| //-------------------------------------------------------------------------------------------------- |
| // WHEN CREATING A NEW TEST, PLEASE JUST COPY & PASTE WITHOUT EDITS. |
| // |
| // Set-up that's shared across all tests in this directory. In principle, this |
| // config could be moved to lit.local.cfg. However, there are downstream users that |
| // do not use these LIT config files. Hence why this is kept inline. |
| // |
| // DEFINE: %{sparsifier_opts} = enable-runtime-library=true |
| // DEFINE: %{sparsifier_opts_sve} = enable-arm-sve=true %{sparsifier_opts} |
| // DEFINE: %{compile} = mlir-opt %s --sparsifier="%{sparsifier_opts}" |
| // DEFINE: %{compile_sve} = mlir-opt %s --sparsifier="%{sparsifier_opts_sve}" |
| // DEFINE: %{run_libs} = -shared-libs=%mlir_c_runner_utils,%mlir_runner_utils |
| // DEFINE: %{run_opts} = -e entry -entry-point-result=void |
| // DEFINE: %{run} = mlir-cpu-runner %{run_opts} %{run_libs} |
| // DEFINE: %{run_sve} = %mcr_aarch64_cmd --march=aarch64 --mattr="+sve" %{run_opts} %{run_libs} |
| // |
| // DEFINE: %{env} = |
| //-------------------------------------------------------------------------------------------------- |
| |
| // RUN: %{compile} | %{run} | FileCheck %s |
| // |
| // Do the same run, but now with direct IR generation. |
| // REDEFINE: %{sparsifier_opts} = enable-runtime-library=false |
| // RUN: %{compile} | %{run} | FileCheck %s |
| // |
| // Do the same run, but now with direct IR generation and vectorization. |
| // REDEFINE: %{sparsifier_opts} = enable-runtime-library=false vl=2 reassociate-fp-reductions=true enable-index-optimizations=true |
| // RUN: %{compile} | %{run} | FileCheck %s |
| // |
| // Do the same run, but now with direct IR generation and VLA vectorization. |
| // RUN: %if mlir_arm_sve_tests %{ %{compile_sve} | %{run_sve} | FileCheck %s %} |
| |
| // Reduction in this file _are_ supported by the AArch64 SVE backend |
| |
| #SV = #sparse_tensor.encoding<{ map = (d0) -> (d0 : compressed) }> |
| |
| #trait_reduction = { |
| indexing_maps = [ |
| affine_map<(i) -> (i)>, // a |
| affine_map<(i) -> ()> // x (scalar out) |
| ], |
| iterator_types = ["reduction"], |
| doc = "x += OPER_i a(i)" |
| } |
| |
| // An example of vector reductions. |
| module { |
| |
| func.func @sum_reduction_i32(%arga: tensor<32xi32, #SV>, |
| %argx: tensor<i32>) -> tensor<i32> { |
| %0 = linalg.generic #trait_reduction |
| ins(%arga: tensor<32xi32, #SV>) |
| outs(%argx: tensor<i32>) { |
| ^bb(%a: i32, %x: i32): |
| %0 = arith.addi %x, %a : i32 |
| linalg.yield %0 : i32 |
| } -> tensor<i32> |
| return %0 : tensor<i32> |
| } |
| |
| func.func @sum_reduction_f32(%arga: tensor<32xf32, #SV>, |
| %argx: tensor<f32>) -> tensor<f32> { |
| %0 = linalg.generic #trait_reduction |
| ins(%arga: tensor<32xf32, #SV>) |
| outs(%argx: tensor<f32>) { |
| ^bb(%a: f32, %x: f32): |
| %0 = arith.addf %x, %a : f32 |
| linalg.yield %0 : f32 |
| } -> tensor<f32> |
| return %0 : tensor<f32> |
| } |
| |
| func.func @or_reduction_i32(%arga: tensor<32xi32, #SV>, |
| %argx: tensor<i32>) -> tensor<i32> { |
| %0 = linalg.generic #trait_reduction |
| ins(%arga: tensor<32xi32, #SV>) |
| outs(%argx: tensor<i32>) { |
| ^bb(%a: i32, %x: i32): |
| %0 = arith.ori %x, %a : i32 |
| linalg.yield %0 : i32 |
| } -> tensor<i32> |
| return %0 : tensor<i32> |
| } |
| |
| func.func @xor_reduction_i32(%arga: tensor<32xi32, #SV>, |
| %argx: tensor<i32>) -> tensor<i32> { |
| %0 = linalg.generic #trait_reduction |
| ins(%arga: tensor<32xi32, #SV>) |
| outs(%argx: tensor<i32>) { |
| ^bb(%a: i32, %x: i32): |
| %0 = arith.xori %x, %a : i32 |
| linalg.yield %0 : i32 |
| } -> tensor<i32> |
| return %0 : tensor<i32> |
| } |
| |
| func.func @dump_i32(%arg0 : tensor<i32>) { |
| %v = tensor.extract %arg0[] : tensor<i32> |
| vector.print %v : i32 |
| return |
| } |
| |
| func.func @dump_f32(%arg0 : tensor<f32>) { |
| %v = tensor.extract %arg0[] : tensor<f32> |
| vector.print %v : f32 |
| return |
| } |
| |
| func.func @entry() { |
| %ri = arith.constant dense< 7 > : tensor<i32> |
| %rf = arith.constant dense< 2.0 > : tensor<f32> |
| |
| %c_0_i32 = arith.constant dense<[ |
| 0, 2, 0, 0, 0, 0, 1, 0, 0, 0, 0, 0, 4, 0, 0, 0, |
| 0, 0, 0, 3, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 9, 0 |
| ]> : tensor<32xi32> |
| |
| %c_0_f32 = arith.constant dense<[ |
| 0.0, 1.0, 0.0, 0.0, 4.0, 0.0, 0.0, 0.0, |
| 0.0, 0.0, 3.0, 0.0, 0.0, 0.0, 0.0, 0.0, |
| 0.0, 0.0, 0.0, 0.0, 2.5, 0.0, 0.0, 0.0, |
| 2.0, 0.0, 0.0, 0.0, 0.0, 4.0, 0.0, 9.0 |
| ]> : tensor<32xf32> |
| |
| // Convert constants to annotated tensors. |
| %sparse_input_i32 = sparse_tensor.convert %c_0_i32 |
| : tensor<32xi32> to tensor<32xi32, #SV> |
| %sparse_input_f32 = sparse_tensor.convert %c_0_f32 |
| : tensor<32xf32> to tensor<32xf32, #SV> |
| |
| // Call the kernels. |
| %0 = call @sum_reduction_i32(%sparse_input_i32, %ri) |
| : (tensor<32xi32, #SV>, tensor<i32>) -> tensor<i32> |
| %1 = call @sum_reduction_f32(%sparse_input_f32, %rf) |
| : (tensor<32xf32, #SV>, tensor<f32>) -> tensor<f32> |
| %2 = call @or_reduction_i32(%sparse_input_i32, %ri) |
| : (tensor<32xi32, #SV>, tensor<i32>) -> tensor<i32> |
| %3 = call @xor_reduction_i32(%sparse_input_i32, %ri) |
| : (tensor<32xi32, #SV>, tensor<i32>) -> tensor<i32> |
| |
| // Verify results. |
| // |
| // CHECK: 26 |
| // CHECK: 27.5 |
| // CHECK: 15 |
| // CHECK: 10 |
| // |
| call @dump_i32(%0) : (tensor<i32>) -> () |
| call @dump_f32(%1) : (tensor<f32>) -> () |
| call @dump_i32(%2) : (tensor<i32>) -> () |
| call @dump_i32(%3) : (tensor<i32>) -> () |
| |
| // Release the resources. |
| bufferization.dealloc_tensor %sparse_input_i32 : tensor<32xi32, #SV> |
| bufferization.dealloc_tensor %sparse_input_f32 : tensor<32xf32, #SV> |
| |
| return |
| } |
| } |