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71058a8
1 Parent(s): 72cd75e

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  1. .gitattributes +1 -0
  2. app.py +107 -22
  3. wiki_pages-2023-08-08.csv +3 -0
.gitattributes CHANGED
@@ -35,3 +35,4 @@ saved_model/**/* filter=lfs diff=lfs merge=lfs -text
35
  *tfevents* filter=lfs diff=lfs merge=lfs -text
36
  artist_data.hdf5 filter=lfs diff=lfs merge=lfs -text
37
  complete_artist_data.hdf5 filter=lfs diff=lfs merge=lfs -text
 
 
35
  *tfevents* filter=lfs diff=lfs merge=lfs -text
36
  artist_data.hdf5 filter=lfs diff=lfs merge=lfs -text
37
  complete_artist_data.hdf5 filter=lfs diff=lfs merge=lfs -text
38
+ wiki_pages-2023-08-08.csv filter=lfs diff=lfs merge=lfs -text
app.py CHANGED
@@ -22,10 +22,14 @@ faq_content="""
22
 
23
  ## What is the purpose of this tool?
24
 
25
- When you enter a txt2img prompt and press the "submit" button, the Tagset Completer parses your prompt and checks that all your tags are valid e621 tags.
26
- If it finds any that are not, it recommends some valid e621 tags you can use to replace them in the "Unseen Tags" table.
27
- Additionally, in the "Top Artists" text box, it lists the artists who would most likely draw an image having the set of tags you provided,
28
- in case you want to look them up to get more ideas. This is useful to align your prompt with the expected input to an e621-trained model.
 
 
 
 
29
 
30
  ## Does input order matter?
31
 
@@ -33,7 +37,7 @@ No
33
 
34
  ## Should I use underscores or spaces in the input tags?
35
 
36
- Spaces are preferred, but it will still work if you use underscores. The Unseen Tags table will just complain at you.
37
 
38
  ## Can I use parentheses or weights as in the Stable Diffusion Automatic1111 WebUI?
39
 
@@ -46,6 +50,10 @@ An example that illustrates acceptable parentheses and weight formatting is:
46
  Some data is excluded from consideration if it did not occur frequently enough in the sample from which the application makes its calculations.
47
  If an artist or tag is too infrequent, we might not think we have enough data to make predictions about it.
48
 
 
 
 
 
49
  ## Are there any special tags?
50
 
51
  Yes. We normalized the favorite counts of each image to a range of 0-9, with 0 being the lowest favcount, and 9 being the highest.
@@ -188,6 +196,63 @@ def build_aliases_dict(filename, reverse=False):
188
  else:
189
  aliases_dict[tag] = alias_list
190
  return aliases_dict
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
191
 
192
 
193
  #Imagine we are adding smoothing_value to the number of times word_j occurs in each document for smoothing.
@@ -234,9 +299,32 @@ def geometric_mean_given_words(target_word, context_words, co_occurrence_matrix,
234
 
235
  return geometric_mean
236
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
237
 
238
- def find_similar_tags(test_tags, similarity_weight, allow_nsfw_tags):
239
 
 
240
  #Initialize stuff
241
  if not hasattr(find_similar_tags, "fasttext_small_model"):
242
  find_similar_tags.fasttext_small_model = compress_fasttext.models.CompressedFastTextKeyedVectors.load('e621FastTextModel010Replacement_small.bin')
@@ -245,11 +333,15 @@ def find_similar_tags(test_tags, similarity_weight, allow_nsfw_tags):
245
  find_similar_tags.tag2aliases = build_aliases_dict(tag_aliases_file)
246
  if not hasattr(find_similar_tags, "alias2tags"):
247
  find_similar_tags.alias2tags = build_aliases_dict(tag_aliases_file, reverse=True)
 
 
 
 
248
 
249
  transformed_tags = [tag.replace(' ', '_') for tag in test_tags]
250
 
251
- # Find similar tags and prepare data for dataframe.
252
- results_data = []
253
  for tag in test_tags:
254
  if tag in special_tags:
255
  continue
@@ -287,22 +379,15 @@ def find_similar_tags(test_tags, similarity_weight, allow_nsfw_tags):
287
  geometric_mean = geometric_mean_given_words(word.replace(' ','_'), [context_tag for context_tag in transformed_tags if context_tag != word and context_tag != tag], conditional_co_occurrence_matrix, conditional_vocabulary, conditional_doc_count, smoothing_value=conditional_smoothing)
288
  adjusted_score = (similarity_weight * geometric_mean) + ((1-similarity_weight)*score) # Apply the adjustment function
289
  result[i] = (word, adjusted_score) # Update the tuple with the adjusted score
 
290
 
291
- # Append tag and formatted similar tags to results_data
292
  result = sorted(result, key=lambda x: x[1], reverse=True)[:10]
293
- first_entry_for_tag = True
294
- for word, sim in result:
295
- if first_entry_for_tag:
296
- results_data.append([tag, word, sim])
297
- first_entry_for_tag = False
298
- else:
299
- results_data.append(["", word, sim])
300
- results_data.append(["", "", ""]) # Adds a blank line after each group of tags
301
-
302
- if not results_data:
303
- results_data.append(["No Unknown Tags Found", "", ""])
304
 
305
- return results_data # Return list of lists for Dataframe
306
 
307
  def find_similar_artists(new_tags_string, top_n, similarity_weight, allow_nsfw_tags):
308
  try:
@@ -341,7 +426,7 @@ iface = gr.Interface(
341
  gr.Checkbox(label="Allow NSFW Tags", value=False)
342
  ],
343
  outputs=[
344
- gr.Dataframe(label="Unseen Tags", headers=["Tag", "Similar Tags", "Similarity"]),
345
  gr.Textbox(label="Top Artists", info="These are the artists most strongly associated with your tags. The number in parenthes is a similarity score between 0 and 1, with higher numbers indicating greater similarity."),
346
  gr.Textbox(label="Dynamic Prompts Format", info="For if you're using the Automatic1111 webui (https://github.com/AUTOMATIC1111/stable-diffusion-webui) with the Dynamic Prompts extension activated (https://github.com/adieyal/sd-dynamic-prompts) and want to try them all individually.")
347
  ],
 
22
 
23
  ## What is the purpose of this tool?
24
 
25
+ Since Stable Diffusion's initial release in 2022, users have developed a myriad of fine-tuned text to image models, each with unique "linguistic" preferences depending on the data from which it was fine-tuned.
26
+ Some models react best when prompted with verbose scene descriptions akin to DALL-E, while others fine-tuned on images scraped from popular image boards understand those boards' tag sets.
27
+ This tool serves as a linguistic bridge to the e621 image board tag lexicon, on which many popular models such as Fluffyrock, Fluffusion, and Pony Diffusion v6 were trained.
28
+
29
+ When you enter a txt2img prompt and press the "submit" button, the Tagset Completer parses your prompt and checks that all your tags are valid e621 tags.
30
+ If it finds any that are not, it recommends some valid e621 tags you can use to replace them in the "Unseen Tags" table.
31
+ Additionally, in the "Top Artists" text box, it lists the artists who would most likely draw an image having the set of tags you provided.
32
+ This is useful to align your prompt with the expected input to an e621-trained model.
33
 
34
  ## Does input order matter?
35
 
 
37
 
38
  ## Should I use underscores or spaces in the input tags?
39
 
40
+ As a rule, e621-trained models replace underscores in tags with spaces, so spaces are preferred.
41
 
42
  ## Can I use parentheses or weights as in the Stable Diffusion Automatic1111 WebUI?
43
 
 
50
  Some data is excluded from consideration if it did not occur frequently enough in the sample from which the application makes its calculations.
51
  If an artist or tag is too infrequent, we might not think we have enough data to make predictions about it.
52
 
53
+ ## Why do some suggested tags not have summaries or wiki links?
54
+
55
+ Both of these features are extracted from the tag wiki pages, but some valid e621 tags do not have wiki pages.
56
+
57
  ## Are there any special tags?
58
 
59
  Yes. We normalized the favorite counts of each image to a range of 0-9, with 0 being the lowest favcount, and 9 being the highest.
 
196
  else:
197
  aliases_dict[tag] = alias_list
198
  return aliases_dict
199
+
200
+
201
+ def build_tag_count_dict(filename):
202
+ with open(filename, 'r', newline='', encoding='utf-8') as csvfile:
203
+ reader = csv.reader(csvfile)
204
+ result_dict = {}
205
+ for row in reader:
206
+ key = row[0]
207
+ value = int(row[2]) if row[2].isdigit() else None
208
+ if value is not None:
209
+ result_dict[key] = value
210
+ return result_dict
211
+
212
+ import csv
213
+
214
+
215
+ def build_tag_id_wiki_dict(filename='wiki_pages-2023-08-08.csv'):
216
+ """
217
+ Reads a CSV file and returns a dictionary mapping tag names to tuples of
218
+ (number, most relevant line from the wiki entry). Rows with a non-integer in the first column are ignored.
219
+ The most relevant line is the first line that does not start with "thumb" and is not blank.
220
+
221
+ Parameters:
222
+ - filename: The path to the CSV file.
223
+
224
+ Returns:
225
+ - A dictionary where each key is a tag name and each value is a tuple (number, most relevant wiki entry line).
226
+ """
227
+ tag_data = {}
228
+ with open(filename, 'r', encoding='utf-8') as csvfile:
229
+ reader = csv.reader(csvfile)
230
+
231
+ # Skip the header row
232
+ next(reader)
233
+
234
+ for row in reader:
235
+ try:
236
+ # Attempt to convert the first column to an integer
237
+ number = int(row[0])
238
+ except ValueError:
239
+ # If conversion fails, skip this row
240
+ continue
241
+
242
+ tag = row[3]
243
+ wiki_entry_full = row[4]
244
+
245
+ # Process the wiki_entry to find the most relevant line
246
+ relevant_line = ''
247
+ for line in wiki_entry_full.split('\n'):
248
+ if line.strip() and not line.startswith("thumb"):
249
+ relevant_line = line
250
+ break
251
+
252
+ # Map the tag to a tuple of (number, relevant_line)
253
+ tag_data[tag] = (number, relevant_line)
254
+
255
+ return tag_data
256
 
257
 
258
  #Imagine we are adding smoothing_value to the number of times word_j occurs in each document for smoothing.
 
299
 
300
  return geometric_mean
301
 
302
+
303
+ def create_html_tables_for_tags(tag, result, tag2count, tag2idwiki):
304
+ # Wrap the tag part in a <span> with styles for bold and larger font
305
+ html_str = f"<div style='display: inline-block; margin: 20px; vertical-align: top;'><table><thead><tr><th colspan='3' style='text-align: center; padding-bottom: 10px;'>Unknown Tag: <span style='font-weight: bold; font-size: 20px;'>{tag}</span></th></tr></thead><tbody><tr style='border-bottom: 1px solid #000;'><th>Corrected Tag</th><th>Similarity</th><th>Count</th></tr>"
306
+ # Loop through the results and add table rows for each
307
+ for word, sim in result:
308
+ word_with_underscores = word.replace(' ', '_')
309
+ count = tag2count.get(word_with_underscores, 0) # Get the count if available, otherwise default to 0
310
+ tag_id, wiki_entry = tag2idwiki.get(word_with_underscores, (None, ''))
311
+ # Check if tag_id and wiki_entry are valid
312
+ if tag_id is not None and wiki_entry:
313
+ # Construct the URL for the tag's wiki page
314
+ wiki_url = f"https://e621.net/wiki_pages/{tag_id}"
315
+ # Make the tag a hyperlink with a tooltip
316
+ tag_element = f"<a href='{wiki_url}' target='_blank' title='{wiki_entry}'>{word}</a>"
317
+ else:
318
+ # Display the word without any hyperlink or tooltip
319
+ tag_element = word
320
+ # Include the tag element in the table row
321
+ html_str += f"<tr><td style='border: none; padding: 5px; height: 20px;'>{tag_element}</td><td style='border: none; padding: 5px; height: 20px;'>{round(sim, 3)}</td><td style='border: none; padding: 5px; height: 20px;'>{count}</td></tr>"
322
+
323
+ html_str += "</tbody></table></div>"
324
+ return html_str
325
 
 
326
 
327
+ def find_similar_tags(test_tags, similarity_weight, allow_nsfw_tags):
328
  #Initialize stuff
329
  if not hasattr(find_similar_tags, "fasttext_small_model"):
330
  find_similar_tags.fasttext_small_model = compress_fasttext.models.CompressedFastTextKeyedVectors.load('e621FastTextModel010Replacement_small.bin')
 
333
  find_similar_tags.tag2aliases = build_aliases_dict(tag_aliases_file)
334
  if not hasattr(find_similar_tags, "alias2tags"):
335
  find_similar_tags.alias2tags = build_aliases_dict(tag_aliases_file, reverse=True)
336
+ if not hasattr(find_similar_tags, "tag2count"):
337
+ find_similar_tags.tag2count = build_tag_count_dict(tag_aliases_file)
338
+ if not hasattr(find_similar_tags, "tag2idwiki"):
339
+ find_similar_tags.tag2idwiki = build_tag_id_wiki_dict()
340
 
341
  transformed_tags = [tag.replace(' ', '_') for tag in test_tags]
342
 
343
+ # Find similar tags and prepare data for tables
344
+ html_content = ""
345
  for tag in test_tags:
346
  if tag in special_tags:
347
  continue
 
379
  geometric_mean = geometric_mean_given_words(word.replace(' ','_'), [context_tag for context_tag in transformed_tags if context_tag != word and context_tag != tag], conditional_co_occurrence_matrix, conditional_vocabulary, conditional_doc_count, smoothing_value=conditional_smoothing)
380
  adjusted_score = (similarity_weight * geometric_mean) + ((1-similarity_weight)*score) # Apply the adjustment function
381
  result[i] = (word, adjusted_score) # Update the tuple with the adjusted score
382
+ #print(word, score, geometric_mean, adjusted_score)
383
 
 
384
  result = sorted(result, key=lambda x: x[1], reverse=True)[:10]
385
+ html_content += create_html_tables_for_tags(tag, result, find_similar_tags.tag2count, find_similar_tags.tag2idwiki)
386
+ # If no tags were processed, add a message
387
+ if not html_content:
388
+ html_content = "<p>No Unknown Tags Found</p>"
 
 
 
 
 
 
 
389
 
390
+ return html_content # Return list of lists for Dataframe
391
 
392
  def find_similar_artists(new_tags_string, top_n, similarity_weight, allow_nsfw_tags):
393
  try:
 
426
  gr.Checkbox(label="Allow NSFW Tags", value=False)
427
  ],
428
  outputs=[
429
+ gr.HTML(label="Unseen Tags"),
430
  gr.Textbox(label="Top Artists", info="These are the artists most strongly associated with your tags. The number in parenthes is a similarity score between 0 and 1, with higher numbers indicating greater similarity."),
431
  gr.Textbox(label="Dynamic Prompts Format", info="For if you're using the Automatic1111 webui (https://github.com/AUTOMATIC1111/stable-diffusion-webui) with the Dynamic Prompts extension activated (https://github.com/adieyal/sd-dynamic-prompts) and want to try them all individually.")
432
  ],
wiki_pages-2023-08-08.csv ADDED
@@ -0,0 +1,3 @@
 
 
 
 
1
+ version https://git-lfs.github.com/spec/v1
2
+ oid sha256:d453c0cc8ae09c548e554ceb77b1c1578c277eb2c5a6278a85f89c73566a7b27
3
+ size 30986436