import torch
import numpy as np
import torch_npu
from torch_npu.testing.testcase import TestCase, run_tests
from torch_npu.testing.common_utils import create_common_tensor
class TestAbs(TestCase):
def cpu_op_exec(self, input1):
output = torch.abs(input1)
output = output.numpy()
return output
def npu_op_exec(self, input1):
output = torch.abs(input1)
output = output.to("cpu")
output = output.numpy()
return output
def test_abs_shape_format_fp16(self, device="npu"):
format_list = [0, 3]
shape_list = [[5], [5, 10], [1, 3, 2], [52, 15, 15, 20]]
shape_format = [[np.float16, i, j] for i in format_list for j in shape_list]
for item in shape_format:
cpu_input, npu_input = create_common_tensor(item, -10, 10)
cpu_input = cpu_input.to(torch.float32)
cpu_output = self.cpu_op_exec(cpu_input)
npu_output = self.npu_op_exec(npu_input)
cpu_output = cpu_output.astype(np.float16)
self.assertRtolEqual(cpu_output, npu_output)
def test_abs_shape_format_fp32(self, device="npu"):
format_list = [0, 3]
shape_list = [[5], [5, 10], [1, 3, 2], [52, 15, 15, 20]]
shape_format = [[np.float32, i, j] for i in format_list for j in shape_list]
for item in shape_format:
cpu_input, npu_input = create_common_tensor(item, -10, 10)
cpu_output = self.cpu_op_exec(cpu_input)
npu_output = self.npu_op_exec(npu_input)
self.assertRtolEqual(cpu_output, npu_output)
if __name__ == "__main__":
run_tests()