23#include "llvm/ADT/STLExtras.h"
24#include "llvm/ADT/SmallVector.h"
38template <
class SrcValType,
class TargetValType,
class TargetType>
41 const std::function<TargetValType(
const SrcValType &)> &toApply,
42 TargetType targetType) {
47 for (
auto val : toTransform.
getValues<SrcValType>()) {
48 auto transformedVal = toApply(val);
49 transformedValues.push_back(transformedVal);
53 auto inShape = toTransform.
getType();
54 auto outTy = inShape.cloneWith({}, targetType);
61 const std::function<APFloat(
const APFloat &)> &toApply,
62 FloatType targetType);
67 if (isa<FloatType>(toCheck.getType().getElementType())) {
71 "Unexpected input tensor type: the "
72 "TOSA spec only allows floats");
86 "Non-const or non-dense input tensor");
91 if (isa<ConstOp>(toCheck.getDefiningOp())) {
96 "The reciprocal can only be folded if "
97 "it operates on a TOSA constant");
104 auto floatCheck = notifyIfNotFloat(toCheck, location, rewriter);
108 return notifyIfNoTosaDenseConstantTensor(toCheck, location, rewriter);
120 assert(unaryOp->getNumOperands() == 1);
121 auto inputOp = unaryOp->getOperand(0);
124 if (isa<SplatElementsAttr>(values)) {
130 return inputOp.hasOneUse();
133template <
typename RangeType>
135 ShapedType outputType,
137 using ElementType = std::decay_t<
decltype(*std::begin(data))>;
139 assert(inputType.getElementType() == outputType.getElementType());
141 if (inputType.getNumElements() == 0)
144 auto inputShape = inputType.getShape();
152 auto initialValue = *std::begin(data);
156 for (
const auto &it : llvm::enumerate(data)) {
157 auto srcLinearIndex = it.index();
159 uint64_t dstLinearIndex = 0;
160 for (
int64_t dim = inputShape.size() - 1; dim >= 0; --dim) {
162 auto sourceIndexForDim = srcLinearIndex % inputShape[dim];
163 srcLinearIndex /= inputShape[dim];
168 outputStrides[invertedPermValues[dim]] * sourceIndexForDim;
171 outputValues[dstLinearIndex] = it.value();
183 ShapedType outputType,
186 if (
auto data = attr.tryGetValues<
bool>())
187 return transposeType(*data, inputType, outputType, permValues);
189 if (
auto data = attr.tryGetValues<int8_t>())
190 return transposeType(*data, inputType, outputType, permValues);
192 if (
auto data = attr.tryGetValues<int16_t>())
193 return transposeType(*data, inputType, outputType, permValues);
195 if (
auto data = attr.tryGetValues<int32_t>())
196 return transposeType(*data, inputType, outputType, permValues);
198 if (
auto data = attr.tryGetValues<
int64_t>())
199 return transposeType(*data, inputType, outputType, permValues);
201 if (
auto data = attr.tryGetValues<
float>())
202 return transposeType(*data, inputType, outputType, permValues);
204 if (
auto data = attr.tryGetValues<APFloat>())
205 return transposeType(*data, inputType, outputType, permValues);
208 if (isa<DenseResourceElementsAttr>(attr)) {
209 auto elementTy = attr.getElementType();
212 data && elementTy.isInteger(1))
213 return transposeType(*data, inputType, outputType, permValues);
216 data && elementTy.isInteger(8))
217 return transposeType(*data, inputType, outputType, permValues);
220 data && elementTy.isInteger(16))
221 return transposeType(*data, inputType, outputType, permValues);
224 data && elementTy.isInteger(32))
225 return transposeType(*data, inputType, outputType, permValues);
228 data && elementTy.isInteger(64))
229 return transposeType(*data, inputType, outputType, permValues);
232 data && elementTy.isF32())
233 return transposeType(*data, inputType, outputType, permValues);
242 LogicalResult matchAndRewrite(tosa::TransposeOp op,
244 auto outputType = cast<ShapedType>(op.getType());
245 if (!outputType.hasRank() || !outputType.hasStaticShape())
248 if (!outputType.getElementType().isIntOrIndexOrFloat())
251 ElementsAttr inputValues;
255 if (!llvm::hasSingleElement(op.getInput1().getDefiningOp()->getUsers()))
258 auto permValues = llvm::map_to_vector(
259 op.getPerms(), [](
const int32_t v) { return static_cast<int64_t>(v); });
261 auto inputType = cast<ShapedType>(op.getInput1().getType());
263 auto resultAttr = transpose(inputValues, inputType, outputType, permValues);
266 op,
"unsupported attribute or element type");
278 LogicalResult matchAndRewrite(ReciprocalOp recip,
280 auto inputTensor = recip.getInput1();
284 notifyIfNotConstantFloatTosaTensor(inputTensor, recip, rewriter);
285 if (
failed(preCondCheck)) {
294 if (!constantUnaryOpShouldBeFolded(recip, inputValues)) {
296 recip,
"Currently, reciprocals will only be folded if the input "
297 "tensor has a single user");
300 if (inputTensor.getType() != recip.getType())
302 recip,
"input tensor and reciprocal output have different type");
305 auto newTensor = applyElementWise<APFloat, APFloat, FloatType>(
306 inputValues, &ReciprocalOp::calcOneElement,
322 for (
int64_t i = tensorShape.size() - 1; i >= 0; --i) {
323 position[i] = remaining % tensorShape[i];
324 remaining /= tensorShape[i];
336 for (
int64_t i = position.size() - 1; i >= 0; --i) {
337 index += position[i] * multiplierTmp;
338 multiplierTmp *= tensorShape[i];
343template <
typename OperationType>
344llvm::APInt calculateReducedValue(
const mlir::ElementsAttr &oldTensorAttr,
350 newShape[reductionAxis] = 1;
353 getPositionFromIndex(reductionIndex, newShape);
354 auto oldTensor = oldTensorAttr.getValues<llvm::APInt>();
356 position[reductionAxis] = 0;
357 int64_t indexAtOldTensor = getIndexFromPosition(position, oldShape);
358 llvm::APInt reducedValue = oldTensor[indexAtOldTensor];
360 for (
int64_t reductionAxisVal = 1; reductionAxisVal < oldShape[reductionAxis];
361 ++reductionAxisVal) {
363 int64_t stride = llvm::product_of(oldShape.drop_front(reductionAxis + 1));
364 int64_t index = indexAtOldTensor + stride * reductionAxisVal;
366 OperationType::calcOneElement(reducedValue, oldTensor[
index]);
371template <
typename OperationType>
374 ReduceConstantOptimization(MLIRContext *context,
375 bool aggressiveReduceConstant)
376 : OpRewritePattern<OperationType>(context),
377 aggressiveReduceConstant(aggressiveReduceConstant) {}
379 using OpRewritePattern<OperationType>::OpRewritePattern;
381 LogicalResult matchAndRewrite(OperationType op,
382 PatternRewriter &rewriter)
const override {
383 Value inputOp = op.getInput();
388 op,
"reduce input must be const operation");
390 if (!inputOp.
hasOneUse() && !this->aggressiveReduceConstant)
392 op,
"input operation has more than one user");
394 auto resultType = cast<ShapedType>(op.getOutput().getType());
396 if (!resultType.hasStaticShape())
399 auto reductionAxis = op.getAxis();
400 const auto denseElementsAttr = constOp.getValues();
401 const auto shapedOldElementsValues =
402 cast<ShapedType>(denseElementsAttr.getType());
404 if (!llvm::isa<IntegerType>(shapedOldElementsValues.getElementType()))
406 op,
"reduce input currently supported with integer type");
408 auto oldShape = shapedOldElementsValues.getShape();
409 auto newShape = resultType.getShape();
411 int64_t newNumOfElements = llvm::product_of(newShape);
412 llvm::SmallVector<APInt> newReducedTensor(newNumOfElements);
414 for (int64_t reductionIndex = 0; reductionIndex < newNumOfElements;
418 newReducedTensor[reductionIndex] = calculateReducedValue<OperationType>(
419 denseElementsAttr, oldShape, reductionAxis, reductionIndex);
422 auto rankedTensorType = cast<RankedTensorType>(resultType);
428 const bool aggressiveReduceConstant;
435 bool aggressiveReduceConstant) {
436 patterns.
add<ReduceConstantOptimization<ReduceAllOp>>(
437 ctx, aggressiveReduceConstant);
438 patterns.
add<ReduceConstantOptimization<ReduceAnyOp>>(
439 ctx, aggressiveReduceConstant);
440 patterns.
add<ReduceConstantOptimization<ReduceMaxOp>>(
441 ctx, aggressiveReduceConstant);
442 patterns.
add<ReduceConstantOptimization<ReduceMinOp>>(
443 ctx, aggressiveReduceConstant);
444 patterns.
add<ReduceConstantOptimization<ReduceProductOp>>(
445 ctx, aggressiveReduceConstant);
446 patterns.
add<ReduceConstantOptimization<ReduceSumOp>>(
447 ctx, aggressiveReduceConstant);
452 patterns.
add<TosaFoldConstantTranspose>(ctx);
457 patterns.
add<TosaFoldConstantReciprocal>(ctx);
An attribute that represents a reference to a dense vector or tensor object.
auto getValues() const
Return the held element values as a range of the given type.
int64_t getNumElements() const
Returns the number of elements held by this attribute.
Type getElementType() const
Return the element type of this DenseElementsAttr.
static DenseElementsAttr get(ShapedType type, ArrayRef< Attribute > values)
Constructs a dense elements attribute from an array of element values.
ShapedType getType() const
Return the type of this ElementsAttr, guaranteed to be a vector or tensor with static shape.
MLIRContext is the top-level object for a collection of MLIR operations.
A special type of RewriterBase that coordinates the application of a rewrite pattern on the current I...
RewritePatternSet & add(ConstructorArg &&arg, ConstructorArgs &&...args)
Add an instance of each of the pattern types 'Ts' to the pattern list with the given arguments.
std::enable_if_t<!std::is_convertible< CallbackT, Twine >::value, LogicalResult > notifyMatchFailure(Location loc, CallbackT &&reasonCallback)
Used to notify the listener that the IR failed to be rewritten because of a match failure,...
OpTy replaceOpWithNewOp(Operation *op, Args &&...args)
Replace the results of the given (original) op with a new op that is created without verification (re...
bool hasOneUse() const
Returns true if this value has exactly one use.
Operation * getDefiningOp() const
If this value is the result of an operation, return the operation that defines it.
void populateTosaConstantReduction(MLIRContext *ctx, RewritePatternSet &patterns, bool aggressiveReduceConstant)
void populateTosaFoldConstantReciprocalPatterns(MLIRContext *ctx, RewritePatternSet &patterns)
std::optional< ArrayRef< T > > tryGetDenseResourceValues(ElementsAttr attr)
void populateTosaFoldConstantTransposePatterns(MLIRContext *ctx, RewritePatternSet &patterns)
Include the generated interface declarations.
bool matchPattern(Value value, const Pattern &pattern)
Entry point for matching a pattern over a Value.
SmallVector< int64_t > computeStrides(ArrayRef< int64_t > sizes)
std::conditional_t< std::is_same_v< Ty, mlir::Type >, mlir::Value, detail::TypedValue< Ty > > TypedValue
If Ty is mlir::Type this will select Value instead of having a wrapper around it.
detail::constant_op_matcher m_Constant()
Matches a constant foldable operation.
SmallVector< int64_t > invertPermutationVector(ArrayRef< int64_t > permutation)
Helper method to apply to inverse a permutation.
OpRewritePattern is a wrapper around RewritePattern that allows for matching and rewriting against an...
OpRewritePattern(MLIRContext *context, PatternBenefit benefit=1, ArrayRef< StringRef > generatedNames={})
Patterns must specify the root operation name they match against, and can also specify the benefit of...