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tag_string
stringlengths
1
162
tag_type
stringclasses
5 values
tag_count
int64
1
6.19M
__index_level_0__
int64
0
838k
1girl
general
6,188,951
3,326
highres
meta
5,478,078
254,814
solo
general
5,143,220
677,467
long_hair
general
4,491,418
400,168
breasts
general
3,549,785
91,600
looking_at_viewer
general
3,434,065
400,521
commentary_request
meta
3,383,741
126,646
blush
general
3,031,245
86,630
smile
general
2,973,314
674,034
open_mouth
general
2,450,674
538,739
short_hair
general
2,327,441
662,780
shirt
general
1,900,060
660,383
simple_background
general
1,895,297
668,396
absurdres
meta
1,873,024
12,787
blue_eyes
general
1,816,345
85,721
long_sleeves
general
1,631,596
400,236
large_breasts
general
1,630,170
384,964
skirt
general
1,604,460
671,675
blonde_hair
general
1,585,515
84,794
multiple_girls
general
1,580,528
480,086
white_background
general
1,561,874
785,786
black_hair
general
1,559,151
82,768
brown_hair
general
1,530,422
92,920
hair_ornament
general
1,467,344
233,385
1boy
general
1,460,460
3,278
commentary
meta
1,433,227
126,645
holding
general
1,418,617
264,740
gloves
general
1,400,402
217,598
dress
general
1,334,649
159,660
red_eyes
general
1,314,988
589,027
hat
general
1,242,179
244,706
closed_mouth
general
1,228,735
123,041
bow
general
1,214,003
90,310
animal_ears
general
1,211,770
40,755
hair_between_eyes
general
1,208,893
233,319
original
copyright
1,200,733
540,605
thighhighs
general
1,193,845
728,165
bad_id
meta
1,193,326
68,472
navel
general
1,185,594
499,198
ribbon
general
1,117,348
596,099
jewelry
general
1,104,581
303,870
2girls
general
1,054,766
4,623
cleavage
general
1,032,668
122,365
bare_shoulders
general
1,004,423
72,459
very_long_hair
general
985,930
772,926
jacket
general
979,422
299,006
sitting
general
970,184
670,595
bad_pixiv_id
meta
938,071
68,513
standing
general
933,790
686,794
twintails
general
929,548
752,917
touhou
copyright
912,418
742,032
medium_breasts
general
912,236
433,654
white_shirt
general
887,205
786,213
blue_hair
general
884,584
85,776
green_eyes
general
875,405
224,358
brown_eyes
general
865,873
92,903
nipples
general
852,440
512,685
full_body
general
841,157
201,190
purple_eyes
general
837,254
575,438
collarbone
general
812,842
125,484
school_uniform
general
811,382
635,019
tail
general
811,361
707,014
underwear
general
810,827
759,885
upper_body
general
803,495
761,771
male_focus
general
741,363
417,287
closed_eyes
general
733,860
123,038
white_hair
general
729,523
785,958
multicolored_hair
general
723,732
479,959
pink_hair
general
719,566
560,507
yellow_eyes
general
718,425
807,060
photoshop_(medium)
meta
706,664
558,173
grey_hair
general
706,095
225,195
swimsuit
general
675,310
702,177
ahoge
general
671,293
17,680
purple_hair
general
668,489
575,461
panties
general
660,823
549,651
braid
general
649,539
90,925
monochrome
general
648,107
470,678
short_sleeves
general
643,046
662,806
flower
general
642,236
192,332
sidelocks
general
637,861
666,091
ponytail
general
622,642
567,340
hair_ribbon
general
620,126
233,409
weapon
general
611,939
783,561
ass
general
607,439
58,500
heart
general
604,612
248,250
thighs
general
584,507
728,175
earrings
general
583,193
163,331
cowboy_shot
general
577,627
129,884
:d
general
567,301
9,977
translated
meta
562,394
744,186
hetero
general
560,119
252,463
translation_request
meta
558,072
744,189
outdoors
general
555,082
545,042
comic
general
553,274
126,251
hair_bow
general
548,929
233,327
pantyhose
general
546,070
549,774
sweat
general
541,484
701,699
red_hair
general
538,630
589,087
teeth
general
515,347
719,804

dataproc5/metrics-danbooru2025-alltime-tag-counts

Dataset Overview

tag_count provides aggregated tag usage statistics from the Danbooru2025 dataset. Each entry corresponds to a specific tag's usage count in all time.

import unibox as ub

df = ub.loads("hf://dataproc5/metrics-danbooru2025-monthly-tag-counts").to_pandas()
alltime_tag_counts = df.groupby(["tag_string", "tag_type"], as_index=False)["tag_count"].sum()
alltime_tag_counts = alltime_tag_counts.sort_values("tag_count", ascending=False)
ub.saves(alltime_tag_counts, "hf://dataproc5/metrics-danbooru2025-alltime-tag-counts", private=False)

Usage

Some example use cases of this metrics includes:

  • finding out the top-occuring character / artist tags for targeted finetunes
  • creating tag-balanced datasets
  • use as a weighted random tags generator

Columns

  • tag_string: The text of the tag (e.g., "landscape").

  • tag_count: The total occurrences of the tag in the entire Danbooru dataset

  • tag_type: The category of the tag:

    • "artist": Artist names.
    • "character": Character names.
    • "copyright": Copyrighted works or IPs.
    • "general": General descriptive tags.
    • "meta": Meta information tags.

Source Data

  • Derived from Danbooru2025 image metadata.
  • Tags are extracted from columns: tag_string_artist, tag_string_character, tag_string_copyright, tag_string_general, and tag_string_meta.

Visualization

Danbooru tag counts are highly unbalanced. using df["tag_count"].hist() barely gets anything. Here's a log-scaled vis for reference:

import matplotlib.pyplot as plt

# Plot histogram with log scale on the y-axis
plt.figure(figsize=(10, 6))
plt.hist(alltime_tag_counts["tag_count"], bins=100, log=True, edgecolor='black')
plt.title("Histogram of All-Time Tag Counts (Log Scale)")
plt.xlabel("Tag Count")
plt.ylabel("Log Frequency")
plt.grid(True)
plt.show()

image/png

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