diff --git a/mlir/test/Integration/Dialect/SparseTensor/CPU/sparse_transpose.mlir b/mlir/test/Integration/Dialect/SparseTensor/CPU/sparse_transpose.mlir new file mode 100644 index 0000000000000..f1a2bb71579dc --- /dev/null +++ b/mlir/test/Integration/Dialect/SparseTensor/CPU/sparse_transpose.mlir @@ -0,0 +1,93 @@ +// RUN: mlir-opt %s --sparse-compiler | \ +// RUN: mlir-cpu-runner -e entry -entry-point-result=void \ +// RUN: -shared-libs=%mlir_integration_test_dir/libmlir_c_runner_utils%shlibext | \ +// RUN: FileCheck %s + +#DCSR = #sparse_tensor.encoding<{ + dimLevelType = [ "compressed", "compressed" ] +}> + +#DCSC = #sparse_tensor.encoding<{ + dimLevelType = [ "compressed", "compressed" ], + dimOrdering = affine_map<(i,j) -> (j,i)> +}> + +#transpose_trait = { + indexing_maps = [ + affine_map<(i,j) -> (j,i)>, // A + affine_map<(i,j) -> (i,j)> // X + ], + iterator_types = ["parallel", "parallel"], + doc = "X(i,j) = A(j,i)" +} + +module { + + // + // Transposing a sparse row-wise matrix into another sparse row-wise + // matrix would fail direct codegen, since it introduces a cycle in + // the iteration graph. This can be avoided by converting the incoming + // matrix into a sparse column-wise matrix first. + // + func @sparse_transpose(%arga: tensor<3x4xf64, #DCSR>) -> tensor<4x3xf64, #DCSR> { + %t = sparse_tensor.convert %arga : tensor<3x4xf64, #DCSR> to tensor<3x4xf64, #DCSC> + + %c3 = arith.constant 3 : index + %c4 = arith.constant 4 : index + %i = sparse_tensor.init [%c4, %c3] : tensor<4x3xf64, #DCSR> + + %0 = linalg.generic #transpose_trait + ins(%t: tensor<3x4xf64, #DCSC>) + outs(%i: tensor<4x3xf64, #DCSR>) { + ^bb(%a: f64, %x: f64): + linalg.yield %a : f64 + } -> tensor<4x3xf64, #DCSR> + + sparse_tensor.release %t : tensor<3x4xf64, #DCSC> + + return %0 : tensor<4x3xf64, #DCSR> + } + + // + // Main driver. + // + func @entry() { + %c0 = arith.constant 0 : index + %c1 = arith.constant 1 : index + %c4 = arith.constant 4 : index + %du = arith.constant 0.0 : f64 + + // Setup input sparse matrix from compressed constant. + %d = arith.constant dense <[ + [ 1.1, 1.2, 0.0, 1.4 ], + [ 0.0, 0.0, 0.0, 0.0 ], + [ 3.1, 0.0, 3.3, 3.4 ] + ]> : tensor<3x4xf64> + %a = sparse_tensor.convert %d : tensor<3x4xf64> to tensor<3x4xf64, #DCSR> + + // Call the kernel. + %0 = call @sparse_transpose(%a) : (tensor<3x4xf64, #DCSR>) -> tensor<4x3xf64, #DCSR> + + // + // Verify result. + // + // CHECK: ( 1.1, 0, 3.1 ) + // CHECK-NEXT: ( 1.2, 0, 0 ) + // CHECK-NEXT: ( 0, 0, 3.3 ) + // CHECK-NEXT: ( 1.4, 0, 3.4 ) + // + %x = sparse_tensor.convert %0 : tensor<4x3xf64, #DCSR> to tensor<4x3xf64> + %m = bufferization.to_memref %x : memref<4x3xf64> + scf.for %i = %c0 to %c4 step %c1 { + %v = vector.transfer_read %m[%i, %c0], %du: memref<4x3xf64>, vector<3xf64> + vector.print %v : vector<3xf64> + } + + // Release resources. + sparse_tensor.release %a : tensor<3x4xf64, #DCSR> + sparse_tensor.release %0 : tensor<4x3xf64, #DCSR> + memref.dealloc %m : memref<4x3xf64> + + return + } +}