Alex Zinenko 2e9abc0c71 [mlir] drop unnecssary transform.with_pdl_patterns from tests, NFC
Many tests wrap the piece of the IR related to the transform dialect
into `transform.with_pdl_patterns` without actually using PDL patterns
inside. Some of these are leftovers from migration to `structured.match`
and some others are cargo cult, both are useless and pollute the tests.

Reviewed By: guraypp

Differential Revision: https://reviews.llvm.org/D135661
2022-10-11 12:26:11 +00:00

99 lines
3.3 KiB
MLIR

// RUN: mlir-opt --test-transform-dialect-interpreter %s -split-input-file -verify-diagnostics | FileCheck %s
// Test One-Shot Bufferize.
transform.sequence failures(propagate) {
^bb0(%arg1: !pdl.operation):
%0 = transform.structured.match ops{["func.func"]} in %arg1
transform.bufferization.one_shot_bufferize %0
{target_is_module = false}
}
// CHECK-LABEL: func @test_function(
// CHECK-SAME: %[[A:.*]]: tensor<?xf32>
func.func @test_function(%A : tensor<?xf32>, %v : vector<4xf32>) -> (tensor<?xf32>) {
%c0 = arith.constant 0 : index
// CHECK: %[[A_memref:.*]] = bufferization.to_memref %[[A]]
// CHECK: %[[dim:.*]] = memref.dim %[[A_memref]]
// CHECK: %[[alloc:.*]] = memref.alloc(%[[dim]])
// CHECK: memref.copy %[[A_memref]], %[[alloc]]
// CHECK: vector.transfer_write %{{.*}}, %[[alloc]]
// CHECK: %[[res_tensor:.*]] = bufferization.to_tensor %[[alloc]]
%0 = vector.transfer_write %v, %A[%c0] : vector<4xf32>, tensor<?xf32>
// CHECK: memref.dealloc %[[alloc]]
// CHECK: return %[[res_tensor]]
return %0 : tensor<?xf32>
}
// -----
// Test analysis of One-Shot Bufferize only.
transform.sequence failures(propagate) {
^bb0(%arg1: !pdl.operation):
%0 = transform.structured.match ops{["func.func"]} in %arg1
transform.bufferization.one_shot_bufferize %0
{target_is_module = false, test_analysis_only = true}
}
// CHECK-LABEL: func @test_function_analysis(
// CHECK-SAME: %[[A:.*]]: tensor<?xf32>
func.func @test_function_analysis(%A : tensor<?xf32>, %v : vector<4xf32>) -> (tensor<?xf32>) {
%c0 = arith.constant 0 : index
// CHECK: vector.transfer_write
// CHECK-SAME: {__inplace_operands_attr__ = ["none", "false", "none"]}
// CHECK-SAME: tensor<?xf32>
%0 = vector.transfer_write %v, %A[%c0] : vector<4xf32>, tensor<?xf32>
return %0 : tensor<?xf32>
}
// -----
// Test One-Shot Bufferize transform failure with an unknown op. This would be
// allowed with `allow_unknown_ops`.
transform.sequence failures(propagate) {
^bb0(%arg1: !pdl.operation):
%0 = transform.structured.match ops{["func.func"]} in %arg1
// expected-error @+1 {{bufferization failed}}
transform.bufferization.one_shot_bufferize %0 {target_is_module = false}
}
func.func @test_unknown_op_failure() -> (tensor<?xf32>) {
// expected-error @+1 {{op was not bufferized}}
%0 = "test.dummy_op"() : () -> (tensor<?xf32>)
return %0 : tensor<?xf32>
}
// -----
// Test One-Shot Bufferize transform failure with a module op.
transform.sequence failures(propagate) {
^bb0(%arg1: !pdl.operation):
// %arg1 is the module
transform.bufferization.one_shot_bufferize %arg1
}
module {
// CHECK-LABEL: func @test_function(
// CHECK-SAME: %[[A:.*]]: tensor<?xf32>
func.func @test_function(%A : tensor<?xf32>, %v : vector<4xf32>) -> (tensor<?xf32>) {
%c0 = arith.constant 0 : index
// CHECK: %[[A_memref:.*]] = bufferization.to_memref %[[A]]
// CHECK: %[[dim:.*]] = memref.dim %[[A_memref]]
// CHECK: %[[alloc:.*]] = memref.alloc(%[[dim]])
// CHECK: memref.copy %[[A_memref]], %[[alloc]]
// CHECK: vector.transfer_write %{{.*}}, %[[alloc]]
// CHECK: %[[res_tensor:.*]] = bufferization.to_tensor %[[alloc]]
%0 = vector.transfer_write %v, %A[%c0] : vector<4xf32>, tensor<?xf32>
// CHECK: memref.dealloc %[[alloc]]
// CHECK: return %[[res_tensor]]
return %0 : tensor<?xf32>
}
}