[Mlir-commits] [mlir] [mlir][linalg] Add pattern to clean unused results after fusion (PR #158627)
    Pavel Lipskiy 
    llvmlistbot at llvm.org
       
    Fri Sep 19 02:27:19 PDT 2025
    
    
  
https://github.com/pavlips updated https://github.com/llvm/llvm-project/pull/158627
>From 782fdfa63c5c4441e28964fa239c6c6cac78e0e8 Mon Sep 17 00:00:00 2001
From: Pavel Lipskiy <pavel.lipskiy at arm.com>
Date: Thu, 28 Aug 2025 08:52:57 +0100
Subject: [PATCH] [mlir][linalg] Add pattern to clean unused results after
 fusion
In some cases, elementwise fusion can produce ops with multiple
results, but only one of them is used in the IR. This makes the
IR less readable and prevents additional fusions from being triggered.
This patch adds the `DropRedundantResultsFromGenericOps` pattern
to find these outputs and convert them into inputs.
Signed-off-by: Pavel Lipskiy <pavel.lipskiy at arm.com>
---
 .../Linalg/Transforms/ElementwiseOpFusion.cpp | 58 +++++++++++++++++++
 .../Linalg/fusion-elementwise-ops.mlir        | 47 ++++++++++++++-
 2 files changed, 104 insertions(+), 1 deletion(-)
diff --git a/mlir/lib/Dialect/Linalg/Transforms/ElementwiseOpFusion.cpp b/mlir/lib/Dialect/Linalg/Transforms/ElementwiseOpFusion.cpp
index 3bd763ea00cd7..f27175a1f91e3 100644
--- a/mlir/lib/Dialect/Linalg/Transforms/ElementwiseOpFusion.cpp
+++ b/mlir/lib/Dialect/Linalg/Transforms/ElementwiseOpFusion.cpp
@@ -2200,6 +2200,63 @@ struct RemoveOutsDependency : public OpRewritePattern<GenericOp> {
   }
 };
 
+/// Drops an unused result from an elementwise `linalg.generic` by
+/// reclassifying its tied `outs` operand as an extra input operand.
+struct DropRedundantResultsFromGenericOps
+    : public OpRewritePattern<linalg::GenericOp> {
+  using OpRewritePattern<linalg::GenericOp>::OpRewritePattern;
+  LogicalResult matchAndRewrite(linalg::GenericOp op,
+                                PatternRewriter &rewriter) const override {
+    if (!linalg::isElementwise(op) || op.getNumResults() < 2U)
+      return failure();
+
+    // Given that the op has no reductions, there is no need to preserve an
+    // unused result: transform it into an input instead.
+    auto maybeUnusedRes = llvm::find_if(
+        op.getResults(), [](OpResult res) { return res.use_empty(); });
+    if (maybeUnusedRes == op.getResults().end())
+      return failure();
+
+    OpResult unusedRes = *maybeUnusedRes;
+    const unsigned resIdx = unusedRes.getResultNumber();
+    auto resTypes = llvm::to_vector(op.getResultTypes());
+    resTypes.erase(resTypes.begin() + resIdx);
+    SmallVector<Value> resValues = llvm::to_vector_of<Value>(op.getResults());
+    resValues.erase(resValues.begin() + resIdx);
+    const int64_t numInputs = op.getNumDpsInputs();
+    OpOperand *resOperand = op.getTiedOpOperand(unusedRes);
+    AffineMap map = op.getIndexingMapMatchingResult(unusedRes);
+    const unsigned operandIdx = resOperand->getOperandNumber();
+    
+    // Remove the output operand and add it as an input operand with the same
+    // map.
+    SmallVector<Value> outs(op.getOutputs());
+    outs.erase(outs.begin() + resIdx);
+    SmallVector<Value> ins(op.getInputs());
+    ins.insert(ins.begin() + numInputs, resOperand->get());
+    SmallVector<AffineMap> maps = op.getIndexingMapsArray();
+    maps.erase(maps.begin() + operandIdx);
+    maps.insert(maps.begin() + numInputs, map);
+    rewriter.setInsertionPoint(op);
+
+    auto newGenericOp = rewriter.create<linalg::GenericOp>(
+        op.getLoc(), TypeRange(resTypes), ins, outs, maps,
+        op.getIteratorTypesArray());
+
+    op->setDiscardableAttrs(op->getDiscardableAttrDictionary());
+    op.getBody()->getTerminator()->eraseOperands(resIdx);
+    newGenericOp.getRegion().takeBody(op.getBodyRegion());
+
+    // Replace the remaining results of the old op with the results of the new
+    // op.
+    rewriter.replaceAllUsesWith(resValues, newGenericOp.getResults());
+    
+    // Remove the old op.
+    rewriter.eraseOp(op);
+    return success();
+  }
+};
+
 /// Fold linalg.fill into linalg.generic
 struct FoldFillWithGenericOp : public OpRewritePattern<GenericOp> {
   using OpRewritePattern<GenericOp>::OpRewritePattern;
@@ -2262,6 +2319,7 @@ void mlir::linalg::populateElementwiseOpsFusionPatterns(
                RemoveOutsDependency>(context);
   // Add the patterns that clean up dead operands and results.
   populateEraseUnusedOperandsAndResultsPatterns(patterns);
+  patterns.add<DropRedundantResultsFromGenericOps>(context);
 }
 
 void mlir::linalg::populateCollapseDimensions(
diff --git a/mlir/test/Dialect/Linalg/fusion-elementwise-ops.mlir b/mlir/test/Dialect/Linalg/fusion-elementwise-ops.mlir
index bc55c12c02f29..9f1fd4609b00e 100644
--- a/mlir/test/Dialect/Linalg/fusion-elementwise-ops.mlir
+++ b/mlir/test/Dialect/Linalg/fusion-elementwise-ops.mlir
@@ -1079,4 +1079,49 @@ module {
 // CHECK-NOT:     linalg.generic
 // CHECK:         tensor.expand_shape
 // CHECK:         linalg.generic {{.*}}, iterator_types = ["parallel", "parallel", "parallel", "parallel", "parallel", "parallel", "reduction"]}
-// CHECK-SAME:     ins(%[[ARG0]], %[[FUSED]]#1 : tensor<1x1x2x1xf32>, tensor<4x1x1x1xf32>)
\ No newline at end of file
+// CHECK-SAME:     ins(%[[ARG0]], %[[FUSED]]#1 : tensor<1x1x2x1xf32>, tensor<4x1x1x1xf32>)
+
+// -----
+
+// CHECK-LABEL: @drop_unused_results
+// CHECK-SAME:   [[ARG0:%[a-zA-Z0-9]+]]: tensor<64xf32>, [[ARG1:%[a-zA-Z0-9]+]]: tensor<1x56x56x64xf32>
+func.func @drop_unused_results(%arg0: tensor<64xf32>, %arg1: tensor<1x56x56x64xf32>) -> tensor<1x56x56x64xf32> {
+  %cst = arith.constant 3.40282347E+38 : f32
+  %cst_0 = arith.constant 0.000000e+00 : f32
+  // CHECK: [[OUT:%[a-zA-Z0-9]+]] = tensor.empty() : tensor<1x56x56x64xf32>
+  %0 = tensor.empty() : tensor<1x56x56x64xf32>
+  // CHECK: [[RES:%[0-9]+]] = linalg.generic {{.*}} ins([[ARG0]], [[ARG1]] : tensor<64xf32>, tensor<1x56x56x64xf32>) outs([[OUT]] : tensor<1x56x56x64xf32>)
+  %1:2 = linalg.generic {indexing_maps = [affine_map<(d0, d1, d2, d3) -> (d3)>, affine_map<(d0, d1, d2, d3) -> (d0, d1, d2, d3)>, affine_map<(d0, d1, d2, d3) -> (d0, d1, d2, d3)>], iterator_types = ["parallel", "parallel", "parallel", "parallel"]} ins(%arg0 : tensor<64xf32>) outs(%arg1, %0 : tensor<1x56x56x64xf32>, tensor<1x56x56x64xf32>) {
+  ^bb0(%in: f32, %out: f32, %out_1: f32):
+    %2 = arith.addf %in, %out : f32
+    %3 = arith.minimumf %2, %cst : f32
+    %4 = arith.maximumf %3, %cst_0 : f32
+    linalg.yield %2, %4 : f32, f32
+  } -> (tensor<1x56x56x64xf32>, tensor<1x56x56x64xf32>)
+  // CHECK: -> tensor<1x56x56x64xf32>
+  // CHECK: return [[RES]] : tensor<1x56x56x64xf32>
+  return %1#1 : tensor<1x56x56x64xf32>
+}
+
+// -----
+
+// CHECK-LABEL: @swap_drop_unused_results
+// CHECK-SAME:   [[ARG0:%[a-zA-Z0-9]+]]: tensor<64xf32>, [[ARG1:%[a-zA-Z0-9]+]]: tensor<1x56x56x64xf32>
+func.func @swap_drop_unused_results(%arg0: tensor<64xf32>, %arg1: tensor<1x56x56x64xf32>) -> tensor<1x56x56x64xf32> {
+  %cst = arith.constant 3.40282347E+38 : f32
+  %cst_0 = arith.constant 0.000000e+00 : f32
+  // CHECK: [[OUT:%[a-zA-Z0-9]+]] = tensor.empty() : tensor<1x56x56x64xf32>
+  %0 = tensor.empty() : tensor<1x56x56x64xf32>
+  // CHECK: [[RES:%[0-9]+]] = linalg.generic {{.*}} ins([[ARG0]] : tensor<64xf32>) outs([[OUT]] : tensor<1x56x56x64xf32>)
+  %1:2 = linalg.generic {indexing_maps = [affine_map<(d0, d1, d2, d3) -> (d3)>, affine_map<(d0, d1, d2, d3) -> (d0, d1, d2, d3)>, affine_map<(d0, d1, d2, d3) -> (d0, d1, d2, d3)>], iterator_types = ["parallel", "parallel", "parallel", "parallel"]} ins(%arg0 : tensor<64xf32>) outs(%arg1, %0 : tensor<1x56x56x64xf32>, tensor<1x56x56x64xf32>) {
+  ^bb0(%in: f32, %out_1: f32, %out: f32):
+    %2 = arith.addf %in, %out : f32
+    %3 = arith.minimumf %2, %cst : f32
+    %4 = arith.maximumf %3, %cst_0 : f32
+    linalg.yield %2, %4 : f32, f32
+  } -> (tensor<1x56x56x64xf32>, tensor<1x56x56x64xf32>)
+  // CHECK: -> tensor<1x56x56x64xf32>
+  // CHECK: return [[RES]] : tensor<1x56x56x64xf32>
+  return %1#0 : tensor<1x56x56x64xf32>
+}
+
    
    
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