Signed-off-by: alex-yuyue <yue.yu1@huawei.com>tags/v1.2.0-rc1
| @@ -40,8 +40,7 @@ Status TensorOp::Compute(const std::shared_ptr<Tensor> &input, std::shared_ptr<T | |||
| Status TensorOp::Compute(const TensorRow &input, TensorRow *output) { | |||
| IO_CHECK_VECTOR(input, output); | |||
| if (OneToOne()) { | |||
| if (input.size() != 1) | |||
| return Status(StatusCode::kMDUnexpectedError, "The op is OneToOne, can only accept one tensor as input."); | |||
| CHECK_FAIL_RETURN_UNEXPECTED(input.size() == 1, "The op is OneToOne, can only accept one tensor as input."); | |||
| output->resize(1); | |||
| return Compute(input[0], &(*output)[0]); | |||
| } | |||
| @@ -63,24 +63,6 @@ class TextTensorOperation(TensorOperation): | |||
| """ | |||
| Base class of Text Tensor Ops | |||
| """ | |||
| def __call__(self, *tensor_list): | |||
| tensor_array = [] | |||
| output_list = [] | |||
| # Combine input tensor_list to a TensorRow | |||
| for input_tensor in tensor_list: | |||
| if not isinstance(input_tensor, (str, list)): | |||
| raise TypeError("Input should be string or list of strings, got {}.".format(type(input_tensor))) | |||
| tensor_array.append(cde.Tensor(np.asarray(input_tensor))) | |||
| callable_op = cde.Execute(self.parse()) | |||
| output_list = callable_op(tensor_array) | |||
| for i, element in enumerate(output_list): | |||
| arr = element.as_array() | |||
| if arr.dtype.char == 'S': | |||
| output_list[i] = np.char.decode(arr) | |||
| else: | |||
| output_list[i] = arr | |||
| return output_list[0] if len(output_list) == 1 else output_list | |||
| def parse(self): | |||
| raise NotImplementedError("TextTensorOperation has to implement parse() method.") | |||
| @@ -27,8 +27,20 @@ from ..core.datatypes import mstype_to_detype | |||
| class TensorOperation: | |||
| def __call__(self): | |||
| raise NotImplementedError("TensorOperation has to implement __call__() method.") | |||
| """ | |||
| Base class Tensor Ops | |||
| """ | |||
| def __call__(self, *input_tensor_list): | |||
| tensor_row = [cde.Tensor(np.asarray(tensor)) for tensor in input_tensor_list] | |||
| callable_op = cde.Execute(self.parse()) | |||
| output_tensor_list = callable_op(tensor_row) | |||
| for i, element in enumerate(output_tensor_list): | |||
| arr = element.as_array() | |||
| if arr.dtype.char == 'S': | |||
| output_tensor_list[i] = np.char.decode(arr) | |||
| else: | |||
| output_tensor_list[i] = arr | |||
| return output_tensor_list[0] if len(output_tensor_list) == 1 else tuple(output_tensor_list) | |||
| def parse(self): | |||
| raise NotImplementedError("TensorOperation has to implement parse() method.") | |||
| @@ -62,24 +62,11 @@ class ImageTensorOperation(TensorOperation): | |||
| """ | |||
| Base class of Image Tensor Ops | |||
| """ | |||
| def __call__(self, *tensor_list): | |||
| tensor_array = [] | |||
| output_list = [] | |||
| # Combine input tensor_list to a TensorRow | |||
| for input_tensor in tensor_list: | |||
| if not isinstance(input_tensor, (np.ndarray, Image.Image)): | |||
| raise TypeError("Input should be NumPy or PIL image, got {}.".format(type(input_tensor))) | |||
| tensor_array.append(cde.Tensor(np.asarray(input_tensor))) | |||
| callable_op = cde.Execute(self.parse()) | |||
| output_list = callable_op(tensor_array) | |||
| for i, element in enumerate(output_list): | |||
| arr = element.as_array() | |||
| if arr.dtype.char == 'S': | |||
| output_list[i] = np.char.decode(arr) | |||
| else: | |||
| output_list[i] = arr | |||
| return output_list[0] if len(output_list) == 1 else output_list | |||
| def __call__(self, *input_tensor_list): | |||
| for tensor in input_tensor_list: | |||
| if not isinstance(tensor, (np.ndarray, Image.Image)): | |||
| raise TypeError("Input should be NumPy or PIL image, got {}.".format(type(tensor))) | |||
| return super().__call__(*input_tensor_list) | |||
| def parse(self): | |||
| raise NotImplementedError("ImageTensorOperation has to implement parse() method.") | |||
| @@ -285,9 +272,7 @@ class Decode(ImageTensorOperation): | |||
| """ | |||
| if not isinstance(img, np.ndarray) or img.ndim != 1 or img.dtype.type is np.str_: | |||
| raise TypeError("Input should be an encoded image with 1-D NumPy type, got {}.".format(type(img))) | |||
| decode = cde.Execute(cde.DecodeOperation(self.rgb)) | |||
| img = decode(cde.Tensor(np.asarray(img))) | |||
| return img.as_array() | |||
| return super().__call__(img) | |||
| def parse(self): | |||
| return cde.DecodeOperation(self.rgb) | |||
| @@ -35,14 +35,12 @@ def test_HWC2CHW_callable(): | |||
| Test HWC2CHW is callable | |||
| """ | |||
| logger.info("Test HWC2CHW callable") | |||
| img = np.fromfile("../data/dataset/apple.jpg", dtype=np.uint8) | |||
| logger.info("Image.type: {}, Image.shape: {}".format(type(img), img.shape)) | |||
| img = c_vision.Decode()(img) | |||
| assert img.shape == (2268, 4032, 3) | |||
| img = np.zeros([50, 50, 3]) | |||
| assert img.shape == (50, 50, 3) | |||
| # test one tensor | |||
| img1 = c_vision.HWC2CHW()(img) | |||
| assert img1.shape == (3, 2268, 4032) | |||
| assert img1.shape == (3, 50, 50) | |||
| # test input multiple tensors | |||
| with pytest.raises(RuntimeError) as info: | |||
| @@ -55,7 +53,6 @@ def test_HWC2CHW_callable(): | |||
| assert "The op is OneToOne, can only accept one tensor as input." in str(info.value) | |||
| def test_HWC2CHW(plot=False): | |||
| """ | |||
| Test HWC2CHW | |||
| @@ -20,6 +20,24 @@ import mindspore.dataset as ds | |||
| import mindspore.dataset.text as text | |||
| def test_ngram_callable(): | |||
| """ | |||
| Test ngram op is callable | |||
| """ | |||
| op = text.Ngram(2, separator="-") | |||
| input1 = " WildRose Country" | |||
| input1 = np.array(input1.split(" "), dtype='S') | |||
| expect1 = ['-WildRose', 'WildRose-Country'] | |||
| result1 = op(input1) | |||
| assert np.array_equal(result1, expect1) | |||
| input2 = ["WildRose Country", "Canada's Ocean Playground", "Land of Living Skies"] | |||
| expect2 = ["WildRose Country-Canada's Ocean Playground", "Canada's Ocean Playground-Land of Living Skies"] | |||
| result2 = op(input2) | |||
| assert np.array_equal(result2, expect2) | |||
| def test_multiple_ngrams(): | |||
| """ test n-gram where n is a list of integers""" | |||
| plates_mottos = ["WildRose Country", "Canada's Ocean Playground", "Land of Living Skies"] | |||
| @@ -105,6 +123,7 @@ def test_corner_cases(): | |||
| if __name__ == '__main__': | |||
| test_ngram_callable() | |||
| test_multiple_ngrams() | |||
| test_simple_ngram() | |||
| test_corner_cases() | |||
| @@ -30,6 +30,17 @@ def compare(in1, in2, length, out1, out2): | |||
| np.testing.assert_array_equal(out2, d["s2"]) | |||
| def test_callable(): | |||
| op = text.TruncateSequencePair(3) | |||
| data = [["1", "2", "3"], ["4", "5"]] | |||
| result_text = op(*data) | |||
| column1, column2 = op(["1", "2", "3"], ["4", "5"]) | |||
| assert np.array_equal(result_text[0], ['1', '2']) | |||
| assert np.array_equal(result_text[1], ['4']) | |||
| assert np.array_equal(column1, ['1', '2']) | |||
| assert np.array_equal(column2, ['4']) | |||
| def test_basics(): | |||
| compare(in1=[1, 2, 3], in2=[4, 5], length=4, out1=[1, 2], out2=[4, 5]) | |||
| compare(in1=[1, 2], in2=[4, 5], length=4, out1=[1, 2], out2=[4, 5]) | |||
| @@ -59,6 +70,7 @@ def test_exceptions(): | |||
| if __name__ == "__main__": | |||
| test_callable() | |||
| test_basics() | |||
| test_basics_odd() | |||
| test_basics_str() | |||
| @@ -16,10 +16,34 @@ | |||
| Testing SlidingWindow in mindspore.dataset | |||
| """ | |||
| import numpy as np | |||
| import pytest | |||
| import mindspore.dataset as ds | |||
| import mindspore.dataset.text as text | |||
| def test_sliding_window_callable(): | |||
| """ | |||
| Test sliding window op is callable | |||
| """ | |||
| op = text.SlidingWindow(2, 0) | |||
| input1 = ["大", "家", "早", "上", "好"] | |||
| expect = np.array([['大', '家'], ['家', '早'], ['早', '上'], ['上', '好']]) | |||
| result = op(input1) | |||
| assert np.array_equal(result, expect) | |||
| # test 2D input | |||
| input2 = [["大", "家", "早", "上", "好"]] | |||
| with pytest.raises(RuntimeError) as info: | |||
| _ = op(input2) | |||
| assert "SlidingWindow: SlidingWindow supports 1D input only for now." in str(info.value) | |||
| # test input multiple tensors | |||
| with pytest.raises(RuntimeError) as info: | |||
| _ = op(input1, input1) | |||
| assert "The op is OneToOne, can only accept one tensor as input." in str(info.value) | |||
| def test_sliding_window_string(): | |||
| """ test sliding_window with string type""" | |||
| inputs = [["大", "家", "早", "上", "好"]] | |||
| @@ -104,6 +128,7 @@ def test_sliding_window_exception(): | |||
| if __name__ == '__main__': | |||
| test_sliding_window_callable() | |||
| test_sliding_window_string() | |||
| test_sliding_window_number() | |||
| test_sliding_window_big_width() | |||
| @@ -50,6 +50,12 @@ def test_to_number_eager(): | |||
| _ = op(*input_strings) | |||
| assert "The op is OneToOne, can only accept one tensor as input." in str(info.value) | |||
| # test input invalid tensor | |||
| invalid_input = [["1", "2", "3"], ["4", "5"]] | |||
| with pytest.raises(RuntimeError) as info: | |||
| _ = op(invalid_input) | |||
| assert "Invalid data type." in str(info.value) | |||
| def test_to_number_typical_case_integral(): | |||
| input_strings = [["-121", "14"], ["-2219", "7623"], ["-8162536", "162371864"], | |||