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Working analysis of size and text/audio derived basic features

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Files changed (9) hide show
  1. .gitignore +3 -0
  2. .python-version +1 -0
  3. README.md +4 -4
  4. app.py +148 -0
  5. constants.py +19 -0
  6. playground-amu-dash.ipynb +0 -0
  7. requirements.txt +6 -0
  8. run-analysis.py +101 -0
  9. utils.py +601 -0
.gitignore ADDED
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+ plots
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+ reports
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+ __pycache__
.python-version ADDED
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+ streamlit
README.md CHANGED
@@ -1,10 +1,10 @@
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  ---
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  title: Amu Bigos Data Dash
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- emoji: 🏢
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- colorFrom: red
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- colorTo: blue
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  sdk: streamlit
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- sdk_version: 1.34.0
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  app_file: app.py
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  pinned: false
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  license: cc-by-nc-nd-4.0
 
1
  ---
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  title: Amu Bigos Data Dash
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+ emoji: 🐨
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+ colorFrom: indigo
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+ colorTo: purple
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  sdk: streamlit
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+ sdk_version: 1.33.0
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  app_file: app.py
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  pinned: false
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  license: cc-by-nc-nd-4.0
app.py ADDED
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1
+ import pandas as pd
2
+ import streamlit as st
3
+
4
+ import matplotlib.pyplot as plt
5
+ import seaborn as sns
6
+ import os
7
+ import json
8
+
9
+ from utils import read_reports, dict_to_multindex_df
10
+ #add_test_split_stats_from_secret_dataset, dict_to_multindex_df_all_splits
11
+ from utils import extract_stats_to_agg, extract_stats_all_splits, extract_stats_for_dataset_card
12
+ from constants import BIGOS_INFO, PELCRA_INFO, ABOUT_INFO
13
+ from datasets import get_dataset_config_names
14
+
15
+ # PL ASR BIGOS analysis
16
+ # PL ASR Diagnostic analysis
17
+ # PELCRA analysis
18
+ # TODO - compare the datasets
19
+
20
+ st.set_page_config(layout="wide")
21
+
22
+ about, analysis_bigos, analysis_bigos_pelcra = st.tabs(["About BIGOS datasets", "BIGOS V2 analysis", "PELCRA for BIGOS analysis"])
23
+ #analysis_bigos_diagnostic
24
+ #########################################BIGOS################################################
25
+ with about:
26
+
27
+ st.title("About BIGOS project")
28
+ st.markdown(ABOUT_INFO, unsafe_allow_html=True)
29
+ # TODO - load and display about BIGOS benchmark
30
+
31
+ with analysis_bigos:
32
+ dataset_name = "amu-cai/pl-asr-bigos-v2"
33
+ #dataset_secret = "amu-cai/pl-asr-bigos-v2-secret"
34
+ dataset_short_name = "BIGOS"
35
+ dataset_version = "V2"
36
+
37
+ dataset_configs = get_dataset_config_names(dataset_name,trust_remote_code=True)
38
+ # remove "all" subset, which is always the last config type
39
+ dataset_configs.pop()
40
+ print(dataset_configs)
41
+ # read the reports for public and secret datasets
42
+ [stats_dict_public, contents_dict_public] = read_reports(dataset_name)
43
+
44
+ # update the metrics for test split with the secret dataset statistics
45
+ #stats_dict_public = add_test_split_stats_from_secret_dataset(stats_dict_public, stats_dict_secret)
46
+ df_multindex_for_agg = dict_to_multindex_df(stats_dict_public, all_splits=False)
47
+ df_multindex_all_splits = dict_to_multindex_df(stats_dict_public, all_splits=True)
48
+
49
+ # extract metrics from dictionary and convert to various dataframes for easier analysis and visualization
50
+ #st.header("Summary statistics")
51
+
52
+
53
+ st.header("Dataset level metrics")
54
+ metrics_size = ["samples", "audio[h]", "speakers", "words", "chars"]
55
+ df_sum_stats_agg = extract_stats_to_agg(df_multindex_for_agg, metrics_size)
56
+
57
+ # split dataframe into separate dataframes for easier analysis and visualization
58
+ st.subheader("Dataset size (audio)")
59
+ df_sum_stats_audio = df_sum_stats_agg[["audio[h]", "samples", "speakers"]]
60
+ st.dataframe(df_sum_stats_audio)
61
+
62
+ st.subheader("Dataset size (text)")
63
+ df_sum_stats_text = df_sum_stats_agg[["samples", "words", "chars"]]
64
+ st.dataframe(df_sum_stats_text)
65
+
66
+
67
+ metrics_features = ["utts_unique", "words_unique", "chars_unique", "words_per_sec", "chars_per_sec"]
68
+
69
+ df_sum_stats_all_splits = extract_stats_all_splits(df_multindex_all_splits, metrics_features)
70
+
71
+ st.subheader("Dataset features (text)")
72
+ df_sum_stats_feats_text = df_sum_stats_all_splits[metrics_features[0:2]]
73
+ st.dataframe(df_sum_stats_feats_text)
74
+
75
+ st.subheader("Dataset features (audio)")
76
+ df_sum_stats_feats_audio = df_sum_stats_all_splits[metrics_features[3:]]
77
+ st.dataframe(df_sum_stats_feats_audio)
78
+
79
+ st.header("BIGOS subsets (source datasets) cards")
80
+ for subset in dataset_configs:
81
+ st.subheader("Dataset card for: {}".format(subset))
82
+ df_metrics_subset_size = extract_stats_for_dataset_card(df_multindex_for_agg, subset, metrics_size, add_total=True)
83
+ st.dataframe(df_metrics_subset_size)
84
+ df_metrics_subset_features = extract_stats_for_dataset_card(df_multindex_for_agg, subset, metrics_features, add_total=False)
85
+ st.dataframe(df_metrics_subset_features)
86
+
87
+
88
+
89
+ #########################################PELCRA################################################
90
+ with analysis_bigos_pelcra:
91
+
92
+ dataset_name = "pelcra/pl-asr-pelcra-for-bigos"
93
+ #dataset_secret = "pelcra/pl-asr-pelcra-for-bigos-secret"
94
+
95
+ dataset_short_name = "PELCRA"
96
+
97
+ dataset_configs = get_dataset_config_names(dataset_name,trust_remote_code=True)
98
+ # remove "all" subset, which is always the last config type
99
+ dataset_configs.pop()
100
+ print(dataset_configs)
101
+ # read the reports for public and secret datasets
102
+ [stats_dict_public, contents_dict_public] = read_reports(dataset_name)
103
+
104
+ # update the metrics for test split with the secret dataset statistics
105
+ #stats_dict_public = add_test_split_stats_from_secret_dataset(stats_dict_public, stats_dict_secret)
106
+ df_multindex_for_agg = dict_to_multindex_df(stats_dict_public, all_splits=False)
107
+ df_multindex_all_splits = dict_to_multindex_df(stats_dict_public, all_splits=True)
108
+
109
+ # extract metrics from dictionary and convert to various dataframes for easier analysis and visualization
110
+ #st.header("Summary statistics")
111
+
112
+
113
+ st.header("Dataset level metrics")
114
+ metrics_size = ["samples", "audio[h]", "speakers", "words", "chars"]
115
+ df_sum_stats_agg = extract_stats_to_agg(df_multindex_for_agg, metrics_size)
116
+
117
+ #st.dataframe(df_sum_stats_agg)
118
+ #print(df_sum_stats.columns)
119
+
120
+ # split dataframe into separate dataframes for easier analysis and visualization
121
+ st.subheader("Dataset size (audio)")
122
+ df_sum_stats_audio = df_sum_stats_agg[["audio[h]", "samples", "speakers"]]
123
+ st.dataframe(df_sum_stats_audio)
124
+
125
+ st.subheader("Dataset size (text)")
126
+ df_sum_stats_text = df_sum_stats_agg[["samples", "words", "chars"]]
127
+ st.dataframe(df_sum_stats_text)
128
+
129
+
130
+ metrics_features = ["utts_unique", "words_unique", "chars_unique", "words_per_sec", "chars_per_sec"]
131
+
132
+ df_sum_stats_all_splits = extract_stats_all_splits(df_multindex_all_splits, metrics_features)
133
+
134
+ st.subheader("Dataset features (text)")
135
+ df_sum_stats_feats_text = df_sum_stats_all_splits[metrics_features[0:2]]
136
+ st.dataframe(df_sum_stats_feats_text)
137
+
138
+ st.subheader("Dataset features (audio)")
139
+ df_sum_stats_feats_audio = df_sum_stats_all_splits[metrics_features[3:]]
140
+ st.dataframe(df_sum_stats_feats_audio)
141
+
142
+ st.header("BIGOS subsets (source datasets) cards")
143
+ for subset in dataset_configs:
144
+ st.subheader("Dataset card for: {}".format(subset))
145
+ df_metrics_subset_size = extract_stats_for_dataset_card(df_multindex_for_agg, subset, metrics_size, add_total=True)
146
+ st.dataframe(df_metrics_subset_size)
147
+ df_metrics_subset_features = extract_stats_for_dataset_card(df_multindex_for_agg, subset, metrics_features, add_total=False)
148
+ st.dataframe(df_metrics_subset_features)
constants.py ADDED
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1
+ ABOUT_INFO = "Welcome to the BIGOS (Benchmark Intended Grouping of Open Speech) dataset analysis dashboard! <br> \
2
+ Here you can learn more about the contents of BIGOS speech datasets for Polish: <br> \
3
+ * **BIGOS V2 dataset** [HF datasets hub](https://huggingface.co/datasets/amu-cai/pl-asr-bigos-v2) <br> \
4
+ * **BIGOS V2 diagnostic dataset** [HF datasets hub](https://huggingface.co/datasets/amu-cai/pl-asr-bigos-v2-diagnostic) <br> \
5
+ * **PELCRA for BIGOS dataset** [HF datasets hub](https://huggingface.co/datasets/pelcra/pl-asr-pelcra-for-bigos) <br> \
6
+ Please visit respective tab to learn more about the contents of specific dataset. <br><br> \
7
+ Survey of Polish ASR speech datasets and benchmarks is available here: [Polish ASR survey](https://huggingface.co/spaces/amu-cai/pl-asr-survey) <br><br>\
8
+ The latest and most comprehensive ASR benchmarks for Polish is available here: [BIGOS/PELCRA ASR leaderboard](https://huggingface.co/spaces/amu-cai/pl-asr-bigos-bench-dash). <br><br> \
9
+ You can also contact the author via [email](mailto:michal.junczyk@amu.edu.pl) or [LinkedIn](https://www.linkedin.com/in/michaljunczyk/).<br>"
10
+
11
+ BIGOS_INFO = "TODO"
12
+ PELCRA_INFO = "TODO"
13
+
14
+ CITATION_MAIN = "@misc{junczyk-2024-pl-asr-bigos-dataset-analysis <br> \
15
+ title = {Analysis of BIGOS Dataset for Polish ASR evaluation.}, <br> \
16
+ author = {Michał Junczyk}, <br> \
17
+ year = {2024}, <br> \
18
+ publisher = {Hugging Face}, <br> \
19
+ url = {https://huggingface.co/spaces/amu-cai/amu-bigos-data-dash} }"
playground-amu-dash.ipynb ADDED
The diff for this file is too large to render. See raw diff
 
requirements.txt ADDED
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1
+ datasets
2
+ pandas
3
+ streamlit
4
+ seaborn
5
+ matplotlib
6
+ librosa
run-analysis.py ADDED
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1
+ import os
2
+ import json
3
+ from datasets import load_dataset, get_dataset_config_names, Features, Value
4
+ from utils import num_of_samples_per_split, uniq_utts_per_split, words_per_split, uniq_words_per_split, chars_per_split, uniq_chars_per_split
5
+ from utils import audio_duration_per_split, speakers_per_split, meta_cov_per_split
6
+ #, uniq_utts_per_speaker
7
+ from utils import meta_distribution_text, meta_distribution_violin_plot, recordings_per_speaker, speech_rate_words_per_split, speech_rate_chars_per_split
8
+ import argparse
9
+ # move to constants
10
+ output_dir_plots = "./plots"
11
+ output_dir_reports = "./reports"
12
+ os.makedirs(output_dir_plots, exist_ok=True)
13
+ os.makedirs(output_dir_plots, exist_ok=True)
14
+
15
+ # get as cmd line args
16
+ # read from command line argument
17
+ parser = argparse.ArgumentParser()
18
+ parser.add_argument("--dataset", type=str, required=True, help="Name of the dataset to generate reports for")
19
+ parser.add_argument("--secret_test_split", default=True, type=bool, help="Should references for test split be retrieved from the secret distribution?")
20
+
21
+ args = parser.parse_args()
22
+
23
+ dataset_name = args.dataset
24
+ print("Generating reports for dataset: {}".format(dataset_name))
25
+ if (args.secret_test_split):
26
+ dataset_name_secret = str.join("-", [dataset_name, "secret"])
27
+ # check if secret repo exists
28
+ print(dataset_name_secret)
29
+ try:
30
+ dataset_configs_secret = get_dataset_config_names(dataset_name_secret)
31
+ except:
32
+ print("Config for secret dataset {} cannot be retrieved!".format(dataset_name_secret))
33
+
34
+ #dataset_name = "amu-cai/pl-asr-bigos-v2"
35
+ output_dir_reports_dataset = os.path.join(output_dir_reports, dataset_name)
36
+ os.makedirs(output_dir_reports_dataset, exist_ok=True)
37
+
38
+ # get dataset config names
39
+ dataset_configs = get_dataset_config_names(dataset_name)
40
+
41
+ # initialize output structures
42
+ dataset_statistics = {}
43
+ output_fn_stats = os.path.join(output_dir_reports_dataset, "dataset_statistics.json")
44
+
45
+ dataset_contents = {}
46
+ output_fn_contents = os.path.join(output_dir_reports_dataset, "dataset_contents.json")
47
+
48
+ # specify features to load. Skip loading of audio data
49
+ features_to_load = Features({'audioname': Value(dtype='string', id=None), 'split': Value(dtype='string', id=None), 'dataset': Value(dtype='string', id=None), 'speaker_id': Value(dtype='string', id=None), 'ref_orig': Value(dtype='string', id=None), 'audio_duration_samples': Value(dtype='int32', id=None), 'audio_duration_seconds': Value(dtype='float32', id=None), 'samplingrate_orig': Value(dtype='int32', id=None), 'sampling_rate': Value(dtype='int32', id=None), 'audiopath_bigos': Value(dtype='string', id=None), 'audiopath_local': Value(dtype='string', id=None), 'speaker_age': Value(dtype='string', id=None), 'speaker_sex': Value(dtype='string', id=None)})
50
+
51
+ for config_name in dataset_configs:
52
+ print("Generating stats for {}".format(config_name))
53
+
54
+ dataset_statistics[config_name] = {}
55
+ dataset_contents[config_name] = {}
56
+
57
+ dataset_hf_subset = load_dataset(dataset_name, config_name, features=features_to_load, trust_remote_code=True)
58
+ if(args.secret_test_split):
59
+ dataset_hf_subset_secret = load_dataset(dataset_name_secret, config_name, features=features_to_load, trust_remote_code=True)
60
+
61
+ dataset_statistics[config_name]["samples"] = num_of_samples_per_split(dataset_hf_subset)
62
+ dataset_statistics[config_name]["audio[h]"] = audio_duration_per_split(dataset_hf_subset)
63
+ dataset_statistics[config_name]["speakers"] = speakers_per_split(dataset_hf_subset)
64
+
65
+ # metrics based on transcriptions (references) - requires reading secret repo for test split
66
+ dataset_statistics[config_name]["utts_unique"], dataset_contents[config_name]["unique_utts"] = uniq_utts_per_split(dataset_hf_subset, dataset_hf_subset_secret)
67
+ dataset_statistics[config_name]["words"] = words_per_split(dataset_hf_subset, dataset_hf_subset_secret)
68
+ dataset_statistics[config_name]["words_unique"], dataset_contents[config_name]["unique_words"] = uniq_words_per_split(dataset_hf_subset, dataset_hf_subset_secret)
69
+ dataset_statistics[config_name]["chars"] = chars_per_split(dataset_hf_subset, dataset_hf_subset_secret)
70
+ dataset_statistics[config_name]["chars_unique"], dataset_contents[config_name]["unique_chars"] = uniq_chars_per_split(dataset_hf_subset, dataset_hf_subset_secret)
71
+ dataset_statistics[config_name]["words_per_sec"] = speech_rate_words_per_split(dataset_hf_subset, dataset_hf_subset_secret)
72
+ dataset_statistics[config_name]["chars_per_sec"] = speech_rate_chars_per_split(dataset_hf_subset, dataset_hf_subset_secret)
73
+
74
+ # metadata coverage per subset in percent - speaker accent
75
+ dataset_statistics[config_name]["meta_cov_sex"] = meta_cov_per_split(dataset_hf_subset, 'speaker_sex')
76
+ dataset_statistics[config_name]["meta_cov_age"] = meta_cov_per_split(dataset_hf_subset, 'speaker_age')
77
+
78
+ # speech rate per subset
79
+ dataset_statistics[config_name]["meta_dist_sex"] = meta_distribution_text(dataset_hf_subset, 'speaker_sex')
80
+ dataset_statistics[config_name]["meta_dist_age"] = meta_distribution_text(dataset_hf_subset, 'speaker_age')
81
+
82
+ dataset_statistics[config_name]["samples_per_spk"], dataset_contents[config_name]["samples_per_spk"] = recordings_per_speaker(dataset_hf_subset)
83
+ # dataset_statistics[config_name] = uniq_utts_per_speaker(dataset_hf_subset)
84
+ # number of words per speaker (min, max, med, avg, std)
85
+
86
+ # distribution of audio duration per subset
87
+ output_dir_plots_subset = os.path.join(output_dir_plots, config_name)
88
+ meta_distribution_violin_plot(dataset_hf_subset, output_dir_plots_subset, 'audio_duration_seconds', 'speaker_sex')
89
+
90
+ # distribution of audio duration per age
91
+ meta_distribution_violin_plot(dataset_hf_subset, output_dir_plots_subset, 'audio_duration_seconds', 'speaker_age')
92
+
93
+
94
+ # save datasets statistics dict to storage as JSON file
95
+ with open(output_fn_stats, 'w') as f:
96
+ json.dump(dataset_statistics, f)
97
+
98
+ # save dataset content analysis to storage
99
+ with open(output_fn_contents, 'w') as f:
100
+ json.dump(dataset_contents, f)
101
+
utils.py ADDED
@@ -0,0 +1,601 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ import json
2
+
3
+ import seaborn as sns
4
+ import matplotlib.pyplot as plt
5
+ import pandas as pd
6
+ import os
7
+ import numpy as np
8
+
9
+ # move to consts
10
+ buckets_age=['teens','twenties', 'thirties', 'fourties', 'fifties', 'sixties', 'seventies', 'eighties', 'nineties']
11
+ buckets_sex=["male", "female"]
12
+
13
+ def load_bigos_analyzer_report(fp:str)->dict:
14
+ with open(fp, 'r') as f:
15
+ data = json.load(f)
16
+ return data
17
+
18
+ def num_of_samples_per_split(dataset_hf):
19
+ # input - huggingface dataset object
20
+ # output - dictionary with statistics about number of samples per split
21
+ out_dict = {}
22
+ # number of samples per subset and split
23
+ metric = "samples"
24
+ print("Calculating {}".format(metric))
25
+
26
+ for split in dataset_hf.keys():
27
+ samples = dataset_hf[split].num_rows
28
+ ##print(split, samples)
29
+ out_dict[split] = samples
30
+ # add number of samples for all splits
31
+ out_dict["all_splits"] = sum(out_dict.values())
32
+
33
+ return out_dict
34
+
35
+ def audio_duration_per_split(dataset_hf):
36
+ # input - huggingface dataset object
37
+ # output - dictionary with statistics about audio duration per split
38
+ out_dict = {}
39
+ metric = "audio[h]"
40
+ print("Calculating {}".format(metric))
41
+
42
+
43
+ for split in dataset_hf.keys():
44
+ #sampling_rate = dataset_hf[split]["sampling_rate"][0]
45
+ #audio_total_length_samples = 0
46
+ #audio_total_length_samples = sum(len(audio_file["array"]) for audio_file in dataset_hf["test"]["audio"])
47
+ audio_total_length_seconds = sum(dataset_hf[split]["audio_duration_seconds"])
48
+ audio_total_length_hours = round(audio_total_length_seconds / 3600,2)
49
+ out_dict[split] = audio_total_length_hours
50
+ #print(split, audio_total_length_hours)
51
+ # add number of samples for all splits
52
+ out_dict["all_splits"] = sum(out_dict.values())
53
+ return out_dict
54
+
55
+ def speakers_per_split(dataset_hf):
56
+ # input - huggingface dataset object
57
+ # output - dictionary with statistics about audio duration per split
58
+ out_dict = {}
59
+ metric = "speakers"
60
+ print("Calculating {}".format(metric))
61
+
62
+
63
+ for split in dataset_hf.keys():
64
+ # extract speakers from file_id
65
+ speakers_ids_all = [str(fileid).split("-")[4] for fileid in dataset_hf[split]["audioname"]]
66
+ speakers_ids_uniq = list(set(speakers_ids_all))
67
+ speakers_count = len(speakers_ids_uniq)
68
+ #print(split, speakers_count)
69
+ out_dict[split] = speakers_count
70
+ # add number of samples for all splits
71
+ out_dict["all_splits"] = sum(out_dict.values())
72
+ return out_dict
73
+
74
+
75
+ def uniq_utts_per_split(dataset_hf, dataset_hf_secret):
76
+ # input - huggingface dataset object
77
+ # output - dictionary with statistics about audio duration per split
78
+ out_dict = {}
79
+ metric = "utts_unique"
80
+ print("Calculating {}".format(metric))
81
+ utts_all = []
82
+ for split in dataset_hf.keys():
83
+ # extract speakers from file_id
84
+ if (split == "test"):
85
+ utts_split = dataset_hf_secret[split]["ref_orig"]
86
+ else:
87
+ utts_split = dataset_hf[split]["ref_orig"]
88
+ utts_all = utts_all + utts_split
89
+ utts_uniq = list(set(utts_split))
90
+ utts_uniq_count = len(utts_uniq)
91
+ #print(split, utts_uniq_count)
92
+ out_dict[split] = utts_uniq_count
93
+ # add number of samples for all splits
94
+ out_dict["all_splits"] = len(list(set(utts_all)))
95
+ return out_dict,utts_all
96
+
97
+
98
+ def words_per_split(dataset_hf, dataset_hf_secret):
99
+ # input - huggingface dataset object
100
+ # output - dictionary with statistics about audio duration per split
101
+ out_dict = {}
102
+ metric = "words"
103
+ print("Calculating {}".format(metric))
104
+
105
+ for split in dataset_hf.keys():
106
+ # extract speakers from file_id
107
+ if (split == "test"):
108
+ utts_all = dataset_hf_secret[split]["ref_orig"]
109
+ else:
110
+ utts_all = dataset_hf[split]["ref_orig"]
111
+ utts_lenghts = [len(utt.split(" ")) for utt in utts_all]
112
+ words_all_count = sum(utts_lenghts)
113
+ #print(split, words_all_count)
114
+ out_dict[split] = words_all_count
115
+ # add number of samples for all splits
116
+ out_dict["all_splits"] = sum(out_dict.values())
117
+ return out_dict
118
+
119
+
120
+ def uniq_words_per_split(dataset_hf, dataset_hf_secret):
121
+ # input - huggingface dataset object
122
+ # output - dictionary with statistics about audio duration per split
123
+ out_dict = {}
124
+ out_words_list = []
125
+ metric = "words_unique"
126
+ print("Calculating {}".format(metric))
127
+
128
+
129
+ for split in dataset_hf.keys():
130
+ # extract speakers from file_id
131
+ if (split == "test"):
132
+ utts_all = dataset_hf_secret[split]["ref_orig"]
133
+ else:
134
+ utts_all = dataset_hf[split]["ref_orig"]
135
+
136
+ words_all = " ".join(utts_all).split(" ")
137
+ words_uniq = list(set(words_all))
138
+ out_words_list = out_words_list + words_uniq
139
+ words_uniq_count = len(words_uniq)
140
+ #print(split, words_uniq_count)
141
+ out_dict[split] = words_uniq_count
142
+
143
+ # add number of samples for all splits
144
+ out_words_uniq = list(set((out_words_list)))
145
+ out_words_uniq_count = len(out_words_uniq)
146
+ out_dict["all_splits"] = out_words_uniq_count
147
+ #print("all", out_words_uniq_count)
148
+
149
+ return out_dict, out_words_uniq
150
+
151
+
152
+ def chars_per_split(dataset_hf, dataset_hf_secret):
153
+ # input - huggingface dataset object
154
+ # output - dictionary with statistics about audio duration per split
155
+ out_dict = {}
156
+
157
+ metric = "chars"
158
+ print("Calculating {}".format(metric))
159
+
160
+
161
+ for split in dataset_hf.keys():
162
+ # extract speakers from file_id
163
+ if (split=="test"):
164
+ utts_all = dataset_hf_secret[split]["ref_orig"]
165
+ else:
166
+ utts_all = dataset_hf[split]["ref_orig"]
167
+ words_all = " ".join(utts_all).split(" ")
168
+ chars_all = " ".join(words_all)
169
+ chars_all_count = len(chars_all)
170
+ #print(split, chars_all_count)
171
+ out_dict[split] = chars_all_count
172
+ # add number of samples for all splits
173
+ out_dict["all_splits"] = sum(out_dict.values())
174
+ return out_dict
175
+
176
+
177
+ def uniq_chars_per_split(dataset_hf, dataset_hf_secret):
178
+ # input - huggingface dataset object
179
+ # output - dictionary with statistics about audio duration per split
180
+ out_dict = {}
181
+ out_chars_list = []
182
+ metric = "chars_unique"
183
+ print("Calculating {}".format(metric))
184
+
185
+
186
+ for split in dataset_hf.keys():
187
+ # extract speakers from file_id
188
+ if(split == "test"):
189
+ utts_all = dataset_hf_secret[split]["ref_orig"]
190
+ else:
191
+ utts_all = dataset_hf[split]["ref_orig"]
192
+ words_all = " ".join(utts_all).split(" ")
193
+ words_uniq = list(set(words_all))
194
+ chars_uniq = list(set("".join(words_uniq)))
195
+ chars_uniq_count = len(chars_uniq)
196
+ #print(split, chars_uniq_count)
197
+ out_dict[split] = chars_uniq_count
198
+ out_chars_list = out_chars_list + chars_uniq
199
+ # add number of samples for all splits
200
+ out_chars_uniq = list(set((out_chars_list)))
201
+ out_chars_uniq_count = len(out_chars_uniq)
202
+ out_dict["all_splits"] = out_chars_uniq_count
203
+ #print("all", out_chars_uniq_count)
204
+
205
+ return out_dict, out_chars_uniq
206
+
207
+ def meta_cov_per_split(dataset_hf, meta_field):
208
+ # input - huggingface dataset object
209
+ # output - dictionary with statistics about audio duration per split
210
+ no_meta=False
211
+ # TODO move to config
212
+ if meta_field == 'speaker_age':
213
+ buckets = buckets_age
214
+ if meta_field == 'speaker_sex':
215
+ buckets = buckets_sex
216
+ out_dict = {}
217
+ metric = "meta_cov_" + meta_field
218
+ print("Calculating {}".format(metric))
219
+
220
+ meta_info_all = 0
221
+ meta_info_not_null_all = 0
222
+ for split in dataset_hf.keys():
223
+
224
+ # extract speakers from file_id
225
+ meta_info = dataset_hf[split][meta_field]
226
+ meta_info_count = len(meta_info)
227
+ meta_info_all += meta_info_count
228
+ # calculate coverage
229
+ meta_info_not_null_count = len([x for x in meta_info if x != "N/A"])
230
+ if meta_info_not_null_count == 0:
231
+ out_dict[split] = "N/A"
232
+ continue
233
+ meta_info_not_null_all += meta_info_not_null_count
234
+ meta_info_coverage = round(meta_info_not_null_count / meta_info_count, 2)
235
+ #print(split, meta_info_coverage)
236
+
237
+ # add number of samples for all splits
238
+ out_dict[split] = meta_info_coverage
239
+
240
+ # add number of samples for all splits
241
+ if (meta_info_not_null_all == 0):
242
+ out_dict["all_splits"] = "N/A"
243
+ else:
244
+ out_dict["all_splits"] = round(meta_info_not_null_all/meta_info_all,2 )
245
+ return out_dict
246
+
247
+
248
+ def speech_rate_words_per_split(dataset_hf, dataset_hf_secret):
249
+ # input - huggingface dataset object
250
+ # output - dictionary with statistics about audio duration per split
251
+ out_dict = {}
252
+ metric = "words_per_second"
253
+ print("Calculating {}".format(metric))
254
+
255
+ words_all_count = 0
256
+ audio_total_length_seconds = 0
257
+
258
+ for split in dataset_hf.keys():
259
+ # extract speakers from file_id
260
+ if (split == "test"):
261
+ utts_split = dataset_hf_secret[split]["ref_orig"]
262
+ else:
263
+ utts_split = dataset_hf[split]["ref_orig"]
264
+ words_split = " ".join(utts_split).split(" ")
265
+ words_split_count = len(words_split)
266
+ words_all_count += words_split_count
267
+ audio_split_length_seconds = sum(dataset_hf[split]["audio_duration_seconds"])
268
+ audio_total_length_seconds += audio_split_length_seconds
269
+ speech_rate = round(words_split_count / audio_split_length_seconds, 2)
270
+ #print(split, speech_rate)
271
+ out_dict[split] = speech_rate
272
+ # add number of samples for all splits
273
+ out_dict["all_splits"] = round(words_all_count / audio_total_length_seconds, 2)
274
+ return out_dict
275
+
276
+ def speech_rate_chars_per_split(dataset_hf, dataset_hf_secret):
277
+ # input - huggingface dataset object
278
+ # output - dictionary with statistics about audio duration per split
279
+ out_dict = {}
280
+ metric = "chars_per_second"
281
+ print("Calculating {}".format(metric))
282
+
283
+ chars_all_count = 0
284
+ audio_total_length_seconds = 0
285
+
286
+ for split in dataset_hf.keys():
287
+ # extract speakers from file_id
288
+ if (split == "test"):
289
+ utts_split = dataset_hf_secret[split]["ref_orig"]
290
+ else:
291
+ utts_split = dataset_hf[split]["ref_orig"]
292
+ words_split = " ".join(utts_split).split(" ")
293
+ chars_split_count = len("".join(words_split))
294
+ chars_all_count += chars_split_count
295
+ audio_split_length_seconds = sum(dataset_hf[split]["audio_duration_seconds"])
296
+ audio_total_length_seconds += audio_split_length_seconds
297
+ speech_rate = round(chars_split_count / audio_split_length_seconds, 2)
298
+ #print(split, speech_rate)
299
+ out_dict[split] = speech_rate
300
+ # add number of samples for all splits
301
+ out_dict["all_splits"] = round(chars_all_count / audio_total_length_seconds, 2)
302
+ return out_dict
303
+
304
+
305
+ # distribution of speaker age
306
+ def meta_distribution_text(dataset_hf, meta_field):
307
+ no_meta=False
308
+ if meta_field == 'speaker_age':
309
+ buckets = buckets_age
310
+ if meta_field == 'speaker_sex':
311
+ buckets = buckets_sex
312
+
313
+ # input - huggingface dataset object
314
+ # output - dictionary with statistics about audio duration per split
315
+ out_dict = {}
316
+ metric = "distribution_" + meta_field
317
+ print("Calculating {}".format(metric))
318
+
319
+
320
+ values_count_total = {}
321
+ for bucket in buckets:
322
+ values_count_total[bucket]=0
323
+
324
+ for split in dataset_hf.keys():
325
+ out_dict[split] = {}
326
+ # extract speakers from file_id
327
+ meta_info = dataset_hf[split][meta_field]
328
+ meta_info_not_null = [x for x in meta_info if x != "N/A"]
329
+
330
+ if len(meta_info_not_null) == 0:
331
+ out_dict[split]="N/A"
332
+ no_meta=True
333
+ continue
334
+ for bucket in buckets:
335
+ values_count = meta_info_not_null.count(bucket)
336
+ values_count_total[bucket] += values_count
337
+ out_dict[split][bucket] = round(values_count/len(meta_info_not_null),2)
338
+ #print(split, out_dict[split])
339
+
340
+ # add number of samples for all splits
341
+ if (no_meta):
342
+ out_dict["all_splits"] = "N/A"
343
+ return out_dict
344
+
345
+ out_dict["all_splits"] = {}
346
+ # calculate total number of samples in values_count_total
347
+ for bucket in buckets:
348
+ total_samples = sum(values_count_total.values())
349
+ out_dict["all_splits"][bucket] = round(values_count_total[bucket]/total_samples,2)
350
+ return out_dict
351
+
352
+
353
+
354
+ def recordings_per_speaker(dataset_hf):
355
+ recordings_per_speaker_stats_dict = {}
356
+
357
+ # input - huggingface dataset object
358
+ # output - dictionary with statistics about audio duration per split
359
+ out_dict_stats = {}
360
+ out_dict_contents = {}
361
+
362
+ metric = "recordings_per_speaker"
363
+ print("Calculating {}".format(metric))
364
+
365
+ recordings_per_speaker_stats_dict_all = {}
366
+ recordings_total=0
367
+
368
+ speakers_total = 0
369
+
370
+ for split in dataset_hf.keys():
371
+ # extract speakers from file_id
372
+ audiopaths = dataset_hf[split]["audioname"]
373
+ speaker_prefixes = [str(fileid).split("-")[0:5] for fileid in audiopaths]
374
+
375
+ speakers_dict_split = {}
376
+ # create dictionary with list of audio paths matching speaker prefix
377
+
378
+ # Create initial dictionary keys from speaker prefixes
379
+ for speaker_prefix in speaker_prefixes:
380
+ speaker_prefix_str = "-".join(speaker_prefix)
381
+ speakers_dict_split[speaker_prefix_str] = []
382
+
383
+ # Populate the dictionary with matching audio paths
384
+ for audio_path in audiopaths:
385
+ for speaker_prefix_str in speakers_dict_split.keys():
386
+ if speaker_prefix_str in audio_path:
387
+ speakers_dict_split[speaker_prefix_str].append(audio_path)
388
+
389
+
390
+ # iterate of speaker_dict prefixes and calculate number of recordings per speaker.
391
+ recordings_per_speaker_stats_dict_split = {}
392
+ for speaker_prefix_str in speakers_dict_split.keys():
393
+ recordings_per_speaker_stats_dict_split[speaker_prefix_str] = len(speakers_dict_split[speaker_prefix_str])
394
+
395
+ out_dict_contents[split] = {}
396
+ out_dict_contents[split] = recordings_per_speaker_stats_dict_split
397
+
398
+ # use recordings_per_speaker_stats to calculate statistics like min, max, avg, median, std
399
+ out_dict_stats[split] = {}
400
+ speakers_split = len(list(recordings_per_speaker_stats_dict_split.keys()))
401
+ speakers_total += speakers_split
402
+
403
+ recordings_split = len(audiopaths)
404
+ recordings_total += recordings_split
405
+
406
+ average_recordings_per_speaker = round( recordings_split / speakers_split,2)
407
+ out_dict_stats[split]["average"] = average_recordings_per_speaker
408
+ out_dict_stats[split]["std"] = round(np.std(list(recordings_per_speaker_stats_dict_split.values())),2)
409
+ out_dict_stats[split]["median"] = np.median(list(recordings_per_speaker_stats_dict_split.values()))
410
+ out_dict_stats[split]["min"] = min(recordings_per_speaker_stats_dict_split.values())
411
+ out_dict_stats[split]["max"] = max(recordings_per_speaker_stats_dict_split.values())
412
+
413
+ recordings_per_speaker_stats_dict_all = recordings_per_speaker_stats_dict_all | recordings_per_speaker_stats_dict_split
414
+ # add number of samples for all splits
415
+
416
+ average_recordings_per_speaker_all = round( recordings_total / speakers_total , 2)
417
+ out_dict_stats["all_splits"] = {}
418
+ out_dict_stats["all_splits"]["average"] = average_recordings_per_speaker_all
419
+ out_dict_stats["all_splits"]["std"] = round(np.std(list(recordings_per_speaker_stats_dict_all.values())),2)
420
+ out_dict_stats["all_splits"]["median"] = np.median(list(recordings_per_speaker_stats_dict_all.values()))
421
+ out_dict_stats["all_splits"]["min"] = min(recordings_per_speaker_stats_dict_all.values())
422
+ out_dict_stats["all_splits"]["max"] = max(recordings_per_speaker_stats_dict_all.values())
423
+ out_dict_contents["all_splits"] = recordings_per_speaker_stats_dict_all
424
+ return out_dict_stats, out_dict_contents
425
+
426
+
427
+ def meta_distribution_bar_plot(dataset_hf, output_dir, dimension = "speaker_sex"):
428
+ pass
429
+
430
+ def meta_distribution_violin_plot(dataset_hf, output_dir, metric = "audio_duration_seconds", dimension = "speaker_sex"):
431
+ # input - huggingface dataset object
432
+ # output - figure with distribution of audio duration per sex
433
+ out_dict = {}
434
+
435
+ print("Generating violin plat for metric {} for dimension {}".format(metric, dimension))
436
+
437
+ # drop samples for which dimension column values are equal to "N/A"
438
+ for split in dataset_hf.keys():
439
+ df_dataset = pd.DataFrame(dataset_hf[split])
440
+
441
+ # remove values equal to "N/A" for column dimension
442
+ df_filtered = df_dataset[df_dataset[dimension] != "N/A"]
443
+ df_filtered = df_filtered[df_filtered[dimension] != "other"]
444
+ df_filtered = df_filtered[df_filtered[dimension] != "unknown"]
445
+ if df_filtered.empty:
446
+ print("No data for split {} and dimension {}".format(split, dimension))
447
+ continue
448
+
449
+ if (len(df_filtered)>=5000):
450
+ sample_size = 5000
451
+ print("Selecting sample of size {}".format(sample_size))
452
+ else:
453
+ sample_size = len(df_filtered)
454
+ print("Selecting full split of size {}".format(sample_size))
455
+
456
+ df = df_filtered.sample(sample_size)
457
+ # if df_filtered is empty, skip violin plot generation for this split and dimension
458
+
459
+ print("Generating plot")
460
+ plt.figure(figsize=(20, 15))
461
+ plot = sns.violinplot(data = df, hue=dimension, x='dataset', y=metric, split=True, fill = False,inner = 'quart', legend='auto', common_norm=True)
462
+ plot.set_xticklabels(plot.get_xticklabels(), rotation = 30, horizontalalignment = 'right')
463
+
464
+ plt.title('Violin plot of {} by {} for split {}'.format(metric, dimension, split))
465
+ plt.xlabel(dimension)
466
+ plt.ylabel(metric)
467
+
468
+
469
+ #plt.show(
470
+ # save figure to file
471
+ os.makedirs(output_dir, exist_ok=True)
472
+ output_fn = os.path.join(output_dir, metric + "-" + dimension + "-" + split + ".png")
473
+ plt.savefig(output_fn)
474
+ print("Plot generation completed")
475
+
476
+ def read_reports(dataset_name):
477
+
478
+ json_contents = "./reports/{}/dataset_contents.json".format(dataset_name)
479
+ json_stats = "reports/{}/dataset_statistics.json".format(dataset_name)
480
+
481
+ with open(json_contents, 'r') as file:
482
+ contents_dict = json.load(file)
483
+
484
+ with open(json_stats, 'r') as file:
485
+ stats_dict = json.load(file)
486
+
487
+ return(stats_dict, contents_dict)
488
+
489
+
490
+ def add_test_split_stats_from_secret_dataset(stats_dict_public, stats_dict_secret):
491
+ # merge contents if dictionaries for fields utts, words, words_unique, chars, chars_unique and speech_rate
492
+ for dataset in stats_dict_public.keys():
493
+ print(dataset)
494
+ for metric in stats_dict_secret[dataset].keys():
495
+ for split in stats_dict_secret[dataset][metric].keys():
496
+ if split == "test":
497
+ stats_dict_public[dataset][metric][split] = stats_dict_secret[dataset][metric][split]
498
+
499
+ return(stats_dict_public)
500
+
501
+ def dict_to_multindex_df(dict_in, all_splits=False):
502
+ # Creating a MultiIndex DataFrame
503
+ rows = []
504
+ for dataset, metrics in dict_in.items():
505
+ if (dataset == "all"):
506
+ continue
507
+ for metric, splits in metrics.items():
508
+ for split, value in splits.items():
509
+ if (all_splits):
510
+ if (split == "all_splits"):
511
+ rows.append((dataset, metric, split, value))
512
+ else:
513
+ if (split == "all_splits"):
514
+ continue
515
+ rows.append((dataset, metric, split, value))
516
+
517
+ # Convert to DataFrame
518
+ df = pd.DataFrame(rows, columns=['dataset', 'metric', 'split', 'value'])
519
+ df.set_index(['dataset', 'metric', 'split'], inplace=True)
520
+
521
+ return(df)
522
+
523
+
524
+ def dict_to_multindex_df_all_splits(dict_in):
525
+ # Creating a MultiIndex DataFrame
526
+ rows = []
527
+ for dataset, metrics in dict_in.items():
528
+ if (dataset == "all"):
529
+ continue
530
+ for metric, splits in metrics.items():
531
+ for split, value in splits.items():
532
+ if (split == "all_splits"):
533
+ rows.append((dataset, metric, split, value))
534
+
535
+ # Convert to DataFrame
536
+ df = pd.DataFrame(rows, columns=['dataset', 'metric', 'split', 'value'])
537
+ df.set_index(['dataset', 'metric', 'split'], inplace=True)
538
+
539
+ return(df)
540
+
541
+
542
+ def extract_stats_to_agg(df_multindex_per_split, metrics):
543
+ # input - multiindex dataframe has three indexes - dataset, metric, split
544
+
545
+ # select only relevant metrics
546
+ df_agg_splits = df_multindex_per_split.loc[(slice(None), metrics), :]
547
+
548
+ # unstack - move rows per split to columns
549
+ df_agg_splits = df_agg_splits.unstack(level ='split')
550
+
551
+ # aggregate values for all splits
552
+ df_agg_splits['value', 'total'] = df_agg_splits['value'].sum(axis=1)
553
+ # drop columns with splits
554
+ df_agg_splits.columns = df_agg_splits.columns.droplevel(0)
555
+ columns_to_drop = ['test', 'train', 'validation']
556
+ df_agg_splits.drop(columns = columns_to_drop, inplace = True)
557
+
558
+ # move rows corresponding to specific metrics into specific columns
559
+ df_agg_splits = df_agg_splits.unstack(level ='metric')
560
+ df_agg_splits.columns = df_agg_splits.columns.droplevel(0)
561
+
562
+ return(df_agg_splits)
563
+
564
+
565
+
566
+ def extract_stats_all_splits(df_multiindex_all_splits, metrics):
567
+
568
+ df_all_splits = df_multiindex_all_splits.loc[(slice(None), metrics), :]
569
+
570
+ df_all_splits = df_all_splits.unstack(level ='metric')
571
+ df_all_splits.columns = df_all_splits.columns.droplevel(0)
572
+
573
+ #print(df_all_splits)
574
+ df_all_splits = df_all_splits.droplevel('split', axis=0)
575
+
576
+ return(df_all_splits)
577
+
578
+ def extract_stats_for_dataset_card(df_multindex_per_split, subset, metrics, add_total=False):
579
+
580
+ print(df_multindex_per_split)
581
+ df_metrics_subset = df_multindex_per_split
582
+
583
+ df_metrics_subset = df_metrics_subset.unstack(level ='split')
584
+ df_metrics_subset.columns = df_metrics_subset.columns.droplevel(0)
585
+
586
+ df_metrics_subset = df_metrics_subset.loc[(slice(None), metrics), :]
587
+
588
+ df_metrics_subset = df_metrics_subset.query("dataset == '{}'".format(subset))
589
+ # change order of columns to train validation test
590
+ df_metrics_subset.reset_index(inplace=True)
591
+ if (add_total):
592
+ new_columns = ['metric', 'train', 'validation', 'test', 'total']
593
+ total = df_metrics_subset[['train', 'validation','test']].sum(axis=1)
594
+ df_metrics_subset['total'] = total
595
+ else:
596
+ new_columns = ['metric', 'train', 'validation', 'test']
597
+
598
+ df_metrics_subset = df_metrics_subset.reindex(columns=new_columns)
599
+ df_metrics_subset.set_index('metric', inplace=True)
600
+
601
+ return(df_metrics_subset)