Ricercar commited on
Commit
18949ce
1 Parent(s): 1b8a444

release ready

Browse files
Files changed (2) hide show
  1. app.py +8 -57
  2. ditail/src/ditail_demo.py +2 -2
app.py CHANGED
@@ -13,7 +13,6 @@ from ditail import DitailDemo, seed_everything
13
 
14
  BASE_MODEL = {
15
  'sd1.5': 'runwayml/stable-diffusion-v1-5',
16
- # 'sd1.5': './ditail/model/stable-diffusion-v1-5'
17
  'realistic vision': 'stablediffusionapi/realistic-vision-v51',
18
  'pastel mix (anime)': 'stablediffusionapi/pastel-mix-stylized-anime',
19
  # 'chaos (abstract)': 'MAPS-research/Chaos3.0',
@@ -27,7 +26,6 @@ LORA_TRIGGER_WORD = {
27
  'flat': ['sdh', 'flat illustration'],
28
  'minecraft': ['minecraft square style', 'cg, computer graphics'],
29
  'animeoutline': ['lineart', 'monochrome'],
30
- # 'caravaggio': ['oil painting', 'in the style of caravaggio'],
31
  'impressionism': ['impressionist', 'in the style of Monet'],
32
  'pop': ['POP ART'],
33
  'shinkai_makoto': ['shinkai makoto', 'kimi no na wa.', 'tenki no ko', 'kotonoha no niwa'],
@@ -62,6 +60,7 @@ class WebApp():
62
  self.args_input = {} # for gr.components only
63
  self.gr_loras = list(LORA_TRIGGER_WORD.keys())
64
 
 
65
  self.gtag = os.environ.get('GTag')
66
 
67
  self.ga_script = f"""
@@ -83,7 +82,6 @@ class WebApp():
83
  self.debug_mode = debug_mode # turn off clip interrogator when debugging for faster building speed
84
  if not self.debug_mode:
85
  self.init_interrogator()
86
-
87
 
88
 
89
  def init_interrogator(self):
@@ -135,18 +133,15 @@ class WebApp():
135
  self.args_input['img'] = gr.Image(label='content image', type='pil', show_share_button=False, elem_classes="input_image")
136
 
137
  def get_prompts(self):
138
- # with gr.Row():
139
  generate_prompt = gr.Checkbox(label='generate prompt with clip', value=True)
140
  self.args_input['pos_prompt'] = gr.Textbox(label='prompt')
141
-
142
-
143
  # event listeners
144
  self.args_input['img'].upload(self._interrogate_image, inputs=[self.args_input['img'], generate_prompt], outputs=[self.args_input['pos_prompt']])
145
  generate_prompt.change(self._interrogate_image, inputs=[self.args_input['img'], generate_prompt], outputs=[self.args_input['pos_prompt']])
146
 
147
 
148
  def _interrogate_image(self, image, generate_prompt):
149
- # self.init_interrogator()
150
  if hasattr(self, 'ci') and generate_prompt:
151
  return self.ci.interrogate_fast(image).split(',')[0].replace('arafed', '')
152
  else:
@@ -169,7 +164,6 @@ class WebApp():
169
  with gr.Column():
170
  self.args_input['inv_model'] = gr.Radio(choices=list(BASE_MODEL.keys()), value=list(BASE_MODEL.keys())[1], label='inversion base model')
171
  self.args_input['neg_prompt'] = gr.Textbox(label='negative prompt', value=self.args_base['neg_prompt'])
172
- # with gr.Row():
173
  self.args_input['alpha'] = gr.Number(label='positive prompt scaling weight (alpha)', value=self.args_base['alpha'], interactive=True)
174
  self.args_input['beta'] = gr.Number(label='negative prompt scaling weight (beta)', value=self.args_base['beta'], interactive=True)
175
 
@@ -185,40 +179,6 @@ class WebApp():
185
  self.args_input['seed'] = gr.Number(label='seed', value=self.args_base['seed'], interactive=True, precision=0, step=1)
186
 
187
  def run_ditail(self, *values):
188
- try:
189
- self.args = self.args_base.copy()
190
- print(self.args_input.keys())
191
- for k, v in zip(list(self.args_input.keys()), values):
192
- self.args[k] = v
193
- # quick fix for example
194
- self.args['lora'] = 'none' if not isinstance(self.args['lora'], str) else self.args['lora']
195
- print('selected lora: ', self.args['lora'])
196
- # map inversion model to url
197
- self.args['pos_prompt'] = ', '.join(LORA_TRIGGER_WORD.get(self.args['lora'], [])+[self.args['pos_prompt']])
198
- self.args['inv_model'] = BASE_MODEL[self.args['inv_model']]
199
- self.args['spl_model'] = BASE_MODEL[self.args['spl_model']]
200
- print('selected model: ', self.args['inv_model'], self.args['spl_model'])
201
-
202
- seed_everything(self.args['seed'])
203
- ditail = DitailDemo(self.args)
204
-
205
- metadata_to_show = ['inv_model', 'spl_model', 'lora', 'lora_scale', 'inv_steps', 'spl_steps', 'pos_prompt', 'alpha', 'neg_prompt', 'beta', 'omega']
206
- self.args_to_show = {}
207
- for key in metadata_to_show:
208
- self.args_to_show[key] = self.args[key]
209
-
210
- img = ditail.run_ditail()
211
-
212
- # reset ditail
213
- ditail = None
214
-
215
- return img, self.args_to_show
216
- # return self.args['img'], self.args
217
- except Exception as e:
218
- print(f"Error catched: {e}")
219
- gr.Markdown(f"**Error catched: {e}**")
220
-
221
- def run_ditail_alt(self, *values):
222
  gr_args = self.args_base.copy()
223
  print(self.args_input.keys())
224
  for k, v in zip(list(self.args_input.keys()), values):
@@ -242,26 +202,19 @@ class WebApp():
242
 
243
  img = ditail.run_ditail()
244
 
245
- # reset ditail
246
  ditail = None
247
 
248
  return img, args_to_show
249
 
250
  def run_example(self, img, prompt, inv_model, spl_model, lora):
251
- return self.run_ditail_alt(img, prompt, spl_model, gr.State(lora), inv_model)
252
 
253
  def show_credits(self):
254
- # gr.Markdown(
255
- # """
256
- # ### About Diffusion Cocktail (Ditail)
257
- # * This is a research project by [MAPS Lab](https://whongyi.github.io/MAPS-research), [NYU Shanghai](https://shanghai.nyu.edu)
258
- # * Authors: Haoming Liu (haoming.liu@nyu.edu), Yuanhe Guo (yuanhe.guo@nyu.edu), Hongyi Wen (hongyi.wen@nyu.edu)
259
- # """
260
- # )
261
  gr.Markdown(
262
  """
263
  ### Model Credits
264
- * Diffusion Models are downloaded from [huggingface](https://huggingface.co) and [civitai](https://civitai.com): [stable diffusion 1.5](https://huggingface.co/runwayml/stable-diffusion-v1-5), [realistic vision](https://huggingface.co/stablediffusionapi/realistic-vision-v51), [pastel mix](https://huggingface.co/stablediffusionapi/pastel-mix-stylized-anime), [chaos3.0](https://civitai.com/models/91534/chaos30)
265
  * LoRA Models are downloaded from [civitai](https://civitai.com) and [liblib](https://www.liblib.art): [film](https://civitai.com/models/90393/japan-vibes-film-color), [snow](https://www.liblib.art/modelinfo/f732b23b02f041bdb7f8f3f8a256ca8b), [flat](https://www.liblib.art/modelinfo/76dcb8b59d814960b0244849f2747a15), [minecraft](https://civitai.com/models/113741/minecraft-square-style), [animeoutline](https://civitai.com/models/16014/anime-lineart-manga-like-style), [impressionism](https://civitai.com/models/113383/y5-impressionism-style), [pop](https://civitai.com/models/161450?modelVersionId=188417), [shinkai_makoto](https://civitai.com/models/10626?modelVersionId=12610)
266
  """
267
  )
@@ -272,7 +225,6 @@ class WebApp():
272
 
273
  self.title()
274
  with gr.Row():
275
- # with gr.Column():
276
  self.get_image()
277
 
278
  with gr.Column():
@@ -286,10 +238,10 @@ class WebApp():
286
 
287
  with gr.Row():
288
  output_image = gr.Image(label="output image")
289
- # expected_output_image = gr.Image(label="expected output image", visible=False)
290
- metadata = gr.JSON(label='metadata')
291
 
292
- submit_btn.click(self.run_ditail_alt,
293
  inputs=list(self.args_input.values()),
294
  outputs=[output_image, metadata],
295
  scroll_to_output=True,
@@ -318,6 +270,5 @@ demo = app.ui()
318
 
319
  if __name__ == "__main__":
320
  demo.launch(share=True)
321
- # demo.launch()
322
 
323
 
 
13
 
14
  BASE_MODEL = {
15
  'sd1.5': 'runwayml/stable-diffusion-v1-5',
 
16
  'realistic vision': 'stablediffusionapi/realistic-vision-v51',
17
  'pastel mix (anime)': 'stablediffusionapi/pastel-mix-stylized-anime',
18
  # 'chaos (abstract)': 'MAPS-research/Chaos3.0',
 
26
  'flat': ['sdh', 'flat illustration'],
27
  'minecraft': ['minecraft square style', 'cg, computer graphics'],
28
  'animeoutline': ['lineart', 'monochrome'],
 
29
  'impressionism': ['impressionist', 'in the style of Monet'],
30
  'pop': ['POP ART'],
31
  'shinkai_makoto': ['shinkai makoto', 'kimi no na wa.', 'tenki no ko', 'kotonoha no niwa'],
 
60
  self.args_input = {} # for gr.components only
61
  self.gr_loras = list(LORA_TRIGGER_WORD.keys())
62
 
63
+ # fun fact: google analytics doesn't work in this space currently
64
  self.gtag = os.environ.get('GTag')
65
 
66
  self.ga_script = f"""
 
82
  self.debug_mode = debug_mode # turn off clip interrogator when debugging for faster building speed
83
  if not self.debug_mode:
84
  self.init_interrogator()
 
85
 
86
 
87
  def init_interrogator(self):
 
133
  self.args_input['img'] = gr.Image(label='content image', type='pil', show_share_button=False, elem_classes="input_image")
134
 
135
  def get_prompts(self):
 
136
  generate_prompt = gr.Checkbox(label='generate prompt with clip', value=True)
137
  self.args_input['pos_prompt'] = gr.Textbox(label='prompt')
138
+
 
139
  # event listeners
140
  self.args_input['img'].upload(self._interrogate_image, inputs=[self.args_input['img'], generate_prompt], outputs=[self.args_input['pos_prompt']])
141
  generate_prompt.change(self._interrogate_image, inputs=[self.args_input['img'], generate_prompt], outputs=[self.args_input['pos_prompt']])
142
 
143
 
144
  def _interrogate_image(self, image, generate_prompt):
 
145
  if hasattr(self, 'ci') and generate_prompt:
146
  return self.ci.interrogate_fast(image).split(',')[0].replace('arafed', '')
147
  else:
 
164
  with gr.Column():
165
  self.args_input['inv_model'] = gr.Radio(choices=list(BASE_MODEL.keys()), value=list(BASE_MODEL.keys())[1], label='inversion base model')
166
  self.args_input['neg_prompt'] = gr.Textbox(label='negative prompt', value=self.args_base['neg_prompt'])
 
167
  self.args_input['alpha'] = gr.Number(label='positive prompt scaling weight (alpha)', value=self.args_base['alpha'], interactive=True)
168
  self.args_input['beta'] = gr.Number(label='negative prompt scaling weight (beta)', value=self.args_base['beta'], interactive=True)
169
 
 
179
  self.args_input['seed'] = gr.Number(label='seed', value=self.args_base['seed'], interactive=True, precision=0, step=1)
180
 
181
  def run_ditail(self, *values):
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
182
  gr_args = self.args_base.copy()
183
  print(self.args_input.keys())
184
  for k, v in zip(list(self.args_input.keys()), values):
 
202
 
203
  img = ditail.run_ditail()
204
 
205
+ # reset ditail to free memory usage
206
  ditail = None
207
 
208
  return img, args_to_show
209
 
210
  def run_example(self, img, prompt, inv_model, spl_model, lora):
211
+ return self.run_ditail(img, prompt, spl_model, gr.State(lora), inv_model)
212
 
213
  def show_credits(self):
 
 
 
 
 
 
 
214
  gr.Markdown(
215
  """
216
  ### Model Credits
217
+ * Diffusion Models are downloaded from [huggingface](https://huggingface.co): [stable diffusion 1.5](https://huggingface.co/runwayml/stable-diffusion-v1-5), [realistic vision](https://huggingface.co/stablediffusionapi/realistic-vision-v51), [pastel mix](https://huggingface.co/stablediffusionapi/pastel-mix-stylized-anime)
218
  * LoRA Models are downloaded from [civitai](https://civitai.com) and [liblib](https://www.liblib.art): [film](https://civitai.com/models/90393/japan-vibes-film-color), [snow](https://www.liblib.art/modelinfo/f732b23b02f041bdb7f8f3f8a256ca8b), [flat](https://www.liblib.art/modelinfo/76dcb8b59d814960b0244849f2747a15), [minecraft](https://civitai.com/models/113741/minecraft-square-style), [animeoutline](https://civitai.com/models/16014/anime-lineart-manga-like-style), [impressionism](https://civitai.com/models/113383/y5-impressionism-style), [pop](https://civitai.com/models/161450?modelVersionId=188417), [shinkai_makoto](https://civitai.com/models/10626?modelVersionId=12610)
219
  """
220
  )
 
225
 
226
  self.title()
227
  with gr.Row():
 
228
  self.get_image()
229
 
230
  with gr.Column():
 
238
 
239
  with gr.Row():
240
  output_image = gr.Image(label="output image")
241
+ with gr.Column():
242
+ metadata = gr.JSON(label='metadata')
243
 
244
+ submit_btn.click(self.run_ditail,
245
  inputs=list(self.args_input.values()),
246
  outputs=[output_image, metadata],
247
  scroll_to_output=True,
 
270
 
271
  if __name__ == "__main__":
272
  demo.launch(share=True)
 
273
 
274
 
ditail/src/ditail_demo.py CHANGED
@@ -57,8 +57,8 @@ class DitailDemo(nn.Module):
57
  self.spl_model, torch_dtype=torch.float16
58
  ).to(self.device)
59
  if self.lora != 'none':
60
- pipe.unfuse_lora()
61
- pipe.unload_lora_weights()
62
  pipe.load_lora_weights(self.lora_dir, weight_name=f'{self.lora}.safetensors')
63
  pipe.fuse_lora(lora_scale=self.lora_scale)
64
  pipe.enable_xformers_memory_efficient_attention()
 
57
  self.spl_model, torch_dtype=torch.float16
58
  ).to(self.device)
59
  if self.lora != 'none':
60
+ # pipe.unfuse_lora()
61
+ # pipe.unload_lora_weights()
62
  pipe.load_lora_weights(self.lora_dir, weight_name=f'{self.lora}.safetensors')
63
  pipe.fuse_lora(lora_scale=self.lora_scale)
64
  pipe.enable_xformers_memory_efficient_attention()