//===------------------------------------------------------------*- C++ -*-===// // // This file is licensed under the Apache License v2.0 with LLVM Exceptions. // See https://llvm.org/LICENSE.txt for license information. // SPDX-License-Identifier: Apache-2.0 WITH LLVM-exception // Also available under a BSD-style license. See LICENSE. // //===----------------------------------------------------------------------===// #include "torch-mlir/Conversion/TorchOnnxToTorch/Patterns.h" #include "torch-mlir/Conversion/TorchOnnxToTorch/Utils.h" #include "torch-mlir/Dialect/Torch/Utils/Utils.h" #include "llvm/ADT/ArrayRef.h" #include "llvm/ADT/SmallVector.h" using namespace mlir; using namespace mlir::torch; using namespace mlir::torch::onnx_c; // Simple rewrites for the default domain. // See: https://onnx.ai/onnx/operators/ // For operators that are effectively version invariant, we register with // sinceVersion==1. We interpret this to include the following spec // diffs that are irrelevant to this level of lowering: // * Supported element types. // * Limited broadcasting to full broadcasting support. // // There are a lot of spec revisions that basically generalized elementwise // to be more normal and a direct translation vs a special case. This // results in a lot of ONNX test cases that all reduce to the exact same // thing here, so we simplify. // utilities // Templatized function to get an item op of a type namespace { template Value getItemOp(OpBinder binder, ConversionPatternRewriter &rewriter, Value &ofItem) { return rewriter.create(binder.getLoc(), rewriter.getType(), ofItem); } } // namespace void mlir::torch::onnx_c::populateDefaultDomainQtoZ( OnnxCustomOpConversionPattern &patterns) { patterns.onOp( "QuantizeLinear", 1, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; llvm::SmallVector operands; if (binder.tensorOperands(operands, 3) || binder.tensorResultType(resultType)) return failure(); Value operand = operands[0]; Value scale = operands[1]; Value zeropoint = operands[2]; auto scaleTy = scale.getType().dyn_cast(); if (!scaleTy || !scaleTy.hasSizes()) return rewriter.notifyMatchFailure(binder.op, "requires known rank"); if (!resultType.hasDtype()) return rewriter.notifyMatchFailure(binder.op, "requires known result dtype"); if (scaleTy.getSizes().size() == 0) { Type qTy = resultType.getDtype(); if (qTy.isUnsignedInteger(8)) { qTy = rewriter.getType(); } else if (qTy.isSignedInteger(8)) { qTy = rewriter.getType(); } else if (qTy.isSignedInteger(32)) { qTy = rewriter.getType(); } else { return rewriter.notifyMatchFailure(binder.op, "unsupported result dtype"); } auto qTensorTy = rewriter.getType( resultType.getOptionalSizes(), qTy); auto torchqTy = Torch::getScalarTypeForType(qTy); Value tyConst = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), static_cast(torchqTy))); scale = rewriter.create( binder.getLoc(), rewriter.getType(), scale); zeropoint = rewriter.create( binder.getLoc(), rewriter.getType(), zeropoint); auto quantize = rewriter.create( binder.getLoc(), qTensorTy, operand, scale, zeropoint, tyConst); rewriter.replaceOpWithNewOp( binder.op, resultType, quantize); return success(); } return failure(); }); patterns.onOp( "QLinearConv", 1, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; llvm::SmallVector operands; if ((binder.tensorOperands(operands, 8) && binder.tensorOperands(operands, 9)) || binder.tensorResultType(resultType)) return failure(); Value a = operands[0]; Value aScale = operands[1]; Value aZp = operands[2]; Value b = operands[3]; Value bScale = operands[4]; Value bZp = operands[5]; Value cScale = operands[6]; Value cZp = operands[7]; Value c = operands.size() == 9 ? operands[8] : nullptr; auto check = [](Value v) { auto vTy = v.getType().cast(); return llvm::all_of(vTy.getSizes(), [](int64_t d) { return d == 1; }); }; if (!check(aScale) || !check(aZp) || !check(bScale) || !check(bZp) || !check(cScale) || !check(cScale)) return rewriter.notifyMatchFailure( binder.op, "not supported for non per-tensor quantization"); auto extract = [&rewriter, &binder](Value v) { auto vTy = v.getType().cast(); Type extractTy = rewriter.getType(); if (isa(vTy.getDtype())) extractTy = rewriter.getType(); return rewriter.create(binder.getLoc(), extractTy, v); }; aZp = extract(aZp); bZp = extract(bZp); cZp = extract(cZp); aScale = extract(aScale); bScale = extract(bScale); cScale = extract(cScale); auto make = [&rewriter, &binder](Value v, Value scale, Value zp) -> Value { auto ty = v.getType().cast(); auto newTy = getQTorchTypeFromTorchIntType(ty); return rewriter.create( binder.getLoc(), newTy, v, scale, zp); }; a = make(a, aScale, aZp); b = make(b, bScale, bZp); auto cTy = rewriter.getType( resultType.getOptionalSizes(), rewriter.getIntegerType(32, /*issigned=*/true)); // TODO(suderman): insert convolution operator. llvm::SmallVector newOperands = {a, b}; if (c) newOperands.push_back(c); cTy = rewriter.getType( resultType.getOptionalSizes(), rewriter.getType()); llvm::SmallVector newAttributes; newAttributes.push_back( rewriter.getNamedAttr("name", rewriter.getStringAttr("onnx.Conv"))); for (auto namedAttr : binder.op->getAttrDictionary()) { if (namedAttr.getName().getValue().compare("name") == 0) continue; llvm::errs() << namedAttr.getName() << "\n"; newAttributes.push_back(namedAttr); } c = rewriter .create(binder.getLoc(), cTy, newOperands, newAttributes, binder.op->getRegions().size()) .getResult(0); Value outScale = rewriter.create( binder.getLoc(), rewriter.getType(), aScale, bScale); Value outZp = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), 0)); c = rewriter.create( binder.getLoc(), cTy, c, outScale, outZp); cTy = rewriter.getType( resultType.getOptionalSizes(), rewriter.getF32Type()); c = rewriter.create(binder.getLoc(), cTy, c); cTy = dyn_cast( getQTorchTypeFromTorchIntType(resultType)); Value dtyVal = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr( rewriter.getIntegerType(64), static_cast( Torch::getScalarTypeForType(cTy.getDtype())))); c = rewriter.create( binder.getLoc(), cTy, c, cScale, cZp, dtyVal); rewriter.replaceOpWithNewOp(binder.op, resultType, c); return success(); }); patterns.onOp( "QLinearMatMul", 1, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; llvm::SmallVector operands; if (binder.tensorOperands(operands, 8) || binder.tensorResultType(resultType)) return failure(); Value a = operands[0]; Value aScale = operands[1]; Value aZp = operands[2]; Value b = operands[3]; Value bScale = operands[4]; Value bZp = operands[5]; Value cScale = operands[6]; Value cZp = operands[7]; auto check = [](Value v) { auto vTy = v.getType().cast(); for (auto dim : vTy.getSizes()) if (dim != 1) return false; return true; }; if (!check(aScale) || !check(aZp) || !check(bScale) || !check(bZp) || !check(cScale) || !check(cScale)) return rewriter.notifyMatchFailure( binder.op, "not supported for non per-tensor quantization"); Value emptyList = rewriter.create( binder.getLoc(), rewriter.getType( rewriter.getType()), ValueRange{}); auto extract = [&rewriter, &binder, &emptyList](Value v) { auto vTy = v.getType().cast(); if (!vTy.getSizes().empty()) { vTy = rewriter.getType( ArrayRef({}), vTy.getOptionalDtype()); v = rewriter.create(binder.getLoc(), vTy, v, emptyList); } Type extractTy = rewriter.getType(); if (isa(vTy.getDtype())) extractTy = rewriter.getType(); return rewriter.create(binder.getLoc(), extractTy, v); }; aZp = extract(aZp); bZp = extract(bZp); cZp = extract(cZp); aScale = extract(aScale); bScale = extract(bScale); cScale = extract(cScale); auto make = [&rewriter, &binder](Value v, Value scale, Value zp) -> Value { auto ty = v.getType().cast(); auto newTy = getQTorchTypeFromTorchIntType(ty); return rewriter.create( binder.getLoc(), newTy, v, scale, zp); }; a = make(a, aScale, aZp); b = make(b, bScale, bZp); auto cTy = rewriter.getType( resultType.getOptionalSizes(), rewriter.getIntegerType(32, /*issigned=*/true)); Value c; if (cTy.getSizes().size() == 2) { c = rewriter.create(binder.getLoc(), cTy, a, b); } else { c = rewriter.create(binder.getLoc(), cTy, a, b); } cTy = rewriter.getType( resultType.getOptionalSizes(), rewriter.getType()); Value mmScale = rewriter.create( binder.getLoc(), rewriter.getType(), aScale, bScale); Value mmZp = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), 0)); c = rewriter.create( binder.getLoc(), cTy, c, mmScale, mmZp); cTy = rewriter.getType( resultType.getOptionalSizes(), rewriter.getF32Type()); c = rewriter.create(binder.getLoc(), cTy, c); cTy = dyn_cast( getQTorchTypeFromTorchIntType(resultType)); Value dtyVal = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr( rewriter.getIntegerType(64), static_cast( Torch::getScalarTypeForType(cTy.getDtype())))); c = rewriter.create( binder.getLoc(), cTy, c, cScale, cZp, dtyVal); rewriter.replaceOpWithNewOp(binder.op, resultType, c); return success(); }); patterns.onOp("Reciprocal", 1, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value operand; if (binder.tensorOperand(operand) || binder.tensorResultType(resultType)) return failure(); rewriter.replaceOpWithNewOp( binder.op, resultType, operand); return success(); }); patterns.onOp( "Relu", 1, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value x; if (binder.tensorOperand(x) || binder.tensorResultType(resultType)) return failure(); rewriter.replaceOpWithNewOp(binder.op, resultType, x); return success(); }); patterns.onOp("Round", 11, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value operand; if (binder.tensorOperand(operand) || binder.tensorResultType(resultType)) return failure(); rewriter.replaceOpWithNewOp( binder.op, resultType, operand); return success(); }); patterns.onOp( "ScatterElements", 18, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; SmallVector valList; int64_t axis; std::string reduction; int64_t numOperands = binder.op->getNumOperands(); if (binder.tensorOperands(valList, numOperands) || binder.s64IntegerAttr(axis, "axis", 0) || binder.customOpNameStringAttr(reduction, "reduction", "none") || binder.tensorResultType(resultType)) return failure(); Value data = valList[0]; Value indices = valList[1]; Value updates = valList[2]; // ONNX allows negative axis. if (axis < 0) axis += cast(data.getType()).getSizes().size(); Value constAxis = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), axis)); if (reduction == "none") { rewriter.replaceOpWithNewOp( binder.op, resultType, data, constAxis, indices, updates); return success(); } // TODO: Implement max and min cases if (reduction == "mul") { reduction = "multiply"; } else if (reduction == "max" || reduction == "min") { return rewriter.notifyMatchFailure( binder.op, "max/min reduction unsupported for scatter elements"); } Value cstStrReduction = rewriter.create(binder.getLoc(), reduction); rewriter.replaceOpWithNewOp( binder.op, resultType, data, constAxis, indices, updates, cstStrReduction); return success(); }); patterns.onOp( "Sigmoid", 1, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value x; if (binder.tensorOperand(x) || binder.tensorResultType(resultType)) return failure(); rewriter.replaceOpWithNewOp(binder.op, resultType, x); return success(); }); patterns.onOp("Sin", 7, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value operand; if (binder.tensorOperand(operand) || binder.tensorResultType(resultType)) return failure(); rewriter.replaceOpWithNewOp( binder.op, resultType, operand); return success(); }); patterns.onOp("Tanh", 1, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value operand; if (binder.tensorOperand(operand) || binder.tensorResultType(resultType)) return failure(); rewriter.replaceOpWithNewOp( binder.op, resultType, operand); return success(); }); patterns.onOp("Sqrt", 1, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value operand; if (binder.tensorOperand(operand) || binder.tensorResultType(resultType)) return failure(); rewriter.replaceOpWithNewOp( binder.op, resultType, operand); return success(); }); patterns.onOp( "Sub", 1, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value x; Value y; if (binder.tensorOperands(x, y) || binder.tensorResultType(resultType)) return failure(); Value const1 = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), 1)); rewriter.replaceOpWithNewOp( binder.op, resultType, x, y, const1); return success(); }); patterns.onOp( "Sum", 1, [](OpBinder binder, ConversionPatternRewriter &rewriter) { if (binder.op->getNumOperands() == 1) { Torch::ValueTensorType resultType; Value x; if (binder.tensorOperand(x) || binder.tensorResultType(resultType)) return failure(); rewriter.replaceOp(binder.op, x); return success(); } Torch::ValueTensorType resultType; SmallVector valList; int64_t numOperands = binder.op->getNumOperands(); if (binder.tensorOperands(valList, numOperands) || binder.tensorResultType(resultType)) return failure(); Value const1 = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), 1)); // Short circuit to binary add if (numOperands == 2) { rewriter.replaceOpWithNewOp( binder.op, resultType, valList[0], valList[1], const1); return success(); } // When binder.op->getNumOperands() > 2 Value curr = rewriter.create( binder.getLoc(), resultType, valList[0], valList[1], const1); for (int i = 2; i < numOperands; i++) { if (i == numOperands - 1) { curr = rewriter.create( binder.getLoc(), resultType, curr, valList[i], const1); } else { SmallVector resultBroadcastShapeInt; SmallVector resultBroadcastShapeValue; Torch::computeBroadcastShape(rewriter, binder.getLoc(), curr, valList[i], resultBroadcastShapeInt, resultBroadcastShapeValue); auto baseType = Torch::ValueTensorType::get( binder.op->getContext(), resultBroadcastShapeInt, resultType.getOptionalDtype()); curr = rewriter.create( binder.getLoc(), baseType, curr, valList[i], const1); } } rewriter.replaceOp(binder.op, curr); return success(); }); patterns.onOp("Where", 1, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; SmallVector valList; int64_t numOperands = binder.op->getNumOperands(); if (binder.tensorOperands(valList, numOperands) || binder.tensorResultType(resultType)) return failure(); Value condition = valList[0]; Value x = valList[1]; Value y = valList[2]; rewriter.replaceOpWithNewOp( binder.op, resultType, condition, x, y); return success(); }); patterns.onOp( "Xor", 1, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value x; Value y; if (binder.tensorOperands(x, y) || binder.tensorResultType(resultType)) return failure(); rewriter.replaceOpWithNewOp(binder.op, resultType, x, y); return success(); }); patterns.onOp( "Squeeze", 13, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value data; Value axes; if (binder.tensorOperands(data, axes) || binder.tensorResultType(resultType)) return failure(); Torch::BaseTensorType axesType = axes.getType().cast(); SmallVector dimList; SmallVector selectSizes; selectSizes.push_back(1); Type selectResultType = axesType.getWithSizesAndDtype( llvm::ArrayRef(selectSizes), axesType.getOptionalDtype()); auto sizes = dyn_cast(axes.getType()).getSizes(); if (sizes.size() == 0) { rewriter.replaceOpWithNewOp(binder.op, resultType, data); return success(); } Value zero = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), 0)); int64_t adjustmentInt = cast(data.getType()).getSizes().size(); Value adjustment = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), adjustmentInt)); for (int i = 0; i < sizes[0]; i++) { // Go through the axes list and get each dim in the list Value selectIndex = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), i)); Value extract = rewriter.create( binder.getLoc(), selectResultType, axes, zero, selectIndex); Value dim = rewriter.create( binder.getLoc(), rewriter.getType(), extract); // deal with neg axis: if (axis < 0) axis += rank Value isNegative = rewriter.create(binder.getLoc(), dim, zero); isNegative = rewriter.create(binder.getLoc(), isNegative); Value finalOffset = rewriter.create( binder.getLoc(), isNegative, adjustment); Value finalDim = rewriter.create( binder.getLoc(), dim, finalOffset); dimList.push_back(finalDim); } Value dimValueList = rewriter.create( binder.getLoc(), Torch::ListType::get(Torch::IntType::get(binder.op->getContext())), dimList); rewriter.replaceOpWithNewOp( binder.op, resultType, data, dimValueList); return success(); }); patterns.onOp( "Unsqueeze", 13, [](OpBinder binder, ConversionPatternRewriter &rewriter) { // Unlike squeeze where we are able to lower to Torch::PrimsSqueezeOp, // pytorch does not support torch.unsqueeze to insert multiple new dims. // discussion can be found here: // https://github.com/pytorch/pytorch/issues/9410 // So, for now, we unroll into multiple unsqueezes. Torch::ValueTensorType resultType; Value data; Value axes; if (binder.tensorOperands(data, axes) || binder.tensorResultType(resultType)) return failure(); Torch::BaseTensorType axesType = axes.getType().cast(); SmallVector dimList; SmallVector selectSizes; selectSizes.push_back(1); Type selectResultType = axesType.getWithSizesAndDtype( llvm::ArrayRef(selectSizes), axesType.getOptionalDtype()); auto sizes = dyn_cast(axes.getType()).getSizes(); if (sizes.size() == 0) { rewriter.replaceOp(binder.op, data); return success(); } Value zero = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), 0)); int64_t adjustmentInt = cast(data.getType()).getSizes().size(); Value adjustment = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), adjustmentInt)); for (int i = 0; i < sizes[0]; i++) { // Go through the axes list and get each dim in the list Value selectIndex = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), i)); Value extract = rewriter.create( binder.getLoc(), selectResultType, axes, zero, selectIndex); Value dim = rewriter.create( binder.getLoc(), rewriter.getType(), extract); // deal with neg axis: if (axis < 0) axis += rank Value isNegative = rewriter.create(binder.getLoc(), dim, zero); isNegative = rewriter.create(binder.getLoc(), isNegative); Value finalOffset = rewriter.create( binder.getLoc(), isNegative, adjustment); Value finalDim = rewriter.create( binder.getLoc(), dim, finalOffset); dimList.push_back(finalDim); } Value dimValueList = rewriter.create( binder.getLoc(), Torch::ListType::get(Torch::IntType::get(binder.op->getContext())), dimList); Value cstFalse = rewriter.create(binder.getLoc(), false); Value noneVal = rewriter.create(binder.getLoc()); Value updatedAxes = rewriter.create( binder.getLoc(), axesType.getWithSizesAndDtype(sizes, axesType.getOptionalDtype()), dimValueList, /*dtype=*/noneVal, /*device=*/noneVal, cstFalse); // Sort the list of dims, so we don't run into this situation: // data.sizes = [2, 3, 4] // dims = [4, 0] // index 4 will be invalid to add a singleton dimension because // data.sizes.size == 3 We have to work with sorted dims to avoid this // situation. auto sortIndicesType = axesType.getWithSizesAndDtype( axesType.getOptionalSizes(), IntegerType::get(binder.op->getContext(), 64, IntegerType::Signed)); auto sortOpResult = rewriter.create( binder.getLoc(), axes.getType(), sortIndicesType, updatedAxes, zero, cstFalse); Value result; auto baseType = Torch::ValueTensorType::getWithLeastStaticInformation( binder.op->getContext()); // Go through the updated, sorted axes. Do unsqueeze for each dim. for (int i = 0; i < sizes[0]; i++) { Value selectIndex = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), i)); Value extract = rewriter.create( binder.getLoc(), selectResultType, sortOpResult->getResult(0), zero, selectIndex); Value dim = rewriter.create( binder.getLoc(), rewriter.getType(), extract); if (sizes[0] == 1) { result = rewriter.create( binder.getLoc(), resultType, data, dim); } else if (i == 0) { result = rewriter.create( binder.getLoc(), baseType, data, dim); } else if (i == sizes[0] - 1) { result = rewriter.create( binder.getLoc(), resultType, result, dim); } else { result = rewriter.create( binder.getLoc(), baseType, result, dim); } } rewriter.replaceOp(binder.op, result); return success(); }); patterns.onOp( "Softmax", 13, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value input; int64_t axis; if (binder.tensorOperand(input) || binder.s64IntegerAttr(axis, "axis", -1) || binder.tensorResultType(resultType)) return failure(); // ONNX allows negative axis. if (axis < 0) axis += cast(input.getType()).getSizes().size(); Value constAxis = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), axis)); Value noneVal = rewriter.create(binder.getLoc()); rewriter.replaceOpWithNewOp( binder.op, resultType, input, constAxis, /*dtype=*/noneVal); return success(); }); patterns.onOp( "Selu", 6, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; float alpha, gamma; Value operand; if (binder.tensorOperand(operand) || binder.f32FloatAttr(alpha, "alpha") || binder.f32FloatAttr(gamma, "gamma") || binder.tensorResultType(resultType)) return failure(); Value vAlpha = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getFloatAttr(rewriter.getF64Type(), alpha)); Value vScale = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getFloatAttr(rewriter.getF64Type(), gamma)); Value vInputScale = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getFloatAttr(rewriter.getF64Type(), 1.0)); rewriter.replaceOpWithNewOp( binder.op, resultType, operand, vAlpha, vScale, vInputScale); return success(); }); patterns.onOp( "ReduceMax", 1, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; SmallVector operands; int64_t keepDims, noop_with_empty_axes; if (binder.tensorOperandsList(operands) || binder.tensorResultType(resultType) || binder.s64IntegerAttr(keepDims, "keepdims", 1) || binder.s64IntegerAttr(noop_with_empty_axes, "noop_with_empty_axes", 0)) return failure(); Value data = operands[0]; if (operands.size() == 1) { if (noop_with_empty_axes == 0) { MLIRContext *context = binder.op->getContext(); int rank = data.getType().cast().getSizes().size(); SmallVector dims; for (int i = 0; i < rank; i++) { dims.push_back(rewriter.create( binder.getLoc(), rewriter.getI64IntegerAttr(i))); } Value dimsList = rewriter.create( binder.getLoc(), Torch::ListType::get(Torch::IntType::get(context)), dims); Value keepDimsConstInt = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), keepDims)); Value keepDimsBool = rewriter.create( binder.getLoc(), keepDimsConstInt); rewriter.replaceOpWithNewOp( binder.op, resultType, data, /*dim=*/dimsList, /*keepdim=*/keepDimsBool); } else { rewriter.replaceOp(binder.op, data); } return success(); } Value axes = operands[1]; SmallVector dimList; Torch::BaseTensorType axesType = axes.getType().cast(); SmallVector selectSizes; selectSizes.push_back(1); Type selectResultType = axesType.getWithSizesAndDtype( llvm::ArrayRef(selectSizes), axesType.getOptionalDtype()); auto sizes = dyn_cast(axes.getType()).getSizes(); Value zero = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), 0)); int64_t adjustmentInt = cast(data.getType()).getSizes().size(); Value adjustment = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), adjustmentInt)); for (int i = 0; i < sizes[0]; i++) { // Go through the axes list and get each dim in the list Value selectIndex = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), i)); Value extract = rewriter.create( binder.getLoc(), selectResultType, axes, zero, selectIndex); Value dim = rewriter.create( binder.getLoc(), rewriter.getType(), extract); // deal with neg axis: if (axis < 0) axis += rank Value isNegative = rewriter.create(binder.getLoc(), dim, zero); isNegative = rewriter.create(binder.getLoc(), isNegative); Value finalOffset = rewriter.create( binder.getLoc(), isNegative, adjustment); Value finalDim = rewriter.create( binder.getLoc(), dim, finalOffset); dimList.push_back(finalDim); } Value dimValueList = rewriter.create( binder.getLoc(), Torch::ListType::get(Torch::IntType::get(binder.op->getContext())), dimList); Value keepDimBool; if (keepDims == 1) { keepDimBool = rewriter.create(binder.getLoc(), true); } else { keepDimBool = rewriter.create(binder.getLoc(), false); } rewriter.replaceOpWithNewOp( binder.op, resultType, data, dimValueList, keepDimBool); return success(); }); patterns.onOp( "ReduceSum", 13, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value data; Value axes; int64_t keepDims; int64_t noop_with_empty_axes; if (binder.tensorOperands(data, axes) || binder.tensorResultType(resultType) || binder.s64IntegerAttr(keepDims, "keepdims", 1) || binder.s64IntegerAttr(noop_with_empty_axes, "noop_with_empty_axes", 0)) return failure(); Torch::BaseTensorType axesType = axes.getType().cast(); SmallVector dimList; SmallVector selectSizes; selectSizes.push_back(1); Type selectResultType = axesType.getWithSizesAndDtype( llvm::ArrayRef(selectSizes), axesType.getOptionalDtype()); auto sizes = dyn_cast(axes.getType()).getSizes(); Value noneVal = rewriter.create(binder.getLoc()); // Deal with case when axes is empty if (sizes.size() == 1 && sizes[0] == 0) { if (noop_with_empty_axes == 0) { Value keepDimsConstInt = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), keepDims)); Value keepDimsBool = rewriter.create( binder.getLoc(), keepDimsConstInt); rewriter.replaceOpWithNewOp( binder.op, resultType, data, /*dim=*/noneVal, /*keepdim=*/keepDimsBool, /*dtype=*/noneVal); } else { rewriter.replaceOp(binder.op, data); } return success(); } Value zero = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), 0)); int64_t adjustmentInt = cast(data.getType()).getSizes().size(); Value adjustment = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), adjustmentInt)); // convert axes (tensor) into torch int list while dealing with neg axis for (int i = 0; i < sizes[0]; i++) { // Go through the axes list and get each dim in the list Value selectIndex = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), i)); Value extract = rewriter.create( binder.getLoc(), selectResultType, axes, zero, selectIndex); Value dim = rewriter.create( binder.getLoc(), rewriter.getType(), extract); // deal with neg axis: if (axis < 0) axis += rank Value isNegative = rewriter.create(binder.getLoc(), dim, zero); isNegative = rewriter.create(binder.getLoc(), isNegative); Value finalOffset = rewriter.create( binder.getLoc(), isNegative, adjustment); Value finalDim = rewriter.create( binder.getLoc(), dim, finalOffset); dimList.push_back(finalDim); } Value dimValueList = rewriter.create( binder.getLoc(), Torch::ListType::get(Torch::IntType::get(binder.op->getContext())), dimList); Value keepDimBool; if (keepDims == 1) { keepDimBool = rewriter.create(binder.getLoc(), true); } else { keepDimBool = rewriter.create(binder.getLoc(), false); } rewriter.replaceOpWithNewOp( binder.op, resultType, data, dimValueList, keepDimBool, /*dtype=*/noneVal); return success(); }); // onnx.ReduceMean with axes provided as argument introduced in opset 18 patterns.onOp( "ReduceMean", 18, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value data; Value axes; int64_t keepDims; int64_t noop_with_empty_axes; if (binder.tensorOperands(data, axes) || binder.tensorResultType(resultType) || binder.s64IntegerAttr(keepDims, "keepdims", 1) || binder.s64IntegerAttr(noop_with_empty_axes, "noop_with_empty_axes", 0)) return failure(); Torch::BaseTensorType axesType = axes.getType().cast(); SmallVector dimList; SmallVector selectSizes; selectSizes.push_back(1); Type selectResultType = axesType.getWithSizesAndDtype( llvm::ArrayRef(selectSizes), axesType.getOptionalDtype()); auto sizes = dyn_cast(axes.getType()).getSizes(); Value noneVal = rewriter.create(binder.getLoc()); // deal with case when axes is empty if (sizes.size() == 1 && sizes[0] == 0) { if (noop_with_empty_axes == 0) { Value keepDimsConstInt = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), keepDims)); Value keepDimsBool = rewriter.create( binder.getLoc(), keepDimsConstInt); rewriter.replaceOpWithNewOp( binder.op, resultType, data, /*dim=*/noneVal, keepDimsBool, /*dtype=*/noneVal); } else { rewriter.replaceOp(binder.op, data); } return success(); } Value zero = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), 0)); int64_t adjustmentInt = cast(data.getType()).getSizes().size(); Value adjustment = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), adjustmentInt)); // convert axes (tensor) into torch int list while dealing with neg axis for (int i = 0; i < sizes[0]; i++) { // Go through the axes list and get each dim in the list Value selectIndex = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), i)); Value extract = rewriter.create( binder.getLoc(), selectResultType, axes, zero, selectIndex); Value dim = rewriter.create( binder.getLoc(), rewriter.getType(), extract); // deal with neg axis: if (axis < 0) axis += rank Value isNegative = rewriter.create(binder.getLoc(), dim, zero); isNegative = rewriter.create(binder.getLoc(), isNegative); Value finalOffset = rewriter.create( binder.getLoc(), isNegative, adjustment); Value finalDim = rewriter.create( binder.getLoc(), dim, finalOffset); dimList.push_back(finalDim); } Value dimValueList = rewriter.create( binder.getLoc(), Torch::ListType::get(Torch::IntType::get(binder.op->getContext())), dimList); Value keepDimBool; if (keepDims == 1) { keepDimBool = rewriter.create(binder.getLoc(), true); } else { keepDimBool = rewriter.create(binder.getLoc(), false); } rewriter.replaceOpWithNewOp( binder.op, resultType, data, dimValueList, keepDimBool, /*dtype=*/noneVal); return success(); }); // onnx.ReduceMean with axes provided as attribute patterns.onOp( "ReduceMean", 1, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value data; llvm::SmallVector axes; int64_t keepDims; int64_t noop_with_empty_axes; if (binder.tensorOperand(data) || binder.tensorResultType(resultType) || binder.s64IntegerArrayAttr(axes, "axes", 0) || binder.s64IntegerAttr(keepDims, "keepdims", 1) || binder.s64IntegerAttr(noop_with_empty_axes, "noop_with_empty_axes", 0)) return failure(); SmallVector dimList; SmallVector selectSizes; selectSizes.push_back(1); Value noneVal = rewriter.create(binder.getLoc()); // deal with case when axes is empty if (axes.size() == 0) { if (noop_with_empty_axes == 0) { Value keepDimsConstInt = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), keepDims)); Value keepDimsBool = rewriter.create( binder.getLoc(), keepDimsConstInt); rewriter.replaceOpWithNewOp( binder.op, resultType, data, /*dim=*/noneVal, keepDimsBool, /*dtype=*/noneVal); } else { rewriter.replaceOp(binder.op, data); } return success(); } int64_t adjustmentInt = cast(data.getType()).getSizes().size(); // convert axes (tensor) into torch int list while dealing with neg axis for (uint64_t i = 0; i < axes.size(); i++) { // Go through the axes list and get each dim in the list int64_t dim = axes[i]; if (dim < 0) { dim += adjustmentInt; } // deal with neg axis: if (axis < 0) axis += rank Value finalDim = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), dim)); dimList.push_back(finalDim); } Value dimValueList = rewriter.create( binder.getLoc(), Torch::ListType::get(Torch::IntType::get(binder.op->getContext())), dimList); Value keepDimBool; if (keepDims == 1) { keepDimBool = rewriter.create(binder.getLoc(), true); } else { keepDimBool = rewriter.create(binder.getLoc(), false); } rewriter.replaceOpWithNewOp( binder.op, resultType, data, dimValueList, keepDimBool, /*dtype=*/noneVal); return success(); }); patterns.onOp( "ReduceMin", 13, [](OpBinder binder, ConversionPatternRewriter &rewriter) { // AtenAminOp allows us to pass a list of dims Torch::ValueTensorType resultType; Value data; Value axes; int64_t keepDims; int64_t noop_with_empty_axes; if (binder.tensorOperandAtIndex(data, 0) || binder.tensorResultType(resultType) || binder.s64IntegerAttr(keepDims, "keepdims", 1) || binder.s64IntegerAttr(noop_with_empty_axes, "noop_with_empty_axes", 0)) return failure(); auto dataTy = cast(data.getType()); Torch::IntType torchIntTy = rewriter.getType(); // If any of the input dims are 0 we set to the upper limit: if (llvm::any_of(dataTy.getSizes(), [](int64_t d) { return d == 0; }) && (llvm::any_of(dataTy.getSizes(), [](int64_t d) { return d == Torch::kUnknownSize; }) || keepDims)) { auto dty = dataTy.getDtype(); Value scalar; if (FloatType fpTy = dyn_cast(dty)) { auto inf = APFloat::getInf(fpTy.getFloatSemantics()); scalar = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getFloatAttr(rewriter.getF64Type(), inf.convertToDouble())); } if (IntegerType intTy = dyn_cast(dty)) { auto mx = intTy.isSigned() ? APInt::getSignedMaxValue(intTy.getIntOrFloatBitWidth()) : APInt::getMaxValue(intTy.getIntOrFloatBitWidth()); scalar = rewriter.create( binder.getLoc(), torchIntTy, rewriter.getIntegerAttr(rewriter.getIntegerType(64), mx.getSExtValue())); } llvm::SmallVector fillDims; for (int i = 0, s = resultType.getSizes().size(); i < s; ++i) { auto staticDim = resultType.getSizes()[i]; if (staticDim != Torch::kUnknownSize) { fillDims.push_back(rewriter.create( binder.getLoc(), torchIntTy, rewriter.getI64IntegerAttr(staticDim))); continue; } Value iv = rewriter.create( binder.getLoc(), torchIntTy, rewriter.getI64IntegerAttr(i)); fillDims.push_back(rewriter.create( binder.getLoc(), torchIntTy, data, iv)); } Value none = rewriter.create(binder.getLoc()); Value fillDimsList = rewriter.create( binder.getLoc(), Torch::ListType::get(torchIntTy), fillDims); rewriter.replaceOpWithNewOp( binder.op, resultType, fillDimsList, scalar, none, none, none, none); return success(); } // Previous version of the operation had the axes as an attribute: SmallVector axesList; llvm::SmallVector axesAttr; if (!binder.s64IntegerArrayAttr(axesAttr, "axes", {})) { for (int i = 0, s = axesAttr.size(); i < s; ++i) { axesList.push_back(rewriter.create( binder.getLoc(), torchIntTy, rewriter.getI64IntegerAttr(axesAttr[i]))); } } // Extract the axes values from the axes operand: if (!binder.tensorOperandAtIndex(axes, 1)) { Torch::BaseTensorType axesType = axes.getType().cast(); SmallVector selectSizes{1}; Type selectResultType = axesType.getWithSizesAndDtype( selectSizes, axesType.getOptionalDtype()); auto sizes = axesType.getSizes(); Value zero = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), 0)); // Extract the value of each axes: for (int i = 0; i < sizes[0]; i++) { // Go through the axes list and get each dim in the list Value selectIndex = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), i)); Value extract = rewriter.create( binder.getLoc(), selectResultType, axes, zero, selectIndex); Value dim = rewriter.create( binder.getLoc(), rewriter.getType(), extract); axesList.push_back(dim); } } // Handle the noop case: if (axesList.empty() && noop_with_empty_axes) { rewriter.replaceOp(binder.op, data); return success(); } // Deal with case when no axes arg is passed but not a noop: if (axesList.empty()) { int64_t numDims = dyn_cast(data.getType()) .getSizes() .size(); for (int i = 0; i < numDims; i++) { Value curr = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), i)); axesList.push_back(curr); } } // Handle negative axis: Value rankVal = rewriter.create(binder.getLoc(), torchIntTy, data); Value zero = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getI64IntegerAttr(0)); for (Value &axes : axesList) { Value isNegative = rewriter.create(binder.getLoc(), axes, zero); isNegative = rewriter.create(binder.getLoc(), isNegative); Value finalOffset = rewriter.create( binder.getLoc(), isNegative, rankVal); axes = rewriter.create(binder.getLoc(), axes, finalOffset); } Value dimValueList = rewriter.create( binder.getLoc(), Torch::ListType::get(torchIntTy), axesList); Value keepDimBool = rewriter.create(binder.getLoc(), keepDims); rewriter.replaceOpWithNewOp( binder.op, resultType, data, dimValueList, keepDimBool); return success(); }); patterns.onOp("Shape", 9, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value operand; if (binder.tensorOperand(operand) || binder.tensorResultType(resultType)) return failure(); rewriter.replaceOpWithNewOp( binder.op, resultType, operand); return success(); }); patterns.onOp("Sinh", 9, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value operand; if (binder.tensorOperand(operand) || binder.tensorResultType(resultType)) return failure(); rewriter.replaceOpWithNewOp( binder.op, resultType, operand); return success(); }); // split with fixed-size parts // Arguments: // - input: the tensor to split // Attributes: // - axis: the axis along which to split the input // - num_outputs: the number of outputs to produce // Outputs: // - outputs: the produced outputs. Variadic with num_outputs elements. // Note: torch.aten gives a list of tensors, but ONNX gives a variadic list of // tensors // so we need to unpack the list patterns.onOp( "Split", 1, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Value self; int64_t axis; int64_t num_outputs; if (binder.tensorOperand(self)) return rewriter.notifyMatchFailure( binder.op, "Not converting to AtenSplitTensorOp due to input " "tensor mismatch"); if (binder.s64IntegerAttr(axis, "axis", 0)) return rewriter.notifyMatchFailure(binder.op, "Failed to get axis attribute"); if (binder.s64IntegerAttr(num_outputs, "num_outputs", 0)) return rewriter.notifyMatchFailure( binder.op, "Failed to get num_outputs attribute"); auto result0Ty = binder.op->getResult(0).getType().cast(); auto selfTy = self.getType().cast(); int64_t dim = axis; if (dim < 0) dim += selfTy.getSizes().size(); // set intermediate shape to the shape of the first result // if the results are of different shapes // set the splitted axis to variable shape llvm::SmallVector intermediateShape(result0Ty.getSizes()); for (auto result : binder.op->getResultTypes()) { int64_t d = result.cast().getSizes()[dim]; intermediateShape[dim] = d == intermediateShape[dim] ? d : -1; } Value dimValue = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), dim)); Value splitSize = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), num_outputs)); // TODO: Attempting to use the shape expected by the ONNX mlir as ground // truth. For now just use dynamic shapes. auto resultOuterType = Torch::ListType::get(rewriter.getType( /*std::optional>=*/intermediateShape, result0Ty.getOptionalDtype())); Torch::AtenSplitTensorOp new_op = rewriter.create( binder.getLoc(), resultOuterType, self, splitSize, dimValue); // the onnx op is variadic with multiple results, but AtenSplitWithSizes // outputs a list so we need to unpack the list rewriter.replaceOpWithNewOp( binder.op, binder.op->getResults().getType(), new_op.getResult()); return success(); }); // split with variable parts // Arguments: // - input: the tensor to split // - split: the sizes of the splits to be produced // Attributes: // - axis: the axis along which to split the input // - num_outputs: the number of outputs to produce // Outputs: // - outputs: the produced outputs. Variadic with num_outputs elements. // Note: torch.aten gives a list of tensors, but ONNX gives a variadic list of // tensors // so we need to unpack the list patterns.onOp( "Split", 1, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Value self; Value split; int64_t axis; int64_t num_outputs; if (binder.tensorOperandAtIndex(self, 0) || binder.tensorOperandAtIndex(split, 1)) return rewriter.notifyMatchFailure( binder.op, "Not converting to AtenSplitWithSizesOp due to input " "tensor mismatch"); if (binder.s64IntegerAttr(axis, "axis", 0)) return rewriter.notifyMatchFailure(binder.op, "Failed to get axis attribute"); if (binder.s64IntegerAttr(num_outputs, "num_outputs", 0)) return rewriter.notifyMatchFailure( binder.op, "Failed to get num_outputs attribute"); auto result0Ty = binder.op->getResult(0).getType().cast(); auto selfTy = cast(binder.op->getOperand(0).getType()); int64_t dim = axis; if (dim < 0) dim += selfTy.getSizes().size(); llvm::SmallVector intermediateShape(result0Ty.getSizes()); for (auto result : binder.op->getResultTypes()) { int64_t d = result.cast().getSizes()[dim]; intermediateShape[dim] = d == intermediateShape[dim] ? d : -1; } Torch::PrimTolistOp splitToList = rewriter.create( binder.getLoc(), Torch::ListType::get(rewriter.getType()), split); Value dimValue = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), dim)); // TODO: Attempting to use the shape expected by the ONNX mlir as ground // truth. For now just use dynamic shapes. auto resultOuterType = Torch::ListType::get(rewriter.getType( /*std::optional>=*/intermediateShape, result0Ty.getOptionalDtype())); Torch::AtenSplitWithSizesOp new_op = rewriter.create( binder.getLoc(), resultOuterType, self, splitToList.getResult(0), dimValue); // the onnx op is variadic with multiple results, but AtenSplitWithSizes // outputs a list so we need to unpack the list rewriter.replaceOpWithNewOp( binder.op, binder.op->getResults().getType(), new_op.getResult()); return success(); }); patterns.onOp("Tan", 7, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value operand; if (binder.tensorOperand(operand) || binder.tensorResultType(resultType)) return failure(); rewriter.replaceOpWithNewOp( binder.op, resultType, operand); return success(); }); patterns.onOp( "Transpose", 13, [](OpBinder binder, ConversionPatternRewriter &rewriter) { auto loc = binder.getLoc(); Torch::ValueTensorType resultType; Value operand; if (binder.tensorOperand(operand) || binder.tensorResultType(resultType)) return failure(); auto operandType = operand.getType().cast(); TensorType tensorType = operandType.toBuiltinTensor(); if (!tensorType || !tensorType.hasRank()) return failure(); // Default permutation is to reverse orders: int64_t rank = tensorType.getRank(); llvm::SmallVector reverse(rank); for (int64_t i = 0; i < rank; ++i) { reverse[i] = rank - i - 1; } llvm::SmallVector permutations; if (failed(binder.s64IntegerArrayAttr(permutations, "perm", reverse))) return rewriter.notifyMatchFailure(binder.op, "Failed to obtain permutations"); if (static_cast(permutations.size()) != rank) return rewriter.notifyMatchFailure( binder.op, "Permutation length does not match operand rank"); llvm::SmallVector shape(tensorType.getShape()); llvm::SmallVector current(rank); for (int64_t i = 0; i < rank; ++i) { current[i] = i; } for (auto &dim : permutations) dim = dim < 0 ? dim + rank : dim; // We need to override to the destination if known: if (resultType.hasSizes()) { for (int i = 0; i < rank; ++i) { shape[permutations[i]] = resultType.getSizes()[i]; } } // Convert dynamic shape dimension: for (unsigned i = 0; i < shape.size(); i++) { if (shape[i] == ShapedType::kDynamic) shape[i] = Torch::kUnknownSize; } for (int64_t i = 0; i < rank; ++i) { if (current[i] == permutations[i]) continue; int64_t target = i + 1; for (; target < rank; ++target) { if (current[target] == permutations[i]) break; } std::swap(shape[i], shape[target]); std::swap(current[i], current[target]); Value dim0 = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), i)); Value dim1 = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), target)); operand = rewriter.create( loc, Torch::ValueTensorType::get(tensorType.getContext(), shape, operandType.getOptionalDtype()), operand, dim0, dim1); } rewriter.replaceOp(binder.op, operand); return success(); }); patterns.onOp( "Slice", 13, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultTorchType; Value operand, starts, ends; // Handle if axes are not provided if (binder.tensorOperandAtIndex(operand, 0) || binder.tensorOperandAtIndex(starts, 1) || binder.tensorOperandAtIndex(ends, 2) || binder.tensorResultType(resultTorchType)) { return failure(); } auto context = rewriter.getContext(); auto operandTorchTy = operand.getType().cast(); auto operandTy = operandTorchTy.toBuiltinTensor().dyn_cast(); if (!operandTy) return rewriter.notifyMatchFailure( binder.op, "Expected tensor operator argument to be a ranked tensor type"); auto startsTorchTy = starts.getType().cast(); auto startsTy = startsTorchTy.toBuiltinTensor().dyn_cast(); int startSize = startsTy.getDimSize(0); auto endsTorchTy = ends.getType().cast(); auto endsTy = endsTorchTy.toBuiltinTensor().dyn_cast(); int endSize = endsTy.getDimSize(0); auto resultTy = resultTorchType.toBuiltinTensor().dyn_cast(); if (!resultTy) return rewriter.notifyMatchFailure( binder.op, "Expected result type to be a ranked tensor type"); Location loc = binder.getLoc(); // Binding `axes` from its arguments or through a default value Value axes; if (binder.getNumOperands() >= 4) { if (binder.tensorOperandAtIndex(axes, 3)) { return failure(); } } // Binding `steps` from its arguments or through a default value Value steps; if (binder.getNumOperands() >= 5) { if (binder.tensorOperandAtIndex(steps, 4)) { return failure(); } } else { // The default `steps` value is a 1d tensor filled with ones with a // size equal to the size of `starts` and `ends`. Value none = rewriter.create(loc); Value sizeStepInput = rewriter.create( loc, rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), startSize)); Value sizeStepsInput = rewriter.create( loc, Torch::ListType::get( Torch::IntType::get(binder.op->getContext())), sizeStepInput); steps = rewriter.create( loc, startsTorchTy, sizeStepsInput, none, none, none, none); } if (!(endsTy.getRank() == 1 && startsTy.getRank() == 1 && startSize == endSize)) return rewriter.notifyMatchFailure( binder.op, "Expected the rank of starts and ends tensors to be 1 " "and their dimensions to match"); if (axes) { auto axesTorchTy = axes.getType().cast(); auto axesTy = axesTorchTy.toBuiltinTensor().dyn_cast(); int64_t numAxes = axesTy.getDimSize(0); if (!(axesTy && numAxes == endSize)) return rewriter.notifyMatchFailure( binder.op, "Axes should be the same size of starts and ends"); } auto stepsTy = steps.getType() .cast() .toBuiltinTensor() .dyn_cast(); if (!(stepsTy && stepsTy.getDimSize(0) == endsTy.getDimSize(0))) return rewriter.notifyMatchFailure( binder.op, "Steps should be the same size of starts and ends"); Value zero = rewriter.create( loc, rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), 0)); auto select = [&](Value v, Value k) -> Value { auto ty = v.getType().cast(); auto sel = rewriter.create( loc, Torch::ValueTensorType::get(ty.getContext(), ArrayRef{1}, ty.getOptionalDtype()), v, zero, k); Value item = rewriter.create( loc, rewriter.getType(), sel); return item; }; llvm::SmallVector intermediateShape(operandTy.getShape()); for (int i = 0, s = operandTy.getRank(); i < s; ++i) { if (operandTy.getDimSize(i) != resultTy.getDimSize(i)) intermediateShape[i] = -1; if (intermediateShape[i] == ShapedType::kDynamic) intermediateShape[i] = Torch::kUnknownSize; } auto intermediateType = Torch::ValueTensorType::get( context, intermediateShape, resultTorchType.getOptionalDtype()); for (int i = 0; i < endSize; ++i) { Value k = rewriter.create( loc, rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), i)); Value kTensor = rewriter.create( loc, Torch::ValueTensorType::get( context, ArrayRef{1}, rewriter.getIntegerType(64, /*signed*/ 1)), k); Value start = select(starts, kTensor); Value end = select(ends, kTensor); Value axis = axes ? select(axes, kTensor) : k; Value step = select(steps, kTensor); auto sliceType = intermediateType; sliceType = i == (endSize - 1) ? resultTorchType : sliceType; operand = rewriter.create( loc, sliceType, operand, axis, start, end, step); } rewriter.replaceOp(binder.op, operand); return success(); }); patterns.onOp( "Reshape", 5, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value data; Value shape; int64_t allowzero; if (binder.tensorOperands(data, shape) || binder.tensorResultType(resultType) || binder.s64IntegerAttr(allowzero, "allowzero", 0)) return failure(); // If the result shape is static then we can create a result shape list // directly using the result shape values (integers). if (resultType.hasSizes()) { bool hasStaticShape = resultType.areAllSizesKnown(); ArrayRef resultShapeInt = resultType.getSizes(); if (hasStaticShape) { SmallVector resultShape; for (int64_t dim : resultShapeInt) { resultShape.push_back(rewriter.create( binder.getLoc(), rewriter.getI64IntegerAttr(dim))); } Value resultShapeList = rewriter.create( binder.getLoc(), Torch::ListType::get( Torch::IntType::get(binder.op->getContext())), resultShape); rewriter.replaceOpWithNewOp( binder.op, resultType, data, resultShapeList); return success(); } } Torch::BaseTensorType shapeType = shape.getType().cast(); SmallVector dimList; SmallVector selectSizes; selectSizes.push_back(1); Type selectResultType = shapeType.getWithSizesAndDtype( llvm::ArrayRef(selectSizes), shapeType.getOptionalDtype()); auto shapeSizes = dyn_cast(shape.getType()).getSizes(); auto dataSizes = dyn_cast(data.getType()).getSizes(); Value zero = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), 0)); if (allowzero == 0) { // convert shape (tensor) into torch int list while dealing with zero // vals for (int i = 0; i < shapeSizes[0]; i++) { // Go through the shape list and get each dim in the list Value selectIndex = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), i)); Value extract = rewriter.create( binder.getLoc(), selectResultType, shape, zero, selectIndex); Value dim = rewriter.create( binder.getLoc(), rewriter.getType(), extract); // deal with zero axis values: replace with original dim value in // input Value isZero = rewriter.create(binder.getLoc(), dim, zero); isZero = rewriter.create(binder.getLoc(), isZero); Value adjustment; int64_t inputDimsSize = dataSizes.size(); if (i < inputDimsSize) { adjustment = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), dataSizes[i])); } // Will never have a 0 in the shape tensor input at an index out of // bounds of original input dims Therefore, no need to adjust else { adjustment = zero; } Value finalOffset = rewriter.create( binder.getLoc(), isZero, adjustment); Value finalDim = rewriter.create( binder.getLoc(), dim, finalOffset); dimList.push_back(finalDim); } Value dimValueList = rewriter.create( binder.getLoc(), Torch::ListType::get( Torch::IntType::get(binder.op->getContext())), dimList); rewriter.replaceOpWithNewOp( binder.op, resultType, data, dimValueList); return success(); } // convert axes (tensor) into torch int list for (int i = 0; i < shapeSizes[0]; i++) { // Go through the axes list and get each dim in the list Value selectIndex = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), i)); Value extract = rewriter.create( binder.getLoc(), selectResultType, shape, zero, selectIndex); Value dim = rewriter.create( binder.getLoc(), rewriter.getType(), extract); dimList.push_back(dim); } Value dimValueList = rewriter.create( binder.getLoc(), Torch::ListType::get(Torch::IntType::get(binder.op->getContext())), dimList); rewriter.replaceOpWithNewOp(binder.op, resultType, data, dimValueList); return success(); }); patterns.onOp( "Range", 11, [](OpBinder binder, ConversionPatternRewriter &rewriter) { // ONNX.Range(start, limit, delta) -- limit is exclusive Torch::ValueTensorType resultType; Value start, limit, delta; auto loc = binder.getLoc(); Value none = rewriter.create(loc); if (binder.tensorOperandAtIndex(start, 0) || binder.tensorOperandAtIndex(limit, 1) || binder.tensorOperandAtIndex(delta, 2) || binder.tensorResultType(resultType)) return failure(); // Convert a 0-dimensional/Scalar Tensor ([]) to Scalar Torch Numeric // Value torch.tensor(1.1) equivalent in ONNX to 1.1 as an example // type of start, limit, delta can be one of: double, float, int16, // int32, int64 Assuming start, limit and delta to be same type (could // they be different?) Torch::BaseTensorType startTensorType = start.getType().cast(); bool isFloatDType = startTensorType.getDtype().isF64() || startTensorType.getDtype().isF32(); bool isIntDType = startTensorType.getDtype().isInteger(16) || startTensorType.getDtype().isInteger(32) || startTensorType.getDtype().isInteger(64); if (!isFloatDType && !isIntDType) { return rewriter.notifyMatchFailure( binder.op, "Expected the start, limit, delta to be one of " "double, float, int16, int32, int64"); } Value scalarStart, scalarLimit, scalarDelta; if (isFloatDType) { scalarStart = getItemOp(binder, rewriter, start); scalarLimit = getItemOp(binder, rewriter, limit); scalarDelta = getItemOp(binder, rewriter, delta); } else { scalarStart = getItemOp(binder, rewriter, start); scalarLimit = getItemOp(binder, rewriter, limit); scalarDelta = getItemOp(binder, rewriter, delta); } rewriter.replaceOpWithNewOp( binder.op, resultType, scalarStart, scalarLimit, scalarDelta, none, none, none, none); return success(); }); patterns.onOp( "Tile", 6, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value operand; Value repeatDims; if (binder.tensorOperands(operand, repeatDims) || binder.tensorResultType(resultType)) return failure(); // convert repeatDims tensor to list of ints auto repeatDimsSizes = dyn_cast(repeatDims.getType()).getSizes(); SmallVector dimList; SmallVector selectSizes; selectSizes.push_back(1); Torch::BaseTensorType shapeType = repeatDims.getType().cast(); Type selectResultType = shapeType.getWithSizesAndDtype( llvm::ArrayRef(selectSizes), shapeType.getOptionalDtype()); Value zero = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), 0)); for (int i = 0; i < repeatDimsSizes[0]; i++) { Value selectIndex = rewriter.create( binder.getLoc(), rewriter.getType(), rewriter.getIntegerAttr(rewriter.getIntegerType(64), i)); Value extract = rewriter.create( binder.getLoc(), selectResultType, repeatDims, zero, selectIndex); Value dim = rewriter.create( binder.getLoc(), rewriter.getType(), extract); dimList.push_back(dim); } Value dimValueList = rewriter.create( binder.getLoc(), Torch::ListType::get(Torch::IntType::get(binder.op->getContext())), dimList); rewriter.replaceOpWithNewOp(binder.op, resultType, operand, dimValueList); return success(); }); patterns.onOp( "Topk", 11, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType Values_type, Indices_type; Value X, K; int64_t axis; bool largest, sorted; if (binder.tensorOperandAtIndex(X, 0) || binder.tensorOperandAtIndex(K, 1) || binder.s64IntegerAttr(axis, "axis", -1) || binder.s64BoolAttr(largest, "largest", true) || binder.s64BoolAttr(sorted, "sorted", true) || binder.tensorResultTypeAtIndex(Values_type, 0) || binder.tensorResultTypeAtIndex(Indices_type, 1)) return failure(); std::optional maybeRank = Torch::getTensorRank(X); if (!maybeRank) return rewriter.notifyMatchFailure(binder.op, "Unimplemented: unranked tensor"); unsigned rank = *maybeRank; axis = Torch::toPositiveDim(axis, rank); Value cstAxis = rewriter.create( binder.getLoc(), rewriter.getI64IntegerAttr(axis)); Value cstLargest = rewriter.create(binder.getLoc(), largest); Value cstSorted = rewriter.create(binder.getLoc(), sorted); rewriter.replaceOpWithNewOp( binder.op, Values_type, Indices_type, X, K, cstAxis, cstLargest, cstSorted); return success(); }); patterns.onOp("Sign", 9, [](OpBinder binder, ConversionPatternRewriter &rewriter) { Torch::ValueTensorType resultType; Value operand; if (binder.tensorOperand(operand) || binder.tensorResultType(resultType)) return failure(); rewriter.replaceOpWithNewOp( binder.op, resultType, operand); return success(); }); }