mirror of https://github.com/llvm/torch-mlir
352 lines
14 KiB
C++
352 lines
14 KiB
C++
//===----------------------------------------------------------------------===//
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//
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// This file is licensed 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 "SimplifyAbstractInterpCalculationsUtils.h"
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#include "mlir/IR/IRMapping.h"
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#include "torch-mlir/Dialect/Torch/Utils/Utils.h"
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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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namespace {
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class FoldPrimUncheckedCastOp : public OpRewritePattern<PrimUncheckedCastOp> {
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public:
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using OpRewritePattern::OpRewritePattern;
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LogicalResult matchAndRewrite(PrimUncheckedCastOp op,
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PatternRewriter &rewriter) const override {
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if (!isValidSubtype(op.getX().getType(), op.getResult().getType())) {
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return rewriter.notifyMatchFailure(
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op, "input tensor type is not a valid subtype of result type");
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}
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rewriter.replaceOp(op, op.getX());
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return success();
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}
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};
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} // namespace
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namespace {
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// TODO: Only unroll inside the shape calculation region.
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// Maybe do this by only applying patterns and folding greedily on the ops
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// inside the region + the shape.calculate op itself?
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class FullyUnrollPrimLoopOp : public OpRewritePattern<PrimLoopOp> {
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public:
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using OpRewritePattern::OpRewritePattern;
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LogicalResult matchAndRewrite(PrimLoopOp op,
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PatternRewriter &rewriter) const override {
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Location loc = op->getLoc();
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MLIRContext *context = op->getContext();
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if (!op.isForLike())
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return rewriter.notifyMatchFailure(op, "Loop is not for-like");
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int64_t maxTripCount;
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if (!matchPattern(op.getMaxTripCount(), m_TorchConstantInt(&maxTripCount)))
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return rewriter.notifyMatchFailure(
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op, "Expected `maxTripCount` to be a constant int");
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;
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SmallVector<Value> indices;
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for (int64_t i = 0; i < maxTripCount; i++) {
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// TODO: Add convenience builder.
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indices.push_back(rewriter.create<ConstantIntOp>(
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loc, rewriter.getIntegerAttr(IntegerType::get(context, 64), i)));
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}
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Block *beforeBlock = op->getBlock();
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Block *afterBlock = rewriter.splitBlock(op->getBlock(), op->getIterator());
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SmallVector<Block *> blocksToMerge;
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IRMapping bvm;
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// TODO: Helper for region().front()
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auto condition =
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cast<PrimLoopConditionOp>(op.getRegion().front().getTerminator());
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for (int64_t i = 0; i < maxTripCount; i++) {
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SmallVector<Value> iterArgs;
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if (i == 0) {
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llvm::append_range(iterArgs, op.getIterArgsInit());
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} else {
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llvm::append_range(
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iterArgs, llvm::map_range(condition.getIterArgs(),
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[&](Value v) { return bvm.lookup(v); }));
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}
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bvm.clear();
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bvm.map(op.getRegion().front().getArgument(0), indices[i]);
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bvm.map(op.getRegion().front().getArguments().slice(1), iterArgs);
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op.getRegion().cloneInto(afterBlock->getParent(),
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afterBlock->getIterator(), bvm);
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Block *clonedBlock = bvm.lookup(&op.getRegion().front());
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rewriter.eraseOp(clonedBlock->getTerminator());
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blocksToMerge.push_back(clonedBlock);
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}
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blocksToMerge.push_back(afterBlock);
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for (Block *block : blocksToMerge)
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rewriter.mergeBlocks(block, beforeBlock);
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if (maxTripCount == 0) {
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rewriter.replaceOp(op, op.getIterArgsInit());
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} else {
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rewriter.replaceOp(op, llvm::to_vector<6>(llvm::map_range(
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condition.getIterArgs(),
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[&](Value v) { return bvm.lookup(v); })));
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}
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return success();
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}
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};
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} // namespace
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namespace {
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class AbstractlyInterpretListOpsWithinABlock
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: public OpRewritePattern<PrimListConstructOp> {
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public:
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using OpRewritePattern::OpRewritePattern;
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LogicalResult matchAndRewrite(PrimListConstructOp op,
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PatternRewriter &rewriter) const override {
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Block *block = op->getBlock();
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auto allUsers = llvm::to_vector<6>(op->getUsers());
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// Sort the users into program order.
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auto getParentInBlock = [&](Operation *op) {
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while (op->getBlock() != block)
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op = op->getParentOp();
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return op;
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};
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// Use a stable sort for deterministic results when users are nested in two
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// regions of the same parent op.
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llvm::stable_sort(allUsers, [&](Operation *lhs, Operation *rhs) {
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return getParentInBlock(lhs)->isBeforeInBlock(getParentInBlock(rhs));
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});
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// We cannot interpret all ops. So first do a check to see up until which
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// point we can interpret.
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int numUsersToInterpret = 0;
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for (int i = 0, e = allUsers.size(); i != e; i++, numUsersToInterpret++) {
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Operation *user = allUsers[i];
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// If a user potentially mutates the list, then we require it to be in the
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// same block for our simple abstract interpretation to work (we can't,
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// for example, handle an "append" operation in a loop or other region).
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// However, if the op is read-only, then from the purpose of our abstract
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// interpretation, we can handle it effectively as though it was at the
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// same position as the corresponding parent op in the block under
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// consideration.
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if (potentiallyMutatesListOperands(user)) {
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if (user->getBlock() != block)
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break;
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}
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}
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// Truncate the list of users to the number of users we're going to
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// interpret.
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allUsers.resize(numUsersToInterpret);
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auto usersToInterpret = ArrayRef(allUsers).take_front(numUsersToInterpret);
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// For each mutating op (which must be in the same block), we save the
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// current state of the list as a vector of Value's. These will then
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// be converted to PrimListConstructOp's at the correct program points.
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SmallVector<SmallVector<Value>> listLiterals;
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SmallVector<Value> runningList;
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llvm::append_range(runningList, op->getOperands());
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bool generatedNewLiteral = false;
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for (Operation *user : usersToInterpret) {
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if (auto append = dyn_cast<AtenAppendTOp>(user)) {
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if (!append.use_empty())
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return rewriter.notifyMatchFailure(
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op, "Expected `AtenAppendTOp` to not have users");
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if (append.getSelf() == op) {
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runningList.push_back(append.getEl());
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generatedNewLiteral = true;
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}
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listLiterals.push_back(runningList);
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continue;
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}
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if (auto insert = dyn_cast<AtenInsertTOp>(user)) {
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if (!insert.use_empty())
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return rewriter.notifyMatchFailure(
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op, "Expected `AtenInsertTOp` to not have users");
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int64_t index;
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if (!matchPattern(insert.getIdx(), m_TorchConstantInt(&index)))
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return rewriter.notifyMatchFailure(
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op, "Expected `idx` of `AtenInsertTOp` to be a constant int");
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// The index might be statically out of bounds.
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if (index < 0 || index > static_cast<int64_t>(runningList.size()))
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return rewriter.notifyMatchFailure(
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op, "Index in `AtenInsertTOp` is out of bounds");
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if (insert.getSelf() == op) {
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runningList.insert(runningList.begin() + index, insert.getEl());
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generatedNewLiteral = true;
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}
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listLiterals.push_back(runningList);
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continue;
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}
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if (auto setItem = dyn_cast<Aten_SetItemTOp>(user)) {
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if (!setItem.use_empty())
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return rewriter.notifyMatchFailure(
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op, "Expected `Aten_SetItemTOp` to not have users");
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std::optional<int64_t> indexOpt = matchLegalConstantIndexIntoListOfSize(
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setItem.getIdx(), runningList.size());
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// The index might be statically out of bounds.
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if (!indexOpt)
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return rewriter.notifyMatchFailure(
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op, "Index in `Aten_SetItemTOp` is out of bounds");
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if (setItem.getL() == op) {
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runningList[*indexOpt] = setItem.getEl();
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generatedNewLiteral = true;
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}
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listLiterals.push_back(runningList);
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continue;
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}
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// If this user potentially mutates the list and isn't handled above, then
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// we can't abstractly interpret any further.
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if (potentiallyMutatesListOperands(user))
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break;
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}
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if (!generatedNewLiteral)
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return rewriter.notifyMatchFailure(op, "No new literal created");
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// Rewrite all users to use the appropriate list literals.
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Value latestLiteral = rewriter.create<PrimListConstructOp>(
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op->getLoc(), op.getType(), op->getOperands());
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int nextLiteral = 0;
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for (Operation *user : usersToInterpret) {
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if (auto append = dyn_cast<AtenAppendTOp>(user)) {
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rewriter.setInsertionPoint(append);
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latestLiteral = rewriter.create<PrimListConstructOp>(
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append->getLoc(), op.getType(), listLiterals[nextLiteral++]);
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if (append.getSelf() == op)
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rewriter.eraseOp(append);
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continue;
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}
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if (auto insert = dyn_cast<AtenInsertTOp>(user)) {
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rewriter.setInsertionPoint(insert);
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latestLiteral = rewriter.create<PrimListConstructOp>(
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insert->getLoc(), op.getType(), listLiterals[nextLiteral++]);
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if (insert.getSelf() == op)
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rewriter.eraseOp(insert);
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continue;
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}
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if (auto setItem = dyn_cast<Aten_SetItemTOp>(user)) {
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rewriter.setInsertionPoint(setItem);
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latestLiteral = rewriter.create<PrimListConstructOp>(
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setItem->getLoc(), op.getType(), listLiterals[nextLiteral++]);
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if (setItem.getL() == op)
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rewriter.eraseOp(setItem);
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continue;
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}
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for (OpOperand &opOperand : user->getOpOperands()) {
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if (opOperand.get() == op.getResult()) {
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opOperand.set(latestLiteral);
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}
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}
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}
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// Any remaining uses should use the updated value of the latest literal.
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rewriter.replaceOp(op, latestLiteral);
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return success();
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}
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};
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} // namespace
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LogicalResult Torch::updateCalculateOpResultTypes(Operation *calculateOp,
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int resultNum,
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Type newResultType,
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PatternRewriter &rewriter) {
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Location loc = calculateOp->getLoc();
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auto result = calculateOp->getResult(resultNum);
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Type originalResultType = result.getType();
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Type updatedType;
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if (auto originalBaseTensorType =
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dyn_cast<BaseTensorType>(originalResultType)) {
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// If we didn't get any new information, there is nothing left for us to do.
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updatedType = meetTensorTypes(originalBaseTensorType,
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cast<BaseTensorType>(newResultType));
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if (!updatedType || updatedType == originalBaseTensorType)
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return rewriter.notifyMatchFailure(
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calculateOp, "New type information does not refine old type");
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} else if (auto originalResultType =
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dyn_cast<Torch::NumberType>(result.getType())) {
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if (!isa<Torch::FloatType, Torch::IntType>(newResultType)) {
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return rewriter.notifyMatchFailure(
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calculateOp,
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"Refinement of `NumberType` must be a `FloatType` or `IntType`");
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}
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updatedType = newResultType;
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} else {
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return rewriter.notifyMatchFailure(calculateOp,
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"Unimplemented: Expected result type to "
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"be `BaseTensorType` or `NumberType`");
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}
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// Update all the uses of the result type to the new type, if possible. Insert
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// a TensorStaticInfoCastOp for any users that might require the exact
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// previous type.
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Value originalTypedValue;
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for (OpOperand &use : llvm::make_early_inc_range(result.getUses())) {
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if (use.getOwner()
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->hasTrait<mlir::torch::Torch::OpTrait::AllowsTypeRefinement>()) {
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continue;
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}
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if (!originalTypedValue) {
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rewriter.setInsertionPointAfter(calculateOp);
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if (isa<BaseTensorType>(originalResultType)) {
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originalTypedValue = rewriter.create<TensorStaticInfoCastOp>(
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loc, originalResultType, result);
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} else if (isa<Torch::NumberType>(originalResultType)) {
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originalTypedValue =
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rewriter.create<DerefineOp>(loc, originalResultType, result);
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} else {
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return rewriter.notifyMatchFailure(
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calculateOp, "Unimplemented: Expected result type to "
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"be `BaseTensorType` or `NumberType`");
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}
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}
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use.set(originalTypedValue);
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}
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result.setType(updatedType);
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// Update the value yielded from the body to match the new result type. If we
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// can refine the def in place, do that, otherwise insert a
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// TensorStaticInfoCastOp.
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Operation *yieldValues = calculateOp->getRegion(0).front().getTerminator();
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OpOperand &use = yieldValues->getOpOperand(resultNum);
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Value def = use.get();
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Value newYieldedValue;
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if (isa<OpResult>(def) &&
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cast<OpResult>(def)
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.getDefiningOp()
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->hasTrait<mlir::torch::Torch::OpTrait::AllowsTypeRefinement>()) {
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newYieldedValue = def;
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} else {
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rewriter.setInsertionPoint(yieldValues);
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if (isa<BaseTensorType>(updatedType)) {
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newYieldedValue =
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rewriter.create<TensorStaticInfoCastOp>(loc, updatedType, def);
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} else {
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newYieldedValue =
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rewriter.create<PrimUncheckedCastOp>(loc, updatedType, def);
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}
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}
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use.set(newYieldedValue);
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newYieldedValue.setType(updatedType);
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return success();
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}
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void mlir::torch::Torch::populateFoldPrimUncheckedCastOpPattern(
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RewritePatternSet &patterns, MLIRContext *context) {
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patterns.insert<FoldPrimUncheckedCastOp>(context);
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}
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void mlir::torch::Torch::populateFullyUnrollPrimLoopOpPattern(
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RewritePatternSet &patterns, MLIRContext *context) {
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patterns.insert<FullyUnrollPrimLoopOp>(context);
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}
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void mlir::torch::Torch::populateAbstractlyInterpretListOpsWithinABlockPattern(
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RewritePatternSet &patterns, MLIRContext *context) {
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patterns.insert<AbstractlyInterpretListOpsWithinABlock>(context);
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}
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