| @@ -57,6 +57,7 @@ static std::map<string, string> tbe_func_adapter_map = { | |||
| {"strided_slice", "strided_slice_d"}, | |||
| {"strided_slice_grad", "strided_slice_grad_d"}, | |||
| {"transpose", "transpose_d"}, | |||
| {"fill", "fill_d"}, | |||
| {"unsorted_segment_sum", "unsorted_segment_sum_d"}, | |||
| {"concat", "concat_d"}, | |||
| {"slice", "slice_d"}, | |||
| @@ -53,6 +53,7 @@ ConstInputToAttrInfoRegistry::ConstInputToAttrInfoRegistry() { | |||
| Register(kExpandDimsOpName, {1}); | |||
| Register(kSplitOpName, {0}); | |||
| Register(kTopKOpName, {1}); | |||
| Register(kErfOpName, {1}); | |||
| Register(kSparseApplyAdagradOpName, {2}); | |||
| Register(kResizeNearestNeighborGrad, {1}); | |||
| } | |||
| @@ -92,6 +92,7 @@ constexpr auto kClipByNormNoDivSumOpName = "ClipByNormNoDivSum"; | |||
| constexpr auto kGreaterOpName = "Greater"; | |||
| constexpr auto kSqrtOpName = "Sqrt"; | |||
| constexpr auto kRsqrtOpName = "Rsqrt"; | |||
| constexpr auto kErfOpName = "Erf"; | |||
| constexpr auto kRealDivOpName = "RealDiv"; | |||
| constexpr auto kLambUpdateWithLROpName = "LambUpdateWithLR"; | |||
| constexpr auto kLambNextMVWithDecayOpName = "LambNextMVWithDecay"; | |||
| @@ -17,6 +17,7 @@ | |||
| from functools import reduce | |||
| import numpy as np | |||
| from .. import functional as F | |||
| from .. import operations as P | |||
| from ..operations import _grad_ops as G | |||
| @@ -333,6 +334,23 @@ def get_bprop_log(self): | |||
| return bprop | |||
| @bprop_getters.register(P.Erf) | |||
| def get_bprop_erf(self): | |||
| """Grad definition for `Erf` operation.""" | |||
| exp = P.Exp() | |||
| square = P.Square() | |||
| sqrt = P.Sqrt() | |||
| cast = P.Cast() | |||
| dtype = P.DType() | |||
| def bprop(x, out, dout): | |||
| half_root_pi = cast(2 / sqrt(F.scalar_to_tensor(np.pi)), dtype(x)) | |||
| x_square = square(x) | |||
| dx = dout * half_root_pi * exp(-x_square) | |||
| return (dx,) | |||
| return bprop | |||
| @bprop_getters.register(P.Pow) | |||
| def get_bprop_pow(self): | |||
| """Grad definition for `Pow` operation.""" | |||
| @@ -139,6 +139,8 @@ from .smooth_l1_loss_grad import _smooth_l1_loss_grad_tbe | |||
| from .fused_mul_add import _fused_mul_add_tbe | |||
| from .fused_mul_add_n import _fused_mul_add_n_tbe | |||
| from .fused_mul_apply_momentum import _fused_mul_apply_momentum_tbe | |||
| from .fill_d import _fill_d_op_tbe | |||
| from .erf import _erf_op_tbe | |||
| from .depthwise_conv2d import _depthwise_conv2d_tbe | |||
| from .depthwise_conv2d_backprop_filter import _depthwise_conv2d_backprop_filter_tbe | |||
| from .depthwise_conv2d_backprop_input import _depthwise_conv2d_backprop_input_tbe | |||
| @@ -0,0 +1,39 @@ | |||
| # Copyright 2020 Huawei Technologies Co., Ltd | |||
| # | |||
| # 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. | |||
| # ============================================================================ | |||
| """Erf op""" | |||
| from mindspore.ops.op_info_register import op_info_register, TBERegOp, DataType | |||
| erf_op_info = TBERegOp("Erf") \ | |||
| .fusion_type("ELEMWISE") \ | |||
| .async_flag(False) \ | |||
| .binfile_name("erf.so") \ | |||
| .compute_cost(10) \ | |||
| .kernel_name("erf") \ | |||
| .partial_flag(True) \ | |||
| .op_pattern("formatAgnostic") \ | |||
| .input(0, "x", False, "required", "all") \ | |||
| .output(0, "y", False, "required", "all") \ | |||
| .dtype_format(DataType.F16_5HD, DataType.F16_5HD) \ | |||
| .dtype_format(DataType.F16_Default, DataType.F16_Default) \ | |||
| .dtype_format(DataType.F32_5HD, DataType.F32_5HD) \ | |||
| .dtype_format(DataType.F32_Default, DataType.F32_Default) \ | |||
| .get_op_info() | |||
| @op_info_register(erf_op_info) | |||
| def _erf_op_tbe(): | |||
| """Erf TBE register""" | |||
| return | |||
| @@ -0,0 +1,55 @@ | |||
| # Copyright 2020 Huawei Technologies Co., Ltd | |||
| # | |||
| # 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. | |||
| # ============================================================================ | |||
| """FillD op""" | |||
| from mindspore.ops.op_info_register import op_info_register, TBERegOp, DataType | |||
| fill_d_op_info = TBERegOp("FillD") \ | |||
| .fusion_type("ELEMWISE") \ | |||
| .async_flag(False) \ | |||
| .binfile_name("fill_d.so") \ | |||
| .compute_cost(10) \ | |||
| .kernel_name("fill_d") \ | |||
| .partial_flag(True) \ | |||
| .attr("dims", "required", "listInt", "all") \ | |||
| .input(0, "value", False, "required", "all") \ | |||
| .output(0, "y", False, "required", "all") \ | |||
| .dtype_format(DataType.F16_5HD, DataType.F16_5HD) \ | |||
| .dtype_format(DataType.F16_FracZ, DataType.F16_FracZ) \ | |||
| .dtype_format(DataType.F16_C1HWNCoC0, DataType.F16_C1HWNCoC0) \ | |||
| .dtype_format(DataType.F16_Default, DataType.F16_Default) \ | |||
| .dtype_format(DataType.F32_5HD, DataType.F32_5HD) \ | |||
| .dtype_format(DataType.F32_FracZ, DataType.F32_FracZ) \ | |||
| .dtype_format(DataType.F32_C1HWNCoC0, DataType.F32_C1HWNCoC0) \ | |||
| .dtype_format(DataType.F32_Default, DataType.F32_Default) \ | |||
| .dtype_format(DataType.I32_5HD, DataType.I32_5HD) \ | |||
| .dtype_format(DataType.I32_FracZ, DataType.I32_FracZ) \ | |||
| .dtype_format(DataType.I32_C1HWNCoC0, DataType.I32_C1HWNCoC0) \ | |||
| .dtype_format(DataType.I32_Default, DataType.I32_Default) \ | |||
| .dtype_format(DataType.I8_5HD, DataType.I8_5HD) \ | |||
| .dtype_format(DataType.I8_FracZ, DataType.I8_FracZ) \ | |||
| .dtype_format(DataType.I8_C1HWNCoC0, DataType.I8_C1HWNCoC0) \ | |||
| .dtype_format(DataType.I8_Default, DataType.I8_Default) \ | |||
| .dtype_format(DataType.U8_5HD, DataType.U8_5HD) \ | |||
| .dtype_format(DataType.U8_FracZ, DataType.U8_FracZ) \ | |||
| .dtype_format(DataType.U8_C1HWNCoC0, DataType.U8_C1HWNCoC0) \ | |||
| .dtype_format(DataType.U8_Default, DataType.U8_Default) \ | |||
| .get_op_info() | |||
| @op_info_register(fill_d_op_info) | |||
| def _fill_d_op_tbe(): | |||
| """FillD TBE register""" | |||
| return | |||
| @@ -39,7 +39,7 @@ from .control_ops import ControlDepend, GeSwitch, Merge | |||
| from .inner_ops import ScalarCast | |||
| from .math_ops import (Abs, ACos, AddN, AssignAdd, AssignSub, Atan2, BatchMatMul, | |||
| ReduceMax, ReduceMin, ReduceMean, ReduceSum, ReduceAll, ReduceProd, CumProd, | |||
| Cos, Div, Equal, EqualCount, Exp, Floor, FloorDiv, FloorMod, Acosh, | |||
| Cos, Div, Equal, EqualCount, Exp, Erf, Floor, FloorDiv, FloorMod, Acosh, | |||
| Greater, GreaterEqual, Less, LessEqual, Log, LogicalAnd, | |||
| LogicalNot, LogicalOr, MatMul, Maximum, | |||
| Minimum, Mul, Neg, NMSWithMask, NotEqual, | |||
| @@ -139,6 +139,7 @@ __all__ = [ | |||
| 'ReLU', | |||
| 'ReLU6', | |||
| 'Elu', | |||
| 'Erf', | |||
| 'Sigmoid', | |||
| 'HSwish', | |||
| 'HSigmoid', | |||
| @@ -1007,6 +1007,36 @@ class Log(PrimitiveWithInfer): | |||
| return x | |||
| class Erf(PrimitiveWithInfer): | |||
| r""" | |||
| Computes the Gauss error function of `input_x` element-wise. | |||
| Inputs: | |||
| - **input_x** (Tensor) - The input tensor. | |||
| Outputs: | |||
| Tensor, has the same shape and dtype as the `input_x`. | |||
| Examples: | |||
| >>> input_x = Tensor(np.array([-1, 0, 1, 2, 3]), mindspore.float32) | |||
| >>> erf = P.Erf() | |||
| >>> erf(input_x) | |||
| [-0.8427168, 0., 0.8427168, 0.99530876, 0.99997765] | |||
| """ | |||
| @prim_attr_register | |||
| def __init__(self): | |||
| """init Erf""" | |||
| self.init_prim_io_names(inputs=['x'], outputs=['y']) | |||
| def infer_shape(self, x_shape): | |||
| return x_shape | |||
| def infer_dtype(self, x_type): | |||
| validator.check_tensor_type_same({"x": x_type}, [mstype.float16, mstype.float32], self.name) | |||
| return x_type | |||
| class Minimum(_MathBinaryOp): | |||
| """ | |||
| Computes the element-wise minimum of input tensors. | |||
| @@ -250,6 +250,10 @@ test_case_math_ops = [ | |||
| 'block': P.Exp(), | |||
| 'desc_inputs': [[2, 3]], | |||
| 'desc_bprop': [[2, 3]]}), | |||
| ('Erf', { | |||
| 'block': P.Erf(), | |||
| 'desc_inputs': [Tensor(np.array([-2, -1, 0, 1, 2]).astype(np.float16))], | |||
| 'desc_bprop': [Tensor(np.array([-2, -1, 0, 1, 2]).astype(np.float16))]}), | |||
| ('Floor', { | |||
| 'block': P.Floor(), | |||
| 'desc_inputs': [[2, 512, 56, 56]], | |||