//-------------------------------------------------------------------------------------------------- // 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_libs_sve} = -shared-libs=%native_mlir_runner_utils,%native_mlir_c_runner_utils // DEFINE: %{run_opts} = -e main -entry-point-result=void // DEFINE: %{run} = mlir-runner %{run_opts} %{run_libs} // DEFINE: %{run_sve} = %mcr_aarch64_cmd --march=aarch64 --mattr="+sve" %{run_opts} %{run_libs_sve} // // DEFINE: %{env} = //-------------------------------------------------------------------------------------------------- // REDEFINE: %{sparsifier_opts} = enable-runtime-library=false // RUN: %{compile} | %{run} | FileCheck %s // // Do the same run, but now with 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 VLA vectorization. // RUN: %if mlir_arm_sve_tests %{ %{compile_sve} | %{run_sve} | FileCheck %s %} #TensorCSR = #sparse_tensor.encoding<{ map = (d0, d1, d2) -> (d0 : compressed, d1 : dense, d2 : compressed) }> #TensorRow = #sparse_tensor.encoding<{ map = (d0, d1, d2) -> (d0 : compressed, d1 : compressed, d2 : dense) }> #CCoo = #sparse_tensor.encoding<{ map = (d0, d1, d2) -> (d0 : compressed, d1 : compressed(nonunique), d2 : singleton) }> #DCoo = #sparse_tensor.encoding<{ map = (d0, d1, d2) -> (d0 : dense, d1 : compressed(nonunique), d2 : singleton) }> module { // // Main driver. // func.func @main() { %c0 = arith.constant 0 : index %c1 = arith.constant 1 : index %c2 = arith.constant 2 : index %c3 = arith.constant 3 : index %c4 = arith.constant 4 : index %f1 = arith.constant 1.1 : f64 %f2 = arith.constant 2.2 : f64 %f3 = arith.constant 3.3 : f64 %f4 = arith.constant 4.4 : f64 %f5 = arith.constant 5.5 : f64 // CHECK: ---- Sparse Tensor ---- // CHECK-NEXT: nse = 5 // CHECK-NEXT: dim = ( 5, 4, 3 ) // CHECK-NEXT: lvl = ( 5, 4, 3 ) // CHECK-NEXT: pos[0] : ( 0, 2 ) // CHECK-NEXT: crd[0] : ( 3, 4 ) // CHECK-NEXT: pos[2] : ( 0, 2, 2, 2, 3, 3, 3, 4, 5 ) // CHECK-NEXT: crd[2] : ( 1, 2, 1, 2, 2 ) // CHECK-NEXT: values : ( 1.1, 2.2, 3.3, 4.4, 5.5 ) // CHECK-NEXT: ---- %tensora = tensor.empty() : tensor<5x4x3xf64, #TensorCSR> %tensor1 = tensor.insert %f1 into %tensora[%c3, %c0, %c1] : tensor<5x4x3xf64, #TensorCSR> %tensor2 = tensor.insert %f2 into %tensor1[%c3, %c0, %c2] : tensor<5x4x3xf64, #TensorCSR> %tensor3 = tensor.insert %f3 into %tensor2[%c3, %c3, %c1] : tensor<5x4x3xf64, #TensorCSR> %tensor4 = tensor.insert %f4 into %tensor3[%c4, %c2, %c2] : tensor<5x4x3xf64, #TensorCSR> %tensor5 = tensor.insert %f5 into %tensor4[%c4, %c3, %c2] : tensor<5x4x3xf64, #TensorCSR> %tensorm = sparse_tensor.load %tensor5 hasInserts : tensor<5x4x3xf64, #TensorCSR> sparse_tensor.print %tensorm : tensor<5x4x3xf64, #TensorCSR> // CHECK-NEXT: ---- Sparse Tensor ---- // CHECK-NEXT: nse = 12 // CHECK-NEXT: dim = ( 5, 4, 3 ) // CHECK-NEXT: lvl = ( 5, 4, 3 ) // CHECK-NEXT: pos[0] : ( 0, 2 ) // CHECK-NEXT: crd[0] : ( 3, 4 ) // CHECK-NEXT: pos[1] : ( 0, 2, 4 ) // CHECK-NEXT: crd[1] : ( 0, 3, 2, 3 ) // CHECK-NEXT: values : ( 0, 1.1, 2.2, 0, 3.3, 0, 0, 0, 4.4, 0, 0, 5.5 ) // CHECK-NEXT: ---- %rowa = tensor.empty() : tensor<5x4x3xf64, #TensorRow> %row1 = tensor.insert %f1 into %rowa[%c3, %c0, %c1] : tensor<5x4x3xf64, #TensorRow> %row2 = tensor.insert %f2 into %row1[%c3, %c0, %c2] : tensor<5x4x3xf64, #TensorRow> %row3 = tensor.insert %f3 into %row2[%c3, %c3, %c1] : tensor<5x4x3xf64, #TensorRow> %row4 = tensor.insert %f4 into %row3[%c4, %c2, %c2] : tensor<5x4x3xf64, #TensorRow> %row5 = tensor.insert %f5 into %row4[%c4, %c3, %c2] : tensor<5x4x3xf64, #TensorRow> %rowm = sparse_tensor.load %row5 hasInserts : tensor<5x4x3xf64, #TensorRow> sparse_tensor.print %rowm : tensor<5x4x3xf64, #TensorRow> // CHECK-NEXT: ---- Sparse Tensor ---- // CHECK-NEXT: nse = 5 // CHECK-NEXT: dim = ( 5, 4, 3 ) // CHECK-NEXT: lvl = ( 5, 4, 3 ) // CHECK-NEXT: pos[0] : ( 0, 2 ) // CHECK-NEXT: crd[0] : ( 3, 4 ) // CHECK-NEXT: pos[1] : ( 0, 3, 5 ) // CHECK-NEXT: crd[1] : ( 0, 1, 0, 2, 3, 1, 2, 2, 3, 2 ) // CHECK-NEXT: values : ( 1.1, 2.2, 3.3, 4.4, 5.5 ) // CHECK-NEXT: ---- %ccoo = tensor.empty() : tensor<5x4x3xf64, #CCoo> %ccoo1 = tensor.insert %f1 into %ccoo[%c3, %c0, %c1] : tensor<5x4x3xf64, #CCoo> %ccoo2 = tensor.insert %f2 into %ccoo1[%c3, %c0, %c2] : tensor<5x4x3xf64, #CCoo> %ccoo3 = tensor.insert %f3 into %ccoo2[%c3, %c3, %c1] : tensor<5x4x3xf64, #CCoo> %ccoo4 = tensor.insert %f4 into %ccoo3[%c4, %c2, %c2] : tensor<5x4x3xf64, #CCoo> %ccoo5 = tensor.insert %f5 into %ccoo4[%c4, %c3, %c2] : tensor<5x4x3xf64, #CCoo> %ccoom = sparse_tensor.load %ccoo5 hasInserts : tensor<5x4x3xf64, #CCoo> sparse_tensor.print %ccoom : tensor<5x4x3xf64, #CCoo> // CHECK-NEXT: ---- Sparse Tensor ---- // CHECK-NEXT: nse = 5 // CHECK-NEXT: dim = ( 5, 4, 3 ) // CHECK-NEXT: lvl = ( 5, 4, 3 ) // CHECK-NEXT: pos[1] : ( 0, 0, 0, 0, 3, 5 ) // CHECK-NEXT: crd[1] : ( 0, 1, 0, 2, 3, 1, 2, 2, 3, 2 ) // CHECK-NEXT: values : ( 1.1, 2.2, 3.3, 4.4, 5.5 ) // CHECK-NEXT: ---- %dcoo = tensor.empty() : tensor<5x4x3xf64, #DCoo> %dcoo1 = tensor.insert %f1 into %dcoo[%c3, %c0, %c1] : tensor<5x4x3xf64, #DCoo> %dcoo2 = tensor.insert %f2 into %dcoo1[%c3, %c0, %c2] : tensor<5x4x3xf64, #DCoo> %dcoo3 = tensor.insert %f3 into %dcoo2[%c3, %c3, %c1] : tensor<5x4x3xf64, #DCoo> %dcoo4 = tensor.insert %f4 into %dcoo3[%c4, %c2, %c2] : tensor<5x4x3xf64, #DCoo> %dcoo5 = tensor.insert %f5 into %dcoo4[%c4, %c3, %c2] : tensor<5x4x3xf64, #DCoo> %dcoom = sparse_tensor.load %dcoo5 hasInserts : tensor<5x4x3xf64, #DCoo> sparse_tensor.print %dcoom : tensor<5x4x3xf64, #DCoo> // Release resources. bufferization.dealloc_tensor %tensorm : tensor<5x4x3xf64, #TensorCSR> bufferization.dealloc_tensor %rowm : tensor<5x4x3xf64, #TensorRow> bufferization.dealloc_tensor %ccoom : tensor<5x4x3xf64, #CCoo> bufferization.dealloc_tensor %dcoom : tensor<5x4x3xf64, #DCoo> return } }