrame() |
| tmp = df['word'] |
| res.insert(0, 'word', tmp) |
| res.insert(1, 'count', [float(i) for i in df['count']]) |
| res.insert(2, 'accuracy_model_' + name1, df['accuracy_1']) |
| res.insert(3, 'accuracy_model_' + name2, df['accuracy_2']) |
| res.insert(4, 'accuracy_diff ' + '(' + name1 + ' - ' + name2 + ')', df['accuracy_1'] - df['accuracy_2']) |
| res.insert(2, 'count^(-1)', 1 / df['count']) |
| return res |
|
|
| for_col_names = pd.DataFrame() |
| for_col_names.insert(0, 'word', ['a']) |
| for_col_names.insert(1, 'count', [0]) |
| for_col_names.insert(2, 'accuracy_model_' + model_name_1, [0]) |
| for_col_names.insert(3, 'accuracy_model_' + model_name_2, [0]) |
| for_col_names.insert(4, 'accuracy_diff ' + '(' + model_name_1 + ' - ' + model_name_2 + ')', [0]) |
| for_col_names.insert(5, 'count^(-1)', [0]) |
|
|
| @app.callback( |
| Output('voc_graph', 'figure'), |
| [ |
| Input('xaxis-column', 'value'), |
| Input('yaxis-column', 'value'), |
| Input('color-column', 'value'), |
| Input('size-column', 'value'), |
| Input("datatable-advanced-filtering", "derived_virtual_data"), |
| Input("dot_spacing", 'value'), |
| Input("radius", 'value'), |
| ], |
| prevent_initial_call=False, |
| ) |
| def draw_vocab(Ox, Oy, color, size, data, dot_spacing='no', rad=0.01): |
| import math |
| import random |
|
|
| import pandas as pd |
|
|
| df = pd.DataFrame.from_records(data) |
|
|
| res = prepare_data(df) |
| res_spacing = res.copy(deep=True) |
|
|
| if dot_spacing == 'yes': |
| rad = float(rad) |
| if Ox[0] == 'a' or 'c': |
| tmp = [] |
| for i in range(len(res[Ox])): |
| tmp.append( |
| res[Ox][i] |
| + rad |
| * random.randrange(1, 10) |
| * math.cos(random.randrange(1, len(res[Ox])) * 2 * math.pi / len(res[Ox])) |
| ) |
| res_spacing[Ox] = tmp |
| if Ox[0] == 'a' or 'c': |
| tmp = [] |
| for i in range(len(res[Oy])): |
| tmp.append( |
| res[Oy][i] |
| + rad |
| * random.randrange(1, 10) |
| * math.sin(random.randrange(1, len(res[Oy])) * 2 * math.pi / len(res[Oy])) |
| ) |
| res_spacing[Oy] = tmp |
|
|
| res = res_spacing |
|
|
| fig = px.scatter( |
| res, |
| x=Ox, |
| y=Oy, |
| color=color, |
| size=size, |
| hover_data={'word': True, Ox: True, Oy: True, 'count': True}, |
| width=1300, |
| height=1000, |
| ) |
| if (Ox == 'accuracy_model_' + model_name_1 and Oy == 'accuracy_model_' + model_name_2) or ( |
| Oy == 'accuracy_model_' + model_name_1 and Ox == 'accuracy_model_' + model_name_2 |
| ): |
| fig.add_shape( |
| type="line", |
| x0=0, |
| y0=0, |
| x1=100, |
| y1=100, |
| line=dict( |
| color="MediumPurple", |
| width=1, |
| dash="dot", |
| ), |
| ) |
|
|
| return fig |
|
|
| @app.callback( |
| Output('filter-query-input', 'style'), |
| Output('filter-query-output', 'style'), |
| Input('filter-query-read-write', 'value'), |
| ) |
| def query_input_output(val): |
| input_style = {'width': '100%'} |
| output_style = {} |
| input_style.update(display='inline-block') |
| output_style.update(display='none') |
| return input_style, output_style |
|
|
| @app.callback(Output('datatable-advanced-filtering', 'filter_query'), Input('filter-query-input', 'value')) |
| def write_query(query): |
| if query is None: |
| return '' |
| return query |
|
|
| @app.callback(Output('filter-query-output', 'children'), Input('datatable-advanced-filtering', 'filter_query')) |
| def read_query(query): |
| if query is None: |
| return "No filter query" |
| return dcc.Markdown('`filter_query = "{}"`'.format(query)) |
|
|
| |
| @app.callback( |
| Output('filter-query-input-2', 'style'), |
| Output('filter-query-output-2', 'style'), |
| Input('filter-query-read-write', 'value'), |
| ) |
| def query_input_output(val): |
| input_style = {'width': '100%'} |
| output_style = {} |
| input_style.update(display='inline-block') |
| output_style.update(display='none') |
| return input_style, output_style |
|
|
| @app.callback(Output('datatable-advanced-filtering-2', 'filter_query'), Input('filter-query-input-2', 'value')) |
| def write_query(query): |
| if query is None: |
| return '' |
| return query |
|
|
| @app.callback(Output('filter-query-output-2', 'children'), Input('datatable-advanced-filtering-2', 'filter_query')) |
| def read_query(query): |
| if query is None: |
| return "No filter query" |
| return dcc.Markdown('`filter_query = "{}"`'.format(query)) |
|
|
| |
|
|
| def display_query(query): |
| if query is None: |
| return '' |
| return html.Details( |
| [ |
| html.Summary('Derived filter query structure'), |
| html.Div( |
| dcc.Markdown( |
| '''```json |
| {} |
| ```'''.format( |
| json.dumps(query, indent=4) |
| ) |
| ) |
| ), |
| ] |
| ) |
|
|
| comparison_layout = [ |
| html.Div( |
| [ |
| dcc.Markdown("model 1:" + ' ' + model_name_1[10:]), |
| dcc.Markdown("model 2:" + ' ' + model_name_2[10:]), |
| dcc.Dropdown( |
| ['word level', 'utterance level'], |
| 'word level', |
| placeholder="choose comparison lvl", |
| id='lvl_choose', |
| ), |
| ] |
| ), |
| html.Hr(), |
| html.Div( |
| [ |
| html.Div( |
| [ |
| dcc.Dropdown(for_col_names.columns[::], 'accuracy_model_' + model_name_1, id='xaxis-column'), |
| dcc.Dropdown(for_col_names.columns[::], 'accuracy_model_' + model_name_2, id='yaxis-column'), |
| dcc.Dropdown( |
| for_col_names.select_dtypes(include='number').columns[::], |
| placeholder='Select what will encode color of points', |
| id='color-column', |
| ), |
| dcc.Dropdown( |
| for_col_names.select_dtypes(include='number').columns[::], |
| placeholder='Select what will encode size of points', |
| id='size-column', |
| ), |
| dcc.Dropdown( |
| ['yes', 'no'], |
| placeholder='if you want to enable dot spacing', |
| id='dot_spacing', |
| style={'width': '200%'}, |
| ), |
| dcc.Input(id='radius', placeholder='Enter radius of spacing (std is 0.01)'), |
| html.Hr(), |
| dcc.Input( |
| id='filter-query-input', |
| placeholder='Enter filter query', |
| ), |
| ], |
| style={'width': '200%', 'display': 'inline-block', 'float': 'middle'}, |
| ), |
| html.Hr(), |
| html.Div(id='filter-query-output'), |
| dash_table.DataTable( |
| id='datatable-advanced-filtering', |
| columns=wordstable_columns_tool, |
| data=vocabulary_1, |
| editable=False, |
| page_action='native', |
| page_size=5, |
| filter_action="native", |
| ), |
| html.Hr(), |
| html.Div(id='datatable-query-structure', style={'whitespace': 'pre'}), |
| html.Hr(), |
| dbc.Row( |
| dbc.Col( |
| dcc.Graph(id='voc_graph'), |
| ), |
| ), |
| html.Hr(), |
| ], |
| id='wrd_lvl', |
| style={'display': 'block'}, |
| ), |
| html.Div( |
| [ |
| html.Div( |
| [ |
| dcc.Dropdown(['WER', 'CER'], 'WER', placeholder="Choose metric", id="choose_metric"), |
| dbc.Row(dbc.Col(html.H5('Data'), class_name='text-secondary'), class_name='mt-3'), |
| html.Hr(), |
| html.Hr(), |
| dcc.Input( |
| id='filter-query-input-2', placeholder='Enter filter query', style={'width': '100%'} |
| ), |
| html.Div(id='filter-query-output-2'), |
| dbc.Row( |
| dbc.Col( |
| [ |
| dash_table.DataTable( |
| id='datatable-advanced-filtering-2', |
| columns=[ |
| {'name': k.replace('_', ' '), 'id': k, 'hideable': True} |
| for k in data_with_metrics[0] |
| ], |
| data=data_with_metrics, |
| editable=False, |
| page_action='native', |
| page_size=5, |
| row_selectable='single', |
| selected_rows=[0], |
| page_current=0, |
| filter_action="native", |
| style_cell={ |
| 'overflow': 'hidden', |
| 'textOverflow': 'ellipsis', |
| 'maxWidth': 0, |
| 'textAlign': 'center', |
| }, |
| style_header={ |
| 'color': 'text-primary', |
| 'text_align': 'center', |
| 'height': 'auto', |
| 'whiteSpace': 'normal', |
| }, |
| css=[ |
| { |
| 'selector': '.dash-spreadsheet-menu', |
| 'rule': 'position:absolute; bottom: 8px', |
| }, |
| {'selector': '.dash-filter--case', 'rule': 'display: none'}, |
| {'selector': '.column-header--hide', 'rule': 'display: none'}, |
| ], |
| ), |
| dbc.Row( |
| dbc.Col( |
| html.Audio(id='player-1', controls=True), |
| ), |
| class_name='mt-3', |
| ), |
| ] |
| ) |
| ), |
| ] |
| + [ |
| dbc.Row( |
| [ |
| dbc.Col( |
| html.Div(children=k.replace('_', '-')), |
| width=2, |
| class_name='mt-1 bg-light font-monospace text-break small rounded border', |
| ), |
| dbc.Col( |
| html.Div(id='__' + k), |
| class_name='mt-1 bg-light font-monospace text-break small rounded border', |
| ), |
| ] |
| ) |
| for k in data_with_metrics[0] |
| ] |
| ), |
| ], |
| id='unt_lvl', |
| ), |
| ] + [ |
| html.Div( |
| [ |
| html.Div( |
| [ |
| dbc.Row( |
| dbc.Col( |
| dcc.Graph(id='utt_graph'), |
| ), |
| ), |
| html.Hr(), |
| dcc.Input(id='clicked_aidopath', style={'width': '100%'}), |
| html.Hr(), |
| dcc.Input(id='my-output-1', style={'display': 'none'}), |
| ] |
| ), |
| html.Div( |
| [ |
| dbc.Row(dbc.Col(dcc.Graph(id='signal-graph-1')), class_name='mt-3'), |
| ] |
| ), |
| ], |
| id='down_thing', |
| style={'display': 'block'}, |
| ) |
| ] |
|
|
| if args.show_statistics is not None: |
| comparison_layout += [ |
| html.Div( |
| [ |
| dbc.Row( |
| [ |
| dbc.Col( |
| html.Div(children='text diff'), |
| width=2, |
| class_name='mt-1 bg-light font-monospace text-break small rounded border', |
| ), |
| dbc.Col( |
| html.Iframe( |
| id='__diff', |
| sandbox='', |
| srcDoc='', |
| style=textdiffstyle, |
| className='bg-light font-monospace text-break small', |
| ), |
| class_name='mt-1 bg-light font-monospace text-break small rounded border', |
| ), |
| ], |
| id="text_diff_div", |
| ) |
| ], |
| id='mid_thing', |
| style={'display': 'block'}, |
| ), |
| ] |
|
|
| @app.callback( |
| [ |
| Output(component_id='wrd_lvl', component_property='style'), |
| Output(component_id='unt_lvl', component_property='style'), |
| Output(component_id='mid_thing', component_property='style'), |
| Output(component_id='down_thing', component_property='style'), |
| Input(component_id='lvl_choose', component_property='value'), |
| ] |
| ) |
| def show_hide_element(visibility_state): |
| if visibility_state == 'word level': |
| return ( |
| {'width': '50%', 'display': 'inline-block', 'float': 'middle'}, |
| {'width': '50%', 'display': 'none', 'float': 'middle'}, |
| {'display': 'none'}, |
| {'display': 'none'}, |
| ) |
| else: |
| return ( |
| {'width': '100%', 'display': 'none', 'float': 'middle'}, |
| {'width': '100%', 'display': 'inline-block', 'float': 'middle'}, |
| {'display': 'block'}, |
| {'display': 'block'}, |
| ) |
|
|
|
|
| if args.show_statistics is None: |
|
|
| @app.callback( |
| [ |
| Output(component_id='wrd_lvl', component_property='style'), |
| Output(component_id='unt_lvl', component_property='style'), |
| Output(component_id='down_thing', component_property='style'), |
| Input(component_id='lvl_choose', component_property='value'), |
| ] |
| ) |
| def show_hide_element(visibility_state): |
| if args.show_statistics is not None: |
| a = {'border': 'none', 'width': '100%', 'height': '100%', 'display': 'block'} |
| else: |
| a = {'border': 'none', 'width': '100%', 'height': '100%', 'display': 'none'} |
| if visibility_state == 'word level': |
| return ( |
| {'width': '50%', 'display': 'inline-block', 'float': 'middle'}, |
| {'width': '50%', 'display': 'none', 'float': 'middle'}, |
| {'display': 'none'}, |
| ) |
| else: |
| return ( |
| {'width': '100%', 'display': 'none', 'float': 'middle'}, |
| {'width': '100%', 'display': 'inline-block', 'float': 'middle'}, |
| {'display': 'block'}, |
| ) |
|
|
|
|
| store = [] |
|
|
|
|
| @app.callback( |
| [Output('datatable-advanced-filtering-2', 'page_current'), Output('my-output-1', 'value')], |
| [ |
| Input('utt_graph', 'clickData'), |
| ], |
| ) |
| def real_select_click(hoverData): |
| if hoverData is not None: |
| path = str(hoverData['points'][0]['customdata'][-1]) |
| for t in range(len(data_with_metrics)): |
| if data_with_metrics[t]['audio_filepath'] == path: |
| ind = t |
| s = t |
| sel = s |
| pg = math.ceil(ind // 5) |
| return pg, sel |
| else: |
| return 0, 0 |
|
|
|
|
| @app.callback( |
| [Output('datatable-advanced-filtering-2', 'selected_rows')], |
| [Input('my-output-1', 'value')], |
| ) |
| def real_select_click(num): |
| s = num |
| return [[s]] |
|
|
|
|
| CALCULATED_METRIC = [False, False] |
|
|
|
|
| @app.callback( |
| [ |
| Output('utt_graph', 'figure'), |
| Output('clicked_aidopath', 'value'), |
| Input('choose_metric', 'value'), |
| Input('utt_graph', 'clickData'), |
| Input('datatable-advanced-filtering-2', 'derived_virtual_data'), |
| ], |
| ) |
| def draw_table_with_metrics(met, hoverData, data_virt): |
| Ox = name_1 |
| Oy = name_2 |
| if met == "WER": |
| cerower = 'wer_' |
| else: |
| cerower = 'cer_' |
| da = pd.DataFrame.from_records(data_virt) |
|
|
| c = da |
| fig = px.scatter( |
| c, |
| x=cerower + Ox, |
| y=cerower + Oy, |
| width=1000, |
| height=900, |
| color='num_words', |
| hover_data={ |
| 'text': True, |
| Ox: True, |
| Oy: True, |
| 'wer_' + Ox: True, |
| 'wer_' + Oy: True, |
| 'cer_' + Ox: True, |
| 'cer_' + Oy: True, |
| 'audio_filepath': True, |
| }, |
| ) |
| fig.add_shape( |
| type="line", |
| x0=0, |
| y0=0, |
| x1=100, |
| y1=100, |
| line=dict( |
| color="Red", |
| width=1, |
| dash="dot", |
| ), |
| ) |
| fig.update_layout(clickmode='event+select') |
| fig.update_traces(marker_size=10) |
| path = None |
|
|
| if hoverData is not None: |
| path = str(hoverData['points'][0]['customdata'][-1]) |
|
|
| return fig, path |
|
|
|
|
| @app.callback( |
| [Output('datatable', 'data'), Output('datatable', 'page_count')], |
| [Input('datatable', 'page_current'), Input('datatable', 'sort_by'), Input('datatable', 'filter_query')], |
| ) |
| def update_datatable(page_current, sort_by, filter_query): |
| data_view = data |
| filtering_expressions = filter_query.split(' && ') |
| for filter_part in filtering_expressions: |
| col_name, op, filter_value = split_filter_part(filter_part) |
|
|
| if op in ('eq', 'ne', 'lt', 'le', 'gt', 'ge'): |
| data_view = [x for x in data_view if getattr(operator, op)(x[col_name], filter_value)] |
| elif op == 'contains': |
| data_view = [x for x in data_view if filter_value in str(x[col_name])] |
|
|
| if len(sort_by): |
| col = sort_by[0]['column_id'] |
| descending = sort_by[0]['direction'] == 'desc' |
| data_view = sorted(data_view, key=lambda x: x[col], reverse=descending) |
| if page_current * DATA_PAGE_SIZE >= len(data_view): |
| page_current = len(data_view) // DATA_PAGE_SIZE |
| return [ |
| data_view[page_current * DATA_PAGE_SIZE : (page_current + 1) * DATA_PAGE_SIZE], |
| math.ceil(len(data_view) / DATA_PAGE_SIZE), |
| ] |
|
|
|
|
| if comparison_mode: |
| app.layout = html.Div( |
| [ |
| dcc.Location(id='url', refresh=False), |
| dbc.NavbarSimple( |
| children=[ |
| dbc.NavItem(dbc.NavLink('Statistics', id='stats_link', href='/', active=True)), |
| dbc.NavItem(dbc.NavLink('Samples', id='samples_link', href='/samples')), |
| dbc.NavItem(dbc.NavLink('Comparison tool', id='comp_tool', href='/comparison')), |
| ], |
| brand='Speech Data Explorer', |
| sticky='top', |
| color='green', |
| dark=True, |
| ), |
| dbc.Container(id='page-content'), |
| ] |
| ) |
| else: |
| app.layout = html.Div( |
| [ |
| dcc.Location(id='url', refresh=False), |
| dbc.NavbarSimple( |
| children=[ |
| dbc.NavItem(dbc.NavLink('Statistics', id='stats_link', href='/', active=True)), |
| dbc.NavItem(dbc.NavLink('Samples', id='samples_link', href='/samples')), |
| ], |
| brand='Speech Data Explorer', |
| sticky='top', |
| color='green', |
| dark=True, |
| ), |
| dbc.Container(id='page-content'), |
| ] |
| ) |
|
|
|
|
| if comparison_mode: |
|
|
| @app.callback( |
| [ |
| Output('page-content', 'children'), |
| Output('stats_link', 'active'), |
| Output('samples_link', 'active'), |
| Output('comp_tool', 'active'), |
| ], |
| [Input('url', 'pathname')], |
| ) |
| def nav_click(url): |
| if url == '/samples': |
| return [samples_layout, False, True, False] |
| elif url == '/comparison': |
| return [comparison_layout, False, False, True] |
| else: |
| return [stats_layout, True, False, False] |
|
|
| else: |
|
|
| @app.callback( |
| [ |
| Output('page-content', 'children'), |
| Output('stats_link', 'active'), |
| Output('samples_link', 'active'), |
| ], |
| [Input('url', 'pathname')], |
| ) |
| def nav_click(url): |
| if url == '/samples': |
| return [samples_layout, False, True] |
| else: |
| return [stats_layout, True, False] |
|
|
|
|
| @app.callback( |
| [Output('_' + k, 'children') for k in data[0]], [Input('datatable', 'selected_rows'), Input('datatable', 'data')] |
| ) |
| def show_item(idx, data): |
| if len(idx) == 0: |
| raise PreventUpdate |
| return [data[idx[0]][k] for k in data[0]] |
|
|
|
|
| if comparison_mode: |
|
|
| @app.callback( |
| [Output('__' + k, 'children') for k in data_with_metrics[0]], |
| [Input('datatable-advanced-filtering-2', 'selected_rows'), Input('datatable-advanced-filtering-2', 'data')], |
| ) |
| def show_item(idx, data): |
| if len(idx) == 0: |
| raise PreventUpdate |
| return [data[idx[0]][k] for k in data_with_metrics[0]] |
|
|
|
|
| @app.callback( |
| Output('_diff', 'srcDoc'), |
| [ |
| Input('datatable', 'selected_rows'), |
| Input('datatable', 'data'), |
| ], |
| ) |
| def show_diff( |
| idx, |
| data, |
| ): |
| if len(idx) == 0: |
| raise PreventUpdate |
| orig_words = data[idx[0]]['text'] |
| orig_words = '\n'.join(orig_words.split()) + '\n' |
|
|
| pred_words = data[idx[0]][fld_nm] |
| pred_words = '\n'.join(pred_words.split()) + '\n' |
|
|
| diff = diff_match_patch.diff_match_patch() |
| diff.Diff_Timeout = 0 |
| orig_enc, pred_enc, enc = diff.diff_linesToChars(orig_words, pred_words) |
| diffs = diff.diff_main(orig_enc, pred_enc, False) |
| diff.diff_charsToLines(diffs, enc) |
| diffs_post = [] |
| for d in diffs: |
| diffs_post.append((d[0], d[1].replace('\n', ' '))) |
|
|
| diff_html = diff.diff_prettyHtml(diffs_post) |
|
|
| return diff_html |
|
|
|
|
| @app.callback( |
| Output('__diff', 'srcDoc'), |
| [ |
| Input('datatable-advanced-filtering-2', 'selected_rows'), |
| Input('datatable-advanced-filtering-2', 'data'), |
| ], |
| ) |
| def show_diff( |
| idx, |
| data, |
| ): |
| if len(idx) == 0: |
| raise PreventUpdate |
| orig_words = data[idx[0]]['text'] |
| orig_words = '\n'.join(orig_words.split()) + '\n' |
|
|
| pred_words = data[idx[0]][fld_nm] |
| pred_words = '\n'.join(pred_words.split()) + '\n' |
|
|
| diff = diff_match_patch.diff_match_patch() |
| diff.Diff_Timeout = 0 |
| orig_enc, pred_enc, enc = diff.diff_linesToChars(orig_words, pred_words) |
| diffs = diff.diff_main(orig_enc, pred_enc, False) |
| diff.diff_charsToLines(diffs, enc) |
| diffs_post = [] |
| for d in diffs: |
| diffs_post.append((d[0], d[1].replace('\n', ' '))) |
|
|
| diff_html = diff.diff_prettyHtml(diffs_post) |
|
|
| return diff_html |
|
|
|
|
| @app.callback(Output('signal-graph', 'figure'), [Input('datatable', 'selected_rows'), Input('datatable', 'data')]) |
| def plot_signal(idx, data): |
| if len(idx) == 0: |
| raise PreventUpdate |
| figs = make_subplots(rows=2, cols=1, subplot_titles=('Waveform', 'Spectrogram')) |
| try: |
| filename = absolute_audio_filepath(data[idx[0]]['audio_filepath'], args.audio_base_path) |
| audio, fs = librosa.load(path=filename, sr=None) |
| if 'offset' in data[idx[0]]: |
| audio = audio[ |
| int(data[idx[0]]['offset'] * fs) : int((data[idx[0]]['offset'] + data[idx[0]]['duration']) * fs) |
| ] |
| time_stride = 0.01 |
| hop_length = int(fs * time_stride) |
| n_fft = 512 |
| |
| s = librosa.stft(y=audio, n_fft=n_fft, hop_length=hop_length) |
| s_db = librosa.power_to_db(S=np.abs(s) ** 2, ref=np.max, top_db=100) |
| figs.add_trace( |
| go.Scatter( |
| x=np.arange(audio.shape[0]) / fs, |
| y=audio, |
| line={'color': 'green'}, |
| name='Waveform', |
| hovertemplate='Time: %{x:.2f} s<br>Amplitude: %{y:.2f}<br><extra></extra>', |
| ), |
| row=1, |
| col=1, |
| ) |
| figs.add_trace( |
| go.Heatmap( |
| z=s_db, |
| colorscale=[ |
| [0, 'rgb(30,62,62)'], |
| [0.5, 'rgb(30,128,128)'], |
| [1, 'rgb(30,255,30)'], |
| ], |
| colorbar=dict(yanchor='middle', lenmode='fraction', y=0.2, len=0.5, ticksuffix=' dB'), |
| dx=time_stride, |
| dy=fs / n_fft / 1000, |
| name='Spectrogram', |
| hovertemplate='Time: %{x:.2f} s<br>Frequency: %{y:.2f} kHz<br>Magnitude: %{z:.2f} dB<extra></extra>', |
| ), |
| row=2, |
| col=1, |
| ) |
| figs.update_layout({'margin': dict(l=0, r=0, t=20, b=0, pad=0), 'height': 500}) |
| figs.update_xaxes(title_text='Time, s', row=1, col=1) |
| figs.update_yaxes(title_text='Amplitude', row=1, col=1) |
| figs.update_xaxes(title_text='Time, s', row=2, col=1) |
| figs.update_yaxes(title_text='Frequency, kHz', row=2, col=1) |
| except Exception as ex: |
| app.logger.error(f'ERROR in plot signal: {ex}') |
|
|
| return figs |
|
|
|
|
| @app.callback( |
| Output('signal-graph-1', 'figure'), |
| [Input('datatable-advanced-filtering-2', 'selected_rows'), Input('datatable-advanced-filtering-2', 'data')], |
| ) |
| def plot_signal(idx, data): |
| if len(idx) == 0: |
| raise PreventUpdate |
| figs = make_subplots(rows=2, cols=1, subplot_titles=('Waveform', 'Spectrogram')) |
| try: |
| filename = absolute_audio_filepath(data[idx[0]]['audio_filepath'], args.audio_base_path) |
| audio, fs = librosa.load(path=filename, sr=None) |
| if 'offset' in data[idx[0]]: |
| audio = audio[ |
| int(data[idx[0]]['offset'] * fs) : int((data[idx[0]]['offset'] + data[idx[0]]['duration']) * fs) |
| ] |
| time_stride = 0.01 |
| hop_length = int(fs * time_stride) |
| n_fft = 512 |
| |
| s = librosa.stft(y=audio, n_fft=n_fft, hop_length=hop_length) |
| s_db = librosa.power_to_db(S=np.abs(s) ** 2, ref=np.max, top_db=100) |
| figs.add_trace( |
| go.Scatter( |
| x=np.arange(audio.shape[0]) / fs, |
| y=audio, |
| line={'color': 'green'}, |
| name='Waveform', |
| hovertemplate='Time: %{x:.2f} s<br>Amplitude: %{y:.2f}<br><extra></extra>', |
| ), |
| row=1, |
| col=1, |
| ) |
| figs.add_trace( |
| go.Heatmap( |
| z=s_db, |
| colorscale=[ |
| [0, 'rgb(30,62,62)'], |
| [0.5, 'rgb(30,128,128)'], |
| [1, 'rgb(30,255,30)'], |
| ], |
| colorbar=dict(yanchor='middle', lenmode='fraction', y=0.2, len=0.5, ticksuffix=' dB'), |
| dx=time_stride, |
| dy=fs / n_fft / 1000, |
| name='Spectrogram', |
| hovertemplate='Time: %{x:.2f} s<br>Frequency: %{y:.2f} kHz<br>Magnitude: %{z:.2f} dB<extra></extra>', |
| ), |
| row=2, |
| col=1, |
| ) |
| figs.update_layout({'margin': dict(l=0, r=0, t=20, b=0, pad=0), 'height': 500}) |
| figs.update_xaxes(title_text='Time, s', row=1, col=1) |
| figs.update_yaxes(title_text='Amplitude', row=1, col=1) |
| figs.update_xaxes(title_text='Time, s', row=2, col=1) |
| figs.update_yaxes(title_text='Frequency, kHz', row=2, col=1) |
| except Exception as ex: |
| app.logger.error(f'ERROR in plot signal: {ex}') |
|
|
| return figs |
|
|
|
|
| @app.callback(Output('player', 'src'), [Input('datatable', 'selected_rows'), Input('datatable', 'data')]) |
| def update_player(idx, data): |
| if len(idx) == 0: |
| raise PreventUpdate |
| try: |
| filename = absolute_audio_filepath(data[idx[0]]['audio_filepath'], args.audio_base_path) |
| signal, sr = librosa.load(path=filename, sr=None) |
| if 'offset' in data[idx[0]]: |
| signal = signal[ |
| int(data[idx[0]]['offset'] * sr) : int((data[idx[0]]['offset'] + data[idx[0]]['duration']) * sr) |
| ] |
| with io.BytesIO() as buf: |
| |
| sf.write(buf, signal, sr, format='WAV') |
| buf.seek(0) |
| encoded = base64.b64encode(buf.read()) |
| return 'data:audio/wav;base64,{}'.format(encoded.decode()) |
| except Exception as ex: |
| app.logger.error(f'ERROR in audio player: {ex}') |
| return '' |
|
|
|
|
| @app.callback( |
| Output('player-1', 'src'), |
| [Input('datatable-advanced-filtering-2', 'selected_rows'), Input('datatable-advanced-filtering-2', 'data')], |
| ) |
| def update_player(idx, data): |
| if len(idx) == 0: |
| raise PreventUpdate |
| try: |
| filename = absolute_audio_filepath(data[idx[0]]['audio_filepath'], args.audio_base_path) |
| signal, sr = librosa.load(path=filename, sr=None) |
| if 'offset' in data[idx[0]]: |
| signal = signal[ |
| int(data[idx[0]]['offset'] * sr) : int((data[idx[0]]['offset'] + data[idx[0]]['duration']) * sr) |
| ] |
| with io.BytesIO() as buf: |
| |
| sf.write(buf, signal, sr, format='WAV') |
| buf.seek(0) |
| encoded = base64.b64encode(buf.read()) |
| return 'data:audio/wav;base64,{}'.format(encoded.decode()) |
| except Exception as ex: |
| app.logger.error(f'ERROR in audio player: {ex}') |
| return '' |
|
|
|
|
| if __name__ == '__main__': |
| app.run(host='0.0.0.0', port=args.port, debug=args.debug) |
|
|