blob: 5a27fe76b134113add71f942524316eaa97d6160 [file] [log] [blame]
// RUN: mlir-opt %s -transform-interpreter -split-input-file | FileCheck %s
// CHECK-LABEL: func.func @fill(
// CHECK-SAME: %[[ARG0:.*]]: f32,
// CHECK-SAME: %[[ARG1:.*]]: memref<32x7xf32>
// CHECK-NEXT: %[[FLATTENED:.*]] = memref.collapse_shape %[[ARG1]] {{\[}}[0, 1]]
// CHECK-NEXT: linalg.fill ins(%[[ARG0]] : f32) outs(%[[FLATTENED]] : memref<224xf32>)
func.func @fill(%cst: f32, %arg: memref<32x7xf32>) {
linalg.fill ins(%cst: f32) outs(%arg: memref<32x7xf32>)
return
}
module attributes {transform.with_named_sequence} {
transform.named_sequence @__transform_main(%arg1: !transform.any_op {transform.readonly}) {
%0 = transform.structured.match interface{LinalgOp} in %arg1 : (!transform.any_op) -> !transform.any_op
%flattened = transform.structured.flatten_elementwise %0
: (!transform.any_op) -> !transform.any_op
transform.yield
}
}
// -----
// CHECK-LABEL: func.func @fill_tensor(
// CHECK-SAME: %[[ARG0:.*]]: f32,
// CHECK-SAME: %[[ARG1:.*]]: tensor<32x7xf32>
// CHECK-NEXT: %[[FLATTENED:.*]] = tensor.collapse_shape %[[ARG1]] {{\[}}[0, 1]]
// CHECK-NEXT: %[[FLATTENED_RESULT:.*]] = linalg.fill ins(%[[ARG0]] : f32) outs(%[[FLATTENED]] : tensor<224xf32>)
// CHECK-NEXT: %[[RESULT:.*]] = tensor.expand_shape %[[FLATTENED_RESULT]] {{\[}}[0, 1]]
func.func @fill_tensor(%cst: f32, %arg: tensor<32x7xf32>) -> tensor<32x7xf32> {
%0 = linalg.fill ins(%cst: f32) outs(%arg: tensor<32x7xf32>) -> tensor<32x7xf32>
return %0 : tensor<32x7xf32>
}
module attributes {transform.with_named_sequence} {
transform.named_sequence @__transform_main(%arg1: !transform.any_op {transform.readonly}) {
%0 = transform.structured.match interface{LinalgOp} in %arg1 : (!transform.any_op) -> !transform.any_op
%flattened = transform.structured.flatten_elementwise %0
: (!transform.any_op) -> !transform.any_op
transform.yield
}
}
// -----
// CHECK-LABEL: func.func @map(
// CHECK-SAME: %[[ARG0:[a-zA-Z0-9_]*]]: memref<32x7xf32>
// CHECK-SAME: %[[ARG1:[a-zA-Z0-9_]*]]: memref<32x7xf32>
// CHECK-SAME: %[[ARG2:[a-zA-Z0-9_]*]]: memref<32x7xf32>
// CHECK-NEXT: %[[FLATTENED_0:.*]] = memref.collapse_shape %[[ARG0]] {{\[}}[0, 1]]
// CHECK-NEXT: %[[FLATTENED_1:.*]] = memref.collapse_shape %[[ARG1]] {{\[}}[0, 1]]
// CHECK-NEXT: %[[FLATTENED_2:.*]] = memref.collapse_shape %[[ARG2]] {{\[}}[0, 1]]
// CHECK-NEXT: linalg.map { arith.addf } ins(%[[FLATTENED_0]], %[[FLATTENED_1]] : memref<224xf32>, memref<224xf32>) outs(%[[FLATTENED_2]] : memref<224xf32>)
func.func @map(%arg0: memref<32x7xf32>, %arg1: memref<32x7xf32>, %arg2: memref<32x7xf32>) {
linalg.map {arith.addf} ins(%arg0, %arg1: memref<32x7xf32>, memref<32x7xf32>) outs(%arg2: memref<32x7xf32>)
return
}
module attributes {transform.with_named_sequence} {
transform.named_sequence @__transform_main(%arg1: !transform.any_op {transform.readonly}) {
%0 = transform.structured.match interface{LinalgOp} in %arg1 : (!transform.any_op) -> !transform.any_op
%flattened = transform.structured.flatten_elementwise %0
: (!transform.any_op) -> !transform.any_op
transform.yield
}
}
// -----
// CHECK-LABEL: func.func @map_already_flat(
// CHECK-SAME: %[[ARG0:[a-zA-Z0-9_]*]]: memref<32xf32>
// CHECK-SAME: %[[ARG1:[a-zA-Z0-9_]*]]: memref<32xf32>
// CHECK-SAME: %[[ARG2:[a-zA-Z0-9_]*]]: memref<32xf32>
// CHECK-NEXT: linalg.map { arith.addf } ins(%[[ARG0]], %[[ARG1]] : memref<32xf32>, memref<32xf32>) outs(%[[ARG2]] : memref<32xf32>)
func.func @map_already_flat(%arg0: memref<32xf32>, %arg1: memref<32xf32>, %arg2: memref<32xf32>) {
linalg.map {arith.addf} ins(%arg0, %arg1: memref<32xf32>, memref<32xf32>) outs(%arg2: memref<32xf32>)
return
}
module attributes {transform.with_named_sequence} {
transform.named_sequence @__transform_main(%arg1: !transform.any_op {transform.readonly}) {
%0 = transform.structured.match interface{LinalgOp} in %arg1 : (!transform.any_op) -> !transform.any_op
%flattened = transform.structured.flatten_elementwise %0
: (!transform.any_op) -> !transform.any_op
transform.yield
}
}
// -----
// CHECK: #[[$MAP0:.*]] = affine_map<(d0) -> (d0)>
// CHECK-LABEL: func.func @generic
// CHECK-SAME: %[[ARG0:[a-zA-Z0-9_]*]]: memref<32x7xf32>
// CHECK-SAME: %[[ARG1:[a-zA-Z0-9_]*]]: memref<32x7xf32>
// CHECK-SAME: %[[ARG2:[a-zA-Z0-9_]*]]: memref<32x7xf32>
// CHECK-NEXT: %[[FLATTENED_0:.*]] = memref.collapse_shape %[[ARG0]] {{\[}}[0, 1]]
// CHECK-NEXT: %[[FLATTENED_1:.*]] = memref.collapse_shape %[[ARG1]] {{\[}}[0, 1]]
// CHECK-NEXT: %[[FLATTENED_2:.*]] = memref.collapse_shape %[[ARG2]] {{\[}}[0, 1]]
// CHECK-NEXT: linalg.generic {indexing_maps = [#[[$MAP0]], #[[$MAP0]], #[[$MAP0]]], iterator_types = ["parallel"]} ins(%[[FLATTENED_0]], %[[FLATTENED_1]] : memref<224xf32>, memref<224xf32>) outs(%[[FLATTENED_2]] : memref<224xf32>)
// CHECK-NEXT: ^bb0(%[[A:.*]]: f32, %[[B:.*]]: f32, %[[C:.*]]: f32)
// CHECK-NEXT: %[[SUM:.*]] = arith.addf %[[A]], %[[B]]
// CHECK-NEXT: linalg.yield %[[SUM]]
#map = affine_map<(d0, d1) -> (d0, d1)>
func.func @generic( %arg0: memref<32x7xf32>, %arg1: memref<32x7xf32>, %arg2: memref<32x7xf32>) {
linalg.generic {indexing_maps = [#map, #map, #map], iterator_types = ["parallel", "parallel"]} ins(%arg0, %arg1: memref<32x7xf32>, memref<32x7xf32>) outs(%arg2: memref<32x7xf32>) {
^bb0(%a: f32, %b: f32, %c: f32):
%0 = arith.addf %a, %b : f32
linalg.yield %0 : f32
}
return
}
module attributes {transform.with_named_sequence} {
transform.named_sequence @__transform_main(%arg1: !transform.any_op {transform.readonly}) {
%0 = transform.structured.match interface{LinalgOp} in %arg1 : (!transform.any_op) -> !transform.any_op
%flattened = transform.structured.flatten_elementwise %0
: (!transform.any_op) -> !transform.any_op
transform.yield
}
}