anonymous8 commited on
Commit
b6bde4a
1 Parent(s): 4f6b345
app.py CHANGED
@@ -188,18 +188,19 @@ if __name__ == "__main__":
188
  - The adversarial example and repaired adversarial example may be unnatural to read, while it is because the attackers usually generate unnatural perturbations. RPD does not introduce additional unnatural perturbations.
189
  - To our best knowledge, Reactive Perturbation Defocusing is a novel approach in adversarial defense. RPD significantly (>10% defense accuracy improvement) outperforms the state-of-the-art methods.
190
  - The DeepWordBug is an unknown attacker to the adversarial detector and reactive defense module. DeepWordBug has different attacking patterns from other attackers and shows the generalizability and robustness of RPD.
 
191
  """)
192
  gr.Markdown("<h2 align='center'>Natural Example Input</h2>")
193
  with gr.Group():
194
  with gr.Row():
195
  input_dataset = gr.Radio(
196
  choices=["SST2", "AGNews10K", "Amazon"],
197
- value="Amazon",
198
  label="Select a testing dataset and an adversarial attacker to generate an adversarial example.",
199
  )
200
  input_attacker = gr.Radio(
201
  choices=["BAE", "PWWS", "TextFooler", "DeepWordBug"],
202
- value="TextFooler",
203
  label="Choose an Adversarial Attacker for generating an adversarial example to attack the model.",
204
  )
205
  with gr.Group():
@@ -213,7 +214,7 @@ if __name__ == "__main__":
213
  )
214
 
215
  button_gen = gr.Button(
216
- "Generate an adversarial example to repair using RPD (it will takes 1-10 minutes because no GPU is available)",
217
  variant="primary",
218
  )
219
 
188
  - The adversarial example and repaired adversarial example may be unnatural to read, while it is because the attackers usually generate unnatural perturbations. RPD does not introduce additional unnatural perturbations.
189
  - To our best knowledge, Reactive Perturbation Defocusing is a novel approach in adversarial defense. RPD significantly (>10% defense accuracy improvement) outperforms the state-of-the-art methods.
190
  - The DeepWordBug is an unknown attacker to the adversarial detector and reactive defense module. DeepWordBug has different attacking patterns from other attackers and shows the generalizability and robustness of RPD.
191
+ - To help the review & evaluation of ACL2023, we will host this demo on a GPU device to speed up the inference process in the next month. Then it will be deployed on a CPU device in the future.
192
  """)
193
  gr.Markdown("<h2 align='center'>Natural Example Input</h2>")
194
  with gr.Group():
195
  with gr.Row():
196
  input_dataset = gr.Radio(
197
  choices=["SST2", "AGNews10K", "Amazon"],
198
+ value="SST2",
199
  label="Select a testing dataset and an adversarial attacker to generate an adversarial example.",
200
  )
201
  input_attacker = gr.Radio(
202
  choices=["BAE", "PWWS", "TextFooler", "DeepWordBug"],
203
+ value="PWWS",
204
  label="Choose an Adversarial Attacker for generating an adversarial example to attack the model.",
205
  )
206
  with gr.Group():
214
  )
215
 
216
  button_gen = gr.Button(
217
+ "Generate an adversarial example to repair using RPD (GPU: < 1 minute, CPU: 1-10 minutes)",
218
  variant="primary",
219
  )
220
 
textattack/constraints/semantics/sentence_encoders/universal_sentence_encoder/multilingual_universal_sentence_encoder.py CHANGED
@@ -20,14 +20,19 @@ class MultilingualUniversalSentenceEncoder(SentenceEncoder):
20
  tensorflow_text._load()
21
  if large:
22
  tfhub_url = "https://tfhub.dev/google/universal-sentence-encoder-multilingual-large/3"
 
23
  else:
24
- tfhub_url = (
25
- "https://tfhub.dev/google/universal-sentence-encoder-multilingual/3"
26
- )
27
 
28
- # TODO add QA SET. Details at: https://tfhub.dev/google/universal-sentence-encoder-multilingual-qa/3
29
  self._tfhub_url = tfhub_url
30
- self.model = hub.load(tfhub_url)
 
 
 
 
 
31
 
32
  def encode(self, sentences):
33
  return self.model(sentences).numpy()
@@ -39,4 +44,8 @@ class MultilingualUniversalSentenceEncoder(SentenceEncoder):
39
 
40
  def __setstate__(self, state):
41
  self.__dict__ = state
42
- self.model = hub.load(self._tfhub_url)
 
 
 
 
20
  tensorflow_text._load()
21
  if large:
22
  tfhub_url = "https://tfhub.dev/google/universal-sentence-encoder-multilingual-large/3"
23
+ mirror_tfhub_url = "https://hub.tensorflow.google.cn/google/universal-sentence-encoder-multilingual-large/3"
24
  else:
25
+ tfhub_url = "https://https://tfhub.dev/google/universal-sentence-encoder-multilingual/3"
26
+ mirror_tfhub_url = "https://hub.tensorflow.google.cn/google/universal-sentence-encoder-multilingual/3"
 
27
 
28
+ # TODO add QA SET. Details at: https://hub.tensorflow.google.cn/google/universal-sentence-encoder-multilingual-qa/3
29
  self._tfhub_url = tfhub_url
30
+ self.mirror_tfhub_url = mirror_tfhub_url
31
+ try:
32
+ self.model = hub.load(self._tfhub_url)
33
+ except Exception as e:
34
+ print('Error loading model from tfhub, trying mirror url')
35
+ self.model = hub.load(self.mirror_tfhub_url)
36
 
37
  def encode(self, sentences):
38
  return self.model(sentences).numpy()
44
 
45
  def __setstate__(self, state):
46
  self.__dict__ = state
47
+ try:
48
+ self.model = hub.load(self._tfhub_url)
49
+ except Exception as e:
50
+ print('Error loading model from tfhub, trying mirror url')
51
+ self.model = hub.load(self.mirror_tfhub_url)
textattack/constraints/semantics/sentence_encoders/universal_sentence_encoder/universal_sentence_encoder.py CHANGED
@@ -18,22 +18,26 @@ class UniversalSentenceEncoder(SentenceEncoder):
18
  super().__init__(threshold=threshold, metric=metric, **kwargs)
19
  if large:
20
  tfhub_url = "https://tfhub.dev/google/universal-sentence-encoder-large/5"
 
21
  else:
22
- tfhub_url = "https://tfhub.dev/google/universal-sentence-encoder/3"
 
 
 
23
 
24
  self._tfhub_url = tfhub_url
 
25
  # Lazily load the model
26
  self.model = None
27
 
28
  def encode(self, sentences):
29
  if not self.model:
30
- self.model = hub.load(self._tfhub_url)
31
- encoding = self.model(sentences)
32
-
33
- if isinstance(encoding, dict):
34
- encoding = encoding["outputs"]
35
-
36
- return encoding.numpy()
37
 
38
  def __getstate__(self):
39
  state = self.__dict__.copy()
@@ -42,4 +46,8 @@ class UniversalSentenceEncoder(SentenceEncoder):
42
 
43
  def __setstate__(self, state):
44
  self.__dict__ = state
45
- self.model = None
 
 
 
 
18
  super().__init__(threshold=threshold, metric=metric, **kwargs)
19
  if large:
20
  tfhub_url = "https://tfhub.dev/google/universal-sentence-encoder-large/5"
21
+ mirror_tfhub_url = "https://hub.tensorflow.google.cn/google/universal-sentence-encoder-large/5"
22
  else:
23
+ tfhub_url = "https://tfhub.dev/google/universal-sentence-encoder/4"
24
+ mirror_tfhub_url = (
25
+ "https://hub.tensorflow.google.cn/google/universal-sentence-encoder/4"
26
+ )
27
 
28
  self._tfhub_url = tfhub_url
29
+ self.mirror_tfhub_url = mirror_tfhub_url
30
  # Lazily load the model
31
  self.model = None
32
 
33
  def encode(self, sentences):
34
  if not self.model:
35
+ try:
36
+ self.model = hub.load(self._tfhub_url)
37
+ except Exception as e:
38
+ print('Error loading model from tfhub, trying mirror url')
39
+ self.model = hub.load(self.mirror_tfhub_url)
40
+ return self.model(sentences).numpy()
 
41
 
42
  def __getstate__(self):
43
  state = self.__dict__.copy()
46
 
47
  def __setstate__(self, state):
48
  self.__dict__ = state
49
+ try:
50
+ self.model = hub.load(self._tfhub_url)
51
+ except Exception as e:
52
+ print('Error loading model from tfhub, trying mirror url')
53
+ self.model = hub.load(self.mirror_tfhub_url)
utils.py CHANGED
@@ -99,7 +99,7 @@ def get_sst2_example():
99
  label = int(label.strip())
100
  data.append((text, label))
101
  label_set.add(label)
102
- return data[random.randint(0, len(data))]
103
 
104
 
105
  def get_agnews_example():
@@ -142,7 +142,7 @@ def get_agnews_example():
142
  label = int(label.strip())
143
  data.append((text, label))
144
  label_set.add(label)
145
- return data[random.randint(0, len(data))]
146
 
147
 
148
  def get_amazon_example():
@@ -186,7 +186,7 @@ def get_amazon_example():
186
  label = int(label.strip())
187
  data.append((text, label))
188
  label_set.add(label)
189
- return data[random.randint(0, len(data))]
190
 
191
 
192
  def get_imdb_example():
@@ -230,5 +230,5 @@ def get_imdb_example():
230
  label = int(label.strip())
231
  data.append((text, label))
232
  label_set.add(label)
233
- return data[random.randint(0, len(data))]
234
 
99
  label = int(label.strip())
100
  data.append((text, label))
101
  label_set.add(label)
102
+ return random.choice(data)
103
 
104
 
105
  def get_agnews_example():
142
  label = int(label.strip())
143
  data.append((text, label))
144
  label_set.add(label)
145
+ return random.choice(data)
146
 
147
 
148
  def get_amazon_example():
186
  label = int(label.strip())
187
  data.append((text, label))
188
  label_set.add(label)
189
+ return random.choice(data)
190
 
191
 
192
  def get_imdb_example():
230
  label = int(label.strip())
231
  data.append((text, label))
232
  label_set.add(label)
233
+ return random.choice(data)
234