torch-mlir/lib/Dialect/Torch/Transforms/MaximizeValueSemantics.cpp

145 lines
5.8 KiB
C++

//===- MaximizeValueSemantics.cpp --------------------------------*- 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 "PassDetail.h"
#include "mlir/IR/Builders.h"
#include "mlir/IR/BuiltinOps.h"
#include "mlir/IR/PatternMatch.h"
#include "mlir/Transforms/GreedyPatternRewriteDriver.h"
#include "torch-mlir/Dialect/Torch/IR/TorchOps.h"
#include "torch-mlir/Dialect/Torch/Transforms/Passes.h"
using namespace mlir;
using namespace mlir::torch;
using namespace mlir::torch::Torch;
namespace {
class AbstractlyInterpretCopyToNonValueTensorOpUsersWithinABlock
: public OpRewritePattern<CopyToNonValueTensorOp> {
public:
using OpRewritePattern::OpRewritePattern;
LogicalResult matchAndRewrite(CopyToNonValueTensorOp copy,
PatternRewriter &rewriter) const override {
SmallVector<Operation *> users;
// See if our limited form of analysis is even applicatble.
for (Operation *user : copy.getResult().getUsers()) {
// We can only analyze within a single basic block.
if (user->getBlock() != copy->getBlock())
return failure();
// We can only analyze these ops.
if (!isa<CopyToValueTensorOp, OverwriteTensorOp>(user))
return failure();
users.push_back(user);
}
// Sort by order in the block, so we can abstractly interpret the ops.
llvm::sort(users, [](Operation *lhs, Operation *rhs) {
return lhs->isBeforeInBlock(rhs);
});
// Do an abstract interpretation within the block.
// We track the current value tensor that holds the same contents as the
// non-value tensor at each program point as we walk forward.
Value currentlyHeldValueTensor = copy.getOperand();
for (Operation *user : users) {
if (auto copyToValueTensor = dyn_cast<CopyToValueTensorOp>(user)) {
rewriter.replaceOp(copyToValueTensor, {currentlyHeldValueTensor});
} else if (auto overwriteTensor = dyn_cast<OverwriteTensorOp>(user)) {
currentlyHeldValueTensor = overwriteTensor.value();
rewriter.eraseOp(overwriteTensor);
} else {
llvm_unreachable("only those ops supported!");
}
}
rewriter.eraseOp(copy);
return success();
}
};
} // namespace
namespace {
// Calculate a forward slice starting from a CopyToNonValueTensorOp
// and ending at CopyToValueTensorOp's. If all intervening ops
// are just view-like operations (i.e. no mutation), then we can trivially
// convert them all to value semantics.
class RewriteViewLikeSubgraph
: public OpRewritePattern<CopyToNonValueTensorOp> {
public:
using OpRewritePattern::OpRewritePattern;
LogicalResult matchAndRewrite(CopyToNonValueTensorOp copy,
PatternRewriter &rewriter) const override {
// Find a subgraph starting with this CopyToNonValueTensorOp, and
// terminating at CopyToValueTensorOp's, possibly with intervening view-like
// ops.
// This also catches the special case of a CopyToNonValueTensorOp that
// trivially feeds into CopyToValueTensorOp's.
SmallVector<Operation *> viewLikeOps;
SmallVector<CopyToValueTensorOp> copyToValueTensorOps;
auto workList = llvm::to_vector<6>(copy.getResult().getUsers());
// We currently only support view-like ops with one tensor input and one
// tensor output, meaning that the tensor use-def chains form a tree.
// This will not be the case for an op like `torch.aten.view_as`, so
// we will need to add a set to prune duplicate visitation.
while (!workList.empty()) {
Operation *op = workList.pop_back_val();
if (auto copyToValueTensor = dyn_cast<CopyToValueTensorOp>(op)) {
copyToValueTensorOps.push_back(copyToValueTensor);
} else if (isa<AtenUnsqueezeOp, AtenFlattenUsingIntsOp,
AtenTransposeIntOp, TensorStaticInfoCastOp,
AtenBroadcastToOp, AtenToDtypeOp, AtenContiguousOp,
AtenPermuteOp, AtenViewOp, AtenExpandOp>(op)) {
// AtenContiguousOp might return a view, so this is conservatively
// correct. We could potentially be more precise and identify the cases
// that it does not return a view and treat those as having value
// semantics.
viewLikeOps.push_back(op);
llvm::append_range(workList, op->getResult(0).getUsers());
} else {
return rewriter.notifyMatchFailure(
copy, "can only handle these transitive user ops");
}
}
copy.replaceAllUsesWith(copy.getOperand());
for (CopyToValueTensorOp op : copyToValueTensorOps)
rewriter.replaceOp(op, op.getOperand());
for (Operation *op : viewLikeOps) {
rewriter.updateRootInPlace(op, [&]() {
if (auto nonValueTensorType =
op->getResult(0).getType().dyn_cast<NonValueTensorType>()) {
op->getResult(0).setType(nonValueTensorType.getWithValueSemantics());
}
});
}
return success();
}
};
} // namespace
namespace {
class MaximizeValueSemanticsPass
: public MaximizeValueSemanticsBase<MaximizeValueSemanticsPass> {
void runOnOperation() override {
MLIRContext *context = &getContext();
auto func = getOperation();
RewritePatternSet patterns(context);
patterns.insert<AbstractlyInterpretCopyToNonValueTensorOpUsersWithinABlock,
RewriteViewLikeSubgraph>(context);
(void)applyPatternsAndFoldGreedily(func, std::move(patterns));
}
};
} // namespace
std::unique_ptr<OperationPass<FuncOp>>
mlir::torch::Torch::createMaximizeValueSemanticsPass() {
return std::make_unique<MaximizeValueSemanticsPass>();
}