mirror of https://github.com/llvm/torch-mlir
429 lines
16 KiB
C++
429 lines
16 KiB
C++
//===----------------------------------------------------------------------===//
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//
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// Part of the LLVM Project, under the Apache License v2.0 with LLVM Exceptions.
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// See https://llvm.org/LICENSE.txt for license information.
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// SPDX-License-Identifier: Apache-2.0 WITH LLVM-exception
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// Also available under a BSD-style license. See LICENSE.
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//
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//===----------------------------------------------------------------------===//
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#include "torch-mlir/Conversion/TorchToMhlo/TorchToMhlo.h"
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#include "../PassDetail.h"
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#include "./MhloLegalizeUtils.h"
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#include "./PopulatePatterns.h"
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#include "mhlo/IR/hlo_ops.h"
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#include "mlir/Dialect/Arith/IR/Arith.h"
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#include "mlir/Dialect/Tensor/IR/Tensor.h"
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#include "torch-mlir/Conversion/Utils/Utils.h"
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#include "torch-mlir/Dialect/Torch/IR/TorchDialect.h"
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#include "torch-mlir/Dialect/Torch/IR/TorchOps.h"
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#include "torch-mlir/Dialect/Torch/Utils/TorchUpstream.h"
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#include "torch-mlir/Dialect/Torch/Utils/Utils.h"
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#include "torch-mlir/Dialect/TorchConversion/IR/TorchConversionDialect.h"
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#include "torch-mlir/Dialect/TorchConversion/IR/TorchConversionOps.h"
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#include <numeric>
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using namespace mlir;
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using namespace mlir::torch;
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using namespace mlir::torch::Torch;
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using namespace mlir::torch::TorchConversion;
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using namespace mlir::torch::torch_to_mhlo;
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namespace {
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// A dimension index from torch.dialect might outside the range [0, dimSize].
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// The function is used to normalize the input index into the range.
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Value getNormalizedDimSizeInternal(PatternRewriter &rewriter, Operation *op,
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Value index, Value dimSize) {
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auto loc = op->getLoc();
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Value zero = rewriter.create<arith::ConstantOp>(
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loc, rewriter.getIntegerAttr(rewriter.getI64Type(), 0));
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// To normalize index into range [-dimSize, dimSize]
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// index = min(max(-dimSize, index), dimSize)
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auto negDimSize = rewriter.create<arith::SubIOp>(loc, zero, dimSize);
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index = rewriter.create<arith::MaxSIOp>(loc, negDimSize, index);
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index = rewriter.create<arith::MinSIOp>(loc, dimSize, index);
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auto dimSizePlusIndex = rewriter.create<arith::AddIOp>(loc, dimSize, index);
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auto indexPositive = rewriter.create<arith::CmpIOp>(
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loc, arith::CmpIPredicate::sge, index, zero);
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// get positive index: (index >=0) ? index: index + dimSize
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return rewriter.create<arith::SelectOp>(loc, indexPositive, index,
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dimSizePlusIndex);
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}
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Value getDynamicSliceInternal(PatternRewriter &rewriter, Operation *op,
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Type outTy, Value input, Value startIndex,
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Value endIndex, Value step, size_t dimIndex,
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ArrayRef<Value> dimSizes,
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size_t dimSizeIndexBits) {
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auto loc = op->getLoc();
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// startIndex & endIndex has been normailized into range [0, dSize]
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Type intType = rewriter.getIntegerType(dimSizeIndexBits);
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Value zero = rewriter.create<arith::ConstantOp>(
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loc, rewriter.getIntegerAttr(intType, 0));
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Value one = rewriter.create<arith::ConstantOp>(
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loc, rewriter.getIntegerAttr(intType, 1));
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SmallVector<Value, 4> startIndices;
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SmallVector<Value, 4> endIndices;
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SmallVector<Value, 4> strides;
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auto inputTy = input.getType().dyn_cast<RankedTensorType>();
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size_t rank = inputTy.getRank();
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startIndices.reserve(rank);
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endIndices.reserve(rank);
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strides.reserve(rank);
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auto endIndexIsZero = rewriter.create<arith::CmpIOp>(
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loc, arith::CmpIPredicate::eq, endIndex, zero);
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endIndex = rewriter.create<arith::SelectOp>(loc, endIndexIsZero,
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dimSizes[dimIndex], endIndex);
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for (size_t r = 0; r < rank; ++r) {
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if (r == dimIndex) {
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startIndices.push_back(startIndex);
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endIndices.push_back(endIndex);
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strides.push_back(step);
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} else {
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startIndices.push_back(zero);
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endIndices.push_back(dimSizes[r]);
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strides.push_back(one);
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}
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}
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auto startTensor =
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rewriter.create<tensor::FromElementsOp>(loc, startIndices).getResult();
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auto endTensor =
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rewriter.create<tensor::FromElementsOp>(loc, endIndices).getResult();
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auto stridesTensor =
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rewriter.create<tensor::FromElementsOp>(loc, strides).getResult();
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return rewriter.create<mhlo::RealDynamicSliceOp>(
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loc, outTy, input, startTensor, endTensor, stridesTensor);
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}
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// Get a dynamic slice of the tensor from startIndex to endIndex with stride
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// step on the specifed dimension. The input startIndex(default to 0),
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// endIndex(default to dimSize), and step(default to 1) can be optional.
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FailureOr<Value> getDynamicSlice(PatternRewriter &rewriter, Operation *op,
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Type outTy, Value input,
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llvm::Optional<Value> startIndexOpt,
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llvm::Optional<Value> endIndexOpt,
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llvm::Optional<Value> stepOpt, int64_t dim,
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size_t dimSizeIndexBits) {
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auto loc = op->getLoc();
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auto inputTy = input.getType().dyn_cast<RankedTensorType>();
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auto rank = inputTy.getRank();
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dim = (dim + rank) % rank;
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Value dimSize = rewriter.create<arith::IndexCastOp>(
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loc, rewriter.getI64Type(),
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rewriter.create<tensor::DimOp>(loc, input, dim));
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Value normStartIndex =
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startIndexOpt
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? getNormalizedDimSizeInternal(rewriter, op, *startIndexOpt, dimSize)
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: rewriter.create<arith::ConstantOp>(
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loc, rewriter.getIntegerAttr(rewriter.getI64Type(), 0));
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Value normEndIndex =
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endIndexOpt
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? getNormalizedDimSizeInternal(rewriter, op, *endIndexOpt, dimSize)
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: dimSize;
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Value step =
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stepOpt ? *stepOpt
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: rewriter.create<arith::ConstantOp>(
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loc, rewriter.getIntegerAttr(rewriter.getI64Type(), 1));
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if (dimSizeIndexBits == 32) {
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Type intType = rewriter.getIntegerType(dimSizeIndexBits);
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normStartIndex =
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rewriter.create<arith::TruncIOp>(loc, intType, normStartIndex);
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normEndIndex = rewriter.create<arith::TruncIOp>(loc, intType, normEndIndex);
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step = rewriter.create<arith::TruncIOp>(loc, intType, step);
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}
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FailureOr<SmallVector<Value, 4>> dimSizesInfo =
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mhlo::getDimSizesOfTensor(rewriter, op, input, dimSizeIndexBits);
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if (failed(dimSizesInfo))
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return rewriter.notifyMatchFailure(
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op, "failed to get dimension sizes of the input");
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auto dimSizes = *dimSizesInfo;
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return getDynamicSliceInternal(rewriter, op, outTy, input, normStartIndex,
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normEndIndex, step, dim, dimSizes,
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dimSizeIndexBits);
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}
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// This defines a template to construct ops whose legalizations are
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// specialized.
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template <typename AtenOpT>
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class ConvertAtenViewOp : public ConvertAtenOp<AtenOpT> {
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public:
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using ConvertAtenOp<AtenOpT>::ConvertAtenOp;
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using OpAdaptor = typename AtenOpT::Adaptor;
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LogicalResult
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matchAndRewrite(AtenOpT op, OpAdaptor adaptor,
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ConversionPatternRewriter &rewriter) const override {
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auto rankType =
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adaptor.self().getType().template dyn_cast<RankedTensorType>();
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if (!rankType)
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return op.emitError("Only ranked tensor types are currently supported");
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SmallVector<Value, 4> dimSizes;
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if (!getAtenViewOpSizes(op, adaptor, rewriter, dimSizes)) {
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return op.emitError("Dims size must be a list of Scalar");
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}
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auto loc = op.getLoc();
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auto newRank = dimSizes.size();
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if (newRank == 0 || rankType.getRank() == 0) {
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rewriter.replaceOpWithNewOp<mhlo::ReshapeOp>(
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op,
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OpConversionPattern<AtenOpT>::getTypeConverter()->convertType(
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op.getType()),
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adaptor.self());
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return success();
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}
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std::for_each(dimSizes.begin(), dimSizes.end(), [&](Value &dSize) {
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dSize = rewriter.create<ToI64Op>(loc, dSize).getResult();
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return dSize;
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});
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const auto &options = ConvertAtenOp<AtenOpT>::getOptions();
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Type intType = rewriter.getIntegerType(options.dimSizeIndexBits);
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if (options.dimSizeIndexBits == 32) {
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// The i64 calculation is much slower than i32 on some devices, such as
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// Nvidia GPU. One can truncate from i64 to i32 since dimension sizes are
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// unlikely to exceed the range of i32(4GiB)
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std::for_each(dimSizes.begin(), dimSizes.end(), [&](Value &dSize) {
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// dimSize: cast i64 -> i32
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dSize = rewriter.create<arith::TruncIOp>(loc, intType, dSize);
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return dSize;
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});
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}
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Value numel = rewriter.create<arith::ConstantOp>(
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loc, rewriter.getIntegerAttr(intType, 1));
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for (auto d : dimSizes) {
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numel = rewriter.create<arith::MulIOp>(loc, numel, d);
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}
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numel = rewriter.create<arith::IndexCastOp>(loc, rewriter.getIndexType(),
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numel);
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if (dimSizes.size() == 0) {
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rewriter.replaceOpWithNewOp<mhlo::ReshapeOp>(
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op,
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OpConversionPattern<AtenOpT>::getTypeConverter()->convertType(
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op.getType()),
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adaptor.self());
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return success();
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}
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Value mhloShape = rewriter.create<tensor::FromElementsOp>(loc, dimSizes);
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Value computedShape = rewriter.create<mhlo::ComputeReshapeShapeOp>(
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loc, mhloShape.getType(), numel, mhloShape);
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rewriter.replaceOpWithNewOp<mhlo::DynamicReshapeOp>(
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op,
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OpConversionPattern<AtenOpT>::getTypeConverter()->convertType(
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op.getType()),
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adaptor.self(), computedShape);
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return success();
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}
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bool getAtenViewOpSizes(AtenOpT op, OpAdaptor adaptor,
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ConversionPatternRewriter &rewriter,
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SmallVector<Value, 4> &dimSizes) const;
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};
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template <>
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bool ConvertAtenViewOp<AtenViewOp>::getAtenViewOpSizes(
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AtenViewOp op, OpAdaptor adaptor, ConversionPatternRewriter &rewriter,
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SmallVector<Value, 4> &dimSizes) const {
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return getListConstructElements(adaptor.size(), dimSizes);
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}
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template <>
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bool ConvertAtenViewOp<AtenReshapeOp>::getAtenViewOpSizes(
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AtenReshapeOp op, OpAdaptor adaptor, ConversionPatternRewriter &rewriter,
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SmallVector<Value, 4> &dimSizes) const {
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return getListConstructElements(adaptor.shape(), dimSizes);
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}
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} // namespace
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template <>
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LogicalResult ConvertAtenOp<AtenSliceTensorOp>::matchAndRewrite(
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AtenSliceTensorOp op, OpAdaptor adaptor,
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ConversionPatternRewriter &rewriter) const {
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auto self = adaptor.self();
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auto selfTy = self.getType().template cast<RankedTensorType>();
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if (!selfTy)
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return op.emitError("only ranked tensor types are supported");
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auto outTy =
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getTypeConverter()->convertType(op.getType()).cast<RankedTensorType>();
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int64_t dim;
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if (!matchPattern(op.dim(), m_TorchConstantInt(&dim)))
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return rewriter.notifyMatchFailure(
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op, "only constant dim is currently supported");
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auto getOptionalVal = [&](Value val) -> llvm::Optional<Value> {
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if (val.getType().isa<Torch::NoneType>()) {
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return llvm::None;
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} else {
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return val;
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}
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};
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llvm::Optional<Value> start = getOptionalVal(adaptor.start());
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llvm::Optional<Value> end = getOptionalVal(adaptor.end());
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llvm::Optional<Value> step = getOptionalVal(adaptor.step());
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FailureOr<Value> sliceInfo =
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getDynamicSlice(rewriter, op, outTy, self, start, end, step, dim,
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options.dimSizeIndexBits);
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if (failed(sliceInfo))
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return op.emitError("can not create a dynmaic slice");
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auto slice = *sliceInfo;
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rewriter.replaceOp(op, slice);
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return success();
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}
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template <>
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LogicalResult ConvertAtenOp<AtenSqueezeOp>::matchAndRewrite(
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AtenSqueezeOp op, OpAdaptor adaptor,
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ConversionPatternRewriter &rewriter) const {
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auto self = adaptor.self();
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auto selfTy = self.getType().template cast<RankedTensorType>();
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if (!selfTy)
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return op.emitError("only ranked tensor types are supported");
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auto rank = selfTy.getRank();
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if (rank == 0)
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return rewriter.notifyMatchFailure(
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op, "The rank of tensor must be greater than 0");
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SmallVector<int64_t, 4> dims;
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dims.reserve(rank);
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for (int r = 0; r < rank; ++r) {
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auto dSize = selfTy.getShape()[r];
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if (dSize == ShapedType::kDynamicSize)
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return rewriter.notifyMatchFailure(
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op, "the size of the dimension being squeezed can't be unknown");
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if (dSize != 1)
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dims.push_back(r);
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}
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if (dims.size() == 0) {
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rewriter.replaceOpWithNewOp<mhlo::ReshapeOp>(
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op, getTypeConverter()->convertType(op.getType()), self);
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return success();
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}
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auto newDimSizesInfo = mhlo::getDimSizesOfTensor(rewriter, op, self, dims,
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options.dimSizeIndexBits);
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if (failed(newDimSizesInfo))
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return rewriter.notifyMatchFailure(
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op, "failed to get dimension sizes of the input");
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auto newDimSizes = *newDimSizesInfo;
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auto mhloShape =
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rewriter.create<tensor::FromElementsOp>(op.getLoc(), newDimSizes);
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rewriter.replaceOpWithNewOp<mhlo::DynamicReshapeOp>(
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op, getTypeConverter()->convertType(op.getType()), self, mhloShape);
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return success();
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}
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template <>
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LogicalResult ConvertAtenOp<AtenSqueezeDimOp>::matchAndRewrite(
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AtenSqueezeDimOp op, OpAdaptor adaptor,
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ConversionPatternRewriter &rewriter) const {
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auto self = adaptor.self();
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auto selfTy = self.getType().template cast<RankedTensorType>();
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if (!selfTy)
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return op.emitError("only ranked tensor types are supported");
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int64_t dim;
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if (!matchPattern(op.dim(), m_TorchConstantInt(&dim)))
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return rewriter.notifyMatchFailure(
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op, "only constant dim is currently supported");
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auto rank = selfTy.getRank();
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if (rank == 0)
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return rewriter.notifyMatchFailure(
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op, "the rank of tensor must be greater than 0");
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dim = toPositiveDim(dim, rank);
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if (selfTy.getShape()[dim] != 1) {
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if (selfTy.getShape()[dim] == ShapedType::kDynamicSize)
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return rewriter.notifyMatchFailure(
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op, "the size of the dimension being squeezed is can't be unknown");
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rewriter.replaceOp(op, adaptor.self());
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return success();
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}
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SmallVector<int64_t, 4> dims(rank);
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std::iota(dims.begin(), dims.end(), 0);
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dims.erase(dims.begin() + dim);
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if (dims.size() == 0) {
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rewriter.replaceOpWithNewOp<mhlo::ReshapeOp>(
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op, getTypeConverter()->convertType(op.getType()), self);
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return success();
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}
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auto newDimSizesInfo = mhlo::getDimSizesOfTensor(rewriter, op, self, dims,
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options.dimSizeIndexBits);
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if (failed(newDimSizesInfo))
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return rewriter.notifyMatchFailure(
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op, "failed to get dimension sizes of the input");
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auto newDimSizes = *newDimSizesInfo;
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auto mhloShape =
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rewriter.create<tensor::FromElementsOp>(op.getLoc(), newDimSizes);
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rewriter.replaceOpWithNewOp<mhlo::DynamicReshapeOp>(
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op, getTypeConverter()->convertType(op.getType()), self, mhloShape);
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return success();
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}
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template <>
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LogicalResult ConvertAtenOp<AtenUnsqueezeOp>::matchAndRewrite(
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AtenUnsqueezeOp op, OpAdaptor adaptor,
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ConversionPatternRewriter &rewriter) const {
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auto selfType = adaptor.self().getType().dyn_cast<TensorType>();
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if (!selfType) {
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return op.emitError("only tensor types are currently supported");
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}
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int64_t dim;
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if (!matchPattern(op.dim(), m_TorchConstantInt(&dim)))
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return op->emitError("dim must be a Scalar constant");
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auto unsqzTensorInfo = mhlo::unsqueezeTensor(rewriter, op, adaptor.self(),
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{dim}, options.dimSizeIndexBits);
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if (failed(unsqzTensorInfo))
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return rewriter.notifyMatchFailure(op,
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"failed to create unsqueezed tensor");
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rewriter.replaceOp(op, *unsqzTensorInfo);
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return success();
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}
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void mlir::torch::torch_to_mhlo::populateViewLikeOpPatternsAndLegality(
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TypeConverter &typeConverter, RewritePatternSet &patterns,
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ConversionTarget &target, const TorchToMhloOptions &options) {
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MLIRContext *context = patterns.getContext();
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#define INSERT_ATENOP_PATTERN(AtenOp) \
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target.addIllegalOp<AtenOp>(); \
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patterns.add<ConvertAtenOp<AtenOp>>(typeConverter, context, options)
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INSERT_ATENOP_PATTERN(AtenSliceTensorOp);
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INSERT_ATENOP_PATTERN(AtenSqueezeOp);
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INSERT_ATENOP_PATTERN(AtenSqueezeDimOp);
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INSERT_ATENOP_PATTERN(AtenUnsqueezeOp);
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#undef INSERT_ATENOP_PATTERN
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#define INSERT_VIEW_OP_PATTERN(AtenOp) \
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target.addIllegalOp<AtenOp>(); \
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patterns.add<ConvertAtenViewOp<AtenOp>>(typeConverter, context, options)
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INSERT_VIEW_OP_PATTERN(AtenViewOp);
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INSERT_VIEW_OP_PATTERN(AtenReshapeOp);
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#undef INSERT_VIEW_OP_PATTERN
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}
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