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//===- VectorUnrollDistribute.cpp - patterns to do vector unrolling -------===//
//
// Part of the LLVM Project, 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
//
//===----------------------------------------------------------------------===//
//
// This file implements patterns to do vector unrolling and vector distribution.
//
//===----------------------------------------------------------------------===//
#include "mlir/Dialect/Affine/IR/AffineOps.h"
#include "mlir/Dialect/Utils/IndexingUtils.h"
#include "mlir/Dialect/Vector/Transforms/VectorTransforms.h"
#include "mlir/IR/ImplicitLocOpBuilder.h"
#include "mlir/Interfaces/VectorInterfaces.h"
#include "mlir/Support/MathExtras.h"
#include "llvm/ADT/MapVector.h"
#include "llvm/ADT/STLExtras.h"
#include "llvm/Support/Debug.h"
#include <numeric>
#include <optional>
#define DEBUG_TYPE "vector-unroll"
#define DBGS() (llvm::dbgs() << "[" DEBUG_TYPE "]: ")
#define LDBG(X) LLVM_DEBUG(DBGS() << X << "\n")
using namespace mlir;
using namespace mlir::vector;
/// During unrolling from `originalShape` to `targetShape` return the offset for
/// the slice `index`.
static SmallVector<int64_t> getVectorOffset(ArrayRef<int64_t> ratioStrides,
int64_t index,
ArrayRef<int64_t> targetShape) {
return computeElementwiseMul(delinearize(index, ratioStrides), targetShape);
}
/// A functor that accomplishes the same thing as `getVectorOffset` but
/// allows for reordering the traversal of the dimensions. The order of
/// traversal is given in "for loop order" (outer to inner).
namespace {
class DecomposeShapeIterator {
private:
SmallVector<int64_t> vectorShape;
SmallVector<int64_t> loopOrder;
SmallVector<int64_t> sliceStrides;
int64_t maxIndexVal{1};
public:
DecomposeShapeIterator(ArrayRef<int64_t> originalShape,
ArrayRef<int64_t> targetShape,
ArrayRef<int64_t> loopOrder)
: vectorShape(targetShape.begin(), targetShape.end()),
loopOrder(loopOrder.begin(), loopOrder.end()),
sliceStrides(originalShape.size()) {
assert(originalShape.size() >= targetShape.size());
assert(loopOrder.size() == originalShape.size());
// Compute the count for each dimension.
auto maybeShapeRatio = computeShapeRatio(originalShape, targetShape);
assert(maybeShapeRatio && "Shape does not evenly divide");
// Pad `sliceDimCounts` with leading 1s so that all sizes match.
SmallVector<int64_t> sliceDimCounts = *maybeShapeRatio;
maxIndexVal = computeMaxLinearIndex(sliceDimCounts);
// Reversing "loop order" gives dimensions from fastest varying to slowest
// varying (smallest stride to largest stride).
int64_t accum = 1;
for (auto idx : llvm::reverse(loopOrder)) {
sliceStrides[idx] = accum;
accum *= sliceDimCounts[idx];
}
}
// Turn the linear index into a d-tuple based on units of vectors of size
// `vectorShape`. The linear index is assumed to represent traversal of the
// dimensions based on `order`.
SmallVector<int64_t> delinearize(int64_t index) const {
// Traverse in for loop order (largest stride to smallest stride).
SmallVector<int64_t> vectorOffsets(sliceStrides.size());
for (auto idx : loopOrder) {
vectorOffsets[idx] = index / sliceStrides[idx];
index %= sliceStrides[idx];
}
return vectorOffsets;
}
int64_t maxIndex() const { return maxIndexVal; }
/// Return the offset within d-tuple based on the ordering given by
/// `loopOrder`.
SmallVector<int64_t> getVectorOffset(int64_t index) const {
SmallVector<int64_t> vectorOffsets = delinearize(index);
SmallVector<int64_t> elementOffsets =
computeElementwiseMul(vectorShape, vectorOffsets);
return elementOffsets;
}
};
} // namespace
/// Compute the indices of the slice `index` for a tranfer op.
static SmallVector<Value> sliceTransferIndices(ArrayRef<int64_t> elementOffsets,
ArrayRef<Value> indices,
AffineMap permutationMap,
Location loc,
OpBuilder &builder) {
MLIRContext *ctx = builder.getContext();
auto isBroadcast = [](AffineExpr expr) {
if (auto constExpr = expr.dyn_cast<AffineConstantExpr>())
return constExpr.getValue() == 0;
return false;
};
// Compute 'sliceIndices' by adding 'sliceOffsets[i]' to 'indices[i]'.
SmallVector<Value> slicedIndices(indices.begin(), indices.end());
for (const auto &dim : llvm::enumerate(permutationMap.getResults())) {
if (isBroadcast(dim.value()))
continue;
unsigned pos = dim.value().cast<AffineDimExpr>().getPosition();
auto expr = getAffineDimExpr(0, builder.getContext()) +
getAffineConstantExpr(elementOffsets[dim.index()], ctx);
auto map = AffineMap::get(/*dimCount=*/1, /*symbolCount=*/0, expr);
slicedIndices[pos] =
builder.create<affine::AffineApplyOp>(loc, map, indices[pos]);
}
return slicedIndices;
}
// Clones `op` into a new operations that takes `operands` and returns
// `resultTypes`.
static Operation *cloneOpWithOperandsAndTypes(OpBuilder &builder, Location loc,
Operation *op,
ArrayRef<Value> operands,
ArrayRef<Type> resultTypes) {
return builder.create(loc, op->getName().getIdentifier(), operands,
resultTypes, op->getAttrs());
}
/// Return the target shape for unrolling for the given `op`. Return
/// std::nullopt if the op shouldn't be or cannot be unrolled.
static std::optional<SmallVector<int64_t>>
getTargetShape(const vector::UnrollVectorOptions &options, Operation *op) {
LDBG("");
LDBG("Get unroll shape for op " << op->getName().getStringRef());
if (options.filterConstraint && failed(options.filterConstraint(op))) {
LDBG("--no filter constraint -> BAIL");
return std::nullopt;
}
assert(options.nativeShape &&
"vector unrolling expects the native shape or native"
"shape call back function to be set");
auto unrollableVectorOp = dyn_cast<VectorUnrollOpInterface>(op);
if (!unrollableVectorOp) {
LDBG("--not an unrollable op -> BAIL");
return std::nullopt;
}
auto maybeUnrollShape = unrollableVectorOp.getShapeForUnroll();
if (!maybeUnrollShape) {
LDBG("--could not get shape of op " << *op << " -> BAIL");
return std::nullopt;
}
LLVM_DEBUG(
llvm::interleaveComma(*maybeUnrollShape, DBGS() << "--vector op shape: ");
llvm::dbgs() << "\n";);
std::optional<SmallVector<int64_t>> targetShape = options.nativeShape(op);
if (!targetShape) {
LDBG("--no unrolling target shape defined " << *op << "-> SKIP");
return std::nullopt;
}
LLVM_DEBUG(llvm::interleaveComma(*targetShape, DBGS() << "--target shape: ");
llvm::dbgs() << "\n";);
auto maybeShapeRatio = computeShapeRatio(*maybeUnrollShape, *targetShape);
if (!maybeShapeRatio) {
LDBG("--could not compute integral shape ratio -> BAIL");
return std::nullopt;
}
if (llvm::all_of(*maybeShapeRatio, [](int64_t v) { return v == 1; })) {
LDBG("--no unrolling needed -> SKIP");
return std::nullopt;
}
LDBG("--found an integral shape ratio to unroll to -> SUCCESS");
return targetShape;
}
static SmallVector<int64_t>
getUnrollOrder(unsigned numLoops, Operation *op,
const vector::UnrollVectorOptions &options) {
SmallVector<int64_t> loopOrder =
llvm::to_vector(llvm::seq<int64_t>(0, static_cast<int64_t>(numLoops)));
if (options.traversalOrderCallback != nullptr) {
std::optional<SmallVector<int64_t>> order =
options.traversalOrderCallback(op);
if (order) {
loopOrder = std::move(*order);
}
}
return loopOrder;
}
namespace {
struct UnrollTransferReadPattern
: public OpRewritePattern<vector::TransferReadOp> {
UnrollTransferReadPattern(MLIRContext *context,
const vector::UnrollVectorOptions &options,
PatternBenefit benefit = 1)
: OpRewritePattern<vector::TransferReadOp>(context, benefit),
options(options) {}
LogicalResult matchAndRewrite(vector::TransferReadOp readOp,
PatternRewriter &rewriter) const override {
// TODO: support 0-d corner case.
if (readOp.getTransferRank() == 0)
return failure();
if (readOp.getMask())
return failure();
auto targetShape = getTargetShape(options, readOp);
if (!targetShape)
return failure();
auto sourceVectorType = readOp.getVectorType();
SmallVector<int64_t> strides(targetShape->size(), 1);
Location loc = readOp.getLoc();
ArrayRef<int64_t> originalSize = readOp.getVectorType().getShape();
// Prepare the result vector;
Value result = rewriter.create<arith::ConstantOp>(
loc, sourceVectorType, rewriter.getZeroAttr(sourceVectorType));
auto targetType =
VectorType::get(*targetShape, sourceVectorType.getElementType());
SmallVector<Value> originalIndices(readOp.getIndices().begin(),
readOp.getIndices().end());
SmallVector<int64_t> loopOrder =
getUnrollOrder(originalSize.size(), readOp, options);
DecomposeShapeIterator indexToOffsets(originalSize, *targetShape,
loopOrder);
for (int64_t i = 0; i < indexToOffsets.maxIndex(); i++) {
SmallVector<int64_t> elementOffsets = indexToOffsets.getVectorOffset(i);
SmallVector<Value> indices =
sliceTransferIndices(elementOffsets, originalIndices,
readOp.getPermutationMap(), loc, rewriter);
auto slicedRead = rewriter.create<vector::TransferReadOp>(
loc, targetType, readOp.getSource(), indices,
readOp.getPermutationMapAttr(), readOp.getPadding(), readOp.getMask(),
readOp.getInBoundsAttr());
result = rewriter.create<vector::InsertStridedSliceOp>(
loc, slicedRead, result, elementOffsets, strides);
}
rewriter.replaceOp(readOp, result);
return success();
}
private:
vector::UnrollVectorOptions options;
};
struct UnrollTransferWritePattern
: public OpRewritePattern<vector::TransferWriteOp> {
UnrollTransferWritePattern(MLIRContext *context,
const vector::UnrollVectorOptions &options,
PatternBenefit benefit = 1)
: OpRewritePattern<vector::TransferWriteOp>(context, benefit),
options(options) {}
LogicalResult matchAndRewrite(vector::TransferWriteOp writeOp,
PatternRewriter &rewriter) const override {
// TODO: support 0-d corner case.
if (writeOp.getTransferRank() == 0)
return failure();
if (writeOp.getMask())
return failure();
auto targetShape = getTargetShape(options, writeOp);
if (!targetShape)
return failure();
auto sourceVectorType = writeOp.getVectorType();
SmallVector<int64_t> strides(targetShape->size(), 1);
Location loc = writeOp.getLoc();
ArrayRef<int64_t> originalSize = sourceVectorType.getShape();
SmallVector<Value> originalIndices(writeOp.getIndices().begin(),
writeOp.getIndices().end());
SmallVector<int64_t> loopOrder =
getUnrollOrder(originalSize.size(), writeOp, options);
DecomposeShapeIterator indexToOffsets(originalSize, *targetShape,
loopOrder);
Value resultTensor;
for (int64_t i = 0; i < indexToOffsets.maxIndex(); i++) {
SmallVector<int64_t> elementOffsets = indexToOffsets.getVectorOffset(i);
Value slicedVector = rewriter.create<vector::ExtractStridedSliceOp>(
loc, writeOp.getVector(), elementOffsets, *targetShape, strides);
SmallVector<Value> indices =
sliceTransferIndices(elementOffsets, originalIndices,
writeOp.getPermutationMap(), loc, rewriter);
Operation *slicedWrite = rewriter.create<vector::TransferWriteOp>(
loc, slicedVector, resultTensor ? resultTensor : writeOp.getSource(),
indices, writeOp.getPermutationMapAttr(), writeOp.getInBoundsAttr());
// For the tensor case update the destination for the next transfer write.
if (!slicedWrite->getResults().empty())
resultTensor = slicedWrite->getResult(0);
}
if (resultTensor)
rewriter.replaceOp(writeOp, resultTensor);
else
rewriter.eraseOp(writeOp);
return success();
}
private:
vector::UnrollVectorOptions options;
};
struct OffsetMapInfo {
static SmallVector<int64_t> getEmptyKey() { return {int64_t(-1)}; }
static SmallVector<int64_t> getTombstoneKey() { return {int64_t(-2)}; }
static unsigned getHashValue(const SmallVector<int64_t> &v) {
return static_cast<unsigned>(llvm::hash_combine_range(v.begin(), v.end()));
}
static bool isEqual(const SmallVector<int64_t> &lhs,
const SmallVector<int64_t> &rhs) {
return lhs == rhs;
}
};
struct UnrollContractionPattern
: public OpRewritePattern<vector::ContractionOp> {
UnrollContractionPattern(MLIRContext *context,
const vector::UnrollVectorOptions &options,
PatternBenefit benefit = 1)
: OpRewritePattern<vector::ContractionOp>(context, benefit),
options(options) {}
LogicalResult matchAndRewrite(vector::ContractionOp contractOp,
PatternRewriter &rewriter) const override {
auto targetShape = getTargetShape(options, contractOp);
if (!targetShape)
return failure();
auto dstVecType = cast<VectorType>(contractOp.getResultType());
SmallVector<int64_t> originalSize = *contractOp.getShapeForUnroll();
Location loc = contractOp.getLoc();
unsigned accIndex = vector::ContractionOp::getAccOperandIndex();
AffineMap dstAffineMap = contractOp.getIndexingMapsArray()[accIndex];
llvm::MapVector<
SmallVector<int64_t>, Value,
llvm::DenseMap<SmallVector<int64_t>, unsigned, OffsetMapInfo>>
accCache;
SmallVector<int64_t> loopOrder = getUnrollOrder(
contractOp.getIteratorTypes().size(), contractOp, options);
DecomposeShapeIterator indexToOffsets(originalSize, *targetShape,
loopOrder);
const int64_t sliceCount = indexToOffsets.maxIndex();
for (int64_t i = 0; i < sliceCount; i++) {
SmallVector<int64_t> offsets = indexToOffsets.getVectorOffset(i);
SmallVector<Value> slicesOperands(contractOp.getNumOperands());
// Helper to compute the new shape of each operand and extract the slice.
auto extractOperand = [&](unsigned index, Value operand,
AffineMap permutationMap,
ArrayRef<int64_t> operandOffets) {
SmallVector<int64_t> operandShape = applyPermutationMap(
permutationMap, ArrayRef<int64_t>(*targetShape));
SmallVector<int64_t> operandStrides(operandOffets.size(), 1);
slicesOperands[index] = rewriter.create<vector::ExtractStridedSliceOp>(
loc, operand, operandOffets, operandShape, operandStrides);
};
// Extract the new lhs operand.
AffineMap lhsPermutationMap = contractOp.getIndexingMapsArray()[0];
SmallVector<int64_t> lhsOffets =
applyPermutationMap(lhsPermutationMap, ArrayRef<int64_t>(offsets));
extractOperand(0, contractOp.getLhs(), lhsPermutationMap, lhsOffets);
// Extract the new rhs operand.
AffineMap rhsPermutationMap = contractOp.getIndexingMapsArray()[1];
SmallVector<int64_t> rhsOffets =
applyPermutationMap(rhsPermutationMap, ArrayRef<int64_t>(offsets));
extractOperand(1, contractOp.getRhs(), rhsPermutationMap, rhsOffets);
AffineMap accPermutationMap = contractOp.getIndexingMapsArray()[2];
SmallVector<int64_t> accOffets =
applyPermutationMap(accPermutationMap, ArrayRef<int64_t>(offsets));
// If a version of the accumulator has already been computed, use it
// otherwise extract the first version from the original operand.
auto accIt = accCache.find(accOffets);
if (accIt != accCache.end())
slicesOperands[2] = accIt->second;
else
extractOperand(2, contractOp.getAcc(), accPermutationMap, accOffets);
SmallVector<int64_t> dstShape =
applyPermutationMap(dstAffineMap, ArrayRef<int64_t>(*targetShape));
auto targetType = VectorType::get(dstShape, dstVecType.getElementType());
Operation *newOp = cloneOpWithOperandsAndTypes(
rewriter, loc, contractOp, slicesOperands, targetType);
SmallVector<int64_t> dstOffets =
applyPermutationMap(dstAffineMap, ArrayRef<int64_t>(offsets));
// Save the accumulated value untill all the loops are unrolled since
// reduction loop keep updating the accumulator.
accCache[dstOffets] = newOp->getResult(0);
}
// Assemble back the accumulator into a single vector.
Value result = rewriter.create<arith::ConstantOp>(
loc, dstVecType, rewriter.getZeroAttr(dstVecType));
for (const auto &it : accCache) {
SmallVector<int64_t> dstStrides(it.first.size(), 1);
result = rewriter.create<vector::InsertStridedSliceOp>(
loc, it.second, result, it.first, dstStrides);
}
rewriter.replaceOp(contractOp, result);
return success();
}
private:
vector::UnrollVectorOptions options;
};
struct UnrollMultiReductionPattern
: public OpRewritePattern<vector::MultiDimReductionOp> {
UnrollMultiReductionPattern(MLIRContext *context,
const vector::UnrollVectorOptions &options,
PatternBenefit benefit = 1)
: OpRewritePattern<vector::MultiDimReductionOp>(context, benefit),
options(options) {}
LogicalResult matchAndRewrite(vector::MultiDimReductionOp reductionOp,
PatternRewriter &rewriter) const override {
std::optional<SmallVector<int64_t>> targetShape =
getTargetShape(options, reductionOp);
if (!targetShape)
return failure();
SmallVector<int64_t> originalSize = *reductionOp.getShapeForUnroll();
SmallVector<int64_t> ratio = *computeShapeRatio(originalSize, *targetShape);
llvm::MapVector<
SmallVector<int64_t>, Value,
llvm::DenseMap<SmallVector<int64_t>, unsigned, OffsetMapInfo>>
accCache;
// Compute shape ratio of 'shape' and 'sizes'.
int64_t sliceCount = computeMaxLinearIndex(ratio);
Location loc = reductionOp.getLoc();
// Stride of the ratios, this gives us the offsets of sliceCount in a basis
// of multiples of the targetShape.
auto ratioStrides = computeStrides(ratio);
for (int64_t i = 0; i < sliceCount; i++) {
SmallVector<int64_t> offsets =
getVectorOffset(ratioStrides, i, *targetShape);
SmallVector<Value> operands;
SmallVector<int64_t> operandStrides(offsets.size(), 1);
Value slicedOperand = rewriter.create<vector::ExtractStridedSliceOp>(
loc, reductionOp.getSource(), offsets, *targetShape, operandStrides);
operands.push_back(slicedOperand);
SmallVector<int64_t> dstShape;
SmallVector<int64_t> destOffset;
for (size_t i : llvm::seq(size_t(0), targetShape->size())) {
if (!reductionOp.isReducedDim(i)) {
destOffset.push_back(offsets[i]);
dstShape.push_back((*targetShape)[i]);
}
}
Value acc;
SmallVector<int64_t> accStrides(destOffset.size(), 1);
// If a version of the accumulator has already been computed, use it
// otherwise extract the first version from the original operand.
auto accIt = accCache.find(destOffset);
if (accIt != accCache.end())
acc = accIt->second;
else
acc = rewriter.create<vector::ExtractStridedSliceOp>(
loc, reductionOp.getAcc(), destOffset, dstShape, accStrides);
operands.push_back(acc);
auto targetType = VectorType::get(
dstShape, reductionOp.getSourceVectorType().getElementType());
Operation *newOp = cloneOpWithOperandsAndTypes(rewriter, loc, reductionOp,
operands, targetType);
Value result = newOp->getResult(0);
accCache[destOffset] = result;
}
// Assemble back the accumulator into a single vector.
Value result = rewriter.create<arith::ConstantOp>(
loc, reductionOp.getDestType(),
rewriter.getZeroAttr(reductionOp.getDestType()));
for (const auto &it : accCache) {
SmallVector<int64_t> dstStrides(it.first.size(), 1);
result = rewriter.create<vector::InsertStridedSliceOp>(
loc, it.second, result, it.first, dstStrides);
}
rewriter.replaceOp(reductionOp, result);
return success();
}
private:
vector::UnrollVectorOptions options;
};
struct UnrollElementwisePattern : public RewritePattern {
UnrollElementwisePattern(MLIRContext *context,
const vector::UnrollVectorOptions &options,
PatternBenefit benefit = 1)
: RewritePattern(MatchAnyOpTypeTag(), benefit, context),
options(options) {}
LogicalResult matchAndRewrite(Operation *op,
PatternRewriter &rewriter) const override {
if (!OpTrait::hasElementwiseMappableTraits(op) || op->getNumResults() != 1)
return failure();
auto targetShape = getTargetShape(options, op);
if (!targetShape)
return failure();
auto dstVecType = cast<VectorType>(op->getResult(0).getType());
SmallVector<int64_t> originalSize =
*cast<VectorUnrollOpInterface>(op).getShapeForUnroll();
SmallVector<int64_t> ratio = *computeShapeRatio(originalSize, *targetShape);
int64_t sliceCount = computeMaxLinearIndex(ratio);
Location loc = op->getLoc();
// Prepare the result vector.
Value result = rewriter.create<arith::ConstantOp>(
loc, dstVecType, rewriter.getZeroAttr(dstVecType));
SmallVector<int64_t> strides(targetShape->size(), 1);
VectorType newVecType =
VectorType::get(*targetShape, dstVecType.getElementType());
// Stride of the ratios, this gives us the offsets of sliceCount in a basis
// of multiples of the targetShape.
auto ratioStrides = computeStrides(ratio);
for (int64_t i = 0; i < sliceCount; i++) {
SmallVector<int64_t> offsets =
getVectorOffset(ratioStrides, i, *targetShape);
SmallVector<Value> extractOperands;
for (OpOperand &operand : op->getOpOperands()) {
auto vecType = dyn_cast<VectorType>(operand.get().getType());
if (!vecType) {
extractOperands.push_back(operand.get());
continue;
}
extractOperands.push_back(
rewriter.create<vector::ExtractStridedSliceOp>(
loc, operand.get(), offsets, *targetShape, strides));
}
Operation *newOp = cloneOpWithOperandsAndTypes(
rewriter, loc, op, extractOperands, newVecType);
result = rewriter.create<vector::InsertStridedSliceOp>(
loc, newOp->getResult(0), result, offsets, strides);
}
rewriter.replaceOp(op, result);
return success();
}
private:
vector::UnrollVectorOptions options;
};
struct UnrollReductionPattern : public OpRewritePattern<vector::ReductionOp> {
UnrollReductionPattern(MLIRContext *context,
const vector::UnrollVectorOptions &options,
PatternBenefit benefit = 1)
: OpRewritePattern<vector::ReductionOp>(context, benefit),
options(options) {}
LogicalResult matchAndRewrite(vector::ReductionOp reductionOp,
PatternRewriter &rewriter) const override {
std::optional<SmallVector<int64_t>> targetShape =
getTargetShape(options, reductionOp);
if (!targetShape)
return failure();
SmallVector<int64_t> originalSize = *reductionOp.getShapeForUnroll();
auto ratio = *computeShapeRatio(originalSize, *targetShape);
int64_t sliceCount = ratio[0];
// Create unrolled vector reduction.
Location loc = reductionOp.getLoc();
Value accumulator = nullptr;
// Stride of the ratios, this gives us the offsets of sliceCount in a basis
// of multiples of the targetShape.
auto ratioStrides = computeStrides(ratio);
for (int64_t i = 0; i < sliceCount; ++i) {
SmallVector<int64_t> offsets =
getVectorOffset(ratioStrides, i, *targetShape);
SmallVector<int64_t> strides(offsets.size(), 1);
Value slicedOperand = rewriter.create<vector::ExtractStridedSliceOp>(
loc, reductionOp.getVector(), offsets, *targetShape, strides);
Operation *newOp = cloneOpWithOperandsAndTypes(
rewriter, loc, reductionOp, slicedOperand, reductionOp.getType());
Value result = newOp->getResult(0);
if (!accumulator) {
// This is the first reduction.
accumulator = result;
} else {
// On subsequent reduction, combine with the accumulator.
accumulator = makeArithReduction(rewriter, loc, reductionOp.getKind(),
accumulator, result);
}
}
rewriter.replaceOp(reductionOp, accumulator);
return success();
}
private:
const vector::UnrollVectorOptions options;
};
struct UnrollTransposePattern : public OpRewritePattern<vector::TransposeOp> {
UnrollTransposePattern(MLIRContext *context,
const vector::UnrollVectorOptions &options,
PatternBenefit benefit = 1)
: OpRewritePattern<vector::TransposeOp>(context, benefit),
options(options) {}
LogicalResult matchAndRewrite(vector::TransposeOp transposeOp,
PatternRewriter &rewriter) const override {
if (transposeOp.getResultVectorType().getRank() == 0)
return failure();
auto targetShape = getTargetShape(options, transposeOp);
if (!targetShape)
return failure();
auto originalVectorType = transposeOp.getResultVectorType();
SmallVector<int64_t> strides(targetShape->size(), 1);
Location loc = transposeOp.getLoc();
ArrayRef<int64_t> originalSize = originalVectorType.getShape();
SmallVector<int64_t> ratio = *computeShapeRatio(originalSize, *targetShape);
int64_t sliceCount = computeMaxLinearIndex(ratio);
// Prepare the result vector;
Value result = rewriter.create<arith::ConstantOp>(
loc, originalVectorType, rewriter.getZeroAttr(originalVectorType));
SmallVector<int64_t> permutation;
transposeOp.getTransp(permutation);
// Stride of the ratios, this gives us the offsets of sliceCount in a basis
// of multiples of the targetShape.
auto ratioStrides = computeStrides(ratio);
for (int64_t i = 0; i < sliceCount; i++) {
SmallVector<int64_t> elementOffsets =
getVectorOffset(ratioStrides, i, *targetShape);
SmallVector<int64_t> permutedOffsets(elementOffsets.size());
SmallVector<int64_t> permutedShape(elementOffsets.size());
// Compute the source offsets and shape.
for (auto indices : llvm::enumerate(permutation)) {
permutedOffsets[indices.value()] = elementOffsets[indices.index()];
permutedShape[indices.value()] = (*targetShape)[indices.index()];
}
Value slicedOperand = rewriter.create<vector::ExtractStridedSliceOp>(
loc, transposeOp.getVector(), permutedOffsets, permutedShape,
strides);
Value transposedSlice =
rewriter.create<vector::TransposeOp>(loc, slicedOperand, permutation);
result = rewriter.create<vector::InsertStridedSliceOp>(
loc, transposedSlice, result, elementOffsets, strides);
}
rewriter.replaceOp(transposeOp, result);
return success();
}
private:
vector::UnrollVectorOptions options;
};
struct UnrollGatherPattern : public OpRewritePattern<vector::GatherOp> {
UnrollGatherPattern(MLIRContext *context,
const vector::UnrollVectorOptions &options,
PatternBenefit benefit = 1)
: OpRewritePattern<vector::GatherOp>(context, benefit), options(options) {
}
LogicalResult matchAndRewrite(vector::GatherOp gatherOp,
PatternRewriter &rewriter) const override {
VectorType sourceVectorType = gatherOp.getVectorType();
if (sourceVectorType.getRank() == 0)
return failure();
auto targetShape = getTargetShape(options, gatherOp);
if (!targetShape)
return failure();
SmallVector<int64_t> strides(targetShape->size(), 1);
Location loc = gatherOp.getLoc();
ArrayRef<int64_t> originalSize = gatherOp.getVectorType().getShape();
// Prepare the result vector;
Value result = rewriter.create<arith::ConstantOp>(
loc, sourceVectorType, rewriter.getZeroAttr(sourceVectorType));
auto targetType =
VectorType::get(*targetShape, sourceVectorType.getElementType());
SmallVector<int64_t> loopOrder =
getUnrollOrder(originalSize.size(), gatherOp, options);
DecomposeShapeIterator indexToOffsets(originalSize, *targetShape,
loopOrder);
for (int64_t i = 0, e = indexToOffsets.maxIndex(); i < e; ++i) {
// To get the unrolled gather, extract the same slice based on the
// decomposed shape from each of the index, mask, and pass-through
// vectors.
SmallVector<int64_t> elementOffsets = indexToOffsets.getVectorOffset(i);
Value indexSubVec = rewriter.create<vector::ExtractStridedSliceOp>(
loc, gatherOp.getIndexVec(), elementOffsets, *targetShape, strides);
Value maskSubVec = rewriter.create<vector::ExtractStridedSliceOp>(
loc, gatherOp.getMask(), elementOffsets, *targetShape, strides);
Value passThruSubVec = rewriter.create<vector::ExtractStridedSliceOp>(
loc, gatherOp.getPassThru(), elementOffsets, *targetShape, strides);
auto slicedGather = rewriter.create<vector::GatherOp>(
loc, targetType, gatherOp.getBase(), gatherOp.getIndices(),
indexSubVec, maskSubVec, passThruSubVec);
result = rewriter.create<vector::InsertStridedSliceOp>(
loc, slicedGather, result, elementOffsets, strides);
}
rewriter.replaceOp(gatherOp, result);
return success();
}
private:
vector::UnrollVectorOptions options;
};
} // namespace
void mlir::vector::populateVectorUnrollPatterns(
RewritePatternSet &patterns, const UnrollVectorOptions &options,
PatternBenefit benefit) {
patterns.add<UnrollTransferReadPattern, UnrollTransferWritePattern,
UnrollContractionPattern, UnrollElementwisePattern,
UnrollReductionPattern, UnrollMultiReductionPattern,
UnrollTransposePattern, UnrollGatherPattern>(
patterns.getContext(), options, benefit);
}
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