| import os |
| from copy import deepcopy |
|
|
| import numpy as np |
| import pytest |
| from gradio_client import media_data |
|
|
| import gradio.interpretation |
| from gradio import Interface |
| from gradio.processing_utils import decode_base64_to_image |
|
|
| os.environ["GRADIO_ANALYTICS_ENABLED"] = "False" |
|
|
|
|
| def max_word_len(text: str) -> int: |
| return max([len(word) for word in text.split(" ")]) |
|
|
|
|
| class TestDefault: |
| @pytest.mark.asyncio |
| async def test_default_text(self): |
| text_interface = Interface( |
| max_word_len, "textbox", "label", interpretation="default" |
| ) |
| interpretation = (await text_interface.interpret(["quickest brown fox"]))[0][ |
| "interpretation" |
| ] |
| assert interpretation[0][1] > 0 |
| assert interpretation[-1][1] == 0 |
|
|
|
|
| class TestShapley: |
| @pytest.mark.asyncio |
| async def test_shapley_text(self): |
| text_interface = Interface( |
| max_word_len, "textbox", "label", interpretation="shapley" |
| ) |
| interpretation = (await text_interface.interpret(["quickest brown fox"]))[0][ |
| "interpretation" |
| ][0] |
| assert interpretation[1] > 0 |
|
|
|
|
| class TestCustom: |
| @pytest.mark.asyncio |
| async def test_custom_text(self): |
| def custom(text): |
| return [(char, 1) for char in text] |
|
|
| text_interface = Interface( |
| max_word_len, "textbox", "label", interpretation=custom |
| ) |
| result = (await text_interface.interpret(["quickest brown fox"]))[0][ |
| "interpretation" |
| ][0] |
| assert result[1] == 1 |
|
|
| @pytest.mark.asyncio |
| async def test_custom_img(self): |
| def max_pixel_value(img): |
| return img.max() |
|
|
| def custom(img): |
| return img.tolist() |
|
|
| img_interface = Interface( |
| max_pixel_value, "image", "label", interpretation=custom |
| ) |
| result = (await 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() |
| assert result == expected_result |
|
|
|
|
| class TestHelperMethods: |
| def test_diff(self): |
| diff = gradio.interpretation.diff(13, "2") |
| assert diff == 11 |
| diff = gradio.interpretation.diff("cat", "dog") |
| assert diff == 1 |
| diff = gradio.interpretation.diff("cat", "cat") |
| assert 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]) |
| assert 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"]) |
| assert diff == -7 |
| diff = gradio.interpretation.quantify_difference_in_label(iface, ["0"], ["100"]) |
| assert 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] |
| ) |
| assert pytest.approx(diff) == 0.3 |
| diff = gradio.interpretation.quantify_difference_in_label( |
| iface, [output_1], [output_3] |
| ) |
| assert pytest.approx(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] |
| ) |
| assert diff == 0 |
| diff = gradio.interpretation.get_regression_or_classification_value( |
| iface, [output_1], [output_3] |
| ) |
| assert pytest.approx(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"] |
| ) |
| assert diff == 1 |
| diff = gradio.interpretation.get_regression_or_classification_value( |
| iface, ["test"], ["test"] |
| ) |
| assert diff == 0 |
|
|