mirror of https://github.com/llvm/torch-mlir
Fixup local ndarray<->tensor transforms to preserve shape.
* Preserving shape across the copy ops makes more thing shaped by default. * Inference of ndarray types will now preserve the shape when specializing the dtype.pull/1/head
parent
fae15ec5e7
commit
504e3c4946
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@ -219,11 +219,14 @@ NdArrayType::mapToCPAType(Typing::CPA::Context &context) {
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// anyway.
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dtype = context.getIRValueType(getDtype());
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}
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auto irCtor = [](Typing::CPA::ObjectValueType *ovt,
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// Safe to capture an ArrayRef backed by type storage since it is uniqued.
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auto optionalShape = getOptionalShape();
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auto irCtor = [optionalShape](Typing::CPA::ObjectValueType *ovt,
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llvm::ArrayRef<mlir::Type> fieldTypes,
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MLIRContext *mlirContext, llvm::Optional<Location>) {
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MLIRContext *mlirContext,
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llvm::Optional<Location>) {
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assert(fieldTypes.size() == 1);
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return NdArrayType::get(fieldTypes.front());
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return NdArrayType::get(fieldTypes.front(), optionalShape);
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};
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return Typing::CPA::newArrayType(context, irCtor,
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context.getIdentifier("!NdArray"), dtype);
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@ -121,7 +121,13 @@ public:
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"numpy_copy_to_tensor_op");
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}
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auto dtype = sourceType.getDtype();
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auto tensorType = UnrankedTensorType::get(dtype);
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auto optionalShape = sourceType.getOptionalShape();
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TensorType tensorType;
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if (optionalShape) {
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tensorType = RankedTensorType::get(*optionalShape, dtype);
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} else {
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tensorType = UnrankedTensorType::get(dtype);
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}
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OpBuilder &opBuilder = self.pyOpBuilder.getBuilder(true);
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Location loc = self.pyOpBuilder.getCurrentLoc();
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auto op = opBuilder.create<Numpy::CopyToTensorOp>(
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@ -136,7 +142,12 @@ public:
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"numpy_create_array_from_tensor_op");
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}
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auto dtype = sourceType.getElementType();
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auto ndarrayType = Numpy::NdArrayType::get(dtype);
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llvm::Optional<ArrayRef<int64_t>> optionalShape;
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if (auto rankedTensorType =
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sourceType.dyn_cast<RankedTensorType>()) {
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optionalShape = rankedTensorType.getShape();
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}
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auto ndarrayType = Numpy::NdArrayType::get(dtype, optionalShape);
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OpBuilder &opBuilder = self.pyOpBuilder.getBuilder(true);
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Location loc = self.pyOpBuilder.getCurrentLoc();
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auto op = opBuilder.create<Numpy::CreateArrayFromTensorOp>(
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@ -13,6 +13,6 @@ global_data = (np.zeros((2, 3)) + [1.0, 2.0, 3.0] * np.reshape([1.0, 2.0],
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@import_global
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def global_array_to_const():
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# CHECK: %[[CST:.*]] = constant dense<{{\[\[}}1.000000e+00, 2.000000e+00, 3.000000e+00], [2.000000e+00, 4.000000e+00, 6.000000e+00]]> : tensor<2x3xf64>
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# CHECK: numpy.create_array_from_tensor %[[CST]] : (tensor<2x3xf64>) -> !numpy.ndarray<*:f64>
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# CHECK: numpy.create_array_from_tensor %[[CST]] : (tensor<2x3xf64>) -> !numpy.ndarray<[2,3]:f64>
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local_data = global_data
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return local_data
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@ -20,6 +20,6 @@ b = np.asarray([3.0, 4.0])
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@import_global
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def global_add():
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# CHECK-NOT: UnknownType
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# CHECK: numpy.builtin_ufunc_call<"numpy.add"> ({{.*}}, {{.*}}) : (tensor<*xf64>, tensor<*xf64>) -> tensor<*xf64>
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# CHECK: numpy.builtin_ufunc_call<"numpy.add"> ({{.*}}, {{.*}}) : (tensor<2xf64>, tensor<2xf64>) -> tensor<*xf64>
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# CHECK-NOT: UnknownType
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return np.add(a, b)
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@ -24,7 +24,7 @@ def global_add():
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# CHECK-DAG: %[[B_ARRAY:.*]] = numpy.create_array_from_tensor %[[CST_B_TENSOR]]
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# CHECK-DAG: %[[A:.*]] = numpy.copy_to_tensor %[[A_ARRAY]]
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# CHECK-DAG: %[[B:.*]] = numpy.copy_to_tensor %[[B_ARRAY]]
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# CHECK: %[[R_TENSOR:.*]] = numpy.builtin_ufunc_call<"numpy.add"> (%[[A]], %[[B]]) : (tensor<*xf64>, tensor<*xf64>) -> tensor<*x!basicpy.UnknownType>
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# CHECK: %[[R_TENSOR:.*]] = numpy.builtin_ufunc_call<"numpy.add"> (%[[A]], %[[B]]) : (tensor<2xf64>, tensor<2xf64>) -> tensor<*x!basicpy.UnknownType>
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# CHECK: numpy.create_array_from_tensor %[[R_TENSOR]] : (tensor<*x!basicpy.UnknownType>) -> !numpy.ndarray<*:?>
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return np.add(a, b)
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