mirror of https://github.com/llvm/torch-mlir
[Torch] support float_power and threshold ops (#3854)
parent
2f33f31724
commit
dda65b196d
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@ -5242,6 +5242,30 @@ def Torch_AtenPowScalarOp : Torch_Op<"aten.pow.Scalar", [
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}];
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}
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def Torch_AtenFloatPowerTensorTensorOp : Torch_Op<"aten.float_power.Tensor_Tensor", [
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AllowsTypeRefinement,
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HasValueSemantics,
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ReadOnly
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]> {
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let summary = "Generated op for `aten::float_power.Tensor_Tensor : (Tensor, Tensor) -> (Tensor)`";
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let arguments = (ins
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AnyTorchTensorType:$self,
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AnyTorchTensorType:$exponent
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);
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let results = (outs
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AnyTorchOptionalTensorType:$result
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);
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let hasCustomAssemblyFormat = 1;
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let extraClassDefinition = [{
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ParseResult AtenFloatPowerTensorTensorOp::parse(OpAsmParser &parser, OperationState &result) {
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return parseDefaultTorchOp(parser, result, 2, 1);
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}
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void AtenFloatPowerTensorTensorOp::print(OpAsmPrinter &printer) {
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printDefaultTorchOp(printer, *this, 2, 1);
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}
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}];
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}
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def Torch_AtenThresholdBackwardOp : Torch_Op<"aten.threshold_backward", [
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AllowsTypeRefinement,
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HasValueSemantics,
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@ -10439,6 +10439,63 @@ public:
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};
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} // namespace
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namespace {
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class DecomposeAtenThresholdOp : public OpRewritePattern<AtenThresholdOp> {
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public:
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using OpRewritePattern<AtenThresholdOp>::OpRewritePattern;
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LogicalResult matchAndRewrite(AtenThresholdOp op,
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PatternRewriter &rewriter) const override {
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Location loc = op.getLoc();
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Value self = op.getSelf();
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auto selfType = dyn_cast<BaseTensorType>(self.getType());
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if (!selfType || !selfType.hasSizes()) {
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return rewriter.notifyMatchFailure(op,
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"requires input is tensor with sizes");
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}
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Value threshold = op.getThreshold();
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Value value = op.getValue();
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auto comOp = rewriter.create<AtenGtScalarOp>(
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loc,
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selfType.getWithSizesAndDtype(selfType.getSizes(),
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rewriter.getI1Type()),
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self, threshold);
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rewriter.replaceOpWithNewOp<AtenWhereScalarOtherOp>(op, op.getType(), comOp,
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self, value);
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return success();
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}
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};
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} // namespace
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namespace {
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class DecomposeAtenFloatPowerTensorTensorOp
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: public OpRewritePattern<AtenFloatPowerTensorTensorOp> {
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public:
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using OpRewritePattern<AtenFloatPowerTensorTensorOp>::OpRewritePattern;
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LogicalResult matchAndRewrite(AtenFloatPowerTensorTensorOp op,
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PatternRewriter &rewriter) const override {
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Location loc = op.getLoc();
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Value self = op.getSelf();
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Value exp = op.getExponent();
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auto selfTy = dyn_cast<BaseTensorType>(self.getType());
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if (!selfTy || !selfTy.hasDtype() || !selfTy.hasSizes()) {
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return rewriter.notifyMatchFailure(
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op, "requires input is tensor with dtype and sizes");
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}
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Value selfF64 =
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convertTensorToDtype(rewriter, loc, self, rewriter.getF64Type());
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rewriter.replaceOpWithNewOp<AtenPowTensorTensorOp>(op, op.getType(),
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selfF64, exp);
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return success();
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}
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};
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} // namespace
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namespace {
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class DecomposeComplexOpsPass
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: public DecomposeComplexOpsBase<DecomposeComplexOpsPass> {
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@ -10711,6 +10768,9 @@ public:
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addPatternIfTargetOpIsIllegal<DecomposeAtenConv1dOp>(patterns);
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addPatternIfTargetOpIsIllegal<DecomposeAtenConv2dOp>(patterns);
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addPatternIfTargetOpIsIllegal<DecomposeAtenConv3dOp>(patterns);
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addPatternIfTargetOpIsIllegal<DecomposeAtenThresholdOp>(patterns);
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addPatternIfTargetOpIsIllegal<DecomposeAtenFloatPowerTensorTensorOp>(
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patterns);
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addPatternIfTargetOpIsIllegal<
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DecomposeAtenFMaxMinOp<AtenFmaxOp, AtenMaximumOp>>(patterns);
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@ -886,13 +886,6 @@ FX_IMPORTER_STABLEHLO_XFAIL_SET = {
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"TensorToFloatZeroRank_basic",
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"TensorToFloat_basic",
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"TensorToInt_basic",
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"Threshold1dFloatModule_basic",
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"Threshold1dIntI32Module_basic",
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"Threshold1dIntModule_basic",
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"Threshold2dFloatModule_basic",
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"Threshold2dIntModule_basic",
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"Threshold3dFloatModule_basic",
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"Threshold3dIntModule_basic",
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"ThresholdBackward1dFloatModule_basic",
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"ThresholdBackward1dIntModule_basic",
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"ThresholdBackward1dMixedModule_basic",
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@ -2717,6 +2710,7 @@ ONNX_XFAIL_SET = {
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"ElementwiseFminModule_basic",
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"ElementwiseFmaxModule_basic",
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"Exp2StaticModule_basic",
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"FloatPowerTensorTensorStaticModule_basic",
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"MultinomialModule2D_basic",
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"MultinomialModule2D_F32",
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"PixelShuffleModuleStaticRank4Float32_basic",
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@ -2727,6 +2721,7 @@ ONNX_XFAIL_SET = {
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"SliceStaticComplexInputModule_basic",
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"StdCorrectionLargeInputModule_basic",
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"TupleModule_basic",
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"ThresholdStaticModule_basic",
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"VarCorrectionLargeInputModule_basic",
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# Failure - incorrect shape
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"ArangeStartOutDtypeModule_basic",
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@ -499,6 +499,7 @@ def emit_ops(emitter_td: TextEmitter, registry: Registry):
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emit("aten::pow.Tensor_Scalar : (Tensor, Scalar) -> (Tensor)")
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emit("aten::pow.Tensor_Tensor : (Tensor, Tensor) -> (Tensor)")
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emit("aten::pow.Scalar : (Scalar, Tensor) -> (Tensor)")
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emit("aten::float_power.Tensor_Tensor : (Tensor, Tensor) -> (Tensor)")
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emit("aten::threshold_backward : (Tensor, Tensor, Scalar) -> (Tensor)")
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emit("aten::floor_divide : (Tensor, Tensor) -> (Tensor)")
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emit("aten::softplus : (Tensor, Scalar, Scalar) -> (Tensor)")
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@ -491,6 +491,29 @@ def ElementwiseWhereSelfModule_basic(module, tu: TestUtils):
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# ==============================================================================
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class FloatPowerTensorTensorStaticModule(torch.nn.Module):
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def __init__(self):
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super().__init__()
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@export
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@annotate_args(
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[
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None,
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([3, 4], torch.float32, True),
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]
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)
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def forward(self, x):
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return torch.ops.aten.float_power(x, torch.tensor(2))
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@register_test_case(module_factory=lambda: FloatPowerTensorTensorStaticModule())
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def FloatPowerTensorTensorStaticModule_basic(module, tu: TestUtils):
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module.forward(tu.rand(3, 4))
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# ==============================================================================
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class ElementwiseWhereScalarModule(torch.nn.Module):
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def __init__(self):
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super().__init__()
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