gradio/test/test_interpretation.py
Abubakar Abid ef8b97223d
Fixing import issues so that the package successfully installs on colab notebooks (#1027)
* updated PyPi version to 2.9.0b

* added to init

* moved media_data

* formatting

* updated PyPi version to 2.9.0b2
2022-04-19 11:27:32 -07:00

137 lines
5.0 KiB
Python

import os
import unittest
from copy import deepcopy
import numpy as np
import gradio.interpretation
from gradio import Interface, media_data
from gradio.processing_utils import decode_base64_to_image
os.environ["GRADIO_ANALYTICS_ENABLED"] = "False"
class TestDefault(unittest.TestCase):
def test_default_text(self):
max_word_len = lambda text: max([len(word) for word in text.split(" ")])
text_interface = Interface(
max_word_len, "textbox", "label", interpretation="default"
)
interpretation = text_interface.interpret(["quickest brown fox"])[0][
"interpretation"
]
self.assertGreater(
interpretation[0][1], 0
) # Checks to see if the first word has >0 score.
self.assertEqual(
interpretation[-1][1], 0
) # Checks to see if the last word has 0 score.
class TestShapley(unittest.TestCase):
def test_shapley_text(self):
max_word_len = lambda text: max([len(word) for word in text.split(" ")])
text_interface = Interface(
max_word_len, "textbox", "label", interpretation="shapley"
)
interpretation = text_interface.interpret(["quickest brown fox"])[0][
"interpretation"
][0]
self.assertGreater(
interpretation[1], 0
) # Checks to see if the first word has >0 score.
class TestCustom(unittest.TestCase):
def test_custom_text(self):
max_word_len = lambda text: max([len(word) for word in text.split(" ")])
custom = lambda text: [(char, 1) for char in text]
text_interface = Interface(
max_word_len, "textbox", "label", interpretation=custom
)
result = text_interface.interpret(["quickest brown fox"])[0]["interpretation"][
0
]
self.assertEqual(
result[1], 1
) # Checks to see if the first letter has score of 1.
def test_custom_img(self):
max_pixel_value = lambda img: img.max()
custom = lambda img: img.tolist()
img_interface = Interface(
max_pixel_value, "image", "label", interpretation=custom
)
result = img_interface.interpret([deepcopy(media_data.BASE64_IMAGE)])[0][
"interpretation"
]
expected_result = np.asarray(
decode_base64_to_image(deepcopy(media_data.BASE64_IMAGE)).convert("RGB")
).tolist()
self.assertEqual(result, expected_result)
class TestHelperMethods(unittest.TestCase):
def test_diff(self):
diff = gradio.interpretation.diff(13, "2")
self.assertEquals(diff, 11)
diff = gradio.interpretation.diff("cat", "dog")
self.assertEquals(diff, 1)
diff = gradio.interpretation.diff("cat", "cat")
self.assertEquals(diff, 0)
def test_quantify_difference_with_number(self):
iface = Interface(lambda text: text, ["textbox"], ["number"])
diff = gradio.interpretation.quantify_difference_in_label(iface, [4], [6])
self.assertEquals(diff, -2)
def test_quantify_difference_with_label(self):
iface = Interface(lambda text: len(text), ["textbox"], ["label"])
diff = gradio.interpretation.quantify_difference_in_label(iface, ["3"], ["10"])
self.assertEquals(diff, -7)
diff = gradio.interpretation.quantify_difference_in_label(iface, ["0"], ["100"])
self.assertEquals(diff, -100)
def test_quantify_difference_with_confidences(self):
iface = Interface(lambda text: len(text), ["textbox"], ["label"])
output_1 = {"cat": 0.9, "dog": 0.1}
output_2 = {"cat": 0.6, "dog": 0.4}
output_3 = {"cat": 0.1, "dog": 0.6}
diff = gradio.interpretation.quantify_difference_in_label(
iface, [output_1], [output_2]
)
self.assertAlmostEquals(diff, 0.3)
diff = gradio.interpretation.quantify_difference_in_label(
iface, [output_1], [output_3]
)
self.assertAlmostEquals(diff, 0.8)
def test_get_regression_value(self):
iface = Interface(lambda text: text, ["textbox"], ["label"])
output_1 = {"cat": 0.9, "dog": 0.1}
output_2 = {"cat": float("nan"), "dog": 0.4}
output_3 = {"cat": 0.1, "dog": 0.6}
diff = gradio.interpretation.get_regression_or_classification_value(
iface, [output_1], [output_2]
)
self.assertEquals(diff, 0)
diff = gradio.interpretation.get_regression_or_classification_value(
iface, [output_1], [output_3]
)
self.assertAlmostEquals(diff, 0.1)
def test_get_classification_value(self):
iface = Interface(lambda text: text, ["textbox"], ["label"])
diff = gradio.interpretation.get_regression_or_classification_value(
iface, ["cat"], ["test"]
)
self.assertEquals(diff, 1)
diff = gradio.interpretation.get_regression_or_classification_value(
iface, ["test"], ["test"]
)
self.assertEquals(diff, 0)
if __name__ == "__main__":
unittest.main()