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convert.cc 73 kB

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  1. /**
  2. * Copyright 2019 Huawei Technologies Co., Ltd
  3. *
  4. * Licensed under the Apache License, Version 2.0 (the "License");
  5. * you may not use this file except in compliance with the License.
  6. * You may obtain a copy of the License at
  7. *
  8. * http://www.apache.org/licenses/LICENSE-2.0
  9. *
  10. * Unless required by applicable law or agreed to in writing, software
  11. * distributed under the License is distributed on an "AS IS" BASIS,
  12. * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  13. * See the License for the specific language governing permissions and
  14. * limitations under the License.
  15. */
  16. #include "transform/convert.h"
  17. #include <inttypes.h>
  18. #include <algorithm>
  19. #include <stack>
  20. #include "utils/utils.h"
  21. #include "operator/ops.h"
  22. #include "utils/log_adapter.h"
  23. #include "utils/graph_utils.h"
  24. #include "utils/symbolic.h"
  25. #include "utils/config_manager.h"
  26. #include "utils/convert_utils.h"
  27. #include "./common.h"
  28. namespace mindspore {
  29. namespace transform {
  30. using std::endl;
  31. #define ADPT_DESC_ONE(T) std::make_shared<OpAdapterDesc>(std::make_shared<OpAdapter<T>>())
  32. #define ADPT_DESC_TWO(T, I) \
  33. std::make_shared<OpAdapterDesc>(std::make_shared<OpAdapter<T>>(), std::make_shared<OpAdapter<I>>())
  34. #define GET_MACRO(_1, _2, DESC, ...) DESC
  35. #define ADPT_DESC(...) GET_MACRO(__VA_ARGS__, ADPT_DESC_TWO, ADPT_DESC_ONE, ...)(__VA_ARGS__)
  36. using ge::Operator;
  37. using mindspore::kAnyValue;
  38. using std::make_shared;
  39. using std::shared_ptr;
  40. using std::string;
  41. using std::vector;
  42. const char kNameCustomOp[] = "CustomOp";
  43. const char kNameConst[] = "Const";
  44. const char kNameParam[] = "parameter";
  45. const char kNameRandomUniform[] = "RandomUniform";
  46. const char kNameSimpleMean[] = "SimpleMean";
  47. const char kNameSimpleMeanGrad[] = "SimpleMeanGrad";
  48. const char kNameAllReduce[] = "AllReduce";
  49. const char kNameBroadcast[] = "Broadcast";
  50. const char kNameAllgather[] = "AllGather";
  51. const char kNameReduceScatter[] = "ReduceScatter";
  52. const char kNameReduceSum[] = "ReduceSum";
  53. const char kNameIsFinite[] = "isFinite";
  54. const char kNameReciprocal[] = "Reciprocal";
  55. const char kNameRsqrt[] = "Rsqrt";
  56. const char kNameRsqrtGrad[] = "RsqrtGrad";
  57. const char kNameSqrt[] = "Sqrt";
  58. const char kNameSquare[] = "Square";
  59. const char kNameSquaredDifference[] = "SquaredDifference";
  60. const char kNamePow[] = "Pow";
  61. const char kNameBatchMatMul[] = "BatchMatMul";
  62. const char kNameStridedSlice[] = "StridedSlice";
  63. const char kNameStridedSliceGrad[] = "StridedSliceGrad";
  64. const char kNameExpandDims[] = "ExpandDims";
  65. const char kNameLog[] = "Log";
  66. const char kNameLogicalAnd[] = "LogicalAnd";
  67. const char kNameLogicalNot[] = "LogicalNot";
  68. const char kNameLogicalOr[] = "LogicalOr";
  69. const char kNameExp[] = "Exp";
  70. const char kNameLessEqual[] = "LessEqual";
  71. const char kNameGreaterEqual[] = "GreaterEqual";
  72. const char kNameEqual[] = "Equal";
  73. const char kNameNotEqual[] = "NotEqual";
  74. const char kNameFlattenGrad[] = "FlattenGrad";
  75. const char kNameConvolution[] = "Convolution";
  76. const char kNameBiasAdd[] = "BiasAdd";
  77. const char kNameMaxPoolGrad[] = "MaxPoolGrad";
  78. const char kNameAvgPoolGrad[] = "AvgPoolGrad";
  79. const char kNameMaxPoolGradWithArgmax[] = "MaxPoolGradWithArgmax";
  80. const char kNameApplyMomentum[] = "ApplyMomentum";
  81. const char kNameDropoutDoMask[] = "DropoutDoMask";
  82. const char kNameResizeBilinear[] = "ResizeBilinear";
  83. const char kNameResizeBilinearGrad[] = "ResizeBilinearGrad";
  84. const char kNameZerosLike[] = "ZerosLike";
  85. const char kNameOnesLike[] = "OnesLike";
  86. const char kNameTruncatedNormal[] = "TruncatedNormal";
  87. const char kNameSpaceToBatchNd[] = "SpaceToBatchNd";
  88. const char kNameConfusionMatrix[] = "ConfusionMatrix";
  89. const char kNameResizeNearestNeighborD[] = "ResizeNearestNeighbor";
  90. const char kNameResizeNearestNeighborGrad[] = "ResizeNearestNeighborGrad";
  91. const char kNameApplyAdam[] = "Adam";
  92. const char kNameExtractImagePatches[] = "ExtractImagePatches";
  93. const char kNameReLU6[] = "ReLU6";
  94. const char kNameReLU6Grad[] = "ReLU6Grad";
  95. const char kNameElu[] = "Elu";
  96. const char kNameEluGrad[] = "EluGrad";
  97. const char kNameScatterNdUpdate[] = "ScatterNdUpdate";
  98. const char kNameNMSWithMask[] = "NMSWithMask";
  99. const char kNameCheckValid[] = "CheckValid";
  100. const char kNameSmoothL1Loss[] = "SmoothL1Loss";
  101. const char kNameSmoothL1LossGrad[] = "SmoothL1LossGrad";
  102. const char kNameSGD[] = "SGD";
  103. const char kNameSigmoidCrossEntropyWithLogits[] = "SigmoidCrossEntropyWithLogits";
  104. const char kNameSigmoidCrossEntropyWithLogitsGrad[] = "SigmoidCrossEntropyWithLogitsGrad";
  105. const char kNameScatterNdD[] = "ScatterNd";
  106. const char kNamePadD[] = "Pad";
  107. const char kNameMirrorPad[] = "MirrorPad";
  108. const char kNameMirrorPadGrad[] = "MirrorPadGrad";
  109. const char kNameGatherNd[] = "GatherNd";
  110. const char kNameArgmax[] = "Argmax";
  111. const char kNameArgmin[] = "Argmin";
  112. const char kNameArgMaxWithValue[] = "ArgMaxWithValue";
  113. const char kNameArgMinWithValue[] = "ArgMinWithValue";
  114. const char kNameReduceProd[] = "ReduceProd";
  115. const char kNameCumProd[] = "CumProd";
  116. const char kNameDiagpart[] = "Diagpart";
  117. const char kNameSplitD[] = "Split";
  118. const char kNameBatchToSpaceNd[] = "BatchToSpaceNd";
  119. const char kNameFloor[] = "Floor";
  120. const char kNameNPUGetFloatStatus[] = "NPUGetFloatStatus";
  121. const char kNameAssignAdd[] = "AssignAdd";
  122. const char kNameAssignSub[] = "AssignSub";
  123. const char kNameNPUAllocFloatStatus[] = "NPUAllocFloatStatus";
  124. const char kNameNPUClearFloatStatus[] = "NPUClearFloatStatus";
  125. const char kNameReshape[] = "Reshape";
  126. const char kNameRealDiv[] = "RealDiv";
  127. const char kNameTile[] = "Tile";
  128. const char kNameCos[] = "Cos";
  129. const char kNameACos[] = "ACos";
  130. const char kNameACosGrad[] = "ACosGrad";
  131. const char kNameFloorDiv[] = "FloorDiv";
  132. const char kNameSin[] = "Sin";
  133. const char kNamePrelu[] = "PReLU";
  134. const char kNamePreluGrad[] = "PReLUGrad";
  135. const char kNameSigmoid[] = "Sigmoid";
  136. const char kNameSigmoidGrad[] = "SigmoidGrad";
  137. const char kNameL2Normalize[] = "L2Normalize";
  138. const char kNameL2NormalizeGrad[] = "L2NormalizeGrad";
  139. const char kNameSoftmax[] = "Softmax";
  140. const char kNameIOU[] = "IOU";
  141. const char kNameBoundingBoxDecode[] = "BoundingBoxDecode";
  142. const char kNameBoundingBoxEncode[] = "BoundingBoxEncode";
  143. const char kNameSlice[] = "Slice";
  144. const char kNameAddN[] = "AddN";
  145. const char kNameLess[] = "Less";
  146. const char kNameGreater[] = "Greater";
  147. const char kNamePack[] = "Pack";
  148. const char kNameUnpack[] = "Unpack";
  149. const char kNameMerge[] = "Merge";
  150. const char kNameGeSwitch[] = "GeSwitch";
  151. const char kNameHuberLoss[] = "HuberLoss";
  152. const char kNameCumSum[] = "CumSum";
  153. const char kNameHuberLossGrad[] = "HuberLossGrad";
  154. const char kNameSparseSoftmaxCrossEntropy[] = "SparseSoftmaxCrossEntropy";
  155. const char kNameSparseSoftmaxCrossEntropyGrad[] = "SparseSoftmaxCrossEntropyGrad";
  156. const char kNameTopK[] = "TopK";
  157. const char kNameSoftmaxGrad[] = "SoftmaxGrad";
  158. const char kNameMaxPool[] = "MaxPool";
  159. const char kNameAvgPool[] = "AvgPool";
  160. const char kNameMaxPoolWithArgmax[] = "MaxPoolWithArgmax";
  161. const char kNameBatchNorm[] = "BatchNorm";
  162. const char kNameBatchNormGrad[] = "BatchNormGrad";
  163. const char kNameROIAlign[] = "ROIAlign";
  164. const char kNameROIAlignGrad[] = "ROIAlignGrad";
  165. const char kNameRandomChoiceWithMask[] = "RandomChoiceWithMask";
  166. const char kNameAbs[] = "Abs";
  167. const char kNameAbsGrad[] = "AbsGrad";
  168. const char kNameBinaryCrossEntropy[] = "BinaryCrossEntropy";
  169. const char kNameBinaryCrossEntropyGrad[] = "BinaryCrossEntropyGrad";
  170. const char kNameSparseApplyAdagrad[] = "SparseApplyAdagrad";
  171. const char kNameAcosh[] = "Acosh";
  172. const char kNameFloorMod[] = "FloorMod";
  173. const char kNameSpaceToDepth[] = "SpaceToDepth";
  174. const char kNameDepthToSpace[] = "DepthToSpace";
  175. const char kNameSign[] = "Sign";
  176. const char kNameLARSUpdate[] = "LARSUpdate";
  177. const char kNameRound[] = "Round";
  178. const char kNamePrint[] = "Print";
  179. const char kNameApplyFtrl[] = "ApplyFtrl";
  180. const char kNameDiag[] = "Diag";
  181. const char kNameDiagPart[] = "DiagPart";
  182. const char kNameSpaceToBatch[] = "SpaceToBatch";
  183. const char kNameBatchToSpace[] = "BatchToSpace";
  184. const char kNameAtan2[] = "Atan2";
  185. const char kNameApplyRMSProp[] = "ApplyRMSProp";
  186. const char kNameApplyCenteredRMSProp[] = "ApplyCenteredRMSProp";
  187. // -----------------OpAdapter initialization--------------
  188. std::unordered_map<std::string, OpAdapterDescPtr> &DfGraphConvertor::get_adpt_map() {
  189. static std::unordered_map<std::string, OpAdapterDescPtr> adpt_map = {
  190. {string(kNameCustomOp), ADPT_DESC(Operator)},
  191. {string(kNameIOU), ADPT_DESC(Iou)},
  192. {string(kNameGreaterEqual), ADPT_DESC(GreaterEqual)},
  193. {string(kNameSlice), ADPT_DESC(SliceD)},
  194. {string(kNameApplyMomentum), ADPT_DESC(ApplyMomentum)},
  195. {string(kNameMaxPool), ADPT_DESC(MaxPool)},
  196. {string(kNameAvgPool), ADPT_DESC(AvgPool)},
  197. {string(kNameMaxPoolWithArgmax), ADPT_DESC(MaxPoolWithArgmax)},
  198. {string(kNameTopK), ADPT_DESC(TopKV2)},
  199. {string(kNamePack), ADPT_DESC(Pack)},
  200. {string(kNameUnpack), ADPT_DESC(Unpack)},
  201. {string(kNameSplitD), ADPT_DESC(SplitD)},
  202. {string(kNameAllReduce), ADPT_DESC(HcomAllReduce)},
  203. {string(kNameBroadcast), ADPT_DESC(HcomBroadcast)},
  204. {string(kNameAllgather), ADPT_DESC(HcomAllGather)},
  205. {string(kNameReduceScatter), ADPT_DESC(HcomReduceScatter)},
  206. {string(kNameMaxPoolGrad), ADPT_DESC(MaxPoolGrad)},
  207. {string(kNameAvgPoolGrad), ADPT_DESC(AvgPoolGrad)},
  208. {string(kNameMaxPoolGradWithArgmax), ADPT_DESC(MaxPoolGradWithArgmax)},
  209. {string(kNameExtractImagePatches), ADPT_DESC(ExtractImagePatches)},
  210. {prim::kPrimAssign->name(), ADPT_DESC(Assign)},
  211. {prim::kPrimStateSetItem->name(), ADPT_DESC(Assign)},
  212. {prim::kPrimReluGrad->name(), ADPT_DESC(ReluGrad)},
  213. {prim::kPrimFusedBatchNormGrad->name(), ADPT_DESC(FusedBatchNormGrad)},
  214. {prim::kPrimBiasAddGrad->name(), ADPT_DESC(BiasAddGrad)},
  215. {prim::kPrimConv2D->name(), ADPT_DESC(Conv2D)},
  216. {prim::kPrimConv2DBackpropInput->name(), ADPT_DESC(Conv2DBackpropInputD)},
  217. {prim::kPrimConv2DBackpropFilter->name(), ADPT_DESC(Conv2DBackpropFilterD)},
  218. {prim::kPrimDepthwiseConv2dNative->name(), ADPT_DESC(DepthwiseConv2D)},
  219. {prim::kPrimDepthwiseConv2dNativeBackpropFilter->name(), ADPT_DESC(DepthwiseConv2DBackpropFilterD)},
  220. {prim::kPrimDepthwiseConv2dNativeBackpropInput->name(), ADPT_DESC(DepthwiseConv2DBackpropInputD)},
  221. {prim::kPrimFusedBatchNorm->name(), ADPT_DESC(FusedBatchNorm, BatchNorm)},
  222. {string(kNameBatchNorm), ADPT_DESC(BatchNorm)},
  223. {string(kNameBatchNormGrad), ADPT_DESC(BatchNormGrad)},
  224. {string(kNameReshape), ADPT_DESC(Reshape)},
  225. {string(kNameFlattenGrad), ADPT_DESC(Reshape)},
  226. {prim::kPrimFlatten->name(), ADPT_DESC(Flatten)},
  227. {string(kNameAddN), ADPT_DESC(AddN)},
  228. {string(kNameLess), ADPT_DESC(Less)},
  229. {string(kNameSqrt), ADPT_DESC(Sqrt)},
  230. {string(kNameRsqrt), ADPT_DESC(Rsqrt)},
  231. {string(kNameSquare), ADPT_DESC(Square)},
  232. {prim::kPrimTanh->name(), ADPT_DESC(Tanh)},
  233. {prim::kPrimTanhGrad->name(), ADPT_DESC(TanhGrad)},
  234. {string(kNameResizeNearestNeighborD), ADPT_DESC(ResizeNearestNeighborD)},
  235. {string(kNameResizeNearestNeighborGrad), ADPT_DESC(ResizeNearestNeighborGrad)},
  236. {string(kNameApplyAdam), ADPT_DESC(ApplyAdam)},
  237. {string(kNameReLU6), ADPT_DESC(Relu6)},
  238. {string(kNameReLU6Grad), ADPT_DESC(Relu6Grad)},
  239. {string(kNameElu), ADPT_DESC(Elu)},
  240. {string(kNameEluGrad), ADPT_DESC(EluGrad)},
  241. {string(kNameResizeBilinearGrad), ADPT_DESC(ResizeBilinearGrad)},
  242. {string(kNameResizeBilinear), ADPT_DESC(ResizeBilinearD)},
  243. {string(kNameZerosLike), ADPT_DESC(ZerosLike)},
  244. {string(kNameOnesLike), ADPT_DESC(OnesLike)},
  245. {string(kNameScatterNdUpdate), ADPT_DESC(ScatterNdUpdate)},
  246. {string(kNameNMSWithMask), ADPT_DESC(NMSWithMask)},
  247. {string(kNameCheckValid), ADPT_DESC(CheckValid)},
  248. {string(kNameSmoothL1Loss), ADPT_DESC(SmoothL1Loss)},
  249. {string(kNameSmoothL1LossGrad), ADPT_DESC(SmoothL1LossGrad)},
  250. {string(kNameSigmoidCrossEntropyWithLogits), ADPT_DESC(SigmoidCrossEntropyWithLogits)},
  251. {string(kNameSigmoidCrossEntropyWithLogitsGrad), ADPT_DESC(SigmoidCrossEntropyWithLogitsGrad)},
  252. {string(kNameScatterNdD), ADPT_DESC(ScatterNdD)},
  253. {string(kNamePadD), ADPT_DESC(PadD)},
  254. {string(kNameMirrorPad), ADPT_DESC(MirrorPad)},
  255. {string(kNameMirrorPadGrad), ADPT_DESC(MirrorPadGrad)},
  256. {string(kNameGatherNd), ADPT_DESC(GatherNd)},
  257. {string(kNameArgmax), ADPT_DESC(ArgMaxD)},
  258. {string(kNameArgmin), ADPT_DESC(ArgMinD)},
  259. {string(kNameArgMaxWithValue), ADPT_DESC(ArgMaxWithValue)},
  260. {string(kNameArgMinWithValue), ADPT_DESC(ArgMinWithValue)},
  261. {prim::kPrimReduceSum->name(), ADPT_DESC(ReduceSumD)},
  262. {prim::kPrimReduceMean->name(), ADPT_DESC(ReduceMeanD)},
  263. {prim::kPrimReduceAll->name(), ADPT_DESC(ReduceAll)},
  264. {prim::kPrimReduceMin->name(), ADPT_DESC(ReduceMinD)},
  265. {prim::kPrimReduceMax->name(), ADPT_DESC(ReduceMaxD)},
  266. {string(kNameLARSUpdate), ADPT_DESC(LarsV2Update)},
  267. {string(kNameReduceProd), ADPT_DESC(ReduceProdD)},
  268. {string(kNameCumProd), ADPT_DESC(CumprodD)},
  269. {string(kNameMerge), ADPT_DESC(Merge)},
  270. {string(kNameGeSwitch), ADPT_DESC(Switch)},
  271. {string(kNameCumSum), ADPT_DESC(CumsumD)},
  272. {prim::kPrimMul->name(), ADPT_DESC(Mul)},
  273. {string(kNameTile), ADPT_DESC(TileD)},
  274. {prim::kPrimOneHot->name(), ADPT_DESC(OneHot)},
  275. {prim::kPrimGatherV2->name(), ADPT_DESC(GatherV2D)},
  276. {string(kNameCos), ADPT_DESC(Cos)},
  277. {string(kNameACos), ADPT_DESC(Acos)},
  278. {string(kNameACosGrad), ADPT_DESC(AcosGrad)},
  279. {string(kNameFloor), ADPT_DESC(Floor)},
  280. {string(kNameFloorDiv), ADPT_DESC(FloorDiv)},
  281. {string(kNameSin), ADPT_DESC(Sin)},
  282. {string(kNameExp), ADPT_DESC(Exp)},
  283. {string(kNameBoundingBoxEncode), ADPT_DESC(BoundingBoxEncode)},
  284. {string(kNameBoundingBoxDecode), ADPT_DESC(BoundingBoxDecode)},
  285. {prim::kPrimCast->name(), ADPT_DESC(Cast)},
  286. {string(kNameRealDiv), ADPT_DESC(RealDiv)},
  287. {prim::kPrimNeg->name(), ADPT_DESC(Neg)},
  288. {prim::kPrimTranspose->name(), ADPT_DESC(TransposeD)},
  289. {prim::kPrimSub->name(), ADPT_DESC(Sub)},
  290. {string(kNameReciprocal), ADPT_DESC(Reciprocal)},
  291. {prim::kPrimDropoutGenMask->name(), ADPT_DESC(DropOutGenMask)},
  292. {string(kNameAssignAdd), ADPT_DESC(AssignAdd)},
  293. {string(kNameAssignSub), ADPT_DESC(AssignSub)},
  294. {prim::kPrimConcat->name(), ADPT_DESC(ConcatD)},
  295. {string(kNamePow), ADPT_DESC(Pow)},
  296. {string(kNameExp), ADPT_DESC(Exp)},
  297. {string(kNameEqual), ADPT_DESC(Equal)},
  298. {string(kNameNotEqual), ADPT_DESC(NotEqual)},
  299. {string(kNameLog), ADPT_DESC(Log)},
  300. {string(kNameLogicalAnd), ADPT_DESC(LogicalAnd)},
  301. {string(kNameLogicalNot), ADPT_DESC(LogicalNot)},
  302. {string(kNameLogicalOr), ADPT_DESC(LogicalOr)},
  303. {string(kNameGreater), ADPT_DESC(Greater)},
  304. {prim::kPrimMaximum->name(), ADPT_DESC(Maximum)},
  305. {prim::kPrimRelu->name(), ADPT_DESC(Relu)},
  306. {string(kNamePrelu), ADPT_DESC(PRelu)},
  307. {string(kNamePreluGrad), ADPT_DESC(PReluGrad)},
  308. {string(kNameSigmoid), ADPT_DESC(Sigmoid)},
  309. {string(kNameSigmoidGrad), ADPT_DESC(SigmoidGrad)},
  310. {string(kNameSGD), ADPT_DESC(SGD)},
  311. {prim::kPrimLogSoftmaxGrad->name(), ADPT_DESC(LogSoftmaxGrad)},
  312. {prim::kPrimMaximumGrad->name(), ADPT_DESC(MaximumGrad)},
  313. {prim::kPrimMinimumGrad->name(), ADPT_DESC(MinimumGrad)},
  314. {string(kNameL2Normalize), ADPT_DESC(L2Normalize)},
  315. {string(kNameL2NormalizeGrad), ADPT_DESC(L2NormalizeGrad)},
  316. {prim::kPrimMinimum->name(), ADPT_DESC(Minimum)},
  317. {prim::kPrimSelect->name(), ADPT_DESC(Select)},
  318. {string(kNameLessEqual), ADPT_DESC(LessEqual)},
  319. {prim::kPrimLogSoftmax->name(), ADPT_DESC(LogSoftmax)},
  320. {string(kNameTruncatedNormal), ADPT_DESC(TruncatedNormal)},
  321. {string(kNameStridedSliceGrad), ADPT_DESC(StridedSliceGrad)},
  322. {prim::kPrimGelu->name(), ADPT_DESC(Gelu)},
  323. {prim::kPrimGeluGrad->name(), ADPT_DESC(GeluGrad)},
  324. {string(kNameStridedSlice), ADPT_DESC(StridedSlice)},
  325. {prim::kPrimUnsortedSegmentSum->name(), ADPT_DESC(UnsortedSegmentSumD)},
  326. {string(kNameExpandDims), ADPT_DESC(ExpandDims)},
  327. {prim::kPrimSqueeze->name(), ADPT_DESC(Squeeze)},
  328. {prim::kPrimLayerNorm->name(), ADPT_DESC(LayerNorm)},
  329. {prim::kPrimLayerNormGrad->name(), ADPT_DESC(LayerNormGrad)},
  330. {string(kNameBatchMatMul), ADPT_DESC(BatchMatMul)},
  331. {string(kNameDropoutDoMask), ADPT_DESC(DropOutDoMask)},
  332. {string(kNameNPUGetFloatStatus), ADPT_DESC(NPUGetFloatStatus)},
  333. {string(kNameNPUAllocFloatStatus), ADPT_DESC(NPUAllocFloatStatus)},
  334. {string(kNameNPUClearFloatStatus), ADPT_DESC(NPUClearFloatStatus)},
  335. {string(kNameRandomChoiceWithMask), ADPT_DESC(RandomChoiceWithMask)},
  336. {prim::kPrimSoftmaxCrossEntropyWithLogits->name(), ADPT_DESC(SoftmaxCrossEntropyWithLogits)},
  337. {prim::kPrimScalarSummary->name(), ADPT_DESC(Summary)},
  338. {prim::kPrimImageSummary->name(), ADPT_DESC(Summary)},
  339. {prim::kPrimTensorSummary->name(), ADPT_DESC(Summary)},
  340. {prim::kPrimHistogramSummary->name(), ADPT_DESC(Summary)},
  341. {prim::kPrimTensorAdd->name(),
  342. std::make_shared<OpAdapterDesc>(std::make_shared<OpAdapter<Add>>(ExtraAttr({{"mode", MakeValue(1)}})),
  343. std::make_shared<OpAdapter<Add>>(ExtraAttr({{"mode", MakeValue(1)}})))},
  344. {string(kNameBiasAdd), ADPT_DESC(BiasAdd)},
  345. {prim::kPrimRelu->name(), ADPT_DESC(Relu)},
  346. {prim::kPrimMatMul->name(), ADPT_DESC(MatMul)},
  347. {string(kNameConst), ADPT_DESC(Constant, Const)},
  348. {string(kNameSoftmax), ADPT_DESC(Softmax)},
  349. {string(kNameSoftmaxGrad), ADPT_DESC(SoftmaxGrad)},
  350. {string(kNameParam), ADPT_DESC(Data)},
  351. {string(kNameROIAlign), ADPT_DESC(ROIAlign)},
  352. {string(kNameROIAlignGrad), ADPT_DESC(ROIAlignGrad)},
  353. {string(kNameAbs), ADPT_DESC(Abs)},
  354. {string(kNameAbsGrad), ADPT_DESC(AbsGrad)},
  355. {string(kNameBinaryCrossEntropy), ADPT_DESC(BinaryCrossEntropy)},
  356. {string(kNameBinaryCrossEntropyGrad), ADPT_DESC(BinaryCrossEntropyGrad)},
  357. {string(kNameSparseApplyAdagrad), ADPT_DESC(SparseApplyAdagradD)},
  358. {string(kNameAcosh), ADPT_DESC(Acosh)},
  359. {string(kNameFloorMod), ADPT_DESC(FloorMod)},
  360. {string(kNameSpaceToDepth), ADPT_DESC(SpaceToDepth)},
  361. {string(kNameDepthToSpace), ADPT_DESC(DepthToSpace)},
  362. {string(kNameSign), ADPT_DESC(Sign)},
  363. {string(kNameRound), ADPT_DESC(Round)},
  364. {string(kNameApplyFtrl), ADPT_DESC(ApplyFtrl)},
  365. {string(kNameDiag), ADPT_DESC(Diag)},
  366. {string(kNameDiagPart), ADPT_DESC(DiagPart)},
  367. {string(kNameSpaceToBatch), ADPT_DESC(SpaceToBatchD)},
  368. {string(kNameBatchToSpace), ADPT_DESC(BatchToSpaceD)},
  369. {string(kNameAtan2), ADPT_DESC(Atan2)},
  370. {string(kNameApplyRMSProp), ADPT_DESC(ApplyRMSPropD)},
  371. {string(kNameApplyCenteredRMSProp), ADPT_DESC(ApplyCenteredRMSProp)}};
  372. #ifdef ENABLE_GE
  373. adpt_map[string(kNamePrint)] = ADPT_DESC(Print);
  374. #endif
  375. return adpt_map;
  376. }
  377. // ---------------implement of DfGraphConvertor-------------
  378. PrimType GetCNodeFuncType(const CNodePtr cnode) {
  379. if (cnode->inputs().empty()) {
  380. return kPrimTypeUnknown;
  381. }
  382. AnfNodePtr valuenode = cnode->input(0);
  383. if (IsValueNode<Primitive>(valuenode)) {
  384. // check whether the valuenode is primitive
  385. return GetValueNode<PrimitivePtr>(valuenode)->prim_type();
  386. }
  387. return kPrimTypeUnknown;
  388. }
  389. OpAdapterPtr DfGraphConvertor::FindAdapter(const AnfNodePtr node, bool train) {
  390. if (node->isa<CNode>()) {
  391. auto cnode = node->cast<CNodePtr>();
  392. std::string name = kNameCustomOp;
  393. if (!IsCustomCNode(cnode)) {
  394. name = GetCNodeFuncName(cnode);
  395. }
  396. auto it_adpt = get_adpt_map().find(name);
  397. if (it_adpt != get_adpt_map().end()) {
  398. return it_adpt->second->Get(train);
  399. } else {
  400. MS_LOG(ERROR) << "Can't find OpAdapter for " << name;
  401. }
  402. }
  403. if (node->isa<ValueNode>()) {
  404. return get_adpt_map()[kNameConst]->Get(train);
  405. }
  406. if (node->isa<Parameter>()) {
  407. return get_adpt_map()[kNameParam]->Get(train);
  408. }
  409. return OpAdapterPtr(nullptr);
  410. }
  411. void DfGraphConvertor::InitLoopVar(std::vector<ge::Operator> *init_input) {
  412. if (this->training_) {
  413. GeTensorDesc desc(GeShape(), ge::FORMAT_NCHW, ge::DT_INT64);
  414. auto var_iter_num = std::make_shared<Variable>("npu_runconfig/iterations_per_loop");
  415. auto var_loop_cond = std::make_shared<Variable>("npu_runconfig/loop_cond");
  416. auto var_one = std::make_shared<Variable>("npu_runconfig/one");
  417. auto var_zero = std::make_shared<Variable>("npu_runconfig/zero");
  418. (void)var_iter_num->update_output_desc_y(desc);
  419. (void)var_loop_cond->update_output_desc_y(desc);
  420. (void)var_one->update_output_desc_y(desc);
  421. (void)var_zero->update_output_desc_y(desc);
  422. vars_["npu_runconfig/iterations_per_loop"] = var_iter_num;
  423. vars_["npu_runconfig/loop_cond"] = var_loop_cond;
  424. vars_["npu_runconfig/one"] = var_one;
  425. vars_["npu_runconfig/zero"] = var_zero;
  426. int64_t value = 0;
  427. auto const_iter_num = std::make_shared<Constant>("const/npu_runconfig/iterations_per_loop");
  428. if (ConfigManager::GetInstance().dataset_mode() == DS_SINK_MODE) {
  429. value = ConfigManager::GetInstance().iter_num();
  430. } else {
  431. MS_LOG(INFO) << "Run with normal(non-sink) mode, the iterator number will always be 1";
  432. value = 1;
  433. ConfigManager::GetInstance().set_iter_num(value);
  434. }
  435. value -= 1; // iteration start from 0, the max iteration number for n loop should be n-1
  436. (void)const_iter_num->set_attr_value(GeTensor(desc, reinterpret_cast<uint8_t *>(&value), sizeof(int64_t)));
  437. auto const_loop_cond = std::make_shared<Constant>("const/npu_runconfig/loop_cond");
  438. value = 0;
  439. (void)const_loop_cond->set_attr_value(GeTensor(desc, reinterpret_cast<uint8_t *>(&value), sizeof(int64_t)));
  440. auto const_one = std::make_shared<Constant>("const/npu_runconfig/one");
  441. value = 1;
  442. (void)const_one->set_attr_value(GeTensor(desc, reinterpret_cast<uint8_t *>(&value), sizeof(int64_t)));
  443. auto const_zero = std::make_shared<Constant>("const/npu_runconfig/zero");
  444. value = 0;
  445. (void)const_zero->set_attr_value(GeTensor(desc, reinterpret_cast<uint8_t *>(&value), sizeof(int64_t)));
  446. (void)const_iter_num->update_output_desc_y(desc);
  447. (void)const_loop_cond->update_output_desc_y(desc);
  448. (void)const_one->update_output_desc_y(desc);
  449. (void)const_zero->update_output_desc_y(desc);
  450. auto assign_iter_num = std::make_shared<Assign>("assign/npu_runconfig/iterations_per_loop");
  451. (void)assign_iter_num->set_input_ref(*var_iter_num).set_input_value(*const_iter_num);
  452. auto assign_loop_cond = std::make_shared<Assign>("assign/npu_runconfig/loop_cond");
  453. (void)assign_loop_cond->set_input_ref(*var_loop_cond).set_input_value(*const_loop_cond);
  454. auto assign_one = std::make_shared<Assign>("assign/npu_runconfig/one");
  455. (void)assign_one->set_input_ref(*var_one).set_input_value(*const_one);
  456. auto assign_zero = std::make_shared<Assign>("assign/npu_runconfig/zero");
  457. (void)assign_zero->set_input_ref(*var_zero).set_input_value(*const_zero);
  458. init_input->push_back(*var_iter_num);
  459. init_input->push_back(*var_loop_cond);
  460. init_input->push_back(*var_one);
  461. init_input->push_back(*var_zero);
  462. init_ops_.push_back(var_iter_num);
  463. init_ops_.push_back(var_loop_cond);
  464. init_ops_.push_back(var_one);
  465. init_ops_.push_back(var_zero);
  466. init_ops_.push_back(const_iter_num);
  467. init_ops_.push_back(const_loop_cond);
  468. init_ops_.push_back(const_one);
  469. init_ops_.push_back(const_zero);
  470. init_ops_.push_back(assign_iter_num);
  471. init_ops_.push_back(assign_loop_cond);
  472. init_ops_.push_back(assign_one);
  473. init_ops_.push_back(assign_zero);
  474. }
  475. }
  476. OpAdapterPtr DfGraphConvertor::FindAdapter(const std::string &name, bool train) {
  477. auto it = get_adpt_map().find(name);
  478. if (it != get_adpt_map().end()) {
  479. return it->second->Get(train);
  480. }
  481. MS_LOG(ERROR) << "Can't find OpAdapter for " << name;
  482. return transform::OpAdapterPtr(nullptr);
  483. }
  484. void DfGraphConvertor::DrawParamInitSubGraph(const std::string &name, const AnfNodePtr &it) {
  485. // draw init subgraph
  486. init_sout_ << "op_assign" << it.get() << "[label=<";
  487. init_sout_ << "<table border='1' cellborder='1'>" << endl;
  488. init_sout_ << "<tr>";
  489. init_sout_ << "<td port='1'>resource</td>";
  490. init_sout_ << "<td port='2'>value</td>";
  491. init_sout_ << "</tr>" << endl;
  492. init_sout_ << "<tr><td colspan=\"2\">"
  493. << "\"assign_" << name << "\"</td></tr>" << endl;
  494. init_sout_ << "</table>> shape=plaintext]" << endl;
  495. init_sout_ << "param" << it.get() << "[shape=octagon, label=\"" << name << "\"]" << endl;
  496. init_sout_ << "const" << it.get() << "[label= \"" << name << "_const"
  497. << "\" shape=ellipse]" << endl;
  498. init_sout_ << "param" << it.get() << "->"
  499. << "op_assign" << it.get() << ":1" << endl;
  500. init_sout_ << "const" << it.get() << "->"
  501. << "op_assign" << it.get() << ":2" << endl;
  502. }
  503. void DfGraphConvertor::SetupParamInitSubGraph(const TensorOrderMap &tensors, std::vector<ge::Operator> *init_input) {
  504. DfGraphPtr init_graph = std::make_shared<DfGraph>("init");
  505. std::vector<AnfNodePtr> nodes = TopoSort(anf_graph_->get_return());
  506. for (auto &it : nodes) {
  507. if (it->isa<ValueNode>()) {
  508. if (IsValueNode<SymbolicKeyInstance>(it)) {
  509. auto symbolic = GetValueNode<SymbolicKeyInstancePtr>(it);
  510. auto name = std::static_pointer_cast<Parameter>(symbolic->node())->name();
  511. auto iter = vars_.find(name); // get correspoding varaible op
  512. if (iter != vars_.end()) {
  513. op_cache_[it.get()] = iter->second;
  514. // #ifdef DRAW_GE_GRAPH
  515. compute_sout_ << op_draw_name_[params_[name].get()] << " -> " << op_draw_name_[it.get()]
  516. << "[style=\"dotted\"]" << endl;
  517. // #endif
  518. }
  519. } else if (IsValueNode<RefKey>(it)) {
  520. auto refkey = GetValueNode<RefKeyPtr>(it);
  521. auto name = refkey->tag();
  522. auto iter = vars_.find(name); // get correspoding varaible op
  523. if (iter != vars_.end()) {
  524. op_cache_[it.get()] = iter->second;
  525. compute_sout_ << op_draw_name_[params_[name].get()] << " -> " << op_draw_name_[it.get()]
  526. << "[style=\"dotted\"]" << endl;
  527. }
  528. }
  529. }
  530. }
  531. for (auto &it : tensors) {
  532. if (vars_.find(it.first) == vars_.end()) {
  533. MS_LOG(WARNING) << "Init parameter " << it.first << " didn't appear in graph.";
  534. vars_[it.first] = nullptr;
  535. }
  536. }
  537. // set up init sub graph
  538. if (init_input->size()) {
  539. // init sub graph needs no input
  540. MS_LOG(INFO) << "Build data init subgraph.";
  541. (void)init_graph->SetInputs(*init_input);
  542. this->init_graph_ = init_graph;
  543. } else {
  544. this->init_graph_ = nullptr;
  545. }
  546. }
  547. void DfGraphConvertor::MakeDatasetHandler(const std::string &name, const size_t &input_idx, const AnfNodePtr &it) {
  548. MS_LOG(INFO) << "The " << name << " is the " << input_idx << "(st/nd/th) input";
  549. if (ConfigManager::GetInstance().dataset_mode() == DS_SINK_MODE) {
  550. auto getnext_idx = static_cast<int64_t>(input_idx);
  551. DatasetGraphParam param = ConfigManager::GetInstance().dataset_param();
  552. if (!param.input_indexes().empty() && input_idx <= param.input_indexes().size()) {
  553. getnext_idx = param.input_indexes()[input_idx] - 1; // input_idx start from 0.
  554. MS_LOG(INFO) << "remap input_index:" << input_idx << " to getnext_index:" << getnext_idx << ".";
  555. }
  556. // use iterator_getnext op with output_name instead of data op in BuildGraph.
  557. out_handle_cache_[it.get()] = OutHandler(dataset_iter_getnext_, "y" + std::to_string(getnext_idx));
  558. }
  559. }
  560. void DfGraphConvertor::SetupBroadcast(const std::shared_ptr<HcomBroadcast> &broadcast,
  561. const std::vector<GeTensorDesc> &broadcast_desc,
  562. const DfGraphPtr &broadcast_graph, std::vector<ge::Operator> broadcast_input) {
  563. MS_LOG(INFO) << "build broadcast subgraph";
  564. if (broadcast_desc.size() != broadcast_input.size()) {
  565. MS_LOG(EXCEPTION) << "Desc number of BroadCast is not equal to number of Input";
  566. }
  567. (void)broadcast->create_dynamic_input_x(static_cast<unsigned int>(broadcast_input.size()));
  568. (void)broadcast->create_dynamic_output_y(static_cast<unsigned int>(broadcast_desc.size()));
  569. for (unsigned int i = 0; i < broadcast_input.size(); i++) {
  570. (void)broadcast->set_dynamic_input_x(i, broadcast_input[i]);
  571. (void)broadcast->update_dynamic_output_desc_y(i, broadcast_desc[i]);
  572. }
  573. (void)broadcast_graph->SetInputs(broadcast_input);
  574. this->broadcast_graph_ = broadcast_graph;
  575. }
  576. void DfGraphConvertor::InitParamWithData(const TensorOrderMap &tensors) {
  577. int index = 0;
  578. std::vector<Operator> init_input;
  579. for (auto it : tensors) {
  580. std::string name = it.first;
  581. auto node_itor = params_.find(name);
  582. // if name not in params_, create a node in graph
  583. if (node_itor == params_.end()) {
  584. MS_LOG(WARNING) << "" << name << " is not in params, and create a new node.";
  585. ParameterPtr param = anf_graph_->add_parameter();
  586. name = name + "_temp";
  587. param->set_name(name);
  588. (void)ConvertParameter(param);
  589. node_itor = params_.find(name);
  590. }
  591. auto node = node_itor->second;
  592. auto op_itor = op_cache_.find(node.get());
  593. if (op_itor == op_cache_.end()) {
  594. MS_LOG(EXCEPTION) << "Can not find op for node " << node->ToString() << ".";
  595. }
  596. auto adpt = FindAdapter(kNameParam, training_);
  597. if (adpt == nullptr) continue;
  598. auto param_op = adpt->generate(name + "_data");
  599. MS_LOG(INFO) << "Add parameter " << name << " as input, index " << index << ".";
  600. (void)std::static_pointer_cast<Data>(param_op)->set_attr_index(index++);
  601. if (!training_) {
  602. auto adpt_const = FindAdapter(kNameConst, training_);
  603. if (adpt_const == nullptr) continue;
  604. auto const_op = adpt_const->generate(name + "_const");
  605. (void)adpt_const->setAttr(const_op, "value", it.second);
  606. auto const_op_desc = TransformUtil::GetGeTensorDesc(it.second->shape_c(), it.second->data_type(), kOpFormat_NCHW);
  607. if (const_op_desc == nullptr) {
  608. MS_LOG(ERROR) << "Create variable " << name << " ouptut descriptor failed!";
  609. continue;
  610. }
  611. (void)std::static_pointer_cast<Constant>(const_op)->update_output_desc_y(*const_op_desc);
  612. vars_[name] = const_op;
  613. op_itor->second = const_op;
  614. continue;
  615. }
  616. // create tensor descriptor for output descriptor
  617. auto desc = TransformUtil::GetGeTensorDesc(it.second->shape_c(), it.second->data_type(), kOpFormat_NCHW);
  618. if (desc == nullptr) {
  619. MS_LOG(ERROR) << "Create variable " << name << " ouptut descriptor failed!";
  620. continue;
  621. }
  622. // we need three variable ops for each graph with same name
  623. // build init subgraph
  624. auto init_var = std::make_shared<Variable>(name);
  625. auto assign_op = std::make_shared<Assign>("assign_" + name);
  626. (void)init_var->update_output_desc_y(*desc);
  627. (void)assign_op->set_input_ref(*init_var).set_input_value(*param_op);
  628. init_input.push_back(*init_var);
  629. init_ops_.push_back(param_op);
  630. init_ops_.push_back(assign_op);
  631. init_ops_.push_back(init_var);
  632. auto variable = std::make_shared<Variable>(name);
  633. (void)variable->update_output_desc_y(*desc);
  634. // do not use read variable while variable sink
  635. MS_LOG(DEBUG) << "InitParam, op_name = " << name << ", var = " << variable->GetName() << ".";
  636. op_itor->second = variable; // replace parameter with variable
  637. vars_[name] = variable; // prevent the variable operator from being freed
  638. DrawParamInitSubGraph(name, node);
  639. }
  640. InitLoopVar(&init_input);
  641. SetupParamInitSubGraph(tensors, &init_input);
  642. }
  643. // convert all parameter need initialize to variable
  644. DfGraphConvertor &DfGraphConvertor::InitParam(const TensorOrderMap &tensors) {
  645. size_t input_idx = 0;
  646. if (error_ != 0) {
  647. return *this;
  648. }
  649. if (anf_graph_ == nullptr || anf_graph_->output() == nullptr) {
  650. error_ = INVALID_ARGUMENT;
  651. MS_LOG(ERROR) << "Invalid AnfGraph in InitParam.";
  652. return *this;
  653. }
  654. // Processing input with MakeDatasetHandler
  655. for (auto &it : anf_graph_->parameters()) {
  656. auto op_itor = op_cache_.find(it.get()); // converted node
  657. if (it->isa<Parameter>() && op_itor != op_cache_.end()) {
  658. string name = std::static_pointer_cast<Parameter>(it)->name();
  659. auto tensor_itor = tensors.find(name); // in init value map
  660. if (tensor_itor == tensors.end()) {
  661. DfGraphConvertor::MakeDatasetHandler(name, input_idx, it);
  662. input_idx++;
  663. }
  664. }
  665. }
  666. InitParamWithData(tensors);
  667. init_sout_ << "}" << endl;
  668. return *this;
  669. }
  670. #if (defined ENABLE_GE)
  671. void DfGraphConvertor::BuildSaveCheckpointGraph() {
  672. std::vector<Operator> graph_inputs;
  673. ge::op::Save save_op("save_parms");
  674. int save_op_is_active = 0;
  675. size_t index = 0;
  676. string name;
  677. int32_t count_size = std::count_if(vars_.begin(), vars_.end(), [](const std::pair<std::string, OperatorPtr> &it) {
  678. return (it.second == nullptr || it.first.find("/") != std::string::npos);
  679. });
  680. (void)save_op.create_dynamic_input_tensors(vars_.size() - static_cast<size_t>(count_size));
  681. // for each "parameter" in anf graph excluding "input"
  682. for (const auto &it : vars_) {
  683. name = it.first;
  684. if (it.second == nullptr || name.find("/") != std::string::npos) continue;
  685. Variable variable(name);
  686. (void)variable.update_output_desc_y(it.second->GetOutputDesc(0));
  687. (void)save_op.set_dynamic_input_tensors(index++, variable);
  688. graph_inputs.push_back(variable);
  689. if (save_op_is_active == 0) {
  690. checkpoint_sout_ << "op_save" << &save_op << "[label=<";
  691. checkpoint_sout_ << "<table border='1' cellborder='1'>" << endl;
  692. checkpoint_sout_ << "<tr><td port='1'>tensor</td></tr>" << endl;
  693. checkpoint_sout_ << "<tr><td colspan=\"1\">"
  694. << "\"saveop"
  695. << "\"</td></tr>" << endl;
  696. checkpoint_sout_ << "</table>> shape=plaintext]" << endl;
  697. }
  698. checkpoint_sout_ << "param" << it.second << "[shape=octagon, label=\"" << name << "\"]" << endl;
  699. checkpoint_sout_ << "param" << it.second << "->"
  700. << "op_save" << &save_op << ":1" << endl;
  701. save_op_is_active = 1;
  702. }
  703. if (save_op_is_active) {
  704. std::vector<Operator> graph_output;
  705. graph_output.emplace_back(save_op);
  706. DfGraphPtr checkpoint_graph = std::make_shared<DfGraph>("checkpoint");
  707. (void)checkpoint_graph->SetInputs(graph_inputs);
  708. (void)checkpoint_graph->SetOutputs(graph_output);
  709. this->save_ckp_graph_ = checkpoint_graph;
  710. } else {
  711. this->save_ckp_graph_ = nullptr;
  712. }
  713. checkpoint_sout_ << "}" << endl;
  714. return;
  715. }
  716. #endif
  717. DfGraphConvertor &DfGraphConvertor::GenerateBroadcastGraph(const TensorOrderMap &tensors) {
  718. if (error_ != 0) {
  719. return *this;
  720. }
  721. if (anf_graph_ == nullptr || anf_graph_->output() == nullptr) {
  722. error_ = INVALID_ARGUMENT;
  723. MS_LOG(ERROR) << "Invalid AnfGraph in generate broadcast graph";
  724. return *this;
  725. }
  726. DfGraphPtr broadcast_graph = std::make_shared<DfGraph>("broadcast");
  727. // collect the operators create for broadcast sub graph, in order to avoid auto release
  728. std::vector<Operator> broadcast_input;
  729. std::vector<GeTensorDesc> broadcast_desc;
  730. auto broadcast = std::make_shared<HcomBroadcast>("broadcast_parameter");
  731. (void)broadcast->set_attr_root_rank(0);
  732. (void)broadcast->set_attr_group("hccl_world_group");
  733. broadcast_ops_.push_back(broadcast);
  734. // find every parameter, build broadcast subgraph (or initialize the parameter with constant)
  735. for (auto &it : anf_graph_->parameters()) {
  736. auto op_itor = op_cache_.find(it.get()); // converted node
  737. if (it->isa<Parameter>() && op_itor != op_cache_.end()) {
  738. string name = std::static_pointer_cast<Parameter>(it)->name();
  739. auto tensor_itor = tensors.find(name); // in init tensor map
  740. if (tensor_itor != tensors.end()) {
  741. auto tensor = tensor_itor->second;
  742. auto shape_ge = tensor->shape_c();
  743. // create tensor descriptor for output descriptor
  744. auto desc = TransformUtil::GetGeTensorDesc(shape_ge, tensor->data_type(), kOpFormat_NCHW);
  745. if (desc == nullptr) {
  746. MS_LOG(ERROR) << "Create variable " << name << " ouptut descriptor failed!";
  747. continue;
  748. }
  749. // build broadcast subgraph
  750. if (distribute_) {
  751. auto broadcast_var = std::make_shared<Variable>(name);
  752. (void)broadcast_var->update_output_desc_y(*desc);
  753. broadcast_input.push_back(*broadcast_var);
  754. broadcast_desc.push_back(*desc);
  755. broadcast_ops_.push_back(broadcast_var);
  756. }
  757. }
  758. }
  759. }
  760. // set up broadcast sub graph
  761. if (!broadcast_input.empty()) {
  762. DfGraphConvertor::SetupBroadcast(broadcast, broadcast_desc, broadcast_graph, broadcast_input);
  763. } else {
  764. this->broadcast_graph_ = nullptr;
  765. }
  766. return *this;
  767. }
  768. DfGraphConvertor &DfGraphConvertor::GenerateCheckpointGraph() {
  769. if (error_ != 0) {
  770. MS_LOG(ERROR) << "Generate checkpoint graph failed, found error code " << error_ << ".";
  771. return *this;
  772. }
  773. if (anf_graph_ == nullptr || anf_graph_->output() == nullptr) {
  774. error_ = INVALID_ARGUMENT;
  775. MS_LOG(ERROR) << "Invalid AnfGraph in GenerateCheckpointGraph";
  776. return *this;
  777. }
  778. #if (defined ENABLE_GE)
  779. BuildSaveCheckpointGraph();
  780. // Restoring from checkpoint file is done by pyfront, not in graph now.
  781. #endif
  782. return *this;
  783. }
  784. DfGraphConvertor &DfGraphConvertor::ConvertAllNode() {
  785. if (error_ != 0) {
  786. return *this;
  787. }
  788. if (anf_graph_ == nullptr || anf_graph_->output() == nullptr) {
  789. MS_LOG(ERROR) << "Invalid AnfGraph";
  790. error_ = FAILED;
  791. return *this;
  792. }
  793. compute_sout_.clear();
  794. compute_sout_ << "digraph {" << endl;
  795. init_sout_.clear();
  796. init_sout_ << "digraph {" << endl;
  797. checkpoint_sout_.clear();
  798. checkpoint_sout_ << "digraph {" << endl;
  799. restore_checkpoint_sout_.clear();
  800. restore_checkpoint_sout_ << "digraph {" << endl;
  801. // Convert all anf node to Operator
  802. MS_LOG(DEBUG) << "convert all node";
  803. std::vector<AnfNodePtr> nodes = TopoSort(anf_graph_->get_return());
  804. for (auto &it : nodes) {
  805. (void)Convert(it);
  806. if (this->error_ != 0) {
  807. MS_LOG(ERROR) << "failed to convert node: " << it->DebugString() << ".";
  808. }
  809. }
  810. // Create dataset iterator and iterator_getnext node
  811. if (ConfigManager::GetInstance().dataset_mode() == DS_SINK_MODE) {
  812. DatasetGraphParam param = ConfigManager::GetInstance().dataset_param();
  813. MS_LOG(INFO) << "Dataset param is " << param.ToString() << ".";
  814. // GetNext
  815. auto iter_getnext_op = make_shared<ge::op::GetNext>("get_next_tmp");
  816. (void)iter_getnext_op->set_attr_output_types(param.ge_types());
  817. (void)iter_getnext_op->set_attr_output_shapes(param.shapes());
  818. (void)iter_getnext_op->set_attr_channel_name(param.queue_name());
  819. // save iter_getnext_op for later use
  820. dataset_iter_getnext_ = iter_getnext_op;
  821. }
  822. // return the data flow graph
  823. return *this;
  824. }
  825. void DfGraphConvertor::TraceOutputFromTupleGetItem(const AnfNodePtr &anf_out) {
  826. auto it = out_handle_cache_.find(anf_out.get());
  827. if (it != out_handle_cache_.end()) {
  828. OutHandler handle = it->second;
  829. auto op = handle.op;
  830. if (op != nullptr) {
  831. MS_LOG(INFO) << "op name: " << op->GetName() << ", op type: " << op->GetOpType() << ", out_name: " << handle.out;
  832. graph_outputs_.emplace_back(std::make_pair(*op, handle.out));
  833. } else {
  834. MS_LOG(EXCEPTION) << "tuple_getitem: " << anf_out->fullname_with_scope() << " is not converted";
  835. }
  836. } else {
  837. // invalid tuple_getitem e.g. tuple_getitem(tuple_getitem())/tuple_getitem(depend())/tuple_getitem(make_tuple())
  838. MS_LOG(WARNING) << "Invalid tuple_getitem: " << anf_out->fullname_with_scope();
  839. }
  840. }
  841. void DfGraphConvertor::TraceOutput(const AnfNodePtr node) {
  842. AnfNodePtr anf_out = node;
  843. AnfNodePtr pre_node = nullptr;
  844. // trace Parameter node
  845. TraceOutputFromParameter(anf_out);
  846. // then trace cnode
  847. if (!node->isa<CNode>()) {
  848. return;
  849. }
  850. // trace tuple_getitem
  851. while (anf_out->isa<CNode>() && IsPrimitiveCNode(anf_out, prim::kPrimTupleGetItem)) {
  852. pre_node = anf_out;
  853. anf_out = anf_out->cast<CNodePtr>()->input(1);
  854. }
  855. // trace every element of make_tuple
  856. auto c = anf_out->cast<CNodePtr>();
  857. std::string name = "";
  858. if (anf_out->isa<CNode>()) {
  859. name = GetCNodeFuncName(c);
  860. }
  861. if (name == "make_tuple") {
  862. for (unsigned int i = 1; i < c->inputs().size(); i++) {
  863. TraceOutput(c->input(i));
  864. }
  865. } else if (name == "depend") {
  866. if (c->inputs().size() < 3) { // "depend" primitive have 3 inputs
  867. MS_LOG(EXCEPTION) << "length of inputs is " << c->inputs().size() << ", which is less than 3";
  868. }
  869. TraceOutput(c->input(1));
  870. } else if (name == "tuple_getitem") {
  871. TraceOutputFromTupleGetItem(anf_out);
  872. } else {
  873. // add outputs;
  874. auto op = Convert(anf_out);
  875. std::string index;
  876. if (op != nullptr) {
  877. if ((pre_node != nullptr) && IsPrimitiveCNode(pre_node, prim::kPrimTupleGetItem)) {
  878. auto item = out_handle_cache_.find(pre_node.get());
  879. if (item != out_handle_cache_.end()) {
  880. index = item->second.out;
  881. } else {
  882. MS_LOG(WARNING) << "Can't get operater: " << anf_out->fullname_with_scope() << " 's output item";
  883. }
  884. }
  885. MS_LOG(INFO) << "Add graph output: " << anf_out->fullname_with_scope() << ":" << index;
  886. graph_outputs_.emplace_back(make_pair(*op, index));
  887. }
  888. }
  889. }
  890. void DfGraphConvertor::TraceOutputFromParameter(const AnfNodePtr &anf_out) {
  891. if (anf_out->isa<Parameter>()) {
  892. MS_LOG(INFO) << "Add graph output: " << anf_out->fullname_with_scope();
  893. auto it = out_handle_cache_.find(anf_out.get());
  894. if (it != out_handle_cache_.end()) {
  895. // For dataset graph mode, input parameter is converted to a "iterator_get_next:yn" OutHandler.
  896. OutHandler handle = it->second;
  897. auto op = handle.op;
  898. MS_LOG(INFO) << "op name: " << op->GetName() << ", op type: " << op->GetOpType() << ", out_name: " << handle.out;
  899. graph_outputs_.emplace_back(make_pair(*op, handle.out));
  900. } else {
  901. // common parameter case
  902. auto op = Convert(anf_out);
  903. if (op != nullptr) {
  904. MS_LOG(INFO) << "op name: " << op->GetName() << ", op type: " << op->GetOpType();
  905. graph_outputs_.emplace_back(std::make_pair(*op, ""));
  906. }
  907. }
  908. }
  909. }
  910. void SetupDatasetIterGetNextNode(const OperatorPtr &op) {
  911. if (ConfigManager::GetInstance().dataset_mode() == DS_SINK_MODE) {
  912. DatasetGraphParam param = ConfigManager::GetInstance().dataset_param();
  913. size_t output_num = param.ge_types().size();
  914. MS_LOG(INFO) << "Set iterator_getnext op's output num = " << output_num << ".";
  915. // set iterator_getnext op's output num
  916. shared_ptr<ge::op::GetNext> iter_getnext = std::static_pointer_cast<ge::op::GetNext>(op);
  917. (void)iter_getnext->create_dynamic_output_y(static_cast<unsigned int>(output_num));
  918. for (uint32_t i = 0; i < output_num; i++) {
  919. ge::TensorDesc desc(GeShape(param.shapes()[i]), ge::FORMAT_NCHW, (ge::DataType)param.ge_types()[i]);
  920. // we don't SetRealDimCnt here since GE do not use this output's real-dim
  921. (void)iter_getnext->update_dynamic_output_desc_y((i), desc);
  922. }
  923. }
  924. return;
  925. }
  926. DfGraphConvertor &DfGraphConvertor::BuildGraph() {
  927. SetupDatasetIterGetNextNode(dataset_iter_getnext_);
  928. if (error_ != 0) {
  929. return *this;
  930. }
  931. // update tuple_out_handle_cache_
  932. for (auto it : tuple_out_handle_cache_) {
  933. std::size_t len = it.second->size();
  934. for (std::size_t i = 0; i < len; i++) {
  935. OutHandler handle = (*it.second)[i];
  936. if (handle.op) {
  937. string name = handle.op->GetName();
  938. if (vars_.count(name)) {
  939. OperatorPtr new_op = vars_[name];
  940. if (new_op != nullptr) {
  941. MS_LOG(INFO) << "update tuple_out_handle_cache_ " << name;
  942. (*it.second)[i] = OutHandler(new_op, handle.out);
  943. }
  944. }
  945. }
  946. }
  947. }
  948. // set up dependices
  949. MS_LOG(DEBUG) << "set up dependices";
  950. std::vector<AnfNodePtr> nodes = ::mindspore::TopoSort(anf_graph_->get_return());
  951. for (auto &it : nodes) {
  952. SetNodeInput(it);
  953. SetOpControlInput(it);
  954. UpdateOpDesc(it);
  955. }
  956. if (error_ == 0) {
  957. df_graph_ = make_shared<DfGraph>(anf_graph_->ToString());
  958. } else {
  959. return *this;
  960. }
  961. // set graph input according to the order from anf graph
  962. std::vector<Operator> inputs;
  963. if (ConfigManager::GetInstance().dataset_mode() == DS_SINK_MODE) {
  964. inputs.push_back(*dataset_iter_getnext_);
  965. } else {
  966. auto params = anf_graph_->parameters();
  967. int index = 0;
  968. for (auto &it : params) {
  969. auto name = std::static_pointer_cast<Parameter>(it)->name();
  970. // the parameters which has not been converted to var
  971. if (vars_.find(name) == vars_.end()) {
  972. auto op = Convert(it);
  973. MS_EXCEPTION_IF_NULL(op);
  974. MS_LOG(INFO) << "add not var input " << it->ToString() << ", index " << index;
  975. if (op == nullptr) {
  976. MS_LOG(ERROR) << "Convert graph failed!";
  977. return *this;
  978. }
  979. UpdateDataOpDesc(it, op);
  980. MS_LOG(INFO) << "add input " << it->ToString() << ", index " << index;
  981. (void)std::static_pointer_cast<Data>(op)->set_attr_index(index++);
  982. inputs.push_back(*op);
  983. } else if (vars_[name] != nullptr) {
  984. MS_LOG(INFO) << "add var input " << it->ToString();
  985. auto op = Convert(it);
  986. MS_EXCEPTION_IF_NULL(op);
  987. inputs.push_back(*op);
  988. }
  989. }
  990. }
  991. // Add const nodes as graph input for some operator work with constant
  992. std::transform(graph_const_inputs_.begin(), graph_const_inputs_.end(), std::back_inserter(inputs),
  993. [](OperatorPtr x) { return *x; });
  994. MS_LOG(INFO) << "set graph input num: " << inputs.size();
  995. (void)df_graph_->SetInputs(inputs);
  996. // set graph output
  997. // set the value of finale return apply node as the output of dataflow graph
  998. MS_LOG(DEBUG) << "set output";
  999. graph_outputs_.clear();
  1000. TraceOutput(anf_graph_->get_return()->input(1));
  1001. MS_LOG(INFO) << "set graph output num: " << graph_outputs_.size();
  1002. (void)df_graph_->SetOutputs(graph_outputs_);
  1003. compute_sout_ << "}" << endl;
  1004. // For the graph(e.g. eval_subgraph) whose IterNum is 1, donot set NeedIteration flag.
  1005. if (ConfigManager::GetInstance().iter_num() > 1) {
  1006. df_graph_->SetNeedIteration(true);
  1007. }
  1008. return *this;
  1009. }
  1010. void DfGraphConvertor::UpdateDataOpDesc(const AnfNodePtr &it, const OperatorPtr &op) const {
  1011. auto node = std::static_pointer_cast<AnfNode>(it);
  1012. if (node == nullptr) {
  1013. MS_LOG(ERROR) << "Update data op descriptor failed! Invalid node.";
  1014. return;
  1015. }
  1016. auto normal_shape_ptr = dyn_cast<abstract::Shape>(node->Shape());
  1017. vector<int> shape;
  1018. if (normal_shape_ptr == nullptr) {
  1019. MS_LOG(INFO) << "Invalid shape to update data op descriptor.";
  1020. return;
  1021. }
  1022. shape = normal_shape_ptr->shape();
  1023. if (node->Type() == nullptr) {
  1024. MS_LOG(INFO) << "Invalid type to update data op descriptor.";
  1025. return;
  1026. }
  1027. TypeId me_type = node->Type()->type_id();
  1028. if (kObjectTypeTensorType == me_type) {
  1029. me_type = dyn_cast<TensorType>(node->Type())->element()->type_id();
  1030. }
  1031. std::ostringstream buf;
  1032. buf << "[" << shape << "]";
  1033. MS_LOG(INFO) << "input shape is " << buf.str() << ", type is " << me_type;
  1034. auto desc = TransformUtil::GetGeTensorDesc(shape, me_type, "NCHW");
  1035. if (desc == nullptr) {
  1036. MS_LOG(ERROR) << "Update data op descriptor failed! TensorDesc is null.";
  1037. } else {
  1038. (void)std::static_pointer_cast<Data>(op)->update_input_desc_data(*desc);
  1039. (void)std::static_pointer_cast<Data>(op)->update_output_desc_out(*desc);
  1040. }
  1041. }
  1042. DfGraphPtr DfGraphConvertor::GetComputeGraph() { return df_graph_; }
  1043. DfGraphPtr DfGraphConvertor::GetInitGraph() { return init_graph_; }
  1044. DfGraphPtr DfGraphConvertor::GetSaveCheckpointGraph() { return save_ckp_graph_; }
  1045. DfGraphPtr DfGraphConvertor::GetBroadcastGraph() { return broadcast_graph_; }
  1046. void DfGraphConvertor::SetOpControlInput(const AnfNodePtr node) {
  1047. if (control_depend_cache_.find(node.get()) == control_depend_cache_.end()) {
  1048. return;
  1049. }
  1050. std::vector<ControlEdge> control_edges = control_depend_cache_[node.get()];
  1051. if ((control_edges.empty())) {
  1052. MS_LOG(ERROR) << "Get control depend node's src or dest operator failed";
  1053. return;
  1054. }
  1055. for (auto &item : control_edges) {
  1056. (void)item.dest_op->AddControlInput(*item.src_op);
  1057. }
  1058. }
  1059. void DfGraphConvertor::SetOpInput(const OpAdapterPtr &adpt, const CNodePtr &node) {
  1060. OperatorPtr src = Convert(node);
  1061. auto &inputs = node->inputs();
  1062. for (size_t i = 1; i < inputs.size(); i++) {
  1063. auto pred = inputs[i];
  1064. while (pred->isa<CNode>() && GetCNodeFuncName(pred->cast<CNodePtr>()) == "depend") {
  1065. pred = pred->cast<CNodePtr>()->input(1);
  1066. }
  1067. // skip the None input
  1068. if (IsValueNode<None>(pred)) {
  1069. continue;
  1070. }
  1071. // find in out_hadnle_cache_ first
  1072. auto it = out_handle_cache_.find(pred.get());
  1073. if (it != out_handle_cache_.end()) {
  1074. int ret = adpt->setInput(src, SizeToInt(i), it->second);
  1075. if (ret == 0) {
  1076. if (pred->isa<CNode>() && GetCNodeFuncName(pred->cast<CNodePtr>()) == "tuple_getitem") {
  1077. compute_sout_ << op_draw_name_[pred->cast<CNodePtr>()->input(1).get()] << " -> " << op_draw_name_[node.get()]
  1078. << ":" << i << endl;
  1079. } else if (pred->isa<Parameter>()) {
  1080. compute_sout_ << op_draw_name_[pred.get()] << " -> " << op_draw_name_[node.get()] << ":" << i << endl;
  1081. } else {
  1082. // don't draw anything.
  1083. MS_LOG(INFO) << "DRAW_GE_GRAPH: Shouldn't have this case.";
  1084. }
  1085. AddGraphConstInput(it->second.op);
  1086. }
  1087. } else if (tuple_out_handle_cache_.find(pred.get()) != tuple_out_handle_cache_.end()) {
  1088. std::shared_ptr<std::vector<OutHandler>> handler_vec = tuple_out_handle_cache_[pred.get()];
  1089. int ret = adpt->setInput(src, SizeToInt(i), handler_vec);
  1090. if ((ret == 0) && pred->isa<CNode>() && (pred->cast<CNodePtr>()->inputs().size() == handler_vec->size() + 1)) {
  1091. for (unsigned int j = 0; j < handler_vec->size(); j++) {
  1092. compute_sout_ << op_draw_name_[pred->cast<CNodePtr>()->input(j + 1).get()] << " -> "
  1093. << op_draw_name_[node.get()] << ":" << i << endl;
  1094. AddGraphConstInput(handler_vec->at(j).op);
  1095. }
  1096. } else {
  1097. MS_LOG(WARNING) << "Convert tuple node setInput failed : " << node->ToString();
  1098. }
  1099. } else {
  1100. auto op = Convert(pred);
  1101. int ret = adpt->setInput(src, SizeToInt(i), op);
  1102. if (ret == 0) {
  1103. compute_sout_ << op_draw_name_[pred.get()] << " -> " << op_draw_name_[node.get()] << ":" << i << endl;
  1104. AddGraphConstInput(op);
  1105. }
  1106. }
  1107. }
  1108. }
  1109. void DfGraphConvertor::AddGraphConstInput(const OperatorPtr &op) {
  1110. if (op->GetOpType() == "Constant") {
  1111. graph_const_inputs_.push_back(op);
  1112. }
  1113. }
  1114. void DfGraphConvertor::SetNodeInput(const AnfNodePtr node) {
  1115. if (!node->isa<CNode>()) {
  1116. return;
  1117. }
  1118. if (op_cache_.find(node.get()) == op_cache_.end()) {
  1119. return;
  1120. }
  1121. auto cnode = node->cast<CNodePtr>();
  1122. OpAdapterPtr adpt = FindAdapter(cnode, training_);
  1123. if (adpt == nullptr) {
  1124. error_ = NOT_FOUND;
  1125. return;
  1126. }
  1127. // get Operator from op_cache_, use adapter to set Inputs
  1128. DfGraphConvertor::SetOpInput(adpt, cnode);
  1129. }
  1130. // Update GE op's shape and type info
  1131. void DfGraphConvertor::UpdateOpDesc(const AnfNodePtr node) {
  1132. if (nullptr == node || !node->isa<CNode>()) {
  1133. return;
  1134. }
  1135. if (op_cache_.find(node.get()) == op_cache_.end()) {
  1136. return;
  1137. }
  1138. OpAdapterPtr adpt = FindAdapter(node, training_);
  1139. if (adpt == nullptr) {
  1140. error_ = NOT_FOUND;
  1141. return;
  1142. }
  1143. // get Operator from op_cache_
  1144. OperatorPtr op = Convert(node);
  1145. adpt->updateOutputDesc(op, node->Shape(), node->Type(), node);
  1146. }
  1147. OperatorPtr DfGraphConvertor::Convert(const AnfNodePtr node) {
  1148. if (node == nullptr) {
  1149. MS_LOG(ERROR) << "node is nullptr";
  1150. error_ = NOT_FOUND;
  1151. return nullptr;
  1152. }
  1153. // find in cache
  1154. if (op_cache_.count(node.get())) {
  1155. return op_cache_[node.get()];
  1156. }
  1157. // do not convert primitive node
  1158. if (IsValueNode<Primitive>(node)) {
  1159. return nullptr;
  1160. }
  1161. // convert a new one
  1162. if (node->isa<CNode>()) {
  1163. return ConvertCNode(node->cast<CNodePtr>());
  1164. }
  1165. if (node->isa<Parameter>()) {
  1166. return ConvertParameter(node);
  1167. }
  1168. if (node->isa<ValueNode>()) {
  1169. return ConvertValueNode(node->cast<ValueNodePtr>());
  1170. }
  1171. MS_LOG(ERROR) << "Invalide AnfNode";
  1172. error_ = INVALID_ARGUMENT;
  1173. return nullptr;
  1174. }
  1175. void DfGraphConvertor::ConvertMakeTuple(const CNodePtr node) {
  1176. std::shared_ptr<std::vector<OutHandler>> tuple_items = std::make_shared<std::vector<OutHandler>>();
  1177. // convert each tuple item to a OutHandler
  1178. for (size_t i = 1; i < node->inputs().size(); i++) {
  1179. AnfNodePtr item = node->input(i);
  1180. OperatorPtr op = Convert(item);
  1181. if (op != nullptr) {
  1182. tuple_items->emplace_back(OutHandler(op, ""));
  1183. } else if (out_handle_cache_.find(item.get()) != out_handle_cache_.end()) {
  1184. tuple_items->push_back(out_handle_cache_[item.get()]);
  1185. } else {
  1186. MS_LOG(WARNING) << "This anf node is not supported as a tuple item : " << item->ToString();
  1187. return;
  1188. }
  1189. }
  1190. tuple_out_handle_cache_[node.get()] = tuple_items;
  1191. }
  1192. AnfNodePtr DfGraphConvertor::TraceTupleGetItem(const CNodePtr &node, unsigned int *index) {
  1193. const int TUPLE_GET_ITEM_INDEX = 2;
  1194. if (node->inputs().size() < 3) { // "tuple_getitem" primitive must have 3 inputs
  1195. MS_LOG(EXCEPTION) << "length of inputs of TupleGetItem is less than 3";
  1196. }
  1197. auto index_node = node->inputs()[TUPLE_GET_ITEM_INDEX];
  1198. if (!index_node->isa<ValueNode>()) {
  1199. error_ = INVALID_ARGUMENT;
  1200. MS_LOG(EXCEPTION) << "can't convert get item with non-constant index";
  1201. }
  1202. *index = IntToUint(GetValue<int>(GetValueNode(index_node)));
  1203. return node->inputs()[1];
  1204. }
  1205. AnfNodePtr DfGraphConvertor::TraceDepend(const CNodePtr &node) {
  1206. auto cnode = node->cast<CNodePtr>();
  1207. if (cnode->inputs().size() < 3) { // "depend" primitive have 3 inputs
  1208. MS_LOG(EXCEPTION) << "length of inputs of depend is less than 3";
  1209. }
  1210. return cnode->inputs()[1];
  1211. }
  1212. AnfNodePtr DfGraphConvertor::TraceMakeTuple(const CNodePtr &node, unsigned int index) {
  1213. if (index + 1 >= node->inputs().size()) {
  1214. MS_LOG(EXCEPTION) << "length of make_tuple is less than index: " << index;
  1215. }
  1216. return node->inputs()[index + 1];
  1217. }
  1218. OutHandler DfGraphConvertor::GetHandler(const AnfNodePtr &node, const std::stack<unsigned int> &index_stack,
  1219. AnfNode *const draw_index) {
  1220. if (node == nullptr) {
  1221. MS_LOG(ERROR) << "Get nullptr while trace real op";
  1222. return OutHandler(nullptr, "");
  1223. }
  1224. std::ostringstream ss;
  1225. ss << "op" << node.get();
  1226. if (index_stack.empty()) {
  1227. op_draw_name_[draw_index] = ss.str();
  1228. return OutHandler(Convert(node), "");
  1229. } else {
  1230. OpAdapterPtr adpt = FindAdapter(node, training_);
  1231. if (nullptr == adpt) {
  1232. MS_LOG(ERROR) << "Can not get node output as adpt is nullptr!";
  1233. error_ = NOT_FOUND;
  1234. return OutHandler(nullptr, "");
  1235. }
  1236. OperatorPtr op = Convert(node);
  1237. if (op == nullptr) {
  1238. error_ = NOT_FOUND;
  1239. MS_LOG(ERROR) << "Can not convert node for trace real op";
  1240. return OutHandler(nullptr, "");
  1241. }
  1242. op_draw_name_[draw_index] = ss.str();
  1243. return adpt->getOutput(Convert(node), UintToInt(index_stack.top()));
  1244. }
  1245. }
  1246. // get the real operator through maketuple tuple_getitem depend
  1247. OutHandler DfGraphConvertor::TraceRealOp(AnfNodePtr node) {
  1248. bool flag = IsPrimitiveCNode(node, prim::kPrimTupleGetItem) || IsPrimitiveCNode(node, prim::kPrimMakeTuple) ||
  1249. IsPrimitiveCNode(node, prim::kPrimDepend);
  1250. std::stack<unsigned int> index_stack;
  1251. auto draw_index = node.get();
  1252. while (flag) {
  1253. flag = false;
  1254. if (IsPrimitiveCNode(node, prim::kPrimTupleGetItem)) {
  1255. unsigned int index;
  1256. node = TraceTupleGetItem(node->cast<CNodePtr>(), &index);
  1257. index_stack.push(index);
  1258. flag = true;
  1259. } else if (IsPrimitiveCNode(node, prim::kPrimMakeTuple)) {
  1260. if (index_stack.empty()) {
  1261. MS_LOG(ERROR) << "TraceRealOp find a make_tuple node";
  1262. return OutHandler(nullptr, "");
  1263. } else {
  1264. node = TraceMakeTuple(node->cast<CNodePtr>(), index_stack.top());
  1265. index_stack.pop();
  1266. flag = true;
  1267. }
  1268. } else if (IsPrimitiveCNode(node, prim::kPrimDepend)) {
  1269. node = TraceDepend(node->cast<CNodePtr>());
  1270. flag = true;
  1271. }
  1272. }
  1273. return GetHandler(node, index_stack, draw_index);
  1274. }
  1275. void DfGraphConvertor::ConvertTupleGetItem(const CNodePtr node) {
  1276. auto handle = TraceRealOp(node);
  1277. if (handle.op == nullptr) {
  1278. MS_LOG(ERROR) << "Failed to trace tuple get item";
  1279. return;
  1280. }
  1281. out_handle_cache_[node.get()] = handle;
  1282. }
  1283. // Get the real op for tuple_getitem through make tuple, or depend
  1284. AnfNodePtr DfGraphConvertor::GetRealOpNode(AnfNodePtr node) {
  1285. const int TUPLE_GET_ITEM_INDEX = 2;
  1286. if (IsPrimitiveCNode(node, prim::kPrimTupleGetItem)) {
  1287. auto node_inputs = node->cast<CNodePtr>()->inputs();
  1288. if (node_inputs.size() != 3) { // "tuple_getitem" primitive must have 3 inputs
  1289. MS_LOG(ERROR) << "tuple get item node not correct!";
  1290. error_ = FAILED;
  1291. return node;
  1292. }
  1293. MS_EXCEPTION_IF_NULL(node_inputs[TUPLE_GET_ITEM_INDEX]);
  1294. if (!node_inputs[TUPLE_GET_ITEM_INDEX]->isa<ValueNode>()) {
  1295. error_ = INVALID_ARGUMENT;
  1296. MS_LOG(EXCEPTION) << "can't convert get item with non-constant index";
  1297. }
  1298. auto value_ptr = GetValueNode(node_inputs[TUPLE_GET_ITEM_INDEX])->cast<Int32ImmPtr>();
  1299. if (value_ptr == nullptr) {
  1300. MS_LOG(ERROR) << "Can not convert get item as value is nullptr!";
  1301. error_ = FAILED;
  1302. return node;
  1303. }
  1304. int index = value_ptr->value();
  1305. // make_tuple apply inputs:make_tuple, [tuple_items,]
  1306. if (IsPrimitiveCNode(node_inputs[1], prim::kPrimMakeTuple)) {
  1307. auto tuple_inputs = node->cast<CNodePtr>()->inputs();
  1308. if (tuple_inputs.size() < IntToSize(index + 1)) {
  1309. MS_LOG(ERROR) << "make tuple input items node not correct! size:" << tuple_inputs.size()
  1310. << ", item index:" << index;
  1311. error_ = FAILED;
  1312. return node;
  1313. }
  1314. return GetRealOpNode(tuple_inputs[IntToSize(index + 1)]);
  1315. }
  1316. return GetRealOpNode(node_inputs[1]);
  1317. }
  1318. // depend apply inputs: depend,output,depended_node
  1319. if (IsPrimitiveCNode(node, prim::kPrimDepend)) {
  1320. auto depend_inputs = node->cast<CNodePtr>()->inputs();
  1321. if (depend_inputs.size() != 3) { // "depend" primitive have 3 inputs
  1322. MS_LOG(ERROR) << "depend input items not correct";
  1323. error_ = FAILED;
  1324. return node;
  1325. }
  1326. return GetRealOpNode(depend_inputs[1]);
  1327. }
  1328. return node;
  1329. }
  1330. // convert the anf node to corresponding operator list
  1331. std::vector<OperatorPtr> DfGraphConvertor::ConvertDependNode(const AnfNodePtr node) {
  1332. if (IsPrimitiveCNode(node, prim::kPrimMakeTuple)) {
  1333. std::vector<OperatorPtr> op_lists;
  1334. auto node_inputs = node->cast<CNodePtr>()->inputs();
  1335. for (size_t index = 1; index < node_inputs.size(); index++) {
  1336. auto op = Convert(GetRealOpNode(node_inputs[index]));
  1337. if (op == nullptr) {
  1338. MS_LOG(ERROR) << "Convert control depend node to operator failed";
  1339. error_ = FAILED;
  1340. return std::vector<OperatorPtr>({});
  1341. }
  1342. op_lists.push_back(op);
  1343. }
  1344. return op_lists;
  1345. }
  1346. auto op = Convert(GetRealOpNode(node));
  1347. if (op == nullptr) {
  1348. MS_LOG(ERROR) << "Convert control depend node to operator failed";
  1349. error_ = FAILED;
  1350. return std::vector<OperatorPtr>({});
  1351. }
  1352. return std::vector<OperatorPtr>({op});
  1353. }
  1354. // get the anf node list for depend
  1355. std::vector<AnfNodePtr> DfGraphConvertor::GetDependNodes(const AnfNodePtr &node) {
  1356. std::vector<AnfNodePtr> nodes;
  1357. // for make tuple, should control depend on the tuple items
  1358. if (IsPrimitiveCNode(node, prim::kPrimMakeTuple)) {
  1359. auto node_inputs = node->cast<CNodePtr>()->inputs();
  1360. for (size_t index = 1; index < node_inputs.size(); index++) {
  1361. nodes.push_back(GetRealOpNode(node_inputs[index]));
  1362. }
  1363. return nodes;
  1364. }
  1365. // for parameter ,find the apply that used the parameter as the control depended node
  1366. if (node->isa<Parameter>()) {
  1367. auto uses = node->func_graph()->manager()->node_users()[node];
  1368. for (auto &use : uses) {
  1369. auto use_node = use.first;
  1370. if ((use_node->isa<CNode>()) && (!IsPrimitiveCNode(use_node, prim::kPrimControlDepend))) {
  1371. nodes.push_back(GetRealOpNode(use_node));
  1372. }
  1373. }
  1374. return nodes;
  1375. }
  1376. nodes.push_back(GetRealOpNode(node));
  1377. return nodes;
  1378. }
  1379. void DfGraphConvertor::DrawControlDepend(const AnfNodePtr &src_node, const AnfNodePtr &dest_node) {
  1380. #ifdef DRAW_GE_GRAPH
  1381. auto src_depend_nodes = GetDependNodes(src_node);
  1382. auto dst_depend_nodes = GetDependNodes(dest_node);
  1383. if (src_depend_nodes.size() == 1 && dst_depend_nodes.size() > 1) {
  1384. for (auto &item : dst_depend_nodes) {
  1385. compute_sout_ << op_draw_name_[src_depend_nodes[0].get()] << " -> " << op_draw_name_[item.get()]
  1386. << "[style=\"dotted\"]" << endl;
  1387. }
  1388. } else if (src_depend_nodes.size() > 1 && dst_depend_nodes.size() == 1) {
  1389. for (auto &item : src_depend_nodes) {
  1390. compute_sout_ << op_draw_name_[item.get()] << " -> " << op_draw_name_[dst_depend_nodes[0].get()]
  1391. << "[style=\"dotted\"]" << endl;
  1392. }
  1393. } else if (src_depend_nodes.size() == 1 && dst_depend_nodes.size() == 1) {
  1394. compute_sout_ << op_draw_name_[src_depend_nodes[0].get()] << " -> " << op_draw_name_[dst_depend_nodes[0].get()]
  1395. << "[style=\"dotted\"]" << endl;
  1396. }
  1397. #endif
  1398. }
  1399. void DfGraphConvertor::GetDependOnParameterUse(const CNodePtr &node, const AnfNodePtr &src_node,
  1400. const AnfNodePtr &dest_node,
  1401. const std::shared_ptr<std::vector<OperatorPtr>> &src_ops_list,
  1402. const std::shared_ptr<std::vector<OperatorPtr>> &dst_ops_list) {
  1403. if (src_node->isa<Parameter>()) {
  1404. auto uses = node->func_graph()->manager()->node_users()[src_node];
  1405. for (auto &use : uses) {
  1406. auto use_node = use.first;
  1407. if ((use_node->isa<CNode>()) && (!IsPrimitiveCNode(use_node, prim::kPrimControlDepend)) &&
  1408. (!IsPrimitiveCNode(use_node, prim::kPrimMakeTuple))) {
  1409. auto converted_list = ConvertDependNode(use_node);
  1410. src_ops_list->insert(src_ops_list->end(), converted_list.begin(), converted_list.end());
  1411. }
  1412. }
  1413. }
  1414. if (dest_node->isa<Parameter>()) {
  1415. auto uses = node->func_graph()->manager()->node_users()[dest_node];
  1416. for (auto &use : uses) {
  1417. auto use_node = use.first;
  1418. if ((use_node->isa<CNode>()) && (!IsPrimitiveCNode(use_node, prim::kPrimControlDepend)) &&
  1419. (!IsPrimitiveCNode(use_node, prim::kPrimMakeTuple))) {
  1420. auto converted_list = ConvertDependNode(use_node);
  1421. dst_ops_list->insert(dst_ops_list->end(), converted_list.begin(), converted_list.end());
  1422. }
  1423. }
  1424. }
  1425. }
  1426. bool DfGraphConvertor::GetControlDependList(const CNodePtr &node,
  1427. const std::shared_ptr<std::vector<OperatorPtr>> &src_ops_list,
  1428. const std::shared_ptr<std::vector<OperatorPtr>> &dst_ops_list) {
  1429. const int CONTROL_DEPEND_INDEX = 0;
  1430. const int SRC_NODE_INDEX = 1;
  1431. const int DEST_NODE_INDEX = 2;
  1432. const int DEPEND_MODE_NORMAL_USE = 0;
  1433. const int DEPEND_MODE_ON_PARAMETER_USE = 1;
  1434. auto node_inputs = node->inputs();
  1435. if (node_inputs.size() <= DEST_NODE_INDEX) {
  1436. MS_LOG(WARNING) << "Control depend node input size error";
  1437. return false;
  1438. }
  1439. auto src_node = node_inputs[SRC_NODE_INDEX];
  1440. auto dest_node = node_inputs[DEST_NODE_INDEX];
  1441. if ((src_node == nullptr) || (dest_node == nullptr)) {
  1442. MS_LOG(ERROR) << "Control depend node miss src or dest node";
  1443. error_ = FAILED;
  1444. return false;
  1445. }
  1446. AnfNodePtr fn = node_inputs[CONTROL_DEPEND_INDEX];
  1447. PrimitivePtr prim_ptr = GetValueNode<PrimitivePtr>(fn);
  1448. ValuePtr mode_ptr = prim_ptr->GetAttr("depend_mode");
  1449. int depend_mode = DEPEND_MODE_NORMAL_USE;
  1450. if (mode_ptr != nullptr) {
  1451. auto mode_int = mode_ptr->cast<Int32ImmPtr>();
  1452. MS_EXCEPTION_IF_NULL(mode_int);
  1453. depend_mode = mode_int->value();
  1454. MS_LOG(DEBUG) << "depend_mode = " << depend_mode;
  1455. }
  1456. if (depend_mode == DEPEND_MODE_ON_PARAMETER_USE) {
  1457. GetDependOnParameterUse(node, src_node, dest_node, src_ops_list, dst_ops_list);
  1458. }
  1459. if (src_node->isa<CNode>()) {
  1460. auto converted_list = ConvertDependNode(src_node);
  1461. src_ops_list->insert(src_ops_list->end(), converted_list.begin(), converted_list.end());
  1462. }
  1463. if (dest_node->isa<CNode>()) {
  1464. auto converted_list = ConvertDependNode(dest_node);
  1465. dst_ops_list->insert(dst_ops_list->end(), converted_list.begin(), converted_list.end());
  1466. }
  1467. if (src_ops_list->empty() || dst_ops_list->empty()) {
  1468. MS_LOG(WARNING) << "Control depend node's src or dest node is not a apply node, ignore it";
  1469. error_ = SUCCESS;
  1470. }
  1471. return true;
  1472. }
  1473. void DfGraphConvertor::ConvertControlDependNode(const CNodePtr node) {
  1474. const int SRC_NODE_INDEX = 1;
  1475. const int DEST_NODE_INDEX = 2;
  1476. if (control_depend_cache_.find(node.get()) != control_depend_cache_.end()) {
  1477. return;
  1478. }
  1479. auto node_inputs = node->inputs();
  1480. if (node_inputs.size() <= DEST_NODE_INDEX) {
  1481. MS_LOG(WARNING) << "Control depend node input size error";
  1482. return;
  1483. }
  1484. auto src_node = node_inputs[SRC_NODE_INDEX];
  1485. auto dest_node = node_inputs[DEST_NODE_INDEX];
  1486. if ((src_node == nullptr) || (dest_node == nullptr)) {
  1487. MS_LOG(ERROR) << "Control depend node miss src or dest node";
  1488. error_ = FAILED;
  1489. return;
  1490. }
  1491. std::shared_ptr<std::vector<OperatorPtr>> src_ops_list = std::make_shared<std::vector<OperatorPtr>>();
  1492. std::shared_ptr<std::vector<OperatorPtr>> dst_ops_list = std::make_shared<std::vector<OperatorPtr>>();
  1493. if (!GetControlDependList(node, src_ops_list, dst_ops_list)) {
  1494. MS_LOG(ERROR) << "Get depend list failed";
  1495. error_ = FAILED;
  1496. return;
  1497. }
  1498. std::vector<ControlEdge> control_edges;
  1499. if (src_ops_list->size() == 1 && dst_ops_list->size() > 1) {
  1500. (void)std::transform(dst_ops_list->begin(), dst_ops_list->end(), std::back_inserter(control_edges),
  1501. [src_ops_list](const OperatorPtr &op) -> ControlEdge {
  1502. return {(*src_ops_list)[0], op};
  1503. });
  1504. } else if (src_ops_list->size() > 1 && dst_ops_list->size() == 1) {
  1505. (void)std::transform(src_ops_list->begin(), src_ops_list->end(), std::back_inserter(control_edges),
  1506. [dst_ops_list](const OperatorPtr &op) -> ControlEdge {
  1507. return {op, (*dst_ops_list)[0]};
  1508. });
  1509. } else if (src_ops_list->size() == 1 && dst_ops_list->size() == 1) {
  1510. control_edges.push_back({(*src_ops_list)[0], (*dst_ops_list)[0]});
  1511. } else {
  1512. MS_LOG(ERROR) << "Convert control depend node to operator failed, depend src:" << src_ops_list->size()
  1513. << " -> dst:" << dst_ops_list->size();
  1514. error_ = FAILED;
  1515. return;
  1516. }
  1517. control_depend_cache_[node.get()] = control_edges;
  1518. #ifdef DRAW_GE_GRAPH
  1519. DrawControlDepend(src_node, dest_node);
  1520. #endif
  1521. }
  1522. bool DfGraphConvertor::CheckCNode(const std::string &name, const CNodePtr node) {
  1523. // ignore apply node of return
  1524. if (name == "return" || name == "depend") {
  1525. return false;
  1526. }
  1527. // make_tuple is used for a dynamic_input, convert it to a vector of OutHandlers
  1528. if (name == "make_tuple") {
  1529. ConvertMakeTuple(node);
  1530. return false;
  1531. }
  1532. // As for nodes with multi outputs, convert tuple_getitem to OutHandle
  1533. if (name == "tuple_getitem") {
  1534. ConvertTupleGetItem(node);
  1535. return false;
  1536. }
  1537. if (name == "ControlDepend") {
  1538. ConvertControlDependNode(node);
  1539. return false;
  1540. }
  1541. return true;
  1542. }
  1543. OperatorPtr DfGraphConvertor::ConvertCNode(const CNodePtr node) {
  1544. std::string name = GetCNodeFuncName(node);
  1545. if (!CheckCNode(name, node)) {
  1546. return nullptr;
  1547. }
  1548. // get corresponding OpAdapter
  1549. OpAdapterPtr adpt = FindAdapter(node, training_);
  1550. if (adpt == nullptr) {
  1551. error_ = NOT_FOUND;
  1552. return nullptr;
  1553. }
  1554. // get operator
  1555. OperatorPtr op = nullptr;
  1556. auto it_op = op_cache_.find(node.get());
  1557. if (it_op != op_cache_.end()) {
  1558. op = it_op->second;
  1559. } else {
  1560. op = adpt->generate(node);
  1561. }
  1562. // set attribute for primitive
  1563. (void)adpt->setAttr(op, node);
  1564. // add into cache
  1565. (void)op_cache_.insert(std::make_pair(node.get(), op));
  1566. DrawCNode(node, adpt);
  1567. return op_cache_[node.get()];
  1568. }
  1569. OperatorPtr DfGraphConvertor::ConvertParameter(const AnfNodePtr node) {
  1570. // convert Parameter in ANF to variable in DataFlow
  1571. auto op = FindAdapter(node, training_)->generate(node);
  1572. op_cache_[node.get()] = op;
  1573. // build index for parameter using name
  1574. std::string name = std::static_pointer_cast<Parameter>(node)->name();
  1575. params_[name] = node;
  1576. std::ostringstream ss;
  1577. ss << "op" << node.get();
  1578. op_draw_name_[node.get()] = ss.str();
  1579. compute_sout_ << ss.str() << "[shape=octagon, label=\"" << name << "\"]" << endl;
  1580. return op_cache_[node.get()];
  1581. }
  1582. Status DfGraphConvertor::TryConvertValueNodeToMultiConst(const ValueNodePtr node) {
  1583. MS_EXCEPTION_IF_NULL(node);
  1584. ValuePtr value = node->value();
  1585. MS_EXCEPTION_IF_NULL(value);
  1586. if (!value->isa<ValueList>() && !value->isa<ValueTuple>()) {
  1587. return FAILED;
  1588. }
  1589. auto vec = value->isa<ValueTuple>() ? value->cast<ValueTuplePtr>()->value() : value->cast<ValueListPtr>()->value();
  1590. if (vec.empty()) {
  1591. return FAILED;
  1592. }
  1593. std::shared_ptr<std::vector<OutHandler>> tuple_items = std::make_shared<std::vector<OutHandler>>();
  1594. for (size_t i = 0; i < vec.size(); i++) {
  1595. MS_EXCEPTION_IF_NULL(vec[i]);
  1596. if (vec[i]->isa<MeTensor>()) {
  1597. GeTensorPtr ge_tensor = transform::TransformUtil::ConvertTensor(vec[i]->cast<MeTensorPtr>(), kOpFormat_NCHW);
  1598. auto const_op = std::make_shared<Constant>(node->fullname_with_scope() + "/const/inputs/" + std::to_string(i));
  1599. (void)const_op->set_attr_value(*ge_tensor);
  1600. (void)const_op->update_output_desc_y(ge_tensor->GetTensorDesc());
  1601. tuple_items->emplace_back(OutHandler(const_op, ""));
  1602. } else {
  1603. return FAILED;
  1604. }
  1605. }
  1606. if (tuple_items->empty()) {
  1607. return FAILED;
  1608. }
  1609. tuple_out_handle_cache_[node.get()] = tuple_items;
  1610. return SUCCESS;
  1611. }
  1612. OperatorPtr DfGraphConvertor::ConvertValueNode(const ValueNodePtr node) {
  1613. // convert valuenode in ANF to Const in DataFlow
  1614. // find paramerte referenced by SymbolicKeyInstance of valuenode
  1615. std::ostringstream ss;
  1616. ss << "op" << node.get();
  1617. op_draw_name_[node.get()] = ss.str();
  1618. compute_sout_ << ss.str() << "[label= \"" << node->value()->ToString() << "\" shape=ellipse]" << endl;
  1619. if (TryConvertValueNodeToMultiConst(node) == SUCCESS) {
  1620. MS_LOG(INFO) << "Convert value node to multi Constant OP success";
  1621. return nullptr;
  1622. }
  1623. OpAdapterPtr adpt = FindAdapter(node, training_);
  1624. if (adpt == nullptr) {
  1625. error_ = NOT_FOUND;
  1626. return nullptr;
  1627. }
  1628. auto op = adpt->generate(node);
  1629. // set const's attrs
  1630. if (adpt->setAttr(op, "value", node->value()) != 0) {
  1631. MS_LOG(WARNING) << "set attr value for const failed";
  1632. }
  1633. #if (defined ENABLE_GE)
  1634. auto const_op = std::static_pointer_cast<Constant>(op);
  1635. if (const_op == nullptr) {
  1636. MS_LOG(ERROR) << "Get Constant operator failed";
  1637. return nullptr;
  1638. }
  1639. auto ge_tensor = const_op->get_attr_value();
  1640. auto ge_desc = ge_tensor.GetTensorDesc();
  1641. (void)const_op->update_output_desc_y(ge_desc);
  1642. #endif
  1643. op_cache_[node.get()] = op;
  1644. return op_cache_[node.get()];
  1645. }
  1646. void DfGraphConvertor::DrawCNode(const CNodePtr node, const OpAdapterPtr adpt) {
  1647. if (nullptr == adpt || nullptr == node) {
  1648. MS_LOG(ERROR) << "Failed to draw apply node as adpt or node is nullptr!";
  1649. return;
  1650. }
  1651. std::ostringstream ss;
  1652. ss << "op" << node.get();
  1653. op_draw_name_[node.get()] = ss.str();
  1654. compute_sout_ << ss.str() << "[label=<";
  1655. compute_sout_ << "<table border='1' cellborder='1'>" << endl;
  1656. auto input_map = adpt->getInputMap();
  1657. auto dyn_input_map = adpt->getDynInputMap();
  1658. if (input_map.size() + dyn_input_map.size() > 0) {
  1659. compute_sout_ << "<tr>";
  1660. for (auto &it : input_map) {
  1661. compute_sout_ << "<td port='" << it.first << "'>" << it.second.name << "</td>";
  1662. }
  1663. for (auto &it : dyn_input_map) {
  1664. compute_sout_ << "<td port='" << it.first << "'>" << it.second.name << "</td>";
  1665. }
  1666. compute_sout_ << "</tr>" << endl;
  1667. }
  1668. compute_sout_ << "<tr><td colspan=\"" << (input_map.size() + dyn_input_map.size()) << "\">\"" << node->ToString()
  1669. << ":" << GetCNodeFuncName(node) << "\"</td></tr>" << endl;
  1670. // print attrs' values
  1671. auto atts = adpt->GetAttrsFromDrawGraph();
  1672. for (auto &it : atts) {
  1673. compute_sout_ << "<tr><td colspan=\"" << (input_map.size() + dyn_input_map.size()) << "\">\"" << it
  1674. << "\"</td></tr>";
  1675. }
  1676. adpt->clearAttrVect();
  1677. compute_sout_ << "</table>> shape=plaintext]" << endl;
  1678. }
  1679. } // namespace transform
  1680. } // namespace mindspore