|
- /**
- * Copyright 2019 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.
- */
-
- /*!
- * \file rnn.h
- * \brief
- */
- #ifndef OPS_BUILT_IN_OP_PROTO_INC_RNN_H_
- #define OPS_BUILT_IN_OP_PROTO_INC_RNN_H_
-
- #include "graph/operator_reg.h"
-
- namespace ge {
- /**
- *@brief: Basic LSTM Cell forward calculation.
- *@par Inputs:
- *five inputs:
- *@li x:A 4D Tensor. Must be one of the following types: float16.
- *@li h:A 4D Tensor. Must be one of the following types: float16.
- *@li c:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li w:A 4D Tensor. Must be one of the following types: float16.
- *@li b:A 1D Tensor. Must be one of the following types: float16. The format must be ND . \n
- *@li mask:A 1D Tensor. Must be one of the following types: uint8.
-
- *@par Attributes:
- *@li keep_prob:An integer identifying the keep prob in the op. Default to 1.
- *@li forget_bias:An integer identifying the forget bias in the op. Default to 1.
- *@li state_is_tuple:An bool identifying if the hidden state and cell state is tuple. Default to true.
- *@li activation:An string identifying the type of activation function in the op. Default to "tanh". Only tanh is currently supported . \n
-
- *@par Outputs:
- *seven outputs:
- *@li ct:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li ht:A 4D Tensor. Must be one of the following types: float16.
- *@li it:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li jt:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li ft:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li ot:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li tanhct:A 4D Tensor. Must be one of the following types: float16, float32.
- */
- REG_OP(BasicLSTMCell)
- .INPUT(x, TensorType({DT_FLOAT16}))
- .INPUT(h, TensorType({DT_FLOAT16}))
- .INPUT(c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(w, TensorType({DT_FLOAT16}))
- .INPUT(b, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(mask, TensorType({DT_UINT8}))
- .OUTPUT(ct, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(ht, TensorType({DT_FLOAT16}))
- .OUTPUT(it, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(jt, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(ft, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(ot, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(tanhct, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(keep_prob, Float, 1.0)
- .ATTR(forget_bias, Float, 1.0)
- .ATTR(state_is_tuple, Bool, true)
- .ATTR(activation, String, "tanh")
- .OP_END_FACTORY_REG(BasicLSTMCell)
-
- /**
- *@brief: Dynamic LSTM forward calculation . \n
-
- *@par Inputs:
- *@li x:A 4D Tensor. Must be the type float32.
- *@li w:A 4D Tensor. Must be the type float32.
- *@li b:A 1D Tensor. Must be the type float32. The format must be ND . \n
-
- *@par Outputs:
- *output_h:A Tensor of output. Must be the type float32.
-
- *@par Restrictions:
- *Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(DynamicLSTM)
- .INPUT(x, TensorType({DT_FLOAT32}))
- .INPUT(w, TensorType({DT_FLOAT32}))
- .INPUT(b, TensorType({DT_FLOAT32}))
- .OUTPUT(output_h, TensorType({DT_FLOAT32}))
- .OP_END_FACTORY_REG(DynamicLSTM)
-
- /**
- *@brief: DynamicRNNGrad calculation.
- *@par Inputs:
- *ten inputs: \n
- *@li x:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li w:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li b:A 1D Tensor. Must be one of the following types: float16, float32.
- *@li y:A 1D Tensor. Must be one of the following types: int32.
- *@li init_h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li init_c:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li c:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dy:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dh:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dc:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li i:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li j:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li f:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li o:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li tanhct:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li seq_length:A 1D Tensor. Must be one of the following types: int32.
- *@li mask:A 1D Tensor. Must be one of the following types: int8.
- *@li wci:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li wcf:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li wco:A 4D Tensor. Must be one of the following types: float16, float32.
-
- *@par Attributes:
- *@li cell_type:An string identifying the cell type in the op. Default to "LSTM". Only LSTM is currently supported.
- *@li direction:An string identifying the direction in the op. Default to "UNIDIRECTIONAL". Only UNIDIRECTIONAL is currently supported.
- *@li cell_depth:An integer identifying the cell depth in the op. Default to 1.
- *@li use_peephole:An bool identifying if use peephole in the op. Default to false.
- *@li keep_prob:An float identifying the keep prob in the op. Default to 1.
- *@li cell_clip:An float identifying the cell clip in the op. Default to -1.
- *@li num_proj:An integer identifying the num projection in the op. Default to 0.
- *@li time_major:An bool identifying the time major in the op. Default to false.
- *@li forget_bias:An float identifying the forget bias in the op. Default to 0.
-
- *@par Outputs:
- *eight outputs: \n
- *@li dw:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li db:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dx:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dh_prev:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dc_prev:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dwci:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dwcf:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dwco:A 4D Tensor. Must be one of the following types: float16, float32.
- */
- REG_OP(DynamicRNNGrad)
- .INPUT(x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(w, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(b, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(y, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(init_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(init_c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dy, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dh, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dc, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(i, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(j, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(f, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(o, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(tanhct, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(seq_length, TensorType({DT_INT32}))
- .OPTIONAL_INPUT(mask, TensorType({DT_UINT8}))
- .OPTIONAL_INPUT(wci, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(wcf, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(wco, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dw, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(db, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dx, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dh_prev, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dc_prev, TensorType({DT_FLOAT16, DT_FLOAT}))
- .DYNAMIC_OUTPUT(dwci, TensorType({DT_FLOAT16, DT_FLOAT}))
- .DYNAMIC_OUTPUT(dwcf, TensorType({DT_FLOAT16, DT_FLOAT}))
- .DYNAMIC_OUTPUT(dwco, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(cell_type, String, "LSTM")
- .ATTR(direction, String, "UNIDIRECTIONAL")
- .ATTR(cell_depth, Int, 0)
- .ATTR(use_peephole, Bool, false)
- .ATTR(keep_prob, Float, -1.0)
- .ATTR(cell_clip, Float, -1.0)
- .ATTR(num_proj, Int, 0)
- .ATTR(time_major, Bool, true)
- .ATTR(forget_bias, Float, 0.0)
- .OP_END_FACTORY_REG(DynamicRNNGrad)
-
- /**
- *@brief: DynamicRNN calculation.
- *@par Inputs:
- *ten inputs:
- *@li x:A required 4D Tensor. Must be one of the following types: float16, float32.
- *@li w:A required 4D Tensor. Must be one of the following types: float16, float32.
- *@li b:A required 1D Tensor. Must be one of the following types: float16, float32. The format must be ND.
- *@li seq_length:A optional Tensor. Only Support int32 in ND.
- *@li init_h:A optional 4D Tensor. Must be one of the following types: float16, float32.
- *@li init_c:A optional 4D Tensor. Must be one of the following types: float16, float32.
- *@li wci:A 4D optional Tensor. Must be one of the following types: float16, float32.
- *@li wcf:A 4D optional Tensor. Must be one of the following types: float16, float32.
- *@li wco:A 4D optional Tensor. Must be one of the following types: float16, float32.
- *@li mask:A 1D optional Tensor. Must be one of the following types: uint8. The format must be ND . \n
-
- *@par Attributes:
- *@li cell_type:An string identifying the cell type in the op. Default to "LSTM". Only LSTM is currently supported.
- *@li direction:An string identifying the direction in the op. Default to "UNIDIRECTIONAL". Only UNIDIRECTIONAL is currently supported.
- *@li cell_depth:An integer identifying the cell depth in the op. Default to 1.
- *@li use_peephole:An bool identifying if use peephole in the op. Default to false.
- *@li keep_prob:An float identifying the keep prob in the op. Default to 1.
- *@li cell_clip:An float identifying the cell clip in the op. Default to -1.
- *@li num_proj:An integer identifying the num projection in the op. Default to 0.
- *@li time_major:An bool identifying the time major in the op. Default to true.
- *@li activation:An string identifying the type of activation function in the op. Default to "tanh". Only tanh is currently supported.
- *@li forget_bias:An float identifying the forget bias in the op. Default to 0.
- *@li gate_order:An string identifying the type of gate order in the op. Support "ijfo" and "ifjo". Default to "ijfo".
- *@li is_training:An bool identifying is training in the op. Default to true . \n
-
- *@par Outputs:
- *eight outputs:
- *@li y:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li output_h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li output_c:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li i:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li j:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li f:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li o:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li tanhct:A 4D Tensor. Must be one of the following types: float16, float32.
- *@par Third-party framework compatibility:
- * Compatible with the TF operator LSTM.
- */
- REG_OP(DynamicRNN)
- .INPUT(x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(w, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(b, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(seq_length, TensorType({DT_INT32, DT_FLOAT16}))
- .OPTIONAL_INPUT(init_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(init_c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(wci, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(wcf, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(wco, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(mask, TensorType({DT_UINT8}))
- .OUTPUT(y, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(output_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(output_c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(i, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(j, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(f, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(o, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(tanhc, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(cell_type, String, "LSTM")
- .ATTR(direction, String, "UNIDIRECTIONAL")
- .ATTR(cell_depth, Int, 1)
- .ATTR(use_peephole, Bool, false)
- .ATTR(keep_prob, Float, 1.0)
- .ATTR(cell_clip, Float, -1.0)
- .ATTR(num_proj, Int, 0)
- .ATTR(time_major, Bool, true)
- .ATTR(activation, String, "tanh")
- .ATTR(forget_bias, Float, 0.0)
- .ATTR(gate_order, String, "ijfo")
- .ATTR(is_training, Bool, true)
- .OP_END_FACTORY_REG(DynamicRNN)
-
- /**
- *@brief: DynamicRNNV2 calculation.
- *@par Inputs:
- *ten inputs:
- *@li x:A required 4D Tensor. Must be one of the following types: float16, float32.
- *@li weight_input:A required 4D Tensor. Must be one of the following types: float16, float32.
- *@li weight_hidden:A required 4D Tensor. Must be one of the following types: float16, float32.
- *@li b:A required 1D Tensor. Must be one of the following types: float16, float32. The format must be ND.
- *@li seq_length:A optional 1D Tensor. Must be one of the following types: float16, int32.
- *@li init_h:A optional 4D Tensor. Must be one of the following types: float16, float32.
- *@li init_c:A optional 4D Tensor. Must be one of the following types: float16, float32.
- *@li wci:A 4D optional Tensor. Must be one of the following types: float16, float32.
- *@li wcf:A 4D optional Tensor. Must be one of the following types: float16, float32.
- *@li wco:A 4D optional Tensor. Must be one of the following types: float16, float32.
- *@li mask:A 1D optional Tensor. Must be one of the following types: uint8. The format must be ND . \n
-
- *@par Attributes:
- *@li cell_type:An string identifying the cell type in the op. Default to "LSTM". Only LSTM is currently supported.
- *@li direction:An string identifying the direction in the op. Default to "UNIDIRECTIONAL".
- *Only UNIDIRECTIONAL is currently supported.
- *@li cell_depth:An integer identifying the cell depth in the op. Default to 1.
- *@li use_peephole:An bool identifying if use peephole in the op. Default to false.
- *@li keep_prob:An float identifying the keep prob in the op. Default to 1.
- *@li cell_clip:An float identifying the cell clip in the op. Default to -1.
- *@li num_proj:An integer identifying the num projection in the op. Default to 0.
- *@li time_major:An bool identifying the time major in the op. Default to true.
- *@li activation:An string identifying the type of activation function in the op. Default to "tanh".
- *Support "tanh" and "clip".
- *@li recurrent_activation:An string identifying the type of activation function in the op. Default to "sigmoid".
- *Support "sigmoid" and "hard_sigmoid". In general, set "hard_sigmoid" for TF Keras LSTM.
- *@li forget_bias:An float identifying the forget bias in the op. Default to 0.
- *@li gate_order:An string identifying the type of gate order in the op. Support "ijfo" and "ifco". Default to "ijfo".
- *Set "ijfo" for TF operator LSTM, Set "ifco" for TF Keras LSTM.
- *@li stateful: An bool identifying the type of stateful in the op. Default to fasle.Only false is currently supported.
- *@li merge_mode: An string identifying the type of merge_modein the op. Default to "concat".
- *Only "concat" is currently supported
- *@li is_training:An bool identifying is training in the op. Default to true . \n
-
- *@par Outputs:
- *eight outputs:
- *@li y:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li output_h:A 4D Tensor. Must be one of the following types: float16, float32.
- *Return the last output_h.
- *@li output_c:A 4D Tensor. Must be one of the following types: float16, float32.
- *Return the last output_c.
- *@li i:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li j:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li f:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li o:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li tanhct:A 4D Tensor. Must be one of the following types: float16, float32.
- *@par Third-party framework compatibility:
- * Compatible with the TF operator LSTM or TF keras operator LSTM.
- */
-
- REG_OP(DynamicRNNV2)
- .INPUT(x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(weight_input, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(weight_hidden, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(b, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(seq_length, TensorType({DT_INT32, DT_FLOAT16}))
- .OPTIONAL_INPUT(init_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(init_c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(wci, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(wcf, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(wco, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(mask, TensorType({DT_UINT8}))
- .OUTPUT(y, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(output_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(output_c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(i, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(j, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(f, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(o, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(tanhc, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(cell_type, String, "LSTM")
- .ATTR(direction, String, "UNIDIRECTIONAL")
- .ATTR(cell_depth, Int, 1)
- .ATTR(use_peephole, Bool, false)
- .ATTR(keep_prob, Float, 1.0)
- .ATTR(cell_clip, Float, -1.0)
- .ATTR(num_proj, Int, 0)
- .ATTR(time_major, Bool, true)
- .ATTR(activation, String, "tanh")
- .ATTR(recurrent_activation, String, "sigmoid")
- .ATTR(forget_bias, Float, 0.0)
- .ATTR(gate_order, String, "ijfo")
- .ATTR(stateful, Bool, false)
- .ATTR(merge_mode, String, "concat")
- .ATTR(is_training, Bool, true)
- .OP_END_FACTORY_REG(DynamicRNNV2)
-
- /**
- * @brief: DynamicRNNV2Grad calculation.
- * @par Inputs:
- * twenty-one inputs:
- * @li x:A required 4D Tensor. Must be one of the following types: float16, float32.
- * @li w_x:A required 4D Tensor. Must be one of the following types: float16, float32.
- * @li w_h:A required 4D Tensor. Must be one of the following types: float16, float32.
- * @li y:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li init_h:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li init_c:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li h:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li c:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li dy:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li dh:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li dc:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li i:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li j:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li f:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li o:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li tanhct:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li seq_length:A 1D Tensor. Must be one of the following types: int32.
- * @li wci:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li wcf:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li wco:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li mask:A 1D Tensor. Must be one of the following types: int8. \n
-
- * @par Attributes:
- * @li cell_type:An string identifying the cell type in the op. Default to "LSTM". Only LSTM is currently supported.
- * @li direction:An string identifying the direction in the op. Default to "UNIDIRECTIONAL".
- * Only UNIDIRECTIONAL is currently supported.
- * @li cell_depth:An integer identifying the cell depth in the op. Default to 1. Only 1 is currently supported.
- * @li use_peephole:An bool identifying if use peephole in the op. Default to false.
- * Only false is currently supported.
- * @li keep_prob:An float identifying the keep prob in the op. Default to 1. Only 1 is currently supported.
- * @li cell_clip:An float identifying the cell clip in the op. Default to -1. Only -1 is currently supported.
- * @li num_proj:An integer identifying the num projection in the op. Default to 0. Only 0 is currently supported.
- * @li time_major:An bool identifying the time major in the op. Default to true. Only true is currently supported.
- * @li activation:An string identifying the type of activation function in the op. Default to "tanh".
- * Only "tanh" is currently supported.
- * @li recurrent_activation:An string identifying the type of activation function in the op. Default to "sigmoid".
- * Only "sigmoid" is currently supported.
- * @li gate_order:An string identifying the type of gate order in the op. Support "ijfo" and "ifco". Default to "ijfo".
- * Set "ijfo" for TF operator LSTM, Set "ifco" for TF Keras/Pytorch LSTM .
- * @li stateful: An bool identifying the type of stateful in the op. Default to fasle.Only false is currently supported.
- * @li merge_mode: An string identifying the type of merge_modein the op. Default to "concat".
- * Only "concat" is currently supported. \n
-
- * @par Outputs:
- * nine outputs:
- * @li dw_x:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li dw_h:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li db:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li dx:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li dh_prev:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li dc_prev:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li dwci:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li dwcf:A 4D Tensor. Must be one of the following types: float16, float32.
- * @li dwco:A 4D Tensor. Must be one of the following types: float16, float32.
-
- * @par Third-party framework compatibility:
- * Compatible with the TF operator LSTM or TF keras operator LSTM.
-
- * @par Restrictions:
- * Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(DynamicRNNV2Grad)
- .INPUT(x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(w_x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(w_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(y, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(init_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(init_c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dy, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dh, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dc, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(i, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(j, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(f, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(o, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(tanhct, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(seq_length, TensorType({DT_INT32}))
- .OPTIONAL_INPUT(wci, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(wcf, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(wco, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(mask, TensorType({DT_UINT8}))
- .OUTPUT(dw_x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dw_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(db, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dx, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dh_prev, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dc_prev, TensorType({DT_FLOAT16, DT_FLOAT}))
- .DYNAMIC_OUTPUT(dwci, TensorType({DT_FLOAT16, DT_FLOAT}))
- .DYNAMIC_OUTPUT(dwcf, TensorType({DT_FLOAT16, DT_FLOAT}))
- .DYNAMIC_OUTPUT(dwco, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(cell_type, String, "LSTM")
- .ATTR(direction, String, "UNIDIRECTIONAL")
- .ATTR(cell_depth, Int, 1)
- .ATTR(use_peephole, Bool, false)
- .ATTR(keep_prob, Float, 1.0)
- .ATTR(cell_clip, Float, -1.0)
- .ATTR(num_proj, Int, 0)
- .ATTR(time_major, Bool, true)
- .ATTR(activation, String, "tanh")
- .ATTR(recurrent_activation, String, "sigmoid")
- .ATTR(gate_order, String, "ijfo")
- .ATTR(stateful, Bool, false)
- .ATTR(merge_mode, String, "concat")
- .OP_END_FACTORY_REG(DynamicRNNV2Grad)
-
- /**
- *@brief: DynamicRNNV3 calculation.
- *@par Inputs:
- *ten inputs:
- *@li x:A required 4D Tensor. Must be one of the following types: float16, float32.
- *@li w:A required 4D Tensor. Must be one of the following types: float16, float32.
- *@li b:A required 1D Tensor. Must be one of the following types: float16, float32. The format must be ND.
- *@li seq_length:A optional 1D Tensor. Must be one of the following types: int32. The format must be ND.
- *@li init_h:A optional 4D Tensor. Must be one of the following types: float16, float32.
- *@li init_c:A optional 4D Tensor. Must be one of the following types: float16, float32.
- *@li wci:A 4D optional Tensor. Must be one of the following types: float16, float32.
- *@li wcf:A 4D optional Tensor. Must be one of the following types: float16, float32.
- *@li wco:A 4D optional Tensor. Must be one of the following types: float16, float32.
- *@li mask:A 1D optional Tensor. Must be one of the following types: uint8. The format must be ND . \n
- *@li real_mask:A 4D optional Tensor. Must be one of the following types: float16, float32.
- *@li project:A 4D optional Tensor. Must be one of the following types: float16, float32.
-
- *@par Attributes:
- *@li cell_type:An string identifying the cell type in the op. Default to "LSTM". Only LSTM is currently supported.
- *@li direction:An string identifying the direction in the op. Default to "UNIDIRECTIONAL". Only UNIDIRECTIONAL is currently supported.
- *@li cell_depth:An integer identifying the cell depth in the op. Default to 1.
- *@li use_peephole:An bool identifying if use peephole in the op. Default to false.
- *@li keep_prob:An float identifying the keep prob in the op. Default to 1.
- *@li cell_clip:An float identifying the cell clip in the op. Default to -1.
- *@li num_proj:An integer identifying the num projection in the op. Default to 0.
- *@li time_major:An bool identifying the time major in the op. Default to true.
- *@li activation:An string identifying the type of activation function in the op. Default to "tanh". Only tanh is currently supported.
- *@li forget_bias:An float identifying the forget bias in the op. Default to 0.
- *@li is_training:An bool identifying is training in the op. Default to true . \n
-
- *@par Outputs:
- *eight outputs:
- *@li y:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li output_h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li output_c:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li i:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li j:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li f:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li o:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li tanhct:A 4D Tensor. Must be one of the following types: float16, float32.
- *@par Third-party framework compatibility:
- * Compatible with the TF operator LSTM.
- */
- REG_OP(DynamicRNNV3)
- .INPUT(x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(w, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(b, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(seq_length, TensorType({DT_INT32}))
- .OPTIONAL_INPUT(init_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(init_c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(wci, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(wcf, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(wco, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(mask, TensorType({DT_UINT8}))
- .OPTIONAL_INPUT(real_mask, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(project, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(y, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(output_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(output_c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(i, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(j, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(f, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(o, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(tanhc, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(cell_type, String, "LSTM")
- .ATTR(direction, String, "UNIDIRECTIONAL")
- .ATTR(cell_depth, Int, 1)
- .ATTR(use_peephole, Bool, false)
- .ATTR(keep_prob, Float, 1.0)
- .ATTR(cell_clip, Float, -1.0)
- .ATTR(num_proj, Int, 0)
- .ATTR(time_major, Bool, true)
- .ATTR(activation, String, "tanh")
- .ATTR(forget_bias, Float, 0.0)
- .ATTR(is_training, Bool, true)
- .OP_END_FACTORY_REG(DynamicRNNV3)
-
- /**
- *@brief: DynamicLSTMV2 calculation.
- *@par Inputs:
- *ten inputs:
- *@li x:A required 4D Tensor. Must be one of the following types: float16, float32.
- *@li w:A required 4D Tensor. Must be one of the following types: float16, float32.
- *@li b:A required 1D Tensor. Must be one of the following types: float16, float32. The format must be ND.
- *@li cont:A required 2D Tensor. Must be one of the following types: float16, float32. The format must be ND.
- *@li w_xc_x_static:A optional 2D Tensor. Must be one of the following types: float16, float32. The format must be ND.
- *@li h0:A optional 4D Tensor. Must be one of the following types: float16, float32.
- *@li c0:A optional 4D Tensor. Must be one of the following types: float16, float32.
- *@li wci:A optional 4D Tensor. Must be one of the following types: float16, float32.
- *@li wcf:A optional 4D Tensor. Must be one of the following types: float16, float32.
- *@li wco:A optional 4D Tensor. Must be one of the following types: float16, float32.
- *@li mask:A optional 1D Tensor. Must be one of the following types: uint8. The format must be ND .
-
- *@par Attributes:
- *@li num_output:An integer identifying the num projection in the op. Default to 0.
- *@li expose_hidden:An bool identifying the expose_hidden in the op. Default to flase.
- *@li need_output_last:An bool identifying the time major in the op. Default to true.
- *@li forget_bias:An float identifying the forget bias in the op. Default to 0.
-
- *@par Outputs:
- *eight outputs:
- *@li y:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li output_h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li output_c:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li last_output_h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li last_output_c:A 4D Tensor. Must be one of the following types: float16, float32.
- *@par Third-party framework compatibility:
- * Compatible with the Caffe operator LSTM.
- *@par Restrictions:
- * Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(DynamicLSTMV2)
- .INPUT(x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(w, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(b, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(cont, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(w_xc_x_static, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(h0, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(c0, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(wci, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(wcf, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(wco, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(mask, TensorType({DT_UINT8}))
- .OUTPUT(y, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(output_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(output_c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(last_output_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(last_output_c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(num_output, Int, 0)
- .ATTR(expose_hidden, Bool, false)
- .ATTR(need_output_last, Bool, false)
- .ATTR(forget_bias, Float, 0.0)
- .OP_END_FACTORY_REG(DynamicLSTMV2)
-
- /**
- *@brief: LSTMInputGrad calculation.
- *@par Inputs:
- *ten inputs: \n
- *@li w:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li init_c:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li c:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dy:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dh:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dc:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li i:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li j:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li f:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li o:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li tanhct:A 4D Tensor. Must be one of the following types: float16, float32.
-
-
- *@par Outputs:
- *four outputs: \n
- *@li dx:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dh_prev:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dc_prev:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dgate:A 4D Tensor. Must be one of the following types: float16.
- */
- REG_OP(LSTMInputGrad)
- .INPUT(w, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(init_c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dy, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dh, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dc, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(i, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(j, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(f, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(o, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(tanhct, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dx, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dh_prev, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dc_prev, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dgate, TensorType({DT_FLOAT16}))
- .OP_END_FACTORY_REG(LSTMInputGrad)
-
-
-
- /**
- *@brief: Dynamic LSTM Cell grad calculation.Calculate the gradient of gates and cell state.
- *@par Inputs:
- *twelve inputs:
- *@li init_c:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li c:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dy:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dh:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dc:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li i:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li j:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li f:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li o:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li tanhct:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li mask:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li t_state:A 4D Tensor. Must be one of the following types: float16, float32. . \n
-
- *@par Attributes:
- *@li forget_bias:An integer identifying the forget bias in the op. Default to 1.
- *@li activation:An string identifying the type of activation function in the op. Default to "tanh". Only tanh is currently supported . \n
- *@li direction:An string that marks the calculation sequence of the operator. Default to "Forward".
- *@li gate_order:An string mark the order of output 4 gate. Default to "ijfo".
-
- *@par Outputs:
- *two outputs:
- *@li dgate:A 4D Tensor. Must be one of the following types: float16.
- *@li dct_1:A 4D Tensor. Must be one of the following types: float16, float32.
-
- *@par Restrictions:
- *Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(DynamicLSTMGradCell)
- .INPUT(init_c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dy, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dh, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dc, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(i, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(j, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(f, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(o, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(tanhct, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(t_state, TensorType({DT_INT32, DT_INT32}))
- .INPUT(mask, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dgate, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dct_1, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(forget_bias, Float, 1.0)
- .ATTR(activation, String, "tanh")
- .ATTR(direction, String, "UNIDIRECTIONAL")
- .ATTR(gate_order, String, "ijfo")
- .OP_END_FACTORY_REG(DynamicLSTMGradCell)
-
-
- /**
- *@brief: Basic LSTM Cell backward calculation.Calculate the gradient of input and hidden state.
- *@par Inputs:
- *three inputs:
- *@li dgate:A 4D Tensor. Must be one of the following types: float16.
- *@li w:A 4D Tensor. Must be one of the following types: float16.
- *@li dropout_mask:A 1D Tensor. Must be one of the following types: uint8. The format must be ND . \n
-
- *@par Attributes:
- *keep_prob:An integer identifying the keep prob in the op. Default to 1 . \n
-
- *@par Outputs:
- *two outputs:
- *@li dxt:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dht:A 4D Tensor. Must be one of the following types: float16, float32.
-
- *@par Restrictions:
- *Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(BasicLSTMCellInputGrad)
- .INPUT(dgate, TensorType({DT_FLOAT16}))
- .INPUT(w, TensorType({DT_FLOAT16}))
- .OPTIONAL_INPUT(dropout_mask, TensorType({DT_UINT8}))
- .OUTPUT(dxt, TensorType({DT_FLOAT16, DT_FLOAT32}))
- .OUTPUT(dht, TensorType({DT_FLOAT16, DT_FLOAT32}))
- .ATTR(keep_prob, Float, 1.0)
- .OP_END_FACTORY_REG(BasicLSTMCellInputGrad)
-
- /**
- *@brief: Basic LSTM Cell backward calculation.Calculate the gradient of weight and bias.
- *@par Inputs:
- *three inputs:
- *@li x:A 4D Tensor. Must be one of the following types: float16.
- *@li h:A 4D Tensor. Must be one of the following types: float16.
- *@li dgate:A 4D Tensor. Must be one of the following types: uint8. \n
-
- *@par Outputs:
- *two outputs:
- *@li dw:A 4D Tensor. Must be one of the following types: float16.
- *@li db:A 4D Tensor. Must be one of the following types: float16, float32.
-
- *@par Restrictions:
- *Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(BasicLSTMCellWeightGrad)
- .INPUT(x, TensorType({DT_FLOAT16}))
- .INPUT(h, TensorType({DT_FLOAT16}))
- .INPUT(dgate, TensorType({DT_FLOAT16}))
- .OUTPUT(dw, TensorType({DT_FLOAT16}))
- .OUTPUT(db, TensorType({DT_FLOAT16, DT_FLOAT32}))
- .OP_END_FACTORY_REG(BasicLSTMCellWeightGrad)
-
- /**
- *@brief: Basic LSTM Cell backward calculation.Calculate the gradient of gates and cell state.
- *@par Inputs:
- *eight inputs:
- *@li c:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dht:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dct:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li it:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li jt:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li ft:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li ot:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li tanhct:A 4D Tensor. Must be one of the following types: float16, float32. \n
-
- *@par Attributes:
- *@li forget_bias:An integer identifying the forget bias in the op. Default to 1.
- *@li activation:An string identifying the type of activation function in the op. Default to "tanh". Only tanh is currently supported . \n
-
- *@par Outputs:
- *two outputs:
- *@li dgate:A 4D Tensor. Must be one of the following types: float16.
- *@li dct_1:A 4D Tensor. Must be one of the following types: float16, float32.
-
- *@par Restrictions:
- *Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(BasicLSTMCellCStateGrad)
- .INPUT(c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dht, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dct, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(it, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(jt, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(ft, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(ot, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(tanhct, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dgate, TensorType({DT_FLOAT16}))
- .OUTPUT(dct_1, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(forget_bias, Float, 1.0)
- .ATTR(activation, String, "tanh")
- .OP_END_FACTORY_REG(BasicLSTMCellCStateGrad)
-
- /**
- *@brief: RNN operator.
- *@par Inputs:
- *eight inputs:
- *@li x:A 4D Tensor. Must be one of the following types: float16.
- *@li cont:A 1D Tensor. Must be one of the following types: float16. The format must be ND.
- *@li x_static:A 4D Tensor. Must be one of the following types: float16.
- *@li h_0:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li w_xh:A 4D Tensor. Must be one of the following types: float16.
- *@li w_sh:A 4D Tensor. Must be one of the following types: float16.
- *@li w_hh:A 4D Tensor. Must be one of the following types: float16.
- *@li w_ho:A 4D Tensor. Must be one of the following types: float16.
- *@li bias_h:A 1D Tensor. Must be one of the following types: float16, float32. The format must be ND.
- *@li bias_o:A 1D Tensor. Must be one of the following types: float16, float32. The format must be ND . \n
-
- *@par Attributes:
- *@li expose_hidden:An bool identifying if expose the hidden state of last time step. Default to false.
- *@li num_output:An integer identifying the number of output features. Default to 0 . \n
-
- *@par Outputs:
- *two outputs:
- *@li o:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li h_t:A 4D Tensor. Must be one of the following types: float16, float32.
- *@par Restrictions:
- *Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(RNN)
- .INPUT(x, TensorType({DT_FLOAT16}))
- .INPUT(cont, TensorType({DT_FLOAT16}))
- .OPTIONAL_INPUT(x_static, TensorType({DT_FLOAT16}))
- .OPTIONAL_INPUT(h_0, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(w_xh, TensorType({DT_FLOAT16}))
- .INPUT(bias_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(w_sh, TensorType({DT_FLOAT16}))
- .INPUT(w_hh, TensorType({DT_FLOAT16}))
- .INPUT(w_ho, TensorType({DT_FLOAT16}))
- .INPUT(bias_o, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(o, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(h_t, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(num_output, Int, 0)
- .ATTR(expose_hidden, Bool, false)
- .OP_END_FACTORY_REG(RNN)
-
- /**
- *@brief: BasicRNNCell operator.
- *@par Inputs:
- *eight inputs:
- *@li x:A 4D Tensor. Must be one of the following types: float16.
- *@li cont:A 1D Tensor. Must be one of the following types: float16. The format must be ND.
- *@li w_xh_x_static:A 4D Tensor. Must be one of the following types: float16.
- *@li h_0:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li w_xh:A 4D Tensor. Must be one of the following types: float16.
- *@li w_hh:A 4D Tensor. Must be one of the following types: float16.
- *@li w_ho:A 4D Tensor. Must be one of the following types: float16.
- *@li bias_h:A 1D Tensor. Must be one of the following types: float16, float32. The format must be ND.
- *@li bias_o:A 1D Tensor. Must be one of the following types: float16, float32. The format must be ND . \n
-
- *@par Attributes:
- *@li expose_hidden:An bool identifying if expose the hidden state of last time step. Default to false.
- *@li num_output:An integer identifying the number of output features. Default to 0 . \n
-
- *@par Outputs:
- *two outputs:
- *@li o_t:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li h_t:A 4D Tensor. Must be one of the following types: float16, float32.
-
- *@par Restrictions:
- *Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(BasicRNNCell)
- .INPUT(x, TensorType({DT_FLOAT16}))
- .OPTIONAL_INPUT(cont, TensorType({DT_FLOAT16}))
- .OPTIONAL_INPUT(w_xh_x_static, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(h_0, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(w_xh, TensorType({DT_FLOAT16}))
- .INPUT(bias_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(w_hh, TensorType({DT_FLOAT16}))
- .INPUT(w_ho, TensorType({DT_FLOAT16}))
- .INPUT(bias_o, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(o_t, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(h_t, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(expose_hidden, Bool, false)
- .ATTR(num_output, Int, 0)
- .OP_END_FACTORY_REG(BasicRNNCell)
-
- /**
- *@brief DynamicGRU calculation.
- *@par Inputs:
- *seven inputs:
- *@li x:Must be one of the following types: float16.
- *@li w:Must be one of the following types: float16.
- *@li b:Must be one of the following types: float16, float32. The format must be ND.
- *@li cw:Must be one of the following types: float16.
- *@li cb:Must be one of the following types: float16, float32. The format must be ND.
- *@li seq_length:Must be one of the following types: int32. The format must be ND.
- *@li init_h:Must be one of the following types: float16, float32.
-
- *@par Attributes:
- *@li direction:An string identifying the direction in the op. Default to "UNIDIRECTIONAL". Only UNIDIRECTIONAL is currently supported.
- *@li cell_depth:An integer identifying the cell depth in the op. Default to 1.
- *@li keep_prob:An float identifying the keep prob in the op. Default to 1.
- *@li cell_clip:An float identifying the cell clip in the op. Default to -1.
- *@li num_proj:An integer identifying the num projection in the op. Default to 0.
- *@li time_major:An bool identifying the time major in the op. Default to true.
- *@li activation:An string identifying the type of activation function in the op. Default to "tanh". Only tanh is currently supported.
- *@li is_training:An bool identifying is training in the op. Default to true.
-
- *@par Outputs:
- *five outputs:
- *@li y:Must be one of the following types: float16, float32.
- *@li output_h:Must be one of the following types: float16, float32.
- *@li r:Must be one of the following types: float16, float32.
- *@li i:Must be one of the following types: float16, float32.
- *@li n:Must be one of the following types: float16, float32.
-
- *@par Restrictions:
- *Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(DynamicGRU)
- .INPUT(x, TensorType({DT_FLOAT16}))
- .INPUT(w, TensorType({DT_FLOAT16}))
- .INPUT(b, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(cw, TensorType({DT_FLOAT16}))
- .INPUT(cb, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(seq_length, TensorType({DT_INT32}))
- .OPTIONAL_INPUT(init_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(y, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(output_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(r, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(i, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(n, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(direction, String, "UNIDIRECTIONAL")
- .ATTR(cell_depth, Int, 1)
- .ATTR(keep_prob, Float, 1.0)
- .ATTR(cell_clip, Float, -1.0)
- .ATTR(num_proj, Int, 0)
- .ATTR(time_major, Bool, true)
- .ATTR(activation, String, "tanh")
- .ATTR(is_training, Bool, true)
- .OP_END_FACTORY_REG(DynamicGRU)
-
- /**
- *@brief DynamicGRUV2 calculation.
- *@par Inputs:
- *seven inputs:
- *@li x:Must be one of the following types: float16.
- *@li weight_input:Must be one of the following types: float16.
- *@li weight_hidden:Must be one of the following types: float16.
- *@li bias_input:Must be one of the following types: float16, float32. The format must be ND.
- *@li bias_hidden:Must be one of the following types: float16, float32. The format must be ND.
- *@li seq_length:Must be one of the following types: int32 in ND.
- *@li init_h:Must be one of the following types: float16, float32.
-
- *@par Attributes:
- *@li direction:An string identifying the direction in the op. Default to "UNIDIRECTIONAL". Support "UNIDIRECTIONAL" and "REDIRECTIONAL".
- *@li cell_depth:An integer identifying the cell depth in the op. Default to 1.
- *@li keep_prob:An float identifying the keep prob in the op. Default to 1.
- *@li cell_clip:An float identifying the cell clip in the op. Default to -1.
- *@li num_proj:An integer identifying the num projection in the op. Default to 0.
- *@li time_major:An bool identifying the time major in the op. Default to true.
- *@li activation:An string identifying the type of activation function in the op. Default to "tanh". Only tanh is currently supported.
- *@li gate_order:An string identifying the gate order in weight and bias. Default to "zrh". "rzh" is another option.
- *@li reset_after:An bool identifying whether to apply reset gate after matrix multiplication. Default to true.
- *@li is_training:An bool identifying is training in the op. Default to true.
-
- *@par Outputs:
- *six outputs:
- *@li y:Must be one of the following types: float16, float32.
- *@li output_h:Must be one of the following types: float16, float32.
- *@li update:Must be one of the following types: float16, float32.
- *@li reset:Must be one of the following types: float16, float32.
- *@li new:Must be one of the following types: float16, float32.
- *@li hidden_new:Must be one of the following types: float16, float32.
- */
- REG_OP(DynamicGRUV2)
- .INPUT(x, TensorType({DT_FLOAT16}))
- .INPUT(weight_input, TensorType({DT_FLOAT16}))
- .INPUT(weight_hidden, TensorType({DT_FLOAT16}))
- .OPTIONAL_INPUT(bias_input, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(bias_hidden, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(seq_length, TensorType({DT_INT32, DT_FLOAT16}))
- .OPTIONAL_INPUT(init_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(y, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(output_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(update, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(reset, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(new, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(hidden_new, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(direction, String, "UNIDIRECTIONAL")
- .ATTR(cell_depth, Int, 1)
- .ATTR(keep_prob, Float, 1.0)
- .ATTR(cell_clip, Float, -1.0)
- .ATTR(num_proj, Int, 0)
- .ATTR(time_major, Bool, true)
- .ATTR(activation, String, "tanh")
- .ATTR(gate_order, String, "zrh")
- .ATTR(reset_after, Bool, true)
- .ATTR(is_training, Bool, true)
- .OP_END_FACTORY_REG(DynamicGRUV2)
-
-
- /**
- *@brief DynamicGRUV2Hidden calculation.
- *@par Inputs:
- *five inputs:
- *@li x_weight_input:Must be one of the following types: float32.
- *@li weight_hidden:Must be one of the following types: float16.
- *@li bias_hidden:Must be one of the following types: float16, float32. The format must be ND.
- *@li seq_length:Must be one of the following types: int32 in ND.
- *@li init_h:Must be one of the following types: float16, float32.
-
- *@par Attributes:
- *@li direction:An string identifying the direction in the op. Default to "UNIDIRECTIONAL". Support "UNIDIRECTIONAL" and "REDIRECTIONAL".
- *@li cell_depth:An integer identifying the cell depth in the op. Default to 1.
- *@li keep_prob:An float identifying the keep prob in the op. Default to 1.
- *@li cell_clip:An float identifying the cell clip in the op. Default to -1.
- *@li num_proj:An integer identifying the num projection in the op. Default to 0.
- *@li time_major:An bool identifying the time major in the op. Default to true.
- *@li activation:An string identifying the type of activation function in the op. Default to "tanh".
- Only tanh is currently supported.
- *@li gate_order:An string identifying the gate order in weight and bias. Default to "zrh". "rzh" is another option.
- *@li reset_after:An bool identifying whether to apply reset gate after matrix multiplication. Default to true.
- *@li is_training:An bool identifying is training in the op. Default to true.
-
- *@par Outputs:
- *six outputs:
- *@li y:Must be one of the following types: float16, float32.
- *@li output_h:Must be one of the following types: float16, float32.
- *@li update:Must be one of the following types: float16, float32.
- *@li reset:Must be one of the following types: float16, float32.
- *@li new:Must be one of the following types: float16, float32.
- *@li hidden_new:Must be one of the following types: float16, float32.
-
- *@par Restrictions:
- *Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(DynamicGRUV2Hidden)
- .INPUT(x_weight_input, TensorType({DT_FLOAT32}))
- .INPUT(weight_hidden, TensorType({DT_FLOAT16}))
- .OPTIONAL_INPUT(bias_hidden, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(seq_length, TensorType({DT_INT32, DT_FLOAT16}))
- .OPTIONAL_INPUT(init_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(y, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(output_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(update, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(reset, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(new, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(hidden_new, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(direction, String, "UNIDIRECTIONAL")
- .ATTR(cell_depth, Int, 1)
- .ATTR(keep_prob, Float, 1.0)
- .ATTR(cell_clip, Float, -1.0)
- .ATTR(num_proj, Int, 0)
- .ATTR(time_major, Bool, true)
- .ATTR(activation, String, "tanh")
- .ATTR(gate_order, String, "zrh")
- .ATTR(reset_after, Bool, true)
- .ATTR(is_training, Bool, true)
- .OP_END_FACTORY_REG(DynamicGRUV2Hidden)
-
- /**
- *@brief DynamicAUGRU calculation.
- *@par Inputs:
- *eight inputs:
- *@li x:Must be one of the following types: float16.
- *@li weight_input:Must be one of the following types: float16.
- *@li weight_hidden:Must be one of the following types: float16.
- *@li weight_attr:Must be one of the following types: float16.
- *@li bias_input:Must be one of the following types: float16, float32. The format must be ND.
- *@li bias_hidden:Must be one of the following types: float16, float32. The format must be ND.
- *@li seq_length:Must be one of the following types: int32 in ND.
- *@li init_h:Must be one of the following types: float16, float32.
-
- *@par Attributes:
- *@li direction:An string identifying the direction in the op. Default to "UNIDIRECTIONAL". Only UNIDIRECTIONAL is currently supported.
- *@li cell_depth:An integer identifying the cell depth in the op. Default to 1.
- *@li keep_prob:An float identifying the keep prob in the op. Default to 1.
- *@li cell_clip:An float identifying the cell clip in the op. Default to -1.
- *@li num_proj:An integer identifying the num projection in the op. Default to 0.
- *@li time_major:An bool identifying the time major in the op. Default to true.
- *@li activation:An string identifying the type of activation function in the op. Default to "tanh". Only tanh is currently supported.
- *@li gate_order:An string identifying the gate order in weight and bias. Default to "zrh". "rzh" is another option.
- *@li reset_after:An bool identifying whether to apply reset gate after matrix multiplication. Default to true.
- *@li is_training:An bool identifying is training in the op. Default to true.
-
- *@par Outputs:
- *seven outputs:
- *@li y:Must be one of the following types: float16, float32.
- *@li output_h:Must be one of the following types: float16, float32.
- *@li update:Must be one of the following types: float16, float32.
- *@li update_att:Must be one of the following types: float16, float32.
- *@li reset:Must be one of the following types: float16, float32.
- *@li new:Must be one of the following types: float16, float32.
- *@li hidden_new:Must be one of the following types: float16, float32.
- */
- REG_OP(DynamicAUGRU)
- .INPUT(x, TensorType({DT_FLOAT16}))
- .INPUT(weight_input, TensorType({DT_FLOAT16}))
- .INPUT(weight_hidden, TensorType({DT_FLOAT16}))
- .INPUT(weight_att, TensorType({DT_FLOAT16}))
- .OPTIONAL_INPUT(bias_input, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(bias_hidden, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(seq_length, TensorType({DT_INT32, DT_FLOAT16}))
- .OPTIONAL_INPUT(init_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(y, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(output_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(update, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(update_att, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(reset, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(new, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(hidden_new, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(direction, String, "UNIDIRECTIONAL")
- .ATTR(cell_depth, Int, 1)
- .ATTR(keep_prob, Float, 1.0)
- .ATTR(cell_clip, Float, -1.0)
- .ATTR(num_proj, Int, 0)
- .ATTR(time_major, Bool, true)
- .ATTR(activation, String, "tanh")
- .ATTR(gate_order, String, "zrh")
- .ATTR(reset_after, Bool, true)
- .ATTR(is_training, Bool, true)
- .OP_END_FACTORY_REG(DynamicAUGRU)
-
- /**
- *@brief: DynamicAUGRUGrad calculation.
- *@par Inputs:
- *sixteen inputs: \n
- *@li x:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li weight_input:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li weight_hidden:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li weight_att:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li y:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li init_h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dy:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dh:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li update:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li update_att:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li reset:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li new:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li hidden_new:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li seq_length:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li mask:A 4D Tensor. Must be one of the following types: float16, float32.
-
- *@par Attributes:
- *@li direction:An string identifying the direction in the op. Default to "UNIDIRECTIONAL". Only UNIDIRECTIONAL is currently supported.
- *@li cell_depth:An integer identifying the cell depth in the op. Default to 1.
- *@li keep_prob:An float identifying the keep prob in the op. Default to 1.
- *@li cell_clip:An float identifying the cell clip in the op. Default to -1.
- *@li num_proj:An integer identifying the num projection in the op. Default to 0.
- *@li time_major:An bool identifying the time major in the op. Default to true.
- *@li gate_order:An string identifying the gate order in weight and bias. Default to "zrh". "rzh" is another option.
- *@li reset_after:An bool identifying whether to apply reset gate after matrix multiplication. Default to true.
-
- *@par Outputs:
- *seven outputs: \n
- *@li dw_input:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dw_hidden:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li db_input:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li db_hidden:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dx:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dh_prev:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dw_att:A 4D Tensor. Must be one of the following types: float16, float32.
-
- *@par Restrictions:
- *Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(DynamicAUGRUGrad)
- .INPUT(x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(weight_input, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(weight_hidden, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(weight_att, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(y, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(init_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dy, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dh, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(update, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(update_att, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(reset, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(new, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(hidden_new, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(seq_length, TensorType({DT_INT32}))
- .OPTIONAL_INPUT(mask, TensorType({DT_UINT8}))
- .OUTPUT(dw_input, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dw_hidden, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(db_input, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(db_hidden, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dx, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dh_prev, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dw_att, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(direction, String, "UNIDIRECTIONAL")
- .ATTR(cell_depth, Int, 1)
- .ATTR(keep_prob, Float, -1.0)
- .ATTR(cell_clip, Float, -1.0)
- .ATTR(num_proj, Int, 0)
- .ATTR(time_major, Bool, true)
- .ATTR(gate_order, String, "zrh")
- .ATTR(reset_after, Bool, true)
- .OP_END_FACTORY_REG(DynamicAUGRUGrad)
-
- /**
- *@brief: AUGRUHiddenGrad calculation.
- *@par Inputs:
- *eleven inputs: \n
- *@li weight_att:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dh_pre_t:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li init_h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dy:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dh:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li update:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li update_att:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li reset:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li new:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li hidden_new:A 4D Tensor. Must be one of the following types: float16, float32.
-
- *@par Attributes:
- *@li t_state:An Int identifying the current t state. Default to [0, 4].
- *@li gate_order:An string identifying the gate order in weight and bias. Default to "zrh". "rzh" is another option.
-
- *@par Outputs:
- *four outputs: \n
- *@li dh_prev:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dgate_h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dnt_x:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dw_att_t:A 4D Tensor. Must be one of the following types: float16, float32.
-
- *@par Restrictions:
- *Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(AUGRUHiddenGradCell)
- .INPUT(weight_att, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dh_pre_t, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dy, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dh, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(update, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(update_att, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(reset, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(new, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(hidden_new, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dh_prev, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dgate_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dnt_x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dw_att_t, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(t_state, Int, 0)
- .ATTR(gate_order, String, "zrh")
- .OP_END_FACTORY_REG(AUGRUHiddenGradCell)
-
- /**
- *@brief: DynamicGRUV2Grad calculation.
- *@par Inputs:
- *fourteen inputs: \n
- *@li x:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li weight_input:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li weight_hidden:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li y:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li init_h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dy:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dh:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li update:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li reset:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li new:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li hidden_new:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li seq_length:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li mask:A 4D Tensor. Must be one of the following types: float16, float32.
-
- *@par Attributes:
- *@li direction:An string identifying the direction in the op. Default to "UNIDIRECTIONAL". Only UNIDIRECTIONAL is currently supported.
- *@li cell_depth:An integer identifying the cell depth in the op. Default to 1.
- *@li keep_prob:An float identifying the keep prob in the op. Default to 1.
- *@li cell_clip:An float identifying the cell clip in the op. Default to -1.
- *@li num_proj:An integer identifying the num projection in the op. Default to 0.
- *@li time_major:An bool identifying the time major in the op. Default to true.
- *@li gate_order:An string identifying the gate order in weight and bias. Default to "zrh". "rzh" is another option.
- *@li reset_after:An bool identifying whether to apply reset gate after matrix multiplication. Default to true.
-
- *@par Outputs:
- *six outputs: \n
- *@li dw_input:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dw_hidden:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li db_input:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li db_hidden:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dx:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dh_prev:A 4D Tensor. Must be one of the following types: float16, float32.
-
- *@par Restrictions:
- *Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(DynamicGRUV2Grad)
- .INPUT(x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(weight_input, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(weight_hidden, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(y, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(init_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dy, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dh, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(update, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(reset, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(new, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(hidden_new, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(seq_length, TensorType({DT_INT32}))
- .OPTIONAL_INPUT(mask, TensorType({DT_UINT8}))
- .OUTPUT(dw_input, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dw_hidden, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(db_input, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(db_hidden, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dx, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dh_prev, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(direction, String, "UNIDIRECTIONAL")
- .ATTR(cell_depth, Int, 0)
- .ATTR(keep_prob, Float, -1.0)
- .ATTR(cell_clip, Float, -1.0)
- .ATTR(num_proj, Int, 0)
- .ATTR(time_major, Bool, true)
- .ATTR(gate_order, String, "zrh")
- .ATTR(reset_after, Bool, true)
- .OP_END_FACTORY_REG(DynamicGRUV2Grad)
-
- /**
- *@brief: GRUV2HiddenGrad calculation.
- *@par Inputs:
- *nine inputs: \n
- *@li dh_pre_t:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li init_h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dy:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dh:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li update:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li reset:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li new:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li hidden_new:A 4D Tensor. Must be one of the following types: float16, float32.
-
- *@par Attributes:
- *@li t_state:An Int identifying the current t state. Default to [0, 4].
- *@li gate_order:An string identifying the gate order in weight and bias. Default to "zrh". "rzh" is another option.
-
- *@par Outputs:
- *three outputs: \n
- *@li dh_prev:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dgate_h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dnt_x:A 4D Tensor. Must be one of the following types: float16, float32.
-
- *@par Restrictions:
- *Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(GRUV2HiddenGradCell)
- .INPUT(dh_pre_t, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dy, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dh, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(update, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(reset, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(new, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(hidden_new, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dh_prev, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dgate_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dnt_x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(t_state, Int, 0)
- .ATTR(gate_order, String, "zrh")
- .OP_END_FACTORY_REG(GRUV2HiddenGradCell)
-
- /**
- *@brief: DynamicGRUCellGrad calculation.
- *@par Inputs:
- *ten inputs: \n
- *@li dh_pre_t:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dy:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dh:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li update:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li reset:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li new:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li hidden_new:A 4D Tensor. Must be one of the following types: float16, float32.+
- *@li init_h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li t_state:A 1D Tensor. Must be one of the following types: int32. The format must be ND.
-
- *@par Attributes:
- *gate_order:An string identifying the gate order in weight and bias. Default to "zrh". "rzh" is another option.
-
- *@par Outputs:
- *three outputs: \n
- *@li dh_prev:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dgate_h:A 4D Tensor. Must be one of the following types: float16, float32.
- *@li dnt_x:A 4D Tensor. Must be one of the following types: float16, float32.
-
- *@par Restrictions:
- *Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(DynamicGRUCellGrad)
- .INPUT(dh_pre_t, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dy, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(dh, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(update, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(reset, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(new, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(hidden_new, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(init_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(t_state, TensorType({DT_INT32, DT_INT32}))
- .OUTPUT(dh_prev, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dgate_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(dnt_x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(gate_order, String, "zrh")
- .OP_END_FACTORY_REG(DynamicGRUCellGrad)
-
- /**
- * @brief Calculates the reversed outputs of the function "embedding". \n
-
- * @par Inputs:
- * Two inputs, including:
- * @li grad: A mutable Tensor of word grad. Must be one of the following types:
- * float32.
- * @li indices: A mutable word index Tensor of the int32 type.\n
-
- * @par Attributes:
- * @li num_weights: An int attr which use to judge how many words in dict. \n
-
- * @li padding_idx: An int attr judge which word to fill zeros. Defaults to "-1". \n
-
- * @li scale_grad_by_freq: An optional bool. Defaults to "False".
- * If "True", "grad_weight" will be scale by word_frequency.
- * If "False", "grad_weight" will not be scale by word_frequency. \n
-
- * @par Outputs:
- * y: A mutable output Tensor of new word grad has the same type as "grads". \n
-
- * @par Third-party framework compatibility
- * Compatible with the Pytorch operator EmbeddingDenseGrad.
- */
- REG_OP(EmbeddingDenseGrad)
- .INPUT(grad, TensorType({ DT_FLOAT32 })) /* "First operand." */
- .INPUT(indices, TensorType({ DT_INT32 })) /* "Second operand." */
- .OUTPUT(y, TensorType({ DT_FLOAT32 })) /* "Result, has same element type as two inputs" */
- .REQUIRED_ATTR(num_weights, Int)
- .ATTR(padding_idx, Int, -1)
- .ATTR(scale_grad_by_freq, Bool, false)
- .OP_END_FACTORY_REG(EmbeddingDenseGrad)
-
- /**
- *@brief CommonLSTM calculation.
- *@par Inputs:
- *eight inputs: \n
- *@li x:Each time step is a 4D Tensor. Must be one of the following types: float16, float32.
- *@li w:Each direction is a 4D Tensor. Must be one of the following types: float16, float32.
- *@li r:Each direction is a 4D Tensor. Must be one of the following types: float16, float32.
- *@li b:An optional input. Each direction is a 1D Tensor. Must be one of the following types: float16, float32. The format must be ND.
- *@li sequence_lens:An optional input. A 1D Tensor.Must be one of the following types: int32. The format must be ND.
- *@li initial_h:An optional input. Each direction is a 4D Tensor. Must be one of the following types: float16, float32.
- *@li initial_c:An optional input. Each direction is a 4D Tensor. Must be one of the following types: float16, float32.
- *@li p:An optional input. Each direction is a 1D Tensor.Must be one of the following types: float16, float32. The format must be ND.
-
- *@par Attributes:
- *@li activation_alpha:Optional scaling values used by some activation functions. Empty is currently supported.
- *@li activation_beta:Optional scaling values used by some activation functions. Empty is currently supported.
- *@li activations:The list of activation functions. Empty is currently supported.
- *@li clip:An float identifying the cell clip in the op. Default to -1.
- *@li direction:Specify if the RNN is forward, reverse, or bidirectional. Must be one of forward(default), reverse, or bidirectional.
- *@li hidden_size:Number of neurons in the hidden layer. Reserved.
- *@li input_forget:Couple the input and forget gates if 1. Reserved.
-
- *@par Outputs:
- *three outputs: \n
- *@li y:First dimension is time step, second dimension is direction, others is a 4D Tensor. Must be one of the following types: float16, float32.
- *@li y_h:Each direction is a 4D Tensor. Must be one of the following types: float16, float32.
- *@li y_c:Each direction is a 4D Tensor. Must be one of the following types: float16, float32.
- */
-
- REG_OP(CommonLSTM)
- .INPUT(x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(w, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(r, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(b, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(sequence_lens, TensorType({DT_INT32}))
- .OPTIONAL_INPUT(initial_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(initial_c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(p, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(y, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(y_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(y_c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(activation_alpha, ListFloat, {})
- .ATTR(activation_beta, ListFloat, {})
- .ATTR(activations, ListString, {})
- .ATTR(clip, Float, -1.0)
- .ATTR(direction, String, "forward")
- .REQUIRED_ATTR(hidden_size, Int)
- .ATTR(input_forget, Int, 0)
- .OP_END_FACTORY_REG(CommonLSTM)
-
- /**
- * @brief Calculate the mask. According to hidden_size and num_step, convert seq_length to mask.
- *
- * @par Inputs:
- * @li seq_length: A 1D Tensor. Must be one of the following types: int32. Record the current length of each batch. [batch_size].
- * @li x: A 3D Tensor. Must be one of the following types: fp16/fp32. Record the num_step/batch_size/input_size. [num_step, batch_size, input_size].
- * @li hidden_size: An optional attribute of type int32. pass the hidden_size. \n
- *
- * @par Outputs:
- * seq_mask: A 3D Tensor. Must be one of the following types: fp16/fp32. with the shape of [num_step, batch_size, hidden_size]. And has the same type as "b" \n
- *
- * @par Restrictions:
- * Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(RnnGenMaskV2)
- .INPUT(seq_length, TensorType({DT_INT32}))
- .INPUT(x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .REQUIRED_ATTR(hidden_size, Int)
- .OUTPUT(seq_mask, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OP_END_FACTORY_REG(RnnGenMaskV2)
-
- /**
- * @brief Common GRU calculation.
-
- * @par Inputs:
- * Eight inputs, including:
- * @li x: The input sequences packed (and pontentially padded) into on 3D Tesnor(float16).
- * @li w: The weight tensor for the gates is 3D Tensor(float16).
- * @li r: The recurrence weight tesnor is 3D Tensor(float16).
- * @li b: The bias tensor for the gates. The format must be ND
- * @li sequence_lens: Optional tensor specifying lengths of sequences(int32). The format must be ND
- * @li init_h: Optional initial value of the hidden(float16,float32).
-
- * @par Attributes:
- * @li activation_alpha: Optional scaling values used by some activation functions. \n
- * @li activation_beta: Optional scaling values used by some activation functions. \n
- * @li activations: A list of 2 (or 4 if bidirectional) activation functions for update, reset, and hidden gates. \n
- * @li clip: Cell clip threshold. \n
- * @li direction: Specify if the RNN is forward, reverse, or bidirectional. \n
- * @li hidden_size: Number of neurons in the hidden layer. \n
- * @li linear_before_reset: When computing the output of the hidden gate, apply the linear transformation before multiplying by the output of the reset gate. \n
-
- * @par Outputs:
- * @li y: A Tensor that concats all the intermediate output values of the hidden(float16,float32).
- * @li y_h: The last output value of the hidden(float16,float32).
- */
- REG_OP(CommonGRU)
- .INPUT(x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(w, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(r, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(b, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(sequence_lens, TensorType({DT_INT32}))
- .OPTIONAL_INPUT(initial_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(y, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(y_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(activation_alpha, ListFloat, {})
- .ATTR(activation_beta , ListFloat, {})
- .ATTR(activations , ListString, {})
- .ATTR(clip, Float, -1.0)
- .ATTR(direction, String, "forward")
- .REQUIRED_ATTR(hidden_size, Int)
- .ATTR(linear_before_reset , Int, 0)
- .OP_END_FACTORY_REG(CommonGRU)
- /**
- * @brief Calculates the reversed outputs of the function "embedding". \n
-
- * @par Inputs:
- * Four inputs, including:
- * @li weight: A mutable Tensor of word grad. Must be one of the following types:
- * float32.
- * @li indices: A mutable word index Tensor of the int32 type.\n
- * @li offsets: A mutable word index Tensor of the int32 type.\n
- * @li per_sample_weights: to indicate all weights should be taken to be 1.
- * If specified, per_sample_weights must have exactly the same shape as input
- * and is treated as having the same offsets, if those are not None.
- * Only supported for mode='sum'.\n
-
- * @par Attributes:
- * @li mode: An string attr which use "sum"``, ``"mean"`` or ``"max"``. Specifies the way to reduce the bag. \n
-
- * @li scale_grad_by_freq: An optional bool. Defaults to "False".
- * If "True", "grad_weight" will be scale by word_frequency.
- * If "False", "grad_weight" will not be scale by word_frequency. \n
- * @li sparse: if True, gradient w.r.t.attr weight matrix will be a sparse tensor. \n
- * @li include_last_offset: if True, attr offsets has one additional element, where the last element
- * is equivalent to the size of indices. This matches the CSR format. \n
-
- * @par Outputs:
- * y: A mutable output Tensor of new word grad has the same type as "grads". \n
-
- * @par Third-party framework compatibility
- * Compatible with the Pytorch operator EmbeddingBag.
- */
- REG_OP(EmbeddingBag)
- .INPUT(weight, TensorType({ DT_FLOAT32 }))
- .INPUT(indices, TensorType({ DT_INT32 }))
- .OPTIONAL_INPUT(offsets, TensorType({DT_INT32}))
- .OPTIONAL_INPUT(per_sample_weights, TensorType({DT_FLOAT32}))
- .OUTPUT(y, TensorType({ DT_FLOAT32 }))
- .ATTR(mode, String, "mean")
- .ATTR(scale_grad_by_freq, Bool, false)
- .ATTR(sparse, Bool, false)
- .ATTR(include_last_offset, Bool, false)
- .OP_END_FACTORY_REG(EmbeddingBag)
- /**
- * @brief:LSTMP calculation
- * @par Inputs:
- * eight inputs:
- * @li x:A required Tensor(seq, batch, dim). Must be one of the following types: float16, float32.
- * @li real_mask:A optional Tensor(seq, batch). Must be one of the following types: float16, float32.
- * @li init_h:A optional Tensor(batch, state). Must be one of the following types: float16, float32.
- * @li init_c:A optional Tensor(batch, hidden). Must be one of the following types: float16, float32.
- * @li wx:A required Tensor(4*hidden, dim). Must be one of the following types: float16, float32.
- * @li wr:A required Tensor(4*hidden, state). Must be one of the following types: float16, float32.
- * @li bias:A optional Tensor(hidden). Must be one of the following types: float16, float32. The format must be ND.
- * @li project: A optional Tensor. Must be one of the following types: float16, float32.
- *
- * @par Outputs:
- *three outputs:
- *@li y:A Tensor. Must be one of the following types: float16, float32.
- *@li output_h:A Tensor. Must be one of the following types: float16, float32.
- *@li output_c:A Tensor. Must be one of the following types: float16, float32.
- *
- *@par Attributes:
- *time_major:An bool identifying the time major in the op. Default to false.
- * @par Restrictions:
- * Warning: THIS FUNCTION IS EXPERIMENTAL. Please do not use.
- */
- REG_OP(LSTMP)
- .INPUT(x, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(wx, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(bias, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(wr, TensorType({DT_FLOAT16, DT_FLOAT}))
- .INPUT(project, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(real_mask, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(init_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OPTIONAL_INPUT(init_c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(y, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(output_h, TensorType({DT_FLOAT16, DT_FLOAT}))
- .OUTPUT(output_c, TensorType({DT_FLOAT16, DT_FLOAT}))
- .ATTR(time_major, Bool, false)
- .OP_END_FACTORY_REG(LSTMP)
- } // namespace ge
-
- #endif // OPS_BUILT_IN_OP_PROTO_INC_RNN_H_
|