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- # Copyright 2020-2021 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.
- # ===========================================================================
- """generate json desc for softmax"""
- from mindspore._extends.graph_kernel.model.model import DataFormat as DF
- from ._utils import Expander, ExpanderInfoValidator as VLD
- from ._utils import infer_shape_from_fractalnz, get_reduced_ori_shape, to_frac_z_axis
-
-
- @VLD.add_format(DF.FRAC_NZ)
- @VLD.add_format(DF.DEFAULT)
- @VLD.check_attrs('axis')
- class Softmax(Expander):
- """Softmax expander"""
-
- def _expand(self, graph_builder):
- input_x = self.inputs[0]
- processor = self.processor
- axis = self.attrs['axis']
-
- ori_shape = input_x.shape
- if input_x.data_format == DF.FRAC_NZ:
- ori_shape = infer_shape_from_fractalnz(input_x.shape)
-
- for i, _ in enumerate(list(axis)):
- if axis[i] < 0:
- axis[i] += len(ori_shape)
-
- ori_reduced_shape = get_reduced_ori_shape(ori_shape, axis)
-
- if input_x.data_format == DF.FRAC_NZ:
- axis = to_frac_z_axis(ori_shape, axis)
-
- ori_dtype = input_x.dtype
- if ori_dtype != "float16" and processor == "aicore":
- input_x_f16 = graph_builder.emit('Cast', [input_x], attrs={'dst_type': 'float16'})
- max_x_f16 = graph_builder.emit('ReduceMax', [input_x_f16], attrs={'reduce_axis': axis, 'keep_dims': True})
- max_x = graph_builder.emit('Cast', [max_x_f16], attrs={'dst_type': ori_dtype})
- else:
- max_x = graph_builder.emit('ReduceMax', [input_x], attrs={'reduce_axis': axis, 'keep_dims': True})
-
- if ori_dtype == "float16" and processor == "aicore":
- max_x = graph_builder.emit('Cast', [max_x], attrs={'dst_type': "float32"})
- input_x = graph_builder.emit('Cast', [input_x], attrs={'dst_type': "float32"})
-
- if input_x.data_format == DF.FRAC_NZ:
- max_x = graph_builder.emit('Reshape', [max_x], attrs={'shape': ori_reduced_shape})
- data_sub = graph_builder.emit('Sub', [input_x, max_x])
- data_exp = graph_builder.emit('Exp', [data_sub])
- data_expsum = graph_builder.emit('ReduceSum', [data_exp], attrs={'reduce_axis': axis, 'keep_dims': True})
- if input_x.data_format == DF.FRAC_NZ:
- data_expsum = graph_builder.emit('Reshape', [data_expsum], attrs={'shape': ori_reduced_shape})
- result = graph_builder.emit('RealDiv', [data_exp, data_expsum])
- if ori_dtype == "float16" and processor == "aicore":
- result = graph_builder.emit('Cast', [result], attrs={'dst_type': ori_dtype})
-
- return result
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