// NOTE: Assertions have been autogenerated by utils/generate-test-checks.py // RUN: mlir-opt %s -sparsification | FileCheck %s #SpVec = #sparse_tensor.encoding<{ dimLevelType = [ "compressed" ] }> #CSR = #sparse_tensor.encoding<{ dimLevelType = [ "dense", "compressed" ] }> #trait1 = { indexing_maps = [ affine_map<(i) -> (i)>, // a affine_map<(i) -> (3)>, // b affine_map<(i) -> (i)> // x (out) ], iterator_types = ["parallel"], doc = "x(i) += a(i) * b(3)" } // CHECK-LABEL: func @mul_inv_dense1d( // CHECK-SAME: %[[VAL_0:.*]]: tensor<32xf32, #sparse_tensor.encoding<{{{.*}}}>>, // CHECK-SAME: %[[VAL_1:.*]]: tensor<4xf32>, // CHECK-SAME: %[[VAL_2:.*]]: tensor<32xf32>) -> tensor<32xf32> { // CHECK-DAG: %[[VAL_3:.*]] = arith.constant 0 : index // CHECK-DAG: %[[VAL_4:.*]] = arith.constant 3 : index // CHECK-DAG: %[[VAL_5:.*]] = arith.constant 1 : index // CHECK-DAG: %[[VAL_6:.*]] = sparse_tensor.pointers %[[VAL_0]], %[[VAL_3]] : tensor<32xf32, #sparse_tensor.encoding<{{{.*}}}>> // CHECK-DAG: %[[VAL_7:.*]] = sparse_tensor.indices %[[VAL_0]], %[[VAL_3]] : tensor<32xf32, #sparse_tensor.encoding<{{{.*}}}>> // CHECK-DAG: %[[VAL_8:.*]] = sparse_tensor.values %[[VAL_0]] : tensor<32xf32, #sparse_tensor.encoding<{{{.*}}}>> // CHECK-DAG: %[[VAL_9:.*]] = bufferization.to_memref %[[VAL_1]] : memref<4xf32> // CHECK-DAG: %[[VAL_11:.*]] = bufferization.to_memref %[[VAL_2]] : memref<32xf32> // CHECK: %[[VAL_12:.*]] = memref.load %[[VAL_9]]{{\[}}%[[VAL_4]]] : memref<4xf32> // CHECK: %[[VAL_13:.*]] = memref.load %[[VAL_6]]{{\[}}%[[VAL_3]]] : memref // CHECK: %[[VAL_14:.*]] = memref.load %[[VAL_6]]{{\[}}%[[VAL_5]]] : memref // CHECK: scf.for %[[VAL_15:.*]] = %[[VAL_13]] to %[[VAL_14]] step %[[VAL_5]] { // CHECK: %[[VAL_16:.*]] = memref.load %[[VAL_7]]{{\[}}%[[VAL_15]]] : memref // CHECK: %[[VAL_17:.*]] = memref.load %[[VAL_11]]{{\[}}%[[VAL_16]]] : memref<32xf32> // CHECK: %[[VAL_18:.*]] = memref.load %[[VAL_8]]{{\[}}%[[VAL_15]]] : memref // CHECK: %[[VAL_19:.*]] = arith.mulf %[[VAL_18]], %[[VAL_12]] : f32 // CHECK: %[[VAL_20:.*]] = arith.addf %[[VAL_17]], %[[VAL_19]] : f32 // CHECK: memref.store %[[VAL_20]], %[[VAL_11]]{{\[}}%[[VAL_16]]] : memref<32xf32> // CHECK: } // CHECK: %[[VAL_21:.*]] = bufferization.to_tensor %[[VAL_11]] : memref<32xf32> // CHECK: return %[[VAL_21]] : tensor<32xf32> // CHECK: } func.func @mul_inv_dense1d(%arga: tensor<32xf32, #SpVec>, %argb: tensor<4xf32>, %argx: tensor<32xf32>) -> tensor<32xf32> { %0 = linalg.generic #trait1 ins(%arga, %argb: tensor<32xf32, #SpVec>, tensor<4xf32>) outs(%argx: tensor<32xf32>) { ^bb(%a: f32, %b: f32, %x: f32): %0 = arith.mulf %a, %b : f32 %1 = arith.addf %x, %0 : f32 linalg.yield %1 : f32 } -> tensor<32xf32> return %0 : tensor<32xf32> } #trait2 = { indexing_maps = [ affine_map<(i) -> (i)>, // a affine_map<(i) -> (i+2)>, // b affine_map<(i) -> (i)> // x (out) ], iterator_types = ["parallel"], doc = "x(i) = a(i) & b(i+2)" } // CHECK-LABEL: func @and_affine_dense1d( // CHECK-SAME: %[[VAL_0:.*]]: tensor<32xi32, #sparse_tensor.encoding<{{{.*}}}>>, // CHECK-SAME: %[[VAL_1:.*]]: tensor<34xi32>, // CHECK-SAME: %[[VAL_2:.*]]: tensor<32xi32>) -> tensor<32xi32> { // CHECK-DAG: %[[ZERO:.*]] = arith.constant 0 : i32 // CHECK-DAG: %[[VAL_3:.*]] = arith.constant 0 : index // CHECK-DAG: %[[VAL_4:.*]] = arith.constant 1 : index // CHECK-DAG: %[[VAL_5:.*]] = arith.constant 2 : index // CHECK-DAG: %[[VAL_6:.*]] = sparse_tensor.pointers %[[VAL_0]], %[[VAL_3]] : tensor<32xi32, #sparse_tensor.encoding<{{{.*}}}>> // CHECK-DAG: %[[VAL_7:.*]] = sparse_tensor.indices %[[VAL_0]], %[[VAL_3]] : tensor<32xi32, #sparse_tensor.encoding<{{{.*}}}>> // CHECK-DAG: %[[VAL_8:.*]] = sparse_tensor.values %[[VAL_0]] : tensor<32xi32, #sparse_tensor.encoding<{{{.*}}}>> // CHECK-DAG: %[[VAL_9:.*]] = bufferization.to_memref %[[VAL_1]] : memref<34xi32> // CHECK-DAG: %[[VAL_11:.*]] = bufferization.to_memref %[[VAL_2]] : memref<32xi32> // CHECK: linalg.fill ins(%[[ZERO]] : i32) outs(%[[VAL_11]] : memref<32xi32>) // CHECK: %[[VAL_12:.*]] = memref.load %[[VAL_6]]{{\[}}%[[VAL_3]]] : memref // CHECK: %[[VAL_13:.*]] = memref.load %[[VAL_6]]{{\[}}%[[VAL_4]]] : memref // CHECK: scf.for %[[VAL_14:.*]] = %[[VAL_12]] to %[[VAL_13]] step %[[VAL_4]] { // CHECK: %[[VAL_15:.*]] = memref.load %[[VAL_7]]{{\[}}%[[VAL_14]]] : memref // CHECK: %[[VAL_16:.*]] = memref.load %[[VAL_8]]{{\[}}%[[VAL_14]]] : memref // CHECK: %[[VAL_17:.*]] = arith.addi %[[VAL_15]], %[[VAL_5]] : index // CHECK: %[[VAL_18:.*]] = memref.load %[[VAL_9]]{{\[}}%[[VAL_17]]] : memref<34xi32> // CHECK: %[[VAL_19:.*]] = arith.andi %[[VAL_16]], %[[VAL_18]] : i32 // CHECK: memref.store %[[VAL_19]], %[[VAL_11]]{{\[}}%[[VAL_15]]] : memref<32xi32> // CHECK: } // CHECK: %[[VAL_20:.*]] = bufferization.to_tensor %[[VAL_11]] : memref<32xi32> // CHECK: return %[[VAL_20]] : tensor<32xi32> // CHECK: } func.func @and_affine_dense1d(%arga: tensor<32xi32, #SpVec>, %argb: tensor<34xi32>, %argx: tensor<32xi32>) -> tensor<32xi32> { %0 = linalg.generic #trait2 ins(%arga, %argb: tensor<32xi32, #SpVec>, tensor<34xi32>) outs(%argx: tensor<32xi32>) { ^bb(%a: i32, %b: i32, %x: i32): %0 = arith.andi %a, %b : i32 linalg.yield %0 : i32 } -> tensor<32xi32> return %0 : tensor<32xi32> } #trait3 = { indexing_maps = [ affine_map<(i,j) -> (i,j)>, // a affine_map<(i,j) -> (i+2,j+3)>, // b affine_map<(i,j) -> (i,j)> // x (out) ], iterator_types = ["parallel","parallel"], doc = "x(i,j) += a(i,j) * b(i+2,j+3)" } // CHECK-LABEL: func @mul_affine_dense2d( // CHECK-SAME: %[[VAL_0:.*]]: tensor<32x16xf64, #sparse_tensor.encoding<{{{.*}}}>>, // CHECK-SAME: %[[VAL_1:.*]]: tensor<34x19xf64>, // CHECK-SAME: %[[VAL_2:.*]]: tensor<32x16xf64>) -> tensor<32x16xf64> { // CHECK-DAG: %[[VAL_3:.*]] = arith.constant 1 : index // CHECK-DAG: %[[VAL_4:.*]] = arith.constant 32 : index // CHECK-DAG: %[[VAL_5:.*]] = arith.constant 0 : index // CHECK-DAG: %[[VAL_6:.*]] = arith.constant 2 : index // CHECK-DAG: %[[VAL_7:.*]] = arith.constant 3 : index // CHECK-DAG: %[[VAL_8:.*]] = sparse_tensor.pointers %[[VAL_0]], %[[VAL_3]] : tensor<32x16xf64, #sparse_tensor.encoding<{{{.*}}}>> // CHECK-DAG: %[[VAL_9:.*]] = sparse_tensor.indices %[[VAL_0]], %[[VAL_3]] : tensor<32x16xf64, #sparse_tensor.encoding<{{{.*}}}>> // CHECK-DAG: %[[VAL_10:.*]] = sparse_tensor.values %[[VAL_0]] : tensor<32x16xf64, #sparse_tensor.encoding<{{{.*}}}>> // CHECK-DAG: %[[VAL_11:.*]] = bufferization.to_memref %[[VAL_1]] : memref<34x19xf64> // CHECK-DAG: %[[VAL_13:.*]] = bufferization.to_memref %[[VAL_2]] : memref<32x16xf64> // CHECK: scf.for %[[VAL_14:.*]] = %[[VAL_5]] to %[[VAL_4]] step %[[VAL_3]] { // CHECK: %[[VAL_15:.*]] = memref.load %[[VAL_8]]{{\[}}%[[VAL_14]]] : memref // CHECK: %[[VAL_16:.*]] = arith.addi %[[VAL_14]], %[[VAL_3]] : index // CHECK: %[[VAL_17:.*]] = memref.load %[[VAL_8]]{{\[}}%[[VAL_16]]] : memref // CHECK: scf.for %[[VAL_18:.*]] = %[[VAL_15]] to %[[VAL_17]] step %[[VAL_3]] { // CHECK: %[[VAL_19:.*]] = memref.load %[[VAL_9]]{{\[}}%[[VAL_18]]] : memref // CHECK: %[[VAL_20:.*]] = memref.load %[[VAL_13]]{{\[}}%[[VAL_14]], %[[VAL_19]]] : memref<32x16xf64> // CHECK: %[[VAL_21:.*]] = memref.load %[[VAL_10]]{{\[}}%[[VAL_18]]] : memref // CHECK: %[[VAL_22:.*]] = arith.addi %[[VAL_14]], %[[VAL_6]] : index // CHECK: %[[VAL_23:.*]] = arith.addi %[[VAL_19]], %[[VAL_7]] : index // CHECK: %[[VAL_24:.*]] = memref.load %[[VAL_11]]{{\[}}%[[VAL_22]], %[[VAL_23]]] : memref<34x19xf64> // CHECK: %[[VAL_25:.*]] = arith.mulf %[[VAL_21]], %[[VAL_24]] : f64 // CHECK: %[[VAL_26:.*]] = arith.addf %[[VAL_20]], %[[VAL_25]] : f64 // CHECK: memref.store %[[VAL_26]], %[[VAL_13]]{{\[}}%[[VAL_14]], %[[VAL_19]]] : memref<32x16xf64> // CHECK: } // CHECK: } // CHECK: %[[VAL_27:.*]] = bufferization.to_tensor %[[VAL_13]] : memref<32x16xf64> // CHECK: return %[[VAL_27]] : tensor<32x16xf64> // CHECK: } func.func @mul_affine_dense2d(%arga: tensor<32x16xf64, #CSR>, %argb: tensor<34x19xf64>, %argx: tensor<32x16xf64>) -> tensor<32x16xf64> { %0 = linalg.generic #trait3 ins(%arga, %argb: tensor<32x16xf64, #CSR>, tensor<34x19xf64>) outs(%argx: tensor<32x16xf64>) { ^bb(%a: f64, %b: f64, %x: f64): %0 = arith.mulf %a, %b : f64 %1 = arith.addf %x, %0 : f64 linalg.yield %1 : f64 } -> tensor<32x16xf64> return %0 : tensor<32x16xf64> }