Spaces:
Runtime error
Runtime error
saving to dataset
Browse files
app.py
CHANGED
@@ -205,7 +205,7 @@ def flag(input_image,correct_result):
|
|
205 |
def main():
|
206 |
TITLE = "# MNIST Adversarial: Try to fool this MNIST model"
|
207 |
description = """This project is about dynamic adversarial data collection (DADC).
|
208 |
-
The basic idea is to
|
209 |
This kind of data is presumably the most valuable for a model, so this can be helpful in low-resource settings where data is hard to collect and label.
|
210 |
|
211 |
### What to do:
|
@@ -216,9 +216,9 @@ def main():
|
|
216 |
"""
|
217 |
|
218 |
MODEL_IS_WRONG = """
|
219 |
-
|
220 |
-
|
221 |
-
When you flag it, the instance is saved to our dataset and the model is trained on it.
|
222 |
"""
|
223 |
#block = gr.Blocks(css=BLOCK_CSS)
|
224 |
block = gr.Blocks()
|
|
|
205 |
def main():
|
206 |
TITLE = "# MNIST Adversarial: Try to fool this MNIST model"
|
207 |
description = """This project is about dynamic adversarial data collection (DADC).
|
208 |
+
The basic idea is to collect “adversarial data” - the kind of data that is difficult for a model to predict correctly.
|
209 |
This kind of data is presumably the most valuable for a model, so this can be helpful in low-resource settings where data is hard to collect and label.
|
210 |
|
211 |
### What to do:
|
|
|
216 |
"""
|
217 |
|
218 |
MODEL_IS_WRONG = """
|
219 |
+
---
|
220 |
+
|
221 |
+
> Did the model get it wrong? Choose the correct prediction below and flag it. When you flag it, the instance is saved to our dataset and the model is trained on it.
|
222 |
"""
|
223 |
#block = gr.Blocks(css=BLOCK_CSS)
|
224 |
block = gr.Blocks()
|