# Copyright (c) 2018 PaddlePaddle Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. from __future__ import print_function import unittest import numpy as np import paddle.fluid.core as core from op_test import OpTest from scipy.special import expit, erf import paddle.fluid as fluid from paddle.fluid import compiler, Program, program_guard class TestSqrtOpError(OpTest): def test_errors(self): with program_guard(Program(), Program()): # The input type of sqrt_op must be Variable or numpy.ndarray. in1 = 1 self.assertRaises(TypeError, fluid.layers.sqrt, in1) # The input dtype of sqrt_op must be float16, float32, float64. in2 = fluid.layers.data( name='input2', shape=[12, 10], dtype="int32") self.assertRaises(TypeError, fluid.layers.sqrt, in2) in3 = fluid.layers.data( name='input3', shape=[12, 10], dtype="float16") fluid.layers.sqrt(x=in3) class TestActivation(OpTest): def setUp(self): self.op_type = "exp" self.dtype = np.float32 self.init_dtype() self.init_kernel_type() x = np.random.uniform(0.1, 1, [11, 17]).astype(self.dtype) out = np.exp(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_output(self): self.check_output() def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) def init_dtype(self): self.dtype = np.float32 def init_kernel_type(self): pass class TestSigmoid(TestActivation): def setUp(self): self.op_type = "sigmoid" self.init_dtype() x = np.random.uniform(-1, 1, [11, 17]).astype(self.dtype) out = 1 / (1 + np.exp(-x)) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.01) class TestLogSigmoid(TestActivation): def setUp(self): self.op_type = "logsigmoid" self.init_dtype() x = np.random.uniform(-1, 1, [11, 17]).astype(self.dtype) out = np.log(1 / (1 + np.exp(-x))) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.008) class TestTanh(TestActivation): def setUp(self): self.op_type = "tanh" self.init_dtype() x = np.random.uniform(0.1, 1, [11, 17]).astype(self.dtype) out = np.tanh(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestAtan(TestActivation): def setUp(self): self.op_type = "atan" self.init_dtype() x = np.random.uniform(0.1, 1, [11, 17]).astype(self.dtype) out = np.arctan(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestTanhShrink(TestActivation): def setUp(self): self.op_type = "tanh_shrink" self.init_dtype() x = np.random.uniform(0.1, 1, [10, 17]).astype(self.dtype) out = x - np.tanh(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.008) class TestHardShrink(TestActivation): def setUp(self): self.op_type = "hard_shrink" self.init_dtype() threshold = 0.5 x = np.random.uniform(-1, 1, [4, 4]).astype(self.dtype) out = np.copy(x) out[(out >= -threshold) & (out <= threshold)] = 0 self.attrs = {'lambda': threshold} self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.005) class TestSoftShrink(TestActivation): def setUp(self): self.op_type = "softshrink" self.init_dtype() lambda_val = 0.1 x = np.random.uniform(0.25, 10, [4, 4]).astype(self.dtype) out = np.copy(x) out = (out < -lambda_val) * (out + lambda_val) + (out > lambda_val) * ( out - lambda_val) self.attrs = {'lambda': lambda_val} self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestSqrt(TestActivation): def setUp(self): self.op_type = "sqrt" self.init_dtype() x = np.random.uniform(0.1, 1, [11, 17]).astype(self.dtype) out = np.sqrt(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestRsqrt(TestActivation): def setUp(self): self.op_type = "rsqrt" self.init_dtype() x = np.random.uniform(0.1, 1, [2, 3]).astype(self.dtype) out = 1.0 / np.sqrt(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.0005) class TestAbs(TestActivation): def setUp(self): self.op_type = "abs" self.init_dtype() x = np.random.uniform(-1, 1, [4, 4]).astype(self.dtype) # Because we set delta = 0.005 in calculating numeric gradient, # if x is too small, such as 0.002, x_neg will be -0.003 # x_pos will be 0.007, so the numeric gradient is inaccurate. # we should avoid this x[np.abs(x) < 0.005] = 0.02 out = np.abs(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestCeil(TestActivation): def setUp(self): self.op_type = "ceil" self.init_dtype() x = np.random.uniform(-1, 1, [4, 4]).astype(self.dtype) out = np.ceil(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} # The same reason with TestFloor def test_check_grad(self): pass class TestFloor(TestActivation): def setUp(self): self.op_type = "floor" self.init_dtype() x = np.random.uniform(-1, 1, [4, 4]).astype(self.dtype) out = np.floor(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} # the gradient on floor, ceil, round is undefined. # we return zero as gradient, but the numpy return nan # The same reason with TestFloor def test_check_grad(self): pass class TestCos(TestActivation): def setUp(self): self.op_type = "cos" self.init_dtype() x = np.random.uniform(-1, 1, [4, 4]).astype(self.dtype) out = np.cos(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestAcos(TestActivation): def setUp(self): self.op_type = "acos" self.init_dtype() x = np.random.uniform(-1, 1, [4, 4]).astype(self.dtype) out = np.arccos(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestSin(TestActivation): def setUp(self): self.op_type = "sin" self.init_dtype() x = np.random.uniform(-1, 1, [4, 4]).astype(self.dtype) out = np.sin(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestAsin(TestActivation): def setUp(self): self.op_type = "asin" self.init_dtype() x = np.random.uniform(-1, 1, [4, 4]).astype(self.dtype) out = np.arcsin(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestRound(TestActivation): def setUp(self): self.op_type = "round" self.init_dtype() x = np.random.uniform(-1, 1, [4, 4]).astype(self.dtype) out = np.round(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): pass class TestRelu(TestActivation): def setUp(self): self.op_type = "relu" self.init_dtype() x = np.random.uniform(-1, 1, [11, 17]).astype(self.dtype) # The same reason with TestAbs x[np.abs(x) < 0.005] = 0.02 out = np.maximum(x, 0) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestLeakyRelu(TestActivation): def setUp(self): self.op_type = "leaky_relu" self.init_dtype() x = np.random.uniform(-1, 1, [11, 17]).astype(self.dtype) # The same reason with TestAbs x[np.abs(x) < 0.005] = 0.02 out = np.maximum(x, 0.02 * x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestGelu(TestActivation): def setUp(self): self.op_type = "gelu" self.init_dtype() x = np.random.uniform(-1, 1, [11, 17]).astype(self.dtype) out = 0.5 * x * (1.0 + erf(x / np.sqrt(2.0))) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestBRelu(TestActivation): def setUp(self): self.op_type = "brelu" self.init_dtype() x = np.random.uniform(-1, 1, [4, 4]).astype(self.dtype) t_min = 1.0 t_max = 4.0 # The same with TestAbs x[np.abs(x - t_min) < 0.005] = t_min + 0.02 x[np.abs(x - t_max) < 0.005] = t_max + 0.02 t = np.copy(x) t[t < t_min] = t_min t[t > t_max] = t_max self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.attrs = {'t_min': t_min, 't_max': t_max} self.outputs = {'Out': t} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.02) class TestRelu6(TestActivation): def setUp(self): self.op_type = "relu6" self.init_dtype() x = np.random.uniform(-1, 1, [4, 10]).astype(self.dtype) threshold = 6.0 # The same with TestAbs x[np.abs(x) < 0.005] = 0.02 x[np.abs(x - threshold) < 0.005] = threshold + 0.02 out = np.minimum(np.maximum(x, 0), threshold) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.attrs = {'threshold': threshold} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.02) class TestHardSwish(TestActivation): def setUp(self): self.op_type = 'hard_swish' self.init_dtype() x = np.random.uniform(-6, 6, [4, 4]).astype(self.dtype) threshold = 6.0 scale = 6.0 offset = 3.0 #the same with TestAbs x[np.abs(x + offset) < 0.005] = 0.02 x[np.abs(x - threshold + offset) < 0.005] = threshold - offset + 0.02 out = x * np.minimum(np.maximum(x + offset, 0), threshold) / scale self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.attrs = {'threshold': threshold, 'scale': scale, 'offset': offset} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.02) class TestSoftRelu(TestActivation): def setUp(self): self.op_type = "soft_relu" self.init_dtype() x = np.random.uniform(-3, 3, [4, 4]).astype(self.dtype) threshold = 2.0 # The same reason with TestAbs x[np.abs(x - threshold) < 0.005] = threshold + 0.02 x[np.abs(x + threshold) < 0.005] = -threshold + 0.02 t = np.copy(x) t[t < -threshold] = -threshold t[t > threshold] = threshold out = np.log((np.exp(t) + 1)) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.attrs = {'threshold': threshold} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.02) class TestELU(TestActivation): def setUp(self): self.op_type = "elu" self.init_dtype() x = np.random.uniform(-3, 3, [4, 4]).astype(self.dtype) alpha = 1. out = np.maximum(0, x) + np.minimum(0, alpha * (np.exp(x) - 1)) # Note: unlike other Relu extensions, point 0 on standard ELU function (i.e. alpha = 1) # is differentiable, so we can skip modifications like x[np.abs(x) < 0.005] = 0.02 here self.inputs = {'X': x} self.attrs = {'alpha': alpha} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.02) class TestELUOpError(OpTest): def test_errors(self): with program_guard(Program(), Program()): # The input type of elu_op must be Variable. x1 = fluid.create_lod_tensor( np.array([[-1]]), [[1]], fluid.CPUPlace()) self.assertRaises(TypeError, fluid.layers.elu, x1) # The input dtype of elu_op must be float16 float32 or float64. x2 = fluid.layers.data(name='x2', shape=[4], dtype="int32") self.assertRaises(TypeError, fluid.layers.elu, x2) class TestReciprocal(TestActivation): def setUp(self): self.op_type = "reciprocal" self.init_dtype() x = np.random.uniform(1, 2, [11, 17]).astype(self.dtype) out = np.reciprocal(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.01) class TestLog(TestActivation): def setUp(self): self.op_type = "log" self.init_dtype() x = np.random.uniform(0.1, 1, [11, 17]).astype(self.dtype) out = np.log(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestSquare(TestActivation): def setUp(self): self.op_type = "square" self.init_dtype() x = np.random.uniform(0.1, 1, [11, 17]).astype(self.dtype) out = np.square(x) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestPow(TestActivation): def setUp(self): self.op_type = "pow" self.init_dtype() x = np.random.uniform(1, 2, [11, 17]).astype(self.dtype) out = np.power(x, 3) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.attrs = {'factor': 3.0} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.02) class TestPow_factor_tensor(TestActivation): def setUp(self): self.op_type = "pow" self.init_dtype() x = np.random.uniform(1, 2, [11, 17]).astype(self.dtype) out = np.power(x, 3) self.inputs = { 'X': OpTest.np_dtype_to_fluid_dtype(x), 'FactorTensor': np.array([3.0]).astype("float32") } self.attrs = {} self.outputs = {'Out': out} def test_check_output(self): self.check_output() def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.02) def test_api(self): import paddle.fluid as fluid input = np.random.uniform(1, 2, [11, 17]).astype("float32") x = fluid.layers.data( name="x", shape=[11, 17], append_batch_size=False, dtype="float32") factor_1 = 2.0 factor_2 = fluid.layers.fill_constant([1], "float32", 3.0) out_1 = fluid.layers.pow(x, factor=factor_1) out_2 = fluid.layers.pow(x, factor=factor_2) exe = fluid.Executor(place=fluid.CPUPlace()) res_1, res_2 = exe.run(fluid.default_main_program(), feed={"x": input}, fetch_list=[out_1, out_2]) assert np.array_equal(res_1, np.power(input, 2)) assert np.array_equal(res_2, np.power(input, 3)) class TestSTanh(TestActivation): def setUp(self): self.op_type = "stanh" self.init_dtype() x = np.random.uniform(0.1, 1, [11, 17]).astype(self.dtype) scale_a = 2.0 / 3.0 scale_b = 1.7159 out = scale_b * np.tanh(x * scale_a) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.attrs = {'scale_a': scale_a, 'scale_b': scale_b} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestSoftplus(TestActivation): def setUp(self): self.op_type = "softplus" self.init_dtype() self.dtype = np.float64 x = np.random.uniform(-1, 1, [11, 17]).astype(self.dtype) out = np.log(1 + np.exp(x)) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestSoftsign(TestActivation): def setUp(self): self.op_type = "softsign" self.init_dtype() x = np.random.uniform(-1, 1, [11, 17]).astype(self.dtype) out = np.divide(x, 1 + np.abs(x)) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(x)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.007) class TestThresholdedRelu(TestActivation): def setUp(self): self.op_type = "thresholded_relu" self.init_dtype() threshold = 0.25 self.relative_error = 0.005 X = np.random.uniform(-1, 1, [11, 17]).astype(self.dtype) # Same reason as TestAbs X[np.abs(X - threshold) < self.relative_error] = threshold + 0.2 out = (X > threshold) * X self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(X)} self.attrs = {'threshold': threshold} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=self.relative_error) class TestHardSigmoid(TestActivation): def setUp(self): self.op_type = "hard_sigmoid" self.init_dtype() self.relative_error = 0.002 X = np.random.uniform(-5, 5, [2, 2]).astype("float32") slope = 0.2 offset = 0.5 lower_threshold = -offset / slope upper_threshold = (1 - offset) / slope # Same reason as TestAbs X[np.abs(X - lower_threshold) < self.relative_error] = \ lower_threshold + 0.2 X[np.abs(X - upper_threshold) < self.relative_error] = \ upper_threshold - 0.2 temp = X * slope + offset out = np.maximum(0.0, np.minimum(1.0, temp)) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(X)} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.002) class TestSwish(TestActivation): def setUp(self): self.op_type = "swish" self.init_dtype() X = np.random.uniform(0.1, 1, [11, 17]).astype(self.dtype) beta = 2.3 out = X * expit(beta * X) self.inputs = {'X': OpTest.np_dtype_to_fluid_dtype(X)} self.attrs = {'beta': beta} self.outputs = {'Out': out} def test_check_grad(self): if self.dtype == np.float16: return self.check_grad(['X'], 'Out', max_relative_error=0.008) #------------------ Test Cudnn Activation---------------------- def create_test_act_cudnn_class(parent, atol=1e-3, grad_atol=1e-3): @unittest.skipIf(not core.is_compiled_with_cuda(), "core is not compiled with CUDA") class TestActCudnn(parent): def init_kernel_type(self): self.attrs = {"use_cudnn": True} cls_name = "{0}_{1}".format(parent.__name__, "cudnn") TestActCudnn.__name__ = cls_name globals()[cls_name] = TestActCudnn create_test_act_cudnn_class(TestRelu) create_test_act_cudnn_class(TestRelu6) create_test_act_cudnn_class(TestSigmoid) create_test_act_cudnn_class(TestTanh) #------------------ Test Fp16 ---------------------- def create_test_act_fp16_class(parent, atol=1e-3, grad_check=True, grad_atol=0.80): @unittest.skipIf(not core.is_compiled_with_cuda(), "core is not compiled with CUDA") class TestActFp16(parent): def init_dtype(self): self.dtype = np.float16 def test_check_output(self): place = core.CUDAPlace(0) support_fp16 = core.is_float16_supported(place) if support_fp16: self.check_output_with_place(place, atol=atol) def test_check_grad(self): place = core.CUDAPlace(0) support_fp16 = core.is_float16_supported(place) if support_fp16 and grad_check: self.check_grad_with_place( place, ['X'], 'Out', max_relative_error=grad_atol) cls_name = "{0}_{1}".format(parent.__name__, "fp16") TestActFp16.__name__ = cls_name globals()[cls_name] = TestActFp16 create_test_act_fp16_class(TestActivation) create_test_act_fp16_class(TestSigmoid) create_test_act_fp16_class(TestLogSigmoid) create_test_act_fp16_class(TestTanh) create_test_act_fp16_class(TestTanhShrink) create_test_act_fp16_class(TestHardShrink) create_test_act_fp16_class(TestSoftShrink) create_test_act_fp16_class(TestSqrt) create_test_act_fp16_class(TestAbs) create_test_act_fp16_class(TestCeil, grad_check=False) create_test_act_fp16_class(TestFloor, grad_check=False) create_test_act_fp16_class(TestCos, grad_atol=0.85) create_test_act_fp16_class(TestAcos, grad_atol=0.85) create_test_act_fp16_class(TestSin) create_test_act_fp16_class(TestAsin) create_test_act_fp16_class(TestAtan) create_test_act_fp16_class(TestRound, grad_check=False) create_test_act_fp16_class(TestRelu) create_test_act_fp16_class(TestGelu) create_test_act_fp16_class(TestBRelu) create_test_act_fp16_class(TestRelu6) create_test_act_fp16_class(TestSoftRelu) create_test_act_fp16_class(TestELU) create_test_act_fp16_class(TestReciprocal) create_test_act_fp16_class(TestLog) create_test_act_fp16_class(TestSquare) create_test_act_fp16_class(TestPow, atol=5e-2) create_test_act_fp16_class(TestPow_factor_tensor, atol=5e-2) create_test_act_fp16_class(TestSTanh, grad_atol=0.9) create_test_act_fp16_class(TestSoftplus) create_test_act_fp16_class(TestSoftsign) create_test_act_fp16_class(TestThresholdedRelu) create_test_act_fp16_class(TestHardSigmoid) create_test_act_fp16_class(TestSwish) create_test_act_fp16_class(TestHardSwish) if __name__ == "__main__": unittest.main()