Merge branch 'master' into fix-conv
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commit
d895670656
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@ -90,17 +90,17 @@ def ONNXEntryPointOp: ONNX_Op<"EntryPoint"> {
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// or outputs. This decision affects only ONNX operations with optional
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// arguments not ONNX operations with variadic operands.
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def ONNXFullGemmOp: ONNX_Op<"FullGemm",
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def ONNXGemmNoBiasOp: ONNX_Op<"GemmNoBias",
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[NoSideEffect, DeclareOpInterfaceMethods<ShapeInferenceOpInterface>]> {
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let summary = "ONNX general matrix multiply operation";
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let summary = "ONNX general matrix multiply operation without bias.";
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let description = [{
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The "onnx.gemm" generic matrix multiplication with bias.
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The "onnx.Gemm" generic matrix multiplication without bias.
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}];
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let arguments = (ins AnyTensor:$lhs_in, AnyTensor:$rhs_in, AnyTensor:$bias_in);
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let results = (outs AnyTensor);
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let arguments = (ins AnyTypeOf<[AnyMemRef, AnyTensor]>:$lhs_in, AnyTypeOf<[AnyMemRef, AnyTensor]>:$rhs_in);
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let results = (outs AnyTypeOf<[AnyMemRef, AnyTensor]>);
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}
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def ONNXConvNoBiasOp:ONNX_Op<"ConvNoBias",
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@ -347,9 +347,9 @@ void ONNXGemmOp::inferShapes() {
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getResult().setType(RankedTensorType::get(dims, lhsTy.getElementType()));
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}
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// FullGemm
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// GemmNoBias
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void ONNXFullGemmOp::inferShapes() {
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void ONNXGemmNoBiasOp::inferShapes() {
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// Cannot infer shape if no shape exists.
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if (!getOperand(0).getType().isa<RankedTensorType>() ||
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!getOperand(1).getType().isa<RankedTensorType>())
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@ -30,9 +30,9 @@ def HasOneUse : Constraint<CPred<"$0.hasOneUse()">>;
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// Pattern-Match and Rewrite
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//===----------------------------------------------------------------------===//
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// onnx.add(onnx.matmul(%X, %Y), %Z) = onnx.FullGemm(%X, %Y, %Z)
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// onnx.add(onnx.matmul(%X, %Y), %Z) = onnx.Gemm(%X, %Y, %Z)
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def MulAddToGemmOptPattern : Pat<(ONNXAddOp (ONNXMatMulOp:$res $m1, $m2), $m3),
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(ONNXFullGemmOp $m1, $m2, $m3),
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(ONNXGemmOp $m1, $m2, $m3),
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[(HasOneUse $res)]>;
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// ONNX_Op (onnx.Identity (%X)) = ONNX_Op (%X)
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@ -114,7 +114,7 @@ public:
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op->getName().getStringRef() != "onnx.Identity" &&
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op->getName().getStringRef() != "onnx.MatMul" &&
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op->getName().getStringRef() != "onnx.Gemm" &&
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op->getName().getStringRef() != "onnx.FullGemm" &&
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op->getName().getStringRef() != "onnx.GemmNoBias" &&
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op->getName().getStringRef() != "onnx.Reshape" &&
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op->getName().getStringRef() != "onnx.Transpose")
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return false;
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@ -2,7 +2,7 @@
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func @test_matmul_add_simplification(%a0: tensor<10x10xf32>, %a1: tensor<10x10xf32>, %a2: tensor<10x10xf32>) -> tensor<10x10xf32> {
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// CHECK-LABEL: test_matmul_add_simplification
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// CHECK: %{{[0-9]+}} = "onnx.FullGemm"(%{{.*}}, %{{.*}}, %{{.*}}) : (tensor<10x10xf32>, tensor<10x10xf32>, tensor<10x10xf32>) -> tensor<10x10xf32>
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// CHECK: %{{[0-9]+}} = "onnx.Gemm"(%{{.*}}, %{{.*}}, %{{.*}}) : (tensor<10x10xf32>, tensor<10x10xf32>, tensor<10x10xf32>) -> tensor<10x10xf32>
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%0 = "onnx.MatMul"(%a0, %a1) : (tensor<10x10xf32>, tensor<10x10xf32>) -> tensor<10x10xf32>
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%1 = "onnx.Add"(%0, %a2) : (tensor<10x10xf32>, tensor<10x10xf32>) -> tensor<10x10xf32>
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"std.return"(%1) : (tensor<10x10xf32>) -> ()
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