forked from mindspore-Ecosystem/mindspore
modify reduceminD and reducemaxD IR
This commit is contained in:
parent
c24252b2cc
commit
b53c974513
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@ -12,4 +12,4 @@
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url = https://github.com/protocolbuffers/protobuf.git
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[submodule "graphengine"]
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path = graphengine
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url = https://gitee.com/mindspore/graphengine.git
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url = https://gitee.com/ms-incubator/graphengine.git
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@ -1 +1 @@
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Subproject commit 5f763679fa33de1608d07f7651c6f16012b953ea
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Subproject commit 092c7a1f6548cac7d40e677af3498c3c49ea2bfd
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@ -189,7 +189,7 @@ std::unordered_map<std::string, OpAdapterDescPtr> &DfGraphConvertor::get_adpt_ma
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{string(kNameApplyMomentum), ADPT_DESC(ApplyMomentum)},
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{string(kNameMaxPool), ADPT_DESC(MaxPool)},
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{string(kNameAvgPool), ADPT_DESC(AvgPool)},
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{string(kNameTopK), ADPT_DESC(TopKV2)},
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{string(kNameTopK), ADPT_DESC(TopK)},
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{string(kNamePack), ADPT_DESC(Pack)},
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{string(kNameSplitD), ADPT_DESC(SplitD)},
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{string(kNameAllReduce), ADPT_DESC(HcomAllReduce)},
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@ -310,7 +310,7 @@ std::unordered_map<std::string, OpAdapterDescPtr> &DfGraphConvertor::get_adpt_ma
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{prim::kPrimMinimum->name(), ADPT_DESC(Minimum)},
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{prim::kPrimSelect->name(), ADPT_DESC(Select)},
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{string(kNameLessEqual), ADPT_DESC(LessEqual)},
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{prim::kPrimLogSoftmax->name(), ADPT_DESC(LogSoftmax)},
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{prim::kPrimLogSoftmax->name(), ADPT_DESC(LogSoftmaxV2)},
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{string(kNameTruncatedNormal), ADPT_DESC(TruncatedNormal)},
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{string(kNameStridedSliceGrad), ADPT_DESC(StridedSliceGrad)},
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{prim::kPrimGelu->name(), ADPT_DESC(Gelu)},
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@ -343,7 +343,7 @@ std::unordered_map<std::string, OpAdapterDescPtr> &DfGraphConvertor::get_adpt_ma
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{prim::kPrimMatMul->name(), ADPT_DESC(MatMul)},
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{string(kNameConst), ADPT_DESC(Constant, Const)},
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{string(kNameSoftmax), ADPT_DESC(Softmax)},
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{string(kNameSoftmax), ADPT_DESC(SoftmaxV2)},
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{string(kNameSoftmaxGrad), ADPT_DESC(SoftmaxGrad)},
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{string(kNameParam), ADPT_DESC(Data)},
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{string(kNameROIAlign), ADPT_DESC(ROIAlign)},
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@ -1017,8 +1017,8 @@ DfGraphConvertor &DfGraphConvertor::BuildGraph() {
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}
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}
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// set up dependices
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MS_LOG(DEBUG) << "set up dependices";
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// set up dependencies
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MS_LOG(DEBUG) << "set up dependencies";
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std::vector<AnfNodePtr> nodes = ::mindspore::TopoSort(anf_graph_->get_return());
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for (auto &it : nodes) {
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SetNodeInput(it);
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@ -1115,8 +1115,8 @@ void DfGraphConvertor::UpdateDataOpDesc(const AnfNodePtr &it, const OperatorPtr
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if (desc == nullptr) {
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MS_LOG(ERROR) << "Update data op descriptor failed! TensorDesc is null.";
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} else {
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(void)std::static_pointer_cast<Data>(op)->update_input_desc_data(*desc);
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(void)std::static_pointer_cast<Data>(op)->update_output_desc_out(*desc);
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(void)std::static_pointer_cast<Data>(op)->update_input_desc_x(*desc);
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(void)std::static_pointer_cast<Data>(op)->update_output_desc_y(*desc);
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}
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}
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@ -138,11 +138,10 @@ OUTPUT_MAP(ApplyMomentum) = {{0, OUTPUT_DESC(var)}};
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INPUT_MAP(Summary) = {{2, INPUT_DESC(x)}};
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ATTR_MAP(Summary) = EMPTY_ATTR_MAP;
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// data
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// Data
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INPUT_MAP(Data) = EMPTY_INPUT_MAP;
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ATTR_MAP(Data) = EMPTY_ATTR_MAP;
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// resnet ops in ge
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// BatchNorm
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INPUT_MAP(BatchNorm) = {{1, INPUT_DESC(x)},
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{2, INPUT_DESC(scale)},
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@ -194,9 +193,9 @@ OUTPUT_MAP(PRelu) = {{0, OUTPUT_DESC(y)}};
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// PReluGrad
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INPUT_MAP(PReluGrad) = {
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{1, INPUT_DESC(input_gradients)}, {2, INPUT_DESC(input_features)}, {3, INPUT_DESC(input_weights)}};
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{1, INPUT_DESC(grads)}, {2, INPUT_DESC(features)}, {3, INPUT_DESC(weights)}};
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ATTR_MAP(PReluGrad) = EMPTY_ATTR_MAP;
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OUTPUT_MAP(PReluGrad) = {{0, OUTPUT_DESC(output_backprops_dx)}, {1, OUTPUT_DESC(output_backprops_da)}};
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OUTPUT_MAP(PReluGrad) = {{0, OUTPUT_DESC(dx)}, {1, OUTPUT_DESC(da)}};
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// Sigmoid
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INPUT_MAP(Sigmoid) = {{1, INPUT_DESC(x)}};
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@ -241,12 +240,12 @@ ATTR_MAP(CumsumD) = {{"exclusive", ATTR_DESC(exclusive, AnyTraits<bool>())},
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{"reverse", ATTR_DESC(reverse, AnyTraits<bool>())}};
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OUTPUT_MAP(CumsumD) = {{0, OUTPUT_DESC(y)}};
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// softmax
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INPUT_MAP(Softmax) = {{1, INPUT_DESC(x)}};
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ATTR_MAP(Softmax) = {
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{"axis", ATTR_DESC(axis, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())},
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// SoftmaxV2
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INPUT_MAP(SoftmaxV2) = {{1, INPUT_DESC(x)}};
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ATTR_MAP(SoftmaxV2) = {
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{"axis", ATTR_DESC(axes, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())},
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};
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OUTPUT_MAP(Softmax) = {{0, OUTPUT_DESC(y)}};
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OUTPUT_MAP(SoftmaxV2) = {{0, OUTPUT_DESC(y)}};
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// SoftmaxGrad
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INPUT_MAP(SoftmaxGrad) = {{1, INPUT_DESC(softmax)}, {2, INPUT_DESC(grad_softmax)}};
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@ -269,21 +268,21 @@ ATTR_MAP(GatherV2) = EMPTY_ATTR_MAP;
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OUTPUT_MAP(GatherV2) = {{0, OUTPUT_DESC(y)}};
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// ReduceSum
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INPUT_MAP(ReduceSum) = {{1, INPUT_DESC(x)}, {2, INPUT_DESC(axis)}};
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INPUT_MAP(ReduceSum) = {{1, INPUT_DESC(x)}, {2, INPUT_DESC(axes)}};
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ATTR_MAP(ReduceSum) = {{"keep_dims", ATTR_DESC(keep_dims, AnyTraits<bool>())}};
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OUTPUT_MAP(ReduceSum) = {{0, OUTPUT_DESC(y)}};
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// ReduceSumD
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INPUT_MAP(ReduceSumD) = {{1, INPUT_DESC(x)}};
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INPUT_ATTR_MAP(ReduceSumD) = {
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{2, ATTR_DESC(axis, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
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{2, ATTR_DESC(axes, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
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ATTR_MAP(ReduceSumD) = {{"keep_dims", ATTR_DESC(keep_dims, AnyTraits<bool>())}};
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OUTPUT_MAP(ReduceSumD) = {{0, OUTPUT_DESC(y)}};
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// ReduceProdD
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INPUT_MAP(ReduceProdD) = {{1, INPUT_DESC(x)}};
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INPUT_ATTR_MAP(ReduceProdD) = {
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{2, ATTR_DESC(axis, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
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{2, ATTR_DESC(axes, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
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ATTR_MAP(ReduceProdD) = {{"keep_dims", ATTR_DESC(keep_dims, AnyTraits<bool>())}};
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OUTPUT_MAP(ReduceProdD) = {{0, OUTPUT_DESC(y)}};
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@ -294,7 +293,7 @@ ATTR_MAP(CumprodD) = {{"exclusive", ATTR_DESC(exclusive, AnyTraits<bool>())},
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{"reverse", ATTR_DESC(reverse, AnyTraits<bool>())}};
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OUTPUT_MAP(CumprodD) = {{0, OUTPUT_DESC(y)}};
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// SoftmaxCrossEntropyWithLogits/
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// SoftmaxCrossEntropyWithLogits
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INPUT_MAP(SoftmaxCrossEntropyWithLogits) = {{1, INPUT_DESC(features)}, {2, INPUT_DESC(labels)}};
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ATTR_MAP(SoftmaxCrossEntropyWithLogits) = EMPTY_ATTR_MAP;
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OUTPUT_MAP(SoftmaxCrossEntropyWithLogits) = {{0, OUTPUT_DESC(loss)}, {1, OUTPUT_DESC(backprop)}};
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@ -306,7 +305,7 @@ INPUT_ATTR_MAP(MeanGrad) = {{2, ATTR_DESC(mean_grad_output_shape_value, kOpForma
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ATTR_MAP(MeanGrad) = {{"mode", ATTR_DESC(mode, AnyTraits<int64_t>())}};
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INPUT_MAP(SliceD) = {{1, INPUT_DESC(x)}};
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INPUT_ATTR_MAP(SliceD) = {{2, ATTR_DESC(begin, AnyTraits<int>(), AnyTraits<std::vector<int64_t>>())},
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INPUT_ATTR_MAP(SliceD) = {{2, ATTR_DESC(offsets, AnyTraits<int>(), AnyTraits<std::vector<int64_t>>())},
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{3, ATTR_DESC(size, AnyTraits<int>(), AnyTraits<std::vector<int64_t>>())}};
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ATTR_MAP(SliceD) = EMPTY_ATTR_MAP;
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OUTPUT_MAP(SliceD) = {{0, OUTPUT_DESC(y)}};
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@ -401,42 +400,10 @@ ATTR_MAP(BoundingBoxDecode) = {
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};
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OUTPUT_MAP(BoundingBoxDecode) = {{0, OUTPUT_DESC(bboxes)}};
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#ifdef VALID_CODE
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// Less
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INPUT_MAP(Less) = {{1, INPUT_DESC(x)}, {2, INPUT_DESC(y)}};
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ATTR_MAP(Less) = EMPTY_ATTR_MAP;
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OUTPUT_MAP(Less) = {{0, OUTPUT_DESC(z)}};
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// Cast
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INPUT_MAP(Cast) = {{1, INPUT_DESC(x)}};
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INPUT_ATTR_MAP(Cast) = {{2, ATTR_DESC(dst_type, AnyTraits<GEType>())}};
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ATTR_MAP(Cast) = {{"Truncate", ATTR_DESC(truncate, AnyTraits<bool>())}};
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OUTPUT_MAP(Cast) = {{0, OUTPUT_DESC(y)}};
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// Minimum
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INPUT_MAP(Minimum) = {{1, INPUT_DESC(x)}, {2, INPUT_DESC(y)}};
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ATTR_MAP(Minimum) = {{"alpha", ATTR_DESC(alpha, AnyTraits<float>())}, {"beta", ATTR_DESC(beta, AnyTraits<float>())}};
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OUTPUT_MAP(Minimum) = {{0, OUTPUT_DESC(z)}};
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// Sub
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INPUT_MAP(Sub) = {{1, INPUT_DESC(x1)}, {2, INPUT_DESC(x2)}};
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ATTR_MAP(Sub) = {{"alpha", ATTR_DESC(alpha, AnyTraits<float>())}, {"beta", ATTR_DESC(beta, AnyTraits<float>())}};
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#endif
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// TopKV2
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INPUT_MAP(TopKV2) = {
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{1, INPUT_DESC(input)},
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{2, INPUT_DESC(k)},
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};
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ATTR_MAP(TopKV2) = {{"T", ATTR_DESC(T, AnyTraits<GEType>())}, {"sorted", ATTR_DESC(sorted, AnyTraits<bool>())}};
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OUTPUT_MAP(TopKV2) = {
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{0, OUTPUT_DESC(values)},
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{1, OUTPUT_DESC(indices)},
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};
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// TopK
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INPUT_MAP(TopK) = {{1, INPUT_DESC(x)}, {2, INPUT_DESC(k)}};
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ATTR_MAP(TopK) = {{"sorted", ATTR_DESC(sorted, AnyTraits<bool>())}};
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OUTPUT_MAP(TopK) = {{0, OUTPUT_DESC(values)}, {1, OUTPUT_DESC(indices)}};
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// Multiply
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INPUT_MAP(Multiply) = {{1, INPUT_DESC(x)}, {2, INPUT_DESC(y)}};
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@ -476,7 +443,7 @@ ATTR_MAP(Iou) = {{"mode", ATTR_DESC(mode, AnyTraits<std::string>())}};
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OUTPUT_MAP(Iou) = {{0, OUTPUT_DESC(overlap)}};
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// ResizeNearestNeighborD
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INPUT_MAP(ResizeNearestNeighborD) = {{1, INPUT_DESC(images)}};
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INPUT_MAP(ResizeNearestNeighborD) = {{1, INPUT_DESC(x)}};
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ATTR_MAP(ResizeNearestNeighborD) = {
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{"size", ATTR_DESC(size, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())},
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{"align_corners", ATTR_DESC(align_corners, AnyTraits<bool>())}};
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@ -506,17 +473,17 @@ ATTR_MAP(Relu6) = EMPTY_ATTR_MAP;
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OUTPUT_MAP(Relu6) = {{0, OUTPUT_DESC(activations)}};
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// Relu6Grad
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INPUT_MAP(Relu6Grad) = {{1, INPUT_DESC(dy)}, {2, INPUT_DESC(y)}};
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INPUT_MAP(Relu6Grad) = {{1, INPUT_DESC(features)}, {2, INPUT_DESC(gradients)}};
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ATTR_MAP(Relu6Grad) = EMPTY_ATTR_MAP;
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OUTPUT_MAP(Relu6Grad) = {{0, OUTPUT_DESC(z)}};
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OUTPUT_MAP(Relu6Grad) = {{0, OUTPUT_DESC(backprops)}};
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// ResizeBilinearGrad
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INPUT_MAP(ResizeBilinearGrad) = {{1, INPUT_DESC(grads)}, {2, INPUT_DESC(original_image)}};
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ATTR_MAP(ResizeBilinearGrad) = {{"align_corners", ATTR_DESC(align_corners, AnyTraits<bool>())}};
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OUTPUT_MAP(ResizeBilinearGrad) = {{0, OUTPUT_DESC(y)}};
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// ResizeBilinear
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INPUT_MAP(ResizeBilinearD) = {{1, INPUT_DESC(images)}};
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// ResizeBilinearD
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INPUT_MAP(ResizeBilinearD) = {{1, INPUT_DESC(x)}};
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ATTR_MAP(ResizeBilinearD) = {
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{"size", ATTR_DESC(size, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())},
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{"align_corners", ATTR_DESC(align_corners, AnyTraits<bool>())}};
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@ -539,9 +506,9 @@ OUTPUT_MAP(NMSWithMask) = {
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{0, OUTPUT_DESC(selected_boxes)}, {1, OUTPUT_DESC(selected_idx)}, {2, OUTPUT_DESC(selected_mask)}};
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// Unpack
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INPUT_MAP(Unpack) = {{1, INPUT_DESC(value)}};
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INPUT_MAP(Unpack) = {{1, INPUT_DESC(x)}};
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ATTR_MAP(Unpack) = {{"axis", ATTR_DESC(axis, AnyTraits<int>())}, {"num", ATTR_DESC(num, AnyTraits<int>())}};
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DYN_OUTPUT_MAP(Unpack) = {{0, DYN_OUTPUT_DESC(output)}};
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DYN_OUTPUT_MAP(Unpack) = {{0, DYN_OUTPUT_DESC(y)}};
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// ScatterNdUpdate
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INPUT_MAP(ScatterNdUpdate) = {{1, INPUT_DESC(var)}, {2, INPUT_DESC(indices)}, {3, INPUT_DESC(updates)}};
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@ -574,8 +541,8 @@ INPUT_MAP(SigmoidCrossEntropyWithLogitsGrad) = {
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ATTR_MAP(SigmoidCrossEntropyWithLogitsGrad) = EMPTY_ATTR_MAP;
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OUTPUT_MAP(SigmoidCrossEntropyWithLogitsGrad) = {{0, OUTPUT_DESC(gradient)}};
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// ScatterNd
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INPUT_MAP(ScatterNdD) = {{1, INPUT_DESC(indices)}, {2, INPUT_DESC(updates)}};
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// ScatterNdD
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INPUT_MAP(ScatterNdD) = {{1, INPUT_DESC(indices)}, {2, INPUT_DESC(x)}};
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INPUT_ATTR_MAP(ScatterNdD) = {
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{3, ATTR_DESC(shape, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
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ATTR_MAP(ScatterNdD) = EMPTY_ATTR_MAP;
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@ -587,7 +554,7 @@ ATTR_MAP(PadD) = {{"paddings", ATTR_DESC(paddings, AnyTraits<std::vector<std::ve
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OUTPUT_MAP(PadD) = {{0, OUTPUT_DESC(y)}};
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// GatherNd
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INPUT_MAP(GatherNd) = {{1, INPUT_DESC(x1)}, {2, INPUT_DESC(x2)}};
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INPUT_MAP(GatherNd) = {{1, INPUT_DESC(x)}, {2, INPUT_DESC(indices)}};
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ATTR_MAP(GatherNd) = EMPTY_ATTR_MAP;
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OUTPUT_MAP(GatherNd) = {{0, OUTPUT_DESC(y)}};
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@ -612,13 +579,13 @@ ATTR_MAP(ROIAlignGrad) = {
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// ArgMaxD
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INPUT_MAP(ArgMaxD) = {{1, INPUT_DESC(x)}};
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ATTR_MAP(ArgMaxD) = {{"axis", ATTR_DESC(dimension, AnyTraits<int>())},
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{"output_type", ATTR_DESC(output_type, AnyTraits<GEType>())}};
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{"output_type", ATTR_DESC(dtype, AnyTraits<GEType>())}};
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OUTPUT_MAP(ArgMaxD) = {{0, OUTPUT_DESC(y)}};
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// ArgMinD
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INPUT_MAP(ArgMinD) = {{1, INPUT_DESC(x)}};
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ATTR_MAP(ArgMinD) = {{"axis", ATTR_DESC(dimension, AnyTraits<int>())},
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{"output_type", ATTR_DESC(output_type, AnyTraits<GEType>())}};
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{"output_type", ATTR_DESC(dtype, AnyTraits<GEType>())}};
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OUTPUT_MAP(ArgMinD) = {{0, OUTPUT_DESC(y)}};
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// ArgMaxWithValue
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@ -634,14 +601,14 @@ ATTR_MAP(ArgMinWithValue) = {{"axis", ATTR_DESC(dimension, AnyTraits<int>())},
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OUTPUT_MAP(ArgMinWithValue) = {{0, OUTPUT_DESC(indice)}, {1, OUTPUT_DESC(values)}};
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// ReduceAll
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INPUT_MAP(ReduceAll) = {{1, INPUT_DESC(x)}, {2, INPUT_DESC(axis)}};
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INPUT_MAP(ReduceAll) = {{1, INPUT_DESC(x)}, {2, INPUT_DESC(axes)}};
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ATTR_MAP(ReduceAll) = {{"keep_dims", ATTR_DESC(keep_dims, AnyTraits<bool>())}};
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OUTPUT_MAP(ReduceAll) = {{0, OUTPUT_DESC(y)}};
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// ReduceMeanD
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INPUT_MAP(ReduceMeanD) = {{1, INPUT_DESC(x)}};
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INPUT_ATTR_MAP(ReduceMeanD) = {
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{2, ATTR_DESC(axis, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
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{2, ATTR_DESC(axes, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
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ATTR_MAP(ReduceMeanD) = {{"keep_dims", ATTR_DESC(keep_dims, AnyTraits<bool>())}};
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OUTPUT_MAP(ReduceMeanD) = {{0, OUTPUT_DESC(y)}};
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@ -708,11 +675,12 @@ INPUT_MAP(BiasAddGrad) = {{1, INPUT_DESC(x)}};
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ATTR_MAP(BiasAddGrad) = {{"data_format", ATTR_DESC(data_format, AnyTraits<std::string>())}};
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OUTPUT_MAP(BiasAddGrad) = {{0, OUTPUT_DESC(y)}};
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// maxpoolgrad
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// MaxPoolGrad
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INPUT_MAP(MaxPoolGrad) = {{1, INPUT_DESC(x1)}, {2, INPUT_DESC(x2)}, {3, INPUT_DESC(grad)}};
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ATTR_MAP(MaxPoolGrad) = {{"ksize", ATTR_DESC(ksize, AnyTraits<int>(), AnyTraits<std::vector<int64_t>>())},
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{"strides", ATTR_DESC(strides, AnyTraits<int>(), AnyTraits<std::vector<int64_t>>())},
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{"padding", ATTR_DESC(padding, AnyTraits<std::string>())}};
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{"padding", ATTR_DESC(padding, AnyTraits<std::string>())},
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{"data_format", ATTR_DESC(data_format, AnyTraits<std::string>())}};
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OUTPUT_MAP(MaxPoolGrad) = {{0, OUTPUT_DESC(y)}};
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// avgpoolgrad
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@ -739,28 +707,34 @@ ATTR_MAP(Conv2D) = {
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{"stride", ATTR_DESC(strides, "pad", AnyTraits<std::vector<int64_t>>())},
|
||||
{"pad_list", ATTR_DESC(pads, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())},
|
||||
{"dilation", ATTR_DESC(dilations, "pad", AnyTraits<std::vector<int64_t>>())},
|
||||
{"data_format", ATTR_DESC(data_format, AnyTraits<std::string>())},
|
||||
{"group", ATTR_DESC(groups, AnyTraits<int>())}
|
||||
};
|
||||
OUTPUT_MAP(Conv2D) = {{0, OUTPUT_DESC(y)}};
|
||||
|
||||
// Conv2DBackpropInputD
|
||||
INPUT_MAP(Conv2DBackpropInputD) = {{1, INPUT_DESC(out_backprop)}, {2, INPUT_DESC(filters)}};
|
||||
INPUT_MAP(Conv2DBackpropInputD) = {{1, INPUT_DESC(out_backprop)}, {2, INPUT_DESC(filter)}};
|
||||
INPUT_ATTR_MAP(Conv2DBackpropInputD) = {
|
||||
{3, ATTR_DESC(input_sizes, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
|
||||
{3, ATTR_DESC(input_size, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
|
||||
ATTR_MAP(Conv2DBackpropInputD) = {
|
||||
{"pad_list", ATTR_DESC(pads, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())},
|
||||
{"stride", ATTR_DESC(strides, "strides", AnyTraits<std::vector<int64_t>>())},
|
||||
{"stride", ATTR_DESC(strides, "pad", AnyTraits<std::vector<int64_t>>())},
|
||||
{"dilation", ATTR_DESC(dilations, "pad", AnyTraits<std::vector<int64_t>>())},
|
||||
{"data_format", ATTR_DESC(data_format, AnyTraits<std::string>())},
|
||||
{"group", ATTR_DESC(groups, AnyTraits<int>())}
|
||||
};
|
||||
OUTPUT_MAP(Conv2DBackpropInputD) = {{0, OUTPUT_DESC(y)}};
|
||||
|
||||
// Conv2DBackpropFilterD
|
||||
INPUT_MAP(Conv2DBackpropFilterD) = {{1, INPUT_DESC(out_backprop)}, {2, INPUT_DESC(x)}};
|
||||
INPUT_ATTR_MAP(Conv2DBackpropFilterD) = {
|
||||
{3, ATTR_DESC(filter_sizes, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
|
||||
{3, ATTR_DESC(filter_size, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
|
||||
ATTR_MAP(Conv2DBackpropFilterD) = {
|
||||
{"pad_list", ATTR_DESC(pads, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())},
|
||||
{"stride", ATTR_DESC(strides, "strides", AnyTraits<std::vector<int64_t>>())},
|
||||
{"stride", ATTR_DESC(strides, "pad", AnyTraits<std::vector<int64_t>>())},
|
||||
{"dilation", ATTR_DESC(dilations, "pad", AnyTraits<std::vector<int64_t>>())},
|
||||
{"data_format", ATTR_DESC(data_format, AnyTraits<std::string>())},
|
||||
{"group", ATTR_DESC(groups, AnyTraits<int>())}
|
||||
};
|
||||
OUTPUT_MAP(Conv2DBackpropFilterD) = {{0, OUTPUT_DESC(y)}};
|
||||
|
||||
|
@ -798,8 +772,8 @@ OUTPUT_MAP(DepthwiseConv2DBackpropFilterD) = {{0, OUTPUT_DESC(filter_grad)}};
|
|||
|
||||
// MatMul
|
||||
INPUT_MAP(MatMul) = {{1, INPUT_DESC(x1)}, {2, INPUT_DESC(x2)}};
|
||||
ATTR_MAP(MatMul) = {{"transpose_a", ATTR_DESC(transpose_a, AnyTraits<bool>())},
|
||||
{"transpose_b", ATTR_DESC(transpose_b, AnyTraits<bool>())}};
|
||||
ATTR_MAP(MatMul) = {{"transpose_a", ATTR_DESC(transpose_x1, AnyTraits<bool>())},
|
||||
{"transpose_b", ATTR_DESC(transpose_x2, AnyTraits<bool>())}};
|
||||
OUTPUT_MAP(MatMul) = {{0, OUTPUT_DESC(y)}};
|
||||
|
||||
// Merge
|
||||
|
@ -846,10 +820,10 @@ ATTR_MAP(Sub) = EMPTY_ATTR_MAP;
|
|||
OUTPUT_MAP(Sub) = {{0, OUTPUT_DESC(y)}};
|
||||
|
||||
// SplitD
|
||||
INPUT_MAP(SplitD) = {{1, INPUT_DESC(value)}};
|
||||
INPUT_MAP(SplitD) = {{1, INPUT_DESC(x)}};
|
||||
ATTR_MAP(SplitD) = {{"axis", ATTR_DESC(split_dim, AnyTraits<int>())},
|
||||
{"output_num", ATTR_DESC(num_split, AnyTraits<int>())}};
|
||||
DYN_OUTPUT_MAP(SplitD) = {{0, DYN_OUTPUT_DESC(output)}};
|
||||
DYN_OUTPUT_MAP(SplitD) = {{0, DYN_OUTPUT_DESC(y)}};
|
||||
|
||||
// Neg
|
||||
INPUT_MAP(Neg) = {{1, INPUT_DESC(x)}};
|
||||
|
@ -876,12 +850,12 @@ OUTPUT_MAP(Pack) = {{0, OUTPUT_DESC(y)}};
|
|||
|
||||
// ConcatD
|
||||
INPUT_MAP(ConcatD) = EMPTY_INPUT_MAP;
|
||||
DYN_INPUT_MAP(ConcatD) = {{1, DYN_INPUT_DESC(input_values)}};
|
||||
DYN_INPUT_MAP(ConcatD) = {{1, DYN_INPUT_DESC(x)}};
|
||||
ATTR_MAP(ConcatD) = {
|
||||
{"axis", ATTR_DESC(concat_dim, AnyTraits<int>())},
|
||||
{"inputNums", ATTR_DESC(N, AnyTraits<int>())},
|
||||
};
|
||||
OUTPUT_MAP(ConcatD) = {{0, OUTPUT_DESC(output_data)}};
|
||||
OUTPUT_MAP(ConcatD) = {{0, OUTPUT_DESC(y)}};
|
||||
|
||||
// Less
|
||||
INPUT_MAP(Less) = {{1, INPUT_DESC(x1)}, {2, INPUT_DESC(x2)}};
|
||||
|
@ -916,14 +890,14 @@ OUTPUT_MAP(TanhGrad) = {{0, OUTPUT_DESC(z)}};
|
|||
// ReduceMinD
|
||||
INPUT_MAP(ReduceMinD) = {{1, INPUT_DESC(x)}};
|
||||
INPUT_ATTR_MAP(ReduceMinD) = {
|
||||
{2, ATTR_DESC(axis, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
|
||||
{2, ATTR_DESC(axes, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
|
||||
ATTR_MAP(ReduceMinD) = {{"keep_dims", ATTR_DESC(keep_dims, AnyTraits<bool>())}};
|
||||
OUTPUT_MAP(ReduceMinD) = {{0, OUTPUT_DESC(y)}};
|
||||
|
||||
// ReduceMaxD
|
||||
INPUT_MAP(ReduceMaxD) = {{1, INPUT_DESC(x)}};
|
||||
INPUT_ATTR_MAP(ReduceMaxD) = {
|
||||
{2, ATTR_DESC(axis, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
|
||||
{2, ATTR_DESC(axes, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
|
||||
ATTR_MAP(ReduceMaxD) = {{"keep_dims", ATTR_DESC(keep_dims, AnyTraits<bool>())}};
|
||||
OUTPUT_MAP(ReduceMaxD) = {{0, OUTPUT_DESC(y)}};
|
||||
|
||||
|
@ -1008,11 +982,11 @@ INPUT_MAP(LessEqual) = {{1, INPUT_DESC(x1)}, {2, INPUT_DESC(x2)}};
|
|||
ATTR_MAP(LessEqual) = EMPTY_ATTR_MAP;
|
||||
OUTPUT_MAP(LessEqual) = {{0, OUTPUT_DESC(y)}};
|
||||
|
||||
// LogSoftmax
|
||||
INPUT_MAP(LogSoftmax) = {{1, INPUT_DESC(logits)}};
|
||||
ATTR_MAP(LogSoftmax) = {
|
||||
{"axis", ATTR_DESC(axis, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
|
||||
OUTPUT_MAP(LogSoftmax) = {{0, OUTPUT_DESC(logsoftmax)}};
|
||||
// LogSoftmaxV2
|
||||
INPUT_MAP(LogSoftmaxV2) = {{1, INPUT_DESC(logits)}};
|
||||
ATTR_MAP(LogSoftmaxV2) = {
|
||||
{"axis", ATTR_DESC(axes, AnyTraits<std::vector<int64_t>>(), AnyTraits<std::vector<int64_t>>())}};
|
||||
OUTPUT_MAP(LogSoftmaxV2) = {{0, OUTPUT_DESC(logsoftmax)}};
|
||||
|
||||
// RandomChoiceWithMask
|
||||
INPUT_MAP(RandomChoiceWithMask) = {{1, INPUT_DESC(x)}};
|
||||
|
@ -1094,8 +1068,8 @@ OUTPUT_MAP(LayerNormGrad) = {{0, OUTPUT_DESC(pd_x)}, {1, OUTPUT_DESC(pd_gamma)},
|
|||
|
||||
// BatchMatMul
|
||||
INPUT_MAP(BatchMatMul) = {{1, INPUT_DESC(x1)}, {2, INPUT_DESC(x2)}};
|
||||
ATTR_MAP(BatchMatMul) = {{"transpose_x1", ATTR_DESC(adj_x, AnyTraits<bool>())},
|
||||
{"transpose_x2", ATTR_DESC(adj_y, AnyTraits<bool>())}};
|
||||
ATTR_MAP(BatchMatMul) = {{"transpose_x1", ATTR_DESC(adj_x1, AnyTraits<bool>())},
|
||||
{"transpose_x2", ATTR_DESC(adj_x2, AnyTraits<bool>())}};
|
||||
OUTPUT_MAP(BatchMatMul) = {{0, OUTPUT_DESC(y)}};
|
||||
|
||||
// DropoutDoMask
|
||||
|
|
|
@ -209,8 +209,8 @@ DECLARE_OP_USE_OUTPUT(Merge)
|
|||
DECLARE_OP_ADAPTER(Switch)
|
||||
DECLARE_OP_USE_OUTPUT(Switch)
|
||||
|
||||
DECLARE_OP_ADAPTER(TopKV2)
|
||||
DECLARE_OP_USE_OUTPUT(TopKV2)
|
||||
DECLARE_OP_ADAPTER(TopK)
|
||||
DECLARE_OP_USE_OUTPUT(TopK)
|
||||
|
||||
DECLARE_OP_ADAPTER(RealDiv)
|
||||
DECLARE_OP_USE_OUTPUT(RealDiv)
|
||||
|
@ -260,8 +260,8 @@ DECLARE_OP_ADAPTER(Select)
|
|||
DECLARE_OP_USE_OUTPUT(Select)
|
||||
DECLARE_OP_ADAPTER(LessEqual)
|
||||
DECLARE_OP_USE_OUTPUT(LessEqual)
|
||||
DECLARE_OP_ADAPTER(LogSoftmax)
|
||||
DECLARE_OP_USE_OUTPUT(LogSoftmax)
|
||||
DECLARE_OP_ADAPTER(LogSoftmaxV2)
|
||||
DECLARE_OP_USE_OUTPUT(LogSoftmaxV2)
|
||||
DECLARE_OP_ADAPTER(TruncatedNormal)
|
||||
DECLARE_OP_USE_OUTPUT(TruncatedNormal)
|
||||
DECLARE_OP_ADAPTER(StridedSliceGrad)
|
||||
|
@ -391,8 +391,8 @@ DECLARE_OP_ADAPTER(Sigmoid)
|
|||
DECLARE_OP_USE_OUTPUT(Sigmoid)
|
||||
DECLARE_OP_ADAPTER(SigmoidGrad)
|
||||
DECLARE_OP_USE_OUTPUT(SigmoidGrad)
|
||||
DECLARE_OP_ADAPTER(Softmax)
|
||||
DECLARE_OP_USE_OUTPUT(Softmax)
|
||||
DECLARE_OP_ADAPTER(SoftmaxV2)
|
||||
DECLARE_OP_USE_OUTPUT(SoftmaxV2)
|
||||
DECLARE_OP_ADAPTER(SoftmaxGrad)
|
||||
DECLARE_OP_USE_OUTPUT(SoftmaxGrad)
|
||||
DECLARE_OP_ADAPTER(Greater)
|
||||
|
|
Loading…
Reference in New Issue